There's been a massive amount of innovation in data tools over the last few years, thanks to a few key trends: * *Learning from the web*. Techniques originally developed by website developers coping with scaling issues are increasingly being applied to other domains. * *CS+?=$$$*. Google have proven that research techniques from computer science can be effective at solving problems and creating value in many real-world situations. That's led to increased interest in cross-pollination and investment in academic research from commercial organizations. * *Cheap hardware*. Now that machines with a decent amount of processing power can be hired for just a few cents an hour, many more people can afford to do large-scale data processing. They can't afford the traditional high prices of professional data software though, so they've turned to open-source alternatives. These trends have led to a Cambrian Explosion of new tools, which means when you're planning a new data project you have a lot to choose from. This guide aims to help you make those choices by describing each tool from the perspective of a developer looking to use them in an application. Wherever possible, this will be from my first-hand experiences, or from colleagues who have used the systems in production environments. I've made a deliberate choice to include my own opinions and impressions, so you should see this guide as a starting point for exploring the tools, not the final word. I'll do my best to explain what I like about each service but your tastes and requirements may well be quite different. Since the goal is to help experienced engineers navigate the new data landscape, the guide only covers tools that have been created or risen to prominence in the last few years. For example, PostGres is not covered because it's been widely used for over a decade, but its Greenplum derivative is newer and less well-known, so it is included.
發表於2024-11-24
Big Data Glossary 2024 pdf epub mobi 電子書 下載
在NoSql FANS上曾經看過一本2010年初期寫作好的一本小冊子 http://vdisk.weibo.com/s/v20v/1312705849 NoSQL數據庫筆談v2.pdf,很有價值。 類似的說,這本56頁篇幅,卻有11章的小冊子的作用與上麵的那篇文檔價值類似。 一言以蔽之,這是一本--選型階段必讀的兵器譜 內容涵...
評分在NoSql FANS上曾經看過一本2010年初期寫作好的一本小冊子 http://vdisk.weibo.com/s/v20v/1312705849 NoSQL數據庫筆談v2.pdf,很有價值。 類似的說,這本56頁篇幅,卻有11章的小冊子的作用與上麵的那篇文檔價值類似。 一言以蔽之,這是一本--選型階段必讀的兵器譜 內容涵...
評分在NoSql FANS上曾經看過一本2010年初期寫作好的一本小冊子 http://vdisk.weibo.com/s/v20v/1312705849 NoSQL數據庫筆談v2.pdf,很有價值。 類似的說,這本56頁篇幅,卻有11章的小冊子的作用與上麵的那篇文檔價值類似。 一言以蔽之,這是一本--選型階段必讀的兵器譜 內容涵...
評分在NoSql FANS上曾經看過一本2010年初期寫作好的一本小冊子 http://vdisk.weibo.com/s/v20v/1312705849 NoSQL數據庫筆談v2.pdf,很有價值。 類似的說,這本56頁篇幅,卻有11章的小冊子的作用與上麵的那篇文檔價值類似。 一言以蔽之,這是一本--選型階段必讀的兵器譜 內容涵...
評分在NoSql FANS上曾經看過一本2010年初期寫作好的一本小冊子 http://vdisk.weibo.com/s/v20v/1312705849 NoSQL數據庫筆談v2.pdf,很有價值。 類似的說,這本56頁篇幅,卻有11章的小冊子的作用與上麵的那篇文檔價值類似。 一言以蔽之,這是一本--選型階段必讀的兵器譜 內容涵...
圖書標籤: BigData O'Reilly 數據挖掘 數據庫 計算機科學 大數據 計算機 互聯網
愛的數據工具簡易指南,估計寫瞭不到兩周,問題是62頁咋好意思賣19.9usd呢,可見和大數據沾上邊啥都能變現pian qian
評分可以對BigData領域有個初步瞭解
評分不錯的索引
評分index
評分一張BigData世界的全局縮略圖,可惜2011年的齣的書已經過時瞭
Big Data Glossary 2024 pdf epub mobi 電子書 下載