TensorFlow Metal Backend on Apple Silicon Experiments (just for fun)

Overview

tf-metal-experiments

TensorFlow Metal Backend on Apple Silicon Experiments (just for fun)

Setup

This is tested on M1 series Apple Silicon SOC only.

TensorFlow 2.x

  1. Follow the official instructions from Apple here
  2. Test that your Metal GPU is working by running tf.config.list_physical_devices("GPU"), you should see 1 GPU present (it is not named). Later when you actually use the GPU, there will be a more informative printout that says Metal device set to: Apple M1 Max or similar.
  3. Now you should be ready to run any TF code that doesn't require external libraries.

HuggingFace Transformers library

If you want to play around with Transformer models (with TF Metal backend of course), you will need to install the HuggingFace Transformers library.

  1. Install the regex library (I don't know why it has to be like this, but yeah): python3 -m pip install --upgrade regex --no-use-pep517. You might need do xcode-select --install if the above command doesn't work.
  2. pip install transfomers ipywidgets

Experiments and Benchmarks

After some trial and error, some initial benchmarks for what should be the approx best capability of the M1 Max. For all the cases here, increasing batch size does not seem to increase the throughput.

Power draw also doesn't seem to be able to exceed 40W. Power draw from the GPU (averaged over 1 second) can be measured with sudo powermetrics --samplers gpu_power -i1000 -n1.

Model GPU BatchSize Throughput Power Memory
ResNet50 M1 Max 32c 64 135 img/sec 40W 13 GB
MobileNetV2 M1 Max 32c 128 352 img/sec 37W 15 GB
DistilBERT M1 Max 32c 64 120 seq/sec 35W 9 GB
BERTLarge M1 Max 32c 32 18 seq/sec 36W 14 GB

The benchmark scripts used are included in this repo.

Reference Benchmarks from RTX 3090

Model GPU BatchSize Throughput Power
ResNet50 3090 64 957 img/sec 300W
MobileNetV2 3090 128 1927 img/sec 310W
DistilBERT 3090 64 1040 seq/sec 310W
BERTLarge 3090 32 164 seq/sec 320W

For 3090, same script is used, but additional optimization that leverage hardware (Tensor Core) and software (XLA compiler) not present/working on M1 is added. This corresponds to the following code segment added:

from tensorflow.keras import mixed_precision
tf.config.optimizer.set_jit(True)
policy = mixed_precision.Policy('mixed_float16')
mixed_precision.set_global_policy(policy)
physical_devices = tf.config.list_physical_devices('GPU')

Also note that the 3090 is likely to perform better at larger batch sizes.

Measuring Achievable TFLOPS

We can use TF to write a matrix multiplication benchmark to try and estimate what is the max compute performance we can get out of a M1 Max. It seems we can get around ~8 TFLOPS for large enough problem (GEMM) sizes.

The plot can be generated using tflops_sweep.py.

Note that FP64 and FP16 performance appears to be non-existent. (the code automatically runs on CPU if FP64 or FP16 is specified as data type)

Owner
Timothy Liu
Deep Learning stuff and Open Source Enthusiast @OpenSUTD
Timothy Liu
Multi-Anchor Active Domain Adaptation for Semantic Segmentation (ICCV 2021 Oral)

Multi-Anchor Active Domain Adaptation for Semantic Segmentation Munan Ning*, Donghuan Lu*, Dong Wei†, Cheng Bian, Chenglang Yuan, Shuang Yu, Kai Ma, Y

Munan Ning 36 Dec 07, 2022
Top #1 Submission code for the first https://alphamev.ai MEV competition with best AUC (0.9893) and MSE (0.0982).

alphamev-winning-submission Top #1 Submission code for the first alphamev MEV competition with best AUC (0.9893) and MSE (0.0982). The code won't run

70 Oct 29, 2022
Vehicles Counting using YOLOv4 + DeepSORT + Flask + Ngrok

A project for counting vehicles using YOLOv4 + DeepSORT + Flask + Ngrok

Duong Tran Thanh 37 Dec 16, 2022
EfficientNetV2-with-TPU - Cifar-10 case study

EfficientNetV2-with-TPU EfficientNet EfficientNetV2 adalah jenis jaringan saraf convolutional yang memiliki kecepatan pelatihan lebih cepat dan efisie

Sultan syach 1 Dec 28, 2021
Code for the paper Open Sesame: Getting Inside BERT's Linguistic Knowledge.

