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docs: fix a minor typo on the title of install-from-c-library.md #4484

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merged 1 commit into from
Dec 22, 2024

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@njzjz njzjz commented Dec 22, 2024

Summary by CodeRabbit

  • Documentation
    • Updated formatting of the installation guide for the pre-compiled C library.
    • Icons for TensorFlow and JAX are now displayed together in the header.
    • Retained all installation instructions and compatibility notes.

@njzjz njzjz added this to the v3.0.1 milestone Dec 22, 2024

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Copilot reviewed 1 out of 1 changed files in this pull request and generated no comments.

@github-actions github-actions bot added the Docs label Dec 22, 2024
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coderabbitai bot commented Dec 22, 2024

📝 Walkthrough

Walkthrough

The documentation for installing from a pre-compiled C library has been updated with a minor formatting change to the header line. The modification involves repositioning the icons for TensorFlow and JAX, presenting them more closely together. The core content of the installation instructions remains unchanged, maintaining the detailed guidance for downloading and using the pre-compiled C library package.

Changes

File Change Summary
doc/install/install-from-c-library.md Modified header formatting, repositioning TensorFlow and JAX icons

Note: No sequence diagram is generated for this change as it is a simple documentation formatting update with no functional modifications to the system's behavior.


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📒 Files selected for processing (1)
  • doc/install/install-from-c-library.md (1 hunks)
✅ Files skipped from review due to trivial changes (1)
  • doc/install/install-from-c-library.md

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codecov bot commented Dec 22, 2024

Codecov Report

All modified and coverable lines are covered by tests ✅

Project coverage is 84.41%. Comparing base (c24498b) to head (3abd608).
Report is 3 commits behind head on devel.

Additional details and impacted files
@@            Coverage Diff             @@
##            devel    #4484      +/-   ##
==========================================
- Coverage   84.41%   84.41%   -0.01%     
==========================================
  Files         670      670              
  Lines       62149    62148       -1     
  Branches     3487     3486       -1     
==========================================
- Hits        52465    52464       -1     
+ Misses       8558     8557       -1     
- Partials     1126     1127       +1     

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@wanghan-iapcm wanghan-iapcm added this pull request to the merge queue Dec 22, 2024
Merged via the queue into deepmodeling:devel with commit 2525ab2 Dec 22, 2024
60 checks passed
njzjz added a commit to njzjz/deepmd-kit that referenced this pull request Dec 22, 2024
…eepmodeling#4484)

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **Documentation**
- Updated formatting of the installation guide for the pre-compiled C
library.
- Icons for TensorFlow and JAX are now displayed together in the header.
	- Retained all installation instructions and compatibility notes.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

Signed-off-by: Jinzhe Zeng <[email protected]>
(cherry picked from commit 2525ab2)
njzjz added a commit that referenced this pull request Dec 23, 2024
…4484)

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **Documentation**
- Updated formatting of the installation guide for the pre-compiled C
library.
- Icons for TensorFlow and JAX are now displayed together in the header.
	- Retained all installation instructions and compatibility notes.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

Signed-off-by: Jinzhe Zeng <[email protected]>
(cherry picked from commit 2525ab2)
iProzd added a commit to iProzd/deepmd-kit that referenced this pull request Dec 24, 2024
* change property.npy to any name

* Init branch

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* change | to Union

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* change sub_var_name default to []

* Solve pre-commit

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* solve scanning github

* fix UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* delete useless file

* Solve some UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Solve precommit

* slove pre

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Solve dptest UT, dpatomicmodel UT, code scannisang

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* delete param  and

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Solve UT fail caused by task_dim and property_name

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Fix UT

* Fix UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Fix UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Fix permutation error

* Add property bias UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* recover rcond doc

* recover blank

* Change code according  according to coderabbitai

* solve pre-commit

* Fix UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* change apply_bias doc

* update the version compatibility

* feat (tf/pt): add atomic weights to tensor loss (deepmodeling#4466)

Interfaces are of particular interest in many studies. However, the
configurations in the training set to represent the interface normally
also include large parts of the bulk material. As a result, the final
model would prefer the bulk information while the interfacial
information is less learnt. It is difficult to simply improve the
proportion of interfaces in the configurations since the electronic
structures of the interface might only be reasonable with a certain
thickness of bulk materials. Therefore, I wonder whether it is possible
to define weights for atomic quantities in loss functions. This allows
us to add higher weights for the atomic information for the regions of
interest and probably makes the model "more focused" on the region of
interest.
In this PR, I add the keyword `enable_atomic_weight` to the loss
function of the tensor model. In principle, it could be generalised to
any atomic quantity, e.g., atomic forces.
I would like to know the developers' comments/suggestions about this
feature. I can add support for other loss functions and finish unit
tests once we agree on this feature.

Best. 




<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->
## Summary by CodeRabbit

- **New Features**
- Introduced an optional parameter for atomic weights in loss
calculations, enhancing flexibility in the `TensorLoss` class.
- Added a suite of unit tests for the `TensorLoss` functionality,
ensuring consistency between TensorFlow and PyTorch implementations.

- **Bug Fixes**
- Updated logic for local loss calculations to ensure correct
application of atomic weights based on user input.

