IT大牛告诉你一天内能学些什么

本文提供了一套在单日内可以掌握的技术技能列表,涵盖了从阅读手册到实现基础算法、数据库操作、图形处理等,旨在帮助程序员在短时间内提升技能水平。

Learn these technical skills within one day

Source : sonic0002    Date : 2014-06-12 09:33:15  

It takes days and days reading books, practicing and involving in real project if you want to learn a programming language well. It's just like a marathon, you will get more if you can insist longer. During this long and boring period, there are always something you can learn within a short period of time, like within one day. These skills can bring your big satisfaction.

Below are a list of technical skills which you can pick up within one single day, they are advocated by Jacob Jensen, a Googler.

  • Read the freaking manual for your favorite language. In the past I've wasted hours in Python because I didn't know that the Counter data structure existed, and kept getting the bugs from using Dicts as Counters. There are many examples like this.
  • Get a stackoverflow account and learn to use the site. If you don't at least know that StackOverflow is an available resource, and you're an english-speaking programmer, you're doing it wrong.
  • Implement a simple Machine learning algorithm on your own, with a whole pipeline. I.e. you read a simple input csv, split it into training and test set, run a simple algorithm with readily-tuneable or explorable hyperparameters, and a simple output of relevant statistics.
  • Learn the how to make a simple line graph in Excel, and make sure you can do it right; i.e. properly labeled axes and tick marks, title and legends.
  • Learn how to make a simple line graph in something other than Excel. Make sure you can do it right (same requirements).
  • Get your eclipse installation fully pumped up: python dev tools, c dev tools, any other language you could ever write in, and make sure you can write a hello world successfully in each perspective. It'll save you time some future day.
  • Learn the basic functionality of a NoSQL database; (you can learn a big chunk of mongoDB in a day)
  • Learn the most basic functionality of SQL (you don't need to be a query guru,  but have a small clue about it).
  • Learn a tool for in-depth parsing of HTML and XML
  • Implement a list-of-lists graph data structure
  • Implement random walk, PageRank, clustering coefficient finding (#triangles over possible triangles) and common neighbor number finding.
  • Implement BFS, DFS, Shortest Path, topological sort and Minimum Spanning Tree (bonus for union-find version). Take a couple days if you have no algorithms background.
  • Make a simple java applet that has at least some interaction with listeners and not just buttons and such.

So go and try out, you will be surprised of what you can do after one day's hard work.

原始链接: http://www.pixelstech.net/article/1402583572-Learn-these-technical-skills-within-one-day

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