Lab Equipement
We transformed a zero-data scenario into a production-ready iOS object detection system in just 10 weeks, building the complete data pipeline from web scraping and custom annotation tools to dataset deployment. Our team managed the entire data lifecycle, including a three-person annotation team, delivering high-quality annotated datasets that powered successful computer vision deployment.

Our team delivered a comprehensive data-centric project, transforming a zero-data scenario into a production-ready object detection solution deployed on iOS. We architected and executed the complete data lifecycle, converting raw web-scraped images into a high-quality, annotated dataset that powered a successful computer vision deployment for our client.
Data Strategy & Acquisition: We engineered a robust data gathering strategy starting with strategic web scraping from Google Images. Our team implemented intelligent data selection protocols to ensure dataset diversity and relevance for the client's specific detection environment. We developed automated deduplication workflows to process thousands of raw images into a clean, curated dataset.
Data Quality & Annotation Infrastructure: Our engineers built custom annotation tooling to streamline the data cleaning process and eliminate dataset redundancies. We established comprehensive annotation guidelines and quality control standards, designing and implementing a scalable annotation pipeline that supported concurrent work streams across multiple annotators while maintaining consistency and accuracy.
Team Management & Data Operations: We directed a three-person annotation team, implementing project management frameworks that ensured data quality, timeline adherence, and annotation consistency. Our team created training materials and quality assurance protocols that resulted in high inter-annotator agreement rates.
Data Validation & Model Integration: We oversaw the complete data-to-deployment pipeline, ensuring annotated datasets met production requirements for iOS integration. Our team managed data versioning and quality metrics throughout the 2.5-month project lifecycle, delivering on time with exceptional client satisfaction.
Key Achievement: We transformed a zero-data scenario into a production-ready dataset and deployed model within 10 weeks, demonstrating our expertise in rapid data pipeline development and cross-functional delivery.