test_heterograph.py 109 KB
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import dgl
import dgl.function as fn
from collections import Counter
import numpy as np
import scipy.sparse as ssp
import itertools
import backend as F
import networkx as nx
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import unittest, pytest
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from dgl import DGLError
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import test_utils
from test_utils import parametrize_dtype, get_cases
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from utils import assert_is_identical_hetero
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from scipy.sparse import rand
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def create_test_heterograph(idtype):
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    # test heterograph from the docstring, plus a user -- wishes -- game relation
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    # 3 users, 2 games, 2 developers
    # metagraph:
    #    ('user', 'follows', 'user'),
    #    ('user', 'plays', 'game'),
    #    ('user', 'wishes', 'game'),
    #    ('developer', 'develops', 'game')])
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    g = dgl.heterograph({
        ('user', 'follows', 'user'): ([0, 1], [1, 2]),
        ('user', 'plays', 'game'): ([0, 1, 2, 1], [0, 0, 1, 1]),
        ('user', 'wishes', 'game'): ([0, 2], [1, 0]),
        ('developer', 'develops', 'game'): ([0, 1], [0, 1])
    }, idtype=idtype, device=F.ctx())
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    assert g.idtype == idtype
    assert g.device == F.ctx()
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    return g

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def create_test_heterograph1(idtype):
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    edges = []
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    edges.extend([(0, 1), (1, 2)])  # follows
    edges.extend([(0, 3), (1, 3), (2, 4), (1, 4)])  # plays
    edges.extend([(0, 4), (2, 3)])  # wishes
    edges.extend([(5, 3), (6, 4)])  # develops
    edges = tuple(zip(*edges))
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    ntypes = F.tensor([0, 0, 0, 1, 1, 2, 2])
    etypes = F.tensor([0, 0, 1, 1, 1, 1, 2, 2, 3, 3])
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    g0 = dgl.graph(edges, idtype=idtype, device=F.ctx())
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    g0.ndata[dgl.NTYPE] = ntypes
    g0.edata[dgl.ETYPE] = etypes
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    return dgl.to_heterogeneous(g0, ['user', 'game', 'developer'],
                                ['follows', 'plays', 'wishes', 'develops'])
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def create_test_heterograph2(idtype):
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    g = dgl.heterograph({
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        ('user', 'follows', 'user'): ([0, 1], [1, 2]),
        ('user', 'plays', 'game'): ([0, 1, 2, 1], [0, 0, 1, 1]),
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        ('user', 'wishes', 'game'): ('csr', ([0, 1, 1, 2], [1, 0], [])),
        ('developer', 'develops', 'game'): ('csc', ([0, 1, 2], [0, 1], [0, 1])),
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        }, idtype=idtype, device=F.ctx())
    assert g.idtype == idtype
    assert g.device == F.ctx()
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    return g

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def create_test_heterograph3(idtype):
    g = dgl.heterograph({
        ('user', 'plays', 'game'): (F.tensor([0, 1, 1, 2], dtype=idtype),
                                    F.tensor([0, 0, 1, 1], dtype=idtype)),
        ('developer', 'develops', 'game'): (F.tensor([0, 1], dtype=idtype),
                                            F.tensor([0, 1], dtype=idtype))},
        idtype=idtype, device=F.ctx())
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    g.nodes['user'].data['h'] = F.copy_to(F.tensor([1, 1, 1], dtype=idtype), ctx=F.ctx())
    g.nodes['game'].data['h'] = F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())
    g.nodes['developer'].data['h'] = F.copy_to(F.tensor([3, 3], dtype=idtype), ctx=F.ctx())
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    g.edges['plays'].data['h'] = F.copy_to(F.tensor([1, 1, 1, 1], dtype=idtype), ctx=F.ctx())
    return g

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def create_test_heterograph4(idtype):
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    g = dgl.heterograph({
        ('user', 'follows', 'user'): (F.tensor([0, 1, 1, 2, 2, 2], dtype=idtype),
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                                      F.tensor([0, 0, 1, 1, 2, 2], dtype=idtype)),
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        ('user', 'plays', 'game'): (F.tensor([0, 1], dtype=idtype),
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                                    F.tensor([0, 1], dtype=idtype))},
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        idtype=idtype, device=F.ctx())
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    g.nodes['user'].data['h'] = F.copy_to(F.tensor([1, 1, 1], dtype=idtype), ctx=F.ctx())
    g.nodes['game'].data['h'] = F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())
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    g.edges['follows'].data['h'] = F.copy_to(F.tensor([1, 2, 3, 4, 5, 6], dtype=idtype), ctx=F.ctx())
    g.edges['plays'].data['h'] = F.copy_to(F.tensor([1, 2], dtype=idtype), ctx=F.ctx())
    return g

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def create_test_heterograph5(idtype):
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    g = dgl.heterograph({
        ('user', 'follows', 'user'): (F.tensor([1, 2], dtype=idtype),
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                                      F.tensor([0, 1], dtype=idtype)),
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        ('user', 'plays', 'game'): (F.tensor([0, 1], dtype=idtype),
                                    F.tensor([0, 1], dtype=idtype))},
        idtype=idtype, device=F.ctx())
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    g.nodes['user'].data['h'] = F.copy_to(F.tensor([1, 1, 1], dtype=idtype), ctx=F.ctx())
    g.nodes['game'].data['h'] = F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())
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    g.edges['follows'].data['h'] = F.copy_to(F.tensor([1, 2], dtype=idtype), ctx=F.ctx())
    g.edges['plays'].data['h'] = F.copy_to(F.tensor([1, 2], dtype=idtype), ctx=F.ctx())
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    return g

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def get_redfn(name):
    return getattr(F, name)

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@parametrize_dtype
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def test_create(idtype):
    device = F.ctx()
    g0 = create_test_heterograph(idtype)
    g1 = create_test_heterograph1(idtype)
    g2 = create_test_heterograph2(idtype)
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    assert set(g0.ntypes) == set(g1.ntypes) == set(g2.ntypes)
    assert set(g0.canonical_etypes) == set(g1.canonical_etypes) == set(g2.canonical_etypes)
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    # Create a bipartite graph from a SciPy matrix
    src_ids = np.array([2, 3, 4])
    dst_ids = np.array([1, 2, 3])
    eweight = np.array([0.2, 0.3, 0.5])
    sp_mat = ssp.coo_matrix((eweight, (src_ids, dst_ids)))
    g = dgl.bipartite_from_scipy(sp_mat, utype='user', etype='plays',
                                 vtype='game', idtype=idtype, device=device)
    assert g.idtype == idtype
    assert g.device == device
    assert g.num_src_nodes() == 5
    assert g.num_dst_nodes() == 4
    assert g.num_edges() == 3
    src, dst = g.edges()
    assert F.allclose(src, F.tensor([2, 3, 4], dtype=idtype))
    assert F.allclose(dst, F.tensor([1, 2, 3], dtype=idtype))
    g = dgl.bipartite_from_scipy(sp_mat, utype='_U', etype='_E', vtype='_V',
                                 eweight_name='w', idtype=idtype, device=device)
    assert F.allclose(g.edata['w'], F.tensor(eweight))

    # Create a bipartite graph from a NetworkX graph
    nx_g = nx.DiGraph()
    nx_g.add_nodes_from([1, 3], bipartite=0, feat1=np.zeros((2)), feat2=np.ones((2)))
    nx_g.add_nodes_from([2, 4, 5], bipartite=1, feat3=np.zeros((3)))
    nx_g.add_edge(1, 4, weight=np.ones((1)), eid=np.array([1]))
    nx_g.add_edge(3, 5, weight=np.ones((1)), eid=np.array([0]))
    g = dgl.bipartite_from_networkx(nx_g, utype='user', etype='plays',
                                    vtype='game', idtype=idtype, device=device)
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    assert g.idtype == idtype
    assert g.device == device
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    assert g.num_src_nodes() == 2
    assert g.num_dst_nodes() == 3
    assert g.num_edges() == 2
    src, dst = g.edges()
    assert F.allclose(src, F.tensor([0, 1], dtype=idtype))
    assert F.allclose(dst, F.tensor([1, 2], dtype=idtype))
    g = dgl.bipartite_from_networkx(nx_g, utype='_U', etype='_E', vtype='V',
                                    u_attrs=['feat1', 'feat2'],
                                    e_attrs = ['weight'], v_attrs = ['feat3'])
    assert F.allclose(g.srcdata['feat1'], F.tensor(np.zeros((2, 2))))
    assert F.allclose(g.srcdata['feat2'], F.tensor(np.ones((2, 2))))
    assert F.allclose(g.dstdata['feat3'], F.tensor(np.zeros((3, 3))))
    assert F.allclose(g.edata['weight'], F.tensor(np.ones((2, 1))))
    g = dgl.bipartite_from_networkx(nx_g, utype='_U', etype='_E', vtype='V',
                                    edge_id_attr_name='eid', idtype=idtype, device=device)
    src, dst = g.edges()
    assert F.allclose(src, F.tensor([1, 0], dtype=idtype))
    assert F.allclose(dst, F.tensor([2, 1], dtype=idtype))
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    # create from scipy
    spmat = ssp.coo_matrix(([1,1,1], ([0, 0, 1], [2, 3, 2])), shape=(4, 4))
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    g = dgl.from_scipy(spmat, idtype=idtype, device=device)
    assert g.num_nodes() == 4
    assert g.num_edges() == 3
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    assert g.idtype == idtype
    assert g.device == device
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    # test inferring number of nodes for heterograph
    g = dgl.heterograph({
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        ('l0', 'e0', 'l1'): ([0, 0], [1, 2]),
        ('l0', 'e1', 'l2'): ([2], [2]),
        ('l2', 'e2', 'l2'): ([1, 3], [1, 3])
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        }, idtype=idtype, device=device)
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    assert g.num_nodes('l0') == 3
    assert g.num_nodes('l1') == 3
    assert g.num_nodes('l2') == 4
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    assert g.idtype == idtype
    assert g.device == device
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    # test if validate flag works
    # homo graph
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    with pytest.raises(DGLError):
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        g = dgl.graph(
            ([0, 0, 0, 1, 1, 2], [0, 1, 2, 0, 1, 2]),
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            num_nodes=2,
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            idtype=idtype, device=device
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        )
    # bipartite graph
    def _test_validate_bipartite(card):
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        with pytest.raises(DGLError):
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            g = dgl.heterograph({
                ('_U', '_E', '_V'): ([0, 0, 1, 1, 2], [1, 1, 2, 2, 3])
            }, {'_U': card[0], '_V': card[1]}, idtype=idtype, device=device)
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    _test_validate_bipartite((3, 3))
    _test_validate_bipartite((2, 4))

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    # test from_scipy
    num_nodes = 10
    density = 0.25
    for fmt in ['csr', 'coo', 'csc']:
        adj = rand(num_nodes, num_nodes, density=density, format=fmt)
        g = dgl.from_scipy(adj, eweight_name='w', idtype=idtype)
        assert g.idtype == idtype
        assert g.device == F.cpu()
        assert F.array_equal(g.edata['w'], F.copy_to(F.tensor(adj.data), F.cpu()))

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@parametrize_dtype
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def test_query(idtype):
    g = create_test_heterograph(idtype)
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    ntypes = ['user', 'game', 'developer']
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    canonical_etypes = [
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        ('user', 'follows', 'user'),
        ('user', 'plays', 'game'),
        ('user', 'wishes', 'game'),
        ('developer', 'develops', 'game')]
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    etypes = ['follows', 'plays', 'wishes', 'develops']
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    # node & edge types
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    assert set(ntypes) == set(g.ntypes)
    assert set(etypes) == set(g.etypes)
    assert set(canonical_etypes) == set(g.canonical_etypes)
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    # metagraph
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    mg = g.metagraph()
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    assert set(g.ntypes) == set(mg.nodes)
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    etype_triplets = [(u, v, e) for u, v, e in mg.edges(keys=True)]
    assert set([
        ('user', 'user', 'follows'),
        ('user', 'game', 'plays'),
        ('user', 'game', 'wishes'),
        ('developer', 'game', 'develops')]) == set(etype_triplets)
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    for i in range(len(etypes)):
        assert g.to_canonical_etype(etypes[i]) == canonical_etypes[i]
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    def _test(g):
        # number of nodes
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        assert [g.num_nodes(ntype) for ntype in ntypes] == [3, 2, 2]
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        # number of edges
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        assert [g.num_edges(etype) for etype in etypes] == [2, 4, 2, 2]
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        # has_node & has_nodes
        for ntype in ntypes:
            n = g.number_of_nodes(ntype)
            for i in range(n):
                assert g.has_node(i, ntype)
            assert not g.has_node(n, ntype)
            assert np.array_equal(
                F.asnumpy(g.has_nodes([0, n], ntype)).astype('int32'), [1, 0])
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        assert not g.is_multigraph
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        for etype in etypes:
            srcs, dsts = edges[etype]
            for src, dst in zip(srcs, dsts):
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                assert g.has_edges_between(src, dst, etype)
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            assert F.asnumpy(g.has_edges_between(srcs, dsts, etype)).all()

            srcs, dsts = negative_edges[etype]
            for src, dst in zip(srcs, dsts):
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                assert not g.has_edges_between(src, dst, etype)
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            assert not F.asnumpy(g.has_edges_between(srcs, dsts, etype)).any()

            srcs, dsts = edges[etype]
            n_edges = len(srcs)

            # predecessors & in_edges & in_degree
            pred = [s for s, d in zip(srcs, dsts) if d == 0]
            assert set(F.asnumpy(g.predecessors(0, etype)).tolist()) == set(pred)
            u, v = g.in_edges([0], etype=etype)
            assert F.asnumpy(v).tolist() == [0] * len(pred)
            assert set(F.asnumpy(u).tolist()) == set(pred)
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            assert g.in_degrees(0, etype) == len(pred)
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            # successors & out_edges & out_degree
            succ = [d for s, d in zip(srcs, dsts) if s == 0]
            assert set(F.asnumpy(g.successors(0, etype)).tolist()) == set(succ)
            u, v = g.out_edges([0], etype=etype)
            assert F.asnumpy(u).tolist() == [0] * len(succ)
            assert set(F.asnumpy(v).tolist()) == set(succ)
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            assert g.out_degrees(0, etype) == len(succ)
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            # edge_id & edge_ids
            for i, (src, dst) in enumerate(zip(srcs, dsts)):
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                assert g.edge_ids(src, dst, etype=etype) == i
                _, _, eid = g.edge_ids(src, dst, etype=etype, return_uv=True)
                assert eid == i
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            assert F.asnumpy(g.edge_ids(srcs, dsts, etype=etype)).tolist() == list(range(n_edges))
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            u, v, e = g.edge_ids(srcs, dsts, etype=etype, return_uv=True)
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            u, v, e = F.asnumpy(u), F.asnumpy(v), F.asnumpy(e)
            assert u[e].tolist() == srcs
            assert v[e].tolist() == dsts
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            # find_edges
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            for eid in [list(range(n_edges)), np.arange(n_edges), F.astype(F.arange(0, n_edges), g.idtype)]:
                u, v = g.find_edges(eid, etype)
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                assert F.asnumpy(u).tolist() == srcs
                assert F.asnumpy(v).tolist() == dsts
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            # all_edges.
            for order in ['eid']:
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                u, v, e = g.edges('all', order, etype)
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                assert F.asnumpy(u).tolist() == srcs
                assert F.asnumpy(v).tolist() == dsts
                assert F.asnumpy(e).tolist() == list(range(n_edges))

            # in_degrees & out_degrees
            in_degrees = F.asnumpy(g.in_degrees(etype=etype))
            out_degrees = F.asnumpy(g.out_degrees(etype=etype))
            src_count = Counter(srcs)
            dst_count = Counter(dsts)
            utype, _, vtype = g.to_canonical_etype(etype)
            for i in range(g.number_of_nodes(utype)):
                assert out_degrees[i] == src_count[i]
            for i in range(g.number_of_nodes(vtype)):
                assert in_degrees[i] == dst_count[i]

    edges = {
        'follows': ([0, 1], [1, 2]),
        'plays': ([0, 1, 2, 1], [0, 0, 1, 1]),
        'wishes': ([0, 2], [1, 0]),
        'develops': ([0, 1], [0, 1]),
    }
    # edges that does not exist in the graph
    negative_edges = {
        'follows': ([0, 1], [0, 1]),
        'plays': ([0, 2], [1, 0]),
        'wishes': ([0, 1], [0, 1]),
        'develops': ([0, 1], [1, 0]),
    }
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    g = create_test_heterograph(idtype)
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    _test(g)
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    g = create_test_heterograph1(idtype)
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    _test(g)
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    if F._default_context_str != 'gpu':
        # XXX: CUDA COO operators have not been live yet.
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        g = create_test_heterograph2(idtype)
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        _test(g)
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    etypes = canonical_etypes
    edges = {
        ('user', 'follows', 'user'): ([0, 1], [1, 2]),
        ('user', 'plays', 'game'): ([0, 1, 2, 1], [0, 0, 1, 1]),
        ('user', 'wishes', 'game'): ([0, 2], [1, 0]),
        ('developer', 'develops', 'game'): ([0, 1], [0, 1]),
    }
    # edges that does not exist in the graph
    negative_edges = {
        ('user', 'follows', 'user'): ([0, 1], [0, 1]),
        ('user', 'plays', 'game'): ([0, 2], [1, 0]),
        ('user', 'wishes', 'game'): ([0, 1], [0, 1]),
        ('developer', 'develops', 'game'): ([0, 1], [1, 0]),
        }
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    g = create_test_heterograph(idtype)
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    _test(g)
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    g = create_test_heterograph1(idtype)
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    _test(g)
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    if F._default_context_str != 'gpu':
        # XXX: CUDA COO operators have not been live yet.
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        g = create_test_heterograph2(idtype)
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        _test(g)
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    # test repr
    print(g)

