Thomas Nield

Thomas Nield

Instructor at University of Southern California, Founder | Nield Consulting Group and Yawman Flight

    Thomas Nield is the founder of Nield Consulting Group and Yawman Flight, as well as an instructor at University of Southern California. He enjoys making technical content relatable and relevant to those unfamiliar or intimidated by it. Thomas regularly teaches classes on data analysis, machine learning, mathematical optimization, and practical artificial intelligence. At USC he teaches AI System Safety, developing systematic approaches for identifying AI-related hazards in aviation and ground vehicles. He's authored three books, including Essential Math for Data Science (O’Reilly) and Getting Started with SQL (O'Reilly) He is also the founder and inventor of Yawman Flight, a company developing universal handheld flight controls for flight simulation and unmanned aerial vehicles.

    All Sessions by Thomas Nield

    Day 0 04/22/2024
    9:00 am - 11:00 am

    Introduction to Math for Data Science

    <span class="etn-schedule-location"> <span class="firstfocus">Machine Learning</span> </span>

    With the availability of data, there is a growing demand for talent who can analyze and make sense of it. This makes practical math all the more important because it helps infer insights from data. However, mathematics comprises many topics, and it is hard to identify which ones are applicable and relevant for a data science career. Knowing these essential math topics is key to integrating knowledge across data science, statistics, and machine learning. It has become even more important with the prevalance of libraries like PyTorch and scikit-learn, which can create """"""""black box"""""""" approaches where data science professionals use these libraries but do not fully understand how they work. In this training, Thomas Nield (author of O'Reilly book """"""""Essential Math for Data Science"""""""") will provide a crash-course of carefully curated topics to jumpstart proficiency in key areas of mathematics. This includes probability, statistics, hypothesis testing, and linear algebra. Along the way you’ll integrate what you’ve learned and see practical applications for real-world problems. These examples include how statistical concepts apply to machine learning, and how linear algebra is used to fit a linear regression. We will also use Python to explore ideas in calculus and model-fitting, using a combination of libraries and from-scratch approaches.

    Day 0 04/22/2024
    9:00 am - 11:00 am

    Introduction to Math for Data Science

    <span class="etn-schedule-location"> <span class="firstfocus">Machine Learning</span> <p class="locationvirtlive">Virtual conference</p> </span>

    With the availability of data, there is a growing demand for talent who can analyze and make sense of it. This makes practical math all the more important because it helps infer insights from data. However, mathematics comprises many topics, and it is hard to identify which ones are applicable and relevant for a data science career. Knowing these essential math topics is key to integrating knowledge across data science, statistics, and machine learning. It has become even more important with the prevalance of libraries like PyTorch and scikit-learn, which can create """"""""black box"""""""" approaches where data science professionals use these libraries but do not fully understand how they work. In this training, Thomas Nield (author of O'Reilly book """"""""Essential Math for Data Science"""""""") will provide a crash-course of carefully curated topics to jumpstart proficiency in key areas of mathematics. This includes probability, statistics, hypothesis testing, and linear algebra. Along the way you’ll integrate what you’ve learned and see practical applications for real-world problems. These examples include how statistical concepts apply to machine learning, and how linear algebra is used to fit a linear regression. We will also use Python to explore ideas in calculus and model-fitting, using a combination of libraries and from-scratch approaches.

    Open Data Science

     

     

     

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