create_quant_config

Function Usage

Finds all quantizable layers in a graph, creates a quantization configuration file, and writes the quantization configuration of the quantizable layers to the file.

Prototype

create_quant_config(config_file, model, input_data, skip_layers=None, batch_num=1, activation_offset=True, config_defination=None)

Command-Line Options

Option

Input/Return

Description

Restriction

config_file

Input

Path and name of the quantization configuration file

The existing file (if any) in the path will be overwritten upon this API call.

A string

model

Input

Source model, with weights loaded.

A torch.nn.Module

input_data

Input

Input data of the model. A torch.tensor, equivalent to a tuple(torch.tensor).

A tuple

skip_layers

Input

Layers to skip quantizing.

Default: None

A list of strings.

Restriction: If a simplified quantization configuration file is used as the input, this parameter must be set in the configuration file. In this case, the parameter setting in the input does not take effect.

batch_num

Input

Number of batches used for quantization, that is, the number of batches used to generate quantization factors.

Type: int

Valid Value: an integer greater than or equal to 0

Default value: 1

Restrictions:

  • batch_num must not be too large. The product of batch_num and batch_size equals the number of images used during quantization. Too many images consume too much memory.
  • If a simplified quantization configuration file is used as the input, this parameter must be set in the configuration file. In this case, the parameter setting in the input does not take effect.

activation_offset

Input

Whether to quantize activations with offset.

Default: True

A bool.

Restriction: If a simplified quantization configuration file is used as the input, this parameter must be set in the configuration file. In this case, the parameter setting in the input does not take effect.

config_defination

Input

Whether to create a simplified quantization configuration file quant.cfg from the calibration_config_pytorch.proto file in /amct_pytorch/proto/calibration_config_pytorch.proto under the AMCT installation path.

For details about the parameters in the calibration_config_pytorch.proto file and the generated simplified quantization configuration file quant.cfg, see Simplified PTQ Configuration File.

Default: None

A string

Restriction: If None, a configuration file is generated based on the remaining arguments (skip_layers, batch_num, and activation_offset). In other cases, a configuration file in JSON format is generated based on this argument.

Return Value

None

Outputs

A quantization configuration file in JSON format. (When quantization is performed again, this API will overwrite the existing configuration file in the output directory.)

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{
    "version":1,
    "batch_num":2,
    "activation_offset":true,
    "do_fusion":true,
    "skip_fusion_layers":[],
    "conv1":{
        "quant_enable":true,
        "dmq_balancer_param":0.5,
        "activation_quant_params":{
            "num_bits":8,
            "max_percentile":0.999999,
            "min_percentile":0.999999,
            "search_range":[
                0.7,
                1.3
            ],
            "search_step":0.01,
            "act_algo":"ifmr",
            "asymmetric":false
        },
        "weight_quant_params":{
            "num_bits":8,
            "wts_algo":"arq_quantize",
            "channel_wise":true
        }
    },
    "fc":{
        "quant_enable":true,
        "dmq_balancer_param":0.5,
        "activation_quant_params":{
            "num_bits":8,
            "max_percentile":0.999999,
            "min_percentile":0.999999,
            "search_range":[
                0.7,
                1.3
            ],
            "search_step":0.01,
            "act_algo":"ifmr",
            "asymmetric":false
        },
        "weight_quant_params":{
            "num_bits":8,
            "wts_algo":"arq_quantize",
            "channel_wise":false
        }
    }
}

Examples

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import amct_pytorch as amct
# Build a graph of the network to be quantized.
model = build_model()
model.load_state_dict(torch.load(state_dict_path))
input_data = tuple([torch.randn(input_shape)])
model.eval()

# Create a quantization configuration file.
amct.create_quant_config(config_file="./configs/config.json",
                         model=model,
                         input_data=input_data,
                         skip_layers=None,
                         batch_num=1,
                         activation_offset=True)