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@parametrize_dtype
def test_empty_query(idtype):
    g = dgl.graph(([1, 2, 3], [0, 4, 5]), idtype=idtype, device=F.ctx())
    g.add_nodes(0)
    g.add_edges([], [])
    g.remove_edges([])
    g.remove_nodes([])
    assert F.shape(g.has_nodes([])) == (0,)
    assert F.shape(g.has_edges_between([], [])) == (0,)
    g.edge_ids([], [])
    g.edge_ids([], [], return_uv=True)
    g.find_edges([])

    assert F.shape(g.in_edges([], form='eid')) == (0,)
    u, v = g.in_edges([], form='uv')
    assert F.shape(u) == (0,)
    assert F.shape(v) == (0,)
    u, v, e = g.in_edges([], form='all')
    assert F.shape(u) == (0,)
    assert F.shape(v) == (0,)
    assert F.shape(e) == (0,)

    assert F.shape(g.out_edges([], form='eid')) == (0,)
    u, v = g.out_edges([], form='uv')
    assert F.shape(u) == (0,)
    assert F.shape(v) == (0,)
    u, v, e = g.out_edges([], form='all')
    assert F.shape(u) == (0,)
    assert F.shape(v) == (0,)
    assert F.shape(e) == (0,)

    assert F.shape(g.in_degrees([])) == (0,)
    assert F.shape(g.out_degrees([])) == (0,)

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@unittest.skipIf(F._default_context_str == 'gpu', reason="GPU does not have COO impl.")
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def _test_hypersparse():
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    N1 = 1 << 50        # should crash if allocated a CSR
    N2 = 1 << 48

    g = dgl.heterograph({
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        ('user', 'follows', 'user'): (F.tensor([0], F.int64), F.tensor([1], F.int64)),
        ('user', 'plays', 'game'): (F.tensor([0], F.int64), F.tensor([N2], F.int64))},
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        {'user': N1, 'game': N1},
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        device=F.ctx())
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    assert g.number_of_nodes('user') == N1
    assert g.number_of_nodes('game') == N1
    assert g.number_of_edges('follows') == 1
    assert g.number_of_edges('plays') == 1

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    assert g.has_edges_between(0, 1, 'follows')
    assert not g.has_edges_between(0, 0, 'follows')
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    mask = F.asnumpy(g.has_edges_between([0, 0], [0, 1], 'follows')).tolist()
    assert mask == [0, 1]

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    assert g.has_edges_between(0, N2, 'plays')
    assert not g.has_edges_between(0, 0, 'plays')
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    mask = F.asnumpy(g.has_edges_between([0, 0], [0, N2], 'plays')).tolist()
    assert mask == [0, 1]

    assert F.asnumpy(g.predecessors(0, 'follows')).tolist() == []
    assert F.asnumpy(g.successors(0, 'follows')).tolist() == [1]
    assert F.asnumpy(g.predecessors(1, 'follows')).tolist() == [0]
    assert F.asnumpy(g.successors(1, 'follows')).tolist() == []

    assert F.asnumpy(g.predecessors(0, 'plays')).tolist() == []
    assert F.asnumpy(g.successors(0, 'plays')).tolist() == [N2]
    assert F.asnumpy(g.predecessors(N2, 'plays')).tolist() == [0]
    assert F.asnumpy(g.successors(N2, 'plays')).tolist() == []

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    assert g.edge_ids(0, 1, etype='follows') == 0
    assert g.edge_ids(0, N2, etype='plays') == 0
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    u, v = g.find_edges([0], 'follows')
    assert F.asnumpy(u).tolist() == [0]
    assert F.asnumpy(v).tolist() == [1]
    u, v = g.find_edges([0], 'plays')
    assert F.asnumpy(u).tolist() == [0]
    assert F.asnumpy(v).tolist() == [N2]
    u, v, e = g.all_edges('all', 'eid', 'follows')
    assert F.asnumpy(u).tolist() == [0]
    assert F.asnumpy(v).tolist() == [1]
    assert F.asnumpy(e).tolist() == [0]
    u, v, e = g.all_edges('all', 'eid', 'plays')
    assert F.asnumpy(u).tolist() == [0]
    assert F.asnumpy(v).tolist() == [N2]
    assert F.asnumpy(e).tolist() == [0]

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    assert g.in_degrees(0, 'follows') == 0
    assert g.in_degrees(1, 'follows') == 1
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    assert F.asnumpy(g.in_degrees([0, 1], 'follows')).tolist() == [0, 1]
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    assert g.in_degrees(0, 'plays') == 0
    assert g.in_degrees(N2, 'plays') == 1
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    assert F.asnumpy(g.in_degrees([0, N2], 'plays')).tolist() == [0, 1]
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    assert g.out_degrees(0, 'follows') == 1
    assert g.out_degrees(1, 'follows') == 0
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    assert F.asnumpy(g.out_degrees([0, 1], 'follows')).tolist() == [1, 0]
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    assert g.out_degrees(0, 'plays') == 1
    assert g.out_degrees(N2, 'plays') == 0
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    assert F.asnumpy(g.out_degrees([0, N2], 'plays')).tolist() == [1, 0]

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def _test_edge_ids():
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    N1 = 1 << 50        # should crash if allocated a CSR
    N2 = 1 << 48

    g = dgl.heterograph({
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        ('user', 'follows', 'user'): (F.tensor([0], F.int64), F.tensor([1], F.int64)),
        ('user', 'plays', 'game'): (F.tensor([0], F.int64), F.tensor([N2], F.int64))},
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        {'user': N1, 'game': N1})
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    with pytest.raises(DGLError):
        eid = g.edge_ids(0, 0, etype='follows')
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    g2 = dgl.heterograph({
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        ('user', 'follows', 'user'): (F.tensor([0, 0], F.int64), F.tensor([1, 1], F.int64)),
        ('user', 'plays', 'game'): (F.tensor([0], F.int64), F.tensor([N2], F.int64))},
        {'user': N1, 'game': N1}, device=F.cpu())
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    eid = g2.edge_ids(0, 1, etype='follows')
    assert eid == 0
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@parametrize_dtype
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def test_adj(idtype):
    g = create_test_heterograph(idtype)
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    adj = F.sparse_to_numpy(g.adj(transpose=True, etype='follows'))
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    assert np.allclose(
            adj,
            np.array([[0., 0., 0.],
                      [1., 0., 0.],
                      [0., 1., 0.]]))
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    adj = F.sparse_to_numpy(g.adj(transpose=False, etype='follows'))
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    assert np.allclose(
            adj,
            np.array([[0., 1., 0.],
                      [0., 0., 1.],
                      [0., 0., 0.]]))
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    adj = F.sparse_to_numpy(g.adj(transpose=True, etype='plays'))
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    assert np.allclose(
            adj,
            np.array([[1., 1., 0.],
                      [0., 1., 1.]]))
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    adj = F.sparse_to_numpy(g.adj(transpose=False, etype='plays'))
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    assert np.allclose(
            adj,
            np.array([[1., 0.],
                      [1., 1.],
                      [0., 1.]]))

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    adj = g.adj(transpose=True, scipy_fmt='csr', etype='follows')
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    assert np.allclose(
            adj.todense(),
            np.array([[0., 0., 0.],
                      [1., 0., 0.],
                      [0., 1., 0.]]))
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    adj = g.adj(transpose=True, scipy_fmt='coo', etype='follows')
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    assert np.allclose(
            adj.todense(),
            np.array([[0., 0., 0.],
                      [1., 0., 0.],
                      [0., 1., 0.]]))
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    adj = g.adj(transpose=True, scipy_fmt='csr', etype='plays')
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    assert np.allclose(
            adj.todense(),
            np.array([[1., 1., 0.],
                      [0., 1., 1.]]))
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    adj = g.adj(transpose=True, scipy_fmt='coo', etype='plays')
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    assert np.allclose(
            adj.todense(),
            np.array([[1., 1., 0.],
                      [0., 1., 1.]]))
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    adj = F.sparse_to_numpy(g['follows'].adj(transpose=True))
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    assert np.allclose(
            adj,
            np.array([[0., 0., 0.],
                      [1., 0., 0.],
                      [0., 1., 0.]]))

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@parametrize_dtype
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def test_inc(idtype):
    g = create_test_heterograph(idtype)
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    adj = F.sparse_to_numpy(g['follows'].inc('in'))
    assert np.allclose(
            adj,
            np.array([[0., 0.],
                      [1., 0.],
                      [0., 1.]]))
    adj = F.sparse_to_numpy(g['follows'].inc('out'))
    assert np.allclose(
            adj,
            np.array([[1., 0.],
                      [0., 1.],
                      [0., 0.]]))
    adj = F.sparse_to_numpy(g['follows'].inc('both'))
    assert np.allclose(
            adj,
            np.array([[-1., 0.],
                      [1., -1.],
                      [0., 1.]]))
    adj = F.sparse_to_numpy(g.inc('in', etype='plays'))
    assert np.allclose(
            adj,
            np.array([[1., 1., 0., 0.],
                      [0., 0., 1., 1.]]))
    adj = F.sparse_to_numpy(g.inc('out', etype='plays'))
    assert np.allclose(
            adj,
            np.array([[1., 0., 0., 0.],
                      [0., 1., 0., 1.],
                      [0., 0., 1., 0.]]))
    adj = F.sparse_to_numpy(g.inc('both', etype='follows'))
    assert np.allclose(
            adj,
            np.array([[-1., 0.],
                      [1., -1.],
                      [0., 1.]]))
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@parametrize_dtype
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def test_view(idtype):
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    # test single node type
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    g = dgl.heterograph({
        ('user', 'follows', 'user'): ([0, 1], [1, 2])
    }, idtype=idtype, device=F.ctx())
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    f1 = F.randn((3, 6))
    g.ndata['h'] = f1
    f2 = g.nodes['user'].data['h']
    assert F.array_equal(f1, f2)
    fail = False
    try:
        g.ndata['h'] = {'user' : f1}
    except Exception:
        fail = True
    assert fail

    # test single edge type
    f3 = F.randn((2, 4))
    g.edata['h'] = f3
    f4 = g.edges['follows'].data['h']
    assert F.array_equal(f3, f4)
    fail = False
    try:
        g.edata['h'] = {'follows' : f3}
    except Exception:
        fail = True
    assert fail

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    # test data view
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    g = create_test_heterograph(idtype)
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    f1 = F.randn((3, 6))
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    g.nodes['user'].data['h'] = f1       # ok
    f2 = g.nodes['user'].data['h']
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    assert F.array_equal(f1, f2)
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    assert F.array_equal(g.nodes('user'), F.arange(0, 3, idtype))
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    g.nodes['user'].data.pop('h')

    # multi type ndata
    f1 = F.randn((3, 6))
    f2 = F.randn((2, 6))
    fail = False
    try:
        g.ndata['h'] = f1
    except Exception:
        fail = True
    assert fail
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    f3 = F.randn((2, 4))
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    g.edges['user', 'follows', 'user'].data['h'] = f3
    f4 = g.edges['user', 'follows', 'user'].data['h']
    f5 = g.edges['follows'].data['h']
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    assert F.array_equal(f3, f4)
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    assert F.array_equal(f3, f5)
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    assert F.array_equal(g.edges(etype='follows', form='eid'), F.arange(0, 2, idtype))
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    g.edges['follows'].data.pop('h')

    f3 = F.randn((2, 4))
    fail = False
    try:
        g.edata['h'] = f3
    except Exception:
        fail = True
    assert fail

    # test srcdata
    f1 = F.randn((3, 6))
    g.srcnodes['user'].data['h'] = f1       # ok
    f2 = g.srcnodes['user'].data['h']
    assert F.array_equal(f1, f2)
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    assert F.array_equal(g.srcnodes('user'), F.arange(0, 3, idtype))
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    g.srcnodes['user'].data.pop('h')

    # test dstdata
    f1 = F.randn((3, 6))
    g.dstnodes['user'].data['h'] = f1       # ok
    f2 = g.dstnodes['user'].data['h']
    assert F.array_equal(f1, f2)
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    assert F.array_equal(g.dstnodes('user'), F.arange(0, 3, idtype))
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    g.dstnodes['user'].data.pop('h')

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@parametrize_dtype
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def test_view1(idtype):
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    # test relation view
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    HG = create_test_heterograph(idtype)
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    ntypes = ['user', 'game', 'developer']
    canonical_etypes = [
        ('user', 'follows', 'user'),
        ('user', 'plays', 'game'),
        ('user', 'wishes', 'game'),
        ('developer', 'develops', 'game')]
    etypes = ['follows', 'plays', 'wishes', 'develops']

    def _test_query():
        for etype in etypes:
            utype, _, vtype = HG.to_canonical_etype(etype)
            g = HG[etype]
            srcs, dsts = edges[etype]
            for src, dst in zip(srcs, dsts):
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                assert g.has_edges_between(src, dst)
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            assert F.asnumpy(g.has_edges_between(srcs, dsts)).all()

            srcs, dsts = negative_edges[etype]
            for src, dst in zip(srcs, dsts):
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                assert not g.has_edges_between(src, dst)
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            assert not F.asnumpy(g.has_edges_between(srcs, dsts)).any()

            srcs, dsts = edges[etype]
            n_edges = len(srcs)

            # predecessors & in_edges & in_degree
            pred = [s for s, d in zip(srcs, dsts) if d == 0]
            assert set(F.asnumpy(g.predecessors(0)).tolist()) == set(pred)
            u, v = g.in_edges([0])
            assert F.asnumpy(v).tolist() == [0] * len(pred)
            assert set(F.asnumpy(u).tolist()) == set(pred)
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            assert g.in_degrees(0) == len(pred)
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            # successors & out_edges & out_degree
            succ = [d for s, d in zip(srcs, dsts) if s == 0]
            assert set(F.asnumpy(g.successors(0)).tolist()) == set(succ)
            u, v = g.out_edges([0])
            assert F.asnumpy(u).tolist() == [0] * len(succ)
            assert set(F.asnumpy(v).tolist()) == set(succ)
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            assert g.out_degrees(0) == len(succ)
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            # edge_id & edge_ids
            for i, (src, dst) in enumerate(zip(srcs, dsts)):
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                assert g.edge_ids(src, dst, etype=etype) == i
                _, _, eid = g.edge_ids(src, dst, etype=etype, return_uv=True)
                assert eid == i
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            assert F.asnumpy(g.edge_ids(srcs, dsts)).tolist() == list(range(n_edges))
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            u, v, e = g.edge_ids(srcs, dsts, return_uv=True)
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            u, v, e = F.asnumpy(u), F.asnumpy(v), F.asnumpy(e)
            assert u[e].tolist() == srcs
            assert v[e].tolist() == dsts
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            # find_edges
            u, v = g.find_edges(list(range(n_edges)))
            assert F.asnumpy(u).tolist() == srcs
            assert F.asnumpy(v).tolist() == dsts

            # all_edges.
            for order in ['eid']:
                u, v, e = g.all_edges(form='all', order=order)
                assert F.asnumpy(u).tolist() == srcs
                assert F.asnumpy(v).tolist() == dsts
                assert F.asnumpy(e).tolist() == list(range(n_edges))

            # in_degrees & out_degrees
            in_degrees = F.asnumpy(g.in_degrees())
            out_degrees = F.asnumpy(g.out_degrees())
            src_count = Counter(srcs)
            dst_count = Counter(dsts)
            for i in range(g.number_of_nodes(utype)):
                assert out_degrees[i] == src_count[i]
            for i in range(g.number_of_nodes(vtype)):
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                assert in_degrees[i] == dst_count[i]
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    edges = {
        'follows': ([0, 1], [1, 2]),
        'plays': ([0, 1, 2, 1], [0, 0, 1, 1]),
        'wishes': ([0, 2], [1, 0]),
        'develops': ([0, 1], [0, 1]),
    }
    # edges that does not exist in the graph
    negative_edges = {
        'follows': ([0, 1], [0, 1]),
        'plays': ([0, 2], [1, 0]),
        'wishes': ([0, 1], [0, 1]),
        'develops': ([0, 1], [1, 0]),
    }
    _test_query()
    etypes = canonical_etypes
    edges = {
        ('user', 'follows', 'user'): ([0, 1], [1, 2]),
        ('user', 'plays', 'game'): ([0, 1, 2, 1], [0, 0, 1, 1]),
        ('user', 'wishes', 'game'): ([0, 2], [1, 0]),
        ('developer', 'develops', 'game'): ([0, 1], [0, 1]),
    }
    # edges that does not exist in the graph
    negative_edges = {
        ('user', 'follows', 'user'): ([0, 1], [0, 1]),
        ('user', 'plays', 'game'): ([0, 2], [1, 0]),
        ('user', 'wishes', 'game'): ([0, 1], [0, 1]),
        ('developer', 'develops', 'game'): ([0, 1], [1, 0]),
        }
    _test_query()