- **Documentation**
- Improved clarity of documentation for several function arguments,
including the addition of a new argument related to atomic weights.
<!-- end of auto-generated comment: release notes by coderabbit.ai -->

* delete sub_var_name

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* recover to property key

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Fix conflict

* Fix UT

* Add document of property fitting

* Delete checkpoint

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Add get_property_name to DeepEvalBackend

* pd: fix learning rate setting when resume (deepmodeling#4480)

"When resuming training, there is no need to add `self.start_step` to
the step count because Paddle uses `lr_sche.last_epoch` as the input for
`step`, which already records the `start_step` steps."

learning rate are correct after fixing


![22AD6874B74E437E9B133D75ABCC02FE](https://github.com/user-attachments/assets/1ad0ce71-6e1c-4de5-87dc-0daca1f6f038)



<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **New Features**
- Enhanced training process with improved optimizer configuration and
learning rate adjustments.
	- Refined logging of training and validation results for clarity.
- Improved model saving logic to preserve the latest state during
interruptions.
- Enhanced tensorboard logging for detailed tracking of training
metrics.

- **Bug Fixes**
- Corrected lambda function for learning rate scheduler to reference
warmup steps accurately.

- **Chores**
- Streamlined data loading and handling for efficient training across
different tasks.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

* docs: update deepmd-gnn URL (deepmodeling#4482)

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **Documentation**
- Updated guidelines for creating and integrating new models in the
DeePMD-kit framework.
- Added new sections on descriptors, fitting networks, and model
requirements.
	- Enhanced unit testing section with instructions for regression tests.
- Updated URL for the DeePMD-GNN plugin to reflect new repository
location.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

Signed-off-by: Jinzhe Zeng <[email protected]>

* docs: update DPA-2 citation (deepmodeling#4483)

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->
## Summary by CodeRabbit

- **New Features**
- Updated references in the bibliography for the DPA-2 model to include
a new article entry for 2024.
	- Added a new reference for an attention-based descriptor.
  
- **Bug Fixes**
- Corrected reference links in documentation to point to updated DOI
links instead of arXiv.

- **Documentation**
- Revised entries in the credits and model documentation to reflect the
latest citations and details.
- Enhanced clarity and detail in fine-tuning documentation for
TensorFlow and PyTorch implementations.
<!-- end of auto-generated comment: release notes by coderabbit.ai -->

---------

Signed-off-by: Jinzhe Zeng <[email protected]>

* docs: fix a minor typo on the title of `install-from-c-library.md` (deepmodeling#4484)

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **Documentation**
- Updated formatting of the installation guide for the pre-compiled C
library.
- Icons for TensorFlow and JAX are now displayed together in the header.
	- Retained all installation instructions and compatibility notes.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

Signed-off-by: Jinzhe Zeng <[email protected]>

* fix: print dlerror if dlopen fails (deepmodeling#4485)

xref: njzjz/deepmd-gnn#44

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **New Features**
- Enhanced error messages for library loading failures on non-Windows
platforms.
- Updated thread management environment variable checks for improved
compatibility.
- Added support for mixed types in tensor input handling, allowing for
more flexible configurations.

- **Bug Fixes**
	- Improved error reporting for dynamic library loading issues.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

---------

Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>

* change doc to py

* Add out_bias out_std doc

* change bias method to compute_stats_do_not_distinguish_types

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* change var_name to property_name

* [pre-commit.ci] auto fixes from pre-commit.com hooks

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* change logic of extensive bias

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* add doc for neww added parameter

* change doc for compute_stats_do_not_distinguish_types

* try to fix dptest

* change all property to property_name

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Fix UT

* [pre-commit.ci] auto fixes from pre-commit.com hooks

for more information, see https://pre-commit.ci

* Delete key 'property' completely

* Fix UT

* Fix dptest UT

* pd: fix oom error (deepmodeling#4493)

Paddle use `MemoryError` rather than `RuntimeError` used in pytorch, now
I can test DPA-1 and DPA-2 in 16G V100...

![image](https://github.com/user-attachments/assets/42ead773-bf26-4195-8f67-404b151371de)

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->

## Summary by CodeRabbit

- **Bug Fixes**
- Improved detection of out-of-memory (OOM) errors to enhance
application stability.
- Ensured cached memory is cleared upon OOM errors, preventing potential
memory leaks.

<!-- end of auto-generated comment: release notes by coderabbit.ai -->

* pd: add missing `dp.eval()` in pd backend (deepmodeling#4488)

Switch to eval mode when evaluating model, otherwise `self.training`
will be `True`, backward graph will be created and cause OOM

<!-- This is an auto-generated comment: release notes by coderabbit.ai
-->
## Summary by CodeRabbit

- **New Features**
- Enhanced model evaluation state management to ensure correct behavior
during evaluation.

- **Bug Fixes**
- Improved type consistency in the `normalize_coord` function for better
computational accuracy.
<!-- end of auto-generated comment: release notes by coderabbit.ai -->

* [pre-commit.ci] pre-commit autoupdate (deepmodeling#4497)

<!--pre-commit.ci start-->
updates:
- [github.com/astral-sh/ruff-pre-commit: v0.8.3 →
v0.8.4](astral-sh/ruff-pre-commit@v0.8.3...v0.8.4)
<!--pre-commit.ci end-->

Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>

* Delete attribute

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* Solve comment

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* Solve error

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* delete property_name in serialize

---------

Signed-off-by: Jinzhe Zeng <[email protected]>
Co-authored-by: root <[email protected]>
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
Co-authored-by: Chenqqian Zhang <[email protected]>
Co-authored-by: Jia-Xin Zhu <[email protected]>
Co-authored-by: HydrogenSulfate <[email protected]>
Co-authored-by: Jinzhe Zeng <[email protected]>
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