The BS (Artificial Intelligence) program gives the students an in-depth knowledge they need to transform large and complex scenarios into actionable decisions. The program and its curriculum focus on how complex inputs such as knowledge, vision, language and huge databases can be used to make decisions to enhance human capabilities. The curriculum of the BSAI program includes coursework in computing, mathematics, automated reasoning, statistics, computational modeling, introduction to classical artificial intelligence languages and case studies, knowledge representation and reasoning, artificial neural networks, machine learning, natural language processing, vision and symbolic computation. The program also encourages students to take courses in ethics and social responsibility, with the opportunity to participate in long term projects in which artificial intelligence can be applied to solve problems that can change the world for the better, in areas like agriculture, defense, healthcare, governance, transportation, e-commerce, finance and education etc.Program StructureThe BSAI program equips students with essential AI skills in computing, mathematics, and machine learning. They explore specialized areas like natural language processing and computer vision. Emphasis on ethics and societal impact prepares them for diverse AI applications in fields like healthcare, finance, and governance. Through projects and industry engagement, students gain practical experience, readying them for careers as AI specialists and innovators.
Eligibility Criteria
- FA/F. Sc or Equivalent qualifications with at least second division, securing 50% marks in aggregate.
- The students who have not studied Mathematics at intermediate level must pass deficiency courses of Mathematics of 6 credit hours within one year of their regular studies.
- Qualifying for the admission test and interview is compulsory. A candidate scoring less than 40% marks in the test and interview will stand disqualified for admission.
- Candidates who have secured at least 40% in the NTS-NAT are also eligible to apply.
- The merit of a candidate shall be measured by a 50 % weight age to the marks obtained in HSC or equivalent, 40 % to the marks obtained in the written test, and 10% to the marks obtained in the interview.
- A candidate shall be given a special credit of thirty marks for admission in each program mentioned above if he/she has studied Computer Science and/or statistics at intermediate level (for BS-Data Science program only) at intermediate level or has done A level.
- The Hafiz Quran shall be given a special credit of 20 marks.
- The credit marks shall be added to the marks obtained at HSC or equivalent, subject to fulfilment of basic eligibility criteria of 50% marks.
Degree Requirements
For a BS (Artificial Intelligence) 4-year degree, a student is required to complete a minimum of 130-140 credit hours including a 6-credit hour research thesis/project. The normal duration for completion of BS (Artificial Intelligence) degree is 8 semesters over a period of 4 years. The maximum duration for obtaining BS (Artificial Intelligence) degree shall be 7 years.
Program Educational Objectives (PEOs) for BS (Artificial Intelligence)
PEO 1: To equip students with both theoretical understanding and practical expertise in Artificial Intelligence, enabling them to ethically and effectively apply AI technologies across diverse domains.
PEO 2: To groom its students to communicate effectively, demonstrate leadership qualities and professional integrity.
PEO 3: To inculcate the ability in its students to continue enhancing their computing knowledge and skills after graduation and excel in their careers as researchers, professionals, and entrepreneurs.
PEO 4: To groom its students to be effective, after graduation, in society and diverse professional environments maintaining high ethical standards.
Graduate Attributes (GAs) for BS (Artificial Intelligence) Program
The Graduates Attributes (GAs) are exemplars of the qualities and attributes expected of a graduate from an accredited program. Graduates Attributes (GAs) are the components indicative of the graduate’s potential to acquire competence to practice at the appropriate level.
The following GAs for undergraduate computing programs has been adopted from the Seol Accord as recommended by the National Computing Education Accreditation Council (NCEAC).
GA 1: Gain an understanding of the underpinning theories of fundamental principles and technologies within the area of computer science (Academic education).
GA 2: Apply knowledge of computing fundamentals, knowledge of a computing specialization, and mathematics, science, and domain knowledge appropriate for the computing specialization to the abstraction and conceptualization of computing models from defined problems and requirements (Knowledge for Solving Computing Problems).
GA 3: Identify, formulate, research literature, and solve complex computing problems reaching substantiated conclusions using fundamental principles of mathematics, computing sciences, and relevant domain disciplines (Problem Analysis).