    # test features
    HG.nodes['user'].data['h'] = F.ones((HG.number_of_nodes('user'), 5))
    HG.nodes['game'].data['m'] = F.ones((HG.number_of_nodes('game'), 3)) * 2

    # test only one node type
    g = HG['follows']
    assert g.number_of_nodes() == 3

    # test ndata and edata
    f1 = F.randn((3, 6))
    g.ndata['h'] = f1       # ok
    f2 = HG.nodes['user'].data['h']
    assert F.array_equal(f1, f2)
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    assert F.array_equal(g.nodes(), F.arange(0, 3, g.idtype))
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    f3 = F.randn((2, 4))
    g.edata['h'] = f3
    f4 = HG.edges['follows'].data['h']
    assert F.array_equal(f3, f4)
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    assert F.array_equal(g.edges(form='eid'), F.arange(0, 2, g.idtype))
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@parametrize_dtype
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def test_flatten(idtype):
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    def check_mapping(g, fg):
        if len(fg.ntypes) == 1:
            SRC = DST = fg.ntypes[0]
        else:
            SRC = fg.ntypes[0]
            DST = fg.ntypes[1]

        etypes = F.asnumpy(fg.edata[dgl.ETYPE]).tolist()
        eids = F.asnumpy(fg.edata[dgl.EID]).tolist()

        for i, (etype, eid) in enumerate(zip(etypes, eids)):
            src_g, dst_g = g.find_edges([eid], g.canonical_etypes[etype])
            src_fg, dst_fg = fg.find_edges([i])
            # TODO(gq): I feel this code is quite redundant; can we just add new members (like
            # "induced_srcid") to returned heterograph object and not store them as features?
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            assert F.asnumpy(src_g) == F.asnumpy(F.gather_row(fg.nodes[SRC].data[dgl.NID], src_fg)[0])
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            tid = F.asnumpy(F.gather_row(fg.nodes[SRC].data[dgl.NTYPE], src_fg)).item()
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            assert g.canonical_etypes[etype][0] == g.ntypes[tid]
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            assert F.asnumpy(dst_g) == F.asnumpy(F.gather_row(fg.nodes[DST].data[dgl.NID], dst_fg)[0])
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            tid = F.asnumpy(F.gather_row(fg.nodes[DST].data[dgl.NTYPE], dst_fg)).item()
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            assert g.canonical_etypes[etype][2] == g.ntypes[tid]

    # check for wildcard slices
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    g = create_test_heterograph(idtype)
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    g.nodes['user'].data['h'] = F.ones((3, 5))
    g.nodes['game'].data['i'] = F.ones((2, 5))
    g.edges['plays'].data['e'] = F.ones((4, 4))
    g.edges['wishes'].data['e'] = F.ones((2, 4))
    g.edges['wishes'].data['f'] = F.ones((2, 4))

    fg = g['user', :, 'game']   # user--plays->game and user--wishes->game
    assert len(fg.ntypes) == 2
    assert fg.ntypes == ['user', 'game']
    assert fg.etypes == ['plays+wishes']
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    assert fg.idtype == g.idtype
    assert fg.device == g.device
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    etype = fg.etypes[0]
    assert fg[etype] is not None        # Issue #2166
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    assert F.array_equal(fg.nodes['user'].data['h'], F.ones((3, 5)))
    assert F.array_equal(fg.nodes['game'].data['i'], F.ones((2, 5)))
    assert F.array_equal(fg.edata['e'], F.ones((6, 4)))
    assert 'f' not in fg.edata

    etypes = F.asnumpy(fg.edata[dgl.ETYPE]).tolist()
    eids = F.asnumpy(fg.edata[dgl.EID]).tolist()
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    assert set(zip(etypes, eids)) == set([(3, 0), (3, 1), (2, 1), (2, 0), (2, 3), (2, 2)])
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    check_mapping(g, fg)

    fg = g['user', :, 'user']
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    assert fg.idtype == g.idtype
    assert fg.device == g.device
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    # NOTE(gq): The node/edge types from the parent graph is returned if there is only one
    # node/edge type.  This differs from the behavior above.
    assert fg.ntypes == ['user']
    assert fg.etypes == ['follows']
    u1, v1 = g.edges(etype='follows', order='eid')
    u2, v2 = fg.edges(etype='follows', order='eid')
    assert F.array_equal(u1, u2)
    assert F.array_equal(v1, v2)

    fg = g['developer', :, 'game']
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    assert fg.idtype == g.idtype
    assert fg.device == g.device
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    assert fg.ntypes == ['developer', 'game']
    assert fg.etypes == ['develops']
    u1, v1 = g.edges(etype='develops', order='eid')
    u2, v2 = fg.edges(etype='develops', order='eid')
    assert F.array_equal(u1, u2)
    assert F.array_equal(v1, v2)

    fg = g[:, :, :]
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    assert fg.idtype == g.idtype
    assert fg.device == g.device
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    assert fg.ntypes == ['developer+user', 'game+user']
    assert fg.etypes == ['develops+follows+plays+wishes']
    check_mapping(g, fg)

    # Test another heterograph
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    g = dgl.heterograph({
        ('user', 'follows', 'user'): ([0, 1, 2], [1, 2, 3]),
        ('user', 'knows', 'user'): ([0, 2], [2, 3])
    }, idtype=idtype, device=F.ctx())
    g.nodes['user'].data['h'] = F.randn((4, 3))
    g.edges['follows'].data['w'] = F.randn((3, 2))
    g.nodes['user'].data['hh'] = F.randn((4, 5))
    g.edges['knows'].data['ww'] = F.randn((2, 10))
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    fg = g['user', :, 'user']
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    assert fg.idtype == g.idtype
    assert fg.device == g.device
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    assert fg.ntypes == ['user']
    assert fg.etypes == ['follows+knows']
    check_mapping(g, fg)

    fg = g['user', :, :]
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    assert fg.idtype == g.idtype
    assert fg.device == g.device
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    assert fg.ntypes == ['user']
    assert fg.etypes == ['follows+knows']
    check_mapping(g, fg)

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@unittest.skipIf(F._default_context_str == 'cpu', reason="Need gpu for this test")
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@parametrize_dtype
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def test_to_device(idtype):
    # TODO: rewrite this test case to accept different graphs so we
    #  can test reverse graph and batched graph
    g = create_test_heterograph(idtype)
    g.nodes['user'].data['h'] = F.ones((3, 5))
    g.nodes['game'].data['i'] = F.ones((2, 5))
    g.edges['plays'].data['e'] = F.ones((4, 4))
    assert g.device == F.ctx()
    g = g.to(F.cpu())
    assert g.device == F.cpu()
    assert F.context(g.nodes['user'].data['h']) == F.cpu()
    assert F.context(g.nodes['game'].data['i']) == F.cpu()
    assert F.context(g.edges['plays'].data['e']) == F.cpu()
    for ntype in g.ntypes:
        assert F.context(g.batch_num_nodes(ntype)) == F.cpu()
    for etype in g.canonical_etypes:
        assert F.context(g.batch_num_edges(etype)) == F.cpu()

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    if F.is_cuda_available():
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        g1 = g.to(F.cuda())
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        assert g1.device == F.cuda()
        assert F.context(g1.nodes['user'].data['h']) == F.cuda()
        assert F.context(g1.nodes['game'].data['i']) == F.cuda()
        assert F.context(g1.edges['plays'].data['e']) == F.cuda()
        for ntype in g1.ntypes:
            assert F.context(g1.batch_num_nodes(ntype)) == F.cuda()
        for etype in g1.canonical_etypes:
            assert F.context(g1.batch_num_edges(etype)) == F.cuda()
        assert F.context(g.nodes['user'].data['h']) == F.cpu()
        assert F.context(g.nodes['game'].data['i']) == F.cpu()
        assert F.context(g.edges['plays'].data['e']) == F.cpu()
        for ntype in g.ntypes:
            assert F.context(g.batch_num_nodes(ntype)) == F.cpu()
        for etype in g.canonical_etypes:
            assert F.context(g.batch_num_edges(etype)) == F.cpu()
        with pytest.raises(DGLError):
            g1.nodes['user'].data['h'] = F.copy_to(F.ones((3, 5)), F.cpu())
        with pytest.raises(DGLError):
            g1.edges['plays'].data['e'] = F.copy_to(F.ones((4, 4)), F.cpu())
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@unittest.skipIf(F._default_context_str == 'cpu', reason="Need gpu for this test")
@parametrize_dtype
@pytest.mark.parametrize('g', get_cases(['block']))
def test_to_device2(g, idtype):
    g = g.astype(idtype)
    g = g.to(F.cpu())
    assert g.device == F.cpu()
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    if F.is_cuda_available():
        g1 = g.to(F.cuda())
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        assert g1.device == F.cuda()
        assert g1.ntypes == g.ntypes
        assert g1.etypes == g.etypes
        assert g1.canonical_etypes == g.canonical_etypes
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@parametrize_dtype
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def test_convert_bound(idtype):
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    def _test_bipartite_bound(data, card):
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        with pytest.raises(DGLError):
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            dgl.heterograph({
                ('_U', '_E', '_V'): data
            }, {'_U': card[0], '_V': card[1]}, idtype=idtype, device=F.ctx())
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    def _test_graph_bound(data, card):
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        with pytest.raises(DGLError):
            dgl.graph(data, num_nodes=card, idtype=idtype, device=F.ctx())
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    _test_bipartite_bound(([1, 2], [1, 2]), (2, 3))
    _test_bipartite_bound(([0, 1], [1, 4]), (2, 3))
    _test_graph_bound(([1, 3], [1, 2]), 3)
    _test_graph_bound(([0, 1], [1, 3]), 3)
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@parametrize_dtype
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def test_convert(idtype):
    hg = create_test_heterograph(idtype)
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    hs = []
    for ntype in hg.ntypes:
        h = F.randn((hg.number_of_nodes(ntype), 5))
        hg.nodes[ntype].data['h'] = h
        hs.append(h)
    hg.nodes['user'].data['x'] = F.randn((3, 3))
    ws = []
    for etype in hg.canonical_etypes:
        w = F.randn((hg.number_of_edges(etype), 5))
        hg.edges[etype].data['w'] = w
        ws.append(w)
    hg.edges['plays'].data['x'] = F.randn((4, 3))

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    g = dgl.to_homogeneous(hg, ndata=['h'], edata=['w'])
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    assert g.idtype == idtype
    assert g.device == hg.device
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    assert F.array_equal(F.cat(hs, dim=0), g.ndata['h'])
    assert 'x' not in g.ndata
    assert F.array_equal(F.cat(ws, dim=0), g.edata['w'])
    assert 'x' not in g.edata

    src, dst = g.all_edges(order='eid')
    src = F.asnumpy(src)
    dst = F.asnumpy(dst)
    etype_id, eid = F.asnumpy(g.edata[dgl.ETYPE]), F.asnumpy(g.edata[dgl.EID])
    ntype_id, nid = F.asnumpy(g.ndata[dgl.NTYPE]), F.asnumpy(g.ndata[dgl.NID])
    for i in range(g.number_of_edges()):
        srctype = hg.ntypes[ntype_id[src[i]]]
        dsttype = hg.ntypes[ntype_id[dst[i]]]
        etype = hg.etypes[etype_id[i]]
        src_i, dst_i = hg.find_edges([eid[i]], (srctype, etype, dsttype))
        assert np.asscalar(F.asnumpy(src_i)) == nid[src[i]]
        assert np.asscalar(F.asnumpy(dst_i)) == nid[dst[i]]

    mg = nx.MultiDiGraph([
        ('user', 'user', 'follows'),
        ('user', 'game', 'plays'),
        ('user', 'game', 'wishes'),
        ('developer', 'game', 'develops')])

    for _mg in [None, mg]:
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        hg2 = dgl.to_heterogeneous(
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                g, hg.ntypes, hg.etypes,
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                ntype_field=dgl.NTYPE, etype_field=dgl.ETYPE, metagraph=_mg)
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        assert hg2.idtype == hg.idtype
        assert hg2.device == hg.device
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        assert set(hg.ntypes) == set(hg2.ntypes)
        assert set(hg.canonical_etypes) == set(hg2.canonical_etypes)
        for ntype in hg.ntypes:
            assert hg.number_of_nodes(ntype) == hg2.number_of_nodes(ntype)
            assert F.array_equal(hg.nodes[ntype].data['h'], hg2.nodes[ntype].data['h'])
        for canonical_etype in hg.canonical_etypes:
            src, dst = hg.all_edges(etype=canonical_etype, order='eid')
            src2, dst2 = hg2.all_edges(etype=canonical_etype, order='eid')
            assert F.array_equal(src, src2)
            assert F.array_equal(dst, dst2)
            assert F.array_equal(hg.edges[canonical_etype].data['w'], hg2.edges[canonical_etype].data['w'])

    # hetero_from_homo test case 2
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    g = dgl.graph(([0, 1, 2, 0], [2, 2, 3, 3]), idtype=idtype, device=F.ctx())
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    g.ndata[dgl.NTYPE] = F.tensor([0, 0, 1, 2])
    g.edata[dgl.ETYPE] = F.tensor([0, 0, 1, 2])
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    hg = dgl.to_heterogeneous(g, ['l0', 'l1', 'l2'], ['e0', 'e1', 'e2'])
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    assert hg.idtype == idtype
    assert hg.device == g.device
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    assert set(hg.canonical_etypes) == set(
        [('l0', 'e0', 'l1'), ('l1', 'e1', 'l2'), ('l0', 'e2', 'l2')])
    assert hg.number_of_nodes('l0') == 2
    assert hg.number_of_nodes('l1') == 1
    assert hg.number_of_nodes('l2') == 1
    assert hg.number_of_edges('e0') == 2
    assert hg.number_of_edges('e1') == 1
    assert hg.number_of_edges('e2') == 1
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    assert F.array_equal(hg.ndata[dgl.NID]['l0'], F.tensor([0, 1], F.int64))
    assert F.array_equal(hg.ndata[dgl.NID]['l1'], F.tensor([2], F.int64))
    assert F.array_equal(hg.ndata[dgl.NID]['l2'], F.tensor([3], F.int64))
    assert F.array_equal(hg.edata[dgl.EID][('l0', 'e0', 'l1')], F.tensor([0, 1], F.int64))
    assert F.array_equal(hg.edata[dgl.EID][('l0', 'e2', 'l2')], F.tensor([3], F.int64))
    assert F.array_equal(hg.edata[dgl.EID][('l1', 'e1', 'l2')], F.tensor([2], F.int64))
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    # hetero_from_homo test case 3
    mg = nx.MultiDiGraph([
        ('user', 'movie', 'watches'),
        ('user', 'TV', 'watches')])
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    g = dgl.graph(((0, 0), (1, 2)), idtype=idtype, device=F.ctx())
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    g.ndata[dgl.NTYPE] = F.tensor([0, 1, 2])
    g.edata[dgl.ETYPE] = F.tensor([0, 0])
    for _mg in [None, mg]:
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        hg = dgl.to_heterogeneous(g, ['user', 'TV', 'movie'], ['watches'], metagraph=_mg)
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        assert hg.idtype == g.idtype
        assert hg.device == g.device
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        assert set(hg.canonical_etypes) == set(
            [('user', 'watches', 'movie'), ('user', 'watches', 'TV')])
        assert hg.number_of_nodes('user') == 1
        assert hg.number_of_nodes('TV') == 1
        assert hg.number_of_nodes('movie') == 1
        assert hg.number_of_edges(('user', 'watches', 'TV')) == 1
        assert hg.number_of_edges(('user', 'watches', 'movie')) == 1
        assert len(hg.etypes) == 2

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    # hetero_to_homo test case 2
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    hg = dgl.heterograph({
        ('_U', '_E', '_V'): ([0, 1], [0, 1])
    }, {'_U': 2, '_V': 3}, idtype=idtype, device=F.ctx())
    g = dgl.to_homogeneous(hg)
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    assert hg.idtype == g.idtype
    assert hg.device == g.device
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    assert g.number_of_nodes() == 5

