Artwork

İçerik Louis-François Bouchard tarafından sağlanmıştır. Bölümler, grafikler ve podcast açıklamaları dahil tüm podcast içeriği doğrudan Louis-François Bouchard veya podcast platform ortağı tarafından yüklenir ve sağlanır. Birinin telif hakkıyla korunan çalışmanızı izniniz olmadan kullandığını düşünüyorsanız burada https://tr.player.fm/legal özetlenen süreci takip edebilirsiniz.
Player FM - Podcast Uygulaması
Player FM uygulamasıyla çevrimdışı Player FM !

How to Build a strong Data Science Resume. With Chris Deotte, Quadruple Kaggle Grandmaster at NVIDIA - What's AI Podcast Episode 2

1:01:25
 
Paylaş
 

Manage episode 372142557 series 3496315
İçerik Louis-François Bouchard tarafından sağlanmıştır. Bölümler, grafikler ve podcast açıklamaları dahil tüm podcast içeriği doğrudan Louis-François Bouchard veya podcast platform ortağı tarafından yüklenir ve sağlanır. Birinin telif hakkıyla korunan çalışmanızı izniniz olmadan kullandığını düşünüyorsanız burada https://tr.player.fm/legal özetlenen süreci takip edebilirsiniz.

An interview with one of the best Kaggler out there, Chris Deotte. Chris is a Senior Data Scientist at NVIDIA and is getting paid for his Kaggle skills! Kaggle is a platform mainly known for hosting machine learning competitions...

Comment under the YT video and send me a screenshot DURING GTC to enter the RTX 4080 giveaway: https://youtu.be/NjGnnG3evmE

►Follow my favorite daily AI newsletter: https://www.syntheticmind.io/subscribe?ref=EFowuebnlZ

►Support me through wearing Merch: https://whatsai.myshopify.com/

Chris's GTC events:

►Developing State-of-the-Art Models in a Short Time: https://www.nvidia.com/gtc/session-catalog/?ncid=ref-inpa-477072&?tab.catalogallsessionstab=16566177511100015Kus&search=#/session/1666650462301001Ltpf

►Learn How to Create Features from Tabular Data and Accelerate your Data Science Pipeline: https://www.nvidia.com/gtc/session-catalog/?ncid=ref-inpa-477072&?tab.catalogallsessionstab=16566177511100015Kus&search=#/session/1666168670726001zds5

More...

►My Newsletter: https://www.louisbouchard.ai/newsletter/

►Support me on Patreon: https://www.patreon.com/whatsai

►Join Our AI Discord: https://discord.gg/learnaitogether

Chapters:

00:49 What is your academic background?

01:20 How did you get into data science from a mathematics background?

02:04 What is a data scientist for you, and what is your role as one?

02:33 Do you think data science is mainly a role for academia because it’s a lot of statistical and math knowledge? Do you think a PHD or a masters is necessary to get such a role?

03:47 What is your role as a data scientist at Nvidia?

05:40 What is Kaggle, and what is a grand master at Kaggle?

08:20 Do you think Kaggle competitions are a good way of improving your resume and build experience if you want to work in the industry?

11:54 Is there something specific to Kaggle that doesn't work in the real world?

16:29 Are most competitions similar to one another? Or are there different challenges depending on the competition?

18:34 So Kaggle will allow you to be a generalist?

19:08 What tips would you give to a beginner who wants to participate in the competition and have a chance of winning?

20:43 Do you participate in competitions of every field?

24:17 What is a Kaggle grandmaster and what does it mean to have this four times?

27:52 Was there a category that was harder for you? Or one that you didn't enjoy?

30:38 What was the main factor for Nvidia to find you and hire you?

32:11 How was the interview process if they already knew how you worked and your knowledge?

35:07 How did you prepare for these interviews?

36:28 How can they assess your skills if there are so few people that do what you do?

37:27 Since the technical interviews are in different fields, is it over if you fail one of them?

40:04 Can you describe your day to day at Nvidia?

41:29 So you're being paid to do what you love to do?

43:03 Could you enter into the details of a recent project?

46:10 How do you deal with a very large data set?

48:39 Do you have a machine or are you connected to servers?

49:56 What would you recommend to someone who has a basic laptop and wants to practice DS?

53:37 Do you sometimes need to do particular processes to make it work with multiple GPU's?

56:39 What are the daily tools you use to do data science and Kaggle?

