Skip to main content
Back to events
NeurIPS@Paris 2023

NeurIPS@Paris 2023

Wednesday 6th December 2023 - Thursday 7th December 2023
  • Machine Learning
  • Quantitative Research
Icon when
Wednesday 6th December 2023 - Thursday 7th December 2023
Icon where
Campus Jussieu (4 Place Jussieu Paris 5ème - Metro 10: Jussieu Map) in Amphithéâtre 25 and Sorbonne Center on Artificial Intelligence (SCAI)

NeurIPS@Paris 2023

NeurIPS@Paris 2023 is a 2-day event that takes place at Sorbonne Université. Its primary focus is to provide an environment for scientific exchanges and networking within the machine learning community. We will be there with three of our Quantitative Researchers, so come along and say hello!

Interested in attending?

Places are extremely limited and we expect a high number of registrations for the event. Please be sure to apply early.

When & Where

Date:
Wednesday, 06 Dec – Thursday, 07 Dec 2023

Location:
Campus Jussieu (4 Place Jussieu Paris 5ème – Metro 10: Jussieu Map) in Amphithéâtre 25 and Sorbonne Center on Artificial Intelligence (SCAI)

Interested in a Graduate Opportunity at G-Research?

We typically launch our graduate positions in August. You can view all of our current roles – including internships and placement years – via the link below.

Latest News

The Tyranny of Tech Debt
  • 28 Apr 2025

Hear from our Head of Forecasting Engineering on why the term "tech debt" has outlived its usefulness. In this blog, he explores why we should move away from generic labels and instead ask more precise, value-driven questions that lead to meaningful improvements in engineering and business outcomes.

Read article
G-Research March 2025 Grant Winners
  • 22 Apr 2025

Each month, we provide up to £2,000 in grant money to early career researchers in quantitative disciplines. Hear from our March grant winners.

Read article
Invisible Work of OpenStack: Eventlet Migration
  • 25 Mar 2025

Hear from Jay, an Open Source Software Engineer, on tackling technical debt in OpenStack. As technology evolves, outdated code becomes inefficient and harder to maintain. Jay highlights the importance of refactoring legacy systems to keep open-source projects sustainable and future-proof.

Read article

Stay up to date with
G-Research