Enterprise Scale NLP with Hugging Face & SageMaker Workshop series

Overview

Workshop: Enterprise-Scale NLP with Hugging Face & Amazon SageMaker

Earlier this year we announced a strategic collaboration with Amazon to make it easier for companies to use Hugging Face Transformers in Amazon SageMaker, and ship cutting-edge Machine Learning features faster. We introduced new Hugging Face Deep Learning Containers (DLCs) to train and deploy Hugging Face Transformers in Amazon SageMaker.

In addition to the Hugging Face Inference DLCs, we created a Hugging Face Inference Toolkit for SageMaker. This Inference Toolkit leverages the pipelines from the transformers library to allow zero-code deployments of models, without requiring any code for pre-or post-processing.

In October and November, we held a workshop series on “Enterprise-Scale NLP with Hugging Face & Amazon SageMaker”. This workshop series consisted out of 3 parts and covers:

  • Getting Started with Amazon SageMaker: Training your first NLP Transformer model with Hugging Face and deploying it
  • Going Production: Deploying, Scaling & Monitoring Hugging Face Transformer models with Amazon SageMaker
  • MLOps: End-to-End Hugging Face Transformers with the Hub & SageMaker Pipelines

We recorded all of them so you are now able to do the whole workshop series on your own to enhance your Hugging Face Transformers skills with Amazon SageMaker or vice-versa.

Below you can find all the details of each workshop and how to get started.

🧑🏻‍💻 Github Repository: https://github.com/philschmid/huggingface-sagemaker-workshop-series

📺   Youtube Playlist: https://www.youtube.com/playlist?list=PLo2EIpI_JMQtPhGR5Eo2Ab0_Vb89XfhDJ

Note: The Repository contains instructions on how to access a temporary AWS, which was available during the workshops. To be able to do the workshop now you need to use your own or your company AWS Account.

In Addition to the workshop we created a fully dedicated Documentation for Hugging Face and Amazon SageMaker, which includes all the necessary information. If the workshop is not enough for you we also have 15 additional getting samples Notebook Github repository, which cover topics like distributed training or leveraging Spot Instances.

Workshop 1: Getting Started with Amazon SageMaker: Training your first NLP Transformer model with Hugging Face and deploying it

In Workshop 1 you will learn how to use Amazon SageMaker to train a Hugging Face Transformer model and deploy it afterwards.

  • Prepare and upload a test dataset to S3
  • Prepare a fine-tuning script to be used with Amazon SageMaker Training jobs
  • Launch a training job and store the trained model into S3
  • Deploy the model after successful training

🧑🏻‍💻 Code Assets: https://github.com/philschmid/huggingface-sagemaker-workshop-series/tree/main/workshop_1_getting_started_with_amazon_sagemaker

📺  Youtube: https://www.youtube.com/watch?v=pYqjCzoyWyo&list=PLo2EIpI_JMQtPhGR5Eo2Ab0_Vb89XfhDJ&index=6&t=5s&ab_channel=HuggingFace

Workshop 2: Going Production: Deploying, Scaling & Monitoring Hugging Face Transformer models with Amazon SageMaker

In Workshop 2 learn how to use Amazon SageMaker to deploy, scale & monitor your Hugging Face Transformer models for production workloads.

  • Run Batch Prediction on JSON files using a Batch Transform
  • Deploy a model from hf.co/models to Amazon SageMaker and run predictions
  • Configure autoscaling for the deployed model
  • Monitor the model to see avg. request time and set up alarms

🧑🏻‍💻 Code Assets: https://github.com/philschmid/huggingface-sagemaker-workshop-series/tree/main/workshop_2_going_production

📺  Youtube: https://www.youtube.com/watch?v=whwlIEITXoY&list=PLo2EIpI_JMQtPhGR5Eo2Ab0_Vb89XfhDJ&index=6&t=61s

Workshop 3: MLOps: End-to-End Hugging Face Transformers with the Hub & SageMaker Pipelines

In Workshop 3 learn how to build an End-to-End MLOps Pipeline for Hugging Face Transformers from training to production using Amazon SageMaker.

