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So you want to be a data scientist?
Misra Turp
23 episodes
6 days ago
Interviews with data scientists, data engineers, machine learning engineers and professionals in other relevant areas to data. We chat about how they ended up where they are now and what kind of projects they work on.
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All content for So you want to be a data scientist? is the property of Misra Turp and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Interviews with data scientists, data engineers, machine learning engineers and professionals in other relevant areas to data. We chat about how they ended up where they are now and what kind of projects they work on.
Show more...
Careers
Business
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#5 - Whys and hows of a product analyst career with Kasia Rachuta
So you want to be a data scientist?
22 minutes 20 seconds
5 years ago
#5 - Whys and hows of a product analyst career with Kasia Rachuta

In this episode, we look into one of the many data-related titles: product analyst. Kasia Rachuta is a product analyst at Square, a financial services company in San Francisco. She also held data science positions before and is able to compare the two easily. 

We talk about how being a product analyst differs from being a data scientist, what her daily responsibilities are, what she loves about her job and what she did to get where she is right now.

All of this and more in this week's episode!


So you want to be a data scientist?
Interviews with data scientists, data engineers, machine learning engineers and professionals in other relevant areas to data. We chat about how they ended up where they are now and what kind of projects they work on.