test_marlin_gemm.py 21.3 KB
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# SPDX-License-Identifier: Apache-2.0
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"""Tests for the marlin kernel.

Run `pytest tests/kernels/marlin/test_marlin_gemm.py`.
"""
import pytest
import torch

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from tests.kernels.utils import DEFAULT_OPCHECK_TEST_UTILS, opcheck
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from tests.quantization.utils import is_quant_method_supported
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from vllm import _custom_ops as ops
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from vllm.model_executor.layers.quantization.gptq_marlin_24 import (
    GPTQ_MARLIN_24_MAX_PARALLEL, GPTQ_MARLIN_24_MIN_THREAD_N,
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    GPTQ_MARLIN_24_SUPPORTED_GROUP_SIZES, GPTQ_MARLIN_24_SUPPORTED_QUANT_TYPES)
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from vllm.model_executor.layers.quantization.qqq import (
    MARLIN_QQQ_MAX_PARALLEL, MARLIN_QQQ_MIN_THREAD_N,
    MARLIN_QQQ_SUPPORTED_GROUP_SIZES, MARLIN_QQQ_SUPPORTED_NUM_BITS)
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from vllm.model_executor.layers.quantization.utils.marlin_utils import (
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    GPTQ_MARLIN_MAX_PARALLEL, GPTQ_MARLIN_MIN_THREAD_N,
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    MARLIN_SUPPORTED_GROUP_SIZES, marlin_make_empty_g_idx,
    marlin_permute_scales, query_marlin_supported_quant_types)
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from vllm.model_executor.layers.quantization.utils.marlin_utils_fp8 import (
    pack_fp8_to_int32)
from vllm.model_executor.layers.quantization.utils.marlin_utils_test import (
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    MarlinWorkspace, awq_marlin_quantize, get_weight_perm, marlin_quantize,
    marlin_weights)
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from vllm.model_executor.layers.quantization.utils.marlin_utils_test_24 import (
    marlin_24_quantize)
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from vllm.model_executor.layers.quantization.utils.marlin_utils_test_qqq import (  # noqa: E501
    marlin_qqq_quantize)
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from vllm.model_executor.layers.quantization.utils.quant_utils import (
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    awq_pack, gptq_pack, gptq_quantize_weights, quantize_weights, sort_weights)
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from vllm.scalar_type import scalar_types
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ACT_ORDER_OPTS = [False, True]
K_FULL_OPTS = [False, True]
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USE_ATOMIC_ADD_OPTS = [False, True]
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USE_FP32_REDUCE_OPTS = [False, True]
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MARLIN_K_CHUNKS = [128]
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MARLIN_N_CHUNKS = [64, 256]
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MARLIN_24_K_CHUNKS = [128]
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MARLIN_24_N_CHUNKS = [512]
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HQQ_SUPPORTED_GROUP_SIZES = [64]

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MNK_FACTORS = [
    (1, 1, 1),
    (1, 4, 8),
    (1, 7, 5),
    (13, 17, 67),
    (26, 37, 13),
    (67, 13, 11),
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    (257, 13, 11),
    (658, 13, 11),
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]

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DTYPES = [torch.float16, torch.bfloat16]
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def compute_max_diff(output, output_ref):
    return torch.mean(torch.abs(output - output_ref)) / torch.mean(
        torch.abs(output_ref))


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def rand_data(shape, dtype=torch.float16):
    return torch.randn(shape, dtype=dtype, device="cuda")
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@pytest.mark.skipif(not is_quant_method_supported("gptq_marlin"),
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                    reason="Marlin is not supported on this GPU type.")
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@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
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@pytest.mark.parametrize("quant_type",
                         query_marlin_supported_quant_types(False))
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@pytest.mark.parametrize("group_size", MARLIN_SUPPORTED_GROUP_SIZES)
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@pytest.mark.parametrize("act_order", ACT_ORDER_OPTS)
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
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def test_gptq_marlin_repack(k_chunk, n_chunk, quant_type, group_size,
                            act_order, mnk_factors):
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    m_factor, n_factor, k_factor = mnk_factors

