MSIT

MSIT 5240: Foundations of AI

MSIT 5240: Foundations of AI


Credits: 3

Prerequisites: 

No prerequisites are required with the course content: the student will be gradually introduced to the fundamental notions of Artificial Intelligence, and no assumption about previous knowledge is made.

Course Description: 

The course introduces the student to the principles and methods used to solve challenges in Artificial Intelligence, with specific attention on knowledge-based systems, computational logic approaches, smart city applications, industrial and automation scenarios. In particular, the Python programming language is used as a tool for implementing Artificial Intelligence systems. Some hints on neural networks and machine learning will be presented. Moreover, the current and future trends in Artificial Intelligence will be explored.

Required Textbook and Materials: 

UoPeople courses use open educational resources (OER) and other materials specifically donated to the University with free permissions for educational use. Therefore, students are not required to purchase any textbooks or sign up for any websites that have a cost associated with them. The main required textbooks for this course are listed below and can be readily accessed using the provided links. There may be additionally required/recommended readings, supplemental materials, or other resources and websites necessary for lessons; these will be provided for you in the course's General Information and Forums area, and throughout the term via the weekly course Unit areas and the Learning Guides.



Software Requirements/Installation: 

Throughout this course, we will be putting our skills into practice by completing the exercises in the http://artint.info/AIPython/  website, and the https://www.edureka.co/blog/artificial-intelligence-with-python/ website.

 


Learning Objectives and Outcomes:

By the end of this course, students will be able to:

  1. Examine the fundamental characteristics of artificial intelligence.
  2. Analyze the structure, types, characteristics, and behaviors of agents.
  3. Evaluate problem-solving strategies in artificial intelligence.
  4. Examine Knowledge Representation in Artificial Intelligence logic and systems.
  5. Assess the role of the application of probability in reasoning.
  6. Critique approaches to planning with certainty and uncertainty.
  7. Analyze the concepts of a Neural Network and a Deep Learning Approach.

Course Schedule and Topics: This course will cover the following topics in eight learning sessions, with one Unit per week.

Week 1: Unit 1 – Fundamentals of AI

Week 2: Unit 2 – Agents and Goals

Week 3: Unit 3 – Problem Solving as Search

Week 4: Unit 4 – Reasoning with Constraints

Week 5: Unit 5 – Knowledge Representation and Reasoning

Week 6: Unit 6 – Supervised Machine Learning, Deep Learning, and Neural Networks

Week 7: Unit 7 – Reasoning, Planning, and Learning with Uncertainty

Week 8: Unit 8 - Multi-agent Systems

 


Learning Guide: The following is an outline of how this course will be conducted, with suggested best practices for students.

Unit 1 – Fundamentals of AI

  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity

 

Unit 2 – Agents and Goals

  • Peer-assess unit 1 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity

 

 Unit 3 – Problem Solving as Search

  • Peer-assess unit 2 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity

  

Unit 4 – Reasoning with Constraints

  • Peer-assess unit 3 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity

 

Unit 5 – Knowledge Representation and Reasoning

  • Peer-assess unit 4 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity

 

Unit 6: Supervised Machine Learning, Deep Learning, and Neural Networks

  • Peer-assess unit 5 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity

 

Unit 7: Reasoning, Planning, and Learning with Uncertainty

  • Peer-assess unit 6 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity



Unit 8: 
Multi-agent Systems

  • Peer-assess unit 6 Case Study/ Written Assignment
  • Read through the Learning Guide and the Reading Assignment
  • Complete the Discussion Assignment by posting in the Discussion Forum
  • Respond to three of your fellow classmates’ posts in the Discussion Forum
  • Complete and submit the Case Study/ Written Assignment
  • Complete and submit the portfolio activity


Course Requirements: 

Discussion Assignments & Response Posts/Ratings
Some units in this course require that you complete a Discussion Assignment. You are required to develop and post a substantive response to the Discussion Assignment in the Discussion Forum. A substantive response is one that fully answers the question that has been posted by the instructor. In addition, you must extend the discussion by responding to at least three (3) of your peers’ postings in the Discussion Forum and by rating their posts. Instructions for proper posting and rating are provided inside the Discussion Forum for each week. Discussion Forums are only active for each current and relevant learning week, so it is not possible to contribute to the forum once the learning week has come to an end. Failure to participate in the Discussion Assignment by posting in the Discussion Forum and responding to peers as required may result in failure of the course.

