Life as a Data Scientist!

Well,I keep getting emails or linkedin messages asking what I do as part of my daily life as a data scientist.Being a lazy writer I avoid answering in detail,although I know that there are lot to tell actually.

Is it something like this? Not actually,but yes at times!

 Is it something like this? well,quite likely!Just like avengers you may end up becoming superheros in many different fields,or just like an actor you get to live the life of different characters.You can lead the life of a hacker,a journalist,a scientist,a business analyst,a developer,a miner,a purchase manager,an artist and may be the life of a celebrity.

Let me explain why it is so.If you read any internet article or white paper that will tell you data science is all about 70-80% data manipulation and 30-20% machine learning.So it is obvious that you should be doing data munging and machine learning (model building) a lot.I will try to tell what it doesn’t say.

 Data munging purely depends on from where the data comes,if your data source is external (such as 3rd party website,for which your company isn’t ready to spend a dime) you have to know web scrapping.Web scrapping can be of different type.In some cases the website owner will be kind enough to make the data available using GET protocol itself.Others may not be that generous and those are the cases where you may have to use python packages like suds (which may break because of lack of maintenance and can come up with different github fork by a fan,but that’s another story).The website might be having the data in a interactive manner in which case packages like selenium will be your saving grace.Also different webapi,text extraction packages will be useful at times depending on the nature of the website.So you really have to be a hacker (white-hat obviously) in your heart for this!

Yes,you get to lead the life of a jurno as well.Most of the analytic projects nowadays involve having interviews with people who have done related stuff.So don’t be astonished if you have to arrange such interviews with some eminent professors or researchers and if you literally have to take notes during such hour long interviews.

 You will lead the life of researcher quite often.Cases like these can occur in different situations when you realize that a minor improvement in a recent research paper on noise removal from data could be useful in your project or coming out with a novel text categorization nlp work or innovating a feature selection mechanism that could be only useful for your particular project or creating altogether a brand new award wining classifier/regressor like xgboost.So yes,the Scientist tag in Data Scientist is there for a reason.Although it varies from project to project, but 5-15% of total time should be a fair estimate.

 Unfortunately a large chunk of time you’d have to spend as part of your job will be sitting with your clients and fellow business analyst,virtually playing the role of another business analyst to understand their requirement.They will often have a notion that a data scientist is nothing other than a superman fortune teller who should’t even need historical data to predict future result.Often you may end up trying really hard to convince the fellow business analyst that he is actually not a data scientist and it’s rather your job.A strong coffee at times might be of your real help during those long meetings in this role playing!

 Well,you have to become a heck of a programmer to deal with different type of data in different granularity to put them in a 2D format on which machine learning algorithms (classification,regression or clustering) can actually work.If you aren’t from computer science background you’ll generally start with R for its ease of use,but gradually you will make friendship with python for different reasons.After few months with these languages in your armor when you’ll start feeling safe and secure,one fine morning a colleague of yours will tell you that,we must learn Scala for some other work.To irritate you further some of your friends will tell you about advent of faster languages on the horizon such as Julia ,Go and F#.You may feel clueless at that time,but I’ll leave you to deal with your haplessness yourself.Probably it’s the time when you’ll realize that just like a pretty woman a beautiful programming language also comes in your life with her own imperfection.

 If that is not all big data gives you the feeling of a data miner with its vastness.You make yourself,your boss and your IT guys happy as long as you remain composed with traditional big data mining tools such as hive and pig.However to make the matter worse that colleague and some of your friend will keep telling you how awesome the latest apache project is and how fast it will disrupt the existing one.You’ll get happy when you’ll learn apache spark for its speed but months later it’ll give you headache when you’ll learn that you have to unlearn that for another awesome technology.Eventually you’ll forward this demand to you IT setup guys to make their life equally challenging.

 Yes,you get to play the role of a purchase manager as well when you have to be present in regular demo sessions arranged by your company where sales persons from different big data/machine learning product companies will try to impress you with the awesomeness of their tools.It’s altogether a different case when at the end of the day while using that tool you’ll realize that you are doing more bug reporting than actually using the tool successfully.

 Needless to say the hidden artist inside you,who used to draw crappy paintings in school or rather worse looking replica of his teenage girlfriend will finally get to use his artistic sense in real commercial place.Your boss will keep pushing you to create state of the art visualizations using Tableu,Trifacta,Oracle BDD or D3 only to cause a havoc confusion inside you “What is the expectation from me,am I a programmer,a data expert or an artist !!”.

 Considering all these the best part of being a data scientist is often you get the treatment of a celebrity when you log in to your linkedin profile.The sheer number of messages from recruiters trying to pull/place you in a different company will definitely give you the feeling of a celebrity.On top of that you might end up getting invitation from data science based conferences to grace them with your presence as speaker! So typical celeb life nonetheless.

 At the end, it will be unfair to not mention wannabe data scientists and their numerous questions that will inspire you to write such blogs which should once and for all relieve you from answering such questions requiring detailed answers.

Author: Tanay Chowdhury

Data Scientist by profession & passion.Love to do programming,hacking,hiking and writing blog!

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