Deep Learning with Tensorflow

Blended learning

U wie riicht sech d'Formatioun?

Open to all candidates

Erreechten Niveau

Mëttelstuf

Dauer

13,00 Woch(en)

Sprooch(e) vun der Déngschtleeschtung

EN

Nächst Sessioun

Virkenntnisser

No prerequisites

Ziler

1. Understand the difference between linear and non-linear regression
2. Comprehend Convolutional Neural Networks and their applications
3. Gain familiarity on Recurrent Neural Networks (RNN) and Autoencoders
4. Learn how to filter with Restricted Boltzmann Machine

Inhalt

1. Lesson 1 - Introduction to TensorFlow

2. Lesson 2 – Convolutional Neural Networks (CNN)

3. Lesson 3 – Recurrent Neural Networks (RNN)

4. Lesson 4 - Unsupervised Learning

5. Lesson 5 - Autoencoders

Pedagogesch Methoden

The online delivery blends synchronous and asynchronous components. Students complete self-directed assignments hosted on the course platform. Weekly Forums support a required active, rubric-based student contributions that foster collaboration.

Evaluatioun

Exams may include essays, short answers, or MCQs. Formats include open/closed book. Time zones are considered. Assessments are formative and summative. Students have 2 weeks to review grades and must follow the appeal process in the Student Handbook.

Certificat, Diplom

Certificate

Zousätzlech Informatiounen

Please note that there are three semesters as intake periods as noted on the academic calendar.
Scholarship Awarded (Total Fee: €100)

Registration is done online.

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