Complete Guide to RPA Solution Architecture
IT & Software100% OFF

Complete Guide to RPA Solution Architecture

Learning Technologies
4.7(3.8K students)
Self-paced
All Levels

About this course

This course is designed to transform you from an automation practitioner into a strategic leader. You'll move beyond bot-building and learn to design, plan, and govern an entire automation ecosystem.This course is structured to give you a holistic understanding of the RPA solution architect's role. Here’s a sneak peek at what you'll master:RPA Fundamentals: A deep dive into the RPA lifecycle, from process discovery to deployment and monitoring.Process Assessment & Design: Learn to identify ideal processes for automation, calculate ROI, and create comprehensive documentation like the Process Design Document (PDD) and Solution Design Document (SDD).Technical Architecture: Explore the components of a robust RPA solution, including infrastructure, security, and scalability.

You'll learn how to design for both attended and unattended automations.Tooling & Integration: Get hands-on experience evaluating major RPA platforms (like UiPath, Automation Anywhere, and Blue Prism) and learn how to integrate them with other enterprise systems.Governance & Best Practices: Establish a Center of Excellence (CoE) framework, define coding standards, and ensure your automation pipeline is efficient and secure.The demand for skilled RPA Solution Architects is growing rapidly. This course provides you with the skills to transition into a high-impact, high-paying role. You'll not only gain a deep technical understanding but also develop the strategic and communication skills needed to lead successful automation initiatives and drive significant business value.

Skills you'll gain

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Course Information

Level: All Levels

Suitable for learners at this level

Duration: Self-paced

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Instructor: Learning Technologies

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This course includes:

  • 📹Video lectures
  • 📄Downloadable resources
  • 📱Mobile & desktop access
  • 🎓Certificate of completion
  • ♾️Lifetime access
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