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import time
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from typing import Any
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import torch
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import torch.fx
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import colossalai
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from colossalai.autochunk.autochunk_codegen import AUTOCHUNK_AVAILABLE
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from colossalai.fx.graph_module import ColoGraphModule
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from colossalai.fx.passes.meta_info_prop import MetaInfoProp
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from colossalai.fx.profiler import parameter_size
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from colossalai.utils import free_port
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if AUTOCHUNK_AVAILABLE:
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from colossalai.autochunk.autochunk_codegen import AutoChunkCodeGen
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from colossalai.fx.profiler import MetaTensor
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from colossalai.fx.tracer.experimental import ColoTracer, symbolic_trace
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def _benchmark_autochunk_unet_gm(
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model: Any,
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data: tuple,
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max_memory: int = None,
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) -> None:
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model = model.cuda().eval()
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# build model and input
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meta_args, concrete_args = data
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if concrete_args is None:
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concrete_args = {}
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# trace the meta graph and setup codegen
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meta_graph = symbolic_trace(
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model,
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meta_args={k: v.to(torch.device("meta")) for k, v in meta_args},
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concrete_args={k: v for k, v in concrete_args},
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)
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interp = MetaInfoProp(meta_graph)
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meta_tensors = [i[1] for i in meta_args] + [i[1] for i in concrete_args]
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meta_tensors = [MetaTensor(i, fake_device="cpu") if isinstance(i, torch.Tensor) else i for i in meta_tensors]
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interp.propagate(*meta_tensors)
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codegen = AutoChunkCodeGen(
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meta_graph,
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max_memory=max_memory,
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)
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# trace and recompile
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# MetaInfoProp requires symbolic_trace but CodeGen requires ColoTracer
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graph = ColoTracer().trace(
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model.cuda().eval(),
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meta_args={k: v.to(torch.device("meta")) for k, v in meta_args},
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concrete_args={k: v for k, v in concrete_args},
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)
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graph.set_codegen(codegen)
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gm = ColoGraphModule(model, graph, ckpt_codegen=False)
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gm.recompile()
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# init inputs
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inputs = [i[1] for i in meta_args] + [i[1] for i in concrete_args]
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inputs = [i.cuda() if isinstance(i, torch.Tensor) else i for i in inputs]
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model.cuda().eval()
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# bench
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para_mem = float(parameter_size(model)) / 1024**2
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act_mem = _benchmark_memory(gm, inputs)
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speed = _benchmark_speed(gm, inputs)
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print(
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"unet autochunk, time: %.4fs, act mem: %.2fMB, para mem: %.2fMB, all mem: %.2fMB"
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% (speed, act_mem, para_mem, act_mem + para_mem)
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)
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def _benchmark_autochunk_unet_origin(
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model: Any,
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data: tuple,
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) -> None:
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# build model and input
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meta_args, concrete_args = data
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if concrete_args is None:
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concrete_args = {}
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# init inputs
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inputs = [i[1] for i in meta_args] + [i[1] for i in concrete_args]
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inputs = [i.cuda() if isinstance(i, torch.Tensor) else i for i in inputs]
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model.cuda().eval()
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# bench
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para_mem = float(parameter_size(model)) / 1024**2
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act_mem = _benchmark_memory(model, inputs)
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speed = _benchmark_speed(model, inputs)
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print(
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"unet origin, time: %.4fs, act mem: %.2fMB, para mem: %.2fMB, all mem: %.2fMB"
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% (speed, act_mem, para_mem, act_mem + para_mem)
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)
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return act_mem
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def _benchmark_memory(model, inputs):
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with torch.no_grad():
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torch.cuda.reset_peak_memory_stats()
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now_mem = float(torch.cuda.memory_allocated()) / 1024**2
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model(*inputs)
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new_max_mem = float(torch.cuda.max_memory_allocated()) / 1024**2
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return new_max_mem - now_mem
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def _benchmark_speed(model, inputs, loop=5):
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with torch.no_grad():
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for _ in range(loop // 2 + 1):
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model(*inputs)
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torch.cuda.synchronize()
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time1 = time.time()
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for _ in range(loop):
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model(*inputs)
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torch.cuda.synchronize()
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time2 = time.time()
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return (time2 - time1) / loop
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def benchmark_autochunk_unet(batch=1, height=448, width=448):
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from test_autochunk_unet import UNet2DModel, get_data
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model = UNet2DModel()
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latent_shape = (batch, 3, height // 7, width // 7)
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print("\nbatch: %d, height: %d, width: %d" % (batch, height, width))
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max_mem = _benchmark_autochunk_unet_origin(model, get_data(latent_shape))
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for ratio in [0.5, 0.4, 0.3, 0.2]:
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try:
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_benchmark_autochunk_unet_gm(model, get_data(latent_shape), max_mem * ratio)
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except RuntimeError as e:
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if e.args[0] == "Search failed. Try a larger memory threshold.":
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break
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except Exception as e:
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raise e
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_benchmark_autochunk_unet_gm(model, get_data(latent_shape), None)
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if __name__ == "__main__":
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# launch colossalai
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colossalai.launch(
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config={},
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rank=0,
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world_size=1,
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host="localhost",
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port=free_port(),
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backend="nccl",
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)
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benchmark_autochunk_unet(batch=1, height=224 * 3, width=224 * 3)
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benchmark_autochunk_unet(batch=1, height=224 * 4, width=224 * 4)
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benchmark_autochunk_unet(batch=1, height=224 * 5, width=224 * 5)
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benchmark_autochunk_unet(batch=1, height=224 * 6, width=224 * 6)
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