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qnn end to end flow for stories model
Pull Request resolved: #3038 Patch a few changes including: - support bool tensor type - support fp16 and fix the 8w8a quantization. - add two non-supported ops (slice_scatter and index_put) in common_defs.py stories model working end to end: AOT: fp16: ``` python -m examples.models.llama2.export_llama -kv --qnn -c stories110M.pt -p params.json ``` quantize: ``` python -m examples.models.llama2.export_llama -kv --qnn --pt2e_quantize qnn_8a8w -c stories110M.pt -p params.json ``` Runtime: ``` /llama_main --model_path=llama2_fp16_qnn_2.21.pte --tokenizer_path=tokenizer.bin --prompt="Once" ``` Output: ``` Once upon a time, there was a little girl named Lily. She loved to play outside and explore the world around her. One day, she went on a walk with her mommy and they found a beautiful landscape with lots of trees and flowers. Lily said, "Mommy, this place is so pretty! Can we take a picture?" Mommy replied, "Of course, Lily! Let's take a picture to remember the original place we found." After they took the picture, they continued their walk and saw a bird flying in the sky. Lily said, "MomPyTorchObserver {"prompt_tokens":2,"generated_tokens":125,"model_load_start_ms":1713226585936,"model_load_end_ms":1713226586909,"inference_start_ms":1713226586909,"inference_end_ms":1713226590363,"prompt_eval_end_ms":1713226586966,"first_token_ms":1713226586994,"aggregate_sampling_time_ms":23,"SCALING_FACTOR_UNITS_PER_SECOND":1000} I 00:00:04.436699 executorch:runner.cpp:414] Prompt Tokens: 2 Generated Tokens: 125 I 00:00:04.436703 executorch:runner.cpp:420] Model Load Time: 0.973000 (seconds) I 00:00:04.436732 executorch:runner.cpp:430] Total inference time: 3.454000 (seconds) Rate: 36.189925 (tokens/second) I 00:00:04.436735 executorch:runner.cpp:438] Prompt evaluation: 0.057000 (seconds) Rate: 35.087719 (tokens/second) I 00:00:04.436739 executorch:runner.cpp:449] Generated 125 tokens: 3.397000 (seconds) Rate: 36.797174 (tokens/second) I 00:00:04.436742 executorch:runner.cpp:457] Time to first generated token: 0.085000 (seconds) I 00:00:04.436744 executorch:runner.cpp:464] Sampling time over 127 tokens: 0.023000 (seconds) [INFO] [Qnn ExecuTorch]: Destroy Qnn backend parameters [INFO] [Qnn ExecuTorch]: Destroy Qnn context ``` Stories model is too small and sensitive to qunatization. ghstack-source-id: 223160858 @exported-using-ghexport Differential Revision: [D56119738](https://our.internmc.facebook.com/intern/diff/D56119738/)
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backends/qualcomm/builders/node_visitor.py

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Original file line numberDiff line numberDiff line change
@@ -29,6 +29,7 @@
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QNN_uint16: PyQnnWrapper.Qnn_DataType_t.QNN_DATATYPE_UFIXED_POINT_16,
3030
}
3131
QNN_TENSOR_TYPE_MAP = {
32+
torch.bool: PyQnnWrapper.Qnn_DataType_t.QNN_DATATYPE_BOOL_8,
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torch.float32: PyQnnWrapper.Qnn_DataType_t.QNN_DATATYPE_FLOAT_32,
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torch.int8: PyQnnWrapper.Qnn_DataType_t.QNN_DATATYPE_INT_8,
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torch.int16: PyQnnWrapper.Qnn_DataType_t.QNN_DATATYPE_INT_16,

backends/qualcomm/partition/common_defs.py

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Original file line numberDiff line numberDiff line change
@@ -13,6 +13,8 @@
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exir_ops.edge.aten.clone.default,
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exir_ops.edge.aten.index.Tensor,
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exir_ops.edge.aten.full.default,
16+
exir_ops.edge.aten.slice_scatter.default,
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exir_ops.edge.aten.index_put.default,
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]
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allow_list_operator = [

examples/models/llama2/export_llama_lib.py

Lines changed: 67 additions & 10 deletions
Original file line numberDiff line numberDiff line change
@@ -355,6 +355,13 @@ def build_args_parser() -> argparse.ArgumentParser:
355355
parser.add_argument(
356356
"--pt2e_quantize",
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default=None,
358+
choices=[
359+
"xnnpack_dynamic",
360+
"xnnpack_dynamic_qc4",
361+
"qnn_8a8w",
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"qnn_16a16w",
363+
"qnn_16a4w",
364+
],
358365
help="Use PT2E quantization. Comma separated options. e.g. xnnpack_dynamic (for per channel 8 bit weight), xnnpack_dynamic_qc4 (for per channel 4 bit weight), embedding.",
359366
)
360367
parser.add_argument(
@@ -624,6 +631,9 @@ def _prepare_for_llama_export(modelname: str, args) -> LlamaEdgeManager:
624631
if args.use_sdpa_with_kv_cache:
625632
transforms.append(replace_sdpa_with_custom_op)
626633

