Artwork

Content provided by Harpreet Sahota. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Harpreet Sahota or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ro.player.fm/legal.
Player FM - Aplicație Podcast
Treceți offline cu aplicația Player FM !

How to Ace the Data Science Interview | Nick Singh

1:29:43
 
Distribuie
 

Serii arhivate ("Sursă inactivă" status)

When? This feed was archived on February 26, 2024 18:29 (1M ago). Last successful fetch was on December 04, 2022 06:32 (1+ y ago)

Why? Sursă inactivă status. Servele noastre nu au putut să preia o sursă valida de podcast pentru o perioadă îndelungată.

What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.

Manage episode 329886341 series 2652351
Content provided by Harpreet Sahota. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Harpreet Sahota or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ro.player.fm/legal.

Support the show: https://www.buymeacoffee.com/datascienceharp
Find Nick online: https://www.nicksingh.com/
Watch the video of this episode: https://youtu.be/7fzOYBkTHDM

Memorable Quotes from the show:

[00:12:47] "The part of math that I was interested in wasn't that crazy, crazy theoretical math. It was just like, Oh, how can we use data to drive better decisions? Like how can simple statistics and computing metrics and just keeping track of shit using numbers? How can that help build better products or build better systems? And that's what I learned in systems engineering. Combine that with some of my CS classes, which got me into a little bit more machine learning, and then it started clicking in my head of like, Oh, this data thing is really cool."

Hightlights of the show:

[00:00:40] Guest Introduction

[00:03:26] Talk to us a little bit about where you grew up and what it was like there.

[00:07:57] What is it about us (of Indian heritage) and software and data science?

[00:09:11] Was there something you were always good at? Did you think you were ever going to be an author?

[00:11:03] Was data science something that you were exposed to when you're young?

[00:13:57] What is the business side of data? Please paint that picture for us.

[00:19:22] Is it better to have blank space on a resume than neutral information?

[00:23:34] LTalk to us about what this philosophy is for projects.

[00:31:57] How do we demonstrate business value with a project, especially if we don't have on the job experience and are doing a project to demonstrate our technical ability?

[00:39:20] You talk about cold emailing in your book. Is that just when someone messages somebody highly ranked on LinkedIn and leave it at that?

[00:40:50] Let's say somebody sees this awesome job on LinkedIn and then started looking for people in that company. Should they go and message an individual contributor, data scientist and have them look at their profile or send a message to the CEO? Like who on the spectrum do they reach out to?

[00:46:03] It is noticed that a lot of people that are new to the industry are new data scientists who are all up in their head thinking oh, man, like math and everything, thinking all about algorithms and their sleep. They think that these behavioral interview questions are just fluffy bullshit. Why do you think folks have this misconception?

[00:50:10] You talk about a framework in the book at a high level. Can you share a bit of that framework for how you would answer that question (where the star format doesn't apply)?

[00:52:34] Would you rather mention your knity gritty experiences from the past in an interview or do mention a little of a role that you played in math or astrophysics. Say that you're trying to get into a machine learning engineer role, can you share your response to that question with us here?

[00:55:12] Auditing the "tell me about yourself" question.

[01:04:50] What does product sense mean? What is it? Why are people afraid of it? Why does it seem like such a difficult skill?

[01:11:35] What's the number one product sense question that you see being asked?

[01:14:36] It is it's 100 years in the future. What do you want to be remembered for?

Random Round

[01:16:18] What do most people think? Within the first few seconds of meeting you for the first time.

[01:16:47] You have this awesome blog post about books that you always bring up in conversations. One of them is written by probably my absolute favorite authors and one of my favorite books. That's Antifragile by Nassim Taleb. Talk to us about the three main takeaways you've gotten from that book.

[01:21:19] What are you currently reading?

[01:24:23] First question what makes you cry?

[01:24:41] If you were a vegetable, what vegetable would you be?

[01:24:50] What have you created that you're most proud of?

[01:25:33] What's the best piece of advice you have ever received?

[01:26:54] If you lost all of your possessions but one, what would you want it to be?

[01:27:29] Do you ever sing When You're Alone?

[01:27:52] What's your favorite candy?

Don't forget to register for regular office hours by The Artists of Data Science: http://bit.ly/adsoh
Register for Sunday Sessions here: http://bit.ly/comet-ml-oh
Listen to the latest episode: https://player.fireside.fm/v2/eac-KT9/latest?theme=dark

The Artists of Data Science Social links:
Support the show: https://www.buymeacoffee.com/datascienceharp
YouTube: https://www.youtube.com/c/HarpreetSahotaTheArtistsofDataScience
Instagram: https://www.instagram.com/datascienceharp
Facebook https://facebook.com/TheArtistsOfDataScience
Twitter: https://twitter.com/datascienceharp

  continue reading

274 episoade

Artwork
iconDistribuie
 

Serii arhivate ("Sursă inactivă" status)

When? This feed was archived on February 26, 2024 18:29 (1M ago). Last successful fetch was on December 04, 2022 06:32 (1+ y ago)

Why? Sursă inactivă status. Servele noastre nu au putut să preia o sursă valida de podcast pentru o perioadă îndelungată.

