calibrate
Simulate and collect ranges of a deep neural network
Description
exercises the network and collects the dynamic ranges of the weights and biases in the
convolution and fully connected layers of the network and the dynamic ranges of the
activations in all layers of the network specified by calResults
= calibrate(quantObj
,calData
)dlquantizer
object,
quantObj
, using the data specified by
calData
.
calibrates the network with additional options specified by one or more name-value pair
arguments.calResults
= calibrate(quantObj
,calData
,Name,Value
)
This function requires Deep Learning Toolbox Model Quantization Library. To learn about the products required to quantize a deep neural network, see Quantization Workflow Prerequisites.
Examples
Quantize a Neural Network for GPU Target
This example shows how to quantize learnable parameters in the convolution layers of a neural network for GPU and explore the behavior of the quantized network. In this example, you quantize the squeezenet neural network after retraining the network to classify new images according to the Train Deep Learning Network to Classify New Images example. In this example, the memory required for the network is reduced approximately 75% through quantization while the accuracy of the network is not affected.
Load the pretrained network. net
is the output network of the Train Deep Learning Network to Classify New Images example.
load squeezenetmerch
net
net = DAGNetwork with properties: Layers: [68×1 nnet.cnn.layer.Layer] Connections: [75×2 table] InputNames: {'data'} OutputNames: {'new_classoutput'}
Define calibration and validation data to use for quantization.
The calibration data is used to collect the dynamic ranges of the weights and biases in the convolution and fully connected layers of the network and the dynamic ranges of the activations in all layers of the network. For the best quantization results, the calibration data must be representative of inputs to the network.
The validation data is used to test the network after quantization to understand the effects of the limited range and precision of the quantized convolution layers in the network.
In this example, use the images in the MerchData
data set. Define an augmentedImageDatastore
object to resize the data for the network. Then, split the data into calibration and validation data sets.
unzip('MerchData.zip'); imds = imageDatastore('MerchData', ... 'IncludeSubfolders',true, ... 'LabelSource','foldernames'); [calData, valData] = splitEachLabel(imds, 0.7, 'randomized'); aug_calData = augmentedImageDatastore([227 227], calData); aug_valData = augmentedImageDatastore([227 227], valData);
Create a dlquantizer
object and specify the network to quantize.
quantObj = dlquantizer(net);
Define a metric function to use to compare the behavior of the network before and after quantization. This example uses the hComputeModelAccuracy
metric function.
function accuracy = hComputeModelAccuracy(predictionScores, net, dataStore) %% Computes model-level accuracy statistics % Load ground truth tmp = readall(dataStore); groundTruth = tmp.response; % Compare with predicted label with actual ground truth predictionError = {}; for idx=1:numel(groundTruth) [~, idy] = max(predictionScores(idx,:)); yActual = net.Layers(end).Classes(idy); predictionError{end+1} = (yActual == groundTruth(idx)); %#ok end % Sum all prediction errors. predictionError = [predictionError{:}]; accuracy = sum(predictionError)/numel(predictionError); end
Specify the metric function in a dlquantizationOptions
object.
quantOpts = dlquantizationOptions('MetricFcn',{@(x)hComputeModelAccuracy(x, net, aug_valData)});
Use the calibrate
function to exercise the network with sample inputs and collect range information. The calibrate
function exercises the network and collects the dynamic ranges of the weights and biases in the convolution and fully connected layers of the network and the dynamic ranges of the activations in all layers of the network. The function returns a table. Each row of the table contains range information for a learnable parameter of the optimized network.
