Scientific Support
Need help with Machine Learning in your research?
Contact us at helpdesk@unil.ch with subject: DCSR ML support
Scientific support for Machine Learning projects, as outlined below, is provided free of charge.
Introduction
Machine Learning provides a powerful framework for predictive modeling in scientific research:
- Infer outcomes from complex datasets using classification and regression models
- Evaluate and improve models based on predictive performance
- Use exploratory techniques to better understand and prepare your data
At DCSR, we support researchers in several key areas of Machine Learning:
Training
We help you understand how specific Machine Learning methods work and how to apply them in your research. We also offers short introductory courses on Machine Learning; see ML courses.
Methodology
We assist you in selecting and applying appropriate Machine Learning methods for your research.
This may include:
- A pilot phase, where we collaboratively develop and test code on your laptop or UNIL clusters
- A production phase, where we help scale and refine your workflow
More specifically, we can:
- Identify existing tools suited to your analysis
- Help install and run them on your laptop or UNIL clusters
- Explain key parameters and settings
DevelopHelp develop custom algorithms and code if no suitable tools exist
Infrastructure
We help you efficiently run your Machine Learning workflows on UNIL clusters.
This includes:
- Installing and configuring your code
- Profiling performance to optimize resource usage (RAM, CPUs/GPUs, number of nodes)
Collaboration at UNIL
We can connect you with relevant experts at UNIL to discuss specific Machine Learning challenges.
Example Use Cases:
- Experimental scientist
Wants to analyze data using Machine Learning on a laptop or UNIL clusters.
→ We help identify suitable tools, explain how they work, and support their use. - Data scientist (setup phase)
Wants to implement a Machine Learning pipeline but is unsure how to proceed.
→ We help select and apply appropriate methods. - Data scientist (review phase)
Has implemented a pipeline and wants feedback.
→ We review the methodology and suggest improvements or alternatives. - Scaling from laptop to cluster
Wants to move a pipeline from a local computer to UNIL clusters.
→ We assist with deployment, software setup, and performance optimization.
Contact
You can reach us at helpdesk@unil.ch with subject: DCSR ML support