Intent is All You Need: Why Everyone is Already a Programmer

When Andrej Karpathy declared 'The hottest new programming language is English,' he planted the seeds of a transformation that's now accelerating rapidly. Sam Altman recently announced that 'the idea guys'—people who had ideas but needed teams to build them—'are about to have their day in the sun.' And Sean Grove from OpenAI has delivered a talk on 'The New Code,' positioning specifications as the true enduring artifacts of software development and proposing that our future development environment will likely become an 'Integrated Thought Clarifier.'

The pattern is unmistakable: English is becoming the programming language, ideas are gaining unprecedented power, specifications are becoming the new code, and thought clarification is becoming the essential skill. This means everyone already has the raw material to program—the missing piece isn't technical knowledge, it's the ability to turn fuzzy ideas into clear, measurable objectives through conversation.

Intent is all you need.

This isn't because today's tools have caught up to this vision, but because intent is where all lasting value originates and where we're rapidly heading. While current workflows still require manual translation through specifications and code, the organizations and individuals positioning themselves around intent clarification are building the foundation for autonomous AI systems that can manifest human purposes directly into reality—from intelligent agents that execute complex workflows to physical robots that transform our world.

But this paradigm shift isn't just about better software development—it's about democratizing the power to build and innovate across every field of human endeavor.

Programming

The Great Democratization

We are witnessing the dissolution of one of technology's most persistent barriers. For decades, the ability to create digital solutions required mastery of arcane programming languages, complex development environments, and technical infrastructure. This created an artificial scarcity—only those who could "speak machine" could build the future.

That era is ending.

The breakthrough isn't that AI can write code—it's that AI can serve as a bridge between human expertise and technical implementation. A teacher knows more about student engagement than any programmer ever will. A lawyer understands compliance requirements better than any developer. A healthcare professional grasps patient care coordination more deeply than any technical architect.

The gap isn't expertise—it's clarification.

Democratization

Intent clarification bridges this gap through structured dialogue that transforms professional knowledge into precise, actionable specifications. Programming is evolving into something far more fundamental:

The art of articulating human intent clearly enough that AI can bring it to life.

Whether you're a teacher, lawyer, small business owner, or healthcare worker, you already possess the domain expertise that matters most. The technical translation is increasingly handled by AI.

The Fundamental Shift: From Fixing Code to Clarifying Intent

Here's the paradigm shift that transforms how we build:

Before: Bug report arrives → Developer dives into code → Fixes immediate symptom → Creates new edge cases → Cycle repeats

After: Feedback arrives → Team clarifies intent → Intent cascades through system → Root cause resolved → System improves holistically

Fix the intent

We no longer fix the code; we clarify the intent.

Today, that still means propagating changes through specifications and implementations, but we're shifting from reactive debugging to proactive intent refinement. The future belongs to those building systems where intent changes cascade automatically through autonomous execution—and that future is closer than most realize.

This represents a fundamental cognitive shift. Instead of thinking "what's wrong with this code?" we ask "what did we actually want to achieve?" The answer to that question becomes the source that drives everything downstream.

The Three-Stage Architecture of Intent

Naturally, in exploring this paradigm shift, I've practiced the very process I'm advocating. Through countless intent clarification dialogues, a powerful three-stage architecture has emerged. What makes this architecture fascinating is how it reveals something crucial about expertise: different types of knowledge become essential at different stages, creating a natural gradient of expertise that flows from human wisdom to technical implementation.

Let me walk you through how this works:

Intent Architecture

Intent (Clarification): Where Domain Expertise Shines Brightest

This is where professionals in every field already excel. Teachers intuitively understand student engagement, doctors recognize quality care, lawyers grasp effective compliance. Through structured dialogue—increasingly natural through voice-first interaction where speaking ideas aloud removes barriers between thought and articulation—these deep insights transform from professional intuition into precise, measurable objectives.

