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The Master’s Program in Applied Machine Learning prepares professionals to develop intelligent solutions capable of addressing the concrete challenges of digital transformation.
With a strong practical focus, the program covers areas such as deep learning, computer vision, generative models, and intelligent robotics, providing advanced technical skills to design, implement, and evaluate systems based on artificial intelligence.
Artificial intelligence is profoundly transforming the way organizations innovate, make decisions, and create value. Machine Learning, as one of the most dynamic areas of this technological ecosystem, requires professionals with a solid scientific background, advanced technical skills, and applied vision.
The Master’s Program in Applied Machine Learning was designed to address this need, offering a rigorous, practice-oriented education that combines robust theoretical foundations with the development of concrete solutions to real-world challenges.
Throughout the program, participants will engage with methodologies, tools, and application cases that reflect the state-of-the-art in the field, exploring everything from advanced deep learning architectures to generative models, intelligent robotics, and AI-based systems engineering.
More than just keeping pace with technological evolution, this program prepares professionals capable of leading its critical, ethical, and innovative application across a wide range of organizational and scientific contexts.
2026/2027
Program Format
The graduate program is designed for working professionals and is primarily delivered in a hybrid format, combining in-person sessions at Iscte’s Sintra Campus with distance learning (DL).
Students may choose to attend classes in person on campus or online via the Microsoft Teams and Moodle platforms.
The pedagogical structure of each course unit includes:
Synchronous sessions take place after work hours, between 6:00 PM and 8:00 PM, with an estimated weekly workload of 2 to 4 hours, distributed across 2 to 3 courses simultaneously.
| Unidades curriculares | Semester | ECTS |
|---|---|---|
| Deep Learning Fundamentals | 1 | 6.0 |
| Deep Learning for Computer Vision | 1 | 6.0 |
| Generative Language Models | 1 | 6.0 |
| High Performance Graphical Computing | 1 | 6.0 |
| Topics in Intelligent Robotics | 1 | 6.0 |
| Advanced Topics in Deep Learning | 2 | 6.0 |
| Computational Optimization | 2 | 6.0 |
| Intelligent Models Engineering | 2 | 6.0 |
| Societal Artificial Intelligence | 2 | 6.0 |
Recommended elective
2026/2027
The program prepares professionals for highly specialized roles in the fields of artificial intelligence and data science, including:
· Machine Learning Engineer
· AI / GenAI Engineer
· Large Language Models (LLMs) Expert
· Deep Learning Engineer
Graduates will be able to join technology companies, research centers, innovation labs, and development teams focused on digital transformation and intelligent systems.
| Round | Start Date | End Date | Vacancies | Application fee |
|---|---|---|---|---|
| Supplementary round | PG | 2026-08-27 09:30 | 2026-09-23 17:00 | 70.00 € | |
| 4th round | PG | 2026-04-07 09:30 | 2026-05-13 17:00 | 35 | 70.00 € |
| 5th round | PG | 2026-05-14 09:30 | 2026-06-24 17:00 | 70.00 € | |
| 6th round | PG | 2026-06-25 09:30 | 2026-08-26 17:00 | 70.00 € |
Tuition Fees
Target Audience and Prerequisites
This graduate program is primarily intended for candidates with a higher education background in Information Technology, specifically Computer Engineering, Computer Science, or related fields, with intermediate programming experience.
Candidates from other fields of study may also be admitted, subject to review of their academic background and statement of purpose.
It is recommended that candidates possess: