
Machine Learning Engineer
One of his most notable achievements is the architecture and production-scale deployment of a consumer-facing real-time ML pipeline at Philip Morris International (PMI). This project demonstrated not only his deep technical expertise but also his leadership in driving innovation, ensuring business impact, and successfully operationalizing machine learning in a high-stakes environment.
Tevos is highly skilled at translating complex business and technical challenges into scalable, production-ready ML systems. He also plays a key role in mentoring engineering teams and shaping technical strategy, making him a strong leader in the machine learning space.
Initially joined as a Machine Learning Engineer, then elected as the Technical Lead to guide the team through key transitions;
Led the evolution of multiple ML projects from proof-of-concept (POC) to minimum viable product (MVP), ensuring scalability and production-readiness;
Spearheaded the transformation of the ML infrastructure into a cloud-agnostic stack, optimizing for flexibility and cost-efficiency;
Architected and managed the development of two Agentic bots, including Retrieval-Augmented Generation (RAG) components;
Oversaw the implementation of a recommendation system and a voice classification model, ensuring robust performance and alignment with business goals;
Established MLOps practices, including CI/CD pipelines, monitoring, and alerting systems to support long-term maintainability and automation;
Facilitated cross-functional collaboration, driving alignment between data science, engineering, and product teams;
Mentored junior engineers and fostered a culture of technical excellence and knowledge sharing within the team.


Set up the backend CI/CD processes for existing computer vision auto-scaled DL model pipelines;
Developed a new DL model to enhance operational functionality within the analytics stack;
Implemented a CI/CD process enabling fast and safe introduction of changes in the full ML lifecycle, critical during the agricultural season;
Optimized processes to achieve cost and latency reduction while maintaining accuracy metrics.



Developed and contributed to packages dedicated to data ETL, ML, and statistical analysis;
Enhanced general operation components of the stack, including GUI-related elements, for team projects;
Worked on structured and unstructured knowledge extraction and NLP tools.
Engineering excellence
Tevos’s overall performance in a 90-minute live technical assessment ranks in the top 10% of vetted Machine Learning Engineers at Proxify.

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