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from typing import Any |
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from typing import Callable |
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from typing import ParamSpec |
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import spaces |
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import torch |
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from torch.utils._pytree import tree_map |
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P = ParamSpec("P") |
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TRANSFORMER_HIDDEN_DIM = torch.export.Dim("hidden", min=4096, max=8212) |
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TRANSFORMER_DYNAMIC_SHAPES = { |
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"hidden_states": {1: TRANSFORMER_HIDDEN_DIM}, |
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"img_ids": {0: TRANSFORMER_HIDDEN_DIM}, |
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} |
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INDUCTOR_CONFIGS = { |
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"conv_1x1_as_mm": True, |
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"epilogue_fusion": False, |
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"coordinate_descent_tuning": True, |
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"coordinate_descent_check_all_directions": True, |
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"max_autotune": True, |
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"triton.cudagraphs": True, |
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} |
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def compile_transformer(pipeline: Callable[P, Any], *args: P.args, **kwargs: P.kwargs): |
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@spaces.GPU(duration=1500) |
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def f(): |
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with spaces.aoti_capture(pipeline.transformer) as call: |
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pipeline(*args, **kwargs) |
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dynamic_shapes = tree_map(lambda v: None, call.kwargs) |
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dynamic_shapes |= TRANSFORMER_DYNAMIC_SHAPES |
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exported = torch.export.export( |
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mod=pipeline.transformer, args=call.args, kwargs=call.kwargs, dynamic_shapes=dynamic_shapes |
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) |
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return spaces.aoti_compile(exported, INDUCTOR_CONFIGS) |
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compiled_transformer = f() |
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return compiled_transformer |
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