- 26 Nov, 2023 4 commits
-
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
- 20 Nov, 2023 4 commits
-
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
- 18 Nov, 2023 3 commits
-
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
- 17 Nov, 2023 5 commits
-
-
Umang Yadav authored
-
Zakor Gyula authored
-
Umang Yadav authored
Handles all 4 Fp8 dtypes listed here : https://onnx.ai/onnx/technical/float8.html Follows saturation/clipping logic from table there as well : https://onnx.ai/onnx/technical/float8.html#cast Only adding fp8e4m3fnuz in MIGraphX IR for now.
-
Umang Yadav authored
-
Umang Yadav authored
-
- 16 Nov, 2023 2 commits
-
-
Umang Yadav authored
-
Umang Yadav authored
-
- 15 Nov, 2023 3 commits
-
-
shivadbhavsar authored
Reworked the simplify_qdq pass to support: Per-axis quantization (ie. allow 1D scales and zero points) Allow broadcast and transpose ops between dq and quant_op
-
nives-vukovic authored
Since ONNX opset version 14, layout attribute has been introduced to LSTM operator which allows two predefined layouts for input and output shapes. Add corresponding reference, onnx, and verify tests.
-
Ted Themistokleous authored
Remove contiguous from simplify algebra passes for reshape op Remove contiguous from fuse_pointwise for reshape op
-
- 14 Nov, 2023 7 commits
-
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
- 13 Nov, 2023 2 commits
-
-
github-actions[bot] authored
-
Umang Yadav authored
-
- 10 Nov, 2023 4 commits
-
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
Umang Yadav authored
-
- 09 Nov, 2023 3 commits
-
-
Umang Yadav authored
-
Charlie Lin authored
-
Ahsan Saghir authored
Removes numpy dependency from test_gpu.py test and re-enables Python tests for Python 3.6.
-
- 08 Nov, 2023 3 commits
-
-
Zakor Gyula authored
The inaccuracy was caused by ONNX round requires nearest integer rounding for halway (0.5) cases. std::round rounds away from zero, thus giving wrong results with halfway cases. Replaced std::round with std::nearbyint which uses the correct rounding by default.
-
Charlie Lin authored
Fixes an issue that comes up for variable input slice with steps set manually in ONNX to default 1's.
-
Attila Dusnoki authored
-