course-details-portlet

IE600320 - Advanced Deep Learning with Python

Om emnet

Vurderingsordning

Vurderingsordning: Mappe/sammensatt vurdering
Karakter: Bestått/ Ikke bestått

Vurdering Vekting Varighet Delkarakter Hjelpemidler
Mappe/sammensatt vurdering 100/100

Faglig innhold

This course has the aim of providing the foundations of deep learning with the most popular python libraries such as Sklearn, Keras and PyTorch. You will learn the key concepts underlying deep learning and how to use Python to develop machine learning pipelines to tackle real world problems using images, videos, text and time-series. This course will cover convolutional neural networks (CNN), recurrent neural networks (RNN), various advanced CNN architectures, and transfer learning.

Læringsutbytte

Upon Completion of This Course, You'll Have:

  1. An understanding of the capabilities and limitations of machine learning (ML), and the knowledge of how to formulate your problem to solve it effectively.
  2. An understanding of convolution neural nets, recurrent neural nets, and state-of-the-art transfer learning models.
  3. An effective process for developing your machine learning pipeline to tackle real world problems such as machine vision, text understanding and time series prediction.
  4. The skills required to deploying, monitoring, and evaluating the ML model, as well as assessing its relevance, and the uses of different ML models.
  5. The basis required to collect, process, and utilize data efficiently.
  6. The basic skills required to select the right platform to deploy your model (cloud, edge device, hybrid) and how to configure it to achieve the required performance.
  7. The ability to document and communicate the results of your ML approach and guide your coding and ML efforts in the right direction.

Læringsformer og aktiviteter

  • The course will be offered in approximately 12 weeks (physically and digitally).
  • Teaching approach: 5 hours each (lectures - practice - project work).
  • Evaluation: exam will be in the form of a portfolio assessment where samples of work and mini projects will be used to evaluate the intended learning outcomes (ILOs) achievement throughout the course.
  • Participants will get a certificate of course completion.

Mer om vurdering

Portfolio assessment in terms of project(s) report and presentation. Apart from academic excellence, presentation skills are also important and will be evaluated. Ensure that the work submitted is clearly laid out and has legible figures, drawings, and diagrams. Report layout will be decided during the course. A basic report layout consists of an introduction where you summarize the state-of-the-art in this area and give a brief summary of your work. methodology, results, concluding remarks and a reference list. It is worth noting that it is a good habit of adding references wherever needed. The portfolio contains assignments that are carried out, digitally documented and submitted during the term. Both individual and team assignments may be given. Assignments are designed to help students achieve specific course learning outcomes, and formative feedback is given during the period of the portfolio.

Spesielle vilkår

Krever opptak til studieprogram:
Diverse studier - Fakultet for informasjonsteknologi og elektronikk (EMNE/IE)
Etter- og videreutdanning, IIR (IEIIREVU)

Kursmateriell

A reading list will be continuedly updated before the start date of the course. To name a few:

  1. Josh Patterson and Adam Gibson (2017). Deep learning: a practitioner’s approach. O'Reilly.
  2. Andreas C. Muller and Sarah Guido (2017). Introduction to machine learning with python. O'Reilly.

Flere sider om emnet

Ingen

Fakta om emnet

Versjon: 1
Studiepoeng:  7.5 SP
Studienivå: Videreutdanning lavere grad

Undervisning

Termin nr.: 1
Undervises:  VÅR 2024

Undervisningsspråk: Engelsk

Sted: Ålesund

Fagområde(r)
  • Datateknikk og informasjonsvitenskap
Kontaktinformasjon
Emneansvarlig/koordinator:

Ansvarlig enhet
Institutt for IKT og realfag

Administrativ enhet
Prorektor for utdanning

Eksamensinfo

Vurderingsordning: Mappe/sammensatt vurdering

Termin Statuskode Vurdering Vekting Hjelpemidler Dato Tid Eksamens- system Rom *
Vår ORD Mappe/sammensatt vurdering 100/100
Rom Bygning Antall kandidater
  • * Skriftlig eksamen plasseres på rom 3 dager før eksamensdato. Hvis mer enn ett rom er oppgitt, finner du ditt rom på Studentweb.
Eksamensinfo

For mer info om oppmelding til og gjennomføring av eksamen, se "Innsida - Eksamen"

Mer om eksamen ved NTNU