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Theory and Algorithms for Discrete Generative Modeling

ABG-139837 Thesis topic
2026-07-13 Public funding alone (i.e. government, region, European, international organization research grant)
INSA LYON
Villeurbanne - Auvergne-Rhône-Alpes - France
Theory and Algorithms for Discrete Generative Modeling
  • Mathematics
  • Computer science
discrete generative modeling, stochastic processes, geometry on probability space, LLM

Topic description

Discrete generative modeling is essential for learning complex distributions over structured data
such as text, graphs, and biological sequences. Developing and understanding models for dis-
crete spaces is therefore a key challenge in modern machine learning, with broad implications
for both theory and applications.
The PhD project focuses on the theoretical foundations and algorithmic design of discrete gener-
ative models, situated at the intersection of stochastic processes, probability theory, and machine
learning.
The PhD candidate will investigate continuous-time Markov chains (CTMCs) and jump-diffusion
processes for generative tasks. A core objective is to overcome the “factorization trap” present
in current discrete flow matching models by exploring alternative combinatorial and geometric
structures on the space of probability measures. This will require investigating combinatorial
and geometric structures on probability spaces that go beyond classical Wasserstein geometry.
The candidate will work both on the theoretical aspects and on the implementation of novel
architectures, including hybrid jump-diffusion flows in token embedding spaces.

Starting date

2026-10-01

Funding category

Public funding alone (i.e. government, region, European, international organization research grant)

Funding further details

Presentation of host institution and host laboratory

INSA LYON

INSA Lyon is a French engineering school with a strong research environment in science, technology, and applied mathematics. The PhD will be hosted at the Institut Camille Jordan, a joint CNRS mathematics laboratory covering both pure and applied mathematics. The laboratory offers a particularly suitable environment for research at the interface of probability, stochastic processes, numerical methods, and machine learning.

PhD title

Doctorat de Mathematique

Country where you obtained your PhD

France

Institution awarding doctoral degree

Université de Lyon (Comue)

Graduate school

École Doctorale en informatique et mathématiques de Lyon

Candidate's profile

I am looking for a highly motivated candidate with:
- A Master’s degree in Mathematics, Computer Science, or a closely related field.
- A strong background in probability theory and stochastic processes is a plus.
- Interest in the mathematics of machine learning and generative modeling.
- Programming experience; knowledge of Python and frameworks such as PyTorch is a plus.

2026-08-15
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