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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:
These 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 show
𝗖𝗼𝗻𝘁𝗮𝗰𝘁 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
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:
These 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 show
𝗖𝗼𝗻𝘁𝗮𝗰𝘁 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