Giovani is a software engineer specializing in artificial intelligence, machine learning, and data science tech stacks. He has worked in multicultural teams for startups and big enterprises, implementing data analytics, machine learning, and deep learning in the transportation, retail, job search, and supermarket sectors. As a freelancer and an entrepreneur, Giovani is creating his own set of solutions using facial recognition and computer vision.
Designed an autonomous monitoring system that uses drones for surveillance in industrial complexes and buildings. Focused on providing a solution that's low price and easily replaceable.
Implemented raw GPS metrics on low-level interfaces and code to outperform conventional position measurements.
Developed a prototype that costs 70% less than similar solutions in the market.
Designed and implemented a complete initial prototype within one month.
FaceMatch is a proof of concept for a face-based identification system developed as a Third Horizon Initiative within the university technology office at Arizona State University. I developed and set up all the back-end code and infrastructure, using Python and AWS tools.
A public package and open-source Python software development kit for a data labeling company to seamlessly integrate with their back-end infrastructure. I contributed to the development of new features, testing, and documentation while following coding best practices.
A full site for job search focused on IT. As the machine learning engineer, I designed and developed an automated matching algorithm that combines on-site algorithms with third-party tools like IBM Watson to enhance performance. The matching feature was a big differentiator against competitors. The redesign and implementation of the matching algorithm produced results two orders of magnitude faster, from two minutes to less than 10 seconds per prediction. The biggest challenge was joining data from different sources and third-party APIs to produce high-quality predictions.
An offline, machine learning-powered app to automate entrances and exits at sports centers. I designed and developed the whole solution, using CNN-based algorithms for face recognition on the back end with a WinForms UI as the front end.The software helped to manage sports center partners and eliminate losses due to pending payments or expired memberships. The solution was capable of recognizing people with 99% accuracy (based on public datasets).
An in-depth study of consumer trends for a retail store. As the primary data scientist, I performed customer segmentation techniques using clustering and data visualization to extract powerful insights. This involved analyzing millions of records to identify trends based on customer demographics and customer behavior such as buying patterns.
Education
Bachelor's Degree in Computer Science
Technological Institute of Queretaro
2013 - 2018 (5 years)
Bachelor's Degree in Computer Science (Study Abroad)