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    # hetero_to_subgraph_to_homo
    hg = dgl.heterograph({
        ('user', 'plays', 'game'): ([0, 1, 1, 2], [0, 0, 2, 1]),
        ('user', 'follows', 'user'): ([0, 1, 1], [1, 2, 2])
    }, idtype=idtype, device=F.ctx())
    hg.nodes['user'].data['h'] = F.copy_to(
        F.tensor([[1, 0], [0, 1], [1, 1]], dtype=idtype), ctx=F.ctx())
    sg = dgl.node_subgraph(hg, {'user': [1, 2]})
    assert len(sg.ntypes) == 2
    assert len(sg.etypes) == 2
    assert sg.num_nodes('user') == 2
    assert sg.num_nodes('game') == 0
    g = dgl.to_homogeneous(sg, ndata=['h'])
    assert 'h' in g.ndata.keys()
    assert g.num_nodes() == 2

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@unittest.skipIf(F._default_context_str == 'gpu', reason="Test on cpu is enough")
@parametrize_dtype
def test_to_homo_zero_nodes(idtype):
    # Fix gihub issue #2870
    g = dgl.heterograph({
        ('A', 'AB', 'B'): (np.random.randint(0, 200, (1000,)), np.random.randint(0, 200, (1000,))),
        ('B', 'BA', 'A'): (np.random.randint(0, 200, (1000,)), np.random.randint(0, 200, (1000,))),
    }, num_nodes_dict={'A': 200, 'B': 200, 'C': 0}, idtype=idtype)
    g.nodes['A'].data['x'] = F.randn((200, 3))
    g.nodes['B'].data['x'] = F.randn((200, 3))
    gg = dgl.to_homogeneous(g, ['x'])
    assert 'x' in gg.ndata

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@parametrize_dtype
def test_to_homo2(idtype):
    # test the result homogeneous graph has nodes and edges sorted by their types
    hg = create_test_heterograph(idtype)
    g = dgl.to_homogeneous(hg)
    ntypes = F.asnumpy(g.ndata[dgl.NTYPE])
    etypes = F.asnumpy(g.edata[dgl.ETYPE])
    p = 0
    for tid, ntype in enumerate(hg.ntypes):
        num_nodes = hg.num_nodes(ntype)
        for i in range(p, p + num_nodes):
            assert ntypes[i] == tid
        p += num_nodes
    p = 0
    for tid, etype in enumerate(hg.canonical_etypes):
        num_edges = hg.num_edges(etype)
        for i in range(p, p + num_edges):
            assert etypes[i] == tid
        p += num_edges
    # test store_type=False
    g = dgl.to_homogeneous(hg, store_type=False)
    assert dgl.NTYPE not in g.ndata
    assert dgl.ETYPE not in g.edata
    # test return_count=True
    g, ntype_count, etype_count = dgl.to_homogeneous(hg, return_count=True)
    for i, count in enumerate(ntype_count):
        assert count == hg.num_nodes(hg.ntypes[i])
    for i, count in enumerate(etype_count):
        assert count == hg.num_edges(hg.canonical_etypes[i])

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@parametrize_dtype
def test_invertible_conversion(idtype):
    # Test whether to_homogeneous and to_heterogeneous are invertible
    hg = create_test_heterograph(idtype)
    g = dgl.to_homogeneous(hg)
    hg2 = dgl.to_heterogeneous(g, hg.ntypes, hg.etypes)
    assert_is_identical_hetero(hg, hg2, True)

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@parametrize_dtype
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def test_metagraph_reachable(idtype):
    g = create_test_heterograph(idtype)
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    x = F.randn((3, 5))
    g.nodes['user'].data['h'] = x

    new_g = dgl.metapath_reachable_graph(g, ['follows', 'plays'])
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    assert new_g.idtype == idtype
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    assert new_g.ntypes == ['game', 'user']
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    assert new_g.number_of_edges() == 3
    assert F.asnumpy(new_g.has_edges_between([0, 0, 1], [0, 1, 1])).all()

    new_g = dgl.metapath_reachable_graph(g, ['follows'])
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    assert new_g.idtype == idtype
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    assert new_g.ntypes == ['user']
    assert new_g.number_of_edges() == 2
    assert F.asnumpy(new_g.has_edges_between([0, 1], [1, 2])).all()

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@unittest.skipIf(dgl.backend.backend_name == "mxnet", reason="MXNet doesn't support bool tensor")
@parametrize_dtype
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def test_subgraph_mask(idtype):
    g = create_test_heterograph(idtype)
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    g_graph = g['follows']
    g_bipartite = g['plays']

    x = F.randn((3, 5))
    y = F.randn((2, 4))
    g.nodes['user'].data['h'] = x
    g.edges['follows'].data['h'] = y

    def _check_subgraph(g, sg):
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        assert sg.idtype == g.idtype
        assert sg.device == g.device
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        assert sg.ntypes == g.ntypes
        assert sg.etypes == g.etypes
        assert sg.canonical_etypes == g.canonical_etypes
        assert F.array_equal(F.tensor(sg.nodes['user'].data[dgl.NID]),
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        assert F.array_equal(F.tensor(sg.nodes['game'].data[dgl.NID]),
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        assert F.array_equal(F.tensor(sg.edges['follows'].data[dgl.EID]),
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        assert F.array_equal(F.tensor(sg.edges['plays'].data[dgl.EID]),
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        assert F.array_equal(F.tensor(sg.edges['wishes'].data[dgl.EID]),
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        assert sg.number_of_nodes('developer') == 0
        assert sg.number_of_edges('develops') == 0
        assert F.array_equal(sg.nodes['user'].data['h'], g.nodes['user'].data['h'][1:3])
        assert F.array_equal(sg.edges['follows'].data['h'], g.edges['follows'].data['h'][1:2])

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    sg1 = g.subgraph({'user': F.tensor([False, True, True], dtype=F.bool),
                      'game': F.tensor([True, False, False, False], dtype=F.bool)})
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    _check_subgraph(g, sg1)
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    if F._default_context_str != 'gpu':
        # TODO(minjie): enable this later
        sg2 = g.edge_subgraph({'follows': F.tensor([False, True], dtype=F.bool),
                               'plays': F.tensor([False, True, False, False], dtype=F.bool),
                               'wishes': F.tensor([False, True], dtype=F.bool)})
        _check_subgraph(g, sg2)
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def test_subgraph(idtype):
    g = create_test_heterograph(idtype)
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    g_graph = g['follows']
    g_bipartite = g['plays']

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    x = F.randn((3, 5))
    y = F.randn((2, 4))
    g.nodes['user'].data['h'] = x
    g.edges['follows'].data['h'] = y

    def _check_subgraph(g, sg):
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        assert sg.idtype == g.idtype
        assert sg.device == g.device
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        assert sg.ntypes == g.ntypes
        assert sg.etypes == g.etypes
        assert sg.canonical_etypes == g.canonical_etypes
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        assert F.array_equal(F.tensor(sg.nodes['user'].data[dgl.NID]),
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                             F.tensor([1, 2], g.idtype))
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        assert F.array_equal(F.tensor(sg.nodes['game'].data[dgl.NID]),
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                             F.tensor([0], g.idtype))
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        assert F.array_equal(F.tensor(sg.edges['follows'].data[dgl.EID]),
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                             F.tensor([1], g.idtype))
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        assert F.array_equal(F.tensor(sg.edges['plays'].data[dgl.EID]),
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                             F.tensor([1], g.idtype))
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        assert F.array_equal(F.tensor(sg.edges['wishes'].data[dgl.EID]),
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                             F.tensor([1], g.idtype))
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        assert sg.number_of_nodes('developer') == 0
        assert sg.number_of_edges('develops') == 0
        assert F.array_equal(sg.nodes['user'].data['h'], g.nodes['user'].data['h'][1:3])
        assert F.array_equal(sg.edges['follows'].data['h'], g.edges['follows'].data['h'][1:2])

    sg1 = g.subgraph({'user': [1, 2], 'game': [0]})
    _check_subgraph(g, sg1)
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    if F._default_context_str != 'gpu':
        # TODO(minjie): enable this later
        sg2 = g.edge_subgraph({'follows': [1], 'plays': [1], 'wishes': [1]})
        _check_subgraph(g, sg2)
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    # backend tensor input
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    sg1 = g.subgraph({'user': F.tensor([1, 2], dtype=idtype),
                      'game': F.tensor([0], dtype=idtype)})
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    _check_subgraph(g, sg1)
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    if F._default_context_str != 'gpu':
        # TODO(minjie): enable this later
        sg2 = g.edge_subgraph({'follows': F.tensor([1], dtype=idtype),
                               'plays': F.tensor([1], dtype=idtype),
                               'wishes': F.tensor([1], dtype=idtype)})
        _check_subgraph(g, sg2)
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    # numpy input
    sg1 = g.subgraph({'user': np.array([1, 2]),
                      'game': np.array([0])})
    _check_subgraph(g, sg1)
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    if F._default_context_str != 'gpu':
        # TODO(minjie): enable this later
        sg2 = g.edge_subgraph({'follows': np.array([1]),
                               'plays': np.array([1]),
                               'wishes': np.array([1])})
        _check_subgraph(g, sg2)
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    def _check_subgraph_single_ntype(g, sg, preserve_nodes=False):
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        assert sg.idtype == g.idtype
        assert sg.device == g.device
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        assert sg.ntypes == g.ntypes
        assert sg.etypes == g.etypes
        assert sg.canonical_etypes == g.canonical_etypes
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        if not preserve_nodes:
            assert F.array_equal(F.tensor(sg.nodes['user'].data[dgl.NID]),
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                                 F.tensor([1, 2], g.idtype))
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        else:
            for ntype in sg.ntypes:
                assert g.number_of_nodes(ntype) == sg.number_of_nodes(ntype)

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        assert F.array_equal(F.tensor(sg.edges['follows'].data[dgl.EID]),
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                             F.tensor([1], g.idtype))
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        if not preserve_nodes:
            assert F.array_equal(sg.nodes['user'].data['h'], g.nodes['user'].data['h'][1:3])
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        assert F.array_equal(sg.edges['follows'].data['h'], g.edges['follows'].data['h'][1:2])

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    def _check_subgraph_single_etype(g, sg, preserve_nodes=False):
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        assert sg.ntypes == g.ntypes
        assert sg.etypes == g.etypes
        assert sg.canonical_etypes == g.canonical_etypes
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        if not preserve_nodes:
            assert F.array_equal(F.tensor(sg.nodes['user'].data[dgl.NID]),
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                                 F.tensor([0, 1], g.idtype))
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            assert F.array_equal(F.tensor(sg.nodes['game'].data[dgl.NID]),
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                                 F.tensor([0], g.idtype))
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        else:
            for ntype in sg.ntypes:
                assert g.number_of_nodes(ntype) == sg.number_of_nodes(ntype)

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        assert F.array_equal(F.tensor(sg.edges['plays'].data[dgl.EID]),
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                             F.tensor([0, 1], g.idtype))
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    sg1_graph = g_graph.subgraph([1, 2])
    _check_subgraph_single_ntype(g_graph, sg1_graph)
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    if F._default_context_str != 'gpu':
        # TODO(minjie): enable this later
        sg1_graph = g_graph.edge_subgraph([1])
        _check_subgraph_single_ntype(g_graph, sg1_graph)
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        sg1_graph = g_graph.edge_subgraph([1], relabel_nodes=False)
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        _check_subgraph_single_ntype(g_graph, sg1_graph, True)
        sg2_bipartite = g_bipartite.edge_subgraph([0, 1])
        _check_subgraph_single_etype(g_bipartite, sg2_bipartite)
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        sg2_bipartite = g_bipartite.edge_subgraph([0, 1], relabel_nodes=False)
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        _check_subgraph_single_etype(g_bipartite, sg2_bipartite, True)
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    def _check_typed_subgraph1(g, sg):
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        assert g.idtype == sg.idtype
        assert g.device == sg.device
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        assert set(sg.ntypes) == {'user', 'game'}
        assert set(sg.etypes) == {'follows', 'plays', 'wishes'}
        for ntype in sg.ntypes:
            assert sg.number_of_nodes(ntype) == g.number_of_nodes(ntype)
        for etype in sg.etypes:
            src_sg, dst_sg = sg.all_edges(etype=etype, order='eid')
            src_g, dst_g = g.all_edges(etype=etype, order='eid')
            assert F.array_equal(src_sg, src_g)
            assert F.array_equal(dst_sg, dst_g)
        assert F.array_equal(sg.nodes['user'].data['h'], g.nodes['user'].data['h'])
        assert F.array_equal(sg.edges['follows'].data['h'], g.edges['follows'].data['h'])
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        g.nodes['user'].data['h'] = F.scatter_row(g.nodes['user'].data['h'], F.tensor([2]), F.randn((1, 5)))
        g.edges['follows'].data['h'] = F.scatter_row(g.edges['follows'].data['h'], F.tensor([1]), F.randn((1, 4)))
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        assert F.array_equal(sg.nodes['user'].data['h'], g.nodes['user'].data['h'])
        assert F.array_equal(sg.edges['follows'].data['h'], g.edges['follows'].data['h'])

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    def _check_typed_subgraph2(g, sg):
        assert set(sg.ntypes) == {'developer', 'game'}
        assert set(sg.etypes) == {'develops'}
        for ntype in sg.ntypes:
            assert sg.number_of_nodes(ntype) == g.number_of_nodes(ntype)
        for etype in sg.etypes:
            src_sg, dst_sg = sg.all_edges(etype=etype, order='eid')
            src_g, dst_g = g.all_edges(etype=etype, order='eid')
            assert F.array_equal(src_sg, src_g)
            assert F.array_equal(dst_sg, dst_g)

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    sg3 = g.node_type_subgraph(['user', 'game'])
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    _check_typed_subgraph1(g, sg3)
    sg4 = g.edge_type_subgraph(['develops'])
    _check_typed_subgraph2(g, sg4)
    sg5 = g.edge_type_subgraph(['follows', 'plays', 'wishes'])
    _check_typed_subgraph1(g, sg5)
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@parametrize_dtype
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def test_apply(idtype):
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    def node_udf(nodes):
        return {'h': nodes.data['h'] * 2}
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    def node_udf2(nodes):
        return {'h': F.sum(nodes.data['h'], dim=1, keepdims=True)}
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    def edge_udf(edges):
        return {'h': edges.data['h'] * 2 + edges.src['h']}

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    g = create_test_heterograph(idtype)
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    g.nodes['user'].data['h'] = F.ones((3, 5))
    g.apply_nodes(node_udf, ntype='user')
    assert F.array_equal(g.nodes['user'].data['h'], F.ones((3, 5)) * 2)

    g['plays'].edata['h'] = F.ones((4, 5))
    g.apply_edges(edge_udf, etype=('user', 'plays', 'game'))
    assert F.array_equal(g['plays'].edata['h'], F.ones((4, 5)) * 4)

    # test apply on graph with only one type
    g['follows'].apply_nodes(node_udf)
    assert F.array_equal(g.nodes['user'].data['h'], F.ones((3, 5)) * 4)
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    g['plays'].apply_edges(edge_udf)
    assert F.array_equal(g['plays'].edata['h'], F.ones((4, 5)) * 12)

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    # Test the case that feature size changes
    g.nodes['user'].data['h'] = F.ones((3, 5))
    g.apply_nodes(node_udf2, ntype='user')
    assert F.array_equal(g.nodes['user'].data['h'], F.ones((3, 1)) * 5)

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    # test fail case
    # fail due to multiple types
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    with pytest.raises(DGLError):
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        g.apply_nodes(node_udf)

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    with pytest.raises(DGLError):
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        g.apply_edges(edge_udf)

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@parametrize_dtype
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def test_level2(idtype):
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    #edges = {
    #    'follows': ([0, 1], [1, 2]),
    #    'plays': ([0, 1, 2, 1], [0, 0, 1, 1]),
    #    'wishes': ([0, 2], [1, 0]),
    #    'develops': ([0, 1], [0, 1]),
    #}
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    g = create_test_heterograph(idtype)
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    def rfunc(nodes):
        return {'y': F.sum(nodes.mailbox['m'], 1)}
    def rfunc2(nodes):
        return {'y': F.max(nodes.mailbox['m'], 1)}
    def mfunc(edges):
        return {'m': edges.src['h']}
    def afunc(nodes):
        return {'y' : nodes.data['y'] + 1}

    #############################################################
    #  send_and_recv
    #############################################################

    g.nodes['user'].data['h'] = F.ones((3, 2))
    g.send_and_recv([2, 3], mfunc, rfunc, etype='plays')
    y = g.nodes['game'].data['y']
    assert F.array_equal(y, F.tensor([[0., 0.], [2., 2.]]))

    # only one type
    g['plays'].send_and_recv([2, 3], mfunc, rfunc)
    y = g.nodes['game'].data['y']
    assert F.array_equal(y, F.tensor([[0., 0.], [2., 2.]]))
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    # test fail case
    # fail due to multiple types
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    with pytest.raises(DGLError):
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        g.send_and_recv([2, 3], mfunc, rfunc)

    g.nodes['game'].data.clear()

    #############################################################
    #  pull
    #############################################################

    g.nodes['user'].data['h'] = F.ones((3, 2))
    g.pull(1, mfunc, rfunc, etype='plays')
    y = g.nodes['game'].data['y']
    assert F.array_equal(y, F.tensor([[0., 0.], [2., 2.]]))