Projects or Written Assignments & Assessment Forms
Most units in this course require that you complete a Written Assignment, which may come in many forms (case study, research paper, etc.). You are required to submit your assignments by the indicated deadlines and, in addition, to peer assess three (3) of your classmates’ assignments according to the instructions found in the Assessment Form, which is provided to you during the following week. During this peer assessment period, you are expected to provide details in the feedback section of the Assessment Form, indicating why you awarded the grade that you did to your peer. Please note that each assignment grade is comprised of a combination of your submission (90%) and your peer assessments (10%). Failure to submit Written Assignments and/or Assessment Forms may result in failure of the course.

Portfolio Activities

Portfolio Activities are tools for self-reflection and evaluation within the context of the course. These activities are designed as a means to document and reflect upon your learning process and critical thinking skills. Ideally, you will draw from your experiences inside and outside of the classroom, as well as what you’ve learned in other courses, to showcase your overall growth and examine ways in which you can continue to develop and sharpen your professional goals.

Course Forum
The Course Forum is the place to raise issues and questions relating to the course. It is regularly monitored by the instructors and is a good place to meet fellow students taking the same course. While it is not required to participate in the Course Forum, it is highly recommended.



Course Policies:

Grading Components and Weights

Each graded component of the course will contribute some percentage to the final grading scale, as indicated here:

Portfolio Activities

30%

Discussions

30%

Written /Case-study/Programming Assignment

40%

TOTAL

100%

 

 

Letter Grade

Grade Scale

Grade Points

A+

98-100

4.00

A

93-97

4.00

A-

90-92

3.67

B+

88-89

3.33

B

83-87

3.00

B-

80-82

2.67

C+

78-79

2.33

C

73-77

2.00

C-

70-72

0.00

D+

68-69

0.00

D

63-67

0.00

D-

60-62

0.00

F

Under 60

0.00

CR

N/A

N/A

NC

N/A

N/A

NF

N/A

N/A

W

N/A

N/A


Grade Appeal

If you believe that the final grade you received for a course is erroneous, unjust, or unfair, please contact your course instructor. This must be done within seven days of the posted final grade. For more information on this topic, please review the Grade Appeal Procedure in the University Catalog.

Participation
Non-participation is characterized by lack of any assignment submissions, inadequate contributions to the Discussion Forums, and/or lack of peer feedback to Discussion/Written Assignments. Also, please note the following important points about course participation:

  • Assignments must be submitted on or before the specified deadline. A course timeline is provided in the course schedule, and the instructor will specify deadlines for each assignment.
  • Any student showing non-participation for two weeks (consecutive or non-consecutive) is likely to automatically fail the course.
  • Occasionally there may be a legitimate reason for submitting an assignment late. Most of the time, late assignments will not be accepted and there will be no make-up assignments.
  • All students are obligated to inform their instructor in advance of any known absences which may result in their non-participation.

Academic Honesty and Integrity
When you submit any work that requires research and writing, it is essential to cite and reference all source material. Failure to properly acknowledge your sources is known as “plagiarism” – which is effectively passing off an individual’s words or ideas as your own. University of the People adheres to a strict policy of academic honesty and integrity. Failure to comply with these guidelines may result in sanctions by the University, including dismissal from the University or course failure. For more information on this topic, please review the Academic Integrity Policy in the University Catalog.

Any materials cited in this course should be referenced using the style guidelines established by the American Psychological Association (APA). The APA format is widely used in colleges and universities across the world and is one of several style and citation formats required for publication in professional and academic journals. Refer to the UoPeople's APA Tutorials in the LRC for help with APA citations.

Code of Conduct
University of the People expects that students conduct themselves in a respectful, collaborative, and honest manner at all times. Harassment, threatening behavior, or deliberate embarrassment of others will not be permitted. Any conduct that interferes with the quality of the educational experience is not allowed and may result in disciplinary action, such as course failure, probation, suspension, or dismissal. For more information on this topic, please review the Code of Conduct Policy in the University Catalog.