Cover art for Large Language Model-Based Solutions
Published
Wiley, June 2024
ISBN
9781394240722
Format
Softcover, 224 pages
Dimensions
23.4cm × 18.5cm × 1.5cm

Large Language Model-Based Solutions How to Deliver Value with Cost-Effective Generative AI Applications

Not in stock
Fast $7.95 flat-rate shipping!
Only pay $7.95 per order within Australia, including end-to-end parcel tracking.
100% encrypted and secure
We adhere to industry best practice and never store credit card details.
Talk to real people
Contact us seven days a week – our staff are here to help.

Learn to build cost-effective apps using Large Language Models

In Large Language Model-Based Solutions: How to Deliver Value with Cost-Effective Generative AI Applications, Principal Data Scientist at Amazon Web Services, Shreyas Subramanian, delivers a practical guide for developers and data scientists who wish to build and deploy cost-effective large language model (LLM)-based solutions. In the book, you'll find coverage of a wide range of key topics, including how to select a model, pre- and post-processing of data, prompt engineering, and instruction fine tuning.

The author sheds light on techniques for optimizing inference, like model quantization and pruning, as well as different and affordable architectures for typical generative AI (GenAI) applications, including search systems, agent assists, and autonomous agents. You'll also find:

Effective strategies to address the challenge of the high computational cost associated with LLMs

Assistance with the complexities of building and deploying affordable generative AI apps, including tuning and inference techniques

Selection criteria for choosing a model, with particular consideration given to compact, nimble, and domain-specific models

Perfect for developers and data scientists interested in deploying foundational models, or business leaders planning to scale out their use of GenAI, Large Language Model-Based Solutions will also benefit project leaders and managers, technical support staff, and administrators with an interest or stake in the subject.

Related books