Moocable is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Deep Learning for Symbolic Mathematics - Guillaume Lample & Francois Charton

Description

This course aims to teach learners how to apply deep learning techniques to symbolic mathematics problems. The learning outcomes include understanding how to convert mathematical expressions into trees, generating data for symbolic integration, solving ordinary differential equations, and evaluating models. The course covers topics such as integration by parts, dataset creation, model development, and comparison with traditional mathematical software like Mathematica. The teaching method involves a combination of theoretical explanations, practical examples, and comparisons with existing tools. This course is intended for individuals interested in the intersection of deep learning and symbolic mathematics, particularly those with a background in mathematics or computer science.

Online Courses

YouTube

Free

53 minutes

Deep Learning for Symbolic Mathematics - Guillaume Lample & Francois Charton

Affiliate notice

  • Type
    Online Courses
  • Provider
    YouTube
  • Pricing
    Free
  • Duration
    53 minutes

This course aims to teach learners how to apply deep learning techniques to symbolic mathematics problems. The learning outcomes include understanding how to convert mathematical expressions into trees, generating data for symbolic integration, solving ordinary differential equations, and evaluating models. The course covers topics such as integration by parts, dataset creation, model development, and comparison with traditional mathematical software like Mathematica. The teaching method involves a combination of theoretical explanations, practical examples, and comparisons with existing tools. This course is intended for individuals interested in the intersection of deep learning and symbolic mathematics, particularly those with a background in mathematics or computer science.