by Naked Data Science
The #1 podcast on applied data science. No fluff. Check out more mental models, practical tips, and inspirations that help you become great data scientists at http://nds.show
Language
🇺🇲
Publishing Since
2/16/2020
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June 20, 2022
<p>We are trying out a different format in this episode. Nima gave me a topic, which is Central Limit Theorem. I spent an hour learning about it. And then we have a little chat. You will hear why we are doing this in the episode. <br/><br/>And if you like this format, please send us an email at hello [at] nds.show . That helps us decide if we are going to make more episodes like this in the future.<br/><br/>Meanwhile, if you are not a data scientist yet, but want to become one, you should really attend our webinar. We will demystify the transition into data science. We will show you the most effective way to build your skills. And we will advise you on the four possible options you can take to go from where you are to landing a data science job in as little as 9 months. <a href='https://nds.show/webinar'>Find out more here</a>.</p>
July 28, 2021
<p>This is the episode where we are going to risk our career, our wellbeing, and all the professional reputations we have built over the years to talk about this ultra-sensitive taboo topic: office politics in data science</p><p>Seriously though, we have seen many data scientists who don't want to hear or learn about politics. And as result, they often hit invisible walls in their careers and become very frustrated. That's why we are sharing some mental models we use to think about and deal with politics so that you won't go down that path. </p><p>Meanwhile, if you are not a data scientist yet, but want to become one, you should really attend our webinar. We will demystify the transition into data science. We will show you the most effective way to build your skills. And we will advise you on the four possible options you can take to go from where you are to landing a data science job in as little as 9 months. <a href='https://nds.show/webinar'>Find out more here</a>.</p>
July 2, 2021
<p>When we talk to people who want to transition into data science, we hear this question popping up more and more: what is the difference between a data scientist and a machine learning engineer, and which one should I choose? </p><p>In this episode, we talk about why the separation between these two roles is ambiguous at best, why many people have switched between these roles, how we speculate the roles to evolve in the future, and some tips on how you can plan your career based on what we discussed. </p><p>Meanwhile, if you are not a data scientist yet, but want to become one, you should really attend our webinar. We will demystify the transition into data science. We will show you the most effective way to build your skills. And we will advise you on the four possible options you can take to go from where you are to landing a data science job in as little as 9 months. <a href='https://nds.show/webinar'>Find out more here</a>.</p>
Jon Krohn
DataCamp
Andreessen Horowitz
Practical AI LLC
NPR
Harvard Data Science Review
Michael Kennedy
The New York Times
NPR
Jacqueline Nolis and Emily Robinson
Complexly
No Such Thing As A Fish
Goalhanger
BBC Radio 4
WNYC Studios
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