    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    # Filter act_order
    if act_order:
        if group_size == -1:
            return
        if group_size == size_k:
            return

    # Normalize group_size
    if group_size == -1:
        group_size = size_k
    assert group_size <= size_k

    # Create input
    b_weight = rand_data((size_k, size_n))

    # Quantize (and apply act_order if provided)
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    w_ref, q_w, s, g_idx, rand_perm = gptq_quantize_weights(
        b_weight, quant_type, group_size, act_order)
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    # Pack to GPTQ format
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    q_w_gptq = gptq_pack(q_w, quant_type.size_bits, size_k, size_n)
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    # For act_order, sort the "weights" and "g_idx" so that group ids are
    # increasing
    sort_indices = torch.empty(0, dtype=torch.int, device=b_weight.device)
    if act_order:
        q_w, g_idx, sort_indices = sort_weights(q_w, g_idx)

    # Pack to Marlin format
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    weight_perm = get_weight_perm(quant_type.size_bits)
    marlin_q_w_1 = marlin_weights(q_w, size_k, size_n, quant_type.size_bits,
                                  weight_perm)
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    opcheck(torch.ops._C.gptq_marlin_repack,
            (q_w_gptq, sort_indices, size_k, size_n, quant_type.size_bits))

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    # Run Marlin repack GPU kernel
    marlin_q_w_2 = ops.gptq_marlin_repack(
        q_w_gptq,
        sort_indices,
        size_k,
        size_n,
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        quant_type.size_bits,
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    )
    torch.cuda.synchronize()

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    torch.testing.assert_close(marlin_q_w_1, marlin_q_w_2)
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@pytest.mark.skipif(not is_quant_method_supported("gptq_marlin"),
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                    reason="Marlin is not supported on this GPU type.")
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@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
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@pytest.mark.parametrize("quant_type",
                         query_marlin_supported_quant_types(False))
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@pytest.mark.parametrize("group_size", MARLIN_SUPPORTED_GROUP_SIZES)
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
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def test_awq_marlin_repack(k_chunk, n_chunk, quant_type, group_size,
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                           mnk_factors):
    m_factor, n_factor, k_factor = mnk_factors

    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    # Normalize group_size
    if group_size == -1:
        group_size = size_k
    assert group_size <= size_k

    # Create input
    b_weight = rand_data((size_k, size_n))

    # Quantize
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    w_ref, q_w, s, zp = quantize_weights(b_weight,
                                         quant_type,
                                         group_size,
                                         zero_points=True)
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    # Pack to AWQ format
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    q_w_awq = awq_pack(q_w, quant_type.size_bits, size_k, size_n)
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    # Pack to Marlin format
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    weight_perm = get_weight_perm(quant_type.size_bits)
    marlin_q_w_1 = marlin_weights(q_w, size_k, size_n, quant_type.size_bits,
                                  weight_perm)
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    opcheck(torch.ops._C.awq_marlin_repack,
            (q_w_awq, size_k, size_n, quant_type.size_bits))

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    # Run Marlin repack GPU kernel
    marlin_q_w_2 = ops.awq_marlin_repack(
        q_w_awq,
        size_k,
        size_n,
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        quant_type.size_bits,
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    )
    torch.cuda.synchronize()

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    torch.testing.assert_close(marlin_q_w_1, marlin_q_w_2)
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@pytest.mark.skipif(not is_quant_method_supported("gptq_marlin"),
                    reason="Marlin is not supported on this GPU type.")
@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
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@pytest.mark.parametrize("quant_type",
                         query_marlin_supported_quant_types(False))
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@pytest.mark.parametrize("group_size", MARLIN_SUPPORTED_GROUP_SIZES)
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@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
@pytest.mark.parametrize("act_order", ACT_ORDER_OPTS)
@pytest.mark.parametrize("is_k_full", K_FULL_OPTS)
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@pytest.mark.parametrize("use_atomic_add", USE_ATOMIC_ADD_OPTS)
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@pytest.mark.parametrize("use_fp32_reduce", USE_FP32_REDUCE_OPTS)
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def test_gptq_marlin_gemm(
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    k_chunk,
    n_chunk,
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    quant_type,
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    group_size,
    mnk_factors,
    act_order,
    is_k_full,
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    use_atomic_add,
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    use_fp32_reduce,
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):
    m_factor, n_factor, k_factor = mnk_factors

