The Evolution of AI: Human-Machine Boundaries, De-Management, and Career Choices
1. Clarifying the Division of Labor Between AI and Humans—This Is Crucial What is AI? It’s an untiring standardization fanatic, backed by a massive knowledge base. Throw it an idea, and it can instantly give you a hundred actionable solutions; give it a piece of lousy code, and it can revise it into textbook-level best practices. AI is responsible for getting things done right, fast, and to the extreme.
And humans? Humans are responsible for the non-standard tasks. Ideas are differentiated—they don’t grow in databases; they come from your daily life, your pain and joy. Even the smallest bit of inspiration you gain each day is the variable that AI can never compute.
2. "Management" in Tech Circles Is a Pseudo-Topic To be honest, why were R&D teams so bloated in the past? Because, a lot of the time, coding was just manual labor: searching online, Ctrl C + Ctrl V. As long as it ran, that was good enough; if it didn’t, swap it out for another snippet. The result? There was no real architecture; features piled up like a garbage heap, bugs everywhere, and refactoring was a nightmare. Low productivity meant more people; more people and chaos led to the need for “management.”
But personally, I really dislike the word “management.” Top tech talent usually isn't good at, nor do they care for, management. If you need me to watch over you every day, or even use PUA tactics just to get things delivered, it simply means we’re not suited to work together.
Now, with AI, everything has changed. AI-written code is logically sound, well-structured, and free from those basic mistakes. Therefore, major layoffs in tech teams make perfect sense. Let go of people who just copy code, and cut the “management layer” that only exists to supervise them. What remains are people who can deliver results directly. There’s less bickering, and more focus on making the product better.
3. In the Future, There Will Be Only Two Major Career Paths Given this logic, future careers will be extremely polarized: First: The Super Individual — the “AI-savvy product manager + engineer” type. You need to have strong learning and observational skills. As long as you have a good idea, AI is your army, and you are your own team. You’re no longer a cog in the machine—you’re the commander. Second: Emotional Provider. No matter how advanced machines get, they’re still cold. People need people. You can either become a content creator, providing resonance and opinions to tens of thousands remotely, becoming everyone’s “electronic spokesperson”; or you can go into the service industry, offering smiles and care up close. This real human touch and companionship is the “emotional value” that machines are unlikely to ever fully replace.
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The Evolution of AI: Human-Machine Boundaries, De-Management, and Career Choices
1. Clarifying the Division of Labor Between AI and Humans—This Is Crucial
What is AI? It’s an untiring standardization fanatic, backed by a massive knowledge base. Throw it an idea, and it can instantly give you a hundred actionable solutions; give it a piece of lousy code, and it can revise it into textbook-level best practices. AI is responsible for getting things done right, fast, and to the extreme.
And humans? Humans are responsible for the non-standard tasks. Ideas are differentiated—they don’t grow in databases; they come from your daily life, your pain and joy. Even the smallest bit of inspiration you gain each day is the variable that AI can never compute.
2. "Management" in Tech Circles Is a Pseudo-Topic
To be honest, why were R&D teams so bloated in the past? Because, a lot of the time, coding was just manual labor: searching online, Ctrl C + Ctrl V. As long as it ran, that was good enough; if it didn’t, swap it out for another snippet. The result? There was no real architecture; features piled up like a garbage heap, bugs everywhere, and refactoring was a nightmare. Low productivity meant more people; more people and chaos led to the need for “management.”
But personally, I really dislike the word “management.” Top tech talent usually isn't good at, nor do they care for, management. If you need me to watch over you every day, or even use PUA tactics just to get things delivered, it simply means we’re not suited to work together.
Now, with AI, everything has changed. AI-written code is logically sound, well-structured, and free from those basic mistakes. Therefore, major layoffs in tech teams make perfect sense. Let go of people who just copy code, and cut the “management layer” that only exists to supervise them. What remains are people who can deliver results directly. There’s less bickering, and more focus on making the product better.
3. In the Future, There Will Be Only Two Major Career Paths
Given this logic, future careers will be extremely polarized:
First: The Super Individual — the “AI-savvy product manager + engineer” type. You need to have strong learning and observational skills. As long as you have a good idea, AI is your army, and you are your own team. You’re no longer a cog in the machine—you’re the commander.
Second: Emotional Provider. No matter how advanced machines get, they’re still cold. People need people. You can either become a content creator, providing resonance and opinions to tens of thousands remotely, becoming everyone’s “electronic spokesperson”; or you can go into the service industry, offering smiles and care up close. This real human touch and companionship is the “emotional value” that machines are unlikely to ever fully replace.