商品描述
Proven, practical techniques for integrating language models into your data science workflows
Data Science First: Using Language Models in AI-Enabled Applications, by Intersect AI's Chief AI Officer John Hawkins, explains how practicing data scientists can integrate language models in data science workflows without abandoning essential principles of reliability, accuracy, and efficacy. Hawkins offers crystal-clear guidance on when, where, and how data scientists can integrate language models into their existing workflows without exposing themselves or their companies to unnecessary risks.
This guide walks you through strategic design patterns for incorporating language models into real-world data science projects. It avoids strategies and techniques that rely heavily on proprietary tools that are likely to evolve very quickly (or could disappear entirely) in the near future. Instead, the author presents foundational methodologies that will remain valuable regardless of how individual platforms or services change. The book combines sound theory with practical case studies that cover common data science projects in the education, insurance, telecommunications, media and banking industries. Including customer churn analysis, customer complaint routing and document processing, demonstrating how language models can enhance rather than replace traditional data science methods.
You'll find:
- Three chapters providing a solid grounding in the ideas, principles and technologies that are used for data science with language models
- Nine chapters that discuss specific patterns for integrating language models into data science workflows, including semantic vector analysis, few-shot prompting, retrieval-based applications, synthetic data generation and AI agent development
- Real-world case studies discussing applications like fraud detection, customer churn, translation, document classification and sentiment analysis, with concrete business applications
- Comprehensive evaluation methods and testing frameworks are discussed in the context of language model applications in enterprise environments
- Practical code examples and implementation guidance using popular tools like HuggingFace, OpenAI, Google Gemini, as well as more development frameworks like LangChain, and PydanticAI
- Strategic insights for balancing model accuracy, interpretability, and business requirements while avoiding common pitfalls in AI deployment
An authoritative resource for data scientists and software engineers interested in using modern AI tools to build data-driven applications, Data Science First is a strategy guide for professionals navigating the discipline of data science as it is disrupted by generative AI. Whether you're looking to improve existing workflows or develop entirely new AI-powered solutions, you'll discover how to use language models in ways that consistently add value.
商品描述(中文翻譯)
將語言模型整合到數據科學工作流程中的經驗豐富且實用的技術
數據科學優先:在 AI 驅動的應用中使用語言模型,由 Intersect AI 的首席 AI 官 John Hawkins 撰寫,解釋了實踐中的數據科學家如何在不放棄可靠性、準確性和有效性等基本原則的情況下,將語言模型整合到數據科學工作流程中。Hawkins 提供了清晰的指導,說明數據科學家何時、何地以及如何將語言模型整合到現有工作流程中,而不會使自己或公司面臨不必要的風險。
本指南將引導您了解將語言模型納入現實世界數據科學項目的戰略設計模式。它避免依賴於可能在不久的將來迅速演變(或可能完全消失)的專有工具的策略和技術。相反,作者提出了基礎方法論,這些方法論無論個別平台或服務如何變化,仍將保持其價值。本書結合了穩健的理論與實用的案例研究,涵蓋教育、保險、電信、媒體和銀行等行業的常見數據科學項目,包括客戶流失分析、客戶投訴路由和文檔處理,展示了語言模型如何增強而非取代傳統數據科學方法。
您將發現:
- 三章提供了語言模型在數據科學中使用的思想、原則和技術的堅實基礎
- 九章討論了將語言模型整合到數據科學工作流程中的具體模式,包括語義向量分析、少量提示、基於檢索的應用、合成數據生成和 AI 代理開發
- 現實案例研究討論了如詐騙檢測、客戶流失、翻譯、文檔分類和情感分析等應用,並提供具體的商業應用
- 在企業環境中討論了語言模型應用的全面評估方法和測試框架
- 使用 HuggingFace、OpenAI、Google Gemini 等流行工具以及 LangChain 和 PydanticAI 等開發框架提供實用的代碼示例和實施指導
- 提供平衡模型準確性、可解釋性和商業需求的戰略見解,同時避免 AI 部署中的常見陷阱
數據科學優先 是一本權威資源,適合對使用現代 AI 工具構建數據驅動應用感興趣的數據科學家和軟體工程師,是專業人士在生成 AI 破壞下導航數據科學學科的策略指南。無論您是希望改善現有工作流程還是開發全新的 AI 驅動解決方案,您都將發現如何以持續增值的方式使用語言模型。
作者簡介
JOHN HAWKINS is the Chief AI Officer at Intersect AI, an organization that builds bespoke AI solutions to solve real workplace problems for companies in industries like insurance, media and healthcare. He leads the company's data science initiatives, working with clients directly to analyze their workflow processes and design people centred AI systems.
作者簡介(中文翻譯)
約翰·霍金斯是Intersect AI的首席人工智慧官,該組織專門為保險、媒體和醫療等行業的公司構建量身定制的人工智慧解決方案,以解決實際工作場所中的問題。他負責公司的數據科學計劃,直接與客戶合作,分析他們的工作流程並設計以人為中心的人工智慧系統。