DEV Community

Cover image for πŸ“š Announcing My New Book: Building an LLMOps Pipeline Using Hugging Face πŸ“š
Prashant Lakhera
Prashant Lakhera

Posted on

πŸ“š Announcing My New Book: Building an LLMOps Pipeline Using Hugging Face πŸ“š

Thank you, everyone, for your invaluable feedback and support for my previous books:
βœ… AWS for System Administrators: https://www.amazon.com/AWS-System-Administrators-automate-infrastructure/dp/1800201532
βœ… Cracking the DevOps Interview: https://pratimuniyal.gumroad.com/l/cracking-the-devops-interview
I'm thrilled to announce the release of my new book, Building an LLMOps Pipeline Using Hugging Face. In a world where Generative AI and large language models (LLMs) are transforming our daily lives, many of us use tools like ChatGPT regularly; this book serves as a comprehensive guide to mastering LLMOps within the Hugging Face ecosystem.
Starting with the fundamentals of machine learning and deep learning, the book introduces key concepts, types of learning, and various machine learning models. It is designed to provide readers with both the knowledge and practical skills needed to leverage the power of LLMOps effectively.

Image description
You can find the book link here.
πŸ“š https://pratimuniyal.gumroad.com/l/BuildinganLLMOpsPipelineUsingHuggingFace

Book Breakdown
1️⃣ Chapter 1: Foundations of Machine Learning and Deep Learning
Introduction to the fundamental concepts, types, and applications of machine learning and deep learning.
2️⃣ Chapter 2: Exploring Hugging Face: Tools, Features, and Integration for Machine Learning
Overview of Hugging Face's tools and resources for implementing and fine-tuning machine learning models.
3️⃣ Chapter 3: Mastering Transformers and Datasets with Hugging Face
Exploration of transformer models and datasets in Hugging Face, focusing on their architecture and practical use.
4️⃣ Chapter 4: Text Generation and Classification with Hugging Face Transformers
Guide to using Hugging Face's Transformers library for text generation, classification, and summarization tasks.
5️⃣ Chapter 5: Creating Pipelines for Image, Audio, and Video Processing with Hugging Face
Instruction on building pipelines for image, audio, and video processing using Hugging Face tools.
6️⃣ Chapter 6: Document and Visual Question Answering in Multi-Modal Tasks with Hugging Face
Discussion on setting up document and visual question answering pipelines for multi-modal tasks.
7️⃣Chapter 7: Fine-Tuning a Pre-Trained Model for Sentiment Analysis with Hugging Face
Step-by-step guide to fine-tuning a pre-trained model for improved sentiment analysis performance.
8️⃣Chapter 8: Project: MLOps, AIOps, LLMOps, and Deploying an Application with GitHub Actions and AWS EKS
Practical guide to setting up a CI/CD pipeline for deploying a machine learning application using GitHub Actions and AWS EKS.
9️⃣ Chapter 9: Next Steps with Hugging Face: Contributing, Collaborating, and Continuous Learning
Encouragement and guidance for contributing to the Hugging Face community and continuing the learning journey.

I'm looking forward to your feedback πŸ™πŸ™πŸ™

Image of Timescale

πŸš€ pgai Vectorizer: SQLAlchemy and LiteLLM Make Vector Search Simple

We built pgai Vectorizer to simplify embedding management for AI applicationsβ€”without needing a separate database or complex infrastructure. Since launch, developers have created over 3,000 vectorizers on Timescale Cloud, with many more self-hosted.

Read more β†’

Top comments (0)

Postmark Image

Speedy emails, satisfied customers

Are delayed transactional emails costing you user satisfaction? Postmark delivers your emails almost instantly, keeping your customers happy and connected.

Sign up