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Add logic for fqn_to_feature_names #3059
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
0b110fa to
71b6f82
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
71b6f82 to
848fe49
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
848fe49 to
8dc3c83
Compare
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
8dc3c83 to
31ef926
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
31ef926 to
a866e2f
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
a866e2f to
5e5897f
Compare
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
Summary: # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
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324d3d0
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
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e54aabb
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Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963 Reviewed By: kausv
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
e54aabb to
09b4f49
Compare
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
09b4f49 to
a029701
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
a029701 to
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
b9b03a2 to
76ff0cb
Compare
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
76ff0cb to
bc16e69
Compare
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963 Reviewed By: kausv
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
bc16e69 to
29f8c51
Compare
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Reviewed By: kausv Differential Revision: D75908963
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This pull request was exported from Phabricator. Differential Revision: D75908963 |
29f8c51 to
d25c2b3
Compare
Summary: Pull Request resolved: meta-pytorch#3059 # This Diff Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names # ModelDeltaTracker Context ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for: 1. Identifying which embedding rows were accessed during model execution 2. Retrieving the latest delta or unique rows for a model 3. Computing top-k changed embeddings 4. Supporting streaming updated embeddings between systems during online training Differential Revision: D75908963 Reviewed By: kausv
Summary:
This Diff
Added implementation for fqn_to_feature_names method along with initial testing framework and UTs for fqn_to_feature_names
ModelDeltaTracker Context
ModelDeltaTracker is a utility for tracking and retrieving unique IDs and their corresponding embeddings or states from embedding modules in model using Torchrec. It's particularly useful for:
Differential Revision: D75908963