Steven AI Talk

The Agentic Architecture: Five Essential AI Terms Explained

5 min · 4 jul 2026
aflevering The Agentic Architecture: Five Essential AI Terms Explained artwork

Beschrijving

✅ Recently, the evolution of Artificial Intelligence from conversational models to autonomous agents is driven by an instruction layer wrapped around Large Language Models (LLMs). ✅ The internal behavioral framework of an agent is defined by project-specific rules in the agents. ✅ While project rules are governed by agents. ✅ Connectivity and interoperability are crucial for autonomous agents to interact with external environments. All my links: https://linktr.ee/learnbydoingwithsteven [https://linktr.ee/learnbydoingwithsteven] Website: https://learnbydoingwithsteven.github.io [https://learnbydoingwithsteven.github.io/] #AIAgents #AgenticAI #SoftwareEngineering #LLMs #ModelContextProtocol #SystemSecurity #Microservices #AIAgentsOrchestration #learnbydoingwithsteven

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aflevering Abundance of Intelligence and the Shift in Software Architecture: Keynotes from AI Engineer Miami artwork

Abundance of Intelligence and the Shift in Software Architecture: Keynotes from AI Engineer Miami

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7 jul 20265 min
aflevering Selecting the Optimal Balance for On-Device AI: The "SAGE" Model Strategy artwork

Selecting the Optimal Balance for On-Device AI: The "SAGE" Model Strategy

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Gisteren8 min
aflevering The Agentic Architecture: Five Essential AI Terms Explained artwork

The Agentic Architecture: Five Essential AI Terms Explained

✅ Recently, the evolution of Artificial Intelligence from conversational models to autonomous agents is driven by an instruction layer wrapped around Large Language Models (LLMs). ✅ The internal behavioral framework of an agent is defined by project-specific rules in the agents. ✅ While project rules are governed by agents. ✅ Connectivity and interoperability are crucial for autonomous agents to interact with external environments. All my links: ⁠https://linktr.ee/learnbydoingwithsteven⁠ [https://linktr.ee/learnbydoingwithsteven] Website: ⁠https://learnbydoingwithsteven.github.io⁠ [https://learnbydoingwithsteven.github.io/] #AIAgents #AgenticAI #SoftwareEngineering #LLMs #ModelContextProtocol #SystemSecurity #Microservices #AIAgentsOrchestration #learnbydoingwithsteven

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