Advanced Prompt Engineering for Business Professionals

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Advanced Prompt Engineering for Business Professionals

Coursera · Advanced ·🤖 AI Agents & Automation ·1mo ago

Key Takeaways

Designs advanced prompt engineering workflows for business professionals

Original Description

By the end of this course, you will engineer autonomous business agents, design self-correcting workflows, and implement advanced reasoning patterns like Tree of Thoughts. You will master the ability to audit corporate prompts for bias, ensure data privacy, and calculate the clear ROI of AI integration within your daily operations. Completing this program shifts your role from a casual prompter to an AI orchestrator. Instead of manually managing repetitive tasks, you will learn to build a digital workforce that handles complex research, strategic analysis, and systemic automation with expert-level precision. You’ll gain the technical edge needed to lead AI adoption in professional environments, ensuring you remain an indispensable asset in a tech-driven market. What sets this course apart is its focus on Agentic Logic. We move beyond simple "chatting" to explore how AI can reason through multi-step business dilemmas. You won't just learn to write better instructions; you will build custom systems that connect to external tools and self-verify their own work. This is the blueprint for anyone ready to stop using AI as a simple assistant and start using it as a high-performance engine for business growth.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
SPINE: Bridging the Cyber-Physical Gap with Agentic AI
Learn how SPINE bridges the cyber-physical gap with agentic AI for scalable Embodied AI deployment
ArXiv cs.AI
📰
Probabilistic Extension of Neuro-Symbolic AGI Robots based on Belnap's Typed Intensional FOL
Learn how to extend neuro-symbolic AGI robots with probabilistic reasoning using Belnap's Typed Intensional FOL for improved cognitive power
ArXiv cs.AI
📰
Self-Improvements in Modern Agentic Systems: A Survey
Learn how modern agentic systems achieve self-improvement through adaptive frameworks and experience-based learning
ArXiv cs.AI
📰
Oracle Agent Memory as an Enterprise Memory Substrate for Long-Horizon AI Agents
Learn how Oracle Agent Memory enables long-horizon AI agents to retain task state and accumulate knowledge across extended conversations and sessions
ArXiv cs.AI
Up next
Stop Piloting. Start Embedding. The AI ROI Is Already There.ft. Ben Dulieu, CIO, DuckCreek
Insurtech Insights
Watch →