calResults = calibrate(quantObj, aug_calData)
calResults=121×5 table
Optimized Layer Name Network Layer Name Learnables / Activations MinValue MaxValue
____________________________ ____________________ ________________________ _________ ________
{'conv1_Weights' } {'conv1' } "Weights" -0.91985 0.88489
{'conv1_Bias' } {'conv1' } "Bias" -0.07925 0.26343
{'fire2-squeeze1x1_Weights'} {'fire2-squeeze1x1'} "Weights" -1.38 1.2477
{'fire2-squeeze1x1_Bias' } {'fire2-squeeze1x1'} "Bias" -0.11641 0.24273
{'fire2-expand1x1_Weights' } {'fire2-expand1x1' } "Weights" -0.7406 0.90982
{'fire2-expand1x1_Bias' } {'fire2-expand1x1' } "Bias" -0.060056 0.14602
{'fire2-expand3x3_Weights' } {'fire2-expand3x3' } "Weights" -0.74397 0.66905
{'fire2-expand3x3_Bias' } {'fire2-expand3x3' } "Bias" -0.051778 0.074239
{'fire3-squeeze1x1_Weights'} {'fire3-squeeze1x1'} "Weights" -0.7712 0.68917
{'fire3-squeeze1x1_Bias' } {'fire3-squeeze1x1'} "Bias" -0.10138 0.32675
{'fire3-expand1x1_Weights' } {'fire3-expand1x1' } "Weights" -0.72035 0.9743
{'fire3-expand1x1_Bias' } {'fire3-expand1x1' } "Bias" -0.067029 0.30425
{'fire3-expand3x3_Weights' } {'fire3-expand3x3' } "Weights" -0.61443 0.7741
{'fire3-expand3x3_Bias' } {'fire3-expand3x3' } "Bias" -0.053613 0.10329
{'fire4-squeeze1x1_Weights'} {'fire4-squeeze1x1'} "Weights" -0.7422 1.0877
{'fire4-squeeze1x1_Bias' } {'fire4-squeeze1x1'} "Bias" -0.10885 0.13881
⋮
Use the validate
function to quantize the learnable parameters in the convolution layers of the network and exercise the network. The function uses the metric function defined in the dlquantizationOptions
object to compare the results of the network before and after quantization.
valResults = validate(quantObj, aug_valData, quantOpts)
valResults = struct with fields:
NumSamples: 20
MetricResults: [1×1 struct]
Statistics: [2×2 table]
Examine the validation output to see the performance of the quantized network.
valResults.MetricResults.Result
ans=2×2 table
NetworkImplementation MetricOutput
_____________________ ____________
{'Floating-Point'} 1
{'Quantized' } 1
valResults.Statistics
ans=2×2 table
NetworkImplementation LearnableParameterMemory(bytes)
_____________________ _______________________________
{'Floating-Point'} 2.9003e+06
{'Quantized' } 7.3393e+05
In this example, the memory required for the network was reduced approximately 75% through quantization. The accuracy of the network is not affected.
The weights, biases, and activations of the convolution layers of the network specified in the dlquantizer object now use scaled 8-bit integer data types.
Quantize a Neural Network for FPGA Target
This example shows how to quantize learnable parameters in the
convolution layers of a neural network and explore the behavior of the quantized
network. In this example, you quantize the logo recognition network
(LogoNet
). Quantization helps reduce the memory requirement of a
deep neural network by quantizing weights, biases and activations of network layers to
8-bit scaled integer data types. Use MATLAB® to retrieve the prediction results from the
target device.
This example uses the products listed under FPGA in Quantization Workflow Prerequisites.
Create a file in your current working directory called
getLogoNetwork.m
. Enter these lines into the file:
function net = getLogoNetwork() data = getLogoData(); net = data.convnet; end function data = getLogoData() if ~isfile('LogoNet.mat') url = 'https://www.mathworks.com/supportfiles/gpucoder/cnn_models/logo_detection/LogoNet.mat'; websave('LogoNet.mat',url); end data = load('LogoNet.mat'); end
Load the pretrained network.
snet = getLogoNetwork();
snet = SeriesNetwork with properties: Layers: [22×1 nnet.cnn.layer.Layer] InputNames: {'imageinput'} OutputNames: {'classoutput'}
Define calibration and validation data to use for quantization.
The calibration data is used to collect the dynamic ranges of the weights and biases in the convolution and fully connected layers of the network and the dynamic ranges of the activations in all layers of the network. For the best quantization results, the calibration data must be representative of inputs to the network.
The validation data is used to test the network after quantization to understand the effects of the limited range and precision of the quantized convolution layers in the network.
This example uses the images in the logos_dataset
data set.
Define an imageDatastore
, then split the data into calibration and
validation data sets.
curDir = pwd; newDir = fullfile(matlabroot,'examples','deeplearning_shared','data','logos_dataset.zip'); copyfile(newDir,curDir); unzip('logos_dataset.zip'); imageData = imageDatastore(fullfile(curDir,'logos_dataset'),... 'IncludeSubfolders',true,'FileExtensions','.JPG','LabelSource','foldernames'); [calibrationData,validationData] = splitEachLabel(imageData,0.5,'randomized');
Create a dlquantizer
object and specify the network to quantize.
