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Results 1 - 10 of 14 for Howard (0.2 sec)

  1. tensorflow/c/experimental/gradients/nn_grad_test.cc

          ASSERT_EQ(errors::OK, status_.code()) << status_.message();
          immediate_execution_ctx_.reset(ctx_raw);
        }
    
        // Computing numerical gradients with TensorFloat-32 is numerically
        // unstable. Some forward pass tests also fail with TensorFloat-32 due to
        // low tolerances
        enable_tensor_float_32_execution(false);
      }
    
      AbstractContextPtr immediate_execution_ctx_;
      GradientRegistry registry_;
      Status status_;
    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)
  2. tensorflow/c/c_api_test.cc

        //   |      dz|          |
        //   |        |          |
        //   |     Const_3       |
        //   |                   |
        //   |        ^          |
        //   |       z|          |     // MatMul Forward Graph
        //   |        |          |
        //   |      MatMul       |
        //   |     /       \     |
        //   |    ^         ^    |
        //   |    |         |    |
        //   |---x|        y|----|
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Mon Apr 15 03:35:10 GMT 2024
    - 96.9K bytes
    - Viewed (3)
  3. tensorflow/c/eager/tape.h

        forward_grads.resize(output_tensors.size());
        TF_RETURN_IF_ERROR(ForwardpropFromTape(
            op_type, output_tensors, backward_function_getter,
            backward_function_deleter, in_grads, absl::MakeSpan(forward_grads)));
      } else {
        TF_RETURN_IF_ERROR(
            (*forward_function)(in_grads, &forward_grads, use_batch_));
      }
      for (int i = 0; i < forward_grads.size(); ++i) {
        if (forward_grads[i] != nullptr) {
    C
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Tue Apr 02 12:40:29 GMT 2024
    - 47.2K bytes
    - Viewed (1)
  4. tensorflow/c/experimental/gradients/grad_test_helper.cc

          ASSERT_NEAR(manuals[j], danalytical[j], abs_error);
        }
      }
    
      TF_DeleteTensor(analytical_tensor);
      delete[] danalytical;
    }
    
    Model BuildGradModel(Model forward, GradientRegistry registry) {
      return [forward_model = std::move(forward),
              grad_registry = std::move(registry)](
                 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
    - 5K bytes
    - Viewed (0)
  5. tensorflow/c/experimental/gradients/nn_grad.cc

    namespace gradients {
    namespace {
    
    class ReluGradientFunction : public GradientFunction {
     public:
      explicit ReluGradientFunction(vector<AbstractTensorHandle*> f_outputs)
          : forward_outputs_(f_outputs) {
        for (auto output : forward_outputs_) {
          if (output) {
            output->Ref();
          }
        }
      }
    
      Status Compute(AbstractContext* ctx,
                     absl::Span<AbstractTensorHandle* const> grad_outputs,
    C++
    - Registered: Tue Mar 26 12:39:09 GMT 2024
    - Last Modified: Wed Feb 28 13:53:47 GMT 2024
    - 5.7K bytes
    - Viewed (0)
  6. tensorflow/c/eager/gradients.cc

                 const char* raw_device_name, ForwardOperation* forward_op_) {
      forward_op_->op_name = op;
      forward_op_->attrs.Reset(op);
      return op_->Reset(op, raw_device_name);
    }
    Status AddInput(AbstractOperation* op_, AbstractTensorHandle* input,
                    ForwardOperation* forward_op_) {
      TF_RETURN_IF_ERROR(op_->AddInput(input));
      forward_op_->inputs.push_back(input);
      return absl::OkStatus();
    }
    C++
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Thu Feb 15 09:49:45 GMT 2024
    - 19.3K bytes
    - Viewed (0)
  7. tensorflow/c/experimental/gradients/array_grad_test.cc

          ASSERT_EQ(errors::OK, status_.code()) << status_.message();
          immediate_execution_ctx_.reset(ctx_raw);
        }
    
        // Computing numerical gradients with TensorFloat-32 is numerically
        // unstable. Some forward pass tests also fail with TensorFloat-32 due to
        // low tolerances
        enable_tensor_float_32_execution(false);
      }
    
      AbstractContextPtr immediate_execution_ctx_;
      GradientRegistry registry_;
      Status status_;
    C++
    - Registered: Tue Mar 26 12:39:09 GMT 2024
    - Last Modified: Wed Feb 28 13:53:47 GMT 2024
    - 5K bytes
    - Viewed (0)
  8. .bazelrc

    # This is the same as the official TensorFlow builds.
    # See https://developer.nvidia.com/cuda-gpus#compute
    # `compute_XY` enables PTX embedding in addition to SASS. PTX
    # is forward compatible beyond the current compute capability major
    # release while SASS is only forward compatible inside the current
    # major release. Example: sm_80 kernels can run on sm_89 GPUs but
    # not on sm_90 GPUs. compute_80 kernels though can also run on sm_90 GPUs.
    Plain Text
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Wed Apr 24 20:50:35 GMT 2024
    - 52.6K bytes
    - Viewed (2)
  9. CONTRIBUTING.md

        your response for more than 2 weeks.
    
    **4. Approved**
    
    -   Once the PR is approved, it gets `kokoro:force-run` label applied and it
        initiates CI/CD tests.
    -   We can't move forward if these tests fail.
    -   In such situations, we may request you to make further changes to your PR
        for the tests to pass.
    -   Once the tests pass, we now bring all the code into the internal code base,
    Plain Text
    - Registered: Tue Apr 30 12:39:09 GMT 2024
    - Last Modified: Thu Mar 21 11:45:51 GMT 2024
    - 15.6K bytes
    - Viewed (0)
  10. tensorflow/c/experimental/gradients/math_grad.cc

                                        vector<AbstractTensorHandle*> f_outputs)
          : forward_inputs_(f_inputs), forward_outputs_(f_outputs) {
        for (auto input : forward_inputs_) {
          if (input) {
            input->Ref();
          }
        }
        for (auto output : forward_outputs_) {
          if (output) {
            output->Ref();
          }
        }
      }
    
    C++
    - Registered: Tue Mar 26 12:39:09 GMT 2024
    - Last Modified: Wed Feb 28 13:53:47 GMT 2024
    - 15.2K bytes
    - Viewed (0)
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