We partner with forward-thinking organizations to improve their AI expertise and find optimal solutions to advance their work
Modern machine learning can be unpredictable, with a focus on associations. This emphasis often produces unwanted results. Introducing causal notions lets us interpret the entire ML pipeline—from relations to results—mitigating catastrophic situations in sensitive fields.
We specialise in modelling, predicting, and explaining events, both observable and latent. Our team uncovers and explains the complex processes where different factors impact health, safety, and economic stability. By advancing data preprocessing, spatiotemporal modeling, and explainability, we enable businesses to drive data-informed decisions across risk assessment, strategic planning, and beyond.
Building AI applications involves a large number of design decisions for developers. The number and intricacy of decisions grow with complexity, making even seasoned experts overwhelmed. Automating auxiliary tasks while adhering to best practices of human oversight becomes a necessity with enormous potential to make AI better and more trustworthy.
Property owners and operators often lack essential information about the equipment installed in their buildings, which is vital for optimal operation and maintenance. Extracting this information from various scanned documents, including tables and text, typically requires significant manual effort. Our approach significantly reduces this workload.
Why rely on a black box model and hope for the best, when you can enrich it with knowledge from physics or chemistry?
DSA excels at extracting information from small or sparse datasets by leveraging advanced techniques in missing data imputation, transfer learning, and knowledge-intensive machine learning. Our work exploits knowledge graphs, physics-informed machine learning, and other expert knowledge integration techniques to enhance predictive accuracy and robustness, even when data is limited or incomplete.
3 - 9 months | Ideal for organizations that wish to explore a new direction but don’t have in-house expertise.
9 - 12 months + | Development of a first prototype or pilot to solve a specific problem, potentially based on an existing feasibility study now extended and put into practice.
3 years + | Embedding your employees into our research environment, researching and experimentally testing innovative AI solutions.
Assessment of current scientific approaches to tackling specific problems. Evaluation of existing solutions and recommendations for new solutions or enhanced modes of working.
We are always happy to meet and engage with like-minded industrial partners who want to accelerate their AI adoption and deepen their knowledge of best practices in data science. Please get in touch, and our business development team will get back to you promptly.