With over 15 years of entrepreneurial experience and a strong specialization in data leadership, this candidate exemplifies exceptional analytical capabilities. Proficient in the complete data science and engineering workflow, they excel in extract, transform, load (ETL) processes, as well as production implementation. Expertise encompasses programming languages such as Python, R, and JavaScript, alongside a focus on developing supervised and unsupervised machine learning models, including neural networks. Adept in agile methodologies like Scrum, Kanban, and Crisp-DM, they apply quality management practices such as Ishikawa diagrams and SWOT analysis. The candidate possesses extensive knowledge of both relational and non-relational database systems (SQL and NoSQL), particularly MongoDB and Elasticsearch, coupled with advanced skills in processing large data volumes using Spark and PySpark. Cloud infrastructure expertise spans across AWS and Azure services, including S3, EC2, Lambda, and security measures. A notable profile also includes proficiency in Natural Language Processing (NLP) and recent experiences with large language models (LLM), equipping them to tackle complex challenges in the data sector. They also conduct technical interviews and provide team training, showcasing leadership in both technical and collaborative environments.