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Results 1 - 8 of 8 for graphdef (0.14 seconds)

  1. tensorflow/c/c_test_util.h

    // Returns a sorted vector of std::pair<function_name, gradient_func> from
    // graph_def.library().gradient()
    std::vector<std::pair<string, string>> GetGradDefs(
        const tensorflow::GraphDef& graph_def);
    
    // Returns a sorted vector of names contained in `grad_def`
    std::vector<string> GetFuncNames(const tensorflow::GraphDef& graph_def);
    
    class CSession {
     public:
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Thu Aug 09 01:06:53 GMT 2018
    - 6K bytes
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  2. tensorflow/c/eager/gradient_checker_test.cc

    INSTANTIATE_TEST_SUITE_P(
        UnifiedCAPI, GradientCheckerTest,
        ::testing::Combine(::testing::Values("graphdef"),
                           /*tfrt*/ ::testing::Values(false),
                           /*use_function*/ ::testing::Values(true, false)));
    #else
    INSTANTIATE_TEST_SUITE_P(
        UnifiedCAPI, GradientCheckerTest,
        ::testing::Combine(::testing::Values("graphdef"),
                           /*tfrt*/ ::testing::Values(false),
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Sat Oct 12 05:11:17 GMT 2024
    - 6.5K bytes
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  3. tensorflow/c/eager/gradients_test.cc

    INSTANTIATE_TEST_SUITE_P(
        UnifiedCAPI, CppGradients,
        ::testing::Combine(::testing::Values("graphdef", "mlir"),
                           /*tfrt*/ ::testing::Values(false),
                           /*executing_eagerly*/ ::testing::Values(true, false)));
    #else
    INSTANTIATE_TEST_SUITE_P(
        UnifiedCAPI, CppGradients,
        ::testing::Combine(::testing::Values("graphdef", "mlir"),
                           /*tfrt*/ ::testing::Values(false),
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Sat Oct 12 05:11:17 GMT 2024
    - 7K bytes
    - Click Count (0)
  4. .github/ISSUE_TEMPLATE/tflite-op-request.md

    **Standalone code to reproduce the issue** 
    Provide a reproducible test case that is the bare minimum necessary to generate
    the problem. If possible, please share a link to Colab/Jupyter/any notebook.
    
    Also, please include a link to a GraphDef or the model if possible.
    
    **Any other info / logs**
    
    Include any logs or source code that would be helpful to diagnose the problem.
    If including tracebacks, please include the full traceback. Large logs and files
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Wed Jun 15 03:35:58 GMT 2022
    - 879 bytes
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  5. tensorflow/c/c_api_internal.h

        TF_LOCKS_EXCLUDED(session->graph->mu, session->mu);
    
    std::string getTF_OutputDebugString(TF_Output node);
    
    // Set whether to propagate assigned device information when constructing a new
    // Graph from a GraphDef. By default assigned device information is not copied
    // and is re-computed by the runtime.
    inline void TF_ImportGraphDefOptionsSetPropagateDeviceSpec(
        TF_ImportGraphDefOptions* opts, unsigned char propagate_device_spec) {
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Wed Jan 07 04:56:09 GMT 2026
    - 7.5K bytes
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  6. SECURITY.md

    should be used with caution when working with untrusted models.
    
    ### Saved graphs and checkpoints
    
    When loading untrusted serialized computation graphs (in form of a `GraphDef`,
    `SavedModel`, or equivalent on-disk format), the set of computation primitives
    available to TensorFlow is powerful enough that you should assume that the
    TensorFlow process effectively executes arbitrary code.
    
    Created: Tue Apr 07 12:39:13 GMT 2026
    - Last Modified: Wed Oct 16 16:10:43 GMT 2024
    - 9.6K bytes
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  7. docs/fr/docs/tutorial/dependencies/sub-dependencies.md

    Ce ne sont que des fonctions qui ressemblent aux *fonctions de chemin d'accès*.
    
    Mais il est très puissant et vous permet de déclarer des « graphes » (arbres) de dépendances imbriquées aussi profondément que vous le souhaitez.
    
    /// tip | Astuce
    
    Tout cela peut ne pas sembler très utile avec ces exemples simples.
    
    Created: Sun Apr 05 07:19:11 GMT 2026
    - Last Modified: Sat Feb 14 08:12:41 GMT 2026
    - 4.2K bytes
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  8. docs/de/docs/tutorial/dependencies/sub-dependencies.md

    Einfach Funktionen, die genauso aussehen wie *Pfadoperation-Funktionen*.
    
    Dennoch ist es sehr mächtig und ermöglicht Ihnen die Deklaration beliebig tief verschachtelter Abhängigkeits-„Graphen“ (Bäume).
    
    /// tip | Tipp
    
    All dies scheint angesichts dieser einfachen Beispiele möglicherweise nicht so nützlich zu sein.
    
    Aber Sie werden in den Kapiteln über **Sicherheit** sehen, wie nützlich das ist.
    
    Created: Sun Apr 05 07:19:11 GMT 2026
    - Last Modified: Sat Feb 14 07:57:30 GMT 2026
    - 4.5K bytes
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