Open Sesame This repository contains the code for the paper Open Sesame: Getting Inside BERT's Linguistic Knowledge. Credits We built the project on t

9 Jul 24, 2022
Pytorch implemenation of Stochastic Multi-Label Image-to-image Translation (SMIT)

SMIT: Stochastic Multi-Label Image-to-image Translation This repository provides a PyTorch implementation of SMIT. SMIT can stochastically translate a

Biomedical Computer Vision Group @ Uniandes 37 Mar 01, 2022
A modular, open and non-proprietary toolkit for core robotic functionalities by harnessing deep learning

A modular, open and non-proprietary toolkit for core robotic functionalities by harnessing deep learning Website • About • Installation • Using OpenDR

OpenDR 304 Dec 28, 2022
Attentive Implicit Representation Networks (AIR-Nets)

Attentive Implicit Representation Networks (AIR-Nets) Preprint | Supplementary | Accepted at the International Conference on 3D Vision (3DV) teaser.mo

29 Dec 07, 2022
Motion and Shape Capture from Sparse Markers

MoSh++ This repository contains the official chumpy implementation of mocap body solver used for AMASS: AMASS: Archive of Motion Capture as Surface Sh

Nima Ghorbani 135 Dec 23, 2022
[WACV 2022] Contextual Gradient Scaling for Few-Shot Learning

CxGrad - Official PyTorch Implementation Contextual Gradient Scaling for Few-Shot Learning Sanghyuk Lee, Seunghyun Lee, and Byung Cheol Song In WACV 2

Sanghyuk Lee 4 Dec 05, 2022
DvD-TD3: Diversity via Determinants for TD3 version

DvD-TD3: Diversity via Determinants for TD3 version The implementation of paper Effective Diversity in Population Based Reinforcement Learning. Instal

3 Feb 11, 2022
Ontologysim: a Owlready2 library for applied production simulation

Ontologysim: a Owlready2 library for applied production simulation Ontologysim is an open-source deep production simulation framework, with an emphasi

10 Nov 30, 2022
Is RobustBench/AutoAttack a suitable Benchmark for Adversarial Robustness?

Adversrial Machine Learning Benchmarks This code belongs to the papers: Is RobustBench/AutoAttack a suitable Benchmark for Adversarial Robustness? Det

Adversarial Machine Learning 9 Nov 27, 2022
minimizer-space de Bruijn graphs (mdBG) for whole genome assembly

rust-mdbg: Minimizer-space de Bruijn graphs (mdBG) for whole-genome assembly rust-mdbg is an ultra-fast minimizer-space de Bruijn graph (mdBG) impleme

Barış Ekim 148 Dec 01, 2022
Mesh TensorFlow: Model Parallelism Made Easier

Mesh TensorFlow - Model Parallelism Made Easier Introduction Mesh TensorFlow (mtf) is a language for distributed deep learning, capable of specifying

1.3k Dec 26, 2022
Deep Multi-Magnification Network for multi-class tissue segmentation of whole slide images

Deep Multi-Magnification Network This repository provides training and inference codes for Deep Multi-Magnification Network published here. Deep Multi

Computational Pathology 12 Aug 06, 2022
An attempt at the implementation of Glom, Geoffrey Hinton's new idea that integrates neural fields, predictive coding, top-down-bottom-up, and attention (consensus between columns)

GLOM - Pytorch (wip) An attempt at the implementation of Glom, Geoffrey Hinton's new idea that integrates neural fields, predictive coding,

Phil Wang 173 Dec 14, 2022
StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation

StyleSpace Analysis: Disentangled Controls for StyleGAN Image Generation Demo video: CVPR 2021 Oral: Single Channel Manipulation: Localized or attribu

Zongze Wu 267 Dec 30, 2022
Soft actor-critic is a deep reinforcement learning framework for training maximum entropy policies in continuous domains.

This repository is no longer maintained. Please use our new Softlearning package instead. Soft Actor-Critic Soft actor-critic is a deep reinforcement

Tuomas Haarnoja 752 Jan 07, 2023
GarmentNets: Category-Level Pose Estimation for Garments via Canonical Space Shape Completion

GarmentNets This repository contains the source code for the paper GarmentNets: Category-Level Pose Estimation for Garments via Canonical Space Shape

Columbia Artificial Intelligence and Robotics Lab 43 Nov 21, 2022