The magic happens when domain experts guide AI through clarifying vague aspirations into concrete success criteria. For example, a teacher works with AI to transform "students should be more engaged" into "students ask questions in 80% of lessons, submit assignments showing creative thinking beyond basic requirements, and report feeling excited about upcoming topics." What emerges is clarified intent with embedded evaluation measures that capture human purposes in their purest form.

Anyone can do this stage. It requires no technical skills—just clear thinking about what actually matters in your domain, supported by AI as an intelligent clarification partner.

Specification (Formalization): Where the Expertise Gradient Shifts

Here we convert clarified intent into the structured requirements AI can work with—detailed success criteria, architectural decisions, implementation choices. This is where clarified intent becomes the source from which context-specific specifications can be generated.

Domain experts still contribute valuable perspective, but technical expertise becomes increasingly important as we bridge human wisdom with AI-executable requirements. A teacher's clarified intent about engagement becomes both behavioral specifications ("track question frequency, assess creative thinking") and technical specifications ("implement event listeners, store metrics in engagement database").

This stage transforms natural language clarity into formal documentation that guides implementation—the bridge between human purposes and technical reality. It represents today's reality rather than permanent necessity. As AI becomes more sophisticated, this middle layer will require less human intervention, but currently, technical professionals add significant value in making optimal implementation choices.

Manifestation (Execution): Where Intent Becomes Living Reality

Here we transform complete specifications into working systems—generating code that transforms workflows, creating agents that automate complexity, building interfaces that solve real problems.

This execution stage encompasses the entire process of bringing specifications to life: code generation, system configuration, integration work, testing and deployment. As AI becomes more capable, this stage requires less human intervention, making mastery of intent clarification the ultimate competitive advantage.

While today's most effective implementations benefit from technical oversight, we're moving toward a world where well-clarified specifications can manifest more directly into operational reality.

This architecture transforms how we think about building. Instead of starting with formal documentation, we begin with intent clarification—a conversational process accessible to anyone with clear human purposes. Consider a teacher who clarifies "My students aren't engaged enough" into specific, measurable outcomes, which then become technical specifications for tracking and assessment systems, and finally manifest as working tools that monitor engagement patterns and provide actionable insights.

The expertise gradient ensures everyone contributes their strongest capabilities while AI handles the technical translation.

Why Current "Vibe Coding" Falls Short

Understanding this architecture also reveals why "Vibe Coding" struggles to achieve consistent results. Most Vibe Coders jump directly from Intent to Manifestation without recognizing they need that crucial Specification step. Most people don't even realize this middle stage exists—and that's exactly why many such projects miss the mark.

Current Vibe Coding

When someone says "build me an app that helps students stay engaged" and expects AI to generate a working solution directly, they're asking AI to simultaneously clarify vague intent, make architectural decisions, choose technologies, and implement code. This overloads the AI with conflicting cognitive tasks and often produces solutions that miss the mark.

The missing Specification stage is where clarified intent ("students ask questions in 80% of lessons, submit creative assignments, report excitement") transforms into structured requirements that can guide reliable implementation. Without this formalization bridge, you get inconsistent results because the AI is guessing at both what you want and how to build it.

Understanding this expertise gradient provides clarity. Domain experts excel at Intent clarification—they possess the deep knowledge about what actually matters. Technical experts become increasingly valuable as we bridge human wisdom with implementation reality in Specification and guide optimal execution in Manifestation.

This reveals why intent truly is all you need as the foundation. While technical expertise adds significant value in later phases of today's implementations, the clarified intent remains the constant—the source that can generate new specifications as technology evolves. Technical guidance represents current scaffolding; intent provides the permanent architecture.

As AI becomes more capable, the Specification and Manifestation stages will require less human intervention, making mastery of Intent clarification the ultimate competitive advantage. This evolution aligns perfectly with the human-AI synergy principles I've explored previously—where AI amplifies rather than replaces human expertise.

Intent Clarification as Core Skill

The most valuable skill in this new paradigm is systematic intent clarification—the ability to transform vague ideas into precise, measurable objectives through structured dialogue.

This is fundamentally different from specification writing or requirements gathering. Intent clarification is a conversational, iterative process that anyone can engage in. It doesn't require technical expertise or formal documentation skills—it requires willingness to think systematically about human purposes and outcomes.

