Case — Cloud Data Pipeline · Covalent Chemoproteomics
A unified pipeline for an ACE discovery platform
Matchpoint Therapeutics is a Boston-based biotech building precision covalent medicines through its Advanced Covalent Exploration (ACE) platform — integrating chemoproteomics, machine learning and covalent chemistry library evolution. A high volume of non-standard experiments and tight discovery cycles meant the platform team needed data infrastructure that could keep pace with the science, not constrain it.
Together with Matchpoint’s science and platform-technology teams, we conceptualised the pipeline in a series of workshops and then implemented it piece by piece in their Google Cloud environment. Own assay results, public data and computational tools — including custom Fortran code — flow into a unified data lake and warehouse. Web-based assistants guide ingestion and quality control, custom dashboards reflect Matchpoint’s specific way of looking at the data, and external annotations layer in automatically.
Twelve weeks from kick-off workshop to first delivery. The pipeline now runs in Matchpoint’s own cloud, fully owned by the internal team.
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Twelve weeks from kick-off to first delivery
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Experiment-to-insight in real time
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Cross-functional teams work independently of data support
It is a pleasure working with the idalab team on our data and machine learning pipeline. They are an outstanding strategic partner, collaborating seamlessly with our science team. Fast, clear communication, structured — yet always happy to adapt ad hoc, if necessary. We are looking forward to continuing the collaboration.



