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Replace WeightOnlyInt8Linear with TorchAO int8_weight_only quantization #1328
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🔗 Helpful Links🧪 See artifacts and rendered test results at hud.pytorch.org/pr/pytorch/torchchat/1328
Note: Links to docs will display an error until the docs builds have been completed. ✅ No FailuresAs of commit 1a42fb6 with merge base e30aaa0 (): This comment was automatically generated by Dr. CI and updates every 15 minutes. |
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thanks! can you add a generate.py speed benchmark result for before and after as well |
# Use tensor subclass API for int4 weight only. | ||
if device == "cuda" and quantizer == "linear:int4": | ||
quantize_(model, int4_weight_only(q_kwargs["groupsize"])) | ||
elif quantizer == "linear:int8": | ||
print("quantizer is linear int8") |
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print("quantizer is linear int8") |
"precision": PrecisionHandler, | ||
"executor": ExecutorHandler, | ||
"linear:int4": Int4WeightOnlyQuantizer, | ||
"linear:int8": int8_weight_only, |
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Do we need this?
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we can probably use None for now, and remove this later
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We check for int8_weight_only and finished check before it looks at the table I think
@vmpuri can you check?
Can you ack that the numerics look good for MPS and CPU as well? |
# Use tensor subclass API for int4 weight only. | ||
if device == "cuda" and quantizer == "linear:int4": | ||
quantize_(model, int4_weight_only(q_kwargs["groupsize"])) | ||
elif quantizer == "linear:int8": | ||
print("quantizer is linear int8") | ||
quantize_(model, int8_weight_only()) |
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Why not integrate it into a QuantHandler class dispatched thru the handler dict at a single call site rather than build a chain of if statements?
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Hi @mikekgfb, we will refactor this part in the future after all quant APIs are moved to torchao I think
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torchAO already has a class-based API that is used for other quantizers? Why do these differently, and then later refactor them? Or why not do them all a consistent way now, and if you refactor later, do that?
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yeah, quantizer API is deprecated in favor of quantize_
, that's why we are gradually refactoring the quantizer APIs to use quantize_
, the reason we do it one by one is because there might be missing support/alignment on numerics etc. that we need to do during the migration
return linear_int8_aoti(input, self.weight, self.scales) | ||
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def et_forward(self, input: torch.Tensor) -> torch.Tensor: | ||
return linear_int8_et(input, self.weight, self.scales) |
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Int 8 seems like it special cased for ET, reminder to check that as well
Replace the WeightOnlyInt8Linear quantization code with TorchAO's int8_weight_only quantization.
Note - this commit also contains lintrunner changes.
Testing:
From current master:
Lint