GA 4: Design and evaluate solutions for complex computing problems, and design and evaluate systems, components, or processes that meet specified needs with appropriate consideration for public health and safety, cultural, societal, and environmental considerations (Design/ Development of Solutions)
GA 5: Create, select, adapt, and apply appropriate techniques, resources, and modern computing tools to complex computing activities, with an understanding of the limitations (Modern Tool Usage)
GA 6: Function effectively as an individual and as a member or leader in diverse teams and in multi-disciplinary settings (Individual and Teamwork)
GA 7: Communicate effectively with the computing community and with society about complex computing activities by being able to comprehend and write effective reports, design documentation, make effective presentations, and give and understand clear instructions (Communication)
GA 8: Understand and assess societal, health, safety, legal, and cultural issues within local and global contexts, and the consequential responsibilities relevant to professional computing practice (Computing Professionalism and Society)
GA 9: Understand and commit to professional ethics, responsibilities, and norms of professional computing practice (Ethics)
GA 10: Recognize the need, and have the ability, to engage in independent learning for continual development as a computing professional (Life-long Learning)Curriculum Model for BS- Artificial IntelligenceThe generic structure for computing degree program given before is mapped with the BSAI program in the following tables.
Structure for BS (Artificial Intelligence) Program
Areas |
Credit Hours |
Courses |
Computing Core |
46 |
14 |
Domain Core |
18 |
6 |
Domain Elective |
21 |
7 |
Mathematics & Supporting Courses |
12 |
4 |
Elective Supporting Courses |
3 |
1 |
General Education Requirement |
30 |
12 |
Totals |
130 |
44 |
Mapping of BS (Artificial Intelligence) Program on the Generic Structure:
# |
Sem # |
Code |
Pre- Reqs |
Course Title |
Dom |
Cr Hr |
|
|
|
|
Computing Core (46/130) 14 Courses | ||
1 |
|
CS1xx |
|
Programming Fundamentals |
Core |
4 (3-3) |
2 |
|
CS1xx |
PF |
Object Oriented Programming |
Core |
4 (3-3) |
3 |
|
CS1xx |
|
Database Systems |
Core |
4 (3-3) |
4 |
|
CS1xx |
|
Digital Logic Design |
Core |
3 (2-3) |
5 |
|
CS2xx |
OOP |
Data Structures |
Core |
4 (3-3) |
6 |
|
CS2xx |
|
Information Security |
Core |
3 (2-3) |
7 |
|
CS2xx |
|
Artificial Intelligence |
Core |
3 (2-3) |
8 |
|
CS2xx |
|
Computer Networks |
Core |
3 (2-3) |
9 |
|
CS2xx |
|
Software Engineering |
Core |
3 (3-0) |
10 |
|
CS2xx |
DLD |
Computer Organization & Assembly Language |
Core |
3 (2-3) |
11 |
|
CS3xx |
|
Operating Systems |
Core |
3 (2-3) |
12 |
|
CS4xx |
DS |
Analysis of Algorithms |
Core |
3 (3-0) |
13 |
|
CS4xx |
|
Final Year Project – I |
Core |
2 (0-6) |
14 |
|
CS4xx |
FYP-I |
Final Year Project – II |
Core |
4 (0-12) |
