Commit Graph

248 Commits

Author SHA1 Message Date
chenyu
4ab3391e6f set -o pipefail for mlperf run_and_time (#10577)
also run the 5.1 script in ci cron job
2025-05-30 16:36:44 -04:00
chenyu
baf482d314 copy mlperf stuff to 5.1 (#10576)
5.0 is finalized, new changes go to 5.1
2025-05-30 16:12:39 -04:00
George Hotz
b3b43a82c4 remove Tensor.no_grad, it's meaningless now [pr] (#10556) 2025-05-28 22:20:02 -07:00
chenyu
74cf5dbd9e mlperf system updates (#10550)
standardized processor and accelerator names
2025-05-28 16:15:46 -04:00
chenyu
51dc7eedb0 correct use AM for resnet run_and_time (#10524) 2025-05-26 15:33:11 -04:00
chenyu
c1919ad55f use AM for resnet run_and_time (#10523) 2025-05-26 14:50:49 -04:00
chenyu
2d50efb92b set -e on mlperf run_and_time scripts (#10519) 2025-05-26 09:22:30 -04:00
chenyu
dc6309242d WallTimeEvent for mlperf ci (#10506) 2025-05-24 10:56:03 -04:00
chenyu
67d1364106 update LOGMLPERF in red resnet run_and_time (#10416) 2025-05-19 13:23:33 -04:00
chenyu
485e80da69 run_and_time for resnet ci (#10405) 2025-05-18 23:39:57 -04:00
wozeparrot
1ed04f993b move benchmark stat tracking to influxdb (#10185) 2025-05-15 16:14:56 -07:00
George Hotz
568d6d96e7 small changes from new multi [pr] (#10318) 2025-05-14 20:50:59 -07:00
George Hotz
bfc30fa6ea hotfix: typo in shm_name 2025-05-14 19:34:52 -07:00
George Hotz
2bc54b3e22 manually handle OSX 2025-05-14 19:17:51 -07:00
George Hotz
ab460486d7 Revert "resnet dataloader osx (#10316)"
This reverts commit aef336930a.
2025-05-14 19:15:07 -07:00
George Hotz
aef336930a resnet dataloader osx (#10316)
* mlperf dataloader on mac

* resnet dataloader [pr]

* simple should work
2025-05-14 18:31:26 -07:00
chenyu
610ee79b22 cherry pick mlperf5.0 branch to master (#10089) 2025-04-28 15:36:56 -04:00
chenyu
74c6cf8be3 lint mlperf model_train (#10038) 2025-04-24 16:19:44 -04:00
chenyu
a25abf55e3 retinanet only call postprocess_detections with RUNMLPERF (#10017)
during setup only need to compile `_eval_step().numpy()`
2025-04-23 20:45:38 -04:00
chenyu
65faa1d94b explicit device in mlperf scripts (#10015) 2025-04-23 17:11:52 -04:00
chenyu
a3f938dbee remove retinanet INITMLPERF from beam script (#10011)
it only controls logging, loading real data or not is solely controlled by RUNMLPERF
2025-04-23 14:32:54 -04:00
Francis Lata
5542aeb0e4 RetinaNet MLPerf flag updates (#10009)
* add RUNMLPERF and update INITMLPERF usage

* update scripts to use RUNMLPERF
2025-04-23 13:00:34 -04:00
George Hotz
de0504276b pop 0 is slow [pr] (#10007) 2025-04-23 17:00:59 +01:00
chenyu
d3a8d5c128 print postprocess_detections time in retinanet eval (#10005)
`BS=96 BASEDIR="/raid/datasets/openimages" MODEL=retinanet python examples/mlperf/model_eval.py`

```
...
loaded dataset             @  8.64s
loaded initial data        @ 12.57s
******  619.97 ms to enqueue, 46042.13 ms to realize ( 116.22 ms fetching, 45399.58 ms postprocess_detections).     0.09 examples/sec.  0.83 TFLOPS  @ 59.23s
******  147.49 ms to enqueue, 37362.16 ms to realize ( 146.96 ms fetching, 36618.84 ms postprocess_detections).     0.11 examples/sec.  1.03 TFLOPS  @ 96.74s
******  152.85 ms to enqueue, 37244.08 ms to realize ( 120.67 ms fetching, 36235.19 ms postprocess_detections).     0.11 examples/sec.  1.04 TFLOPS  @ 134.14s
******  146.39 ms to enqueue, 37279.85 ms to realize (  65.07 ms fetching, 36233.56 ms postprocess_detections).     0.11 examples/sec.  1.04 TFLOPS  @ 171.56s
******  152.41 ms to enqueue, 37264.04 ms to realize ( 127.08 ms fetching, 36196.10 ms postprocess_detections).     0.11 examples/sec.  1.04 TFLOPS  @ 208.98s
******  151.29 ms to enqueue, 36868.08 ms to realize ( 142.73 ms fetching, 36153.07 ms postprocess_detections).     0.11 examples/sec.  1.05 TFLOPS  @ 246.00s
******  136.41 ms to enqueue, 37325.04 ms to realize (  90.29 ms fetching, 36573.38 ms postprocess_detections).     0.11 examples/sec.  1.04 TFLOPS  @ 283.46s
```
2025-04-23 11:39:56 -04:00
chenyu
c39128133c retinanet green scripts (#9996)
also removed realize in data_get and used empty for fake data. slightly bigger lr. https://wandb.ai/chenyuxyz/MLPerf-RetinaNet/runs/8skid0e8?nw=nwuserchenyuxyz
2025-04-23 08:28:03 -04:00
chenyu
fb89d9a584 retinanet eval combine output on GPUS[0] (#9966)
eval 35 sec -> 20 sec. it was spending 13 seconds assembling output tensor on CPU backend. GPUS[0] seems to have enough memory, otherwise we can lower EVAL_BS
2025-04-22 07:43:51 -04:00
chenyu
5294c32279 dev scripts for retinanet (#9968)
also BASE_DIR -> BASEDIR for consistency, and move wandb up a bit for more accurate timing
2025-04-21 17:54:56 -04:00
Francis Lata
defa1e77f6 get the proper dataset count (#9962) 2025-04-21 12:11:37 -04:00
Francis Lata
d7e247f329 RetinaNet INITMLPERF support (#9950)
* fixes to make fake data work

