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IoT Big Data and Analytics (5 cr)

Code: 5000BL72-3001

General information


Enrollment
01.06.2019 - 13.09.2019
Registration for the implementation has ended.
Timing
03.09.2019 - 13.12.2019
Implementation has ended.
Number of ECTS credits allocated
5 cr
Local portion
2 cr
Virtual portion
3 cr
Mode of delivery
Blended learning
Unit
Engineering and Business
Campus
Kupittaa Campus
Teaching languages
English
Seats
24 - 48
Degree programmes
Degree Programme in Information and Communications Technology
Degree Programme in Information and Communication Technology
Teachers
Sanna Määttä
Scheduling groups
Pienryhmä 1 (Size: 0 . Open UAS : 0.)
Pienryhmä 2 (Size: 0 . Open UAS : 0.)
Groups
PTIVIS18S
PTIVIS18S
Small groups
Pienryhmä 1
Pienryhmä 2
Course
5000BL72
No reservations found for realization 5000BL72-3001!

Evaluation scale

H-5

Objective

Student knows Basic tools for data analysis
Student can implement data analytics in edge computing
Student knows Basic solutions for big data analysis in cloud

Content

Data at rest and data in motion
Process for data analysis
Data preparation
Basics of descriptive statistics
Data visualization
Machine learning basics
Big data architectures

Materials

Cisco network academy material www.netacad.com

Teaching methods

Self-study network material
Lectures
7 laboratory sessions

Exam schedules

Week 43

Pedagogic approaches and sustainable development

Lab works
lectures
self study

Completion alternatives

-

Student workload

lab works 7x3h = 21h
lectures 6x2h = 12h
exam = 2h
self study = 74h
exam preparation 26h
TOTAL 135h

Evaluation methods and criteria

Must pass Final Exam:
60% -> 1
68% -> 2
76% -> 3
84% -> 4
92% -> 5
Mandatory lab works: +/- 2 grades from individual Lab performance
Mandatory lectures, must attend 70%

Failed (0)

Failed Final Exam <60%
or
Weak Final exam < 76% + poor lab performance (missing labs, nonprofessional attitude or lack of active problem-solving, missed lectures)

Assessment criteria, excellent (5)

Excellent Final Exam >92%
and
expected lab performance (all labs done with average performance)
or
Good Final Exam >76%
and
superb lab performance (all labs done, actively learns new skills outside of the lab scope, is able to help fellow students, attended all lectures)

Qualifications

Basic skills in using both Windows and Linux systems
Basic networking skills (Cisco CCNA1 or similar)
Basic programming skills with some high level programming language (for example Python, Java, C# or similar)
Basic programming skills include (but are not limited to): output formatting, conditional execution, loops, functions/procedures, function parameters and return values, arrays, error handling, testing and good programming policies
Sufficient logical-mathematical thinking skills
Sufficient skills in English language (lectures and all materials are in English)

Further information

-

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