    size_m = m_factor
    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    if act_order:
        if group_size == -1:
            return
        if group_size == size_k:
            return

    a_input = rand_data((size_m, size_k))
    b_weight = rand_data((size_k, size_n))

    w_ref, marlin_q_w, marlin_s, g_idx, sort_indices, _ = marlin_quantize(
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        b_weight, quant_type, group_size, act_order)
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    marlin_zp = marlin_make_empty_g_idx(marlin_s.device)

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    workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
                                GPTQ_MARLIN_MAX_PARALLEL)
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    opcheck(torch.ops._C.gptq_marlin_gemm,
            (a_input, marlin_q_w, marlin_s, marlin_zp, g_idx, sort_indices,
             workspace.scratch, quant_type.id, a_input.shape[0],
             b_weight.shape[1], a_input.shape[1], is_k_full, False,
             use_atomic_add, use_fp32_reduce, False),
            test_utils=DEFAULT_OPCHECK_TEST_UTILS)
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    output = ops.gptq_marlin_gemm(
        a_input,
        marlin_q_w,
        marlin_s,
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        marlin_zp,
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        g_idx,
        sort_indices,
        workspace.scratch,
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        quant_type,
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        a_input.shape[0],
        b_weight.shape[1],
        a_input.shape[1],
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        is_k_full=is_k_full,
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        has_zp=False,
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        use_atomic_add=use_atomic_add,
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        use_fp32_reduce=use_fp32_reduce,
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        is_zp_float=False,
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    )
    output_ref = torch.matmul(a_input, w_ref)

    torch.cuda.synchronize()

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    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04


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# TODO: find better way to test this?
@torch.compile(fullgraph=True)
def marlin_24_gemm_tester(a_input, marlin_24_q_w_comp, marlin_24_meta,
                          marlin_24_s, scratch, quant_type, size_m, size_n,
                          size_k):
    return ops.gptq_marlin_24_gemm(a_input, marlin_24_q_w_comp, marlin_24_meta,
                                   marlin_24_s, scratch, quant_type, size_m,
                                   size_n, size_k)


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@pytest.mark.skipif(not is_quant_method_supported("gptq_marlin"),
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                    reason="Marlin is not supported on this GPU type.")
@pytest.mark.parametrize("k_chunk", MARLIN_24_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_24_N_CHUNKS)
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@pytest.mark.parametrize("quant_type", GPTQ_MARLIN_24_SUPPORTED_QUANT_TYPES)
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@pytest.mark.parametrize("group_size", GPTQ_MARLIN_24_SUPPORTED_GROUP_SIZES)
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
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def test_gptq_marlin_24_gemm(k_chunk, n_chunk, quant_type, group_size,
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                             mnk_factors):
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    m_factor, n_factor, k_factor = mnk_factors

    size_m = m_factor
    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    a_input = rand_data((size_m, size_k))
    b_weight = rand_data((size_k, size_n))

    (w_24_ref, marlin_24_q_w_comp, marlin_24_meta,
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     marlin_24_s) = marlin_24_quantize(b_weight, quant_type, group_size)
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    workspace_24 = MarlinWorkspace(size_n, GPTQ_MARLIN_24_MIN_THREAD_N,
                                   GPTQ_MARLIN_24_MAX_PARALLEL)

    output_ref = torch.matmul(a_input, w_24_ref)

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    opcheck(torch.ops._C.gptq_marlin_24_gemm,
            (a_input, marlin_24_q_w_comp, marlin_24_meta, marlin_24_s,
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             workspace_24.scratch, quant_type.id, a_input.shape[0],
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             b_weight.shape[1], a_input.shape[1]),
            test_utils=DEFAULT_OPCHECK_TEST_UTILS)

