Concrete ML
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  • What is Concrete ML?
  • Getting Started
    • Installation
    • Key Concepts
    • Inference in the Cloud
  • Built-in Models
    • Linear Models
    • Tree-based Models
    • Neural Networks
    • Pandas
    • Built-in Model Examples
  • Deep Learning
    • Using Torch
    • Using ONNX
    • Step-by-Step Guide
    • Deep Learning Examples
    • Debugging Models
  • Advanced topics
    • Quantization
    • Pruning
    • Compilation
    • Production Deployment
    • Advanced Features
  • Developer Guide
    • Workflow
      • Set Up the Project
      • Set Up Docker
      • Documentation
      • Support and Issues
      • Contributing
    • Inner workings
      • Importing ONNX
      • Quantization tools
      • FHE Op-graph design
      • External Libraries
    • API
      • concrete.ml.common
      • concrete.ml.common.check_inputs
      • concrete.ml.common.debugging
      • concrete.ml.common.debugging.custom_assert
      • concrete.ml.common.utils
      • concrete.ml.deployment
      • concrete.ml.deployment.fhe_client_server
      • concrete.ml.onnx
      • concrete.ml.onnx.convert
      • concrete.ml.onnx.onnx_model_manipulations
      • concrete.ml.onnx.onnx_utils
      • concrete.ml.onnx.ops_impl
      • concrete.ml.quantization
      • concrete.ml.quantization.base_quantized_op
      • concrete.ml.quantization.post_training
      • concrete.ml.quantization.quantized_module
      • concrete.ml.quantization.quantized_ops
      • concrete.ml.quantization.quantizers
      • concrete.ml.sklearn
      • concrete.ml.sklearn.base
      • concrete.ml.sklearn.glm
      • concrete.ml.sklearn.linear_model
      • concrete.ml.sklearn.protocols
      • concrete.ml.sklearn.qnn
      • concrete.ml.sklearn.rf
      • concrete.ml.sklearn.svm
      • concrete.ml.sklearn.torch_module
      • concrete.ml.sklearn.tree
      • concrete.ml.sklearn.tree_to_numpy
      • concrete.ml.sklearn.xgb
      • concrete.ml.torch
      • concrete.ml.torch.compile
      • concrete.ml.torch.numpy_module
      • concrete.ml.version
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  • Concrete
  • Concrete ML
  • fhEVM

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  • Summary
  • Examples

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  1. Deep Learning

Deep Learning Examples

PreviousStep-by-Step GuideNextDebugging Models

Last updated 2 years ago

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Summary

The following table summarizes the examples in this section:

Model
Data-set
Metric
Floating Point
Simulation
FHE

Fully Connected NN

accuracy

0.95

0.94

0.94

QAT Fully Connected NN

Synthetic (Checkerboard)

accuracy

0.95

0.92

0.92

Convolutional NN

accuracy

0.97

0.91

0.91

Examples

FullyConnectedNeuralNetwork.ipynb
QuantizationAwareTraining.ipynb
ConvolutionalNeuralNetwork.ipynb
Iris
Digits