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Using generic implemntation for 16-bit activations and 8 bit weights for Conv2D in Backends #16007
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… for linear in backends Summary: # Context We continue from D84284794 to add support for 16-bit activations. Note that right now, all though they support 16-bit activations already, it's only if the weights are also 16-bits. To do this, we need to change the way we template some functions. # Current Behavior Right now, we're composing two macros together, the `ET_FORALL_JARVIS_QUANTIZED_TYPES_WITH_INT16` macro: https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/operators.h?lines=22-25 and the function macro(`quantized_linear` chosen for example): https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/quantized_linear_out.cpp?lines=30-41 so together, it just becomes a switch statement, calling the `quantized_linear` function with the correct template parameter. However, note that it assumes that both the input activations and weights are the same dtype, which is not the case. # This Diff We finish by using the generic implementation for all the backends and adding e2e tests as well as unit tests. Reviewed By: hsharma35 Differential Revision: D87946776
…for Conv2D in Backends Summary: # Context We continue from D84284794 to add support for 16-bit activations. Note that right now, all though they support 16-bit activations already, it's only if the weights are also 16-bits. To do this, we need to change the way we template some functions. # Current Behavior Right now, we're composing two macros together, the `ET_FORALL_JARVIS_QUANTIZED_TYPES_WITH_INT16` macro: https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/operators.h?lines=22-25 and the function macro(`quantized_linear` chosen for example): https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/quantized_linear_out.cpp?lines=30-41 so together, it just becomes a switch statement, calling the `quantized_linear` function with the correct template parameter. However, note that it assumes that both the input activations and weights are the same dtype, which is not the case. # This Diff We finish by using the generic implementation for all the backends and adding e2e tests as well as unit tests. Differential Revision: D87993325
🔗 Helpful Links🧪 See artifacts and rendered test results at hud.pytorch.org/pr/pytorch/executorch/16007
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Pull request overview
This PR adds support for 16-bit activations with 8-bit weights (W8A16) in quantized operations for the Cadence HiFi backend. Previously, 16-bit support required both activations and weights to be 16-bit.
- Extends
quantized_linear_out,quantized_linear_per_tensor_out,quantized_conv2d_nchw_out, andquantized_conv2d_nhwc_outto handle W8A16 heterogeneous types by delegating to generic implementations - Adds comprehensive unit tests for the new W8A16 support in linear and conv2d operations
- Updates build configuration to include necessary dependencies for generic implementations
Reviewed changes
Copilot reviewed 7 out of 7 changed files in this pull request and generated 2 comments.
Show a summary per file
| File | Description |
|---|---|
| backends/cadence/hifi/operators/tests/test_op_quantized_linear_out.cpp | Adds unit test for quantized linear with int16 activations and int8 weights |
| backends/cadence/hifi/operators/tests/test_op_quantized_conv2d_out.cpp | Adds unit tests for quantized conv2d (NCHW/NHWC) with int16 activations and int8 weights |
| backends/cadence/hifi/operators/targets.bzl | Updates build targets to add generic implementation dependencies for W8A16 support |
| backends/cadence/hifi/operators/op_quantized_linear_out.cpp | Adds W8A16 type check and delegates to generic implementation for linear operations |
| backends/cadence/hifi/operators/op_quantized_conv2d_nhwc_out.cpp | Adds W8A16 type check and delegates to generic implementation for NHWC conv2d |
| backends/cadence/hifi/operators/op_quantized_conv2d_nchw_out.cpp | Adds W8A16 type check and delegates to generic implementation for NCHW conv2d |
| backends/cadence/aot/quantizer/quantizer.py | Adds new quantizer class for 16-bit conv activations |
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| } | ||
| else if (out.scalar_type() == executorch::aten::ScalarType::Byte) { |
Copilot
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Nov 28, 2025
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[nitpick] The else if should be on the same line as the closing brace according to standard C++ formatting conventions. Change to } else if for consistency with typical C++ style.
| } | |
| else if (out.scalar_type() == executorch::aten::ScalarType::Byte) { | |
| } else if (out.scalar_type() == executorch::aten::ScalarType::Byte) { |
| } | ||
| else if (out.scalar_type() == executorch::aten::ScalarType::Byte) { |
Copilot
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Nov 28, 2025
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[nitpick] The else if should be on the same line as the closing brace according to standard C++ formatting conventions. Change to } else if for consistency with typical C++ style.
| } | |
| else if (out.scalar_type() == executorch::aten::ScalarType::Byte) { | |
| } else if (out.scalar_type() == executorch::aten::ScalarType::Byte) { |
…for Conv2D in Backends (pytorch#16007) Summary: # Context We continue from D84284794 to add support for 16-bit activations. Note that right now, all though they support 16-bit activations already, it's only if the weights are also 16-bits. To do this, we need to change the way we template some functions. # Current Behavior Right now, we're composing two macros together, the `ET_FORALL_JARVIS_QUANTIZED_TYPES_WITH_INT16` macro: https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/operators.h?lines=22-25 and the function macro(`quantized_linear` chosen for example): https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/quantized_linear_out.cpp?lines=30-41 so together, it just becomes a switch statement, calling the `quantized_linear` function with the correct template parameter. However, note that it assumes that both the input activations and weights are the same dtype, which is not the case. # This Diff We finish by using the generic implementation for all the backends and adding e2e tests as well as unit tests. Differential Revision: D87993325
Summary:
Context
We continue from D84284794 to add support for 16-bit activations. Note that right now, all though they support 16-bit activations already, it's only if the weights are also 16-bits. To do this, we need to change the way we template some functions.
Current Behavior
Right now, we're composing two macros together, the
ET_FORALL_JARVIS_QUANTIZED_TYPES_WITH_INT16macro:https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/operators.h?lines=22-25
and the function macro(
quantized_linearchosen for example):https://www.internalfb.com/code/fbsource/[9e8c6d8466107f58aa3de1b9e4ec71c49d670a8f]/fbcode/on_device_ai/Assistant/Jarvis/min_runtime/operators/generic/quantized_linear_out.cpp?lines=30-41
so together, it just becomes a switch statement, calling the
quantized_linearfunction with the correct template parameter.However, note that it assumes that both the input activations and weights are the same dtype, which is not the case.
This Diff
We finish by using the generic implementation for all the backends and adding e2e tests as well as unit tests.
Differential Revision: D87993325