    # only one type
    g['plays'].pull(1, mfunc, rfunc)
    y = g.nodes['game'].data['y']
    assert F.array_equal(y, F.tensor([[0., 0.], [2., 2.]]))

    # test fail case
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    with pytest.raises(DGLError):
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        g.pull(1, mfunc, rfunc)

    g.nodes['game'].data.clear()

    #############################################################
    #  update_all
    #############################################################

    g.nodes['user'].data['h'] = F.ones((3, 2))
    g.update_all(mfunc, rfunc, etype='plays')
    y = g.nodes['game'].data['y']
    assert F.array_equal(y, F.tensor([[2., 2.], [2., 2.]]))

    # only one type
    g['plays'].update_all(mfunc, rfunc)
    y = g.nodes['game'].data['y']
    assert F.array_equal(y, F.tensor([[2., 2.], [2., 2.]]))

    # test fail case
    # fail due to multiple types
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    with pytest.raises(DGLError):
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        g.update_all(mfunc, rfunc)

    # test multi
    g.multi_update_all(
        {'plays' : (mfunc, rfunc),
         ('user', 'wishes', 'game'): (mfunc, rfunc2)},
        'sum')
    assert F.array_equal(g.nodes['game'].data['y'], F.tensor([[3., 3.], [3., 3.]]))

    # test multi
    g.multi_update_all(
        {'plays' : (mfunc, rfunc, afunc),
         ('user', 'wishes', 'game'): (mfunc, rfunc2)},
        'sum', afunc)
    assert F.array_equal(g.nodes['game'].data['y'], F.tensor([[5., 5.], [5., 5.]]))

    # test cross reducer
    g.nodes['user'].data['h'] = F.randn((3, 2))
    for cred in ['sum', 'max', 'min', 'mean', 'stack']:
        g.multi_update_all(
            {'plays' : (mfunc, rfunc, afunc),
             'wishes': (mfunc, rfunc2)},
            cred, afunc)
        y = g.nodes['game'].data['y']
        g['plays'].update_all(mfunc, rfunc, afunc)
        y1 = g.nodes['game'].data['y']
        g['wishes'].update_all(mfunc, rfunc2)
        y2 = g.nodes['game'].data['y']
        if cred == 'stack':
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            # stack has an internal order by edge type id
            yy = F.stack([y1, y2], 1)
            yy = yy + 1  # final afunc
            assert F.array_equal(y, yy)
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        else:
            yy = get_redfn(cred)(F.stack([y1, y2], 0), 0)
            yy = yy + 1  # final afunc
            assert F.array_equal(y, yy)

    # test fail case
    # fail because cannot infer ntype
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    with pytest.raises(DGLError):
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        g.update_all(
            {'plays' : (mfunc, rfunc),
             'follows': (mfunc, rfunc2)},
            'sum')

    g.nodes['game'].data.clear()
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@parametrize_dtype
@unittest.skipIf(F._default_context_str == 'cpu', reason="Need gpu for this test")
def test_more_nnz(idtype):
    g = dgl.graph(([0, 0, 0, 0, 0], [1, 1, 1, 1, 1]), idtype=idtype, device=F.ctx())
    g.ndata['x'] = F.copy_to(F.ones((2, 5)), ctx=F.ctx())
    g.update_all(fn.copy_u('x', 'm'), fn.sum('m', 'y'))
    y = g.ndata['y']
    ans = np.zeros((2, 5))
    ans[1] = 5
    ans = F.copy_to(F.tensor(ans, dtype=F.dtype(y)), ctx=F.ctx())
    assert F.array_equal(y, ans)

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@parametrize_dtype
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def test_updates(idtype):
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    def msg_func(edges):
        return {'m': edges.src['h']}
    def reduce_func(nodes):
        return {'y': F.sum(nodes.mailbox['m'], 1)}
    def apply_func(nodes):
        return {'y': nodes.data['y'] * 2}
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    g = create_test_heterograph(idtype)
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    x = F.randn((3, 5))
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    g.nodes['user'].data['h'] = x
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    for msg, red, apply in itertools.product(
            [fn.copy_u('h', 'm'), msg_func], [fn.sum('m', 'y'), reduce_func],
            [None, apply_func]):
        multiplier = 1 if apply is None else 2

        g['user', 'plays', 'game'].update_all(msg, red, apply)
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        y = g.nodes['game'].data['y']
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        assert F.array_equal(y[0], (x[0] + x[1]) * multiplier)
        assert F.array_equal(y[1], (x[1] + x[2]) * multiplier)
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        del g.nodes['game'].data['y']
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        g['user', 'plays', 'game'].send_and_recv(([0, 1, 2], [0, 1, 1]), msg, red, apply)
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        y = g.nodes['game'].data['y']
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        assert F.array_equal(y[0], x[0] * multiplier)
        assert F.array_equal(y[1], (x[1] + x[2]) * multiplier)
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        del g.nodes['game'].data['y']
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        # pulls from destination (game) node 0
        g['user', 'plays', 'game'].pull(0, msg, red, apply)
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        y = g.nodes['game'].data['y']
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        assert F.array_equal(y[0], (x[0] + x[1]) * multiplier)
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        del g.nodes['game'].data['y']
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        # pushes from source (user) node 0
        g['user', 'plays', 'game'].push(0, msg, red, apply)
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        y = g.nodes['game'].data['y']
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        assert F.array_equal(y[0], x[0] * multiplier)
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        del g.nodes['game'].data['y']

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@parametrize_dtype
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def test_backward(idtype):
    g = create_test_heterograph(idtype)
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    x = F.randn((3, 5))
    F.attach_grad(x)
    g.nodes['user'].data['h'] = x
    with F.record_grad():
        g.multi_update_all(
            {'plays' : (fn.copy_u('h', 'm'), fn.sum('m', 'y')),
             'wishes': (fn.copy_u('h', 'm'), fn.sum('m', 'y'))},
            'sum')
        y = g.nodes['game'].data['y']
        F.backward(y, F.ones(y.shape))
    print(F.grad(x))
    assert F.array_equal(F.grad(x), F.tensor([[2., 2., 2., 2., 2.],
                                              [2., 2., 2., 2., 2.],
                                              [2., 2., 2., 2., 2.]]))
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@parametrize_dtype
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def test_empty_heterograph(idtype):
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1605
1606
    def assert_empty(g):
        assert g.number_of_nodes('user') == 0
        assert g.number_of_edges('plays') == 0
        assert g.number_of_nodes('game') == 0

    # empty src-dst pair
    assert_empty(dgl.heterograph({('user', 'plays', 'game'): ([], [])}))

1607
    g = dgl.heterograph({('user', 'follows', 'user'): ([], [])}, idtype=idtype, device=F.ctx())
1608
1609
    assert g.idtype == idtype
    assert g.device == F.ctx()
1610
1611
1612
1613
    assert g.number_of_nodes('user') == 0
    assert g.number_of_edges('follows') == 0

    # empty relation graph with others
1614
1615
    g = dgl.heterograph({('user', 'plays', 'game'): ([], []), ('developer', 'develops', 'game'):
        ([0, 1], [0, 1])}, idtype=idtype, device=F.ctx())
1616
1617
    assert g.idtype == idtype
    assert g.device == F.ctx()
1618
1619
1620
1621
1622
1623
    assert g.number_of_nodes('user') == 0
    assert g.number_of_edges('plays') == 0
    assert g.number_of_nodes('game') == 2
    assert g.number_of_edges('develops') == 2
    assert g.number_of_nodes('developer') == 2

1624
1625
@parametrize_dtype
def test_types_in_function(idtype):
1626
1627
1628
1629
1630
1631
1632
1633
1634
1635
1636
1637
1638
1639
1640
1641
1642
1643
1644
1645
1646
1647
1648
1649
1650
1651
1652
1653
1654
1655
1656
1657
    def mfunc1(edges):
        assert edges.canonical_etype == ('user', 'follow', 'user')
        return {}

    def rfunc1(nodes):
        assert nodes.ntype == 'user'
        return {}

    def filter_nodes1(nodes):
        assert nodes.ntype == 'user'
        return F.zeros((3,))

    def filter_edges1(edges):
        assert edges.canonical_etype == ('user', 'follow', 'user')
        return F.zeros((2,))

    def mfunc2(edges):
        assert edges.canonical_etype == ('user', 'plays', 'game')
        return {}

    def rfunc2(nodes):
        assert nodes.ntype == 'game'
        return {}

    def filter_nodes2(nodes):
        assert nodes.ntype == 'game'
        return F.zeros((3,))

    def filter_edges2(edges):
        assert edges.canonical_etype == ('user', 'plays', 'game')
        return F.zeros((2,))

1658
1659
    g = dgl.heterograph({('user', 'follow', 'user'): ((0, 1), (1, 2))},
                        idtype=idtype, device=F.ctx())
1660
1661
1662
1663
1664
1665
1666
1667
1668
    g.apply_nodes(rfunc1)
    g.apply_edges(mfunc1)
    g.update_all(mfunc1, rfunc1)
    g.send_and_recv([0, 1], mfunc1, rfunc1)
    g.push([0], mfunc1, rfunc1)
    g.pull([1], mfunc1, rfunc1)
    g.filter_nodes(filter_nodes1)
    g.filter_edges(filter_edges1)

1669
    g = dgl.heterograph({('user', 'plays', 'game'): ([0, 1], [1, 2])}, idtype=idtype, device=F.ctx())
1670
1671
1672
1673
1674
1675
1676
1677
1678
    g.apply_nodes(rfunc2, ntype='game')
    g.apply_edges(mfunc2)
    g.update_all(mfunc2, rfunc2)
    g.send_and_recv([0, 1], mfunc2, rfunc2)
    g.push([0], mfunc2, rfunc2)
    g.pull([1], mfunc2, rfunc2)
    g.filter_nodes(filter_nodes2, ntype='game')
    g.filter_edges(filter_edges2)

1679
@parametrize_dtype
1680
def test_stack_reduce(idtype):
1681
1682
1683
1684
1685
1686
    #edges = {
    #    'follows': ([0, 1], [1, 2]),
    #    'plays': ([0, 1, 2, 1], [0, 0, 1, 1]),
    #    'wishes': ([0, 2], [1, 0]),
    #    'develops': ([0, 1], [0, 1]),
    #}
1687
    g = create_test_heterograph(idtype)
1688
1689
1690
1691
1692
1693
1694
1695
1696
1697
1698
1699
1700
1701
1702
1703
1704
1705
    g.nodes['user'].data['h'] = F.randn((3, 200))
    def rfunc(nodes):
        return {'y': F.sum(nodes.mailbox['m'], 1)}
    def rfunc2(nodes):
        return {'y': F.max(nodes.mailbox['m'], 1)}
    def mfunc(edges):
        return {'m': edges.src['h']}
    g.multi_update_all(
            {'plays' : (mfunc, rfunc),
             'wishes': (mfunc, rfunc2)},
            'stack')
    assert g.nodes['game'].data['y'].shape == (g.number_of_nodes('game'), 2, 200)
    # only one type-wise update_all, stack still adds one dimension
    g.multi_update_all(
            {'plays' : (mfunc, rfunc)},
            'stack')
    assert g.nodes['game'].data['y'].shape == (g.number_of_nodes('game'), 1, 200)

1706
@parametrize_dtype
1707
def test_isolated_ntype(idtype):
1708
    g = dgl.heterograph({
1709
        ('A', 'AB', 'B'): ([0, 1, 2], [1, 2, 3])},
1710
1711
        num_nodes_dict={'A': 3, 'B': 4, 'C': 4},
        idtype=idtype, device=F.ctx())
1712
1713
1714
1715
1716
    assert g.number_of_nodes('A') == 3
    assert g.number_of_nodes('B') == 4
    assert g.number_of_nodes('C') == 4

    g = dgl.heterograph({
1717
        ('A', 'AC', 'C'): ([0, 1, 2], [1, 2, 3])},
1718
1719
        num_nodes_dict={'A': 3, 'B': 4, 'C': 4},
        idtype=idtype, device=F.ctx())
1720
1721
1722
1723
    assert g.number_of_nodes('A') == 3
    assert g.number_of_nodes('B') == 4
    assert g.number_of_nodes('C') == 4

1724
    G = dgl.graph(([0, 1, 2], [4, 5, 6]), num_nodes=11, idtype=idtype, device=F.ctx())
1725
1726
    G.ndata[dgl.NTYPE] = F.tensor([0, 0, 0, 1, 1, 1, 1, 2, 2, 2, 2], dtype=F.int64)
    G.edata[dgl.ETYPE] = F.tensor([0, 0, 0], dtype=F.int64)
1727
    g = dgl.to_heterogeneous(G, ['A', 'B', 'C'], ['AB'])
1728
1729
1730
1731
    assert g.number_of_nodes('A') == 3
    assert g.number_of_nodes('B') == 4
    assert g.number_of_nodes('C') == 4

1732
1733

@parametrize_dtype
1734
def test_ismultigraph(idtype):
1735
1736
    g1 = dgl.heterograph({('A', 'AB', 'B'): ([0, 0, 1, 2], [1, 2, 5, 5])},
                         {'A': 6, 'B': 6}, idtype=idtype, device=F.ctx())
1737
    assert g1.is_multigraph == False
1738
1739
    g2 = dgl.heterograph({('A', 'AC', 'C'): ([0, 0, 0, 1], [1, 1, 2, 5])},
                         {'A': 6, 'C': 6}, idtype=idtype, device=F.ctx())
1740
    assert g2.is_multigraph == True
1741
    g3 = dgl.graph(((0, 1), (1, 2)), num_nodes=6, idtype=idtype, device=F.ctx())
1742
    assert g3.is_multigraph == False
1743
    g4 = dgl.graph(([0, 0, 1], [1, 1, 2]), num_nodes=6, idtype=idtype, device=F.ctx())
1744
    assert g4.is_multigraph == True
1745
1746
1747
1748
    g = dgl.heterograph({
        ('A', 'AB', 'B'): ([0, 0, 1, 2], [1, 2, 5, 5]),
        ('A', 'AA', 'A'): ([0, 1], [1, 2])},
        {'A': 6, 'B': 6}, idtype=idtype, device=F.ctx())
1749
    assert g.is_multigraph == False
1750
1751
1752
1753
    g = dgl.heterograph({
        ('A', 'AB', 'B'): ([0, 0, 1, 2], [1, 2, 5, 5]),
        ('A', 'AC', 'C'): ([0, 0, 0, 1], [1, 1, 2, 5])},
        {'A': 6, 'B': 6, 'C': 6}, idtype=idtype, device=F.ctx())
1754
    assert g.is_multigraph == True
1755
1756
1757
1758
    g = dgl.heterograph({
        ('A', 'AB', 'B'): ([0, 0, 1, 2], [1, 2, 5, 5]),
        ('A', 'AA', 'A'): ([0, 0, 1], [1, 1, 2])},
        {'A': 6, 'B': 6}, idtype=idtype, device=F.ctx())
1759
    assert g.is_multigraph == True
1760
1761
1762
1763
    g = dgl.heterograph({
        ('A', 'AC', 'C'): ([0, 0, 0, 1], [1, 1, 2, 5]),
        ('A', 'AA', 'A'): ([0, 1], [1, 2])},
        {'A': 6, 'C': 6}, idtype=idtype, device=F.ctx())
1764
1765
    assert g.is_multigraph == True

1766
@parametrize_dtype
1767
def test_bipartite(idtype):
1768
1769
    g1 = dgl.heterograph({('A', 'AB', 'B'): ([0, 0, 1], [1, 2, 5])},
                         idtype=idtype, device=F.ctx())
1770
1771
1772
1773
1774
1775
1776
    assert g1.is_unibipartite
    assert len(g1.ntypes) == 2
    assert g1.etypes == ['AB']
    assert g1.srctypes == ['A']
    assert g1.dsttypes == ['B']
    assert g1.number_of_nodes('A') == 2
    assert g1.number_of_nodes('B') == 6
1777
1778
1779
1780
    assert g1.number_of_src_nodes('A') == 2
    assert g1.number_of_src_nodes() == 2
    assert g1.number_of_dst_nodes('B') == 6
    assert g1.number_of_dst_nodes() == 6
1781
1782
1783
1784
1785
1786
1787
1788
1789
1790
1791
    assert g1.number_of_edges() == 3
    g1.srcdata['h'] = F.randn((2, 5))
    assert F.array_equal(g1.srcnodes['A'].data['h'], g1.srcdata['h'])
    assert F.array_equal(g1.nodes['A'].data['h'], g1.srcdata['h'])
    assert F.array_equal(g1.nodes['SRC/A'].data['h'], g1.srcdata['h'])
    g1.dstdata['h'] = F.randn((6, 3))
    assert F.array_equal(g1.dstnodes['B'].data['h'], g1.dstdata['h'])
    assert F.array_equal(g1.nodes['B'].data['h'], g1.dstdata['h'])
    assert F.array_equal(g1.nodes['DST/B'].data['h'], g1.dstdata['h'])

