Applied Machine Learning Systems - Advanced Principles and Practice, Certificate | Part time online | UCL | United Kingdom
Studyportals
Certificate Online

Applied Machine Learning Systems - Advanced Principles and Practice

UCL
2 months
Duration
1500 GBP/full
1500 GBP/full
Unknown
Tuition fee
Anytime
Unknown
Apply date
Anytime
Unknown
Start date

About

University College London (UCL) offers the Applied Machine Learning Systems - Advanced Principles and Practice programme.

Overview

Key facts

You'll learn how to apply machine learning technology to address various advanced machine learning tasks in lab session. University College London (UCL)'s Applied Machine Learning Systems - Advanced Principles and Practice sessions will be based on programming languages/platforms such as Python, R or tensorflow.

Programme Structure

Courses include:

  • deep learning
  • deep reinforcement learning
  • generative adversarial networks
  • future directions in machine learning engineering

Key information

Duration

  • Part-time
    • 2 months

Start dates & application deadlines

You can apply for and start this programme anytime.

Language

English

Delivered

Online

Academic requirements

We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.

English requirements

We are not aware of any English requirements for this programme.

Other requirements

General requirements

This course is for researchers, engineers, IT professionals and managers working in various industries.

Tuition Fee

To always see correct tuition fees
  • International

    1500 GBP/full
    Tuition Fee
    Based on the tuition of 1500 GBP for the full programme during 2 months.
  • National

    1500 GBP/full
    Tuition Fee
    Based on the tuition of 1500 GBP for the full programme during 2 months.

Funding

Other interesting programmes for you

Our partners

Applied Machine Learning Systems - Advanced Principles and Practice
UCL
Applied Machine Learning Systems - Advanced Principles and Practice
-
UCL

Wishlist

Go to your profile page to get personalised recommendations!