Artificial intelligence (AI) continues to change industries and job markets around the world. As more companies adopt AI tools and systems, the demand for people who understand how these technologies work has increased.

Research from Stanford University and the World Bank shows that since the launch of ChatGPT in 2022, workers in AI-related jobs have seen the biggest wage gains. Those building and guiding AI systems now hold some of the fastest-growing roles in the economy, with median salaries above $135,000.

According to Eugene Vinitsky, a professor and AI researcher at New York University’s Tandon School of Engineering, “Math and computer science skills are always helpful. But in the future, a powerful combination will be understanding AI deeply enough to avoid basic mistakes—while also having real expertise in another domain.”

Read also: Top 10 tech careers in Nigeria with the best salaries in 2025

Experts agree that no single degree will prepare a student for every AI career. The best approach is to build technical fluency in AI while combining it with knowledge from another field, such as design, economics, or neuroscience. This mix helps graduates apply AI tools to real-world problems and adapt as technology evolves.

When choosing a university, prospective students are advised to look beyond rankings. Instead, they should focus on access to research labs, practical projects, and internships, which provide direct experience with AI systems.

Read also: Nigeria’s 10 most lucrative jobs in the IT industry

According to Investopedia, here are some of the college degrees most often requested by employers in AI-related job postings. Each path offers different skills and entry points into the growing AI economy.

1. Cognitive Science / Neuroscience / Linguistics

These degrees prepare graduates for roles in natural language processing (NLP), human-AI interaction (HAI), and product AI. Students often study cognitive psychology, linguistics, psychometrics, and experimental design. Adding a computer science minor or taking courses in UX or ethics can improve job prospects. Graduates bring a human-centred perspective to AI development but need strong programming and statistics skills to compete for technical roles.

2. Computer Science / Software Engineering

This path leads to roles such as machine learning engineer, software engineer (AI/ML), and ML operations specialist. Core courses include algorithms, databases, deep learning, and distributed systems. A mathematics or statistics minor and cloud certifications can add value. Computer science remains the most direct route into AI, but may lack large-scale project work unless students seek practical experience.

Read also: 5 highest-paying IT certifications to pursue in 2025

3. Data Science / Statistics / Applied Mathematics

Graduates from these programmes often become data scientists, research engineers, or quantitative analysts. They study probability, optimisation, causal inference, and statistical learning. Combining this with computer science or SQL skills builds a strong foundation for analytics and research. While this path develops deep modelling ability, limited software engineering exposure can be a barrier.

4. Domain Degree + Computer Science or AI Overlay

This model combines subject expertise in areas like biology, climate science, or finance with AI knowledge. It prepares graduates for applied machine learning and analytics roles within specific sectors. Those who pursue this route gain insight into how AI can solve practical problems in their fields. However, the risk is developing shallow technical skills unless the coursework is carefully planned.

Rest also: Top 5 data analytics certifications to advance your career in 2025

5. Electrical / Computer Engineering (EE/CE)

Engineering students can work in embedded or edge AI, hardware–software co-design, and AI acceleration using GPUs or ASICs. They study digital systems, control theory, and signal processing, with electives in CUDA or FPGA development. This background is valuable in robotics and edge computing, though students may need extra AI coursework for deeper expertise.

6. Human–Computer Interaction (HCI) / Design + Computer Science

Graduates in this field move into AI product, UX, and prompt design roles. The curriculum includes prototyping, UX research, data visualisation, and ethics. Studio courses and industry projects are helpful. This degree bridges the gap between AI systems and users, making it useful for building tools that people interact with daily. Without a strong technical base, however, graduates may face limits in more advanced AI roles.

Read also: 10 career opportunities with an engineering degree and salaries

7. Mathematics (Pure or Applied)

Mathematics provides a foundation for research and algorithm design. Students study linear algebra, optimisation, and numerical methods. Adding computer science or machine learning courses helps them apply theory to AI problems. While the degree develops strong analytical ability, students must build coding experience to translate concepts into practice.

8. Philosophy / Ethics / Policy

This path suits those interested in AI ethics, governance, and responsible AI. Courses cover logic, philosophy of mind, and political philosophy. A computer science or public policy minor strengthens understanding of how AI affects society. Graduates often work on questions around fairness, accountability, and transparency in AI systems. Technical literacy remains key for effective collaboration with developers.

Read also: 5 highest paying bachelor’s degrees to pursue in 2024 — Research

9. Physics

Physics students can enter AI through modelling, simulation, or quantitative research. Their training in differential equations, computational methods, and data analysis aligns with AI’s focus on prediction and optimisation. However, to pivot fully into AI, additional software and ML coursework are required.

10. Robotics / Mechatronics / Control Theory

This path leads directly to roles such as robotics engineer or autonomy specialist. Students take courses in control theory, computer vision, and reinforcement learning. Exposure to real-time systems and simulation tools like ROS or Gazebo prepares them for designing intelligent machines and autonomous systems.

Chisom Michael is a data analyst (audience engagement) and writer at BusinessDay, with diverse experience in the media industry. He holds a BSc in Industrial Physics from Imo State University and an MEng in Computer Science and Technology from Liaoning Univerisity of Technology China. He specialises in listicle writing, profiles and leveraging his skills in audience engagement analysis and data-driven insights to create compelling content that resonates with readers.

Join BusinessDay whatsapp Channel, to stay up to date

Open In Whatsapp