1. 24 Nov, 2019 1 commit
  2. 22 Nov, 2019 2 commits
  3. 21 Nov, 2019 2 commits
    • John Andrilla's avatar
      [Doc] Edit for readability (#989) · 8f7abb5f
      John Andrilla authored
      
      
      * Edit for readability
      
      Edit pass for grammar and style. 
      * A great value-add would be to provide assumptions and prerequisites in the opening section. This helps readers understand what they need to have in place in order to make use of your tutorial steps.
      * The wikidata knowledge graph could be improved with a smaller font for the Zuckerberg circle.
      
      * Update tutorials/hetero/1_basics.py
      
      * Update tutorials/hetero/1_basics.py
      Co-Authored-By: default avatarAaron Markham <markhama@amazon.com>
      
      * Update tutorials/hetero/1_basics.py
      Co-Authored-By: default avatarAaron Markham <markhama@amazon.com>
      
      * Update tutorials/hetero/1_basics.py
      Co-Authored-By: default avatarAaron Markham <markhama@amazon.com>
      
      * Update tutorials/hetero/1_basics.py
      Co-Authored-By: default avatarAaron Markham <markhama@amazon.com>
      
      * Update tutorials/hetero/1_basics.py
      Co-Authored-By: default avatarAaron Markham <markhama@amazon.com>
      8f7abb5f
    • John Andrilla's avatar
      [Doc] Edit for grammar and style (#986) · 409183bc
      John Andrilla authored
      Can you add a link for the download to this sentence: You can also `download <location?>` and run the different code examples...
      As with other tutorial topics, it would be helpful to add your assumptions or information in the opening section about prerequisites.
      409183bc
  4. 20 Nov, 2019 2 commits
    • Mufei Li's avatar
      Fix (#1019) · f1542b9d
      Mufei Li authored
      f1542b9d
    • John Andrilla's avatar
      [Doc] Edit for grammar and style (#985) · d2afe65c
      John Andrilla authored
      * Edit for grammar and style
      
      In the opening paragraph, it would be helpful to provide some overall scenario and the prerequisites you expect readers to have completed before they start here. "This tutorial assumes you have already..." Add a link to Install DGL topic perhaps and any other framework or IDE or even specialized knowledge. With this context, you help readers to succeed by setting expectations.
      
      Better to group all tutorials (this, PageRank with, Batched Graph, Working with) at the same level in the left navigation rail and all as subsections of DGL Basics.
      
      * Update tutorials/basics/2_basics.py
      d2afe65c
  5. 14 Nov, 2019 1 commit
    • MilkshakeForReal's avatar
      [Model] add RotatE to dgl-kg (#964) · 8b17a5c1
      MilkshakeForReal authored
      Add RotatE support for KGE (apps/kg)
      Performance Result:
      Dataset FB15k:
      Result from Paper:
      MR: 40
      MRR: 0.797
      HIT@1: 74.6
      HIT@3: 83.0
      HIT@10: 88.4
      
      Our Impl:
      MR: 39.6
      MRR: 0.725
      HIT@1: 62.8
      HIT@3: 80.2
      HIT@10: 87.5
      8b17a5c1
  6. 13 Nov, 2019 1 commit
  7. 08 Nov, 2019 1 commit
  8. 05 Nov, 2019 2 commits
  9. 04 Nov, 2019 2 commits
  10. 03 Nov, 2019 1 commit
    • Zihao Ye's avatar
      [NN] nn modules & examples update (#890) · 9a0511c8
      Zihao Ye authored
      * upd
      
      * damn it
      
      * fuck
      
      * fuck pylint
      
      * fudge
      
      * remove some comments about MXNet
      
      * upd
      
      * upd
      
      * damn it
      
      * damn it
      
      * fuck
      
      * fuck
      
      * upd
      
      * upd
      
      * pylint bastard
      
      * upd
      
      * upd
      
      * upd
      
      * upd
      
      * upd
      
      * upd
      
      * upd
      
      * upd
      
      * upd
      9a0511c8
  11. 01 Nov, 2019 2 commits
    • xiang song(charlie.song)'s avatar
      [NN]Supporting TransR in app/kg score_func (#945) · 7f65199a
      xiang song(charlie.song) authored
      * Add TransR for kge
      
      * Now Pytorch TransR can run
      
      * Add MXNet TransR
      
      * Now mxnet can work with small dim size
      
      * Add test
      
      * Pass simple test_score
      
      * Update test with transR score func
      
      * Update RESCAL MXNet
      
      * Add missing funcs
      
      * Update init func for transR score
      
      * Revert "Update init func for transR score"
      
      This reverts commit 0798bb886095e7581f6675da5343376844ce45b9.
      
