Introducing Confluent Private Cloud: Cloud-Level Agility for Your Private Infrastructure | Learn More
Confluent Intelligence enables AI systems to continuously learn from historical data and act in real time. Use it to build AI agents, RAG (Retrieval Augmented Generation), and ML pipelines for AI, or to serve context with Apache Kafka® and Apache Flink®.
Build event-driven agents designed for speed and scale
Empower agents with real-time context for optimal decisions
Accelerate accurate decision-making with native ML functions
Confluent Intelligence is a fully managed service on Confluent Cloud for building real-time, replayable, context-rich AI systems powered by Kafka and Flink. AI systems built on LLMs must be grounded in real data and serve live decisions in production. Confluent Intelligence closes that loop, combining historical evaluation, continuous processing, and real-time serving with:
Because Confluent Intelligence is powered by the data streaming platform, it uses the same real-time, governed data that feeds your business to power your AI—delivering secure, contextual, and production-ready intelligence at any scale.
Introducing Real-Time Context Engine
Confluent’s vision for streaming + AI, powered by Real-Time Context Engine
A Real-Time Backbone for AI With Confluent + Google
Bringing MCP and A2A together to power multi-agent systems
How to Power AI Agents With MCP
An agentic AI tutorial with Anthropic’s MCP, Claude LLM, and Confluent
Streaming Agents brings together data processing and AI workflows, making it easy to build and run event-driven agents directly on Flink. With access to real-time contextualized data, they’re uniquely suited for enterprise workflows—monitoring and taking instant, informed action the moment operational events occur.
Securely and scalably connect to any model, tool, or data system via a Model Context Protocol (MCP) server for complete, real-time context
Enable agents to operate dynamically with Flink jobs on enriched, governed data streams—with zero polling or delay
Solve the biggest gaps in AI systems with end-to-end observability to test, debug, evaluate, audit, and reliably recover from failure—iterating faster, safely
Continuously supply up-to-date context for RAG and semantic search by converting any Kafka topic into a stream of vector embeddings
Deliver live, structured context in real -time from your enriched, enterprise data to any AI system—LangChain, Bedrock, Agentforce, Claude, and more—via MCP with our Real-Time Context Engine. Fully managed on Confluent Cloud, it delivers governed, real-time context.
Provide any AI agent, copilot, and model anywhere with structured, live relevant data instead of stale snapshots
Unify across historical and streaming data, automatically updated as upstream logic or features change, ensuring decisions reflect current context
Eliminate complexity and focus on building AI with fully managed MCP, while gaining built-in authentication, RBAC, audit logging, and observability. No Kakfa or Flink expertise needed
Execute sophisticated ML pipelines for fraud and anomaly detection, forecasting, sentiment analysis, and more to trigger AI workflows. Utilize native Apache Flink functions to embed ML capabilities directly within data streams, simplifying workflows and unlocking accurate, actionable insights.
Identify unexpected deviations in real-time, improving data quality and enabling faster decision-making
Perform real-time analysis and gain actionable insights from your streaming data without needing in-depth data science expertise
Transform features into representations more suitable for downstream processors
Simplify developing and deploying AI by providing a unified platform for both data processing and AI/ML tasks
Confluent Intelligence integrates seamlessly with your critical AI infrastructure. Deploy across major cloud providers and connect to the leading providers of vector search, databases, and AI frameworks. Leverage strategic partnerships and system integrators to accelerate your real-time AI initiatives.
"Confluent's platform allows us to stream chagnes as they happen, ensuring that our AI tools always provide the most relevant and timely information."
"Data streaming is going to be critical for financial services organizations in the future—especially when it comes to AI/ML use cases where the ability to stream data, implement workflow automation, and make real-time predictions are the key to success."
"Everyone wants AI—but the hard part is getting high-quality data moving in real time. The Confluent data streaming platform makes that possible for us. It's the foundation that gets our data moving and gets it where it needs to be."
“Good AI needs good data. Confluent is our trusted source of truth… the data streaming platform provides context and orchestration for our AI agents to automate workflows and accelerate our smart city transformation.”
Neue Entwickler erhalten Credits im Wert von 400 $ für die ersten 30 Tage – kein Kontakt zum Vertrieb erforderlich.
Confluent bietet alles Notwendige zum: – Entwickeln mit Client-Libraries für Sprachen wie Java und Python, Code-Beispielen, über 120 vorgefertigten Connectors und einer Visual Studio Code-Extension. – Lernen mit On-Demand-Kursen, Zertifizierungen und einer globalen Experten-Community. – Betreiben mithilfe einer CLI, IaC-Unterstützung für Terraform und Pulumi und OpenTelemetry-Observability.
Die Registrierung ist über das Cloud-Marketplace-Konto unten möglich oder direkt bei uns.
Confluent Intelligence is a fully managed service on Confluent Cloud, designed for building real-time, context-rich AI systems. It unifies the essential components for production AI—stream processing, state management, and context delivery—into a single stack. This allows developers to build and deploy event-driven, context-aware AI applications powered by Apache Kafka® and Flink® without the heavy operational burden of managing complex infrastructure.
Streaming Agents is a framework for for building, testing, and deploying event-driven AI agents directly on your data streams using fully managed Flink and Kafka. Because these agents run as Flink jobs within the stream processing pipeline, they have access to the freshest, most accurate view of your business. This enables them to monitor events and take instant, informed actions as they happen, making them ideal for enterprise automation and real-time decision-making.
Confluent Intelligence is uniquely suited for GenAI because it solves the critical challenge of providing real-time, trustworthy context. It combines AI agents that can live in your data streams, a real-time context engine and native ML functions, allowing GenAI applications to access live, indexed data and building event-driven AI without requiring developers to write custom Kafka code or build complex data polling mechanisms.
Yes. Confluent Intelligence allows you to execute sophisticated AI and machine learning pipelines. In addition to native Flink functions for anomaly detection and forecasting, it provides the capability to invoke remote AI/ML models. This simplifies the development and deployment of your AI applications by providing a unified platform for both data processing and your custom AI/ML tasks.
Confluent Intelligence streamlines the process of creating vector embeddings for your AI applications. You can choose your preferred embedding model and transform a text column within a Kafka topic into a continuous stream of vector embeddings. This real-time embedding creation is essential for powering use cases like Retrieval-Augmented Generation (RAG) and semantic search in your GenAI applications.
The platform is designed for a variety of enterprise use cases, including:
Model Context Protocol (MCP) is an open standard that provides a universal way for AI models to connect to data sources and tools. MCP is transformative for agentic AI because it enables you to provide agents with improved context and give them access to a rich toolkit of capabilities by simply connecting it to relevant MCP servers.









