• AiFi

  • Juan Borrego Carazo

Juan Borrego Carazo

Machine Learning Engineer at AiFi

Juan Borrego Carazo started their career as a Data Analyst at Trebol Energía in 2016. Juan then worked as a Risk Analyst at Banco Sabadell for a brief period in 2017. Later in 2017, they joined CaixaBank Asset Management as a Data Analyst. In 2018, Juan became a Machine Learning Scientist at KOSTAL Group, where they managed a team of 2 embedded software developers and worked on Gesture Recognition on Microcontrollers using CNNs and RNNs. Juan worked at KOSTAL Group until 2021. In 2021, Juan worked as a Deep Learning Researcher at Samsung Electronics UK, focusing on deep learning for computer vision on mobile devices. Juan also completed their Ph.D. during this time. From July 2021 to January 2022, Juan worked as a Deep Learning Researcher at the Computer Vision Center. As of January 2022, Juan is currently employed as a Machine Learning Engineer at AiFi Inc.

Juan Borrego Carazo has a diverse education history. Juan obtained a Ph.D. in Computer Science and Artificial Intelligence from the Universitat Autònoma de Barcelona from 2018 to 2022. Prior to their Ph.D., they completed a Master's degree in Foundations of Data Science at the Universitat de Barcelona from 2017 to 2018. Juan also pursued a degree in Matemáticas para los Instrumentos Financieros (Financial Mathematics) at the Universitat Autònoma de Barcelona from 2016 to 2017.

Before their Master's and Ph.D. studies, Juan Borrego Carazo completed a degree in Physics at the Universitat Autònoma de Barcelona from 2011 to 2016.

In addition to their formal education, Juan has also acquired several certifications. These include "Docker and Kubernetes: The Complete Guide" from Udemy in January 2023, "Fundamentals of Deep Learning for Multi-GPUs" from NVIDIA in March 2022, "Microsoft Azure Databricks for Data Engineering" from Coursera in January 2022, "Optimize TensorFlow Models For Deployment with TensorRT" from Coursera in January 2022, "Practical Reinforcement Learning (with Honors)" from Coursera in July 2020, "Bayesian Methods for Machine Learning (with Honors)" from Coursera in May 2020, "How to Win a Data Science Competition: Learn from Top Kagglers (con Honores)" from Coursera in March 2020, "Introduction to Deep Learning (con Honores)" from Coursera in February 2020, "Building a Personal Portfolio with Django" from LinkedIn in December 2019, "Beginning C++ Programming - From Beginner to Beyond" from Udemy in November 2019, "Deploying Scalable Machine Learning for Data Science" from LinkedIn in September 2019, "Advanced Python" from LinkedIn in August 2019, "Introducción al Business Intelligence y al Big Data (3.ª edición)" from Miríada X in May 2017, and "LFS101x: Introduction to Linux" from The Linux Foundation in September 2017.

Additionally, Juan is currently pursuing a research stage at Mälardalen University, with the exact field of study not specified.

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Cambridge, United States

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AiFi

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AiFi provides the most flexible AI platform that enables retailers to affordably deploy and scale autonomous shopping solutions across their businesses. Leveraging computer vision, AiFi adapts to existing store formats without the need for shelf sensors, and provides advanced tracking algorithms that can scale up to 10,000 square feet to supportvarious shopper journeys such as an app, credit card, gated, or hybrid entry. AiFi works with top retailers worldwide such as ALDI South Group, Carrefour, Compass Group, Morrisons, Żabka Group, REWE, and Verizon. AiFi has the highest number of computer vision powered autonomous stores across the globe. The company has raised a total of $80 million from investors including Verizon Ventures, Qualcomm Ventures, HP Tech Ventures, Mithril Capital, Cervin Ventures, TransLink Capital, Plum Alley, Duke Angel Network, Reaction, GS Future, Drive Catalyst, and Evolution. For more information, please visit aifi.com.


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51-200

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