    # more complicated bipartite
1792
1793
1794
1795
1796
1797
1798
1799
1800
1801
1802
1803
1804
1805
1806
1807
1808
1809
1810
1811
1812
1813
1814
1815
1816
1817
    g2 = dgl.heterograph({
        ('A', 'AB', 'B'): ([0, 0, 1], [1, 2, 5]),
        ('A', 'AC', 'C'): ([1, 0], [0, 0])
    }, idtype=idtype, device=F.ctx())

    assert g2.is_unibipartite
    assert g2.srctypes == ['A']
    assert set(g2.dsttypes) == {'B', 'C'}
    assert g2.number_of_nodes('A') == 2
    assert g2.number_of_nodes('B') == 6
    assert g2.number_of_nodes('C') == 1
    assert g2.number_of_src_nodes('A') == 2
    assert g2.number_of_src_nodes() == 2
    assert g2.number_of_dst_nodes('B') == 6
    assert g2.number_of_dst_nodes('C') == 1
    g2.srcdata['h'] = F.randn((2, 5))
    assert F.array_equal(g2.srcnodes['A'].data['h'], g2.srcdata['h'])
    assert F.array_equal(g2.nodes['A'].data['h'], g2.srcdata['h'])
    assert F.array_equal(g2.nodes['SRC/A'].data['h'], g2.srcdata['h'])

    g3 = dgl.heterograph({
        ('A', 'AB', 'B'): ([0, 0, 1], [1, 2, 5]),
        ('A', 'AC', 'C'): ([1, 0], [0, 0]),
        ('A', 'AA', 'A'): ([0, 1], [0, 1])
    }, idtype=idtype, device=F.ctx())
    assert not g3.is_unibipartite
1818

1819
1820
1821
1822
1823
1824
1825
    g4 = dgl.heterograph({
        ('A', 'AB', 'B'): ([0, 0, 1], [1, 2, 5]),
        ('C', 'CA', 'A'): ([1, 0], [0, 0])
    }, idtype=idtype, device=F.ctx())

    assert not g4.is_unibipartite

1826
@parametrize_dtype
1827
def test_dtype_cast(idtype):
1828
    g = dgl.graph(([0, 1, 0, 2], [0, 1, 1, 0]), idtype=idtype, device=F.ctx())
1829
    assert g.idtype == idtype
1830
1831
    g.ndata["feat"] = F.tensor([3, 4, 5])
    g.edata["h"] = F.tensor([3, 4, 5, 6])
1832
    if idtype == "int32":
1833
        g_cast = g.long()
1834
        assert g_cast.idtype == F.int64
1835
1836
    else:
        g_cast = g.int()
1837
1838
        assert g_cast.idtype == F.int32
    test_utils.check_graph_equal(g, g_cast, check_idtype=False)
1839

1840
1841
@parametrize_dtype
def test_format(idtype):
1842
    # single relation
1843
    g = dgl.graph(([0, 1, 0, 2], [0, 1, 1, 0]), idtype=idtype, device=F.ctx())
1844
1845
1846
    assert g.formats()['created'] == ['coo']
    g1 = g.formats(['coo', 'csr', 'csc'])
    assert len(g1.formats()['created']) + len(g1.formats()['not created']) == 3
1847
    g1.create_formats_()
1848
1849
    assert len(g1.formats()['created']) == 3
    assert g.formats()['created'] == ['coo']
1850
1851
1852

    # multiple relation
    g = dgl.heterograph({
1853
1854
1855
1856
        ('user', 'follows', 'user'): ([0, 1], [1, 2]),
        ('user', 'plays', 'game'): ([0, 1, 1, 2], [0, 0, 1, 1]),
        ('developer', 'develops', 'game'): ([0, 1], [0, 1])
        }, idtype=idtype, device=F.ctx())
1857
1858
    user_feat = F.randn((g['follows'].number_of_src_nodes(), 5))
    g['follows'].srcdata['h'] = user_feat
1859
    g1 = g.formats('csc')
1860
1861
1862
    # test frame
    assert F.array_equal(g1['follows'].srcdata['h'], user_feat)
    # test each relation graph
1863
1864
    assert g1.formats()['created'] == ['csc']
    assert len(g1.formats()['not created']) == 0
1865

1866
1867
1868
1869
1870
1871
1872
1873
1874
1875
1876
    # in_degrees
    g = dgl.rand_graph(100, 2340).to(F.ctx())
    ind_arr = []
    for vid in range(0, 100):
        ind_arr.append(g.in_degrees(vid))
    in_degrees = g.in_degrees()
    g = g.formats('coo')
    for vid in range(0, 100):
        assert g.in_degrees(vid) == ind_arr[vid]
    assert F.array_equal(in_degrees, g.in_degrees())

1877
1878
@parametrize_dtype
def test_edges_order(idtype):
1879
1880
1881
1882
    # (0, 2), (1, 2), (0, 1), (0, 1), (2, 1)
    g = dgl.graph((
        np.array([0, 1, 0, 0, 2]),
        np.array([2, 2, 1, 1, 1])
1883
    ), idtype=idtype, device=F.ctx())
1884

1885
    print(g.formats())
1886
    src, dst = g.all_edges(order='srcdst')
1887
1888
    assert F.array_equal(src, F.tensor([0, 0, 0, 1, 2], dtype=idtype))
    assert F.array_equal(dst, F.tensor([1, 1, 2, 2, 1], dtype=idtype))
1889

1890
@parametrize_dtype
1891
def test_reverse(idtype):
1892
1893
    g = dgl.heterograph({
        ('user', 'follows', 'user'): ([0, 1, 2, 4, 3 ,1, 3], [1, 2, 3, 2, 0, 0, 1]),
1894
    }, idtype=idtype, device=F.ctx())
1895
    gidx = g._graph
1896
    r_gidx = gidx.reverse()
1897
1898
1899
1900
1901

    assert gidx.number_of_nodes(0) == r_gidx.number_of_nodes(0)
    assert gidx.number_of_edges(0) == r_gidx.number_of_edges(0)
    g_s, g_d, _ = gidx.edges(0)
    rg_s, rg_d, _ = r_gidx.edges(0)
1902
1903
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1904
1905

    # force to start with 'csr'
1906
1907
    gidx = gidx.formats('csr')
    gidx = gidx.formats(['coo', 'csr', 'csc'])
1908
    r_gidx = gidx.reverse()
1909
1910
    assert 'csr' in gidx.formats()['created']
    assert 'csc' in r_gidx.formats()['created']
1911
1912
1913
1914
    assert gidx.number_of_nodes(0) == r_gidx.number_of_nodes(0)
    assert gidx.number_of_edges(0) == r_gidx.number_of_edges(0)
    g_s, g_d, _ = gidx.edges(0)
    rg_s, rg_d, _ = r_gidx.edges(0)
1915
1916
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1917
1918

    # force to start with 'csc'
1919
1920
    gidx = gidx.formats('csc')
    gidx = gidx.formats(['coo', 'csr', 'csc'])
1921
    r_gidx = gidx.reverse()
1922
1923
    assert 'csc' in gidx.formats()['created']
    assert 'csr' in r_gidx.formats()['created']
1924
1925
1926
1927
    assert gidx.number_of_nodes(0) == r_gidx.number_of_nodes(0)
    assert gidx.number_of_edges(0) == r_gidx.number_of_edges(0)
    g_s, g_d, _ = gidx.edges(0)
    rg_s, rg_d, _ = r_gidx.edges(0)
1928
1929
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1930
1931
1932
1933
1934

    g = dgl.heterograph({
        ('user', 'follows', 'user'): ([0, 1, 2, 4, 3 ,1, 3], [1, 2, 3, 2, 0, 0, 1]),
        ('user', 'plays', 'game'): ([0, 0, 2, 3, 3, 4, 1], [1, 0, 1, 0, 1, 0, 0]),
        ('developer', 'develops', 'game'): ([0, 1, 1, 2], [0, 0, 1, 1]),
1935
        }, idtype=idtype, device=F.ctx())
1936
    gidx = g._graph
1937
1938
1939
1940
1941
1942
1943
1944
    r_gidx = gidx.reverse()

    # metagraph
    mg = gidx.metagraph
    r_mg = r_gidx.metagraph
    for etype in range(3):
        assert mg.find_edge(etype) == r_mg.find_edge(etype)[::-1]

1945
1946
1947
1948
1949
1950
1951
1952
1953
    # three node types and three edge types
    assert gidx.number_of_nodes(0) == r_gidx.number_of_nodes(0)
    assert gidx.number_of_nodes(1) == r_gidx.number_of_nodes(1)
    assert gidx.number_of_nodes(2) == r_gidx.number_of_nodes(2)
    assert gidx.number_of_edges(0) == r_gidx.number_of_edges(0)
    assert gidx.number_of_edges(1) == r_gidx.number_of_edges(1)
    assert gidx.number_of_edges(2) == r_gidx.number_of_edges(2)
    g_s, g_d, _ = gidx.edges(0)
    rg_s, rg_d, _ = r_gidx.edges(0)
1954
1955
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1956
1957
    g_s, g_d, _ = gidx.edges(1)
    rg_s, rg_d, _ = r_gidx.edges(1)
1958
1959
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1960
1961
    g_s, g_d, _ = gidx.edges(2)
    rg_s, rg_d, _ = r_gidx.edges(2)
1962
1963
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1964
1965

    # force to start with 'csr'
1966
1967
    gidx = gidx.formats('csr')
    gidx = gidx.formats(['coo', 'csr', 'csc'])
1968
    r_gidx = gidx.reverse()
1969
    # three node types and three edge types
1970
1971
    assert 'csr' in gidx.formats()['created']
    assert 'csc' in r_gidx.formats()['created']
1972
1973
1974
1975
1976
1977
1978
1979
    assert gidx.number_of_nodes(0) == r_gidx.number_of_nodes(0)
    assert gidx.number_of_nodes(1) == r_gidx.number_of_nodes(1)
    assert gidx.number_of_nodes(2) == r_gidx.number_of_nodes(2)
    assert gidx.number_of_edges(0) == r_gidx.number_of_edges(0)
    assert gidx.number_of_edges(1) == r_gidx.number_of_edges(1)
    assert gidx.number_of_edges(2) == r_gidx.number_of_edges(2)
    g_s, g_d, _ = gidx.edges(0)
    rg_s, rg_d, _ = r_gidx.edges(0)
1980
1981
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1982
1983
    g_s, g_d, _ = gidx.edges(1)
    rg_s, rg_d, _ = r_gidx.edges(1)
1984
1985
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1986
1987
    g_s, g_d, _ = gidx.edges(2)
    rg_s, rg_d, _ = r_gidx.edges(2)
1988
1989
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
1990
1991

    # force to start with 'csc'
1992
1993
    gidx = gidx.formats('csc')
    gidx = gidx.formats(['coo', 'csr', 'csc'])
1994
    r_gidx = gidx.reverse()
1995
    # three node types and three edge types
1996
1997
    assert 'csc' in gidx.formats()['created']
    assert 'csr' in r_gidx.formats()['created']
1998
1999
2000
2001
2002
2003
2004
2005
    assert gidx.number_of_nodes(0) == r_gidx.number_of_nodes(0)
    assert gidx.number_of_nodes(1) == r_gidx.number_of_nodes(1)
    assert gidx.number_of_nodes(2) == r_gidx.number_of_nodes(2)
    assert gidx.number_of_edges(0) == r_gidx.number_of_edges(0)
    assert gidx.number_of_edges(1) == r_gidx.number_of_edges(1)
    assert gidx.number_of_edges(2) == r_gidx.number_of_edges(2)
    g_s, g_d, _ = gidx.edges(0)
    rg_s, rg_d, _ = r_gidx.edges(0)
2006
2007
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
2008
2009
    g_s, g_d, _ = gidx.edges(1)
    rg_s, rg_d, _ = r_gidx.edges(1)
2010
2011
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)
2012
2013
    g_s, g_d, _ = gidx.edges(2)
    rg_s, rg_d, _ = r_gidx.edges(2)
2014
2015
2016
2017
2018
2019
2020
2021
2022
2023
2024
2025
2026
2027
2028
2029
2030
2031
2032
2033
2034
2035
2036
2037
2038
2039
2040
2041
    assert F.array_equal(g_s, rg_d)
    assert F.array_equal(g_d, rg_s)

@parametrize_dtype
def test_clone(idtype):
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    g.ndata['h'] = F.copy_to(F.tensor([1, 1, 1], dtype=idtype), ctx=F.ctx())
    g.edata['h'] = F.copy_to(F.tensor([1, 1], dtype=idtype), ctx=F.ctx())

    new_g = g.clone()
    assert g.number_of_nodes() == new_g.number_of_nodes()
    assert g.number_of_edges() == new_g.number_of_edges()
    assert g.device == new_g.device
    assert g.idtype == new_g.idtype
    assert F.array_equal(g.ndata['h'], new_g.ndata['h'])
    assert F.array_equal(g.edata['h'], new_g.edata['h'])
    # data change
    new_g.ndata['h'] = F.copy_to(F.tensor([2, 2, 2], dtype=idtype), ctx=F.ctx())
    assert (F.array_equal(g.ndata['h'], new_g.ndata['h']) == False)
    g.edata['h'] = F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())
    assert (F.array_equal(g.edata['h'], new_g.edata['h']) == False)
    # graph structure change
    g.add_nodes(1)
    assert g.number_of_nodes() != new_g.number_of_nodes()
    new_g.add_edges(1, 1)
    assert g.number_of_edges() != new_g.number_of_edges()

    # zero data graph
2042
    g = dgl.graph(([], []), num_nodes=0, idtype=idtype, device=F.ctx())
2043
2044
2045
2046
2047
    new_g = g.clone()
    assert g.number_of_nodes() == new_g.number_of_nodes()
    assert g.number_of_edges() == new_g.number_of_edges()

    # heterograph
2048
    g = create_test_heterograph3(idtype)
2049
2050
2051
2052
2053
2054
2055
2056
2057
2058
2059
2060
2061
2062
2063
2064
2065
2066
2067
2068
2069
2070
2071
2072
2073
2074
2075
2076
2077
2078
2079
2080
2081
2082
2083
2084
2085
2086
2087
2088
2089
2090
2091
2092
2093
2094
2095
2096
2097
2098
2099
2100
2101
2102
2103
2104
2105
2106
2107
2108
2109
2110
2111
2112
2113
2114
2115
2116
2117
2118
2119
2120
2121
2122
2123
2124
2125
2126
2127
2128
2129
2130
2131
2132
    g.edges['plays'].data['h'] = F.copy_to(F.tensor([1, 2, 3, 4], dtype=idtype), ctx=F.ctx())
    new_g = g.clone()
    assert g.number_of_nodes('user') == new_g.number_of_nodes('user')
    assert g.number_of_nodes('game') == new_g.number_of_nodes('game')
    assert g.number_of_nodes('developer') == new_g.number_of_nodes('developer')
    assert g.number_of_edges('plays') == new_g.number_of_edges('plays')
    assert g.number_of_edges('develops') == new_g.number_of_edges('develops')
    assert F.array_equal(g.nodes['user'].data['h'], new_g.nodes['user'].data['h'])
    assert F.array_equal(g.nodes['game'].data['h'], new_g.nodes['game'].data['h'])
    assert F.array_equal(g.edges['plays'].data['h'], new_g.edges['plays'].data['h'])
    assert g.device == new_g.device
    assert g.idtype == new_g.idtype
    u, v = g.edges(form='uv', order='eid', etype='plays')
    nu, nv = new_g.edges(form='uv', order='eid', etype='plays')
    assert F.array_equal(u, nu)
    assert F.array_equal(v, nv)
    # graph structure change
    u = F.tensor([0, 4], dtype=idtype)
    v = F.tensor([2, 6], dtype=idtype)
    g.add_edges(u, v, etype='plays')
    u, v = g.edges(form='uv', order='eid', etype='plays')
    assert u.shape[0] != nu.shape[0]
    assert v.shape[0] != nv.shape[0]
    assert g.nodes['user'].data['h'].shape[0] != new_g.nodes['user'].data['h'].shape[0]
    assert g.nodes['game'].data['h'].shape[0] != new_g.nodes['game'].data['h'].shape[0]
    assert g.edges['plays'].data['h'].shape[0] != new_g.edges['plays'].data['h'].shape[0]


@parametrize_dtype
def test_add_edges(idtype):
    # homogeneous graph
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    u = 0
    v = 1
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes() == 3
    assert g.number_of_edges() == 3
    u = [0]
    v = [1]
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes() == 3
    assert g.number_of_edges() == 4
    u = F.tensor(u, dtype=idtype)
    v = F.tensor(v, dtype=idtype)
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes() == 3
    assert g.number_of_edges() == 5
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1, 0, 0, 0], dtype=idtype))
    assert F.array_equal(v, F.tensor([1, 2, 1, 1, 1], dtype=idtype))

