commit | d8881eb71d3bb4e1a8a2358cad848b11d664b675 | [log] [tgz] |
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author | Nick Kreeger <kreeger@google.com> | Thu Jun 11 12:50:23 2020 -0700 |
committer | TensorFlower Gardener <gardener@tensorflow.org> | Thu Jun 11 12:54:09 2020 -0700 |
tree | f00fc142d18b38f5c5f7c8b4eceb2201d29a8ca7 | |
parent | 221d47c3b920c757eae9f96f2b0a4390e362cf37 [diff] |
Add a memory threshold allocation test for the Keyword model. This new test ensures that TF Micro does not regress current allocations (on x86-64 systems) for a canonical model. As RAM reduction changes are introduced, the values in this test can be updated from the console log of this test. Current output for the keyword model: Testing TestKeywordModelMemoryThreshold [RecordingMicroAllocator] Arena allocation total 21440 bytes [RecordingMicroAllocator] Arena allocation head 672 bytes [RecordingMicroAllocator] Arena allocation tail 20768 bytes [RecordingMicroAllocator] 'TfLiteTensor struct allocation' used 6048 bytes (requested 6048 bytes 54 times) [RecordingMicroAllocator] 'TfLiteTensor quantization data allocations' used 2160 bytes (requested 2160 bytes 162 times) [RecordingMicroAllocator] 'NodeAndRegistration struct allocation' used 1200 bytes (requested 1200 bytes 15 times) [RecordingMicroAllocator] 'Operator runtime data allocation' used 148 bytes (requested 148 bytes 13 times) PiperOrigin-RevId: 315958032 Change-Id: I226f6a01aa555970805388632559241a41ff8342
Documentation |
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TensorFlow is an end-to-end open source platform for machine learning. It has a comprehensive, flexible ecosystem of tools, libraries, and community resources that lets researchers push the state-of-the-art in ML and developers easily build and deploy ML-powered applications.
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