Files
tinygrad/examples/mlperf
chenyu 817746b30e add contiguous to EmbeddingBert output (#9829)
for some reason with random dropout it creates different ast on each device. And search embedding is slow. This workaround saved 6 minutes setup time on mi300x (25->19) and resulted in similar speed
2025-04-10 04:31:19 -04:00
..
2024-09-10 04:37:28 -04:00
2025-03-21 13:36:41 -04:00
2023-05-10 16:30:49 -07:00

Each model should be a clean single file.
They are imported from the top level `models` directory

It should be capable of loading weights from the reference imp.

We will focus on these 5 models:

# Resnet50-v1.5 (classic) -- 8.2 GOPS/input
# Retinanet
# 3D UNET (upconvs)
# RNNT
# BERT-large (transformer)

They are used in both the training and inference benchmark:
https://mlcommons.org/en/training-normal-21/
https://mlcommons.org/en/inference-edge-30/
And we will submit to both.

NOTE: we are Edge since we don't have ECC RAM