糖心vlog官网观看

Introduction to Support Vector Machines

Video placeholder
Loading...
View Syllabus

Skills You'll Learn

Scikit Learn (Machine Learning Library), Data Manipulation, Supervised Learning, Data Processing, Regression Analysis, Business Analytics, Classification And Regression Tree (CART), Machine Learning, Data Cleansing, Performance Metric, Sampling (Statistics), Predictive Modeling, Feature Engineering, Statistical Modeling, Random Forest Algorithm, Applied Machine Learning, Machine Learning Algorithms

Reviews

4.8 (411 ratings)

  • 5 stars
    85.15%
  • 4 stars
    11.43%
  • 3 stars
    0.48%
  • 2 stars
    0.97%
  • 1 star
    1.94%

AD

Feb 6, 2023

Well-structured learning path. If you dont have previous python experience you can catch up after a couple of weeks as the workflow is similar regardless of the algorithmn you are using

AP

Mar 1, 2021

Superb ,detailed, well explained, lots of hands on training through labs and most of the major alogrithms are covered!Keep up the good work. You guys are helping the community a lot :D

From the lesson

Support Vector Machines

Taught By

  • Mark J Grover

    Mark J Grover

    Digital Content Delivery Lead

  • Svitlana (Lana) Kramar

    Svitlana (Lana) Kramar

    Data Science Content Developer

  • Joseph Santarcangelo

    Joseph Santarcangelo

    Ph.D., Data Scientist at IBM

  • Miguel Maldonado

    Miguel Maldonado

    Machine Learning Curriculum Developer

Explore our Catalog

Join for free and get personalized recommendations, updates and offers.