      * Update score func of TransR MXNet
      
      Make it more memory friendly and faster,
      thourgh it is still very slow and memory consuming
      
      * Update best config
      
      * Fix ramdom seed for test
      
      * Init score-func specific var
      
      * Update Readme
      7f65199a
    • John Andrilla's avatar
      a85382b0
  12. 30 Oct, 2019 1 commit
    • xiang song(charlie.song)'s avatar
      [Bug Fix] Fix package reliability bug of networkx (#949) · 82499e60
      xiang song(charlie.song) authored
      * upd
      
      * fig edgebatch edges
      
      * add test
      
      * trigger
      
      * Update README.md for pytorch PinSage example.
      
      Add noting that the PinSage model example under
      example/pytorch/recommendation only work with Python 3.6+
      as its dataset loader depends on stanfordnlp package
      which work only with Python 3.6+.
      
      * Provid a frame agnostic API to test nn modules on both CPU and CUDA side.
      
      1. make dgl.nn.xxx frame agnostic
      2. make test.backend include dgl.nn modules
      3. modify test_edge_softmax of test/mxnet/test_nn.py and
          test/pytorch/test_nn.py work on both CPU and GPU
      
      * Fix style
      
      * Delete unused code
      
      * Make agnostic test only related to tests/backend
      
      1. clear all agnostic related code in dgl.nn
      2. make test_graph_conv agnostic to cpu/gpu
      
      * Fix code style
      
      * fix
      
      * doc
      
      * Make all test code under tests.mxnet/pytorch.test_nn.py
      work on both CPU and GPU.
      
      * Fix syntex
      
      * Remove rand
      
      * Add TAGCN nn.module and example
      
      * Now tagcn can run on CPU.
      
      * Add unitest for TGConv
      
      * Fix style
      
      * For pubmed dataset, using --lr=0.005 can achieve better acc
      
      * Fix style
      
      * Fix some descriptions
      
      * trigger
      
      * Fix doc
      
      * Add nn.TGConv and example
      
      * Fix bug
      
      * Update data in mxnet.tagcn test acc.
      
      * Fix some comments and code
      
      * delete useless code
      
      * Fix namming
      
      * Fix bug
      
      * Fix bug
      
      * Add test for mxnet TAGCov
      
      * Add test code for mxnet TAGCov
      
      * Update some docs
      
      * Fix some code
      
      * Update docs dgl.nn.mxnet
      
      * Update weight init
      
      * Fix
      
      * reproduce the bug
      
      * Fix concurrency bug reported at #755.
      Also make test_shared_mem_store.py more deterministic.
      
      * Update test_shared_mem_store.py
      
      * Update dmlc/core
      
      * networkx >= 2.4 will break our examples
      
      * Update tutorials/requirements
      
      * fix selfloop edges
      
      * upd version
      82499e60
  13. 29 Oct, 2019 2 commits
  14. 28 Oct, 2019 1 commit
  15. 26 Oct, 2019 1 commit
  16. 25 Oct, 2019 3 commits
  17. 21 Oct, 2019 7 commits
  18. 18 Oct, 2019 1 commit
  19. 12 Oct, 2019 1 commit
  20. 11 Oct, 2019 3 commits
    • xiang song(charlie.song)'s avatar
      Fix bug of KG train.py script. (#922) · 20439e1c
      xiang song(charlie.song) authored
      It cannot work when only mxnet backend is installed.
      20439e1c
    • xiang song(charlie.song)'s avatar
      [KG] Update CI to cover Knowledge Graph (#913) · 93e3c49d
      xiang song(charlie.song) authored
      * upd
      
      * fig edgebatch edges
      
      * add test
      
      * trigger
      
      * Update README.md for pytorch PinSage example.
      
      Add noting that the PinSage model example under
      example/pytorch/recommendation only work with Python 3.6+
      as its dataset loader depends on stanfordnlp package
      which work only with Python 3.6+.
      
      * Provid a frame agnostic API to test nn modules on both CPU and CUDA side.
      
      1. make dgl.nn.xxx frame agnostic
      2. make test.backend include dgl.nn modules
      3. modify test_edge_softmax of test/mxnet/test_nn.py and
          test/pytorch/test_nn.py work on both CPU and GPU
      
      * Fix style
      
      * Delete unused code
      
      * Make agnostic test only related to tests/backend
      
      1. clear all agnostic related code in dgl.nn
      2. make test_graph_conv agnostic to cpu/gpu
      
      * Fix code style
      
      * fix
      
      * doc
      
      * Make all test code under tests.mxnet/pytorch.test_nn.py
      work on both CPU and GPU.
      
