No items found.

cas client
Scaling sustainability data extraction with Generative AI for a Global Plastic Waste Reduction Initiative

A global non-profit working to eliminate plastic waste launched a platform to help map waste flows and support both researchers and member companies in improving waste management practices. Yet data acquisition remained a major bottleneck. Extracting figures from lengthy sustainability reports was manual, time-consuming, and prone to inconsistencies. To scale its impact, the organization needed an GenAI-powered solution to automate data extraction, reduce manual workload, and improve both accuracy and efficiency across the board.
30,000+
PDF pages processed automatically in under 24 hours
50,000
KPIs extracted and validated within two weeks
98%
time savings achieved in data collection and validation workflows
découvrez
Ce que nous avons mis en place
01
Enjeux
- Manual data extraction delayed access to insights, slowing down decision-making and waste management efforts
- Time-consuming, repetitive processes placed a heavy burden on analysts and operational teams
- Inconsistent definitions and formats across reports led to discrepancies in interpretation and validation
02
Notre approche
- Build a fully automated extraction workflow powered by Generative AI to minimize manual effort while ensuring high data accuracy
- Streamline processing and scaling using Databricks Workflows, improving efficiency and transparency across the pipeline
- Develop a self-service interface that allows users to review and validate extracted data—making it easy to contribute to the sustainability database without technical know-how
03
Résultats
- Scalable, collaborative data workflow enabled multiple users to extract data efficiently across large document sets
- Improved transparency and real-time monitoring through Databricks Workflows, allowing teams to track progress and optimize performance in real time
- Standardized data definitions and scope eliminated inconsistencies from manual extraction, ensuring consistency and trust in the collected data
Challenge
Our approach
Outcome
Explorez
Autres Cas Clients
Contact
Contactez nos experts
Oops! Something went wrong while submitting the form.