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Results 1 - 7 of 7 for GPUs (0.4 sec)

  1. WORKSPACE

    load(
        "@rules_ml_toolchain//third_party/gpus/cuda/hermetic:cuda_json_init_repository.bzl",
        "cuda_json_init_repository",
    )
    
    cuda_json_init_repository()
    
    load(
        "@cuda_redist_json//:distributions.bzl",
        "CUDA_REDISTRIBUTIONS",
        "CUDNN_REDISTRIBUTIONS",
    )
    load(
        "@rules_ml_toolchain//third_party/gpus/cuda/hermetic:cuda_redist_init_repositories.bzl",
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Fri Dec 26 23:20:26 UTC 2025
    - 5.1K bytes
    - Viewed (0)
  2. ci/official/envs/linux_x86_cuda

    TFCI_BAZEL_TARGET_SELECTING_CONFIG_PREFIX=linux_cuda
    TFCI_BUILD_PIP_PACKAGE_WHEEL_NAME_ARG="--repo_env=WHEEL_NAME=tensorflow"
    TFCI_DOCKER_ARGS="--gpus all"
    TFCI_LIB_SUFFIX="-gpu-linux-x86_64"
    # TODO: Set back to 610M once the wheel size is fixed.
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Tue Feb 18 22:52:46 UTC 2025
    - 1.1K bytes
    - Viewed (0)
  3. SECURITY.md

    ### Hardware attacks
    
    Physical GPUs or TPUs can also be the target of attacks. [Published
    research](https://scholar.google.com/scholar?q=gpu+side+channel) shows that it
    might be possible to use side channel attacks on the GPU to leak data from other
    running models or processes in the same system. GPUs can also have
    implementation bugs that might allow attackers to leave malicious code running
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Wed Oct 16 16:10:43 UTC 2024
    - 9.6K bytes
    - Viewed (0)
  4. configure.py

      Args:
        environ_cp: copy of the os.environ.
        var_name: string for name of environment variable, e.g. "TF_NEED_CUDA".
        query_item: string for feature related to the variable, e.g. "CUDA for
          Nvidia GPUs".
        enabled_by_default: boolean for default behavior.
        question: optional string for how to ask for user input.
        yes_reply: optional string for reply when feature is enabled.
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Wed Apr 30 15:18:54 UTC 2025
    - 48.3K bytes
    - Viewed (0)
  5. .bazelrc

    # 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.
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Fri Dec 26 23:20:26 UTC 2025
    - 56.8K bytes
    - Viewed (0)
  6. tensorflow/c/c_test_util.cc

      TF_SetAttrType(desc, "T", TF_INT32);
      // Set device to CPU since there is no version of split for int32 on GPU
      // TODO(iga): Convert all these helpers and tests to use floats because
      // they are usually available on GPUs. After doing this, remove TF_SetDevice
      // call in c_api_function_test.cc
      TF_SetDevice(desc, "/cpu:0");
      *op = TF_FinishOperation(desc, s);
      ASSERT_EQ(TF_OK, TF_GetCode(s)) << TF_Message(s);
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Sat Oct 04 05:55:32 UTC 2025
    - 17.8K bytes
    - Viewed (1)
  7. RELEASE.md

            on Ampere based GPUs.TensorFloat-32, or TF32 for short, is a math mode
            for NVIDIA Ampere based GPUs which causes certain float32 ops, such as
            matrix multiplications and convolutions, to run much faster on Ampere
            GPUs but with reduced precision. This reduced precision has not been
    Registered: Tue Dec 30 12:39:10 UTC 2025
    - Last Modified: Tue Oct 28 22:27:41 UTC 2025
    - 740.4K bytes
    - Viewed (3)
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