58:00 Is there anything we can learn from Nvidia coming soon?

58:58 Is it accessible for someone just starting at Kaggle?

  continue reading

45 bölüm

Artwork
iconPaylaş
 
Manage episode 372142557 series 3496315
İçerik Louis-François Bouchard tarafından sağlanmıştır. Bölümler, grafikler ve podcast açıklamaları dahil tüm podcast içeriği doğrudan Louis-François Bouchard veya podcast platform ortağı tarafından yüklenir ve sağlanır. Birinin telif hakkıyla korunan çalışmanızı izniniz olmadan kullandığını düşünüyorsanız burada https://tr.player.fm/legal özetlenen süreci takip edebilirsiniz.

An interview with one of the best Kaggler out there, Chris Deotte. Chris is a Senior Data Scientist at NVIDIA and is getting paid for his Kaggle skills! Kaggle is a platform mainly known for hosting machine learning competitions...

Comment under the YT video and send me a screenshot DURING GTC to enter the RTX 4080 giveaway: https://youtu.be/NjGnnG3evmE

►Follow my favorite daily AI newsletter: https://www.syntheticmind.io/subscribe?ref=EFowuebnlZ

►Support me through wearing Merch: https://whatsai.myshopify.com/

Chris's GTC events:

►Developing State-of-the-Art Models in a Short Time: https://www.nvidia.com/gtc/session-catalog/?ncid=ref-inpa-477072&?tab.catalogallsessionstab=16566177511100015Kus&search=#/session/1666650462301001Ltpf

►Learn How to Create Features from Tabular Data and Accelerate your Data Science Pipeline: https://www.nvidia.com/gtc/session-catalog/?ncid=ref-inpa-477072&?tab.catalogallsessionstab=16566177511100015Kus&search=#/session/1666168670726001zds5

More...

►My Newsletter: https://www.louisbouchard.ai/newsletter/

►Support me on Patreon: https://www.patreon.com/whatsai

►Join Our AI Discord: https://discord.gg/learnaitogether

Chapters:

00:49 What is your academic background?

01:20 How did you get into data science from a mathematics background?

02:04 What is a data scientist for you, and what is your role as one?

02:33 Do you think data science is mainly a role for academia because it’s a lot of statistical and math knowledge? Do you think a PHD or a masters is necessary to get such a role?

03:47 What is your role as a data scientist at Nvidia?

05:40 What is Kaggle, and what is a grand master at Kaggle?

08:20 Do you think Kaggle competitions are a good way of improving your resume and build experience if you want to work in the industry?

11:54 Is there something specific to Kaggle that doesn't work in the real world?

16:29 Are most competitions similar to one another? Or are there different challenges depending on the competition?

18:34 So Kaggle will allow you to be a generalist?

19:08 What tips would you give to a beginner who wants to participate in the competition and have a chance of winning?

20:43 Do you participate in competitions of every field?

24:17 What is a Kaggle grandmaster and what does it mean to have this four times?

27:52 Was there a category that was harder for you? Or one that you didn't enjoy?

30:38 What was the main factor for Nvidia to find you and hire you?

32:11 How was the interview process if they already knew how you worked and your knowledge?

35:07 How did you prepare for these interviews?

36:28 How can they assess your skills if there are so few people that do what you do?

37:27 Since the technical interviews are in different fields, is it over if you fail one of them?

40:04 Can you describe your day to day at Nvidia?

41:29 So you're being paid to do what you love to do?

43:03 Could you enter into the details of a recent project?

46:10 How do you deal with a very large data set?

48:39 Do you have a machine or are you connected to servers?

49:56 What would you recommend to someone who has a basic laptop and wants to practice DS?

53:37 Do you sometimes need to do particular processes to make it work with multiple GPU's?

56:39 What are the daily tools you use to do data science and Kaggle?

58:00 Is there anything we can learn from Nvidia coming soon?

58:58 Is it accessible for someone just starting at Kaggle?

  continue reading

45 bölüm

Tüm bölümler

×
 
Loading …

Player FM'e Hoş Geldiniz!

Player FM şu anda sizin için internetteki yüksek kalitedeki podcast'leri arıyor. En iyi podcast uygulaması ve Android, iPhone ve internet üzerinde çalışıyor. Aboneliklerinizi cihazlar arasında eş zamanlamak için üye olun.

 

Hızlı referans rehberi

Keşfederken bu şovu dinleyin
Çal