

Leading Data Reliability in the Age of AI - A Conversation with Lior Gavish, CEO & Co founder | EP65
Aug 8, 2025
Lior Gavish, CTO and Co-founder of Monte Carlo Data, shares his expertise in data observability and reliability. He discusses how organizations are moving from experimentation to production-scale AI deployments. Lior highlights the importance of robust observability tools to prevent human errors and enhance data reliability. The conversation also delves into AI's impact on workflows and the job market, emphasizing the need for engineers to adapt their skills for future opportunities in the evolving tech landscape.
AI Snips
Chapters
Transcript
Episode notes
Apply DevOps To Data And AI
- Lior Gavish says Monte Carlo applies DevOps principles to data and AI systems.
- They build observability to alert and troubleshoot before users notice issues.
Fraud Detection Sparked Monte Carlo
- Lior Gavish built large-scale fraud detection that processed about a billion emails a day.
- Data quality failures in that system inspired building Monte Carlo to prevent customer-impacting errors.
Observability Agents Accelerate Reliability
- Monte Carlo shipped monitoring and troubleshooting agents to automate reliability work.
- These agents accelerate manual tasks and embed observability into team workflows.