What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.

Manage episode 329886341 series 2652351
Content provided by Harpreet Sahota. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Harpreet Sahota or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ro.player.fm/legal.

Support the show: https://www.buymeacoffee.com/datascienceharp
Find Nick online: https://www.nicksingh.com/
Watch the video of this episode: https://youtu.be/7fzOYBkTHDM

Memorable Quotes from the show:

[00:12:47] "The part of math that I was interested in wasn't that crazy, crazy theoretical math. It was just like, Oh, how can we use data to drive better decisions? Like how can simple statistics and computing metrics and just keeping track of shit using numbers? How can that help build better products or build better systems? And that's what I learned in systems engineering. Combine that with some of my CS classes, which got me into a little bit more machine learning, and then it started clicking in my head of like, Oh, this data thing is really cool."

Hightlights of the show:

[00:00:40] Guest Introduction

[00:03:26] Talk to us a little bit about where you grew up and what it was like there.

[00:07:57] What is it about us (of Indian heritage) and software and data science?

[00:09:11] Was there something you were always good at? Did you think you were ever going to be an author?

[00:11:03] Was data science something that you were exposed to when you're young?

[00:13:57] What is the business side of data? Please paint that picture for us.

[00:19:22] Is it better to have blank space on a resume than neutral information?

[00:23:34] LTalk to us about what this philosophy is for projects.

[00:31:57] How do we demonstrate business value with a project, especially if we don't have on the job experience and are doing a project to demonstrate our technical ability?

[00:39:20] You talk about cold emailing in your book. Is that just when someone messages somebody highly ranked on LinkedIn and leave it at that?

[00:40:50] Let's say somebody sees this awesome job on LinkedIn and then started looking for people in that company. Should they go and message an individual contributor, data scientist and have them look at their profile or send a message to the CEO? Like who on the spectrum do they reach out to?

[00:46:03] It is noticed that a lot of people that are new to the industry are new data scientists who are all up in their head thinking oh, man, like math and everything, thinking all about algorithms and their sleep. They think that these behavioral interview questions are just fluffy bullshit. Why do you think folks have this misconception?

[00:50:10] You talk about a framework in the book at a high level. Can you share a bit of that framework for how you would answer that question (where the star format doesn't apply)?

[00:52:34] Would you rather mention your knity gritty experiences from the past in an interview or do mention a little of a role that you played in math or astrophysics. Say that you're trying to get into a machine learning engineer role, can you share your response to that question with us here?

[00:55:12] Auditing the "tell me about yourself" question.

[01:04:50] What does product sense mean? What is it? Why are people afraid of it? Why does it seem like such a difficult skill?

[01:11:35] What's the number one product sense question that you see being asked?

[01:14:36] It is it's 100 years in the future. What do you want to be remembered for?

Random Round

[01:16:18] What do most people think? Within the first few seconds of meeting you for the first time.

[01:16:47] You have this awesome blog post about books that you always bring up in conversations. One of them is written by probably my absolute favorite authors and one of my favorite books. That's Antifragile by Nassim Taleb. Talk to us about the three main takeaways you've gotten from that book.

[01:21:19] What are you currently reading?

[01:24:23] First question what makes you cry?

[01:24:41] If you were a vegetable, what vegetable would you be?

[01:24:50] What have you created that you're most proud of?

[01:25:33] What's the best piece of advice you have ever received?

[01:26:54] If you lost all of your possessions but one, what would you want it to be?

[01:27:29] Do you ever sing When You're Alone?

[01:27:52] What's your favorite candy?

Don't forget to register for regular office hours by The Artists of Data Science: http://bit.ly/adsoh
Register for Sunday Sessions here: http://bit.ly/comet-ml-oh
Listen to the latest episode: https://player.fireside.fm/v2/eac-KT9/latest?theme=dark

The Artists of Data Science Social links:
Support the show: https://www.buymeacoffee.com/datascienceharp
YouTube: https://www.youtube.com/c/HarpreetSahotaTheArtistsofDataScience
Instagram: https://www.instagram.com/datascienceharp
Facebook https://facebook.com/TheArtistsOfDataScience
Twitter: https://twitter.com/datascienceharp

  continue reading

274 episoade

Toate episoadele

×
 
Loading …

Bun venit la Player FM!

Player FM scanează web-ul pentru podcast-uri de înaltă calitate pentru a vă putea bucura acum. Este cea mai bună aplicație pentru podcast și funcționează pe Android, iPhone și pe web. Înscrieți-vă pentru a sincroniza abonamentele pe toate dispozitivele.

 

Ghid rapid de referință