Ateneo machine learning lab opens doors to industry partners, collaborators
In Photo: Dr. Pai Abu demonstrates how doctors carefully teach a smart visual system to identify patterns and features on the human body that are of potential medical interest. Such interdisciplinary partnerships between topic experts and computer scientists are invaluable towards developing practical, real-world solutions. SOURCE: OAVP-RCWI, 2026.
Machine learning is one of today’s most important innovations because it allows computers to learn complex and subtle patterns that even the best human experts struggle with in a broad range of fields—from medicine to urban planning.
Seeing the vast potential for this growing field, the Ateneo Laboratory for Intelligent Visual Environments (ALIVE) is eager to co-develop machine learning solutions with leading experts from various disciplines.

One of the most surprising things about machine learning is that, despite how powerful computers are, they do not learn the way humans do: a toddler can easily recognize a familiar face, tell when something looks unusual, or make sense of a busy play area with very little instruction—but for a computer, those same tasks can be difficult and painstaking. Computer vision systems usually need large datasets, careful labeling, repeated training, and constant testing before they can handle changes in lighting, camera angles, weather, and real-world noise.

This counterintuitive gap—where machines can excel at perception better than a human but require more extensive training than the latter—was a central theme of the Second Ateneo Breakthroughs lecture, held on 26 February 2026 at Escaler Hall, where computer scientist Dr. Patricia “Pai” Angela R. Abu delivered “Smarter Sight: Building Intelligent Visual Systems for Public Good”.
View Abu’s full lecture at ateneo.edu/breakthroughs
In her talk, Abu explained why interdisciplinary partnerships matter: building a reliable machine-learning system requires bridging messy reality and mathematical models, then proving that the system holds up under real-world conditions.
An Associate Professor and Chair of the Ateneo de Manila University Department of Information Systems and Computer Science (DISCS), Abu leads her team at ALIVE to develop machine-learning approaches in computer vision, image processing, and related methods, with applications that range from biomedical imaging to traffic systems.
In healthcare, ALIVE has worked on tools such as a dental imaging support system and patch-based deep learning models for detecting bone metastasis—examples of how machine learning can help specialists work more consistently by highlighting patterns in images that can be difficult to spot at scale. Another example of ALIVE’s work is V-PROBE (Vehicle and Pedestrian Real-Time Observation and Behavioral Evaluation), a system designed to monitor traffic flow, anticipate parking availability, and flag congestion risks before they escalate.
Projects like these depend on close coordination with stakeholders who manage complex environments, where a model must perform not only in a clean demo but in daily operations with shifting conditions and high public expectations.
ALIVE’s current priority is to deepen collaboration with industry so that research can be tested beyond the laboratory. Industry partners can help provide operational environments, domain expertise, data pipelines, and deployment pathways—so systems can be evaluated against practical requirements like speed, privacy and security safeguards, hardware constraints, and reliability across diverse real-world situations. These collaborations also help research teams identify what truly matters to end users, helping transform novel laboratory experiments into life-changing innovations.
