date_range Débute le 13 mars 2017
event_note Se termine le 10 avril 2017
list 4 séquences
assignment Niveau : Introductif
label Informatique & Programmation
chat_bubble_outline Langue : Anglais
card_giftcard 9.6 points
4.3 /5
Avis de la communauté
49 avis

Les infos clés

credit_card Formation gratuite
timer 16 heures de cours

En résumé

Learn the general concepts of data mining along with basic methodologies and applications. Then dive into one subfield in data mining: pattern discovery. Learn in-depth concepts, methods, and applications of pattern discovery in data mining. We will also introduce methods for pattern-based classification and some interesting applications of pattern discovery. This course provides you the opportunity to learn skills and content to practice and engage in scalable pattern discovery methods on massive transactional data, discuss pattern evaluation measures, and study methods for mining diverse kinds of patterns, sequential patterns, and sub-graph patterns.

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Le programme

  • Week 1 - Course Orientation
    You will become familiar with the course, your classmates, and our learning environment. The orientation will also help you obtain the technical skills required for the course.
  • Week 1 - Week 1: The Computer and the Human
    In this week's module, you will learn what data visualization is, how it's used, and how computers display information. You'll also explore different types of visualization and how humans perceive information.
  • Week 2 - Week 2: Visualization of Numerical Data
    In this week's module, you will start to think about how to visualize data effectively. This will include assigning data to appropriate chart elements, using glyphs, parallel coordinates, and streamgraphs, as well as implementing principles of design and color...
  • Week 3 - Week 3: Visualization of Non-Numerical Data
    In this week's module, you will learn how to visualize graphs that depict relationships between data items. You'll also plot data using coordinates that are not specifically provided by the data set.
  • Week 4 - Week 4: The Visualization Dashboard
    In this week's module, you will start to put together everything you've learned by designing your own visualization system for large datasets and dashboards. You'll create and interpret the visualization you created from your data set, and you'll also apply te...
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Les intervenants

  • - Department of Computer Science
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Le concepteur

The University of Illinois at Urbana-Champaign is a world leader in research, teaching and public engagement, distinguished by the breadth of its programs, broad academic excellence, and internationally renowned faculty and alumni. Illinois serves the world by creating knowledge, preparing students for lives of impact, and finding solutions to critical societal needs.
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La plateforme

Coursera est une entreprise numérique proposant des formation en ligne ouverte à tous fondée par les professeurs d'informatique Andrew Ng et Daphne Koller de l'université Stanford, située à Mountain View, Californie.

Ce qui la différencie le plus des autres plateformes MOOC, c'est qu'elle travaille qu'avec les meilleures universités et organisations mondiales et diffuse leurs contenus sur le web.

Avis de la communauté
4.3 /5 Moyenne
29
11
5
1
3
Contenu
4.3/5
Plateforme
4.3/5
Animation
4.3/5
Le meilleur avis

The Course is excellent and gives good overview on the concepts and best practices of Data Visualization. The Assignments are quite interesting and help in enhancing your knowledge on the topic. Well Done !!

le 22 février 2018
Quelle note donnez-vous à cette ressource ?
Contenu
0/5
Plateforme
0/5
Animation
0/5
le 22 février 2018

It's an intro course, so no qualms about that aside from that I missed having some intro d3.js assignments (that could be fully automated).The peer review system is unfortunately the weakest point of this. I got decent enough grades mind you, but it's sensitive to fluctuations in enrollment in a way that makes me weary.

le 22 février 2018

The Course is excellent and gives good overview on the concepts and best practices of Data Visualization. The Assignments are quite interesting and help in enhancing your knowledge on the topic. Well Done !!

le 11 février 2018

Pros:The course was well organized so that an individual can focus on coursework only. There is enough time to complete the homework and quizzes directly relate to the material (i.e. student is not expected to do much reading outside the course videos). The material is informative and accomplishes the goals stated in the beginning of the course.Cons:Some minor things such as not being able to see the programming assignments very well when grading other's work due to Coursera's UI not designed well for that. Also, the collaboration between students is not as good as it was made out to be based on the emphasis that was given to that by Coursera and course organizers. Not sure if Coursera or organizers can do much more than they have already regarding that.

le 4 février 2018

Really nice course, finally got a chance to dig into some big datasets and see for myself what kind of challenges arise by trying to communicate information to users. I found it to be very useful first step toward getting deeper understanding on data mining.

le 20 janvier 2018

Excellent Course. Give me a good understanding of how to visualize data to make it clear and fit the user's need. And the assignments is also useful. I learned how to use D3 to generate the data using Javascript and D3 library.