Book Image

Neural Search - From Prototype to Production with Jina

By : Jina AI, Bo Wang, Cristian Mitroi, Feng Wang, Shubham Saboo, Susana Guzmán
Book Image

Neural Search - From Prototype to Production with Jina

By: Jina AI, Bo Wang, Cristian Mitroi, Feng Wang, Shubham Saboo, Susana Guzmán

Overview of this book

Search is a big and ever-growing part of the tech ecosystem. Traditional search, however, has limitations that are hard to overcome because of the way it is designed. Neural search is a novel approach that uses the power of machine learning to retrieve information using vector embeddings as first-class citizens, opening up new possibilities of improving the results obtained through traditional search. Although neural search is a powerful tool, it is new and finetuning it can be tedious as it requires you to understand the several components on which it relies. Jina fills this gap by providing an infrastructure that reduces the time and complexity involved in creating deep learning–powered search engines. This book will enable you to learn the fundamentals of neural networks for neural search, its strengths and weaknesses, as well as how to use Jina to build a search engine. With the help of step-by-step explanations, practical examples, and self-assessment questions, you'll become well-versed with the basics of neural search and core Jina concepts, and learn to apply this knowledge to build your own search engine. By the end of this deep learning book, you'll be able to make the most of Jina's neural search design patterns to build an end-to-end search solution for any modality.
Table of Contents (13 chapters)
1
Part 1: Introduction to Neural Search Fundamentals
5
Part 2: Introduction to Jina Fundamentals
8
Part 3: How to Use Jina for Neural Search

Neural Networks for Neural Search

Search has always been a crucial part of all information systems; getting the right information to the right user is integral. This is because a user query, as in a set of keywords, cannot fully represent a user’s information needs. Traditionally, symbolic search has been developed to allow users to perform keyword-based searches. However, such search applications were bound to a text-based search box. With the recent developments in deep learning and artificial intelligence, we can encode any kind of data into vectors and measure the similarities between two vectors. This allows users to create a query with any kind of data and get any kind of search result.

In this chapter, we will review important concepts regarding information retrieval and neural search, as well as looking at the benefits that neural search provides to developers. Before we start introducing neural search, we will first introduce the drawbacks of the traditional symbolic-based search. Then, we’ll move on to looking at how to use neural networks in order to build a cross/multi-modality search. This will include looking at its major applications.

In this chapter, we’re going to cover the following main topics in particular:

  • Legacy search versus neural search
  • Machine learning for search
  • Practical applications for neural search