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Visual Canvas
Build end-to-end workflows on a visual canvas that mirrors your business logic. This drag-and-drop approach replaces coding with simple lines and nodes, letting you map out processes quickly and intuitively.
Component Library
Access a growing library of pre-built nodes, each designed for a specific function or integration. With clear labels and built-in search, you’ll find and configure the right components for your workflow in no time.
Fast Results
Roll out automations at fast speeds thanks to real-time previews and one-click deployment. This means minimal setup time, immediate testing, and the agility to adapt your workflows whenever your business changes.
No Coding Required
Leverage a no-code platform that empowers anyone to build workflows without software development skills. The intuitive interface lowers barriers to entry, enabling team members of all backgrounds to create efficient, automated processes.
Pascal Bayer
MCP is the taco-shell standard for AI integration. It wraps external tools and data into any LLM without custom bloat. Built-in discovery of Tools, Resources, and Prompts streamlines agent workflows. Developers gain vendor-agnostic flexibility and secure, scalable integrations.
Sebastian Wahn
Ready to supercharge your customer feedback process? With Nocodo AI, you can seamlessly collect user sentiments, translate them into actionable insights, and watch your CSAT soar. Dive into this use-case to discover how Nocodo’s streamlined approach makes it easier than ever to measure, interpret, and elevate your customer experience.
Tanja Bayer
Vector databases are transforming AI-powered search, making it faster and more intelligent. This beginner-friendly guide explains how pgvector enables Approximate Nearest Neighbor (ANN) search in PostgreSQL, and compares IVFFlat and HNSW—helping you choose the best indexing method for your use case.