* fix eval beam

* fix merge issue
2025-04-21 10:32:05 -04:00
Francis Lata
ea4cb2c715 small cleanups (#9947) 2025-04-20 20:33:20 -04:00
chenyu
3fdba48fc7 update bert green and README (#9934)
submission candidate
2025-04-18 21:21:28 -04:00
chenyu
617b45748f fuse embedding for bert on red (#9925)
also updated BEAM param and use AMD driver for actual run. 535ms step
2025-04-18 07:20:25 -04:00
chenyu
e2ed673c94 FUSE_ARANGE_UINT to not fuse uint (#9915)
hack to bypass rand, can FUSE_ARANGE on green for 6ms per step
2025-04-16 18:49:38 -04:00
chenyu
e8024c8281 faster bert global_norm (#9901)
tinyamd 2% faster.  also updated beam params that's 2-3% faster.

update mlperf doc and steps too
2025-04-15 18:24:44 -04:00
Francis Lata
31483050c0 add eval_freq flag (#9894) 2025-04-15 06:42:40 -04:00
chenyu
43d3a75d6c increase bert max train_steps (#9883) 2025-04-14 08:53:44 -04:00
chenyu
e2a40fb523 update bert mi300x script (#9872)
2 runs failed to converge in 10 back to back runs, increase total train steps and some beam params (2% faster step)
2025-04-13 10:07:36 -04:00
Francis Lata
2793cca9a6 RetinaNet MLPerf (#8385)
* add support for a custom BASEDIR for openimages download

* make export step faster

* add focal loss

* update model_eval with new dataloader

* generate_anchors in tinygrad

* update initializers for model

* small cleanup

* revert isin enhancements

* recursively go through backbone layers to freeze them

* add optimizer

* minor cleanup

* start dataloader work with input images

* add first transform for train set

* reuse existing prepare_target

* continue with dataloader implementation

* add dataloader

* separate out KiTS19 dataset test cases

* create mock data samples for test

* add dataloader + test

* cleanup dataloader test and revert shm path

* trim dataloader related code needed from ref

* got dataloader with normalize working

* update image to be float32

* add back normalization and negate it in test

* clean up reference dataset implementation + ruff changes

* add validation set test

* add proper training loop over the training dataset

* add LambdaLR support

* add LR scheduler and the start of training step

* get forward call to model work and setup multi-GPU

* already passed device

* return matches from dataloader

* hotfix for dataloader typo causing some hang

* start some work on classification loss

* update focal loss to support masking

* add missing test and cleanup focal loss

* cleanup unit tests

* remove masking support for sigmoid_focal_loss

* make ClassificationHead loss work

* cleanups + fix dataloader tests

* remove sigmoid when computing loss

* make anchors use Tensors

* simplify anchors batching

* revert anchors to use np

* implement regression loss

* fix regression loss

* cleanup losses

* move BoxCoder to MLPerf helpers

* revert helper changes

* fixes after helper refactor cleanup

* add tests for l1_loss

* start re-enabling training step

* minor cleanup

* add pycocotools to testing dependencies

* make training work

* adjust regression loss to mask after L1 loss is calculated

* reduce img and lbl sizes by half for KiTS19 dataset tests

* Revert "reduce img and lbl sizes by half for KiTS19 dataset tests"

This reverts commit d115b0c664.

* temporarily disable openimages dataset tests to debug CI

* enable openimages dataset test and create samples once

* temporarily disable openimages validation set test

* reenable test and add some debugging to the test

* add boto3 testing dependencies

* add pandas to testing dependencies

* This reverts commit 467704fec6.

