
    `i%              
       R   d dl Z d dlZd dlmZ d dlmZ d dlmZ d dlm	Z	m
Z
mZmZmZmZmZ d dlmZmZ d dlmZ dd	lmZ dd
lmZmZ ddlmZ ddlmZmZmZ ddl m!Z! ddl"m#Z# g dZ$ e j%        e#          dededefd            Z& e j%        e#          dededefd            Z'ej(        j)        j*        j+        ej(        j)        j*        j,        ej(        j)        j-        j+        ej(        j.        j/        gZ0dede1fdZ2 e j%        e#          	 	 ddede1de1defd            Z3dS )    N)constant_fold)DuplicateDQPass)PortNodeMetaForQDQ)DerivedQuantizationSpecFixedQParamsQuantizationSpecQuantizationAnnotationQuantizationSpecQuantizationSpecBase	QuantizerSharedQuantizationSpec)GraphModuleNode)PassManager   )prepare)_fold_conv_bn_qat_fuse_conv_bn_qat) reference_representation_rewrite)_disallow_eval_train_fuse_conv_bn__get_node_name_to_scope)#_convert_to_reference_decomposed_fx)DEPRECATION_WARNING)prepare_pt2eprepare_qat_pt2econvert_pt2emodel	quantizerreturnc                    t           j                            d           | j        }t	          |           }t          |            |                    |           } |                    |            |                    |            t          | |d|j
                  } | j                            |           t          |           } | S )a  Prepare a model for post training quantization

    Args:
      * `model` (torch.fx.GraphModule): a model captured by `torch.export.export_for_training` API.
      * `quantizer`: A backend specific quantizer that conveys how user want the
        model to be quantized. Tutorial for how to write a quantizer can be found here:
        https://pytorch.org/tutorials/prototype/pt2e_quantizer.html

    Return:
      A GraphModule with observer (based on quantizer annotation), ready for calibration

    Example::

        import torch
        from torch.ao.quantization.quantize_pt2e import prepare_pt2e
        from torch.ao.quantization.quantizer import (
            XNNPACKQuantizer,
            get_symmetric_quantization_config,
        )

        class M(torch.nn.Module):
            def __init__(self) -> None:
                super().__init__()
                self.linear = torch.nn.Linear(5, 10)

           def forward(self, x):
               return self.linear(x)

        # initialize a floating point model
        float_model = M().eval()

        # define calibration function
        def calibrate(model, data_loader):
            model.eval()
            with torch.no_grad():
                for image, target in data_loader:
                    model(image)

        # Step 1. program capture
        # NOTE: this API will be updated to torch.export API in the future, but the captured
        # result should mostly stay the same
        m = torch.export.export_for_training(m, *example_inputs).module()
        # we get a model with aten ops

        # Step 2. quantization
        # backend developer will write their own Quantizer and expose methods to allow
        # users to express how they
        # want the model to be quantized
        quantizer = XNNPACKQuantizer().set_global(get_symmetric_quantization_config())
        m = prepare_pt2e(m, quantizer)

        # run calibration
        # calibrate(m, sample_inference_data)
    z+quantization_api.quantize_pt2e.prepare_pt2eFis_qatobs_or_fq_callback)torch_C_log_api_usage_oncemetar   r   transform_for_annotationannotatevalidater   prepare_obs_or_fq_callbackupdater   r   r   original_graph_metanode_name_to_scopes       w/home/jaya/work/projects/VOICE-AGENT/VIET/agent-env/lib/python3.11/site-packages/torch/ao/quantization/quantize_pt2e.pyr   r   "   s    v 
H  !NOOO*077 5..u55Euu$?	  E 
J)*** ''EL    c                    t           j                            d           | j        }t	          |           }|                    |           } |                    |            |                    |            t          |            t          | |d|j
                  } | j                            |           t          |           } | S )a:  Prepare a model for quantization aware training

    Args:
      * `model` (torch.fx.GraphModule): see :func:`~torch.ao.quantization.quantize_pt2e.prepare_pt2e`
      * `quantizer`: see :func:`~torch.ao.quantization.quantize_pt2e.prepare_pt2e`

    Return:
      A GraphModule with fake quant modules (based on quantizer annotation), ready for
      quantization aware training

    Example::
        import torch
        from torch.ao.quantization.quantize_pt2e import prepare_qat_pt2e
        from torch.ao.quantization.quantizer import (
            XNNPACKQuantizer,
            get_symmetric_quantization_config,
        )

        class M(torch.nn.Module):
            def __init__(self) -> None:
                super().__init__()
                self.linear = torch.nn.Linear(5, 10)

           def forward(self, x):
               return self.linear(x)

        # initialize a floating point model
        float_model = M().eval()

        # define the training loop for quantization aware training
        def train_loop(model, train_data):
            model.train()
            for image, target in data_loader:
                ...

