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Feature Request: Apple Silicone Neural Engine - Core ML model package format support

qdrddr opened this issue · comments

Description

Please consider adding Core ML model package format support to utilize Apple Silicone Nural Engine + GPU.

Success Criteria
Utilize both ANE & GPU, not just GPU on Apple Silicon

Additional Context

List of Core ML package format models
https://github.com/likedan/Awesome-CoreML-Models

Work in progress on CoreML implementation for [whisper.cpp]. They see x3 performance improvements for some models. (ggerganov/whisper.cpp#548) you might be interested in.

You might also be interested in another implementation Swift Transformers. Example of CoreML application
https://github.com/huggingface/swift-chat

Core ML is a framework that can redistribute workload across CPU, GPU & Nural Engine (ANE). ANE is available on all modern Apple Devices: iPhones & Macs (A14 or newer and M1 or newer). Ideally, we want to run LLMs on ANE only as it has optimizations for running ML tasks compared to GPU. Apple claims "deploying your Transformer models on Apple devices with an A14 or newer and M1 or newer chip to achieve up to 10 times faster and 14 times lower peak memory consumption compared to baseline implementations".

  1. To utilize Core ML first, you need to convert a model from TensorFlow, PyTorch to Core ML model package format using coremltools (or simply utilize existing models in Core ML package format ).
  2. Second, you must now use that converted package with an implementation designed for Apple Devices. Here is the Apple XCode reference PyTorch implementation.

https://machinelearning.apple.com/research/neural-engine-transformers

https://appleinsider.com/articles/24/05/07/secret-apple-project-acdc-to-pioneer-ai-chips-for-data-centers

Under the internal name "Project ACDC," Apple is developing Apple Silicon designed specifically for server farms dedicated to AI processing. The company aims to optimize AI applications within its data centers for future versions of its platforms.