Nathan Yau 加州大學洛杉磯分校統計學專業在讀博士、超級數據迷,專注於數據可視化與個人數據收集。他曾在《紐約時報》、CNN、Mozilla和SyFy工作過,認為數據和信息圖不僅適用於分析,用來講述與數據有關的故事也非常閤適。Yau的目標是讓非專業人士讀懂並用好數據。他創建瞭一個設計、可視化和統計方麵的博http://flowingdata.com,你可以從中欣賞到他最新的數據可視化實驗作品。
嚮怡寜 交互和視覺設計師、搖滾樂手,同時還熱衷於翻譯和寫作。著有《Flash組件、遊戲、SWF加解密》及《就這麼簡單:Web開發中的可用性和用戶體驗》,譯有《奇思妙想:15位計算機天纔及其重大發現》、《瞬間之美:Web界麵設計如何讓用戶心動》、《網站設計解構:有效的交互設計框架和模式》、《網站搜索設計:兼顧SEO及可用性的網站設計心得》等書。他認為“一個不會彈吉他的設計師不是個好譯者”。
Practical data design tips from a data visualization expert of the modern age Data doesn?t decrease; it is ever-increasing and can be overwhelming to organize in a way that makes sense to its intended audience. Wouldn?t it be wonderful if we could actually visualize data in such a way that we could maximize its potential and tell a story in a clear, concise manner? Thanks to the creative genius of Nathan Yau, we can. With this full-color book, data visualization guru and author Nathan Yau uses step-by-step tutorials to show you how to visualize and tell stories with data. He explains how to gather, parse, and format data and then design high quality graphics that help you explore and present patterns, outliers, and relationships. Presents a unique approach to visualizing and telling stories with data, from a data visualization expert and the creator of flowingdata.com, Nathan Yau Offers step-by-step tutorials and practical design tips for creating statistical graphics, geographical maps, and information design to find meaning in the numbers Details tools that can be used to visualize data-native graphics for the Web, such as ActionScript, Flash libraries, PHP, and JavaScript and tools to design graphics for print, such as R and Illustrator Contains numerous examples and descriptions of patterns and outliers and explains how to show them Visualize This demonstrates how to explain data visually so that you can present your information in a way that is easy to understand and appealing.
From the Author: Telling Stories with Data
Author Nathan Yau A common mistake in data design is to approach a project with a visual layout before looking at your data. This leads to graphics that lack context and provide little value. Visualize This teaches you a data-first approach. Explore what your data has to say first, and you can design graphics that mean something.
Visualization and data design all come easier with practice, and you can advance your skills with every new dataset and project. To begin though, you need a proper foundation and know what tools are available to you (but not let them bog you down). I wrote Visualize This with that in mind.
You'll be exposed to a variety of software and code and jump right into real-world datasets so that you can learn visualization by doing, and most importantly be able to apply what you learn to your own data.
Three Data Visualization Steps:
1) Ask a Question
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When you get a dataset, it sometimes is a challenge figuring out where to start, especially when it's a large dataset. Approach your data with a simple curiosity or a question that you want answered, and go from there.
2) Explore Your Data
(Click Graphic to See Larger Version)
A simple curiosity often leads to more questions, which are a good guide for what stories to dig into. What variables are related to each other? Can you see changes over time? Are there any features in the data that stand out? Find out all you can about your data, because the more you know what's behind the numbers, the better story you can tell.
3) Visualize Your Data
(Click Graphic to See Larger Version)
Once you know the important parts of your data, you can design graphics the best way you see fit. Use shapes, colors, and sizes that make sense and help tell your story clearly to readers. While the base of your charts and graphs will share many of the same properties – bars, slices, dots, and lines – the final design elements will and should vary by your unique dataset.
發表於2024-12-26
Visualize This 2024 pdf epub mobi 電子書 下載
[作者] Nathan Yau 博士 超級數據迷 flowingdata.com ================================= [本書思路] 數據可視化的作用 -> 處理數據 -> 各樣式的數據可視化 ================================= [摘抄]: 1 從數據中獲得什麼{ 模式、相互關係、有問題的數據 } 2 數據來源 { ...
評分一些圖形對於R用戶來說,不是有多難,沒有看到用巧思妙想來展示可視化數據化,圖!=可視化。這一點我個人有點體會。比如http://xccds1977.blogspot.com/2012/07/blog-post_26.html這篇文章,粗看很炫,可實際效用多少呢,滿屏滿屏的綫條,能說明什麼呢。 這裏無意冒犯誰,因為...
評分粗略將書看瞭一遍,著重看瞭幾個例子的實現,還沒動手實踐。貫穿書中的數據可視化標準步驟可能就是:Python采集數據,R生成草圖,最後illustrator refine。 後麵計劃將書中實例都好好實踐一遍,細細評味下書中對各種chart的選擇、評價...
評分圖書標籤: visualization 數據可視化 數據圖形化 infographic 設計 數據分析 Data 可視化圖形
總體來說不錯,但沒期望的那麼好。 主題有些分散瞭。
評分繼上次的幻燈片之禪的流行, 這次可能會來個數據可視化之禪什麼的.
評分總體來說不錯,但沒期望的那麼好。 主題有些分散瞭。
評分有點兒意思(仍然痛恨flash)
評分很早之前就翻完瞭。講述瞭如何從數據到統計圖錶,到最終美觀的信息圖。難度不高,內容不深,但很完整,值得一讀~~
Visualize This 2024 pdf epub mobi 電子書 下載