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enable description in pypi page #285

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Aug 9, 2019
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@yueyericardo yueyericardo commented Aug 9, 2019

@yueyericardo yueyericardo changed the title enable discription in pypi page enable description in pypi page Aug 9, 2019
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LGTM

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codecov bot commented Aug 9, 2019

Codecov Report

Merging #285 into master will increase coverage by 8.94%.
The diff coverage is n/a.

Impacted file tree graph

@@            Coverage Diff             @@
##           master     #285      +/-   ##
==========================================
+ Coverage    77.2%   86.15%   +8.94%     
==========================================
  Files          16       15       -1     
  Lines        1531     1372     -159     
==========================================
  Hits         1182     1182              
+ Misses        349      190     -159
Impacted Files Coverage Δ
torchani/neurochem/__init__.py 92.75% <0%> (ø) ⬆️
torchani/data/data.py

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@zasdfgbnm zasdfgbnm merged commit b2da319 into aiqm:master Aug 9, 2019
zasdfgbnm added a commit that referenced this pull request Sep 23, 2019
* Force coefficient is better to be 0.1 (#249)

Being 1 does not work well

* Change unidiomatic type calls to isinstance and remove deprecated h5py operator (#250)

* Change unidiomatic type calls to isinstance and remove deprecated h5py operator

* Add whitespace after , to make flake8 happy

* Reformat the BuiltinModels and Builtins API to make them simpler and clearer (#252)

* compute atomic self energies for a given data set prior to training  (#255)

* using least-squares to compute atomic self energies from the dataset

* self atomic energy calculation in the example training file

* import ignite and data separately (#256)

* Support 0 molecule subsets when loading dataset (#257)

* Support 0 molecule subsets when loading dataset

* fix

* fix

* Simplify computation of strain (#260)

* Update ase.py

* Update ase.py

* Scale by sqrt(natoms) instead of natoms (#259)

* AdamW implementation minor fix (#261)

* ASE dropped python2 support (#265)

* Cleanup code for builtin models (#266)

* Add "do not merge" blocker (#268)

* Small doc fixes (#270)

* calculate intercept when fitting, discard outliers from dataset (#263)

* Replace BatchedANIDataset (#272)

* Fix codefactor warnings (#273)

* Fix pyanitools docstrings

* Make offending ignite docstring raw

* Make flake8 happy

* Port to torch.bool data type where it should be (#278)

* Port to torch.bool data type where it should be

* more

* more

* fix snoop

* hopefully fixed

* fix ignite

* remove snoop

* flake8

* Add test for isolated atoms and large distances for 2 and 3 atoms (#274)

* Adapt neurochem trainer to NC setup (#275)

* Remove the first layer's weight decay parameters of each atomic network (#279)

* LR scheduler for SGD (#282)

* Update nnp_training to have identical setup to NC (#280)

* Update nnp_training to have identical setup to NC

* fix

* add LR decay scheduler for both optimizers

* fix

* Update force training example (#283)

* Update nnp_training to have identical setup to NC

* fix

* add LR decay scheduler for both optimizers

* fix

* update example files

* fix

* fix

* enable discription in pypi page (#285)

https://pypi.org/project/torchani/

* Support len in ChemicalSymbolsToInts, len of it returns number of supported elements (#286)

* Support len in ChemicalSymbolsToInts

* fix

* flake8

* Discard outlier energy conformers (#287)

* outlier removal process fixed

* remove outlier energies if exist

* small fix in methane, had a missing atom (#288)

* Remove all large files and stop using git-lfs (#289)

* Accelerate angular AEV computation and reduce memory cost (#290)

* Accerate angular AEV computation and reduce memory cost

* reduce number of elementwise product

* Change download URL to dropbox (#291)

* Update test_data.py (#292)

* Update README.md installation (#294)

* Remove unnecessary import (#296)

* Remove unnecessary import

* fix

* New dataset API, cached dataset and shuffled dataset  (#284)

* Add split to new dataset API (#299)

* split

* clean

* docs

* docs

* Update new.py

* Fix dependency in setup.py: `torch-nightly` has been renamed to `torch` (#295)

* Fix dependency in setup.py: `torch-nightly` has been renamed to `torch`

`torch-nightly` has been renamed to `torch`

* Update install_dependencies.sh

* Update install_dependencies_python2.sh

* Update deploy-docs.yml

* Update docs.yml

* Update tools.yml

* Update setup.py

* Update start.rst

* Update runnable_submodules.yml

* Update install_dependencies.sh

* Update install_dependencies_python2.sh

* Update start.rst

* Update README.md

* Update README.md

* New Dataset API add other properties (#300)

* cached

* typo and comments

* easy to read

* change some names

* fix unit test

* empty line

* fix

* fix

* add docs and add whether include_energies

* docs

* other properties for shuffled dataset

* docs

* dtype for benchmark

* add properties to test

* style

* [JIT] Add TorchScript compatibility for AEVComputer (#303)

* make aev,model compatible with jit

* add type annotation to nn

* flake8 fix

* refactor AEVComputer

* fix doc

* an example with padding

* use Optional type instead of padding

* fix

* fix

* make pbc and cell keyword arguments in test_aev

* fix

* make pbc and cell keyword arguments in ase

* fix

* fix

* fix dtype

* fix

* aev_computer dtype to double

* change test files to have aev_computer with keyword argument

* fix JIT types

* add TestAEVJIT

* fix LGTM alerts

* fix TestAEVJIT

* Update aev.py

workaround for dtype in `torch.arange`

* More arange bugs

* Even more arange

* fix LGTM alert

* [JIT] Add TorchScript Compatibility for EnergyShifter (#306)

* enable EnergyShifter scripting

* fix

* fix

* Fix the dimension in self_energies for dataset containing only one elements (#302)

* Update utils.py

if I train molecule like Oxygen which contains only one element, the self.self_energies is a scalar and will make the operation self_energies = self.self_energies[species] crash. Besides, the species of Oxygen is [[3,3]] and is over the boundary of the energy list, so need to minus the minimum.

* Update utils.py

* Use a modified Sequential class with type annotation (#308)

* Move flake8 check to github actions (#309)

* Update and rename pythonpackage.yml to flake8.yml

* Delete flake8.yml

* Update flake8.yml

* Move docs to github actions (#310)

* Move docs to github actions

* Delete docs.yml

* Create install_dependencies.sh (#311)

* Rename install_dependencies.sh to ci/install_dependencies.sh

* +x

* Move tools check to GitHub Actions (#314)

* Move tools check to GitHub Actions

* Delete tools.yml

* Move submodules check to GitHub Actions (#313)

* Create runnable_submodules.yml

* Delete runnable_submodules.yml

* Update runnable_submodules.yml
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2 participants