        # Step 1. program capture
        # NOTE: this API will be updated to torch.export API in the future, but the captured
        # result should mostly stay the same
        m = torch.export.export_for_training(m, *example_inputs).module()
        # we get a model with aten ops

        # Step 2. quantization
        # backend developer will write their own Quantizer and expose methods to allow
        # users to express how they
        # want the model to be quantized
        quantizer = XNNPACKQuantizer().set_global(get_symmetric_quantization_config())
        m = prepare_qat_pt2e(m, quantizer)

        # run quantization aware training
        train_loop(prepared_model, train_loop)

    z/quantization_api.quantize_pt2e.prepare_qat_pt2eTr!   )r$   r%   r&   r'   r   r(   r)   r*   r   r   r+   r,   r   r-   s       r0   r   r   r   s    r 
H  !RSSS*077..u55Euu e$?	  E 
J)*** ''ELr1   nc                 4    | j         dk    o| j        t          v S )aT  If there is any pure ops between get_attr and quantize op they will be const propagated
    e.g. get_attr(weight) -> transpose -> quantize -> dequantize*
    (Note: dequantize op is not going to be constant propagated)

    This filter is added because we don't want to constant fold the things that are not
    related to quantization
    call_function)optarget
_QUANT_OPS)r3   s    r0   _quant_node_constraintr9      s     4?"=qx:'==r1   FTuse_reference_representationfold_quantizec                 0   t           j                            d           t          |t                    st          d| d          | j        }t          |           } t          |           } t          t                      g          } ||           j        } t          t                      g          } ||           j        } |rt          | t                     |rt          |           } | j                            |           t#          |           } | S )a  Convert a calibrated/trained model to a quantized model

    Args:
      * `model` (torch.fx.GraphModule): calibrated/trained model
      * `use_reference_representation` (bool): boolean flag to indicate whether to produce reference representation or not
      * `fold_quantize` (bool): boolean flag for whether fold the quantize op or not

    Returns:
        quantized model, either in q/dq representation or reference representation

    Example::

        # prepared_model: the model produced by `prepare_pt2e`/`prepare_qat_pt2e` and calibration/training
        # `convert_pt2e` produces a quantized model that represents quantized computation with
        # quantize dequantize ops and fp32 ops by default.
        # Please refer to
        # https://pytorch.org/tutorials/prototype/pt2e_quant_ptq_static.html#convert-the-calibrated-model-to-a-quantized-model
        # for detailed explanation of output quantized model
        quantized_model = convert_pt2e(prepared_model)

    z+quantization_api.quantize_pt2e.convert_pt2ezjUnexpected argument type for `use_reference_representation`, please make sure you intend to pass argument z to convert_pt2e)r$   r%   r&   
isinstancebool
ValueErrorr'   r   r   r   r   graph_moduler   r   r9   r   r,   r   )r   r:   r;   r.   pms        r0   r   r      s#   6 
H  !NOOO2D99 
k<Xk k k
 
 	
  */66Ee$$E	o''(	)	)BBuII"E	(**+	,	,BBuII"E 5e3444# 8077	J)*** ''ELr1   )FT)4typing_extensionsr$   %torch._export.passes.constant_foldingr   ,torch.ao.quantization.pt2e.duplicate_dq_passr   -torch.ao.quantization.pt2e.port_metadata_passr   torch.ao.quantization.quantizerr   r   r   r	   r
   r   r   torch.fxr   r   "torch.fx.passes.infra.pass_managerr   pt2e.preparer   pt2e.qat_utilsr   r   pt2e.representationr   
pt2e.utilsr   r   r   quantize_fxr   utilsr   __all__
deprecatedr   r   opsquantized_decomposedquantize_per_tensordefaulttensorquantize_per_channel
pt2e_quantquantize_affiner8   r>   r9   r    r1   r0   <module>rZ      s        ? ? ? ? ? ? H H H H H H L L L L L L                  ' & & & & & & & : : : : : : ! ! ! ! ! ! @ @ @ @ @ @ @ @ A A A A A A U U U U U U U U U U < < < < < < & & & & & &   122LLL L L L 32L^ 122JJJ J J J 32J\ 
I"6>	I"6=	I"7?	I(	
>d >t > > > > 122 */2 22"&2 2 	2 2 2 322 2 2r1   