ACT in research and industry
If you have suggestions of links/references for this resources page, please submit information to this form.
Conferences, workshops, seminars
A few recommendations for hearing about events and staying informed about current research.
- Here is a list of larger events in the ACT community, in particular the annual international ACT conference, the annual Adjoint School, and the series of symposia on compositional structures (SYCO).
- The Topos Institute is a hub of leading research in ACT and hosts a regular colloquium, organizes workshops and seminars, and posts regularly on their blog.
- ACT google group (mainly for event announcements)
- Research talks: MIT Category Theory Seminar
ACT in industry
Beyond research collaborations with companies and organizations such as NASA or Amazon, here are a few selected links to enterprises that use category theory in a central way. To learn more about ACT in industry, the annual category theory conference has an industry panel, for example. (See the industry panel from 2023 here.)
- Conexus (Databases); see also https://www.categoricaldata.net/
- Quantinuum (Quantum computing)
- Symbolica (AI)
Selected publications
There is an enormous body of research in category theory and its applications. Here is a small number of entry points to explore what is out there.
- Compositionality is a journal specifically founded to publish research in applied category theory and compositional structures more generally.
- Proceedings of the annual conference in applied category theory. You may search for the proceedings on the arXiv, then once on a specific proceedings arXiv page, click on “HTML” to view a table of contents with links. For example, see here for the proceedings of 2023.
Other resources
A small selection of links.
- AlgebraicJulia, bringing compositionality to technical computing
- DisCoPi, a Python toolkit for computing with string diagrams
- Category Theory and Machine Learning, a repository of research papers
- Talks related to category theory and machine learning
- Categorical Cybernetics Institute