1 hour agoIT & SoftwareTransition from linear RPA to stateful agentic flows using LangGraph, checkpointers, and UiPath integration.
Course Description
“This course contains the use of artificial intelligence.”
In the current automation landscape of 2024–2025, traditional Robotic Process Automation (RPA) is undergoing a significant paradigm shift. While deterministic, rule-based automation remains a staple for structured tasks, enterprise requirements are increasingly moving toward Agentic Process Automation (APA). This course provides a technical foundation in LangGraph, the industry-standard library for building stateful, multi-actor applications that utilize Large Language Models (LLMs) to handle ambiguity and unstructured data.
The curriculum is designed specifically for automation professionals and developers who need to bridge the gap between linear workflows and cognitive orchestration. You will move beyond the constraints of Directed Acyclic Graphs (DAGs) and explore the power of cyclical execution, allowing agents to self-evaluate, revise outputs, and manage complex reasoning loops. This transition is essential for modern enterprise environments where unstructured text, varied formats, and ambiguous intent mandate a more sophisticated approach than standard RPA can provide.
Throughout the course, we maintain a focus on architectural integrity and enterprise-grade deployment. You will learn to map familiar RPA concepts, such as UiPath sequences and arguments, to LangGraph nodes and state management systems. The training covers the core architecture of nodes and edges, the mechanics of parallel execution via super-steps, and the implementation of persistent state using checkpointers. These technical skills enable the creation of "long-term memory" in workflows, allowing processes to span days or weeks while maintaining full context.
Furthermore, the course addresses the critical requirement of Human-in-the-Loop (HITL) integration. By utilizing dynamic breakpoints and time-travel debugging, you will learn how to build "Attended Automation 2.0." This allows human operators to intercept, review, and even modify graph execution in real-time without restarting complex processes. We also demonstrate the "Orchestrator-Worker" pattern, showing how to use LangGraph for high-level reasoning while delegating transactional execution to UiPath robots.
The course concludes with production best practices, focusing on observability and fault tolerance. Using LangSmith, you will learn to trace execution paths, monitor token consumption, and debug cognitive logic anomalies. This ensures that your agentic workflows are not only powerful but also scalable, secure, and cost-effective. By the end of this program, you will possess the expertise to design and implement hybrid orchestration layers that combine the reliability of RPA with the cognitive flexibility of LangGraph.
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