Projects
CKL’s research strategy provides a clear roadmap for our stakeholders, outlining key priorities and innovative approaches to critical challenges. Each project bridges multiple research disciplines to foster interdisciplinary collaboration and generate impactful solutions.
Computing platform auto configuration
At CKL, one of the most exciting projects in progress is the development of an AI-powered
tool for computing platform autoconfiguration. While lower-level platforms provide
computational, networking, and storage resources under standardized controls, aligning
these resources with project-specific requirements remains a complex challenge.
To address this, we are creating an AI-driven solution that automates resource
configuration for the Constructor Research Platform via the C>T platform.
This tool will streamline the setup process, enabling researchers to focus on their projects
while ensuring efficient, scalable, and optimized use of resources.
By analyzing research papers as “textual descriptions” and integrating source code from
repositories like GitHub and Amazon, the system will generate fully configured setups.
Configurations will be delivered through APIs or auto-generated scripts, ensuring
seamless resource alignment with project needs.
Knowledge model of C>T platform for digital avatar and recommendation system
A team at CKL is designing a system that generates personalized recommendations to help users achieve goals that they input using natural language.
Powered by the C>T platform, the system provides actionable suggestions along with a curated list of resources to support users in reaching their objectives. It also showcases potential outcomes through a customizable avatar.
The initial application focuses on an AI-driven health supplement recommendation app. Users can input their health goals, receive tailored supplement suggestions, and visualize the results through an avatar designed to reflect their desired outcomes.
Automated project deployment on the computing platform
Building on the computing platform auto-configuration tool we are building, this project focuses on creating a system that automatically tests and validates code from external repositories using the C>T platform. It addresses the critical task of environment setup, including the installation of compatible packages.
The system will also feature parameter configuration, logging, and error handling, ensuring that researchers and partners can easily replicate and verify their results with accuracy and efficiency.
Global monitoring of use of Generative AI in higher education and science
With this project, CKL aims to create a global network of researchers to exchange ideas, share empirical findings and advance understanding of the development and application of AI in higher education and the sciences.
The project is focused on conducting comparative studies to examine institutional and national responses to AI, with a focus on identifying successful applications and their scalability across diverse educational and scientific contexts.
Our team of researchers and partners employs advanced quantitative techniques, such as web scraping and text analysis, alongside qualitative methods. CKL plans to use these findings to
produce a monitoring system, comparative books, and research articles.
Optimization of Particle Detector Geometry
The goal of this project is to develop an algorithm designed to efficiently optimize the SHiP (Search for Hidden Particles) detector’s straw tracker, utilizing advanced sampling techniques and uncertainty estimation methods.
The algorithm will aim to improve the performance of the detector by optimizing its configuration, addressing challenges like high-dimensional parameter spaces, noisy measurements, and the need for computational efficiency in real-time data processing.