How does the brain support adaptive decision making in the real world?
Recent advances in AI have provided us with models that rival humans on challenging naturalistic tasks and can serve as starting points for tackling this question head-on. At the same time, as frontier AI labs push the limits of scaling laws, many doubt whether more data and compute alone will lead to human-level learning, planning, and generalization.
The new Human & Machine Intelligence Lab at Boston College is recruiting 1-2 PhD students to work on reverse-engineering naturalistic learning and decision making in the brain. Specifically, we aim to understand:
- How the human brain learns internal models of complex, naturalistic environments.
- How it uses these models to plan toward distant goals.
- How it generalizes this knowledge to new environments.
Building on recent work in theory-based RL [1], you will tackle these questions by leveraging state-of-the-art AI models (e.g., DDQN, MuZero, LLMs/VLMs) to analyze behavioral, fMRI, and MEG data from human subjects engaging in rich tasks, such as learning to play new video games. You will also have the opportunity to design and conduct experiments (behavior/fMRI/MEG) to test your hypotheses.
The lab is led by Momchil Tomov (starting in Fall 2026) and is joint between the Department of Psychology & Neuroscience and the Department of Computer Science.
Why Boston College?
Boston College is an elite R1 research institution in the heart of the Boston metropolitan area. Greater Boston is a powerhouse of innovation, home to over 35 colleges and universities β including Harvard and MIT β and a thriving ecosystem of AI & biotech startups. As a PhD student, you will be immersed in this vibrant research community while enjoying the benefits of living in a diverse, bustling metropolis. For the outdoors-inclined, New England offers scenic opportunities to escape city life: from sailing on the Charles River, to hiking or skiing in the White Mountains, to surfing off the shores of Rhode Island, to enjoying freshly caught oysters on Cape Cod.
Position Details
- Lab: Human & Machine Intelligence
- PI: Momchil Tomov
- Website: www.momchiltomov.com
- Contact: mtomov+neurostars@g.harvard.edu
- Stipend: $45,000 / year (fully-funded)
- Start date: September, 2026
Application
- Deadline: December 15, 2025
- Department of Psychology & Neuroscience: [APPLY HERE]
- Department of Computer Science: [APPLY HERE]
Requirements
The ideal candidate has experience with state-of-the-art RL models/LLMs/VLMs and/or experience analyzing behavioral/neural data. Experience collecting fMRI/MEG data is a plus.
Please do not hesitate to reach out with questions! We also encourage you to forward this to anyone who might be interested.
References
[1] Tomov, M. S., Tsividis, P., Pouncy, T., Tenenbaum, J. B., Gershman, S. J. (2023). βThe neural architecture of theory-based reinforcement learning.β Neuron 111 (2): 454-469. https://doi.org/10.1016/j.neuron.2023.01.023