Reader small image

You're reading from  Vector Search for Practitioners with Elastic

Product typeBook
Published inNov 2023
PublisherPackt
ISBN-139781805121022
Edition1st Edition
Right arrow
Authors (2):
Bahaaldine Azarmi
Bahaaldine Azarmi
author image
Bahaaldine Azarmi

Bahaaldine Azarmi, Global VP Customer Engineering at Elastic, guides companies as they leverage data architecture, distributed systems, machine learning, and generative AI. He leads the customer engineering team, focusing on cloud consumption, and is passionate about sharing knowledge to build and inspire a community skilled in AI.
Read more about Bahaaldine Azarmi

Jeff Vestal
Jeff Vestal
author image
Jeff Vestal

Jeff Vestal has a rich background spanning over a decade in financial trading firms and extensive experience with Elasticsearch. He offers a unique blend of operational acumen, engineering skills, and machine learning expertise. As a Principal Customer Enterprise Architect, he excels at crafting innovative solutions, leveraging Elasticsearch's advanced search capabilities, machine learning features, and generative AI integrations, adeptly guiding users to transform complex data challenges into actionable insights.
Read more about Jeff Vestal

View More author details
Right arrow

What this book covers

Chapter 1, Introduction to Vectors and Embeddings, covers the essentials of embeddings in machine learning.

Chapter 2, Getting Started with Vector Search in Elastic, explores the evolution of search in Elastic, from traditional keyword-based methods to advanced vector search.

Chapter 3, Model Management and Vector Considerations in Elastic, dives into managing embedding models in Elasticsearch, exploring Hugging Face’s platform, Elastic’s Eland library, and integration strategies.

Chapter 4, Performance Tuning—Working with Data, delves into optimizing vector search performance in Elasticsearch using ML model deployment tuning and node capacity estimation. This chapter will also cover load testing with Rally and troubleshooting kNN search response times.

Chapter 5, Image Search, explores the advancing field of image similarity search and its growing significance in discovery applications.

Chapter 6, Redacting Personal Identifiable Information Using Elasticsearch, covers how to build and tailor a PII Redaction Pipeline in Elasticsearch, crucial for data privacy and security.

Chapter 7, Next Generation of Observability Powered by Vectors, delves into integrating vectors with observability on the Elastic platform, focusing on log analytics, metric analytics, and application performance monitoring.

Chapter 8, The Power of Vectors and Embedding in Bolstering Cybersecurity, explores Elastic Learned Sparse EncodeR (ELSER) and its role in semantic search for cybersecurity. It explains ELSER’s capabilities in text analysis and phishing detection.

Chapter 9, Retrieval Augmented Generation with Elastic, dives into Retrieval Augmented Generation (RAG) in Elastic, blending lexical, vector, and contextual searches.

Chapter 10, Building an Elastic Plugin for ChatGPT, shows how to enhance ChatGPT’s context awareness with Elasticsearch and Embedchain, creating a Dynamic Contextual Layer (DCL) for up-to-date information retrieval.

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Vector Search for Practitioners with Elastic
Published in: Nov 2023Publisher: PacktISBN-13: 9781805121022

Authors (2)

author image
Bahaaldine Azarmi

Bahaaldine Azarmi, Global VP Customer Engineering at Elastic, guides companies as they leverage data architecture, distributed systems, machine learning, and generative AI. He leads the customer engineering team, focusing on cloud consumption, and is passionate about sharing knowledge to build and inspire a community skilled in AI.
Read more about Bahaaldine Azarmi

author image
Jeff Vestal

Jeff Vestal has a rich background spanning over a decade in financial trading firms and extensive experience with Elasticsearch. He offers a unique blend of operational acumen, engineering skills, and machine learning expertise. As a Principal Customer Enterprise Architect, he excels at crafting innovative solutions, leveraging Elasticsearch's advanced search capabilities, machine learning features, and generative AI integrations, adeptly guiding users to transform complex data challenges into actionable insights.
Read more about Jeff Vestal