Observability for Large Language Models / Najlacnejšie knihy
Observability for Large Language Models

Kód: 51954324

Observability for Large Language Models

Autor Ankush Sharma

This book is a comprehensive guide designed to equip engineers, data scientists, and AI practitioners with the principles, tools, and strategies needed to ensure reliability, performance, and accountability in Large Language Model ... celý popis

38.87

Bežne: 51.92 €

Ušetríte 13.05 €


Očakávaná novinka
Termín neznámy

Informovať o naskladnení

Pridať medzi želanie

Mohlo by sa vám tiež páčiť

Darujte túto knihu ešte dnes
  1. Objednajte knihu a vyberte Zaslať ako darček.
  2. Obratom obdržíte darovací poukaz na knihu, ktorý môžete ihneď odovzdať obdarovanému.
  3. Knihu zašleme na adresu obdarovaného, o nič sa nestaráte.

Viac informácií

Informovať o naskladnení knihy

Informovať o naskladnení knihy


Súhlas - Odoslaním žiadosti vyjadrujem Súhlas so spracovaním osobných údajov na marketingové účely.

Zašleme vám správu akonáhle knihu naskladníme

Zadajte do formulára e-mailovú adresu a akonáhle knihu naskladníme, zašleme vám o tom správu. Postrážime všetko za vás.

Viac informácií o knihe Observability for Large Language Models

Nákupom získate 94 bodov

Anotácia knihy

This book is a comprehensive guide designed to equip engineers, data scientists, and AI practitioners with the principles, tools, and strategies needed to ensure reliability, performance, and accountability in Large Language Models (LLMs).

The book begins by laying the groundwork with the foundations of observability, introducing LLMs, their significance in modern AI, and the critical role observability plays in maintaining robust systems. It then explores SRE principles, service level objectives, and incident response, while distinguishing the unique observability challenges that arise in AI and ML systems. Building on this foundation, the book dives into measuring performance, from defining SLOs tailored for LLMs to monitoring computational and token-level metrics. Readers gain practical insights into structured logging, debugging, and distributed tracing methods that provide visibility into complex LLM workflows. Scaling challenges are addressed through strategies for cross-model observability, autoscaling, latency reduction, and fault-tolerant infrastructure design. The book further explores chaos engineering, guiding readers through resilience testing in LLMs and the automation of chaos experiments in CI/CD pipelines. Finally, it highlights monitoring, retraining, and ethical considerations in AI observability, including governance, privacy, and accountability.

In conclusion, this book provides a holistic roadmap to building reliable, transparent, and future-ready LLM systems.

What you will learn:

latency analysis.

failure scenarios.

reliability.

Who this book is for:

This book is for AI infrastructure engineers, SREs, machine learning platform teams, and applied AI practitioners deploying or maintaining LLM-based applications.

Parametre knihy

Zaradenie knihy Knihy po anglicky Computing & information technology Computer science Artificial intelligence

38.87

Obľúbené z iného súdka



Osobný odber Bratislava a 12593 dalších

Copyright ©2008-26 najlacnejsie-knihy.sk Všetky práva vyhradenéSúkromieCookies


Môj účet: Prihlásiť sa
Všetky knihy sveta na jednom mieste. Navyše za skvelé ceny.

Nákupný košík ( prázdny )

Vyzdvihnutie v Zásielkovni
zadarmo nad 59,99 €.

Nachádzate sa: