Andamoose/ Daccompli

In the 'Dynamic Data Analytics through automatically Constructed Machine Learning Pipelines' project, the data dynamics of two focus projects are investigated.

One use case concerns degradation in Parkinson's patients with extremely long durations (weeks/months). The other use case involves energy management with extremely short timescales (minutes/hours).

For both cases, an optimized data analysis process is a necessary condition to predict: degradation (Parkinson's) or supply/demand (energy management).

Advanced big data techniques offer many possibilities for this. Both focus projects, in line with two top sectors, are logically connected by a general analysis platform for advanced big data techniques. This 'process platform' can eventually be applied to any theme where time series play an important role.

Commit2Data nieuwsbrief

Subcribe and stay informed about all our researchprojects and achievements

Nieuws

Real-time Data-Driven Maintenance Logistics - Innovation in Data-Driven Maintenance Logistics
As part of the C2D project Real-time Data-driven Maintenance Logistics, researchers and companies collaborate to optimize maintenance processes through real-time data. In an interview with Willem van Jaarsveld (TU/e), one of the lead researchers, the...
22 October 2024
Rhythm as the Key to Social Resilience in Urban Environments
In a time when urban communities face increasingly complex challenges, Caroline Nevejan, professor at the University of Amsterdam, along with her team, launched the innovative project Designing Rhythms for Social Resilience (DRSR). This project combi...
22 October 2024
RATE Analytics: Human-in-the-loop
The project RATE Analytics: Next Generation Predictive Analytics for Data-Driven Banking and Insurance is a groundbreaking research initiative focused on developing reliable and transparent analytical methods for the financial sector. This project wa...
22 October 2024

Wetenschappelijke publicaties

Er zijn geen wetenschappelijke publicaties beschikbaar.