楼主: oliyiyi
1224 0

9 Must-Have Skills You Need to Become a Data Scientist [推广有奖]

版主

已卖:2994份资源

泰斗

1%

还不是VIP/贵宾

-

TA的文库  其他...

计量文库

威望
7
论坛币
84105 个
通用积分
31671.0967
学术水平
1454 点
热心指数
1573 点
信用等级
1364 点
经验
384134 点
帖子
9629
精华
66
在线时间
5508 小时
注册时间
2007-5-21
最后登录
2025-7-8

初级学术勋章 初级热心勋章 初级信用勋章 中级信用勋章 中级学术勋章 中级热心勋章 高级热心勋章 高级学术勋章 高级信用勋章 特级热心勋章 特级学术勋章 特级信用勋章

楼主
oliyiyi 发表于 2016-7-3 11:10:30 |AI写论文

+2 论坛币
k人 参与回答

经管之家送您一份

应届毕业生专属福利!

求职就业群
赵安豆老师微信:zhaoandou666

经管之家联合CDA

送您一个全额奖学金名额~ !

感谢您参与论坛问题回答

经管之家送您两个论坛币!

+2 论坛币

Burtch Works details the top 9 data science skills that potential data scientists must have to be competitive in this growing marketplace from the perspective of a recruiter.

By Linda Burtch, Burtch Works.
Editor's note: While this is still a useful and engaging read, a newer version of this post is available here.

Over the past year, interest in data science has soared.Nate Silver is a household name, companies everywhere aresearching for unicorns, and professionals in many different disciplines have begun eyeing the well-salaried profession as a possible career move.

In our recruiting searches here at Burtch Works, we’ve spoken to many analytics professionals who are considering adapting their skills to the growing field of data science, and have questions about how to do so. From my perspective as a recruiter, I wanted to put together a list of technical and non-technical skills that are critical to success in data science, and at the top of hiring managers’ lists.

Every company will value skills and tools a bit differently, and this is by no means an exhaustive list, but if you have experience in these areas you will be making a strong case for yourself as a data science candidate.

Technical Skills: Analytics

  • Education – Data scientists are highly educated – 88% have at least a Master’s degree and 46% have PhDs – and while there are notable exceptions, a very strong educational background is usually required to develop the depth of knowledge necessary to be a data scientist. Their most common fields of study are Mathematics and Statistics (32%), followed by Computer Science (19%) and Engineering (16%).
  • SAS and/or R – In-depth knowledge of at least one of these analytical tools, for data science R is generally preferred.


Technical Skills: Computer Science

  • Python Coding – Python is the most common coding language I typically see required in data science roles, along with Java, Perl, or C/C++.
  • Hadoop Platform – Although this isn’t always a requirement, it is heavily preferred in many cases. Having experience with Hive or Pig is also a strong selling point. Familiarity with cloud tools such as Amazon S3 can also be beneficial.
  • SQL Database/Coding – Even though NoSQL and Hadoop have become a large component of data science, it is still expected that a candidate will be able to write and execute complex queries in SQL.
  • Unstructured data – It is critical that a data scientist be able to work with unstructured data, whether it is from social media, video feeds or audio.


Non-Technical Skills

  • Intellectual curiosity – No doubt you’ve seen this phrase everywhere lately, especially as it relates to data scientists. Frank Lo describes what it means, and talks about other necessary “soft skills” in his guest blog posted a few months ago.
  • Business acumen – To be a data scientist you’ll need a solid understanding of the industry you’re working in, and know what business problems your company is trying to solve. In terms of data science, being able to discern which problems are important to solve for the business is critical, in addition to identifying new ways the business should be leveraging its data.
  • Communication skills – Companies searching for a strong data scientist are looking for someone who can clearly and fluently translate their technical findings to a non-technical team, such as the Marketing or Sales departments. A data scientist must enable the business to make decisions by arming them with quantified insights, in addition to understanding the needs of their non-technical colleagues in order to wrangle the data appropriately. Check out our recent flash survey for more information on communication skills for quantitative professionals.




The next question I always get is, “What can I do to develop these skills?” There are many resources around the web, but I don’t want to give anyone the mistaken impression that the path to data science is as simple as taking a few MOOCs. Unless you already have a strong quantitative background, the road to becoming a data scientist will be challenging – but not impossible.

However, if it’s something you’re sincerely interested in, and have a passion for data and lifelong learning, don’t let your background discourage you from pursuing data science as a career. Here are a few of the resources we’ve found to be helpful:

Resources

  • Advanced Degree – More Data Science programs are popping up to serve the current demand, but there are also many Mathematics, Statistics, and Computer Scienceprograms.
  • MOOCsCoursera, Udacity, and codeacademy are good places to start.
  • Certifications – KDnuggets has compiled an extensive list.
  • Bootcamps – For more information about how this approach compares to degree programs or MOOCs, check out this guest blog from the data scientists at Datascope Analytics.
  • KaggleKaggle hosts data science competitions where you can practice, hone your skills with messy, real world data, and tackle actual business problems. Employers take Kaggle rankings seriously, as they can be seen as relevant, hands-on project work.
  • LinkedIn Groups – Join relevant groups to interact with other members of the data science community.
  • Data Science Central and KDnuggetsData Science Central and KDnuggets are good resources for staying at the forefront of industry trends in data science.
  • The Burtch Works Study: Salaries of Data Scientists – If you’re looking for more information about the salaries and demographics of current data scientists be sure todownload our data scientist salary study.


I’m sure there are items I may have missed, so if there’s a crucial skill or resource you think would be helpful to any data science hopefuls, feel free to share it in the comments below!

Original: http://www.burtchworks.com/2014/11/17/must-have-skills-to-become-a-data-scientist/


二维码

扫码加我 拉你入群

请注明:姓名-公司-职位

以便审核进群资格,未注明则拒绝

关键词:Scientist become skills Skill kills household different available companies potential

缺少币币的网友请访问有奖回帖集合
https://bbs.pinggu.org/thread-3990750-1-1.html

您需要登录后才可以回帖 登录 | 我要注册

本版微信群
加好友,备注jltj
拉您入交流群
GMT+8, 2025-12-26 00:02