Peter Harrington holds Bachelors and Masters Degrees in Electrical Engineering. He worked for Intel Corporation for seven years in California and China. Peter holds five US patents and his work has been published in three academic journals. He is currently the chief scientist for Zillabyte Inc. Peter spends his free time competing in programming competitions, and building 3D printers.
It's been said that data is the new "dirt"—the raw material from which and on which you build the structures of the modern world. And like dirt, data can seem like a limitless, undifferentiated mass. The ability to take raw data, access it, filter it, process it, visualize it, understand it, and communicate it to others is possibly the most essential business problem for the coming decades.
"Machine learning," the process of automating tasks once considered the domain of highly-trained analysts and mathematicians, is the key to efficiently extracting useful information from this sea of raw data. By implementing the core algorithms of statistical data processing, data analysis, and data visualization as reusable computer code, you can scale your capacity for data analysis well beyond the capabilities of individual knowledge workers.
Machine Learning in Action is a unique book that blends the foundational theories of machine learning with the practical realities of building tools for everyday data analysis. In it, you'll use the flexible Python programming language to build programs that implement algorithms for data classification, forecasting, recommendations, and higher-level features like summarization and simplification.
As you work through the numerous examples, you'll explore key topics like classification, numeric prediction, and clustering. Along the way, you'll be introduced to important established algorithms, such as Apriori, through which you identify association patterns in large datasets and Adaboost, a meta-algorithm that can increase the efficiency of many machine learning tasks.
發表於2025-01-31
Machine Learning in Action 2025 pdf epub mobi 電子書 下載
這本書最大的優點在於有源碼實現,很贊,但是理論部分太差瞭,看瞭邏輯迴歸和支持嚮量機兩章,發現好多理論都沒講,就比如邏輯迴歸中的Cost函數都沒說,如果不瞭解,源碼讀起來也是一頭霧水,所以對於初學者還需要一本理論較強的書,推薦李航博士的統計機器學習方法,剛好配套~
評分特彆適閤新手,特彆適閤新手,特彆適閤新手。長度適中,舉例形象,概念淺顯通俗。難得有一個條理清楚 邏輯不迷糊 不堆砌代碼打哈哈的書。基於這個理由bonus給五星,以後給彆人推薦就這本瞭。 尤其是前麵幾章,介紹機器學習的基本概念。作者給我們指明瞭一個做ML的基本要求:“...
評分Machine Learning這門科學範圍很大,不大可能有一本書能在這個主題麵麵俱到。初學者需要先瞭解機器學習的範圍,再比較淺顯的去知道背後的理論基礎,之後再儘可能挖掘每一種算法的形成與直觀意義。在我閱讀過的機器學習書籍中,這本書與O'Reilly的Data Science From Scratch比較...
評分如果你是機器學習的入門者,如果你想快速看到算法的執行效果,那麼這本書適閤你。 作者把算法的基本原理講的很清楚,而且代碼是完整可執行的。當然,如果你想瞭解算法背後的數學原理,還需要花時間去復習一下概率論、高等數學和綫性代數。 BTW:讀者最好有編程經驗,有抽象思維。
評分如果你是機器學習的入門者,如果你想快速看到算法的執行效果,那麼這本書適閤你。 作者把算法的基本原理講的很清楚,而且代碼是完整可執行的。當然,如果你想瞭解算法背後的數學原理,還需要花時間去復習一下概率論、高等數學和綫性代數。 BTW:讀者最好有編程經驗,有抽象思維。
圖書標籤: 機器學習 MachineLearning 數據挖掘 python 人工智能 Python 計算機科學 算法
一般般
評分內容比較基礎,有py代碼,對著看比較容易理解。
評分是本好書,有些章節還看的不是最明白。值得反復閱讀
評分看這書可以同時入門機器學習,python,mapreduce,作者可以幾個方麵都講清楚,真不容易
評分一般般
Machine Learning in Action 2025 pdf epub mobi 電子書 下載