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Expose packed: False, set log_peak_memory_stats: True, set compile: False #1872
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🔗 Helpful Links🧪 See artifacts and rendered test results at hud.pytorch.org/pr/pytorch/torchtune/1872
Note: Links to docs will display an error until the docs builds have been completed. ✅ No FailuresAs of commit b0b4b14 with merge base 3ca0d30 (): This comment was automatically generated by Dr. CI and updates every 15 minutes. |
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two nits: overall, big fan of this UX improvement
@@ -45,7 +45,9 @@ resume_from_checkpoint: False | |||
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# Dataset | |||
dataset: | |||
packed: False # Set to true for great speed ups |
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Huge nit: can we move this below the _component_
declaration?
That way it reads more as an option for the specific builder.
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Yeah, though like this first time.. But I followed original declaration from issue:
dataset:
packed=False # Set to true for great speed ups
Will be fixed
@@ -57,7 +58,7 @@ loss: | |||
_component_: torchtune.modules.loss.CEWithChunkedOutputLoss | |||
max_steps_per_epoch: null | |||
gradient_accumulation_steps: 1 | |||
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compile: False |
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Should we be explicit that this will torch.compile
the model and loss? compile
seems like a vague name
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agreed. I think we can add a comment, similar to packed
compile=False # pytorch compile, set to true for perf/memory improvement
wdyt?
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Add some comment there?
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Ok, will add
@SalmanMohammadi , do we support compile and packed in PPO? If not, maybe we should not add those to these configs. |
Compile... yes, kind of? It's going to be overhauled soon to properly support, it's very out-of-date, it doesn't even have hierarchical compilation. |
ok, so compile is NOT a no-op, and we SHOULD have it in the configs. However, packed does NOT work with PPO, and should NOT be added to ppo configs. Is that right? |
CORRECT |
@krammnic , we also have to check if compile/packed work for the knowledge distillation recipe. If not, we need to remove it from the configs. In short, i know for sure that these work for LORA and Full finetuning recipes/configs. |
@krammnic packed should also be removed from all the DPO configs, please. |
Sure, will test then |
Done |
Added, comment to compile: False |
We will need to update recipes to log memory. We are getting the error
So where log_peak_memory_stats, we need to add "if device = 'cuda'" and add info "log.info("log_peak_memory_stats was se to True, however, training does not use cuda. Setting log_peak_memory_stats=False." cc: @ebsmothers |
Sure, will be done! |
edit: lets actually do this check in the init of the recipe. In the future, we can move all of these checks to some function like "config_parse". We already have multiple of these checks in the init |
I believe we're already doing this in most recipes when the stats are logged - the DPO recipe hasn't been updated. |
The DPO recipes uses: if self._log_peak_memory_stats:
log_dict.update(
training.get_memory_stats(device=self._device)
) it should be if self._device.type == "cuda" and self._log_peak_memory_stats:
log_dict.update(
training.get_memory_stats(device=self._device)
) |
Add required check:
|
recipes/qat_distributed.py
Outdated
@@ -127,6 +127,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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Thoughts on whether we actually need this? I realise we kind of fail "silently" at the moment by just not logging if we aren't running on CUDA
torchtune/recipes/lora_finetune_single_device.py
Lines 716 to 719 in 17ba37d
if ( | |
self._device.type == "cuda" | |
and self._log_peak_memory_stats | |
): |
As-is we're now doing duplicating this check - once in in the init, and also every time we log the memory stats (in model setup, and during training) which isn't super clean. Personally I'd rather just make the check in the relevant logging util - but don't have to block on this.
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let me get back to you on this @krammnic . Thanks for making all of these changes! :)
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I'm not really see the problem in 2 partially duplicating checks. The point is, that if we have such logic in train:
log_dict = {
"loss": loss_to_log,
"lr": self._optimizer.param_groups[0]["lr"],
"tokens_per_second_per_gpu": num_tokens / time_per_step,
}
if self._log_peak_memory_stats:
log_dict.update(
training.get_memory_stats(device=self._device)
)
self._metric_logger.log_dict(
log_dict,
step=self.global_step,
)
We can't do anything better, can we? Check in __init__
is about cuda and logging(once). Check in train probably should not be about "cuda"(there is no use case) and not about logging. I'm not sure if this should be in _metric_logger
either
Fixed some nits. Probably should be fine |
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# Training env | ||
device: cuda | ||
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# Memory management | ||
enable_activation_checkpointing: True | ||
custom_sharded_layers: ['tok_embeddings', 'output'] | ||
compile: False # set it to True for better memory and performance | ||
compile=False # pytorch compile, set to true for perf/memory improvement# set it to True for better memory and performance |
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oops
@@ -61,7 +62,7 @@ loss: | |||
max_steps_per_epoch: null | |||
gradient_accumulation_steps: 1 | |||
optimizer_in_bwd: True | |||
compile: False # set it to True for better memory and performance | |||
compile=False # pytorch compile, set to true for perf/memory improvement# set it to True for better memory and performance |
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do you mind quickly double checking? Also, if you are using a script, maybe for a sanity check make just that compile/packed dont appear twice?