    # node id larger than current max node id
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    u = F.tensor([0, 1], dtype=idtype)
    v = F.tensor([2, 3], dtype=idtype)
    g.add_edges(u, v)
    assert g.number_of_nodes() == 4
    assert g.number_of_edges() == 4
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1, 0, 1], dtype=idtype))
    assert F.array_equal(v, F.tensor([1, 2, 2, 3], dtype=idtype))

    # has data
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    g.ndata['h'] = F.copy_to(F.tensor([1, 1, 1], dtype=idtype), ctx=F.ctx())
    g.edata['h'] = F.copy_to(F.tensor([1, 1], dtype=idtype), ctx=F.ctx())
    u = F.tensor([0, 1], dtype=idtype)
    v = F.tensor([2, 3], dtype=idtype)
    e_feat = {'h' : F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx()),
              'hh' : F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())}
    g.add_edges(u, v, e_feat)
    assert g.number_of_nodes() == 4
    assert g.number_of_edges() == 4
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1, 0, 1], dtype=idtype))
    assert F.array_equal(v, F.tensor([1, 2, 2, 3], dtype=idtype))
    assert F.array_equal(g.ndata['h'], F.tensor([1, 1, 1, 0], dtype=idtype))
    assert F.array_equal(g.edata['h'], F.tensor([1, 1, 2, 2], dtype=idtype))
    assert F.array_equal(g.edata['hh'], F.tensor([0, 0, 2, 2], dtype=idtype))

    # zero data graph
2133
    g = dgl.graph(([], []), num_nodes=0, idtype=idtype, device=F.ctx())
2134
2135
2136
2137
2138
2139
2140
2141
2142
2143
2144
2145
2146
2147
    u = F.tensor([0, 1], dtype=idtype)
    v = F.tensor([2, 2], dtype=idtype)
    e_feat = {'h' : F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx()),
              'hh' : F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())}
    g.add_edges(u, v, e_feat)
    assert g.number_of_nodes() == 3
    assert g.number_of_edges() == 2
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1], dtype=idtype))
    assert F.array_equal(v, F.tensor([2, 2], dtype=idtype))
    assert F.array_equal(g.edata['h'], F.tensor([2, 2], dtype=idtype))
    assert F.array_equal(g.edata['hh'], F.tensor([2, 2], dtype=idtype))

    # bipartite graph
2148
2149
    g = dgl.heterograph({('user', 'plays', 'game'): ([0, 1], [1, 2])},
                        idtype=idtype, device=F.ctx())
2150
2151
2152
2153
2154
2155
2156
2157
2158
2159
2160
2161
2162
2163
2164
2165
2166
2167
2168
2169
2170
2171
2172
2173
2174
2175
    u = 0
    v = 1
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes('user') == 2
    assert g.number_of_nodes('game') == 3
    assert g.number_of_edges() == 3
    u = [0]
    v = [1]
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes('user') == 2
    assert g.number_of_nodes('game') == 3
    assert g.number_of_edges() == 4
    u = F.tensor(u, dtype=idtype)
    v = F.tensor(v, dtype=idtype)
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes('user') == 2
    assert g.number_of_nodes('game') == 3
    assert g.number_of_edges() == 5
    u, v = g.edges(form='uv')
    assert F.array_equal(u, F.tensor([0, 1, 0, 0, 0], dtype=idtype))
    assert F.array_equal(v, F.tensor([1, 2, 1, 1, 1], dtype=idtype))

    # node id larger than current max node id
2176
2177
    g = dgl.heterograph({('user', 'plays', 'game'): ([0, 1], [1, 2])},
                        idtype=idtype, device=F.ctx())
2178
2179
2180
2181
2182
2183
2184
2185
2186
2187
2188
2189
    u = F.tensor([0, 2], dtype=idtype)
    v = F.tensor([2, 3], dtype=idtype)
    g.add_edges(u, v)
    assert g.device == F.ctx()
    assert g.number_of_nodes('user') == 3
    assert g.number_of_nodes('game') == 4
    assert g.number_of_edges() == 4
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1, 0, 2], dtype=idtype))
    assert F.array_equal(v, F.tensor([1, 2, 2, 3], dtype=idtype))

    # has data
2190
2191
2192
2193
2194
    g = dgl.heterograph({
        ('user', 'plays', 'game'): ([0, 1], [1, 2])
    }, idtype=idtype, device=F.ctx())
    g.nodes['user'].data['h'] = F.copy_to(F.tensor([1, 1], dtype=idtype), ctx=F.ctx())
    g.nodes['game'].data['h'] = F.copy_to(F.tensor([2, 2, 2], dtype=idtype), ctx=F.ctx())
2195
2196
2197
2198
2199
2200
2201
2202
2203
2204
2205
2206
2207
2208
2209
2210
2211
2212
    g.edata['h'] = F.copy_to(F.tensor([1, 1], dtype=idtype), ctx=F.ctx())
    u = F.tensor([0, 2], dtype=idtype)
    v = F.tensor([2, 3], dtype=idtype)
    e_feat = {'h' : F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx()),
              'hh' : F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())}
    g.add_edges(u, v, e_feat)
    assert g.number_of_nodes('user') == 3
    assert g.number_of_nodes('game') == 4
    assert g.number_of_edges() == 4
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1, 0, 2], dtype=idtype))
    assert F.array_equal(v, F.tensor([1, 2, 2, 3], dtype=idtype))
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([1, 1, 0], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2, 2, 2, 0], dtype=idtype))
    assert F.array_equal(g.edata['h'], F.tensor([1, 1, 2, 2], dtype=idtype))
    assert F.array_equal(g.edata['hh'], F.tensor([0, 0, 2, 2], dtype=idtype))

    # heterogeneous graph
2213
    g = create_test_heterograph3(idtype)
2214
2215
2216
2217
2218
2219
2220
2221
2222
2223
2224
2225
2226
2227
2228
2229
2230
2231
2232
2233
2234
2235
2236
2237
2238
2239
2240
2241
2242
2243
2244
2245
2246
2247
2248
2249
2250
2251
2252
2253
2254
2255
2256
    u = F.tensor([0, 2], dtype=idtype)
    v = F.tensor([2, 3], dtype=idtype)
    g.add_edges(u, v, etype='plays')
    assert g.number_of_nodes('user') == 3
    assert g.number_of_nodes('game') == 4
    assert g.number_of_nodes('developer') == 2
    assert g.number_of_edges('plays') == 6
    assert g.number_of_edges('develops') == 2
    u, v = g.edges(form='uv', order='eid', etype='plays')
    assert F.array_equal(u, F.tensor([0, 1, 1, 2, 0, 2], dtype=idtype))
    assert F.array_equal(v, F.tensor([0, 0, 1, 1, 2, 3], dtype=idtype))
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([1, 1, 1], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2, 2, 0, 0], dtype=idtype))
    assert F.array_equal(g.edges['plays'].data['h'], F.tensor([1, 1, 1, 1, 0, 0], dtype=idtype))

    # add with feature
    e_feat = {'h': F.copy_to(F.tensor([2, 2], dtype=idtype), ctx=F.ctx())}
    u = F.tensor([0, 2], dtype=idtype)
    v = F.tensor([2, 3], dtype=idtype)
    g.nodes['game'].data['h'] =  F.copy_to(F.tensor([2, 2, 1, 1], dtype=idtype), ctx=F.ctx())
    g.add_edges(u, v, data=e_feat, etype='develops')
    assert g.number_of_nodes('user') == 3
    assert g.number_of_nodes('game') == 4
    assert g.number_of_nodes('developer') == 3
    assert g.number_of_edges('plays') == 6
    assert g.number_of_edges('develops') == 4
    u, v = g.edges(form='uv', order='eid', etype='develops')
    assert F.array_equal(u, F.tensor([0, 1, 0, 2], dtype=idtype))
    assert F.array_equal(v, F.tensor([0, 1, 2, 3], dtype=idtype))
    assert F.array_equal(g.nodes['developer'].data['h'], F.tensor([3, 3, 0], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2, 2, 1, 1], dtype=idtype))
    assert F.array_equal(g.edges['develops'].data['h'], F.tensor([0, 0, 2, 2], dtype=idtype))

@parametrize_dtype
def test_add_nodes(idtype):
    # homogeneous Graphs
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    g.ndata['h'] = F.copy_to(F.tensor([1,1,1], dtype=idtype), ctx=F.ctx())
    g.add_nodes(1)
    assert g.number_of_nodes() == 4
    assert F.array_equal(g.ndata['h'], F.tensor([1, 1, 1, 0], dtype=idtype))

    # zero node graph
2257
    g = dgl.graph(([], []), num_nodes=3, idtype=idtype, device=F.ctx())
2258
2259
2260
2261
2262
2263
    g.ndata['h'] = F.copy_to(F.tensor([1,1,1], dtype=idtype), ctx=F.ctx())
    g.add_nodes(1, data={'h' : F.copy_to(F.tensor([2],  dtype=idtype), ctx=F.ctx())})
    assert g.number_of_nodes() == 4
    assert F.array_equal(g.ndata['h'], F.tensor([1, 1, 1, 2], dtype=idtype))

    # bipartite graph
2264
2265
    g = dgl.heterograph({('user', 'plays', 'game'): ([0, 1], [1, 2])},
                        idtype=idtype, device=F.ctx())
2266
2267
2268
2269
2270
2271
2272
    g.add_nodes(2, data={'h' : F.copy_to(F.tensor([2, 2],  dtype=idtype), ctx=F.ctx())}, ntype='user')
    assert g.number_of_nodes('user') == 4
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([0, 0, 2, 2], dtype=idtype))
    g.add_nodes(2, ntype='game')
    assert g.number_of_nodes('game') == 5

    # heterogeneous graph
2273
    g = create_test_heterograph3(idtype)
2274
2275
2276
2277
2278
2279
2280
2281
2282
2283
2284
2285
2286
2287
2288
2289
2290
2291
2292
2293
2294
2295
2296
2297
2298
2299
2300
2301
2302
2303
2304
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2306
2307
2308
2309
2310
2311
2312
2313
2314
2315
2316
2317
2318
2319
2320
2321
2322
2323
2324
2325
2326
2327
    g.add_nodes(1, ntype='user')
    g.add_nodes(2, data={'h' : F.copy_to(F.tensor([2, 2],  dtype=idtype), ctx=F.ctx())}, ntype='game')
    g.add_nodes(0, ntype='developer')
    assert g.number_of_nodes('user') == 4
    assert g.number_of_nodes('game') == 4
    assert g.number_of_nodes('developer') == 2
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([1, 1, 1, 0], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2, 2, 2, 2], dtype=idtype))

@unittest.skipIf(dgl.backend.backend_name == "mxnet", reason="MXNet has error with (0,) shape tensor.")
@parametrize_dtype
def test_remove_edges(idtype):
    # homogeneous Graphs
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    e = 0
    g.remove_edges(e)
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([1], dtype=idtype))
    assert F.array_equal(v, F.tensor([2], dtype=idtype))
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    e = [0]
    g.remove_edges(e)
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([1], dtype=idtype))
    assert F.array_equal(v, F.tensor([2], dtype=idtype))
    e = F.tensor([0], dtype=idtype)
    g.remove_edges(e)
    assert g.number_of_edges() == 0

    # has node data
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    g.ndata['h'] = F.copy_to(F.tensor([1, 2, 3], dtype=idtype), ctx=F.ctx())
    g.remove_edges(1)
    assert g.number_of_edges() == 1
    assert F.array_equal(g.ndata['h'], F.tensor([1, 2, 3], dtype=idtype))

    # has edge data
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    g.edata['h'] = F.copy_to(F.tensor([1, 2], dtype=idtype), ctx=F.ctx())
    g.remove_edges(0)
    assert g.number_of_edges() == 1
    assert F.array_equal(g.edata['h'], F.tensor([2], dtype=idtype))

    # invalid eid
    assert_fail = False
    try:
        g.remove_edges(1)
    except:
        assert_fail = True
    assert assert_fail

    # bipartite graph
2328
2329
2330
    g = dgl.heterograph({
        ('user', 'plays', 'game'): ([0, 1], [1, 2])
    }, idtype=idtype, device=F.ctx())
2331
2332
2333
2334
2335
2336
    e = 0
    g.remove_edges(e)
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([1], dtype=idtype))
    assert F.array_equal(v, F.tensor([2], dtype=idtype))
2337
2338
    g = dgl.heterograph(
        {('user', 'plays', 'game'): ([0, 1], [1, 2])}, idtype=idtype, device=F.ctx())
2339
2340
2341
2342
2343
2344
2345
2346
2347
2348
2349
    e = [0]
    g.remove_edges(e)
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([1], dtype=idtype))
    assert F.array_equal(v, F.tensor([2], dtype=idtype))
    e = F.tensor([0], dtype=idtype)
    g.remove_edges(e)
    assert g.number_of_edges() == 0

    # has data
2350
2351
2352
2353
    g = dgl.heterograph(
        {('user', 'plays', 'game'): ([0, 1], [1, 2])}, idtype=idtype, device=F.ctx())
    g.nodes['user'].data['h'] = F.copy_to(F.tensor([1, 1], dtype=idtype), ctx=F.ctx())
    g.nodes['game'].data['h'] = F.copy_to(F.tensor([2, 2, 2], dtype=idtype), ctx=F.ctx())
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    g.edata['h'] = F.copy_to(F.tensor([1, 2], dtype=idtype), ctx=F.ctx())
    g.remove_edges(1)
    assert g.number_of_edges() == 1
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([1, 1], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2, 2, 2], dtype=idtype))
    assert F.array_equal(g.edata['h'], F.tensor([1], dtype=idtype))

    # heterogeneous graph
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    g = create_test_heterograph3(idtype)
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    g.edges['plays'].data['h'] = F.copy_to(F.tensor([1, 2, 3, 4], dtype=idtype), ctx=F.ctx())
    g.remove_edges(1, etype='plays')
    assert g.number_of_edges('plays') == 3
    u, v = g.edges(form='uv', order='eid', etype='plays')
    assert F.array_equal(u, F.tensor([0, 1, 2], dtype=idtype))
    assert F.array_equal(v, F.tensor([0, 1, 1], dtype=idtype))
    assert F.array_equal(g.edges['plays'].data['h'], F.tensor([1, 3, 4], dtype=idtype))
    # remove all edges of 'develops'
    g.remove_edges([0, 1], etype='develops')
    assert g.number_of_edges('develops') == 0
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([1, 1, 1], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2, 2], dtype=idtype))
    assert F.array_equal(g.nodes['developer'].data['h'], F.tensor([3, 3], dtype=idtype))

@parametrize_dtype
def test_remove_nodes(idtype):
    # homogeneous Graphs
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    n = 0
    g.remove_nodes(n)
    assert g.number_of_nodes() == 2
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0], dtype=idtype))
    assert F.array_equal(v, F.tensor([1], dtype=idtype))
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    n = [1]
    g.remove_nodes(n)
    assert g.number_of_nodes() == 2
    assert g.number_of_edges() == 0
    g = dgl.graph(([0, 1], [1, 2]), idtype=idtype, device=F.ctx())
    n = F.tensor([2], dtype=idtype)
    g.remove_nodes(n)
    assert g.number_of_nodes() == 2
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0], dtype=idtype))
    assert F.array_equal(v, F.tensor([1], dtype=idtype))

    # invalid nid
    assert_fail = False
    try:
        g.remove_nodes(3)
    except:
        assert_fail = True
    assert assert_fail

    # has node and edge data
    g = dgl.graph(([0, 0, 2], [0, 1, 2]), idtype=idtype, device=F.ctx())
    g.ndata['hv'] = F.copy_to(F.tensor([1, 2, 3], dtype=idtype), ctx=F.ctx())
    g.edata['he'] = F.copy_to(F.tensor([1, 2, 3], dtype=idtype), ctx=F.ctx())
    g.remove_nodes(F.tensor([0], dtype=idtype))
    assert g.number_of_nodes() == 2
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([1], dtype=idtype))
    assert F.array_equal(v, F.tensor([1], dtype=idtype))
    assert F.array_equal(g.ndata['hv'], F.tensor([2, 3], dtype=idtype))
    assert F.array_equal(g.edata['he'], F.tensor([3], dtype=idtype))

    # node id larger than current max node id
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    g = dgl.heterograph(
        {('user', 'plays', 'game'): ([0, 1], [1, 2])}, idtype=idtype, device=F.ctx())
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    n = 0
    g.remove_nodes(n, ntype='user')
    assert g.number_of_nodes('user') == 1
    assert g.number_of_nodes('game') == 3
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0], dtype=idtype))
    assert F.array_equal(v, F.tensor([2], dtype=idtype))
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    g = dgl.heterograph(
        {('user', 'plays', 'game'): ([0, 1], [1, 2])}, idtype=idtype, device=F.ctx())
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    n = [1]
    g.remove_nodes(n, ntype='user')
    assert g.number_of_nodes('user') == 1
    assert g.number_of_nodes('game') == 3
    assert g.number_of_edges() == 1
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0], dtype=idtype))
    assert F.array_equal(v, F.tensor([1], dtype=idtype))
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    g = dgl.heterograph(
        {('user', 'plays', 'game'): ([0, 1], [1, 2])}, idtype=idtype, device=F.ctx())
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    n = F.tensor([0], dtype=idtype)
    g.remove_nodes(n, ntype='game')
    assert g.number_of_nodes('user') == 2
    assert g.number_of_nodes('game') == 2
    assert g.number_of_edges() == 2
    u, v = g.edges(form='uv', order='eid')
    assert F.array_equal(u, F.tensor([0, 1], dtype=idtype))
    assert F.array_equal(v, F.tensor([0 ,1], dtype=idtype))

