What are the relevant skills in the arsenal of a Data Scientist? With new technologies coming in every day, how does one pick and choose the essentials?

A few ideas germane to this discussion:

  • Knowing SQL and the use of a DB such as MySQL, PostgreSQL was great till the advent of NoSql and non-relational databases. MongoDB, CouchDB etc. are becoming popular to work with web-scale data.
  • Knowing a stats tool like R is enough for analysis, but to create applications one may need to add Java, Python, and such others to the list.
  • Data now comes in the form of text, urls, multi-media to name a few, and there are different paradigms associated with their manipulation.
  • What about cluster computing, parallel computing, the cloud, Amazon EC2, Hadoop ?
  • OLS Regression now has Artificial Neural Networks, Random Forests and other relatively exotic machine learning/data mining algos. for company


closed as off-topic by Huangism, hrbrmstr, raukodraug, Mad Physicist, Kirk Broadhurst Sep 26 '14 at 21:52

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "Questions about general computing hardware and software are off-topic for Stack Overflow unless they directly involve tools used primarily for programming. You may be able to get help on Super User." – Huangism, hrbrmstr, raukodraug, Mad Physicist, Kirk Broadhurst
If this question can be reworded to fit the rules in the help center, please edit the question.

  • 6
    In my experience, the skills required to satisfy a particular job title are often vastly different than the skills required to satisfy a particular job (which are often vastly different from what is written in the job description). – Seth May 18 '10 at 19:18
  • Is this a question? Or more of a statement about skills of a Data Scientist that may or may not be relevant? – Stedy May 18 '10 at 20:47
  • 1
    I think this should have the subjective tag thrown on there. – mcpeterson May 18 '10 at 21:19

11 Answers 11


To quote from the intro to Hadley's phd thesis:

First, you get the data in a form that you can work with ... Second, you plot the data to get a feel for what is going on ... Third, you iterate between graphics and models to build a succinct quantitative summary of the data ... Finally, you look back at what you have done, and contemplate what tools you need to do better in the future

Step 1 almost certainly involves data munging, and may involve database accessing or web scraping. Knowing people who create data is also useful. (I'm filing that under 'networking'.)

Step 2 means visualisation/ plotting skills.

Step 3 means stats or modelling skills. Since that is a stupidly broad category, the ability to delegate to a modeller is also a useful skill.

The final step is mostly about soft skills like introspection and management-type skills.

Software skills were also mentioned in the question, and I agree that they come in very handy. Software Carpentry has a good list of all the basic software skills you should have.


Just to throw in some ideas for others to expound upon:

At some ridiculously high level of abstraction all data work involves the following steps:

  • Data Collection
  • Data Storage/Retrieval
  • Data Manipulation/Synthesis/Modeling
  • Result Reporting
  • Story Telling

At a minimum a data scientist should have at least some skills in each of these areas. But depending on specialty one might spend a lot more time in a limited range.

  • 9
    +1 for Story Telling. Any monkey with a calculator can crunch the numbers. You distinguish yourself by communicating what the numbers mean. – Kennet Belenky May 18 '10 at 22:01
  • Kennet, as an economist I often describe my job as ex post story telling. I'm like Tom T Hall but without the guitar... or the talent ;) – JD Long May 19 '10 at 14:10
  • 3
    I would add to the third bullet "data cleaning" – Tal Galili May 19 '10 at 18:03
  • 4
    I would also add "Understanding how to ask a question, solveable by data" – kpierce8 May 20 '10 at 3:35

JD's are great, and for a bit more depth on these ideas read Michael Driscoll's excellent post The Three Sexy Skills of Data Geeks:

  1. Skill #1: Statistics (Studying)
  2. Skill #2: Data Munging (Suffering)
  3. Skill #3: Visualization (Story telling)
  • Mike's Sexy Skills post very much influenced my thinking in this area. I'm glad you linked to it. – JD Long May 19 '10 at 14:12
  • Its amazing how much mileage that story got by calling data geeks sexy. Well, I know I am. – kpierce8 May 20 '10 at 3:37
  • yeah I totally was drawn to the sexy... cerebralmastication.com/2009/02/… – JD Long May 20 '10 at 17:33

At dataist the question is addressed in a general way with a nice Venn diagram:

venn diagram


JD hit it on the head: Storytelling. Although he did forget the OTHER important story: the story of why you used <insert fancy technique here>. Being able to answer that question is far and away the most important skill you can develop.

The rest is just hammers. Don't get me wrong, stuff like R is great. R is a whole bag of hammers, but the important bit is knowing how to use your hammers and whatnot to make something useful.


I think it's important to have command of a commerial database or two. In the finance world that I consult in, I often see DB/2 and Oracle on large iron and SQL Server on the distributed servers. This basically means being able to read and write SQL code. You need to be able to get data out of storage and into your analytic tool.

In terms of analytical tools, I believe R is increasingly important. I also think it's very advantageous to know how to use at least one other stat package as well. That could be SAS or SPSS... it really depends on the company or client that you are working for and what they expect.

Finally, you can have an incredible grasp of all these packages and still not be very valuable. It's extremely important to have a fair amount of subject matter expertise in a specific field and be able to communicate to relevant users and managers what the issues are surrounding your analysis as well as your findings.


Matrix algebra is my top pick

  • Interesting - why would you say that ? – Tal Galili May 19 '10 at 18:25
  • It's pretty important to understand several concepts in data analysis, such as regression, optimization (ex linear programming), image/video processing, or even how google's pagerank works. – Neil McGuigan May 19 '10 at 20:05
  • The ability to collaborate.

Great science, in almost any discipline, is rarely done by individuals these days.

  • great point. Certain professions tend to attract individuals who have been the "smartest guy in the room" for so long they have a lot of trouble taking input from others. This is a huge handicap. – JD Long May 19 '10 at 14:13

There are several computer science topics that are useful for data scientists, many of them have been mentioned: distributed computing, operating systems, and databases.

Analysis of algorithms, that is understanding the time and space requirements of a computation, is the single most-important computer science topic for data scientists. It's useful for implementing efficient code, from statistical learning methods to data collection; and determining your computational needs, such as how much RAM or how many Hadoop nodes.


Patience - both for getting results out in a reasonable fashion and then to be able to go back and change it for what was 'actually' required.


Study Linear Algebra on MIT Open course ware 18.06 and substitute your study with the book "Introduction to Linear Algebra". Linear Algebra is one of the essential skill sets in data analytic in addition to skills mentioned above.

Not the answer you're looking for? Browse other questions tagged or ask your own question.