Louis M

Louis is a seasoned technology executive with over 20+ years of experience in leading and managing teams, building products, and implementing open-source technologies. He is certified in building Crypto currencies applications and has a proven track record of effectively leading teams of over 100+ individuals, including experience leading through a management layer (manager of managers). Louis possesses vital emotional intelligence, allowing him to lead a diverse group of engineers and managers at varying stages of their careers. He has experience leading teams through complex compliance certifications, such as FedRAMP, PCI, SOC2, ISMAP & HIPAA. He has 10+ years of security experience dealing with web systems, Cloud, SaaS, compliance, corp IT, infrastructure, and embedded devices. Louis has a solid understanding of cross-functional engineering organizations and significant experience building diverse and inclusive teams. He has superb communication skills and can articulate a compelling security vision. Most recently, Louis served as the CTO of Metabolicliving, where he led the engineering team to become a high-performing, on-time delivery cross-functional team and collaborated with Executive Leadership to develop & manage product strategy, roadmaps, and technical execution plans. Before that, he served as the CTO of Burnalong, a health and fitness tech startup. He single-handedly built the AWS infrastructure, on-site cross-functional engineering team, remote developers, and QA. He also created an internship program to cultivate new talent and grow the technical organization.

Systematic Knowledge Injection into Large Language Models via Diverse Augmentation for Domain-Specific RAG

Leverage our cutting-edge RAG and Fine-Tuning Framework to boost large language model performance in domain-specific applications through systematic knowledge injection.

Read More

6 Data Processing Steps for RAG: Precision and Performance

I share 6 data processing techniques that optimize RAG system performance and precision. Gain practical solutions for complex communication challenges.

Read More

RAG vs. Fine-Tuning: Which One Suits Your LLM?

Explore the differences between RAG and fine-tuning strategies for large language models (LLMs). Discover which approach best suits your needs.

Read More