Products
Features
YouTube Video Summarizer
Summarize YouTube videos
Web & PDF Highlighter
Highlight web pages & PDFs
Chat with PDF
Ask any PDF questions with AI
Ask AI Clone
Chat with your highlights & memories
Audio Transcriber
Transcribe audio files to text
Glasp Reader
Read and highlight articles
Kindle Highlight Export
Export your Kindle highlights
Idea Hatch
Hatch ideas from your highlights
Integrations
Obsidian Plugin
Notion Integration
Pocket Integration
Instapaper Integration
Medium Integration
Readwise Integration
Snipd Integration
Hypothesis Integration
Apps & Extensions
Chrome Extension
Safari Extension
Edge Add-ons
Firefox Add-ons
iOS App
Android App
Discover
Discover
Ideas
Discover new ideas and insights
Articles
Curated articles and insights
Books
Book recommendations by great minds
Posts
Essays and notes from readers
Quotes
Inspiring quotes collection
Videos
Curated videos and summaries
Explore Glasp
Glasp Story
How we grew from 0 to 3 million users
Glasp Newsletter
Weekly insights and updates
Glasp Talk
Interview series with great minds
Glasp Blog
Latest news and articles
Glasp Use Cases
Learn how others use Glasp
Build & Support
Glasp API
Access Glasp's API for developers
MCP Connector
Connect Glasp to Claude & ChatGPT
Community
Glasp Reddit Community
Students
Student discount and benefits
FAQs
Frequently Asked Questions
AboutPricing
DashboardLog inSign up

How To Become A Data Scientist In 1 Year (Learn From A Real World Example)

August 22, 2020
by
Abhishek Thakur
YouTube video player
How To Become A Data Scientist In 1 Year (Learn From A Real World Example)

TL;DR

A mechanical engineering graduate shares his journey of learning machine learning and data science, securing multiple medals in Kaggle competitions, and landing a job in the field within a year.

Transcript

hello everyone and welcome to my new video and as you know i usually don't make videos like this i make videos about coding but this episode is something special and um i have invited tunnel who have known for a while now and he's also a gaggler and he has done some good work in kaggle and in his professional life and he managed to learn machine le... Read More

Key Insights

  • 🏑 Passion and drive are crucial for success in the data science field.
  • 💄 Kaggle provides an excellent platform for learning, showcasing skills, and making connections with industry professionals.
  • 💪 Building a strong portfolio with unique and innovative projects is valuable for job opportunities.
  • ⚖️ Balancing theoretical knowledge with practical application is essential for growth in data science.
  • ❓ Overcoming educational and background limitations is possible with dedication and continuous learning.
  • 🤗 Networking and seeking mentorship can open doors to job opportunities.
  • 🤔 Problem-solving skills and the ability to think outside the box are highly valuable in the industry.

Install to Summarize YouTube Videos and Get Transcripts

Explore YouTube Video Summarizer or Get YouTube Transcript Extractor

Questions & Answers

Q: What initially sparked your interest in machine learning and data science?

Tanul had a desire to do hands-on work and solve real-world problems, which he felt was lacking in his mechanical engineering studies. Machine learning presented an opportunity to be a unique engineer and tackle new and diverse challenges.

Q: How did you discover Kaggle and why did you choose it as a learning platform?

Tanul found Kaggle to be the ideal platform for building a portfolio and learning from the best in the data science community. Kaggle's competitions offered practical experience and the chance to interact with top data scientists.

Q: How challenging was it to find a job in data science coming from a Tier 3 college and a mechanical engineering background?

Finding a job was difficult due to the perceived limitations of his educational background and lack of experience in the field. However, Tanul's achievements in Kaggle, gaining recognition from mentors and industry professionals, helped him secure job offers.

Q: How did you manage your time between studying, competing on Kaggle, and preparing for job interviews?

Tanul had the advantage of the lockdown, which allowed him to focus solely on Kaggle. He devoted around eight to eight and a half hours per day to Kaggle during this time. He emphasized the importance of continuous learning and balancing theory with practical application.

Summary & Key Takeaways

  • Tanul Singh, a graduate of a lesser-known college, successfully transitioned from mechanical engineering to data science in less than one year.

  • He excelled in Kaggle competitions, securing five medals out of six and earning the rank of 17th in Kaggle Notebooks Master.

  • Tanul's passion for problem-solving and innovation led him to machine learning, and he found Kaggle to be the perfect platform for learning and showcasing his skills.


Read in Other Languages (beta)

English

Share This Summary 📚

Summarize YouTube Videos and Get Video Transcripts with 1-Click

Download browser extensions on:

Try YouTube Summary with ChatGPT & Claude or YouTube Transcript Generator

Explore More Summaries from Abhishek Thakur 📚

Talks S2E5 (Luca Massaron): Hacking Bayesian Optimization thumbnail
Talks S2E5 (Luca Massaron): Hacking Bayesian Optimization
Abhishek Thakur
What Are Public and Private Leaderboards in Kaggle? thumbnail
What Are Public and Private Leaderboards in Kaggle?
Abhishek Thakur
What Is Target Encoding and How to Use It Effectively? thumbnail
What Is Target Encoding and How to Use It Effectively?
Abhishek Thakur
Kaggle's 30 Days Of ML (Day-10): Underfitting, Overfitting & Random Forests thumbnail
Kaggle's 30 Days Of ML (Day-10): Underfitting, Overfitting & Random Forests
Abhishek Thakur
Talks # 15: Shubhadeep Roychowdhury; Applying Machine Learning  on  Source Code thumbnail
Talks # 15: Shubhadeep Roychowdhury; Applying Machine Learning on Source Code
Abhishek Thakur
Tips N Tricks #6: How to train multiple deep neural networks on TPUs simultaneously thumbnail
Tips N Tricks #6: How to train multiple deep neural networks on TPUs simultaneously
Abhishek Thakur

Summarize YouTube Videos and Get Video Transcripts with 1-Click

Download browser extensions on:

Try YouTube Summary with ChatGPT & Claude or YouTube Transcript Generator

Apps & Extensions

  • Chrome Extension
  • Safari Extension
  • Edge Add-ons
  • Firefox Add-ons
  • iOS App
  • Android App

Key Features

  • YouTube Video Summarizer
  • Web & PDF Summarizer
  • Web & PDF Highlighter
  • Chat with PDF
  • Ask AI Clone
  • Audio Transcriber
  • Glasp Reader
  • Kindle Highlight Export
  • Idea Hatch

Integrations

  • Obsidian Plugin
  • Notion Integration
  • Pocket Integration
  • Instapaper Integration
  • Medium Integration
  • Readwise Integration
  • Snipd Integration
  • Hypothesis Integration

More Features

  • APIs
  • MCP Connector
  • Blog & Post
  • Embed Links
  • Image Highlight
  • Personality Test
  • Quote Shots
  • Open Graph Checker

Company

  • About us
  • Our Story
  • Blog
  • Community
  • FAQs
  • Job Board
  • Newsletter
  • Pricing
Terms

•

Privacy

•

Guidelines

© 2026 Glasp Inc. All rights reserved.