      * Fix syntex
      
      * Remove rand
      
      * Add TAGCN nn.module and example
      
      * Now tagcn can run on CPU.
      
      * Add unitest for TGConv
      
      * Fix style
      
      * For pubmed dataset, using --lr=0.005 can achieve better acc
      
      * Fix style
      
      * Fix some descriptions
      
      * trigger
      
      * Fix doc
      
      * Add nn.TGConv and example
      
      * Fix bug
      
      * Update data in mxnet.tagcn test acc.
      
      * Fix some comments and code
      
      * delete useless code
      
      * Fix namming
      
      * Fix bug
      
      * Fix bug
      
      * Add test for mxnet TAGCov
      
      * Add test code for mxnet TAGCov
      
      * Update some docs
      
      * Fix some code
      
      * Update docs dgl.nn.mxnet
      
      * Update weight init
      
      * Fix
      
      * reproduce the bug
      
      * Fix concurrency bug reported at #755.
      Also make test_shared_mem_store.py more deterministic.
      
      * Update test_shared_mem_store.py
      
      * Update dmlc/core
      
      * Update Knowledge Graph CI with new Docker image
      
      * Remove unused line_profierx
      
      * Poke Jenkins
      
      * Update test with exit code check and simplify docker
      
      * Update Jenkinsfile to make app test a standalone stage
      
      * Update kg_test
      
      * Update Jenkinsfile
      
      * Make some KG test parallel
      
      * Update
      
      * KG MXNet does not support ComplEx
      
      * Update Jenkinsfile
      
      * Update Jenkins file
      
      * Change torch-1.2 to torch-1.2-cu92
      
      * ci
      
      * Update ubuntu_install_mxnet_cpu.sh
      
      * Update ubuntu_install_mxnet_gpu.sh
      
      * We only need to test train and eval script.
      Delete some test code
      93e3c49d
    • xiang song(charlie.song)'s avatar
      [KG] ComplEx score func for MXNet (#918) · bde75256
      xiang song(charlie.song) authored
      * upd
      
      * fig edgebatch edges
      
      * add test
      
      * trigger
      
      * Update README.md for pytorch PinSage example.
      
      Add noting that the PinSage model example under
      example/pytorch/recommendation only work with Python 3.6+
      as its dataset loader depends on stanfordnlp package
      which work only with Python 3.6+.
      
      * Provid a frame agnostic API to test nn modules on both CPU and CUDA side.
      
      1. make dgl.nn.xxx frame agnostic
      2. make test.backend include dgl.nn modules
      3. modify test_edge_softmax of test/mxnet/test_nn.py and
          test/pytorch/test_nn.py work on both CPU and GPU
      
      * Fix style
      
      * Delete unused code
      
      * Make agnostic test only related to tests/backend
      
      1. clear all agnostic related code in dgl.nn
      2. make test_graph_conv agnostic to cpu/gpu
      
      * Fix code style
      
      * fix
      
      * doc
      
      * Make all test code under tests.mxnet/pytorch.test_nn.py
      work on both CPU and GPU.
      
      * Fix syntex
      
      * Remove rand
      
      * Add TAGCN nn.module and example
      
      * Now tagcn can run on CPU.
      
      * Add unitest for TGConv
      
      * Fix style
      
      * For pubmed dataset, using --lr=0.005 can achieve better acc
      
      * Fix style
      
      * Fix some descriptions
      
      * trigger
      
      * Fix doc
      
      * Add nn.TGConv and example
      
      * Fix bug
      
      * Update data in mxnet.tagcn test acc.
      
      * Fix some comments and code
      
      * delete useless code
      
      * Fix namming
      
      * Fix bug
      
      * Fix bug
      
      * Add test for mxnet TAGCov
      
      * Add test code for mxnet TAGCov
      
      * Update some docs
      
      * Fix some code
      
      * Update docs dgl.nn.mxnet
      
      * Update weight init
      
      * Fix
      
      * reproduce the bug
      
      * Fix concurrency bug reported at #755.
      Also make test_shared_mem_store.py more deterministic.
      
      * Update test_shared_mem_store.py
      
      * Update dmlc/core
      
      * Add complEx for mxnet
      
      * ComplEx is ready for MXNet
      bde75256
  21. 09 Oct, 2019 2 commits
  22. 08 Oct, 2019 1 commit