Production Development with DeepSeek: Building and deploying scalable DeepSeek models with LoRA, QLoRA, and Docker (English Edition)
暫譯: 使用 DeepSeek 進行生產開發:使用 LoRA、QLoRA 和 Docker 建立及部署可擴展的 DeepSeek 模型(英文版)

Konathala, Thirumalesh

  • 出版商: BPB Publications
  • 出版日期: 2025-12-19
  • 售價: $1,630
  • 貴賓價: 9.5$1,548
  • 語言: 英文
  • 頁數: 284
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 9365891787
  • ISBN-13: 9789365891782
  • 相關分類: Reinforcement
  • 海外代購書籍(需單獨結帳)

商品描述

Multimodal models like DeepSeek are redefining what modern systems can achieve. With its reinforcement learning driven architecture, DeepSeek represents a new shift in adaptability, efficiency, and real-world intelligence making it highly useful for today's developers, engineers, and AI enthusiasts.

The book is structured to follow the production flow, beginning with core principles of DeepSeek, model types (language, vision, distilled), and the critical choice between cloud APIs and local LLMs. It takes you through architecture of DeepSeek in a clear, practical manner. Each chapter explores a specific aspect, understanding its core design, comparing it with traditional deep learning, optimizing and fine-tuning workflows, building multimodal applications, and deploying models seamlessly using Docker. You will then get hands-on with environment setup before diving into supervised fine-tuning (SFT) with LoRA/QLoRA and performance-boosting reinforcement learning (RL) using GRPO techniques. Along the way, you will learn through hands-on coding exercises, practical use cases, and best practices suited for production-grade AI.

By the end, along with understanding how DeepSeek works, you will also know how to make it work for you. You will gain the skills to build AI solutions, customize models for user needs, deploy scalable inference endpoints, and confidently integrate DeepSeek into real-world systems.

What you will learn

● Understand architecture of DeepSeek and RL foundations.

● Compare DeepSeek with conventional deep learning model approaches.

● Fine-tune DeepSeek effectively for specialized real-world production-grade tasks.

● Build multimodal applications using advanced capabilities of DeepSeek.

● Deploy DeepSeek models efficiently using Docker and containers.

● Integrate DeepSeek into automation, chatbots, and industry workflows.

● Apply best practices for scalable, production-ready AI solutions.

Who this book is for

This book is ideal for AI enthusiasts, ML engineers, data scientists, researchers, and developers who want to understand and apply RL-driven capabilities of DeepSeek. It is especially useful for professionals with basic deep learning and Python experience looking to build practical, production-ready AI systems.

Table of Contents

1. Introduction to DeepSeek

2. Understanding the Essentials of DeepSeek

3. Overview of DeepSeek Models and Types

4. Production Approaches

5. Setup and Environment

6. Supervised Fine-tuning

7. Reinforcement Learning from Human Feedback

8. Deploying DeepSeek with Inference and RAG

9. Deploying DeepSeek with Cloud, Multimodal and Agents

10. Dockerization and Real-world Applications

商品描述(中文翻譯)

多模態模型如 DeepSeek 正在重新定義現代系統的能力。憑藉其基於強化學習的架構,DeepSeek 代表了一種在適應性、效率和現實世界智能方面的新轉變,使其對當今的開發者、工程師和 AI 愛好者非常有用。

本書的結構遵循生產流程,從 DeepSeek 的核心原則、模型類型(語言、視覺、精煉)開始,並探討雲端 API 與本地 LLM 之間的關鍵選擇。它以清晰、實用的方式帶您了解 DeepSeek 的架構。每一章都探討一個特定的方面,理解其核心設計,與傳統深度學習進行比較,優化和微調工作流程,構建多模態應用程序,並使用 Docker 無縫部署模型。然後,您將在深入使用 LoRA/QLoRA 進行監督微調(SFT)和使用 GRPO 技術進行性能提升的強化學習(RL)之前,進行環境設置的實作。沿途,您將通過實作編碼練習、實際案例和適合生產級 AI 的最佳實踐進行學習。

到最後,除了理解 DeepSeek 的運作方式外,您還將知道如何讓它為您服務。您將獲得構建 AI 解決方案的技能,根據用戶需求自定義模型,部署可擴展的推理端點,並自信地將 DeepSeek 整合到現實世界系統中。

您將學到的內容:
● 理解 DeepSeek 的架構和強化學習基礎。
● 將 DeepSeek 與傳統深度學習模型方法進行比較。
● 有效地微調 DeepSeek 以應對專門的現實生產任務。
● 利用 DeepSeek 的先進功能構建多模態應用程序。
● 使用 Docker 和容器高效部署 DeepSeek 模型。
● 將 DeepSeek 整合到自動化、聊天機器人和行業工作流程中。
● 應用可擴展的生產就緒 AI 解決方案的最佳實踐。

本書的適用對象:
本書非常適合 AI 愛好者、機器學習工程師、數據科學家、研究人員和開發者,特別是那些希望理解和應用 DeepSeek 的強化學習驅動能力的專業人士。對於具備基本深度學習和 Python 經驗的專業人士,這本書尤其有用,幫助他們構建實用的生產就緒 AI 系統。

目錄:
1. DeepSeek 簡介
2. 理解 DeepSeek 的基本要素
3. DeepSeek 模型和類型概述
4. 生產方法
5. 設置和環境
6. 監督微調
7. 從人類反饋中進行強化學習
8. 使用推理和 RAG 部署 DeepSeek
9. 使用雲端、多模態和代理部署 DeepSeek
10. Docker 化和現實應用