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    output = marlin_24_gemm_tester(
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        a_input,
        marlin_24_q_w_comp,
        marlin_24_meta,
        marlin_24_s,
        workspace_24.scratch,
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        quant_type,
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        a_input.shape[0],
        b_weight.shape[1],
        a_input.shape[1],
    )

    torch.cuda.synchronize()

    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04
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@pytest.mark.skipif(not is_quant_method_supported("fp8"),
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                    reason="Marlin is not supported on this GPU type.")
@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
@pytest.mark.parametrize("num_bits", [8])
@pytest.mark.parametrize("group_size", [-1])
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
@pytest.mark.parametrize("dtype", DTYPES)
def test_fp8_marlin_gemm(
    k_chunk,
    n_chunk,
    num_bits,
    group_size,
    mnk_factors,
    dtype,
):
    m_factor, n_factor, k_factor = mnk_factors

    size_m = m_factor
    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    a_input = rand_data((size_m, size_k), dtype=dtype)
    b_weight = rand_data((size_k, size_n), dtype=dtype)

    # WEIGHTS
    fp8_weight, weight_scale = ops.scaled_fp8_quant(b_weight, scale=None)
    # Repack weights to gptq format (packed int32 elements)
    packed_gptq_qweight = pack_fp8_to_int32(fp8_weight)
    # Repack weights to marlin format
    marlin_qweight = ops.gptq_marlin_repack(
        b_q_weight=packed_gptq_qweight,
        perm=torch.empty(0, dtype=torch.int, device="cuda"),
        size_k=size_k,
        size_n=size_n,
        num_bits=8,
    )

    # WEIGHT SCALES
    # Currently Marlin doesn't support per-tensor scales, so we
    # expand it to channelwise
    scales = weight_scale.repeat(1, size_n).to(a_input.dtype).to("cuda")
    # Permute scales
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    marlin_scales = marlin_permute_scales(s=scales,
                                          size_k=size_k,
                                          size_n=size_n,
                                          group_size=-1)
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    workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
                                GPTQ_MARLIN_MAX_PARALLEL)

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    opcheck(torch.ops._C.fp8_marlin_gemm,
            (a_input, marlin_qweight, marlin_scales, workspace.scratch,
             num_bits, a_input.shape[0], b_weight.shape[1], a_input.shape[1]))

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    output = ops.fp8_marlin_gemm(
        a=a_input,
        b_q_weight=marlin_qweight,
        b_scales=marlin_scales,
        workspace=workspace.scratch,
        num_bits=num_bits,
        size_m=a_input.shape[0],
        size_n=b_weight.shape[1],
        size_k=a_input.shape[1],
    )
    output_ref = torch.matmul(a_input, b_weight)

    torch.cuda.synchronize()

    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04
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@pytest.mark.skipif(not is_quant_method_supported("gptq_marlin"),
                    reason="Marlin is not supported on this GPU type.")
@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
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@pytest.mark.parametrize("quant_type",
                         query_marlin_supported_quant_types(True))
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@pytest.mark.parametrize("group_size", MARLIN_SUPPORTED_GROUP_SIZES)
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
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@pytest.mark.parametrize("use_fp32_reduce", USE_FP32_REDUCE_OPTS)
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def test_awq_marlin_gemm(
    k_chunk,
    n_chunk,
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    quant_type,
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    group_size,
    mnk_factors,
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    use_fp32_reduce,
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):
    m_factor, n_factor, k_factor = mnk_factors

    size_m = m_factor
    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    a_input = rand_data((size_m, size_k))
    b_weight = rand_data((size_k, size_n))

    w_ref, marlin_q_w, marlin_s, marlin_zp = awq_marlin_quantize(
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        b_weight, quant_type, group_size)
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    g_idx = torch.empty(0, dtype=torch.int, device=marlin_q_w.device)
    sort_indices = torch.empty(0, dtype=torch.int, device=marlin_q_w.device)
    is_k_full = True
    has_zp = True

    workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
                                GPTQ_MARLIN_MAX_PARALLEL)

    output = ops.gptq_marlin_gemm(
        a_input,
        marlin_q_w,
        marlin_s,
        marlin_zp,
        g_idx,
        sort_indices,
        workspace.scratch,
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        quant_type,
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        a_input.shape[0],
        b_weight.shape[1],
        a_input.shape[1],
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        is_k_full=is_k_full,
        has_zp=has_zp,
        use_fp32_reduce=use_fp32_reduce,
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        is_zp_float=False,
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    )
    output_ref = torch.matmul(a_input, w_ref)

    torch.cuda.synchronize()

    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04
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@pytest.mark.skipif(not is_quant_method_supported("gptq_marlin"),
                    reason="Marlin is not supported on this GPU type.")
@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
@pytest.mark.parametrize("group_size", HQQ_SUPPORTED_GROUP_SIZES)
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
@pytest.mark.parametrize("use_fp32_reduce", USE_FP32_REDUCE_OPTS)
def test_hqq_marlin_gemm(
    k_chunk,
    n_chunk,
    group_size,
    mnk_factors,
    use_fp32_reduce,
):
    m_factor, n_factor, k_factor = mnk_factors

    size_m = m_factor
    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    quant_type = scalar_types.uint4

    a_input = rand_data((size_m, size_k))
    dev = a_input.device

    b_weight = torch.randint(0,
                             10, (size_n, size_k),
                             dtype=torch.uint8,
                             device=dev)
    scale = rand_data((size_n, size_k // group_size))
    zero = rand_data((size_n, size_k // group_size))

    gptq_w_q = gptq_pack(b_weight.transpose(1, 0), 4, size_k, size_n)

    sort_indices = torch.empty(0, dtype=torch.int, device=dev)
    marlin_w_q = ops.gptq_marlin_repack(gptq_w_q, sort_indices, size_k, size_n,
                                        4).to(dev)
    marlin_s = marlin_permute_scales(scale.transpose(1, 0), size_k, size_n,
                                     group_size).to(dev)
    marlin_zp = marlin_permute_scales(zero.transpose(1, 0), size_k, size_n,
                                      group_size).to(dev)

    g_idx = marlin_make_empty_g_idx(dev)
    g_idx_sort_indices = marlin_make_empty_g_idx(dev)

    workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
                                GPTQ_MARLIN_MAX_PARALLEL)

    output = ops.gptq_marlin_gemm(
        a_input,
        marlin_w_q,
        marlin_s,
        marlin_zp,
        g_idx,
        g_idx_sort_indices,
        workspace.scratch,
        quant_type,
        a_input.shape[0],
        b_weight.shape[0],
        a_input.shape[1],
        is_k_full=True,
        has_zp=True,
        use_fp32_reduce=use_fp32_reduce,
        is_zp_float=True,
    )

    b_flat = b_weight.reshape(-1, group_size)
    zp_flat = zero.reshape(-1, 1)
    s_flat = scale.reshape(-1, 1)
    dequant = (b_flat - zp_flat) * s_flat

    output_ref = torch.matmul(a_input,
                              dequant.reshape(b_weight.shape).transpose(1, 0))

    torch.cuda.synchronize()

    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04


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@pytest.mark.skipif(not is_quant_method_supported("qqq"),
                    reason="Marlin is not supported on this GPU type.")
@pytest.mark.parametrize("k_chunk", MARLIN_K_CHUNKS)
@pytest.mark.parametrize("n_chunk", MARLIN_N_CHUNKS)
@pytest.mark.parametrize("num_bits", MARLIN_QQQ_SUPPORTED_NUM_BITS)
@pytest.mark.parametrize("group_size", MARLIN_QQQ_SUPPORTED_GROUP_SIZES)
@pytest.mark.parametrize("mnk_factors", MNK_FACTORS)
def test_marlin_qqq_gemm(
    k_chunk,
    n_chunk,
    num_bits,
    group_size,
    mnk_factors,
):
    int8_traits = torch.iinfo(torch.int8)
    m_factor, n_factor, k_factor = mnk_factors

    size_m = m_factor
    size_k = k_chunk * k_factor
    size_n = n_chunk * n_factor

    a_input = rand_data((size_m, size_k))
    b_weight = rand_data((size_k, size_n))

