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Infection state #118

Merged
merged 27 commits into from
Jul 31, 2024
Merged

Infection state #118

merged 27 commits into from
Jul 31, 2024

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alishbaimran
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@ziw-liu ziw-liu changed the base branch from main to contrastive_phenotyping July 29, 2024 22:34
@ziw-liu ziw-liu self-requested a review July 29, 2024 22:34
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ziw-liu commented Jul 31, 2024

Please refer to the contributing guide for CI requirements.

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@ziw-liu ziw-liu merged commit edd419f into contrastive_phenotyping Jul 31, 2024
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@ziw-liu ziw-liu deleted the infection_state branch July 31, 2024 23:13
ziw-liu added a commit that referenced this pull request Aug 2, 2024
* first draft of contrastive learning model

* fixed stem and projection head, drafted lightning module

* Contrastive_dataloader (#99)

* initial dataloader.py

* Update dataloader_test.py

* Update dataloader_test.py

* Update dataloader_test.py

* Update dataloader_test.py

* rename training script

* move contrastive network to viscy.representation module

* Update hcs.py

* refactored class names

* correct imports

* cleaner names for model arch and module

* new imports

* Fixed epoch loss logging and WandB integration in ContrastiveModule

* updated training_script.py

* Update hcs.py

* contrastive.py

* engine.py

* script to test data i/o speed from different filesystems

* moved applications folder to viscy.applications so that pip install -e . works.

* add resnet50 to ContrastiveEncoder

* rename training_script.py to training_script_resnet.py

* test dataloader on lustre and vast

* move training_script_resnet to viscy.applications so that `pip install -e .` works

* refined the tests for contrastive dataloader

* sbatch script for dataloader

* delete redundant module

* nits: updated the model construction of contrastive resnet encoder.

* Updated training script, HCS data handling, engine, and contrastive representation

* Fix normalization, visualization issues, logging and multi-channel prediction

* updated training and prediction

* update training and prediction script

* formatting

* combine the application directories

* lint

* replace notebook with script

* format script

* rename scripts conflicting with pytest

* lint application scripts

* do not filter all warnings

* log instead of print

* split data modules by task

* clean up imports

* update typing

* use pathlib

* remove redundant file

* updated predict.py

* better typing

* wip: triplet dataset

* avoid forward ref
this might increase code analysis time a tiny bit
but should not have any effect at runtime

* check that z range is valid
and fix indexing

* clean up and explain random sampling

* sample dict instead of tuple and include track index

* take out generic HCS methods for reuse

* implement TripletDataModule

* use new batch type in engine

* better typing

* read normalization metadata

* docstring for data module

* drop normalization metadata after transformation

* remove unused import

* fix initial crop size

* Infection state (#118)

* updated prediction code

* updated predict code

* updated code

* fixed the stem and forward pass (#115)

* fixed the stem and forward pass

* update forward calls to encoder

* self.encoder -> self.model

* nits

* l2 normalize projections

* black compliance

* black compliance

* WIP: Save progress before merging

* updated contrastive.py

* stem update

* updated predict code

* Delete viscy/applications/contrastive_phenotyping/PCA.ipynb

* pushing dataloader test updated

* pca deleted

* training and dataloader test

* updated structure

* deleted files

* updated training merged files

* removed commented code

* removed uneeded code

* removed uneeded code

* removed comments

* snake_case

* fixed CI issues

* removed num_fovs

---------

Co-authored-by: Shalin Mehta <[email protected]>

---------

Co-authored-by: Shalin Mehta <[email protected]>
Co-authored-by: Alishba Imran <[email protected]>
Co-authored-by: Alishba Imran <[email protected]>
Co-authored-by: Alishba Imran <[email protected]>
Co-authored-by: Duo Peng <[email protected]>
edyoshikun pushed a commit that referenced this pull request Aug 7, 2024
* first draft of contrastive learning model

* fixed stem and projection head, drafted lightning module

* Contrastive_dataloader (#99)

* initial dataloader.py

* Update dataloader_test.py

* Update dataloader_test.py

* Update dataloader_test.py

* Update dataloader_test.py

* rename training script

* move contrastive network to viscy.representation module

* Update hcs.py

* refactored class names

* correct imports

* cleaner names for model arch and module

* new imports

* Fixed epoch loss logging and WandB integration in ContrastiveModule

* updated training_script.py

* Update hcs.py

* contrastive.py

* engine.py

* script to test data i/o speed from different filesystems

* moved applications folder to viscy.applications so that pip install -e . works.

* add resnet50 to ContrastiveEncoder

* rename training_script.py to training_script_resnet.py

* test dataloader on lustre and vast

* move training_script_resnet to viscy.applications so that `pip install -e .` works

* refined the tests for contrastive dataloader

* sbatch script for dataloader

* delete redundant module

* nits: updated the model construction of contrastive resnet encoder.

* Updated training script, HCS data handling, engine, and contrastive representation

* Fix normalization, visualization issues, logging and multi-channel prediction

* updated training and prediction

* update training and prediction script

* formatting

* combine the application directories

* lint

* replace notebook with script

* format script

* rename scripts conflicting with pytest

* lint application scripts

* do not filter all warnings

* log instead of print

* split data modules by task

* clean up imports

* update typing

* use pathlib

* remove redundant file

* updated predict.py

* better typing

* wip: triplet dataset

* avoid forward ref
this might increase code analysis time a tiny bit
but should not have any effect at runtime

* check that z range is valid
and fix indexing

* clean up and explain random sampling

* sample dict instead of tuple and include track index

* take out generic HCS methods for reuse

* implement TripletDataModule

* use new batch type in engine

* better typing

* read normalization metadata

* docstring for data module

* drop normalization metadata after transformation

* remove unused import

* fix initial crop size

* Infection state (#118)

* updated prediction code

* updated predict code

* updated code

* fixed the stem and forward pass (#115)

* fixed the stem and forward pass

* update forward calls to encoder

* self.encoder -> self.model

* nits

* l2 normalize projections

* black compliance

* black compliance

* WIP: Save progress before merging

* updated contrastive.py

* stem update

* updated predict code

* Delete viscy/applications/contrastive_phenotyping/PCA.ipynb

* pushing dataloader test updated

* pca deleted

* training and dataloader test

* updated structure

* deleted files

* updated training merged files

* removed commented code

* removed uneeded code

* removed uneeded code

* removed comments

* snake_case

* fixed CI issues

* removed num_fovs

---------

Co-authored-by: Shalin Mehta <[email protected]>

---------

Co-authored-by: Shalin Mehta <[email protected]>
Co-authored-by: Alishba Imran <[email protected]>
Co-authored-by: Alishba Imran <[email protected]>
Co-authored-by: Alishba Imran <[email protected]>
Co-authored-by: Duo Peng <[email protected]>
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3 participants