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this should be a colon? compile: False
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Yes, obviously. Fixed
recipes/full_finetune_distributed.py
Outdated
@@ -121,6 +121,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": | |||
log.info( | |||
"log_peak_memory_stats was se to True, however, training does not use cuda. Setting log_peak_memory_stats=False." |
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i think that there are typos. Thats my fault, i guess you just copied/pasted what i wrote earlier.
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Yes))) I didn't double check because it pretty minor
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Fixed typos
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also, it should be self._device.type != "cuda" not "=="
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@krammnic sorry, just realized that the condition is wrong
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Good catch! Yeah need to be fixed
@@ -71,7 +72,7 @@ fsdp: | |||
epochs: 1 | |||
max_steps_per_epoch: null | |||
gradient_accumulation_steps: 16 | |||
compile: False # set it to True for better memory and performance | |||
compile=False # pytorch compile, set to true for perf/memory improvement# set it to True for better memory and performance |
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other configs still need fixing :(
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Fixed
Fixed all typos |
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lgtm! thanks for the pr!
recipes/configs/llama3/70B_full.yaml
Outdated
@@ -99,7 +100,7 @@ device: cuda | |||
enable_activation_checkpointing: True | |||
custom_sharded_layers: ['tok_embeddings', 'output'] | |||
fsdp_cpu_offload: True | |||
compile: False # set it to True for better memory and performance | |||
compile=False # pytorch compile, set to true for perf/memory improvement# set it to True for better memory and performance |
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needs fix
recipes/configs/llama3/70B_lora.yaml
Outdated
@@ -89,15 +90,15 @@ loss: | |||
epochs: 1 | |||
max_steps_per_epoch: null | |||
gradient_accumulation_steps: 1 | |||
compile: False # set it to True for better memory and performance | |||
compile=False # pytorch compile, set to true for perf/memory improvement# set it to True for better memory and performance |
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needs fix
@@ -88,15 +89,15 @@ loss: | |||
epochs: 1 | |||
max_steps_per_epoch: null | |||
gradient_accumulation_steps: 1 | |||
compile: False # set it to True for better memory and performance | |||
compile=False # pytorch compile, set to true for perf/memory improvement# set it to True for better memory and performance |
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i think that the easiest way is to ctrol+f and search for "compile=". There are >15 of such cases.
@@ -119,6 +119,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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if self._log_peak_memory_stats and self._device.type == "cuda": | |
if self._log_peak_memory_stats and self._device.type != "cuda": |
recipes/qat_distributed.py
Outdated
@@ -127,6 +127,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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if self._log_peak_memory_stats and self._device.type == "cuda": | |
if self._log_peak_memory_stats and self._device.type != "cuda": |
recipes/lora_dpo_distributed.py
Outdated
@@ -130,6 +130,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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if self._log_peak_memory_stats and self._device.type == "cuda": | |
if self._log_peak_memory_stats and self._device.type != "cuda": |
@@ -120,6 +120,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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if self._log_peak_memory_stats and self._device.type == "cuda": | |
if self._log_peak_memory_stats and self._device.type != "cuda": |
@@ -116,6 +116,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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if self._log_peak_memory_stats and self._device.type == "cuda": | |
if self._log_peak_memory_stats and self._device.type != "cuda": |
recipes/full_finetune_distributed.py
Outdated
@@ -121,6 +121,12 @@ def __init__(self, cfg: DictConfig) -> None: | |||
self._log_every_n_steps = cfg.get("log_every_n_steps", 1) | |||
self._log_peak_memory_stats = cfg.get("log_peak_memory_stats", False) | |||
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if self._log_peak_memory_stats and self._device.type == "cuda": |
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if self._log_peak_memory_stats and self._device.type == "cuda": | |
if self._log_peak_memory_stats and self._device.type != "cuda": |
@@ -72,14 +73,15 @@ loss: | |||
epochs: 1 | |||
max_steps_per_epoch: null | |||
gradient_accumulation_steps: 32 | |||
compile: False |
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i guess we didnt add the comment in every config?
Context
What is the purpose of this PR? Is it to
Please link to any issues this PR addresses.
Changelog
What are the changes made in this PR?
Test plan
Please make sure to do each of the following if applicable to your PR. If you're unsure about any one of these just ask and we will happily help. We also have a contributing page for some guidance on contributing.
pre-commit install
)pytest tests
pytest tests -m integration_test
UX
If your function changed a public API, please add a dummy example of what the user experience will look like when calling it.
Here is a docstring example
and a tutorial example