When I tell people that I interned as a Data Scientist over the summer, the first question I get asked is, "Can you tell me who's going to win the 52nd Super Bowl?"
Data scientists appear to be wizards who whip out their crystal ball (MacBook Pro), chant some mumbo-jumbo (machine learning, big data, and automation) and make accurate predictions of what the future will hold. But, I would like you to know that data science is not magic and that I'm no magician.
A data scientist draws information, or business insight, from raw data. One should develop a deep understanding of statistics and computer science as well as gain industry knowledge to conduct such work.
There are three kinds of responsibilities that sum up the bread and butter of data scientists:
Data Structuring
Structuring the data generally takes the most time, it involves:
Data Analytics
Analytics is the glory work we love to talk about, it entails:
Data Visualization
We use visualizations to share our findings with the outside world, it includes:
Readability
Flesch Reading Ease: 57
Flesh-Kincaid Grade Level: 10.2
Passive Sentences: 0%
Data scientists appear to be wizards who whip out their crystal ball (MacBook Pro), chant some mumbo-jumbo (machine learning, big data, and automation) and make accurate predictions of what the future will hold. But, I would like you to know that data science is not magic and that I'm no magician.
A data scientist draws information, or business insight, from raw data. One should develop a deep understanding of statistics and computer science as well as gain industry knowledge to conduct such work.There are three kinds of responsibilities that sum up the bread and butter of data scientists:
- Data Structuring
- Data Analytics
- Data Visualization
Data Structuring
Structuring the data generally takes the most time, it involves:
- Tracking appropriate metrics for the business
- Storing data on suitable platforms
- Correcting data anomalies
Data Analytics
Analytics is the glory work we love to talk about, it entails:
- Developing or applying algorithms (fancy word for a set of rules)
- Extracting underlying patterns from the model
- Using theoretical knowledge to predict the future state
Data Visualization
We use visualizations to share our findings with the outside world, it includes:
- Creating charts and infographics that summarize data
- Programming interactive elements into visualizations that enable customization
- Automating dashboards to help decision making
Readability
Flesch Reading Ease: 57
Flesh-Kincaid Grade Level: 10.2
Passive Sentences: 0%
Hi, Raghav! I never really understood what it meant to be a data scientist, but now I have a better idea. Your job involved a unique mix of cold hard facts as well as creativity and curiosity.
ReplyDeleteHaha I love the crystal ball comparison you have here. I also feel that you made the descirption super simple for someone to read and love how you went into specific details about what you did! Super interesting.
ReplyDeleteHi Raghav! Are you familiar with ML algorithms? If so, I would love to connect with you. Having a solid skillset as a data scientist is immensely valuable in the age of information. It is important for people to know how to make sense of structured and unstructured sources of data. A company that has taken an innovative approach to data visualization is called Zoomdata. I encourage you to check them out! I like how you emphasize and value simplicity. It is truly admirable. There is a quote that I like which says, "Less is more".
ReplyDeleteHey Raghav! So as a matter of fact, I have been always interested in combining my business knowledge with Data Science. Quick question, what got you into managing and analyzing data? Also fantastic job in making this super easy to understand. Otherwise I would have just glanced through it but I was really able to take away what you were saying
ReplyDeleteHey Raghav! So as a matter of fact, I have been always interested in combining my business knowledge with Data Science. Quick question, what got you into managing and analyzing data? Also fantastic job in making this super easy to understand. Otherwise I would have just glanced through it but I was really able to take away what you were saying
ReplyDeleteHey Raghav, it was so cool that you were able to intern as a data scientist this past summer. This was very relevant for me as I am currently taking a minor in data analytics and find the classes to be so much fun. Reading your blog post really allowed me to see the more real world application, and insights into the job. Thus upon graduation, I am hoping to be able to work as a data scientist at a big business firm where I can combine my skillset learned from both my Business major and data analytics minor. Thank you for all the detail and fun blog to read! And are you also looking to go back into the data analytics field in the future?
ReplyDeleteHey Raghav. I can definitely say that I did not have a great idea of what a data scientist is, but now I believe I have a pretty good idea! Your description was very well organized and allowed for someone like me, who knows nothing about the subject, to have a clue. Pretty impressive that this job is how you spend your time. Seems to be a very difficult position!
ReplyDeleteHi Raghav! I had no idea what a data scientist did until I read your descriptions. I liked how you kept it simple and easy to understand, it really helped me understand what the position entails.
ReplyDeleteI'm really interested to get your opinion on AI. How have you seen influence your job? Big data is going to be one of the hottest sectors in 2018. You're in a very cool space.
ReplyDelete