Breaking into Data Analytics

DataCamp · Beginner ·📊 Data Analytics & Business Intelligence ·2y ago

Key Takeaways

The webinar covers the essential skills and steps required to break into a data analytics career, including data skills, soft skills, and creating a portfolio to showcase abilities.

Original Description

Working in data can be an amazing career path: it's intellectually rewarding, well paid, and lots of fun. However, the prestige of this role also makes it tricky to break into. In this webinar, you'll learn from Lindsay Murphy - a Head of Data with considerable hiring experience - what really matters when you are trying to get hired for that dream data role. Learn about the skills you need, and how to present them in a way that will get you noticed by data hiring managers. Key Takeaways: - Learn what data skills and soft skills you need for that first data role. - Understand the hiring process, from responding to the job advert through to getting your offer letter. - Learn about creating a portfolio and other ways to show off your skills. Today’s Slides https://bit.ly/3Gx8xoK [CAREER TRACK] Data Analyst with Python: https://bit.ly/3RdC6AV [CAREER TRACK] Data Analyst in SQL: https://bit.ly/3uVxjfC [BLOG] Data Analyst Salaries Around the World: How Much Do Data Analysts Make?: https://bit.ly/41cWUgw [BLOG] Data Analyst Interview Questions: How to Prepare for a Data Analyst Interview: https://bit.ly/3sWjz3X [BLOG] 9 Essential Data Analyst Skills: A Comprehensive Career Guide: https://bit.ly/47JiFXD [BLOG] 21 Top Data Scientist Interview Questions: https://bit.ly/484o8I9 [PODCAST] Empowering the Modern Data Analyst: https://bit.ly/481BgxM
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This webinar provides guidance on breaking into a data analytics career, covering the necessary skills, hiring process, and ways to showcase abilities. It offers valuable insights for those looking to start a career in data analytics.

Key Takeaways
  1. Learn the essential data skills required for a data analyst role
  2. Develop soft skills to complement technical abilities
  3. Create a portfolio to demonstrate skills and experience
  4. Understand the hiring process for data analyst positions
  5. Prepare for common data analyst interview questions
💡 Creating a portfolio is a crucial step in showcasing skills and experience to potential employers, and can be a key differentiator in the hiring process.

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