* reenable test

* move sample creation to setup

* realize boxcoder's encoding

* add wandb

* fix wandb resuming feature

* move anchors as part of dataloader

* fix dtype for anchor inside dataloader and fix horizontal flip transformation

* add support for BENCHMARK

* set seed

* debug dataset test failuire

* Revert "debug dataset test failuire"

This reverts commit 1b2f9d7f50.

* fix dataloader script

* do not realize when sharding model weights

* setup openimages samples differently

* create the necessary samples per test case

* enable lr scheduler and fix benchmark timing

* add jit to the training loop

* add checkpointing and training resume capabilities

* refactor on training loop and start the work on val looop

* add debug logging for dataloader test

* debug test

* assert boxes again

* update validation dataloader and more cleanups

* fix validation test case

* add multi device support to retinanet eval

* fix issue with realized on dataloader

* remove optional disk tensors in dataloader

* remove verbose debugging on datasets test

* put back parallel testing and remove img_ids Tensor from dataloader

* cleanup train and validation dataloader

* return validation targets in dataloader

* cleanup boxes and labels in dataloader

* fix img_ids repeating its values

* remove unnecessary targets from validation dataloader

* add validation loop to training script

* adjust LR to be the ratio of the batch size

* minor cleanups

* remove frozen layers from optimizer's params

* hyperparameter adjustments and cleanups

* model init, hyperparam, and data preprocessing updates

* no need to return loaded keys for resnet

* fix train script

* update loss calculation for regresionhead and some cleanups

* add JIT reset support

* add nan check during training

* Revert "add nan check during training"

This reverts commit ddf1f0d5dd.

* Revert "Revert "add nan check during training""

This reverts commit b7b2943197.

* some typing cleanups

* update seeding on dataloader and the start of training script

* undo changse

* undo more changes

* more typing fixes

* minor cleanups

* update dataloader seed

* hotfix: log metric and move target metric check outside of CKPT

* check for CKPT when target metric is reached before saving

* add TRAIN_BEAM and EVAL_BEAM

* minor cleanup

* update hyperparams and add support for EVAL_BS

* add green coloring to metric reached statement

* initial work to support f16

* update model initializers to be monkeypatched

* update layers to support float32 weight loading + float16 training

* don't return loss that's scaled

* run eval on benchmark beam

* move BEAM to their respective steps

* update layers to be compatible with fp16

* end BENCHMARK after first eval

* cleanups and adjust learning rate for fp16

* remove duplicated files from test

* revert losses changes

* Revert "revert losses changes"

This reverts commit aebccf93ac.

* go back to old LR

* cast batchnorm to float32

* set new loss scaler default value for float16

* remove LambdaLRScheduler

* remove runner and use dataloader on eval

* fix retinanet eval with new dataloader

* remove unused import

* revert lr_scheduler updates

* use BS=96 with new learning rate

* rename module initializers

* more cleanups on training loop

* remove contig from optim.step

* simplify sum when computing loss
2025-04-12 22:11:51 -04:00
chenyu
4aab16ca6a bert script cleanup and assert nan loss (#9851) 2025-04-11 05:41:49 -04:00
chenyu
995d20673a increase bert TRAIN_STEPS for mi300x (#9833)
got a few non converged ones so try to increase steps. we need >= 90% runs to converge
2025-04-10 08:25:09 -04:00
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
chenyu
a0b72f066a don't free intermediate for bert mi300x (#9824) 2025-04-10 01:48:34 -04:00
chenyu
2e1002e179 EVAL_BS=96 and BEAM=3 for bert green (#9819)
19m -> 13m setup and same end to end time
2025-04-09 22:37:27 -04:00
chenyu
8fe83385ec add system json for mi300x mlperf (#9786)
* add system json for mi300x mlperf

```
python3 -m mlperf_logging.system_desc_checker examples/mlperf/training_submission_v5.0/tinycorp/systems/tinybox_8xMI300X.json training 4.1.0
INFO -   System description checker passed for tinybox 8xMI300X
```

also removed the rocm from tinybox_red since we are not using it

* update mlperf-logging version
2025-04-08 06:36:44 -04:00
chenyu
4cc7422769 use AM driver in bert mlperf (#9775)
we should commit to use AM. it's 7ms slower python time now
2025-04-07 23:40:27 -04:00
Francis Lata
f8fe15e64e move BoxCoder to mlperf helpers (#9773) 2025-04-07 20:27:06 -04:00
chenyu
7c4a739fe4 full script for bert mi300x (#9772) 2025-04-07 11:41:31 -04:00
chenyu
3069ebfad1 use BERT_LAYERS=2 in bert init (#9769)
save 5 minut scheduling in setup so we can fit more search
2025-04-07 07:46:37 -04:00
Francis Lata
71b8890dd6 use validation dataloader inside retinanet eval (#9747) 2025-04-05 16:46:55 -04:00
chenyu
5a04f4d4ba revert bert hparams for green and red (#9744)
did more runs and it's not really better and not worth the change. only useful for BS=1024
2025-04-05 07:38:01 -04:00