A comprehensive overview of lessons learned from the world's largest database of LLMOps case studies (457 entries as of January 2025), examining how companies implement and deploy LLMs in production. Through nine thematic blog posts covering everything from RAG implementations to security concerns, this article synthesizes key patterns and anti-patterns in production GenAI deployments, offering practical insights for technical teams building LLM-powered applications.
Learn how to migrate from cnvrg.io to ZenML's open-source MLOps framework. Discover a sustainable alternative before Intel Tiber AI Studio's 2025 end-of-life. Get started with your MLOps transition today.
The EU AI Act, now partially in effect as of February 2025, introduces comprehensive regulations for artificial intelligence systems with significant implications for global AI development. This landmark legislation categorizes AI systems based on risk levels - from prohibited applications to high-risk and limited-risk systems - establishing strict requirements for transparency, accountability, and compliance. The Act imposes substantial penalties for violations, up to €35 million or 7% of global turnover, and provides a clear timeline for implementation through 2027. Organizations must take immediate action to audit their AI systems, implement robust governance infrastructure, and enhance development practices to ensure compliance, with tools like ZenML offering technical solutions for meeting these regulatory requirements.
Learn how to build, fine-tune, and deploy multimodal LLMs using ZenML. Explore LLMOps best practices for deployment, real-time inference and model management.
Discover how ZenML implements the llms.txt standard to make ML documentation more accessible to both AI assistants and humans. Learn about our modular approach using specialized documentation files, practical integration with AI development tools, and how this structured format enhances the developer experience across different context window sizes.
ZenML 0.74.0 introduces key cloud provider features including SageMaker pipeline scheduling, Azure Container Registry implicit authentication, and Vertex AI persistent resource support. The release adds API Tokens for secure, time-boxed API authentication while delivering comprehensive improvements to timezone handling, database performance, and Helm chart deployments.
The rise of Generative AI has shifted the roles of AI Engineering and ML Engineering, with AI Engineers integrating generative AI into software products. This shift requires clear ownership boundaries and specialized expertise. A proposed solution is layer separation, separating concerns into two distinct layers: Application (AI Engineers/Software Engineers), Frontend development, Backend APIs, Business logic, User experience, and ML (ML Engineers). This allows AI Engineers to focus on user experience while ML Engineers optimize AI systems.
Learn how leading companies like Dropbox, NVIDIA, and Slack tackle LLM security in production. This comprehensive guide covers practical strategies for preventing prompt injection, securing RAG systems, and implementing multi-layered defenses, based on real-world case studies from the LLMOps database. Discover battle-tested approaches to input validation, data privacy, and monitoring for building secure AI applications.
ZenML's new Experiment Comparison Tool brings powerful experiment tracking capabilities to your ML pipelines. Compare up to 20 pipeline runs simultaneously through intuitive tabular and parallel coordinates visualizations, helping teams derive actionable insights from their pipeline metadata. Now available in the Pro tier dashboard.
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