    # Quantize activations
    s_a = a_input.abs().max(dim=-1, keepdim=True)[0].div(int8_traits.max).to(
        torch.float)
    q_a = (a_input / s_a).round().clamp(int8_traits.min,
                                        int8_traits.max).to(torch.int8)

    # Quantize weights
    w_ref, marlin_qqq_q_w, marlin_qqq_s_group, marlin_qqq_s_channel = \
    marlin_qqq_quantize(b_weight, num_bits, group_size)

    workspace = MarlinWorkspace(size_n, MARLIN_QQQ_MIN_THREAD_N,
                                MARLIN_QQQ_MAX_PARALLEL)

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    opcheck(torch.ops._C.marlin_qqq_gemm,
            (q_a, marlin_qqq_q_w, s_a, marlin_qqq_s_channel,
             marlin_qqq_s_group, workspace.scratch, a_input.shape[0],
             b_weight.shape[1], a_input.shape[1]))

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    output = ops.marlin_qqq_gemm(
        q_a,
        marlin_qqq_q_w,
        s_a,
        marlin_qqq_s_channel,
        marlin_qqq_s_group,
        workspace.scratch,
        a_input.shape[0],
        b_weight.shape[1],
        a_input.shape[1],
    )
    output_ref = torch.matmul(q_a.half() * s_a.half(), w_ref)

    torch.cuda.synchronize()

    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04
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def test_marlin_gemm_subset_input():
    quant_type = scalar_types.uint4b8
    group_size = 128

    size_m, size_k, size_n = 32, 1024, 2048
    big_m = size_m * 2
    big_k = size_k * 2

    a_input = rand_data((big_m, big_k))[8:size_m + 8, 8:size_k + 8]
    b_weight = rand_data((size_k, size_n))

    w_ref, marlin_q_w, marlin_s, g_idx, sort_indices, _ = marlin_quantize(
        b_weight, quant_type, group_size, False)

    marlin_zp = marlin_make_empty_g_idx(marlin_s.device)
    workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
                                GPTQ_MARLIN_MAX_PARALLEL)

    output = ops.gptq_marlin_gemm(
        a_input,
        marlin_q_w,
        marlin_s,
        marlin_zp,
        g_idx,
        sort_indices,
        workspace.scratch,
        quant_type,
        a_input.shape[0],
        b_weight.shape[1],
        a_input.shape[1],
        is_k_full=True,
        has_zp=False,
        use_atomic_add=False,
        use_fp32_reduce=True,
        is_zp_float=False,
    )
    output_ref = torch.matmul(a_input, w_ref)

    torch.cuda.synchronize()

    max_diff = compute_max_diff(output, output_ref)

    assert max_diff < 0.04


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def test_marlin_gemm_opcheck():
    size_m = 2048
    size_n = 4096
    size_k = 4096
    a = torch.rand((size_m, size_n), device='cuda', dtype=torch.float16)
    w = torch.randint(-5, 5, (256, 8192), device='cuda', dtype=torch.int32)
    s = torch.full((32, size_k), 0.125, device='cuda', dtype=torch.float16)
    wk = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
                         GPTQ_MARLIN_MAX_PARALLEL).scratch
    x = torch.ops._C.marlin_gemm(a, w, s, wk, size_m, size_n, size_k)
    y = torch.ops._C.marlin_gemm(a, w, s, wk, size_m, size_n, size_k)
    torch.testing.assert_close(x, y)
    opcheck(torch.ops._C.marlin_gemm, (a, w, s, wk, size_m, size_n, size_k))