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train.py
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109 lines (86 loc) · 4.21 KB
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import asyncio
from sglang.srt.constants import GPU_MEMORY_TYPE_CUDA_GRAPH, GPU_MEMORY_TYPE_KV_CACHE, GPU_MEMORY_TYPE_WEIGHTS
from miles.ray.placement_group import create_placement_groups, create_rollout_manager, create_training_models
from miles.utils.arguments import parse_args
from miles.utils.async_utils import eager_create_task
from miles.utils.logging_utils import configure_logger
from miles.utils.misc import should_run_periodic_action
from miles.utils.tracking_utils import init_tracking
async def train(args):
configure_logger()
# allocate the GPUs
pgs = create_placement_groups(args)
init_tracking(args)
# create the rollout manager, with sglang engines inside.
# need to initialize rollout manager first to calculate num_rollout
rollout_manager, num_rollout_per_epoch = create_rollout_manager(args, pgs["rollout"])
# create the actor and critic models
actor_model, critic_model = await create_training_models(args, pgs, rollout_manager)
if args.offload_rollout:
await rollout_manager.onload_weights.remote()
# always update weight first so that sglang has the loaded weights from training.
await actor_model.update_weights()
if args.check_weight_update_equal:
await rollout_manager.check_weights.remote(action="compare")
if args.offload_rollout:
await rollout_manager.onload_kv.remote()
# special case for eval-only
if args.num_rollout == 0 and args.eval_interval is not None:
await rollout_manager.eval.remote(rollout_id=0)
async def offload_train():
if args.offload_train:
if args.use_critic:
await critic_model.offload()
if rollout_id >= args.num_critic_only_steps:
await actor_model.offload()
else:
await actor_model.offload()
else:
await actor_model.clear_memory()
async def save(rollout_id):
if (not args.use_critic) or (rollout_id >= args.num_critic_only_steps):
await actor_model.save_model(
rollout_id,
force_sync=rollout_id == args.num_rollout - 1,
)
if args.use_critic:
await critic_model.save_model(
rollout_id,
force_sync=rollout_id == args.num_rollout - 1,
)
if args.rollout_global_dataset:
await rollout_manager.save.remote(rollout_id)
# train loop.
# note that for async training, one can change the position of the sync operation(ray.get).
for rollout_id in range(args.start_rollout_id, args.num_rollout):
if args.eval_interval is not None and rollout_id == 0 and not args.skip_eval_before_train:
await rollout_manager.eval.remote(rollout_id)
rollout_data_ref = await rollout_manager.generate.remote(rollout_id)
if args.offload_rollout:
offload_tags = [GPU_MEMORY_TYPE_CUDA_GRAPH]
if "kv_cache" in args.offload_rollout_level:
offload_tags.append(GPU_MEMORY_TYPE_KV_CACHE)
if "weight" in args.offload_rollout_level:
offload_tags.append(GPU_MEMORY_TYPE_WEIGHTS)
await rollout_manager.offload.remote(tags=offload_tags)
if args.use_critic:
critic_task = await eager_create_task(critic_model.train(rollout_id, rollout_data_ref))
if rollout_id >= args.num_critic_only_steps:
await actor_model.train(rollout_id, rollout_data_ref)
await critic_task
else:
await actor_model.train(rollout_id, rollout_data_ref)
if should_run_periodic_action(rollout_id, args.save_interval, num_rollout_per_epoch, args.num_rollout):
await save(rollout_id)
await offload_train()
if args.offload_rollout:
await rollout_manager.onload_weights.remote()
await actor_model.update_weights()
if args.offload_rollout:
await rollout_manager.onload_kv.remote()
if should_run_periodic_action(rollout_id, args.eval_interval, num_rollout_per_epoch):
await rollout_manager.eval.remote(rollout_id)
await rollout_manager.dispose.remote()
if __name__ == "__main__":
args = parse_args()
asyncio.run(train(args))