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An AI's power to act autonomously (e.g., manage resumes) comes from its coding ability. It uses code to "stitch together" separate cognitive tasks like reading a PDF and sending an email, transforming it from a passive information processor into an active agent.

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Agentic coding tools like Claude Code represent a new, distinct modality of AI interaction, as significant as the advent of image generation or chatbots. This shift is creating a new category of power users who integrate AI into their daily workflows not just for queries, but for proactive, complex task execution.

The industry was surprised to learn that the tool-calling and problem-solving DNA of coding agents provides the necessary foundation for general-purpose agents. This was not the anticipated route to AGI, which labs hadn't explicitly trained for, yet it has become the dominant and most promising approach.

The ability to code is not just another domain for AI; it's a meta-skill. An AI that can program can build tools on demand to solve problems in nearly any digital domain, effectively simulating general competence. This makes mastery of code a form of instrumental, functional AGI for most economically valuable work.

Analyst Doug O'Laughlin views agentic coding tools not just as a feature but as a fundamental new scaling paradigm for AI, comparable in impact to the invention of "Chain of Thought," that will permanently alter all information work and accelerate AI capabilities.

The real breakthrough for AI agents is not just building software, but applying coding abilities—like tool use and scripting—to tasks in marketing, law, and research. This evolution transforms agents from developer tools into general-purpose knowledge work assistants for all employees.

Unlike generative AI (like ChatGPT) which only provides text output, agentic AI can perform actions on your behalf. It can log into accounts, click buttons, and complete multi-step tasks, shifting AI from a smart consultant to an autonomous digital assistant.

To effectively interact with the world and use a computer, an AI is most powerful when it can write code. OpenAI's thesis is that even agents for non-technical users will be "coding agents" under the hood, as code is the most robust and versatile way for AI to perform tasks.

The 'call and response' nature of large language models (LLMs) is not truly revolutionary for workflows. The significant shift comes from agentic AI, which can connect to various systems and execute multi-step tasks. This moves AI from a content generator to a powerful workflow automation tool.

According to former OpenAI founder Andre Karpathy, the default programming workflow has become unrecognizable in just the last few months. The paradigm has shifted from developers typing code into an editor to managing and orchestrating autonomous AI agents who are given goals, not step-by-step plans. The new critical skill is managing agents effectively.

The next wave of AI is 'agentic,' meaning it can control a computer to execute commands and complete tasks, not just generate responses to prompts. This profound shift automates workflows like coding and administrative tasks, freeing humans for high-level creative and strategic work.