ΑΙhub.org
 

Forthcoming machine learning and AI seminars: July 2022 edition


by
11 July 2022



share this:
laptop and notebook

This post contains a list of the AI-related seminars that are scheduled to take place between 11 July to 31 August 2022. All events detailed here are free and open for anyone to attend virtually.

11 July 2022

Causal Inference in Complex Networks
Speaker: Negar Kiyavash
Organised by: AIDA
Zoom link is here.

14 July 2022

Dimensionally Consistent Learning with Buckingham Pi
Speaker: Joseph Bakarji (University of Washington)
Organised by: University of Lisbon
Register here.

Federated Learning
Speakers: Nico Weber & Patrick Holzer (Fraunhofer ITWM)
Organised by: Fraunhofer Institute for Industrial Mathematics
To attend, subscribe here.

GFlowNets and AI for Science
Speaker: Yoshua Bengio
Organised by: Princeton AI Club
Register here.

18 July 2022

Leveraging Natural Language Processing for Education at Linguistics Justice League
Speaker: Subhadra Vadlamannati
Organised by: Lanfrica
Register here.

19 July 2022

Data Protection Practitioners’ Conference
Organised by: Information Commissioner’s Office
Sign up here.

21 July 2022

Title to be confirmed
Speaker: Paul Gavrikov (University Offenburg, IMLA)
Organised by: Fraunhofer Institute for Industrial Mathematics
To attend, subscribe here.

Deep neural networks, universal approximation, and geometric control
Speaker: Paulo Tabuada (University of California, Los Angeles)
Organised by: University of Lisbon
Register here.

22 July 2022

Remote sensing of methane emissions: Results and possibilities
Speaker: Evan Sherwin (Stanford University & Climate Change AI)
Organised by: Climate Change AI
Register here

28 July 2022

The Reproducibility Crisis in ML‑based Science – a workshop
Speakers: Many speakers
Organised by: Princeton University
Register here.

29 August 2022

Title to be confirmed
Speaker: Surya Ganguli (Stanford)
Organised by: EPFL
Check the website nearer the time for instructions on how to join.


To see past and forthcoming events for 2022, please see our dedicated 2022 seminar page.

For 2020 and 2021 events, please see our 2020 and 2021 seminars page.

If you’d like to visit the webpages of the universities and other organisations that are running regular programmes of seminars, then click here to see our list.

If you are aware of any seminars (both standalone and series) that we’ve missed then please just send us an email and we’ll add them to the list.




Lucy Smith is Senior Managing Editor for AIhub.
Lucy Smith is Senior Managing Editor for AIhub.

            AIhub is supported by:



Subscribe to AIhub newsletter on substack



Related posts :

A multi-armed robot for assisting with agricultural tasks

and   27 Mar 2026
How can a robot safely manipulate branches to reveal hidden flowers while remaining aware of interaction forces and minimizing damage?

Resource-constrained image generation and visual understanding: an interview with Aniket Roy

  26 Mar 2026
Aniket tells us about his research exploring how modern generative models can be adapted to operate efficiently while maintaining strong performance.

RWDS Big Questions: how do we highlight the role of statistics in AI?

  25 Mar 2026
Next in our series, the panel explores the statistical underpinning of AI.

A history of RoboCup with Manuela Veloso

  24 Mar 2026
Find out how RoboCup got started and how the competition has evolved, from one of the co-founders.

Information-driven design of imaging systems

  23 Mar 2026
Framework that enables direct evaluation and optimization of imaging systems based on their information content.

Machine learning framework to predict global imperilment status of freshwater fish

  20 Mar 2026
“With our model, decision makers can deploy resources in advance before a species becomes imperiled.”

Interview with AAAI Fellow Yan Liu: machine learning for time series

  19 Mar 2026
Hear from 2026 AAAI Fellow Yan Liu about her research into time series, the associated applications, and the promise of physics-informed models.

A principled approach for data bias mitigation

  18 Mar 2026
Find out more about work presented at AIES 2025 which proposes a new way to measure data bias, along with a mitigation algorithm with mathematical guarantees.



AIhub is supported by:







Subscribe to AIhub newsletter on substack




 















©2026.02 - Association for the Understanding of Artificial Intelligence