IoT Big Data and AnalyticsLaajuus (5 cr)
Code: 5000BL72
Credits
5 op
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
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)
Enrollment
14.12.2024 - 12.01.2025
Timing
13.01.2025 - 30.04.2025
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Unit
Engineering and Business
Campus
Kupittaa Campus
Teaching languages
- English
Seats
10 - 40
Degree programmes
- Degree Programme in Information and Communication Technology
- Degree Programme in Information and Communications Technology
Teachers
- Juha Saarinen
Teacher in charge
Juha Saarinen
Groups
-
ICTMODembeddedSem
-
PTIVIS23SEmbedded Software and IoT
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
Lecture material
Labwork exercises
Teaching methods
Lab works 7 x 3h, mandatory
Lectures 7 x 2h, mandatory
Self study
Exam schedules
One exam at the end of the course (late March).
Completion alternatives
-
Student workload
lab works 7x3h = 21h
lectures 7x2h = 14h
exam = 2h
self study = 73h
exam preparation 25h
TOTAL 135h
Content scheduling
1 Data at rest data in motion
2 Process of data analysis
3 Data preparation
4 Basics of descriptive statistics
5 Data visualization
6 Machine learning basics
7 Big data architectures
Further information
Course Itslearningn pages.
Evaluation scale
H-5
Assessment methods and criteria
Assessment is based on Labwork exercises and course exam. Labwork exercises are evaluated and every exercise need to returned. Half of the grade comes from exercises and other half from the course exam. Minimum reguirement to pass the course is to return all the exercises and to get 50% of the points in Course exam.
Assessment criteria, fail (0)
One or more labwork exercises missing or less than 50% of the points in course exam.
Assessment criteria, satisfactory (1-2)
The quality of the submitted exercises are poor and it is visible that the student has not put required effort in the exercises.
and
poor result from the course exam.
Assessment criteria, good (3-4)
The quality of the submitted exercises are good and it is visible that the student has spent the required time with the exercises but the student has not challenged his/her skills or the exercises lacks the final effort to improve it.
and
good result from the course exam.
Assessment criteria, excellent (5)
The quality of the submitted exercises are excellent and it is visible that the student has spent the required time or more with the exercises. The student has challenged his/her skills and exercises more about the topic to improve the end result
and
exelent result from the course exam
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)
Enrollment
01.06.2023 - 26.09.2023
Timing
25.09.2023 - 31.12.2023
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Unit
Engineering and Business
Campus
Kupittaa Campus
Teaching languages
- English
Seats
20 - 60
Degree programmes
- Degree Programme in Information and Communication Technology
- Degree Programme in Information and Communications Technology
Teachers
- Juha Saarinen
Teacher in charge
Juha Saarinen
Scheduling groups
- Laboratory Group 1 (Size: 30. Open UAS: 0.)
- Laboratory Group 2 (Size: 30. Open UAS: 0.)
Groups
-
ICTMODembeddedSem
-
PTIVIS22SEmbedded Software and IoT
Small groups
- Laboratory Group 1
- Laboratory Group 2
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
International connections
Lab works
Lectures
Self study
Completion alternatives
-
Student workload
lab works 7x4h = 28h
lectures 6x1h = 6h
exam = 2h
self study = 74h
exam preparation 25h
TOTAL 135h
Content scheduling
Chapter 1 Data and the Internet of Things
Chapter 2 Fundamentals of Data Analysis
Chapter 3 Data Analysis
Chapter 4 Advanced Data Analytics and Machine Learning
Chapter 5 Storytelling with Data
Chapter 6 Architecture for Big Data and Data Engineering
Further information
-
Evaluation scale
H-5
Assessment 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%
Assessment criteria, fail (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)
Enrollment
01.06.2022 - 11.09.2022
Timing
19.09.2022 - 09.12.2022
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Unit
Engineering and Business
Campus
Kupittaa Campus
Teaching languages
- English
Degree programmes
- Degree Programme in Information and Communications Technology
Teachers
- Juha Saarinen
Teacher in charge
Juha Saarinen
Groups
-
ICTMODembeddedSem
-
PTIVIS21SEmbedded Software and IoT
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
International connections
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
Content scheduling
Chapter 1 Data and the Internet of Things
Chapter 2 Fundamentals of Data Analysis
Chapter 3 Data Analysis
Chapter 4 Advanced Data Analytics and Machine Learning
Chapter 5 Storytelling with Data
Chapter 6 Architecture for Big Data and Data Engineering
Further information
-
Evaluation scale
H-5
Assessment 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%
Assessment criteria, fail (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)
Enrollment
01.12.2021 - 19.01.2022
Timing
10.01.2022 - 30.04.2022
Number of ECTS credits allocated
5 op
Mode of delivery
Contact teaching
Unit
Engineering and Business
Campus
Kupittaa Campus
Teaching languages
- English
Degree programmes
- Degree Programme in Information and Communications Technology
Teachers
- Juha Saarinen
Groups
-
PIOTK21Degree Programme in Information Technology, Cyber Security and IoT
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
International connections
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
Content scheduling
Chapter 1 Data and the Internet of Things
Chapter 2 Fundamentals of Data Analysis
Chapter 3 Data Analysis
Chapter 4 Advanced Data Analytics and Machine Learning
Chapter 5 Storytelling with Data
Chapter 6 Architecture for Big Data and Data Engineering
Further information
-
Evaluation scale
H-5
Assessment 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%
Assessment criteria, fail (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)