    # heterogeneous graph
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    g = create_test_heterograph3(idtype)
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    g.edges['plays'].data['h'] = F.copy_to(F.tensor([1, 2, 3, 4], dtype=idtype), ctx=F.ctx())
    g.remove_nodes(0, ntype='game')
    assert g.number_of_nodes('user') == 3
    assert g.number_of_nodes('game') == 1
    assert g.number_of_nodes('developer') == 2
    assert g.number_of_edges('plays') == 2
    assert g.number_of_edges('develops') == 1
    assert F.array_equal(g.nodes['user'].data['h'], F.tensor([1, 1, 1], dtype=idtype))
    assert F.array_equal(g.nodes['game'].data['h'], F.tensor([2], dtype=idtype))
    assert F.array_equal(g.nodes['developer'].data['h'], F.tensor([3, 3], dtype=idtype))
    u, v = g.edges(form='uv', order='eid', etype='plays')
    assert F.array_equal(u, F.tensor([1, 2], dtype=idtype))
    assert F.array_equal(v, F.tensor([0, 0], dtype=idtype))
    assert F.array_equal(g.edges['plays'].data['h'], F.tensor([3, 4], dtype=idtype))
    u, v = g.edges(form='uv', order='eid', etype='develops')
    assert F.array_equal(u, F.tensor([1], dtype=idtype))
    assert F.array_equal(v, F.tensor([0], dtype=idtype))
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@parametrize_dtype
def test_frame(idtype):
    g = dgl.graph(([0, 1, 2], [1, 2, 3]), idtype=idtype, device=F.ctx())
    g.ndata['h'] = F.copy_to(F.tensor([0, 1, 2, 3], dtype=idtype), ctx=F.ctx())
    g.edata['h'] = F.copy_to(F.tensor([0, 1, 2], dtype=idtype), ctx=F.ctx())

    # remove nodes
    sg = dgl.remove_nodes(g, [3])
    # check for lazy update
    assert F.array_equal(sg._node_frames[0]._columns['h'].storage, g.ndata['h'])
    assert F.array_equal(sg._edge_frames[0]._columns['h'].storage, g.edata['h'])
    assert sg.ndata['h'].shape[0] == 3
    assert sg.edata['h'].shape[0] == 2
    # update after read
    assert F.array_equal(sg._node_frames[0]._columns['h'].storage, F.tensor([0, 1, 2], dtype=idtype))
    assert F.array_equal(sg._edge_frames[0]._columns['h'].storage, F.tensor([0, 1], dtype=idtype))

    ng = dgl.add_nodes(sg, 1)
    assert ng.ndata['h'].shape[0] == 4
    assert F.array_equal(ng._node_frames[0]._columns['h'].storage, F.tensor([0, 1, 2, 0], dtype=idtype))
    ng = dgl.add_edges(ng, [3], [1])
    assert ng.edata['h'].shape[0] == 3
    assert F.array_equal(ng._edge_frames[0]._columns['h'].storage, F.tensor([0, 1, 0], dtype=idtype))

    # multi level lazy update
    sg = dgl.remove_nodes(g, [3])
    assert F.array_equal(sg._node_frames[0]._columns['h'].storage, g.ndata['h'])
    assert F.array_equal(sg._edge_frames[0]._columns['h'].storage, g.edata['h'])
    ssg = dgl.remove_nodes(sg, [1])
    assert F.array_equal(ssg._node_frames[0]._columns['h'].storage, g.ndata['h'])
    assert F.array_equal(ssg._edge_frames[0]._columns['h'].storage, g.edata['h'])
    # ssg is changed
    assert ssg.ndata['h'].shape[0] == 2
    assert ssg.edata['h'].shape[0] == 0
    assert F.array_equal(ssg._node_frames[0]._columns['h'].storage, F.tensor([0, 2], dtype=idtype))
    # sg still in lazy model
    assert F.array_equal(sg._node_frames[0]._columns['h'].storage, g.ndata['h'])
    assert F.array_equal(sg._edge_frames[0]._columns['h'].storage, g.edata['h'])

@unittest.skipIf(dgl.backend.backend_name == "tensorflow", reason="TensorFlow always create a new tensor")
@unittest.skipIf(F._default_context_str == 'cpu', reason="cpu do not have context change problem")
@parametrize_dtype
def test_frame_device(idtype):
    g = dgl.graph(([0,1,2], [2,3,1]))
    g.ndata['h'] = F.copy_to(F.tensor([1,1,1,2], dtype=idtype), ctx=F.cpu())
    g.ndata['hh'] = F.copy_to(F.ones((4,3), dtype=idtype), ctx=F.cpu())
    g.edata['h'] = F.copy_to(F.tensor([1,2,3], dtype=idtype), ctx=F.cpu())

    g = g.to(F.ctx())
    # lazy device copy
    assert F.context(g._node_frames[0]._columns['h'].storage) == F.cpu()
    assert F.context(g._node_frames[0]._columns['hh'].storage) == F.cpu()
    print(g.ndata['h'])
    assert F.context(g._node_frames[0]._columns['h'].storage) == F.ctx()
    assert F.context(g._node_frames[0]._columns['hh'].storage) == F.cpu()
    assert F.context(g._edge_frames[0]._columns['h'].storage) == F.cpu()

    # lazy device copy in subgraph
    sg = dgl.node_subgraph(g, [0,1,2])
    assert F.context(sg._node_frames[0]._columns['h'].storage) == F.ctx()
    assert F.context(sg._node_frames[0]._columns['hh'].storage) == F.cpu()
    assert F.context(sg._edge_frames[0]._columns['h'].storage) == F.cpu()
    print(sg.ndata['hh'])
    assert F.context(sg._node_frames[0]._columns['hh'].storage) == F.ctx()
    assert F.context(sg._edge_frames[0]._columns['h'].storage) == F.cpu()

    # back to cpu
    sg = sg.to(F.cpu())
    assert F.context(sg._node_frames[0]._columns['h'].storage) == F.ctx()
    assert F.context(sg._node_frames[0]._columns['hh'].storage) == F.ctx()
    assert F.context(sg._edge_frames[0]._columns['h'].storage) == F.cpu()
    print(sg.ndata['h'])
    print(sg.ndata['hh'])
    print(sg.edata['h'])
    assert F.context(sg._node_frames[0]._columns['h'].storage) == F.cpu()
    assert F.context(sg._node_frames[0]._columns['hh'].storage) == F.cpu()
    assert F.context(sg._edge_frames[0]._columns['h'].storage) == F.cpu()

    # set some field
    sg = sg.to(F.ctx())
    assert F.context(sg._node_frames[0]._columns['h'].storage) == F.cpu()
    sg.ndata['h'][0] = 5
    assert F.context(sg._node_frames[0]._columns['h'].storage) == F.ctx()
    assert F.context(sg._node_frames[0]._columns['hh'].storage) == F.cpu()
    assert F.context(sg._edge_frames[0]._columns['h'].storage) == F.cpu()

    # add nodes
    ng = dgl.add_nodes(sg, 3)
    assert F.context(ng._node_frames[0]._columns['h'].storage) == F.ctx()
    assert F.context(ng._node_frames[0]._columns['hh'].storage) == F.ctx()
    assert F.context(ng._edge_frames[0]._columns['h'].storage) == F.cpu()

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@parametrize_dtype
def test_create_block(idtype):
    block = dgl.create_block(([0, 1, 2], [1, 2, 3]), idtype=idtype, device=F.ctx())
    assert block.num_src_nodes() == 3
    assert block.num_dst_nodes() == 4
    assert block.num_edges() == 3

    block = dgl.create_block(([], []), idtype=idtype, device=F.ctx())
    assert block.num_src_nodes() == 0
    assert block.num_dst_nodes() == 0
    assert block.num_edges() == 0

    block = dgl.create_block(([], []), 3, 4, idtype=idtype, device=F.ctx())
    assert block.num_src_nodes() == 3
    assert block.num_dst_nodes() == 4
    assert block.num_edges() == 0

    block = dgl.create_block(([0, 1, 2], [1, 2, 3]), 4, 5, idtype=idtype, device=F.ctx())
    assert block.num_src_nodes() == 4
    assert block.num_dst_nodes() == 5
    assert block.num_edges() == 3

    sx = F.randn((4, 5))
    dx = F.randn((5, 6))
    ex = F.randn((3, 4))
    block.srcdata['x'] = sx
    block.dstdata['x'] = dx
    block.edata['x'] = ex

    g = dgl.block_to_graph(block)
    assert g.num_src_nodes() == 4
    assert g.num_dst_nodes() == 5
    assert g.num_edges() == 3
    assert g.srcdata['x'] is sx
    assert g.dstdata['x'] is dx
    assert g.edata['x'] is ex

    block = dgl.create_block({
        ('A', 'AB', 'B'): ([1, 2, 3], [2, 1, 0]),
        ('B', 'BA', 'A'): ([2, 3], [3, 4])},
        idtype=idtype, device=F.ctx())
    assert block.num_src_nodes('A') == 4
    assert block.num_src_nodes('B') == 4
    assert block.num_dst_nodes('B') == 3
    assert block.num_dst_nodes('A') == 5
    assert block.num_edges('AB') == 3
    assert block.num_edges('BA') == 2

    block = dgl.create_block({
        ('A', 'AB', 'B'): ([], []),
        ('B', 'BA', 'A'): ([], [])},
        idtype=idtype, device=F.ctx())
    assert block.num_src_nodes('A') == 0
    assert block.num_src_nodes('B') == 0
    assert block.num_dst_nodes('B') == 0
    assert block.num_dst_nodes('A') == 0
    assert block.num_edges('AB') == 0
    assert block.num_edges('BA') == 0

    block = dgl.create_block({
        ('A', 'AB', 'B'): ([], []),
        ('B', 'BA', 'A'): ([], [])},
        num_src_nodes={'A': 5, 'B': 5},
        num_dst_nodes={'A': 6, 'B': 4},
        idtype=idtype, device=F.ctx())
    assert block.num_src_nodes('A') == 5
    assert block.num_src_nodes('B') == 5
    assert block.num_dst_nodes('B') == 4
    assert block.num_dst_nodes('A') == 6
    assert block.num_edges('AB') == 0
    assert block.num_edges('BA') == 0

    block = dgl.create_block({
        ('A', 'AB', 'B'): ([1, 2, 3], [2, 1, 0]),
        ('B', 'BA', 'A'): ([2, 3], [3, 4])},
        num_src_nodes={'A': 5, 'B': 5},
        num_dst_nodes={'A': 6, 'B': 4},
        idtype=idtype, device=F.ctx())
    assert block.num_src_nodes('A') == 5
    assert block.num_src_nodes('B') == 5
    assert block.num_dst_nodes('B') == 4
    assert block.num_dst_nodes('A') == 6
    assert block.num_edges(('A', 'AB', 'B')) == 3
    assert block.num_edges(('B', 'BA', 'A')) == 2

    sax = F.randn((5, 3))
    sbx = F.randn((5, 4))
    dax = F.randn((6, 5))
    dbx = F.randn((4, 6))
    eabx = F.randn((3, 7))
    ebax = F.randn((2, 8))
    block.srcnodes['A'].data['x'] = sax
    block.srcnodes['B'].data['x'] = sbx
    block.dstnodes['A'].data['x'] = dax
    block.dstnodes['B'].data['x'] = dbx
    block.edges['AB'].data['x'] = eabx
    block.edges['BA'].data['x'] = ebax

    hg = dgl.block_to_graph(block)
    assert hg.num_nodes('A_src') == 5
    assert hg.num_nodes('B_src') == 5
    assert hg.num_nodes('A_dst') == 6
    assert hg.num_nodes('B_dst') == 4
    assert hg.num_edges(('A_src', 'AB', 'B_dst')) == 3
    assert hg.num_edges(('B_src', 'BA', 'A_dst')) == 2
    assert hg.nodes['A_src'].data['x'] is sax
    assert hg.nodes['B_src'].data['x'] is sbx
    assert hg.nodes['A_dst'].data['x'] is dax
    assert hg.nodes['B_dst'].data['x'] is dbx
    assert hg.edges['AB'].data['x'] is eabx
    assert hg.edges['BA'].data['x'] is ebax
2678

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@parametrize_dtype
@pytest.mark.parametrize('fmt', ['coo', 'csr', 'csc'])
def test_adj_sparse(idtype, fmt):
    if fmt == 'coo':
        A = ssp.random(10, 10, 0.2).tocoo()
        A.data = np.arange(20)
        row = F.tensor(A.row, idtype)
        col = F.tensor(A.col, idtype)
        g = dgl.graph((row, col))
    elif fmt == 'csr':
        A = ssp.random(10, 10, 0.2).tocsr()
        A.data = np.arange(20)
        indptr = F.tensor(A.indptr, idtype)
        indices = F.tensor(A.indices, idtype)
        g = dgl.graph(('csr', (indptr, indices, [])))
        with pytest.raises(DGLError):
            g2 = dgl.graph(('csr', (indptr[:-1], indices, [])), num_nodes=10)
    elif fmt == 'csc':
        A = ssp.random(10, 10, 0.2).tocsc()
        A.data = np.arange(20)
        indptr = F.tensor(A.indptr, idtype)
        indices = F.tensor(A.indices, idtype)
        g = dgl.graph(('csc', (indptr, indices, [])))
        with pytest.raises(DGLError):
            g2 = dgl.graph(('csr', (indptr[:-1], indices, [])), num_nodes=10)

    A_coo = A.tocoo()
    A_csr = A.tocsr()
    A_csc = A.tocsc()
    row, col = g.adj_sparse('coo')
    assert np.array_equal(F.asnumpy(row), A_coo.row)
    assert np.array_equal(F.asnumpy(col), A_coo.col)

    indptr, indices, eids = g.adj_sparse('csr')
    assert np.array_equal(F.asnumpy(indptr), A_csr.indptr)
    if fmt == 'csr':
        assert len(eids) == 0
        assert np.array_equal(F.asnumpy(indices), A_csr.indices)
    else:
        indices_sorted = F.zeros(len(indices), idtype)
        indices_sorted = F.scatter_row(indices_sorted, eids, indices)
        indices_sorted_np = np.zeros(len(indices), dtype=A_csr.indices.dtype)
        indices_sorted_np[A_csr.data] = A_csr.indices
        assert np.array_equal(F.asnumpy(indices_sorted), indices_sorted_np)

    indptr, indices, eids = g.adj_sparse('csc')
    assert np.array_equal(F.asnumpy(indptr), A_csc.indptr)
    if fmt == 'csc':
        assert len(eids) == 0
        assert np.array_equal(F.asnumpy(indices), A_csc.indices)
    else:
        indices_sorted = F.zeros(len(indices), idtype)
        indices_sorted = F.scatter_row(indices_sorted, eids, indices)
        indices_sorted_np = np.zeros(len(indices), dtype=A_csc.indices.dtype)
        indices_sorted_np[A_csc.data] = A_csc.indices
        assert np.array_equal(F.asnumpy(indices_sorted), indices_sorted_np)

2736

2737
if __name__ == '__main__':
2738
2739
2740
2741
2742
    # test_create()
    # test_query()
    # test_hypersparse()
    # test_adj("int32")
    # test_inc()
2743
    # test_view("int32")
2744
    # test_view1("int32")
2745
    # test_flatten(F.int32)
2746
2747
    # test_convert_bound()
    # test_convert()
2748
    # test_to_device("int32")
2749
    # test_transform("int32")
2750
2751
    # test_subgraph("int32")
    # test_subgraph_mask("int32")
2752
2753
2754
2755
2756
    # test_apply()
    # test_level1()
    # test_level2()
    # test_updates()
    # test_backward()
2757
    # test_empty_heterograph('int32')
2758
2759
2760
2761
    # test_types_in_function()
    # test_stack_reduce()
    # test_isolated_ntype()
    # test_bipartite()
2762
    # test_dtype_cast()
2763
    # test_reverse("int32")
2764
    # test_format()
2765
2766
2767
2768
2769
    #test_add_edges(F.int32)
    #test_add_nodes(F.int32)
    #test_remove_edges(F.int32)
    #test_remove_nodes(F.int32)
    #test_clone(F.int32)
2770
2771
2772
    #test_frame(F.int32)
    #test_frame_device(F.int32)
    #test_empty_query(F.int32)
2773
    #test_create_block(F.int32)
2774
    pass