top of page

Smartly Detect Product Defects in Production

Minimising the amount of scrapped material by identifying early which products cannot be fully finished

Challenges

  • One of the world’s largest automotive manufacturers

  • Minimising amount of scrapped material during the riveting process helps to reduce costs

  • Defects could be identified by collecting relevant data from the assembly line in real time

  • Wanted a solution to empower assembly line workers to identify defects during the riveting process

Solutions

  • Built data pipelines to collect the relevant data from the assembly line

  • Trained a classification Machine Learning model

  • Designed a dashboard for easy interpretation of model’s outputs

Values

  • Empowered workers to identify riveting defects in real time, allowing for the manufacturing process to be adjusted much more efficiently

  • Contributed to the overall reduction in costs for the manufacturer

Roles

Data Scientist, Machine Learning Engineer

Technologies

Sectors

Industry, Automotive

bottom of page