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[torchlib] Implement type promotion #2010
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Original file line number | Diff line number | Diff line change |
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"""Type promotion functions for op implementations.""" | ||
Check warningCode scanning / lintrunner RUFF/format Warning
Run lintrunner -a to apply this patch.
Check warningCode scanning / lintrunner RUFF-FORMAT/format Warning
Run lintrunner -a to apply this patch.
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from typing import Sequence | ||
Check warningCode scanning / lintrunner RUFF/I001 Warning
Import block is un-sorted or un-formatted.
See https://docs.astral.sh/ruff/rules/unsorted-imports |
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from onnxscript import ir | ||
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def _get_higher_dtype(a: ir.DataType, b: ir.DataType) -> ir.DataType: | ||
"""Get the higher dtype of two dtypes.""" | ||
# Reference: https://github.com/pytorch/pytorch/blob/bdd942efd76e74baa5dd0a262f7c843ddfe2e11b/torch/_prims_common/__init__.py#L1160 | ||
if a == b: | ||
return a | ||
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if a is None: | ||
return b | ||
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if b is None: | ||
return a | ||
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ordered_datatypes = ( | ||
(ir.DataType.BOOL,), | ||
(ir.DataType.UINT8, ir.DataType.INT8), | ||
(ir.DataType.INT16,), | ||
(ir.DataType.INT32,), | ||
(ir.DataType.INT64,), | ||
(ir.DataType.FLOAT16, ir.DataType.BFLOAT16), | ||
(ir.DataType.FLOAT,), | ||
(ir.DataType.DOUBLE,), | ||
(ir.DataType.COMPLEX64,), | ||
(ir.DataType.COMPLEX128,), | ||
) | ||
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for idx, dtypes in enumerate(ordered_datatypes): | ||
if a in dtypes and b in dtypes: | ||
return ordered_datatypes[idx + 1][0] | ||
if a in dtypes: | ||
return b | ||
if b in dtypes: | ||
return a | ||
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raise ValueError(f"Unexpected data types: {a}, {b}") | ||
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def promote_types(op, values: Sequence[ir.Value]) -> Sequence[ir.Value]: | ||
There was a problem hiding this comment. Choose a reason for hiding this commentThe reason will be displayed to describe this comment to others. Learn more. If it is used only for binary operators, I would add it to the function name just to make sure it is not called in any other operator. |
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"""Promote the types of the given values.""" | ||
if not values: | ||
return () | ||
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for value in values: | ||
if value.dtype is None: | ||
raise ValueError(f"Value {value} does not have dtype information and cannot be promoted.") | ||
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promoted = values[0].dtype | ||
assert promoted is not None | ||
for value in values[1:]: | ||
dtype = value.dtype | ||
assert dtype is not None | ||
promoted = _get_higher_dtype(promoted, dtype) | ||
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results = [] | ||
for value in values: | ||
if value.dtype != promoted: | ||
new_val = op.Cast(value, to=promoted) | ||
new_val.dtype = promoted | ||
new_val.shape = value.shape | ||
results.append(new_val) | ||
else: | ||
results.append(value) | ||
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return results |
Check warning
Code scanning / lintrunner
RUFF/CPY001 Warning