Domain Core (18/130) 6 Courses | ||||||
15 |
|
CS2xx |
|
Programming for AI |
Domain Core |
3 (2-3) |
16 |
|
CS2xx |
|
Machine Learning |
Domain Core |
3 (2-3) |
17 |
|
CS3xx |
|
Artificial Neural Networks & Deep Learning |
Domain Core |
3 (2-3) |
18 |
|
CS3xx |
|
Knowledge Representation & Reasoning |
Domain Core |
3 (2-3) |
19 |
|
CS3xx |
|
Computer Vision |
Domain Core |
3 (2-3) |
20 |
|
CS3xx |
|
Parallel & Distributed Computing |
Domain Core |
3 (2-3) |
Domain Elective (21/130) 7 Courses | ||||||
21 |
|
CS3xx |
|
Natural Language Processing |
Domain Elective |
3 (2-3) |
|
|
|
|
Multimedia Technologies |
|
|
23 |
|
CS3xx |
|
Data Mining |
Domain Elective |
3 (2-3) |
24 |
|
CS3xx |
|
Human-Centered Artificial Intelligence |
Domain Elective |
3 (2-3) |
25 |
|
CS3xx |
|
Generative AI |
Domain Elective |
3 (2-3) |
26 |
|
CS3xx |
|
Theory of Automata |
Domain Elective |
3 (3-0) |
27 |
|
CS4xx |
|
HCI & Computer Graphics |
Domain Elective |
3 (2-3) |
. |
|
|
|
Fuzzy Systems |
Domain Elective |
3 (2-3) |
. |
|
|
|
Swarm Intelligence |
Domain Elective |
3 (2-3) |
. |
|
|
|
Agent Based Modeling |
Domain Elective |
3 (2-3) |
. |
|
|
|
Knowledge Based Systems |
Domain Elective |
3 (2-3) |
Mathematics & Supporting Courses (12/130) 4 Courses | ||||||
28 |
|
MT1xx |
CAG |
Multivariable Calculus |
Maths |
3 (3-0) |
29 |
|
MT1xx |
CAG |
Linear Algebra |
Maths |
3 (3-0) |
30 |
|
MT2xx |
|
Probability & Statistics |
Maths |
3 (3-0) |
31 |
|
EW4xx |
ECC |
Technical & Business Writing |
EW |
3 (3-0) |
Elective Supporting Courses (3/130) 1 Course | ||||||
32 |
|
SS1xx |
|
Social Science (Example: Introduction to Marketing) |
SS |
3 (3-0) |
. |
|
SS1xx |
|
Social Science (Example: Financial Accounting) |
SS |
3 (3-0) |
General Education Requirement as per HEC UG Education Policy (30/130) 12 Courses | ||||||
33 |
|
GE1xx |
|
Application of Information & Communication Technologies |
GER |
3 (2-3) |
34 |
|
GE1xx |
|
Functional English |
GER |
3 (3-0) |
35 |
|
GE1xx |
ECC |
Expository Writing |
GER |
3 (3-0) |
36 |
|
GE1xx |
|
Quantitative Reasoning – 1 (Discrete Structures) |
GER |
3 (3-0) |
37 |
|
GE1xx |
|
Quantitative Reasoning – 2 (Calculus and Analytic Geometry) |
GER |
3 (3-0) |
38 |
|
GE2xx |
|
Islamic Studies |
GER |
2 (2-0) |
39 |
|
GE4xx |
|
Ideology and Constitution of Pakistan |
GER |
2 (2-0) |
40 |
|
GE2xx |
|
Social Sciences (Example: Introduction to Management) |
GER |
2 (2-0) |
41 |
|
GE2xx |
|
Natural Sciences (Applied Physics) |
GER |
3 (2-3) |
42 |
|
GE4xx |
|
Arts & Humanities (Professional Practices) |
GER |
2 (2-0) |
43 |
|
GE4xx |
|
Civics and Community Engagement |
GER |
2 (2-0) |
44 |
|
GE4xx |
|
Entrepreneurship |
GER |
2 (2-0) |
Semester/Study Plan for BS (Artificial Intelligence)
# |
Code |
Pre-Reqs |
Course Title |
Domain |
Cr Hr (Cont Hr) |
Semester 1 | |||||
1 |
CS1xx |
|
Programming Fundamentals |
Core |
4 (3-3) |
2 |
GE1xx |
|
Application of Information & Communication Technologies |
