Orchestrating AI Development Lifecycles: An Open Source Approach to MLOps
18/10/2025 , Track 04 - E05, A01
Idioma: Español

The growing complexity of machine learning operations has introduced significant challenges for data science teams, particularly as large language models become central to production systems. This talk introduces MLOPTIFLOW, an open-source Python framework designed to address critical MLOps pain points through automated project inception, real-time monitoring, and adaptive deployment strategies.
The session will include code demonstrations highlighting how these components work together to reduce operational complexity while improving reliability. We'll discuss implementation patterns that enhance reproducibility, observability, and adaptation to shifting data distributions - challenges particularly acute when deploying and monitoring LLMs. Attendees will leave with practical insights on streamlining their ML/LLM workflows using a unified, Python-native approach to model lifecycle management.


Temática:

Machine Learning and Artificial Intelligence (ML, deep learning, AI ethics, generative models...)

Temáticas adicionales:

DevOps, Cloud and Infrastructure (SRE, systems management, CI/CD, Kubernetes, cloud providers...)

Nivel de la propuesta:

Advanced (it is necessary to develop in the matter to acquire a deeper knowledge)

William has worked in different roles and positions for the last decade. Bringing work experience from Intel, Oracle, Broadcom, the Czech University of Economics, and GitLab. He has participated in numerous projects involving software, hardware design, education, and innovation across different industries. He leverages his experience as an engineer and educator to create Proof of Concepts and actively share knowledge as a public speaker in open-source and technology events worldwide.