Intent Clarification

The dialogue itself becomes collaborative, with AI serving as an intelligent partner in refining and sharpening your thinking. This isn't about prompting AI to generate solutions; it's about engaging AI to help clarify what you actually want to accomplish at the most fundamental level.

This approach embeds success criteria directly into your thinking, so you know what winning looks like before you start building. Whether your solution involves simple processes or sophisticated systems, the success criteria emerge from and remain anchored in your clarified intent.

Evaluation-First: Embedding Success Criteria in Intent

Intent without measurement criteria remains wishful thinking. The most powerful approach embeds evaluation criteria directly into intent clarification—defining success measures as part of understanding what you want to achieve.

Take our teacher example: instead of defining "student engagement" and then figuring out how to measure it, the clarification process naturally reveals that engagement means students asking questions in 80% of lessons, submitting assignments showing creative thinking, and reporting excitement about upcoming topics. These aren't imposed metrics—they emerge from understanding what engagement actually looks like in practice.

Eval-first Intent Clarification

This evaluation-first methodology ensures that your intent can be verified regardless of how it eventually gets translated into specifications or implementations. Whether your solution involves simple processes or sophisticated systems, the success criteria emerge from and remain anchored in your clarified intent.

The New Programming Reality: Universal Application

This paradigm shift extends far beyond software engineering because intent clarification is a fundamentally human cognitive capability that exists across all domains.

Educational administrators possess deep knowledge about learning outcomes and student engagement. Legal professionals understand compliance requirements and risk mitigation strategies. Healthcare workers have expertise in patient care coordination and outcome optimization. Policy makers know citizen service delivery and social impact challenges.

What makes this transformative is that intent clarification doesn't require these professionals to become technically proficient. A teacher doesn't need to learn specification writing or software architecture—they need to engage in systematic dialogue about what successful student engagement looks like and how to measure it. This leverages their existing professional knowledge while making technical implementation accessible.

Universal Applications

The common thread across all these domains isn't technical knowledge—it's the human capacity for purposeful thinking about goals, constraints, and measurable outcomes. These are cognitive skills that AI amplifies rather than replaces.

Regardless of your background or current role, you already possess the most important programming skill: the ability to think clearly about what you want to achieve.

What This Means for Enduring Value

In a world where technical implementations evolve rapidly and formal specifications require frequent updates, clearly articulated intent represents the most durable asset. Your understanding of what constitutes successful patient care, effective education, or efficient legal compliance will outlast any specific documentation or technology used to achieve those goals.

Rather than investing exclusively in technical skills and documentation that evolve rapidly, we invest upstream in clarifying intent—the foundation that makes all downstream technical work more valuable and enduring. This creates a profound shift in how we think about building lasting value.

The organizations and individuals who master intent clarification will possess the most transferable and enduring competitive advantage—the ability to clearly articulate desired outcomes and adapt quickly as capabilities for formalization and execution continue to evolve.

Starting Your Intent-First Journey

The transformation begins with a single step: choose one challenge that matters to you right now. Instead of rushing toward solutions, pause and invest in systematic intent clarification with AI as your thinking partner.

Use the questions that unlock understanding: "What would success actually look like?" "How would we know we achieved it?" "What would people say about their experience?" Let these criteria develop naturally from the dialogue itself, embedded in your intent from the very beginning.

Yes, this feels different at first—maybe even slower. But here's what happens next: once your intent crystallizes, everything accelerates. More importantly, you're building something that lasts. While others create solutions that become obsolete with the next technology shift, you're crafting intent that can manifest across any platform, any capability, any future we can imagine.

The future belongs to those who master this fundamental skill. In this new world, everyone is about to become a programmer—not of code, but of reality itself.

Intent is all you need. What will yours build?


This exploration of intent clarification builds upon my previous work on AI Agent Engineering, the Action-Brain-Context framework, and voice-first interaction paradigms—representing a natural evolution toward the upstream foundations that create enduring value in AI systems.