Data Science for Teams: 20 Lessons from the Fieldwork
暫譯: 團隊數據科學:來自實地工作的20個教訓

Georgiou, Harris V.

  • 出版商: Morgan Kaufmann
  • 出版日期: 2025-08-13
  • 售價: $5,000
  • 貴賓價: 9.5$4,750
  • 語言: 英文
  • 頁數: 244
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 0443364060
  • ISBN-13: 9780443364068
  • 相關分類: Data-mining
  • 海外代購書籍(需單獨結帳)

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商品描述

Managing human resources, time allocation, and risk management in R&D projects, particularly in Artificial Intelligence/Machine Learning/Data Analysis, poses unique challenges. Key areas such as model design, experimental planning, system integration, and evaluation protocols require specialized attention. In most cases, the research tends to focus primarily on one of the two main aspects: either the technical aspect of AI/ML/DA or the teams' effort, or the typical management aspect and team members' roles in such a project. Both are equally import for successful real-world R&D, but they are rarely examined together and tightly correlated. Data Science for Teams: 20 Lessons from the Fieldwork addresses the issue of how to deal with all these aspects within the context of real-world R&D projects, which are a distinct class of their own. The book shows the everyday effort within the team, and the adhesive substance in between that makes everything work. The core material in this book is organized over four main Parts with five Lessons each. Author Harris Georgiou goes into the difficulties progressively and dives into the challenges one step at a time, using a typical timeline profile of an R&D project as a loose template. From the formation of a team to the delivery of final results, whether it is a feasibility study or an integrated system, the content of each Lesson revisits hints, ideas and events from real-world projects in these fields, ranging from medical diagnostics and big data analytics to air traffic control and industrial process optimization. The scope of DA and ML is the underlying context for all, but most importantly the main focus is the team: how its work is organized, executed, adjusted, and optimized. Data Science for Teams presents a parallel narrative journey, with an imaginary team and project assignment as an example, running an R&D project from day one to its finish line. Every Lesson is explained and demonstrated within the team narrative, including personal hints and paradigms from real-world projects.

商品描述(中文翻譯)

在研發專案中管理人力資源、時間分配和風險管理,特別是在人工智慧/機器學習/數據分析領域,面臨著獨特的挑戰。模型設計、實驗規劃、系統整合和評估協議等關鍵領域需要專門的關注。在大多數情況下,研究往往主要集中在兩個主要方面之一:要麼是AI/ML/DA的技術面,或是團隊的努力,或者是典型的管理面向及團隊成員在此類專案中的角色。這兩者對於成功的實際研發同樣重要,但它們很少被一起檢視且緊密相關。《Data Science for Teams: 20 Lessons from the Fieldwork》探討了如何在實際研發專案的背景下處理所有這些方面,這是一個獨特的類別。這本書展示了團隊中的日常努力,以及使一切運作的黏合劑。書中的核心材料分為四個主要部分,每部分包含五個課程。作者Harris Georgiou逐步深入困難,並逐步探討挑戰,使用研發專案的典型時間線作為鬆散的模板。從團隊的組建到最終結果的交付,無論是可行性研究還是整合系統,每個課程的內容都重新檢視了來自這些領域的實際專案中的提示、想法和事件,範圍涵蓋醫療診斷、大數據分析、空中交通管制和工業流程優化。數據分析和機器學習的範疇是所有內容的基礎背景,但最重要的是主要焦點是團隊:其工作如何組織、執行、調整和優化。《Data Science for Teams》呈現了一個平行的敘事旅程,以一個虛構的團隊和專案任務作為例子,從第一天開始運行一個研發專案直到完成。每個課程都在團隊敘事中進行解釋和示範,包括來自實際專案的個人提示和範式。