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Results 1 - 4 of 4 for it (0.27 sec)

  1. tensorflow/c/eager/c_api_unified_experimental.cc

    void TF_SetTracingImplementation(const char* name, TF_Status* s) {
      tsl::Set_TF_Status_from_Status(s, SetDefaultTracingEngine(name));
    }
    
    // Creates a new TensorFlow function, it is an execution context attached to a
    // given tracing context.
    TF_ExecutionContext* TF_CreateFunction(const char* fn_name, TF_Status* s) {
      return wrap(CreateTracingExecutionContext(fn_name, s));
    }
    
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Thu Feb 15 09:49:45 GMT 2024
    - 9K bytes
    - Viewed (0)
  2. tensorflow/c/experimental/gradients/array_grad_test.cc

      TF_RETURN_IF_ERROR(
          ops::IdentityN(ctx, inputs, absl::MakeSpan(temp_outputs), "IdentityN"));
      // Although, `ops::IdentityN` returns 2 tensors, the first tensor isn't needed
      // for computing gradient so we could safely drop it.
      outputs[0] = temp_outputs[1];
      temp_outputs[0]->Unref();
      return absl::OkStatus();
    }
    
    class CppGradients
        : public ::testing::TestWithParam<std::tuple<const char*, bool, bool>> {
     protected:
    C++
    - Registered: Tue Mar 26 12:39:09 GMT 2024
    - Last Modified: Wed Feb 28 13:53:47 GMT 2024
    - 5K bytes
    - Viewed (0)
  3. tensorflow/c/eager/gradients_test.cc

          "or NotDifferentiableGradientFunction.",
          s.message());
      ASSERT_EQ(nullptr, outputs[0]);
    }
    
    // TODO(b/164171226): Enable this test with tfrt after AddInputList is
    // supported. It is needed for IdentityN.
    #ifdef PLATFORM_GOOGLE
    INSTANTIATE_TEST_SUITE_P(
        UnifiedCAPI, CppGradients,
        ::testing::Combine(::testing::Values("graphdef", "mlir"),
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Thu Feb 15 09:49:45 GMT 2024
    - 7K bytes
    - Viewed (0)
  4. tensorflow/c/experimental/gradients/nn_grad_test.cc

      // Although, `ops::SparseSoftmaxCrossEntropyWithLogits` returns 2 tensors, the
      // second tensor isn't needed for computing gradient so we could safely drop
      // it.
      outputs[0] = loss;
      backprop->Unref();
      return absl::OkStatus();
    }
    
    Status BiasAddModel(AbstractContext* ctx,
                        absl::Span<AbstractTensorHandle* const> inputs,
    C++
    - Registered: Tue Mar 26 12:39:09 GMT 2024
    - Last Modified: Wed Feb 28 13:53:47 GMT 2024
    - 8.3K bytes
    - Viewed (0)
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