We are going to create an automated SageMaker Pipeline which:

  • processes a dataset and uploads it to s3
  • fine-tunes a Hugging Face Transformer model with the processed dataset
  • evaluates the model against an evaluation set
  • deploys the model if it performed better than a certain threshold

🧑🏻‍💻 Code Assets: https://github.com/philschmid/huggingface-sagemaker-workshop-series/tree/main/workshop_3_mlops

📺  Youtube: https://www.youtube.com/watch?v=XGyt8gGwbY0&list=PLo2EIpI_JMQtPhGR5Eo2Ab0_Vb89XfhDJ&index=7

Access Workshop AWS Account

For this workshop you’ll get access to a temporary AWS Account already pre-configured with Amazon SageMaker Notebook Instances. Follow the steps in this section to login to your AWS Account and download the workshop material.

1. To get started navigate to - https://dashboard.eventengine.run/login

setup1

Click on Accept Terms & Login

2. Click on Email One-Time OTP (Allow for up to 2 mins to receive the passcode)

setup2

3. Provide your email address

setup3

4. Enter your OTP code

setup4

5. Click on AWS Console

setup5

6. Click on Open AWS Console

setup6

7. In the AWS Console click on Amazon SageMaker

setup7

8. Click on Notebook and then on Notebook instances

setup8

9. Create a new Notebook instance

setup9

10. Configure Notebook instances

  • Make sure to increase the Volume Size of the Notebook if you want to work with big models and datasets
  • Add your IAM_Role with permissions to run your SageMaker Training And Inference Jobs
  • Add the Workshop Github Repository to the Notebook to preload the notebooks: https://github.com/philschmid/huggingface-sagemaker-workshop-series.git

setup10

11. Open the Lab and select the right kernel you want to do and have fun!

Open the workshop you want to do (workshop_1_getting_started_with_amazon_sagemaker/) and select the pytorch kernel

setup11

Owner
Philipp Schmid
Machine Learning Engineer & Tech Lead at Hugging Face👨🏻‍💻 🤗 Cloud enthusiast ☁️ AWS ML HERO 🦸🏻‍♂️ Nuremberg 🇩🇪
Philipp Schmid
Continuously update some NLP practice based on different tasks.

NLP_practice We will continuously update some NLP practice based on different tasks. prerequisites Software pytorch = 1.10 torchtext = 0.11.0 sklear

0 Jan 05, 2022
Grapheme-to-phoneme (G2P) conversion is the process of generating pronunciation for words based on their written form.

Neural G2P to portuguese language Grapheme-to-phoneme (G2P) conversion is the process of generating pronunciation for words based on their written for

fluz 11 Nov 16, 2022
Tools for curating biomedical training data for large-scale language modeling

Tools for curating biomedical training data for large-scale language modeling

BigScience Workshop 242 Dec 25, 2022
Pytorch version of BERT-whitening

BERT-whitening This is the Pytorch implementation of "Whitening Sentence Representations for Better Semantics and Faster Retrieval". BERT-whitening is

Weijie Liu 255 Dec 27, 2022
GPT-3: Language Models are Few-Shot Learners

GPT-3: Language Models are Few-Shot Learners arXiv link Recent work has demonstrated substantial gains on many NLP tasks and benchmarks by pre-trainin

OpenAI 12.5k Jan 05, 2023
Application to help find best train itinerary, uses speech to text, has a spam filter to segregate invalid inputs, NLP and Pathfinding algos.

