IBM Analog Hardware Acceleration Kit

Get started

  • Installation
  • Advanced installation guide
  • Using the PyTorch integration
  • Glossary

Analog AI Concepts

  • Analog AI
  • Analog AI Hardware
  • Advantages and Challenges

Cloud/Composer

  • Analog AI Cloud Composer Overview
  • Composer CLI

Using the Simulator

  • Using aihwkit Simulator

Analog DNN Training

  • Specialized Update Algorithms
  • Analog Training Presets

Analog DNN Inference

  • Inference and PCM Statistical Model
  • Analog Hardware-aware Training
  • Inference with Analog CMO-ReRAM Statistical Model

Advanced Guides

  • aihwkit design
  • Development setup
  • Development conventions
  • Project roadmap
  • Changelog

References

  • API Reference
  • Paper References
IBM Analog Hardware Acceleration Kit
  • aihwkit.experiments package
  • View page source

aihwkit.experiments package

High-level interface for executing Experiments.

Subpackages

  • aihwkit.experiments.experiments package
    • Submodules
      • aihwkit.experiments.experiments.base module
        • Experiment
        • Signals
      • aihwkit.experiments.experiments.inferencing module
        • BasicInferencing
        • download()
      • aihwkit.experiments.experiments.training module
        • BasicTraining
  • aihwkit.experiments.runners package
    • Submodules
      • aihwkit.experiments.runners.base module
        • Runner
      • aihwkit.experiments.runners.cloud module
        • CloudRunner
      • aihwkit.experiments.runners.i_cloud module
        • InferenceCloudRunner
      • aihwkit.experiments.runners.i_local module
        • InferenceLocalRunner
      • aihwkit.experiments.runners.i_metrics module
        • InferenceLocalMetric
      • aihwkit.experiments.runners.local module
        • LocalRunner
      • aihwkit.experiments.runners.metrics module
        • LocalMetric

© Copyright 2020, 2021, 2022, 2023, 2024 IBM Research.

Built with Sphinx using a theme provided by Read the Docs.