Set the execution environment for the quantized network to FPGA.
dlQuantObj = dlquantizer(snet,'ExecutionEnvironment','FPGA');
Use the calibrate
function to exercise the network with sample
inputs and collect range information. The calibrate
function
exercises the network and collects the dynamic ranges of the weights and biases in
the convolution and fully connected layers of the network and the dynamic ranges of
the activations in all layers of the network. The function returns a table. Each row
of the table contains range information for a learnable parameter of the optimized
network.
dlQuantObj.calibrate(calibrationData)
ans = Optimized Layer Name Network Layer Name Learnables / Activations MinValue MaxValue ____________________________ __________________ ________________________ ___________ __________ {'conv_1_Weights' } {'conv_1' } "Weights" -0.048978 0.039352 {'conv_1_Bias' } {'conv_1' } "Bias" 0.99996 1.0028 {'conv_2_Weights' } {'conv_2' } "Weights" -0.055518 0.061901 {'conv_2_Bias' } {'conv_2' } "Bias" -0.00061171 0.00227 {'conv_3_Weights' } {'conv_3' } "Weights" -0.045942 0.046927 {'conv_3_Bias' } {'conv_3' } "Bias" -0.0013998 0.0015218 {'conv_4_Weights' } {'conv_4' } "Weights" -0.045967 0.051 {'conv_4_Bias' } {'conv_4' } "Bias" -0.00164 0.0037892 {'fc_1_Weights' } {'fc_1' } "Weights" -0.051394 0.054344 {'fc_1_Bias' } {'fc_1' } "Bias" -0.00052319 0.00084454 {'fc_2_Weights' } {'fc_2' } "Weights" -0.05016 0.051557 {'fc_2_Bias' } {'fc_2' } "Bias" -0.0017564 0.0018502 {'fc_3_Weights' } {'fc_3' } "Weights" -0.050706 0.04678 {'fc_3_Bias' } {'fc_3' } "Bias" -0.02951 0.024855 {'imageinput' } {'imageinput'} "Activations" 0 255 {'imageinput_normalization'} {'imageinput'} "Activations" -139.34 198.72
Create a target object with a custom name for your target device and an interface to connect your target device to the host computer.
hTarget = dlhdl.Target('Intel','Interface','JTAG');
Define a metric function to use to compare the behavior of the network before and after quantization. Save this function in a local file.
function accuracy = hComputeModelAccuracy(predictionScores,net,dataStore) %% hComputeModelAccuracy test helper function computes model level accuracy statistics % Copyright 2020 The MathWorks, Inc. % Load ground truth groundTruth = dataStore.Labels; % Compare predicted label with ground truth predictionError = {}; for idx=1:numel(groundTruth) [~, idy] = max(predictionScores(idx,:)); yActual = net.Layers(end).Classes(idy); predictionError{end+1} = (yActual == groundTruth(idx)); %#ok end % Sum all prediction errors. predictionError = [predictionError{:}]; accuracy = sum(predictionError)/numel(predictionError); end
Specify the metric function and FPGA execution environment options in a
dlquantizationOptions
object.
options = dlquantizationOptions('MetricFcn', ... {@(x)hComputeModelAccuracy(x,snet,validationData)},'Bitstream','arria10soc_int8',... 'Target',hTarget);
Compile and deploy the quantized network. Use the validate
function to quantize the learnable parameters in the convolution layers of the
network and exercise the network. This function uses the output of the compile
function to program the FPGA board by using the programming file. It also downloads
the network weights and biases. The deploy function checks for the Intel®
Quartus® tool and the supported tool version. It then programs the FPGA device
using the sof file, displays progress messages, and the time it takes to deploy the
network. The validate
function uses the metric function defined in
the dlquantizationOptions
object to compare the results of the
network before and after quantization.