T-IAI-901-MSC2022 - GROUP 18 Gestion de projet Notre travail a été organisé et réparti dans un Trello. https://trello.com/b/X3s2fpPJ/ia-projet Install

1 Feb 05, 2022
Practical Natural Language Processing Tools for Humans is build on the top of Senna Natural Language Processing (NLP)

Practical Natural Language Processing Tools for Humans is build on the top of Senna Natural Language Processing (NLP) predictions: part-of-speech (POS) tags, chunking (CHK), name entity recognition (

jawahar 20 Apr 30, 2022
Simple Annotated implementation of GPT-NeoX in PyTorch

Simple Annotated implementation of GPT-NeoX in PyTorch This is a simpler implementation of GPT-NeoX in PyTorch. We have taken out several optimization

labml.ai 101 Dec 03, 2022
自然言語で書かれた時間情報表現を抽出/規格化するルールベースの解析器

ja-timex 自然言語で書かれた時間情報表現を抽出/規格化するルールベースの解析器 概要 ja-timex は、現代日本語で書かれた自然文に含まれる時間情報表現を抽出しTIMEX3と呼ばれるアノテーション仕様に変換することで、プログラムが利用できるような形に規格化するルールベースの解析器です。

Yuki Okuda 116 Nov 09, 2022
A Survey of Natural Language Generation in Task-Oriented Dialogue System (TOD): Recent Advances and New Frontiers

A Survey of Natural Language Generation in Task-Oriented Dialogue System (TOD): Recent Advances and New Frontiers

Libo Qin 132 Nov 25, 2022
Searching keywords in PDF file folders

keyword_searching Steps to use this Python scripts: (1)Paste this script into the file folder containing the PDF files you need to search from; (2)Thi

1 Nov 08, 2021
iBOT: Image BERT Pre-Training with Online Tokenizer

Image BERT Pre-Training with iBOT Official PyTorch implementation and pretrained models for paper iBOT: Image BERT Pre-Training with Online Tokenizer.

Bytedance Inc. 435 Jan 06, 2023
Code associated with the Don't Stop Pretraining ACL 2020 paper

dont-stop-pretraining Code associated with the Don't Stop Pretraining ACL 2020 paper Citation @inproceedings{dontstoppretraining2020, author = {Suchi

AI2 449 Jan 04, 2023
本项目是作者们根据个人面试和经验总结出的自然语言处理(NLP)面试准备的学习笔记与资料,该资料目前包含 自然语言处理各领域的 面试题积累。

【关于 NLP】那些你不知道的事 作者:杨夕、芙蕖、李玲、陈海顺、twilight、LeoLRH、JimmyDU、艾春辉、张永泰、金金金 介绍 本项目是作者们根据个人面试和经验总结出的自然语言处理(NLP)面试准备的学习笔记与资料,该资料目前包含 自然语言处理各领域的 面试题积累。 目录架构 一、【

1.4k Dec 30, 2022
A high-level yet extensible library for fast language model tuning via automatic prompt search

ruPrompts ruPrompts is a high-level yet extensible library for fast language model tuning via automatic prompt search, featuring integration with Hugg

Sber AI 37 Dec 07, 2022
null

CP-Cluster Confidence Propagation Cluster aims to replace NMS-based methods as a better box fusion framework in 2D/3D Object detection, Instance Segme

Yichun Shen 41 Dec 08, 2022
Text classification on IMDB dataset using Keras and Bi-LSTM network

Text classification on IMDB dataset using Keras and Bi-LSTM Text classification on IMDB dataset using Keras and Bi-LSTM network. Usage python3 main.py

Hamza Rashid 2 Sep 27, 2022
precise iris segmentation

PI-DECODER Introduction PI-DECODER, a decoder structure designed for Precise Iris Segmentation and Location. The decoder structure is shown below: Ple

8 Aug 08, 2022
Compute distance between sequences. 30+ algorithms, pure python implementation, common interface, optional external libs usage.

TextDistance TextDistance -- python library for comparing distance between two or more sequences by many algorithms. Features: 30+ algorithms Pure pyt

Life4 3k Jan 06, 2023
Smart discord chatbot integrated with Dialogflow to manage different classrooms and assist in teaching!

smart-school-chatbot Smart discord chatbot integrated with Dialogflow to interact with students naturally and manage different classes in a school. De

Tom Huynh 5 Oct 24, 2022