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NLG Talks
NLG Talks
92 episodes
2 weeks ago
Welcome to NLG Talks, your space for thought-provoking conversations on Supply Chain, Human Capital, and Sustainability — driving meaningful change, empowering people, and shaping a better future together.
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Business
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All content for NLG Talks is the property of NLG Talks and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Welcome to NLG Talks, your space for thought-provoking conversations on Supply Chain, Human Capital, and Sustainability — driving meaningful change, empowering people, and shaping a better future together.
Show more...
Business
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Data Science Decoded: From Basics to Career Pathways
NLG Talks
35 minutes 41 seconds
9 months ago
Data Science Decoded: From Basics to Career Pathways

In this episode on NLG Talks we are talking with few experts from the Data Science domain. Data science is no longer a buzzword – it’s a driving force behind innovation across industries. Whether you’re just starting out or looking to transition into the field, it’s important to understand the foundations and how they translate into real-world opportunities.🔍 The Basics of Data ScienceAt its core, data science is about using data to extract meaningful insights. Key areas to master include:

  • Statistics & Probability – Understanding how data behaves.
  • Programming – Python and R are the most commonly used languages.
  • Data wrangling– Cleaning and organizing raw data.
  • Machine Learning– Building models that can predict and classify.
  • Data Visualization– Telling a compelling story with data.
  • Data Analyst: Focuses on analyzing data to help businesses make decisions.
  • Data Scientist: More advanced; involves building predictive models and algorithms.
  • Machine Learning Engineer: Specializes in creating scalable ML systems.
  • Data Engineer: Builds and maintains data infrastructure.
  • Business Intelligence Analyst: Turns data insights into business strategy.

💼 Career Pathways in Data Science*The beauty of data science is its versatility. Here are some common roles to consider:🌟 *How to Start Your Journey* 1. Learn the Basics: Online courses, tutorials, and books can help you build a solid foundation.2. Build Projects: Apply your learning to real-world data sets and share your work on GitHub.3. Network & Stay Updated: Join data science communities (both online and offline) and keep up with the latest trends and tools.4. Tailor Your Resume: Focus on skills, projects, and relevant experience when applying for roles.Data science offers incredible potential, whether you’re looking to optimize business strategies, develop new technologies, or just dive into a growing field. Ready to decode the world of data? Let’s start this exciting journey together! 🔍📊🚀#DataScience #CareerPath #MachineLearning #DataAnalysis #CareerTips #DataScienceJourney #Learning

NLG Talks
Welcome to NLG Talks, your space for thought-provoking conversations on Supply Chain, Human Capital, and Sustainability — driving meaningful change, empowering people, and shaping a better future together.