prediction = dlQuantObj.validate(validationData,options);
offset_name offset_address allocated_space _______________________ ______________ _________________ "InputDataOffset" "0x00000000" "48.0 MB" "OutputResultOffset" "0x03000000" "4.0 MB" "SystemBufferOffset" "0x03400000" "60.0 MB" "InstructionDataOffset" "0x07000000" "8.0 MB" "ConvWeightDataOffset" "0x07800000" "8.0 MB" "FCWeightDataOffset" "0x08000000" "12.0 MB" "EndOffset" "0x08c00000" "Total: 140.0 MB" ### Programming FPGA Bitstream using JTAG... ### Programming the FPGA bitstream has been completed successfully. ### Loading weights to Conv Processor. ### Conv Weights loaded. Current time is 16-Jul-2020 12:45:10 ### Loading weights to FC Processor. ### FC Weights loaded. Current time is 16-Jul-2020 12:45:26 ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13570959 0.09047 30 380609145 11.8 conv_module 12667786 0.08445 conv_1 3938907 0.02626 maxpool_1 1544560 0.01030 conv_2 2910954 0.01941 maxpool_2 577524 0.00385 conv_3 2552707 0.01702 maxpool_3 676542 0.00451 conv_4 455434 0.00304 maxpool_4 11251 0.00008 fc_module 903173 0.00602 fc_1 536164 0.00357 fc_2 342643 0.00228 fc_3 24364 0.00016 * The clock frequency of the DL processor is: 150MHz ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13570364 0.09047 30 380612682 11.8 conv_module 12667103 0.08445 conv_1 3939296 0.02626 maxpool_1 1544371 0.01030 conv_2 2910747 0.01940 maxpool_2 577654 0.00385 conv_3 2551829 0.01701 maxpool_3 676548 0.00451 conv_4 455396 0.00304 maxpool_4 11355 0.00008 fc_module 903261 0.00602 fc_1 536206 0.00357 fc_2 342688 0.00228 fc_3 24365 0.00016 * The clock frequency of the DL processor is: 150MHz ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13571561 0.09048 30 380608338 11.8 conv_module 12668340 0.08446 conv_1 3939070 0.02626 maxpool_1 1545327 0.01030 conv_2 2911061 0.01941 maxpool_2 577557 0.00385 conv_3 2552082 0.01701 maxpool_3 676506 0.00451 conv_4 455582 0.00304 maxpool_4 11248 0.00007 fc_module 903221 0.00602 fc_1 536167 0.00357 fc_2 342643 0.00228 fc_3 24409 0.00016 * The clock frequency of the DL processor is: 150MHz ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13569862 0.09047 30 380613327 11.8 conv_module 12666756 0.08445 conv_1 3939212 0.02626 maxpool_1 1543267 0.01029 conv_2 2911184 0.01941 maxpool_2 577275 0.00385 conv_3 2552868 0.01702 maxpool_3 676438 0.00451 conv_4 455353 0.00304 maxpool_4 11252 0.00008 fc_module 903106 0.00602 fc_1 536050 0.00357 fc_2 342645 0.00228 fc_3 24409 0.00016 * The clock frequency of the DL processor is: 150MHz ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13570823 0.09047 30 380619836 11.8 conv_module 12667607 0.08445 conv_1 3939074 0.02626 maxpool_1 1544519 0.01030 conv_2 2910636 0.01940 maxpool_2 577769 0.00385 conv_3 2551800 0.01701 maxpool_3 676795 0.00451 conv_4 455859 0.00304 maxpool_4 11248 0.00007 fc_module 903216 0.00602 fc_1 536165 0.00357 fc_2 342643 0.00228 fc_3 24406 0.00016 * The clock frequency of the DL processor is: 150MHz offset_name offset_address allocated_space _______________________ ______________ _________________ "InputDataOffset" "0x00000000" "48.0 MB" "OutputResultOffset" "0x03000000" "4.0 MB" "SystemBufferOffset" "0x03400000" "60.0 MB" "InstructionDataOffset" "0x07000000" "8.0 MB" "ConvWeightDataOffset" "0x07800000" "8.0 MB" "FCWeightDataOffset" "0x08000000" "12.0 MB" "EndOffset" "0x08c00000" "Total: 140.0 MB" ### FPGA bitstream programming has been skipped as the same bitstream is already loaded on the target FPGA. ### Deep learning network programming has been skipped as the same network is already loaded on the target FPGA. ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13572329 0.09048 10 127265075 11.8 conv_module 12669135 0.08446 conv_1 3939559 0.02626 maxpool_1 1545378 0.01030 conv_2 2911243 0.01941 maxpool_2 577422 0.00385 conv_3 2552064 0.01701 maxpool_3 676678 0.00451 conv_4 455657 0.00304 maxpool_4 11227 0.00007 fc_module 903194 0.00602 fc_1 536140 0.00357 fc_2 342688 0.00228 fc_3 24364 0.00016 * The clock frequency of the DL processor is: 150MHz ### Finished writing input activations. ### Running single input activations. Deep Learning Processor Profiler Performance Results LastLayerLatency(cycles) LastLayerLatency(seconds) FramesNum Total Latency Frames/s ------------- ------------- --------- --------- --------- Network 13572527 0.09048 10 127266427 11.8 conv_module 12669266 0.08446 conv_1 3939776 0.02627 maxpool_1 1545632 0.01030 conv_2 2911169 0.01941 maxpool_2 577592 0.00385 conv_3 2551613 0.01701 maxpool_3 676811 0.00451 conv_4 455418 0.00304 maxpool_4 11348 0.00008 fc_module 903261 0.00602 fc_1 536205 0.00357 fc_2 342689 0.00228 fc_3 24365 0.00016 * The clock frequency of the DL processor is: 150MHz
The weights, biases, and activations of the convolution layers of the network
specified in the dlquantizer
object now use scaled 8-bit integer
data types.