634+
if args.qnn and args.use_kv_cache:
635+
transforms.append(replace_sdpa_with_simple_sdpa)
636+
transforms.append(replace_causal_mask)
627637
return (
628638
load_llama_model(
629639
modelname=modelname,
@@ -647,13 +657,16 @@ def _export_llama(modelname, args) -> str: # noqa: C901
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# export_to_edge
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pt2e_quant_params = _get_pt2e_quantization_params(args)
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quantizers = get_pt2e_quantizers(pt2e_quant_params, args)
650-
if args.qnn:
651-
assert (
652-
args.quantization_mode is None
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), "Currently qnn backend only supports QnnQuantizer via pt2e flow"
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quant_dtype = None
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if args.qnn and args.pt2e_quantize:
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try:
655663
# pyre-ignore: Undefined import [21]: Could not find a module corresponding to import `executorch.backends.qualcomm.quantizer.quantizer`
656-
from executorch.backends.qualcomm.quantizer.quantizer import QnnQuantizer
664+
from executorch.backends.qualcomm.quantizer.quantizer import (
665+
get_16a4w_qnn_ptq_config,
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get_default_16bit_qnn_ptq_config,
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QnnQuantizer,
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QuantDtype,
669+
)
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658671
# reset quantizers and pt2e_quant_params from xnnpack backend
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pt2e_quant_params = None
@@ -663,10 +676,41 @@ def _export_llama(modelname, args) -> str: # noqa: C901
663676
"Please install the Qualcomm backend follwing https://pytorch.org/executorch/main/build-run-qualcomm.html"
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)
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679+
backend, quant_config = args.pt2e_quantize.split("_")
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assert (
681+
backend == "qnn"
682+
), f"The quantization config is for backend {backend} instead of qnn."
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# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
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qnn_quantizer = QnnQuantizer()
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# more custom quantization are supported including 16a4w etc. default to 8bit quantized
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custom_annotations = ()
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if quant_config == "8a8w":
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# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
689+
quant_dtype = QuantDtype.use_8a8w
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pass
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elif quant_config == "16a16w":
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# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
693+
quant_dtype = QuantDtype.use_16a16w
694+
qnn_quantizer.add_16bit_quant_ops(qnn_quantizer.SUPPORTED_OPS)
695+
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
696+
qnn_quantizer.set_bit16_op_quant_config(get_default_16bit_qnn_ptq_config())
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elif quant_config == "16a4w":
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# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
699+
quant_dtype = QuantDtype.use_16a4w
700+
qnn_quantizer.add_16bit_quant_ops(qnn_quantizer.SUPPORTED_OPS)
701+
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
702+
qnn_quantizer.set_bit16_op_quant_config(get_16a4w_qnn_ptq_config())
703+
qnn_quantizer.set_per_channel_weight_dtype(
704+
weight_dtype_for_16bit_act="int4"
705+
)
706+
else:
707+
raise AssertionError(
708+
f"No support for quant type {quant_config}. Support 8a8w, 16a16w and 16a4w."
709+
)
710+
711+
assert (
712+
args.quantization_mode is None
713+
), "Currently qnn backend only supports QnnQuantizer via pt2e flow"
670714
qnn_quantizer.add_custom_quant_annotations(custom_annotations)
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quantizers.append(qnn_quantizer)
672716

@@ -783,25 +827,38 @@ def _export_llama(modelname, args) -> str: # noqa: C901
783827
"Please install the Qualcomm backend follwing https://pytorch.org/executorch/main/build-run-qualcomm.html"
784828
)
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786-
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`
787-
backend_options = generate_htp_compiler_spec(use_fp16=False)
830+
use_fp16 = True
831+
skip_node_op_set = {}
832+
if args.pt2e_quantize:
833+
use_fp16 = False
834+
# TODO: fix the lowering error without skipping nodes
835+
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
836+
if quant_dtype == QuantDtype.use_8a8w:
837+
raise NotImplementedError("8a8w for llama is still under development")
838+
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
839+
elif quant_dtype == QuantDtype.use_16a16w:
840+
raise NotImplementedError("16a16w for llama is still under development")
841+
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
842+
elif quant_dtype == QuantDtype.use_16a4w:
843+
raise NotImplementedError("16a4w for llama is still under development")
788844
partitioners.append(
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# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`
790846
QnnPartitioner(
791847
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`
792848
generate_qnn_executorch_compiler_spec(
793849
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
794850
soc_model=QcomChipset.SM8650, # default to SM8650
795-
backend_options=backend_options,
851+
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`.
852+
backend_options=generate_htp_compiler_spec(use_fp16=use_fp16),
796853
debug=False,
797854
saver=False,
798855
),
799856
skip_node_id_set={},
800-
skip_node_op_set={},
857+
skip_node_op_set=skip_node_op_set,
801858
)
802859
)
803860
# pyre-ignore: Undefined attribute [16]: Module `executorch.backends` has no attribute `qualcomm`
804-
_transform(builder_exported_to_edge.export_program())
861+
_transform(builder_exported_to_edge.edge_manager.exported_program())
805862

806863
if args.generate_etrecord:
807864
if not builder_exported_to_edge.edge_manager:

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