English | February 13, 2025 | ISBN: 9798341608191 | 50 pages | PDF
Generative AI is transforming industries, but for many enterprises, the journey from proof of concept to production remains a major hurdle. While businesses are investing heavily in building AI-powered applications like RAG-based chatbots, the vast majority of these projects fail to deliver tangible results. Success demands more than experimentation—it requires a deeper understanding of the challenges of managing AI in production and adopting MLOps practices to streamline the process.
This report explores how enterprises can leverage MLOps, with a Kubernetes-first approach, to overcome adoption barriers, scale AI effectively, and maximize business impact. From building responsible models to running reliable production systems, our guide offers the strategies and tools you need to thrive in an AI-driven competitive landscape.
• Accelerate AI projects from experimentation to production readiness
• Standardize and streamline model creation for repeatability
• Deploy and manage AI models in production with confidence
• Build trust by creating responsible, explainable AI systems
• Leverage Kubernetes-native tools to apply MLOps principles at scale