Examine the MetricResults.Result
field of the validation output
to see the performance of the quantized network.
validateOut = prediction.MetricResults.Result
ans = NetworkImplementation MetricOutput _____________________ ____________ {'Floating-Point'} 0.9875 {'Quantized' } 0.9875
Examine the QuantizedNetworkFPS
field of the validation output
to see the frames per second performance of the quantized network.
prediction.QuantizedNetworkFPS
ans = 11.8126
Quantize a Neural Network for CPU Target
This example uses:
- Deep Learning ToolboxDeep Learning Toolbox
- Deep Learning Toolbox Model Quantization LibraryDeep Learning Toolbox Model Quantization Library
- MATLAB CoderMATLAB Coder
- MATLAB Support Package for Raspberry Pi HardwareMATLAB Support Package for Raspberry Pi Hardware
- Embedded CoderEmbedded Coder
- MATLAB Coder Interface for Deep Learning LibrariesMATLAB Coder Interface for Deep Learning Libraries
This example shows how to quantize and validate a neural network for a CPU target. This workflow is similar to other execution environments, but before validating you must establish a raspi
connection.
First, load your network. This example uses the pretrained network squeezenet
.
load squeezenetmerch
net
net = DAGNetwork with properties: Layers: [68×1 nnet.cnn.layer.Layer] Connections: [75×2 table] InputNames: {'data'} OutputNames: {'new_classoutput'}
Then define your calibration and validation data, calDS
and valDS
respectively.
unzip('MerchData.zip'); imds = imageDatastore('MerchData', ... 'IncludeSubfolders',true, ... 'LabelSource','foldernames'); [calData, valData] = splitEachLabel(imds, 0.7, 'randomized'); aug_calData = augmentedImageDatastore([227 227],calData); aug_valData = augmentedImageDatastore([227 227],valData);
Create the dlquantizer
object and specify a CPU execution environment.
dq = dlquantizer(net,'ExecutionEnvironment','CPU')
dq = dlquantizer with properties: NetworkObject: [1×1 DAGNetwork] ExecutionEnvironment: 'CPU'
Calibrate the network.
calResults = calibrate(dq,aug_calData)
Attempt to calibrate with host GPU errored with the message: Unable to find a supported GPU device. For more information on GPU support, see GPU Support by Release. Reverting to use host CPU.
calResults=121×5 table
Optimized Layer Name Network Layer Name Learnables / Activations MinValue MaxValue
____________________________ ____________________ ________________________ _________ ________
{'conv1_Weights' } {'conv1' } "Weights" -0.91985 0.88489
{'conv1_Bias' } {'conv1' } "Bias" -0.07925 0.26343
{'fire2-squeeze1x1_Weights'} {'fire2-squeeze1x1'} "Weights" -1.38 1.2477
{'fire2-squeeze1x1_Bias' } {'fire2-squeeze1x1'} "Bias" -0.11641 0.24273
{'fire2-expand1x1_Weights' } {'fire2-expand1x1' } "Weights" -0.7406 0.90982
{'fire2-expand1x1_Bias' } {'fire2-expand1x1' } "Bias" -0.060056 0.14602
{'fire2-expand3x3_Weights' } {'fire2-expand3x3' } "Weights" -0.74397 0.66905
{'fire2-expand3x3_Bias' } {'fire2-expand3x3' } "Bias" -0.051778 0.074239
{'fire3-squeeze1x1_Weights'} {'fire3-squeeze1x1'} "Weights" -0.7712 0.68917
{'fire3-squeeze1x1_Bias' } {'fire3-squeeze1x1'} "Bias" -0.10138 0.32675
{'fire3-expand1x1_Weights' } {'fire3-expand1x1' } "Weights" -0.72035 0.9743
{'fire3-expand1x1_Bias' } {'fire3-expand1x1' } "Bias" -0.067029 0.30425
{'fire3-expand3x3_Weights' } {'fire3-expand3x3' } "Weights" -0.61443 0.7741
{'fire3-expand3x3_Bias' } {'fire3-expand3x3' } "Bias" -0.053613 0.10329
{'fire4-squeeze1x1_Weights'} {'fire4-squeeze1x1'} "Weights" -0.7422 1.0877
{'fire4-squeeze1x1_Bias' } {'fire4-squeeze1x1'} "Bias" -0.10885 0.13881
⋮
Use the MATLAB Support Package for Raspberry Pi function, raspi
, to create a connection to the Raspberry Pi. In the following code, replace:
raspiname
with the name or address of your Raspberry Piusername
with your user namepassword
with your password
% r = raspi('raspiname','username','password');
Validate the quantized network with the validate
function.