GER |
3 (2-3) |
4 |
GE1xx |
|
Calculus and Analytic Geometry – QR 1 |
GER |
3 (3-0) |
5 |
GE1xx |
|
Functional English |
GER |
3 (3-0) |
22 |
GE2xx |
|
Islamic Studies |
GER |
2 (2-0) |
|
|
|
Total Cr Hrs |
15 (13-6) |
|
Semester 2 | |||||
6 |
CS1xx |
PF |
Object Oriented Programming |
Core |
4 (3-3) |
10 |
MT1xx |
CAG |
Linear Algebra |
Maths |
3 (3-0) |
42 |
GE4xx |
|
Ideology and Constitution of Pakistan |
GER |
2 (2-0) |
21 |
GE1xx |
|
Expository Writing |
GER |
3 (3-0) |
28 |
GE2xx |
|
Social Science Course |
GER |
2 (2-0) |
13 |
GE2xx |
|
Applied Physics — Natural Science |
GER |
3 (2-3) |
|
|
|
Total Cr Hrs |
17 (15-6) |
|
Semester 3 | |||||
11 |
CS2xx |
OOP |
Data Structures |
Core |
4 (3-3) |
23 |
CS3xx |
|
Operating Systems |
Core |
3 (2-3) |
3 |
GE1xx |
|
Discrete Structures – QR 2 |
GER |
3 (3-0) |
9 |
MT1xx |
CAG |
Multivariable Calculus |
Maths |
3 (3-0) |
44 |
GE4xx |
|
Civics and Community Engagement |
GER |
2 (2-0) |
8 |
CS1xx |
|
Digital Logic Design |
Core |
3 (2-3) |
|
|
|
Total Cr Hrs |
18 (15-9) |
|
Semester 4 | |||||
36 |
CS4xx |
DS |
Analysis of Algorithms |
Core |
3 (3-0) |
17 |
CS2xx |
|
Computer Organization & Assembly Language |
Core |
3 (2-3) |
7 |
CS1xx |
|
Database Systems |
Core |
4 (3-3) |
16 |
MT2xx |
COAL |
Probability & Statistics |
Maths |
3 (3-0) |
15 |
CS2xx |
|
Software Engineering |
Core |
3 (3-0) |
20 |
CS2xx |
|
Artificial Intelligence |
Core |
3 (2-3) |
|
|
|
Total Cr Hrs |
19 (16-9) |
|
Semester 5 | |||||
14 |
CS2xx |
|
Computer Networks |
Core |
3 (2-3) |
18 |
CS2xx |
|
Domain Core 1 |
Domain Core |
3 (2-3) |
19 |
CS2xx |
|
Domain Core 2 |
Domain Core |
3 (2-3) |
24 |
CS3xx |
|
Domain Core 3 |
Domain Core |
3 (2-3) |
39 |
EN4xx |
|
Technical & Business Writing |
EN |
3 (3-0) |
43 |
GE4xx |
|
Professional Practices — Arts & Humanities |
GER |
2 (2-0) |
|
|
|
Total Cr Hrs |
17 (13-12) |
|
Semester 6 | |||||
25 |
CS3xx |
|
Domain Core 4 |
Domain Core |
3 (2-3) |
12 |
CS2xx |
|
Information Security |
Core |
3 (2-3) |
26 |
CS3xx |
|
Domain Elective 1 |
Domain Elective |
3 (2-3) |
27 |
CS3xx |
|
Domain Elective 2 |
Domain Elective |
3 (2-3) |
38 |
SS1xx |
|
Social Science Course |
SS |
3 (3-0) |
40 |
GE4xx |
|
Entrepreneurship |
GER |
2 (2-0) |
|
|
|
Total Cr Hrs |
17 (14-9) |
|
Semester 7 | |||||
35 |
CS4xx |
|
Final Year Project – I |
Core |
2 (0-6) |
31 |
CS3xx |
|
Domain Elective 3 |
Domain Elective |
3 (2-3) |
32 |
CS3xx |
|
Domain Elective 4 |
Domain Elective |
3 (2-3) |
33 |
CS3xx |
|
Domain Elective 5 |
Domain Elective |
3 (2-3) |
29 |
CS3xx |
|
Domain Core 5 |
Domain Core |
3 (2-3) |
|
|
|
Total Cr Hrs |
14 (8-18) |
|
Semester 8 | |||||
41 |
CS4xx |
|
Final Year Project – II |
Core |
4 (0-12) |
30 |
CS3xx |
OS |
Domain Core 6 |
Domain Core |
3 (2-3) |
34 |
CS3xx |
|
Domain Elective 6 |
Domain Elective |
3 (2-3) |
37 |
CS4xx |
|
Domain Elective 7 |
Domain Elective |
3 (2-3) |
|
|
|
Total Cr Hrs |
13 (6-21) |