Jobs:Job-01898: Difference between revisions
No edit summary |
No edit summary |
||
Line 6: | Line 6: | ||
|State member=NO STATE | |State member=NO STATE | ||
|MOI meeting country=France | |MOI meeting country=France | ||
|JOB application_deadline=2025- | |JOB application_deadline=2025-11-15 | ||
|JOB begin review process= | |JOB begin review process=No | ||
|JOB file description=EN postdoc ClimSeine vf.pdf | |JOB file description=EN postdoc ClimSeine vf.pdf | ||
|JOB URL application=https://cloud.minesparis.psl.eu/index.php/s/TwMnIvNVJbobTvu | |JOB URL application=https://cloud.minesparis.psl.eu/index.php/s/TwMnIvNVJbobTvu |
Latest revision as of 07:18, 23 September 2025
Apply before: 15 November 2025
Posting:
Position: Postdoctoral Position
Apply before: 15 November 2025
Apply online:
See attached file:
|
This position focuses on developing artificial intelligence methods (deep learning) for the monitoring, analysis, and prediction of groundwater and surface water temperature, in the context of climate change and sustainable water and energy resource management. We are seeking an early-career researcher with expertise in machine learning, statistics, or data visualization.
Position details:
- Duration: 24 months
- Preferred start date: Between December 1, 2025 and January 15, 2026
- Location: Mines Paris – PSL (Fontainebleau), with regular travel to Paris and Nice
Desired skills and experience:
- Experience with common deep learning architectures (LSTM, Transformers, CNN) and decision tree methods (XGBoost, LightGBM, CatBoost, Random Forests)
- Experience working on clusters and high-performance computing environments
- Data visualization/dashboard development
- Physics-informed machine learning (ideal, but not required)
Specific details about the project will be discussed with candidates selected for an interview.
To apply: Please compress all required documents into a single ZIP or PDF file and upload it to the following folder: https://cloud.minesparis.psl.eu/index.php/s/TwMnIvNVJbobTvu
We would be grateful if you could share this opportunity widely within your networks and with any colleagues who may be interested.
For any questions, please contact: Agnès Rivière – agnes.riviere@minesparis.psl.eu
Best regards,
Agnès Rivière
Associate Professor