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Summary:
This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

NOTE: The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851

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pytorch-bot bot commented Jul 11, 2025

🔗 Helpful Links

🧪 See artifacts and rendered test results at hud.pytorch.org/pr/pytorch/executorch/12417

Note: Links to docs will display an error until the docs builds have been completed.

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@facebook-github-bot facebook-github-bot added the CLA Signed This label is managed by the Facebook bot. Authors need to sign the CLA before a PR can be reviewed. label Jul 11, 2025
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This pull request was exported from Phabricator. Differential Revision: D78124851

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IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 11, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
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This pull request was exported from Phabricator. Differential Revision: D78124851

IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 11, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 11, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
@facebook-github-bot
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This pull request was exported from Phabricator. Differential Revision: D78124851

IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 12, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 12, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
@IshanAryendu IshanAryendu force-pushed the export-D78124851 branch 2 times, most recently from 9b7474d to d84037b Compare July 12, 2025 07:50
IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 12, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 12, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
@facebook-github-bot
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This pull request was exported from Phabricator. Differential Revision: D78124851

IshanAryendu added a commit to IshanAryendu/executorch that referenced this pull request Jul 12, 2025
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
Summary:

This is a training example which demonstrates how a simple CNN model for CIFAR 10 can be trained using the traditional PTE only training and the PTE + PTD file export.

**NOTE:** The PTE + PTD training doesn't work in Python yet

Differential Revision: D78124851
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