llmops
10 articles about llmops in AI news
Dify AI Workflow Platform Hits 136K GitHub Stars as Low-Code AI App Builder Gains Momentum
Dify, an open-source platform for building production-ready AI applications, has reached 136K stars on GitHub. The platform combines RAG pipelines, agent orchestration, and LLMOps into a unified visual interface, eliminating the need to stitch together multiple tools.
AI Engineering Hub Reaches 30K GitHub Stars, Democratizing Practical AI Development
The open-source AI Engineering Hub has reached 30,000 GitHub stars one year after launch, featuring 90+ hands-on projects covering RAG, AI agents, fine-tuning, and LLMOps. This milestone highlights growing demand for practical, production-ready AI implementation resources.
Rethinking the Necessity of Adaptive Retrieval-Augmented Generation
Researchers propose AdaRankLLM, a framework that dynamically decides when to retrieve external data for LLMs. It reduces computational overhead while maintaining performance, shifting adaptive retrieval's role based on model strength.
From MLOps to AgentOps: A Vision for AI Production in 2026
A forward-looking article argues that by 2026, AI systems will be complex, multi-agent software requiring a new operational discipline called 'AgentOps'. This evolution from MLOps is necessary to manage reliability, safety, and cost at scale.
VMLOps Publishes 2026 AI Engineer Roadmap for Software Engineers
VMLOps published a comprehensive 2026 roadmap detailing the skills and knowledge software engineers need to transition into AI engineering. The guide reflects the current industry demand for engineers who can build and deploy production AI systems.
VMLOps Publishes Free GitHub Repository with 300+ AI/ML Engineer Interview Questions
VMLOps has released a comprehensive, free GitHub repository containing over 300 Q&As covering LLM fundamentals, RAG, fine-tuning, and system design for AI engineering roles.
Harvard Business Review Presents AI Agent Governance Framework: Job Descriptions, Limits, and Managers Required
Harvard Business Review argues AI agents must be managed like employees with defined roles, permissions, and audit trails, proposing a four-layer safety framework and an 'autonomy ladder' for gradual deployment.
Fractal Analytics Launches LLM Studio for Enterprise Domain-Specific AI
Fractal Analytics has launched LLM Studio, an enterprise platform built on NVIDIA infrastructure to help organizations build, deploy, and manage custom, domain-specific language models. It emphasizes governance, control, and moving beyond generic AI APIs.
AgentOps: The Missing Layer That Makes Enterprise AI Safe, Reliable & Scalable
A practical architecture framework for bringing safety, governance, and reliability to enterprise AI agents, based on real deployments. This addresses the critical gap between building agents and operating them at scale in business environments.
The Pareto Set of Metrics for Production LLMs: What Separates Signal from Instrumentation
A framework for identifying the essential 20% of metrics that deliver 80% of the value when monitoring LLMs in production. Focuses on practical observability using tools like Langfuse and OpenTelemetry to move beyond raw instrumentation.