The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.
TensorFlow 2.20 GPU wheel for linux_aarch64 (CUDA 12.8 / cuDNN 9.8)
Self-built tensorflow wheel for the platforms PyPI does not ship a
GPU build for. Produced by
scripts/build_tf_gpu_aarch64.sh
in the LPWWD pipeline repo on an NVIDIA Spark / GB10 host.
Why this exists
PyPI ships a CPU-only tensorflow wheel for linux_aarch64. There is no
pip-installable GPU TensorFlow on this platform/Python combo, so to get
GPU acceleration without Docker the wheel has to be built from source.
A cold from-source build is 2–4 h and ~50–80 GB of bazel artifacts; this
repo lets every other aarch64 host skip that.
Contents
| File | Size | sha256 |
|---|---|---|
tensorflow-2.20.0.dev0+selfbuilt-cp312-cp312-linux_aarch64.whl |
~495 MiB | 6c63ce87206ac1485b5858a100f098674943098da946837b77d8d6c07a7ec35b |
tensorflow-2.20.0.dev0+selfbuilt-cp312-cp312-linux_aarch64.whl.sha256 |
— | sidecar |
Build configuration
| Setting | Value |
|---|---|
| TensorFlow | v2.20.0 |
| Python | 3.12 (cp312) |
| Platform tag | linux_aarch64 (ARM 64-bit) |
| CUDA | 12.8 (hermetic) |
| cuDNN | 9.8 (hermetic) |
| Compute capabilities | 9.0 (Hopper) + 12.0 (Blackwell / GB10 sm_120) |
| Device compiler | nvcc |
| Host compiler | clang-17 (via --config=nvcc_clang) |
| Bazel | 7.4.1 |
| Build host | NVIDIA Spark (GB10, aarch64, 20 cores, 121.7 GiB unified memory) |
This wheel will run on any linux_aarch64 host with a CUDA-12.x driver
and a GPU of compute capability 9.0 or 12.0 (e.g. H100/H200/Hopper and
Blackwell/GB10). Other compute capabilities are not embedded — if your
device has e.g. sm_80 you need a rebuild.
Install
pip download \
--no-deps \
--dest . \
"https://huggingface.co/datasets/infineon/tensorflow-gpu/resolve/main/tensorflow-2.20.0.dev0+selfbuilt-cp312-cp312-linux_aarch64.whl"
sha256sum -c <(echo "6c63ce87206ac1485b5858a100f098674943098da946837b77d8d6c07a7ec35b tensorflow-2.20.0.dev0+selfbuilt-cp312-cp312-linux_aarch64.whl")
pip install --upgrade "./tensorflow-2.20.0.dev0+selfbuilt-cp312-cp312-linux_aarch64.whl"
Or with huggingface_hub:
from huggingface_hub import hf_hub_download
whl = hf_hub_download(
repo_id="infineon/tensorflow-gpu",
repo_type="dataset",
filename="tensorflow-2.20.0.dev0+selfbuilt-cp312-cp312-linux_aarch64.whl",
)
Then verify the GPU is visible:
import tensorflow as tf
print(tf.__version__, tf.config.list_physical_devices("GPU"))
Compatibility matrix
| Host arch | CUDA driver | GPU SM | Status |
|---|---|---|---|
linux_aarch64 |
12.8+ | sm_90 (Hopper) |
OK |
linux_aarch64 |
12.8+ | sm_120 (Blackwell / GB10) |
OK |
linux_aarch64 |
12.8+ | other SM | rebuild required |
linux_x86_64 |
— | — | wrong arch; use upstream PyPI |
macOS / Windows |
— | — | not supported |
Provenance
Built from the upstream tensorflow/tensorflow repo at tag v2.20.0
(no patches) using
scripts/build_tf_gpu_aarch64.sh.
The build script pins all toolchain versions (Bazel, CUDA, cuDNN, clang)
and is the single source of truth — re-running it on a fresh aarch64
host with TF_VERSION=v2.20.0 reproduces this wheel bit-identically
modulo timestamps.
License
TensorFlow itself is Apache-2.0. This dataset card is also Apache-2.0.
- Downloads last month
- 17