Daniel Denno is a seasoned Machine Learning Architect at DENNO, where he leverages his extensive expertise in data architecture and software development to drive innovative solutions for complex data challenges. With a proven track record of delivering large-scale data projects on time and within budget,...
Daniel Denno is a seasoned Machine Learning Architect at DENNO, where he leverages his extensive expertise in data architecture and software development to drive innovative solutions for complex data challenges. With a proven track record of delivering large-scale data projects on time and within budget, Daniel excels in creating customized data platforms that are tailored to meet the specific needs of clients across various industries. His deep understanding of machine learning algorithms and data processing frameworks enables him to design, analyze, and implement robust models that provide actionable insights.
One of Daniel's key projects involved the development of a Long Short-Term Memory (LSTM) model using TensorFlow, aimed at predicting car prices. This project required the establishment of a comprehensive ETL (Extract, Transform, Load) process in Apache Airflow, allowing for the aggregation of pricing data from numerous dealerships across multiple states. By employing advanced data analytics techniques, Daniel was able to identify optimal pricing strategies, significantly enhancing the decision-making process for clients in the automotive sector.
In addition to his work on predictive modeling, Daniel has also spearheaded the creation of a Natural Language Processing (NLP) model for color categorization. This innovative solution accurately identifies base colors from a myriad of variations, showcasing his ability to apply machine learning techniques to real-world problems. Daniel's technical proficiency in web applications, MySQL, and RESTful services, combined with his exceptional communication skills, allows him to effectively manage client relationships and collaborate with cross-functional teams. His commitment to delivering high-quality, data-driven solutions positions him as a valuable asset in the ever-evolving landscape of machine learning and data architecture.