Listen "How Will You Build Your Next AI Agent?"
Episode Synopsis
The industrial revolution transformed manufacturing when steam engines replaced manual labor. Today, we're witnessing a similar revolution as autonomous AI agents take over business processes—answering customer emails, qualifying leads, and optimizing supply chains with minimal human oversight.TLDR:Low-code platforms like Langchain and Lama Index provide visual interfaces and pre-built components for quick implementationFull-code development offers maximum control and flexibility, essential for complex, high-volume, or niche applicationsAdvanced full-code agents incorporate memory, reasoning, and action components with capabilities for reflection and planningThe distinction between low-code and full-code is blurring as new technologies enable code generation from natural language descriptionsThese agentic AI systems occupy the fascinating space between programmed instruction and emergent intelligence. But how do you build them? The development spectrum ranges from accessible low-code platforms to sophisticated full-code solutions. Low-code environments like Langchain and no-code tools such as Zapier provide pre-built components and visual interfaces—think IKEA furniture for AI development—allowing quick deployment of functional agents. However, their templates and abstraction layers can limit customization and create dependencies on third-party services.For organizations seeking both speed and specialization, hybrid approaches offer strategic advantages. By using low-code for routine tasks while implementing custom code for critical components, teams can quickly establish foundations while addressing specific business requirements. This isn't a compromise but rather strategic arbitrage—leveraging the efficiency of templates where appropriate and investing saved time in developing tailored logic that differentiates your business.When off-the-shelf solutions can't provide necessary flexibility or performance, full-code development delivers maximum control. Building from scratch with Python enables finely-tuned architecture with sophisticated memory, reasoning, and action components. Advanced agents can even implement reflection for self-improvement and planning for multi-step operations. The decision between approaches depends on variables like problem complexity, technical debt tolerance, and scaling trajectory—a choice that grows more nuanced as the line between code and no-code continues to blur.Curious how AI agents might transform your business processes? Subscribe to explore more insights on implementing intelligent automation that delivers real business results!Read: From Low-Code to Full-Code: The Agentic AI Evolution is Here Support the show𝗖𝗼𝗻𝘁𝗮𝗰𝘁 my team and I to get business results, not excuses.☎️ https://calendly.com/kierangilmurray/results-not-excuses✉️ [email protected] 🌍 www.KieranGilmurray.com📘 Kieran Gilmurray | LinkedIn🦉 X / Twitter: https://twitter.com/KieranGilmurray📽 YouTube: https://www.youtube.com/@KieranGilmurray📕 Want to learn more about agentic AI then read my new book on Agentic AI and the Future of Work https://tinyurl.com/MyBooksOnAmazonUK
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