Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    How To Start A Career In Data Science 2023

    Posted By: ELK1nG
    How To Start A Career In Data Science 2023

    How To Start A Career In Data Science 2023
    Last updated 7/2022
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.99 GB | Duration: 4h 16m

    The Ultimate Guide to Starting a Data Science Career: Create a Project Portfolio, Build Your Resume, Get an Interview

    What you'll learn

    How to land a job in data science

    Create your data science project portfolio

    Build your resume

    Get an interview through Networking

    Succeed during the phone interview

    Solve the take home test

    Ace the behavioral and technical questions

    Requirements

    The course is suitable for individuals interested in a career in data science

    Description

    Data science jobs are hyper-competitive. For each position, there are multiple other highly qualified candidates eyeing the same role.It is like you are all competing for a $100,000+ prize.If you frame it this way, wouldn’t you want to go the extra mile?By taking this course, you will be doing just that. You will learn valuable information that can give you a much-needed edge over other candidates.What better way to approach data science job hunting than learning from the experience of someone who is an actual data scientist and has recruited data scientists for his team?Ken Jee, your instructor for this course, is one of the most popular YouTubers focusing on data science. Over 70k people follow his YouTube channel. He has worked for several companies: consulting (Scouts Consulting Group), start-ups (GoHealth), and conglomerates like GE. In this course, he will be your private tutor offering a structured approach to landing a data science career.Ken will share invaluable insights leveraging his personal experience. You will learn how to:- Create your data science project portfolio- Build your resume- Get an interview through Networking- Succeed during the phone interview- Solve the take home test- Ace the behavioral and technical questionsAdditionally, Ken has prepared several mock-interviews and 1-on-1 conversations with people who have successfully landed data science positions. These allow you to get an inside-look into the mind of successful candidates so you can see how the interview process really works. These interviews are not available elsewhere and act as an invaluable shortcut to a career in data science.The course offers you resume templates, downloadable materials, some exciting infographics, as well as a section on how to optimize your LinkedIn, Github, and Kaggle profiles for recruitment purposes.Taking this course can be a crucial step for your future career. No need to think twice. Start your journey towards a data science career today!

    Overview

    Section 1: Course Introduction

    Lecture 1 What does the course cover?

    Lecture 2 The data science knowledge you need

    Lecture 3 Types of roles in data science

    Lecture 4 The interview process structure

    Lecture 5 What interviewers look for

    Lecture 6 How to get the most out of the course

    Section 2: The data science project portfolio

    Lecture 7 Portfolio overview

    Lecture 8 What is a data science project?

    Lecture 9 The projects you should do

    Lecture 10 How to differentiate your projects

    Lecture 11 Asking a favor

    Lecture 12 Where to showcase your projects

    Lecture 13 Projects on Github

    Lecture 14 Projects on Kaggle

    Lecture 15 Bonus content: Portfolio website

    Section 3: The data science resume

    Lecture 16 Resume overview

    Lecture 17 How to structure your resume

    Lecture 18 How to write about work and projects

    Lecture 19 Customize your resume

    Lecture 20 Your virtual resume

    Lecture 21 Resume checklist

    Lecture 22 Data science cover letters

    Lecture 23 Bonus content: LinkedIn

    Section 4: Getting a data science interview

    Lecture 24 Interviewing overview

    Lecture 25 How candidates are selected

    Lecture 26 Networking for data scientists

    Lecture 27 Leveraging your resources

    Lecture 28 Informational interviews

    Lecture 29 Reaching out to recruiters

    Section 5: The data science phone interview

    Lecture 30 Phone interview overview

    Lecture 31 What to expect

    Lecture 32 How to prepare

    Lecture 33 How to succeed

    Section 6: The take-home test

    Lecture 34 The types of take-home tests

    Lecture 35 Dealing with data sets

    Lecture 36 Coding quizzes

    Lecture 37 Written test

    Section 7: The in-person data science interview

    Lecture 38 What to expect

    Lecture 39 Ace the behavioral interview

    Lecture 40 Technical interviews

    Lecture 41 Following up

    Lecture 42 The briefcase method

    Section 8: Bonus content: Interviews with successful data scientists

    Lecture 43 Anna interview

    Lecture 44 Jaemin Interview

    Lecture 45 Jay interview

    Lecture 46 Jefferson interview

    Lecture 47 Sheng interview

    Lecture 48 Mock interview with Rachel Castellino

    Lecture 49 Elevator pitch

    Lecture 50 Star storytelling technique

    Section 9: Bonus downloadable materials

    Lecture 51 Resume and cover letter templates and checklist

    Lecture 52 Reach out templates

    Lecture 53 Interview questions

    You should take this course if you want to become a Data Scientist or if you want to learn about the field,This course is for you if you want a great career