# INTERDISCIPLINARY TRAINING IN COMPUTATIONAL NEUROSCIENCE

> **NIH NIH R90** · CARNEGIE-MELLON UNIVERSITY · 2020 · $239,423

## Abstract

Project Summary

To understand the many disorders of the brain it is necessary to grapple with its complexity. 
Increasingly large and complicated data sets are being collected, but the tools for analyzing and 
modeling the data are not yet available. More researchers trained in computational neuroscience are 
desperately needed. This project supports graduate and undergraduate training programs in 
computational neuroscience (TPCN) at both Carnegie Mellon University (CMU) and the University of 
Pittsburgh (Pitt), and a summer school in computational neuroscience for undergraduates, which are 
available to students coming from colleges and universities throughout the United States.

The CMU-Pitt TPCN has 16 training faculty in computational neuroscience, 22 training faculty whose 
laboratories are primarily experimental, and 20 training faculty whose laboratories are both 
computational and experimental. At the graduate level the TPCN offers a PhD program in Neural 
Computation (PNC) and joint PhD programs with CMU’s Department of Statistics (PNC-Stat) and its 
Machine Learning Department (PNC- MLD), all set within a highly collegial, cross-disciplinary 
environment of our Center for the Neural Basis of Cognition (CNBC), which is operated jointly by 
CMU and Pitt. The CNBC was established in 1994 to foster interdisciplinary research on the neural 
mechanisms of brain function, and now comprises 145 faculty having appointments in 22 departments. 
At the undergraduate level a substantial pool of local students is supplemented during the summer 
by a cohort of students from across the country. During this renewal funding period the project is 
strengthening the role of statistics and machine learning throughout the training programs;
(2) revising the summer undergraduate program by creating a didactic two-week “boot camp” at the 
beginning, which includes a 20-lecture overview of computational neuroscience; (3) creating online 
materials, in conjunction with the boot camp, that will serve not only our own students but also 
the greater world of training in computational neuroscience; and (4) enhancing our minority 
recruitment by (a) taking advantage of the boot camp and online materials, as well as making 
promotional visits to targeted campuses, and (b) creating and running a one-year “bridge” program 
to better prepare under-represented minorities for PhD programs.

TPCN trainees work in vertically integrated, cross-disciplinary research teams. Graduate students 
take a year- long course in computational neuroscience that bridges modeling and modern statistical 
machine learning approaches to neuroscience. To ensure their competency in core neuroscience 
principles they also take courses in cognitive neuroscience, neurophysiology, and systems 
neuroscience. They then pursue depth in a relevant quantitative discipline, such as computer 
science, engineering, mathematics, or statistics. Graduate students have extended experience in at 
least one ex...

## Key facts

- **NIH application ID:** 10004013
- **Project number:** 5R90DA023426-15
- **Recipient organization:** CARNEGIE-MELLON UNIVERSITY
- **Principal Investigator:** ROBERT E KASS
- **Activity code:** R90 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $239,423
- **Award type:** 5
- **Project period:** 2006-09-30 → 2022-08-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10004013

## Citation

> US National Institutes of Health, RePORTER application 10004013, INTERDISCIPLINARY TRAINING IN COMPUTATIONAL NEUROSCIENCE (5R90DA023426-15). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10004013. Licensed CC0.

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