valResults = validate(dq,aug_valData)
### Starting application: 'codegen/lib/validate_predict_int8/pil/validate_predict_int8.elf' To terminate execution: clear validate_predict_int8_pil ### Launching application validate_predict_int8.elf... ### Host application produced the following standard output (stdout) and standard error (stderr) messages:
valResults = struct with fields:
NumSamples: 20
MetricResults: [1×1 struct]
Statistics: []
Examine the validation output to see the performance of the quantized network.
valResults.MetricResults.Result
ans=2×2 table
NetworkImplementation MetricOutput
_____________________ ____________
{'Floating-Point'} 0.95
{'Quantized' } 0.95
Input Arguments
quantObj
— Network to quantize
dlquantizer
object
Network to quantize, specified as a dlquantizer
object.
calData
— Data to use for calibration of quantized network
imageDatastore
object | augmentedImageDatastore
object | pixelLabelImageDatastore
object | CombinedImageDatastore
object
Data to use for calibration of quantized network, specified as an imageDatastore
object, an augmentedImageDatastore
object, a pixelLabelImageDatastore
(Computer Vision Toolbox) object, or a CombinedDatastore
object.
Name-Value Arguments
Specify optional pairs of arguments as
Name1=Value1,...,NameN=ValueN
, where Name
is
the argument name and Value
is the corresponding value.
Name-value arguments must appear after other arguments, but the order of the
pairs does not matter.
Before R2021a, use commas to separate each name and value, and enclose
Name
in quotes.
Example: calResults =
calibrate(quantObj,calData,'UseGPU','on')
MiniBatchSize
— Size of mini-batches
32
(default) | positive integer
Size of the mini-batches to use for calibration, specified as a positive integer. Larger mini-batch sizes require more memory, but can lead to faster calibration.
Data Types: single
| double
| int8
| int16
| int32
| int64
| uint8
| uint16
| uint32
| uint64
UseGPU
— Whether to use host GPU for calibration
'auto' (default) | 'on'
| 'off
Whether to use host GPU for calibration, specified as one of the following:
'auto'
— Use host GPU for calibration if one is available. Otherwise, use host CPU for calibration.'on'
— Use host GPU for calibration.'off'
— Use host CPU for calibration.
Data Types: char
Output Arguments
calResults
— Dynamic ranges of network
table
Dynamic ranges of layers of the network, returned as a table. Each row in the table displays the minimum and maximum values of a learnable parameter of a convolution layer of the optimized network. The software uses these minimum and maximum values to determine the scaling for the data type of the quantized parameter.
Version History
Introduced in R2020aR2022b: Calibrate on host GPU or host CPU
You can now choose whether to calibrate your network using the host GPU or host CPU. By
default, the calibrate
function and the Deep Network
Quantizer app will calibrate on the host GPU if one is available.
In previous versions, it was required that the execution environment was the same as the instrumentation environment used for the calibration step of quantization.
R2022b: Specify mini-batch size to use for calibration
Use MiniBatchSize
to specify the size of mini-batches to use for
calibration.
R2021a: ARM Cortex-A calibration support
The Deep Learning Toolbox™ Model Quantization Library now supports calibration of a network for quantization and deployment on ARM® Cortex®-A microcontrollers.
See Also
Apps
Functions
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