• No Data Left Behind: Strategies for Working with All Data Types (w/ Harpreet Sahota)

  • Apr 25 2025
  • Duración: 49 m
  • Podcast

No Data Left Behind: Strategies for Working with All Data Types (w/ Harpreet Sahota)

  • Resumen

  • Are you ready to level up your analytics game and tackle the challenges that come with data-heavy projects?

    In this episode, Harpreet Sahota, a data science leader with years of experience helping analysts and teams thrive, shares actionable insights and strategies for staying ahead in the fast-evolving world of data.

    Harpreet will help you develop a practical mindset to tackle real-world challenges and build the confidence to lead impactful projects. From cleaning messy datasets, to deciding between building or buying a solution, to training a computer vision model, Harpreet is here to share his expertise.

    Whether you’re an aspiring data analyst or a seasoned professional, this episode will equip you with the skills and clarity to succeed.

    What You'll Learn:
    • Data Cleaning for Any Data Type: Proven techniques to clean and prepare your data for analysis.

    • Training a Computer Vision Model: What to consider before you start and how to ensure success.

    • Build vs. Buy for LLMs: When to create your own solution and when to leverage existing tools.

    • Setting Yourself Up for Success as an Analyst: Strategies to stand out and make your work impactful.

    Register for free to be part of the next live session: https://bit.ly/3XB3A8b

    Interested in learning more from Harpreet? Connect with him on LinkedIn

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