@JioMart_Support quick delivery order from June 28th (JM6A41382401624412BC) is now officially a vintage item, over 12 hours old! 🕰️ Still waiting for a sign of life or a cancellation option, but apparently, human contact is a myth. 👻 Guess I'll just keep chatting with the void
Today, we’re committing $5,000,000 to launch the micro1 Company Data Partnerships Referral Program.
For every company you refer, you can earn up to $25,000. Simply introduce a company, have them identify you as the referrer during onboarding, and once they enter into a paid data partnership with micro1, you’ll receive your referral payout.
If you know a company that wants to turn its operational data into a recurring revenue stream while accelerating its adoption of AI through micro1's Data Partnership Program, we’d love an introduction.
visit /data to get started
@AndhraPradeshCM@ncbn
Serious judicial vacancy in Nellore:
🔴No judge for Cheque Bounce court - 12+ months 🔴 Emails to AP Registrar General & District Judge no response 🔴Phone calls-unanswered or hung up
Citizens have no legal recourse. Need Immediate intervention #APJudicial
The U.S. MUST win the AI race
We’ve implemented a clear policy at micro1: we will only work with U.S. AI labs and its allies.
We made this decision because the AI race is not just about better products. It is about who controls the intelligence layer of the global economy, and whether frontier capability is used to strengthen the free world or to empower adversarial states.
AI will be the most important technology of our lifetime. In the fullness of time, it will automate most functions across the economy. Not just software tasks, but coordination, production, logistics, judgment, and execution. As those functions are automated, human time is freed up to invent new ones. Those new functions then become candidates for automation themselves. This loop compounds.
As this trajectory continues, output per worker increases dramatically. Entire categories of work become cheaper and faster to perform. Manufacturing reshoring becomes economically viable not because of policy intervention, but because intelligent systems operated domestically outperform global labor arbitrage. Goods and services trend toward lower marginal cost, while distribution improves through better coordination of supply and demand.
That is the upside. However, this is impossible without deep integration of intelligent systems. For AI to meaningfully automate real-world functions inside enterprises or governments, it needs full context of any given enterprise. That means read and write access to its core databases. There is no credible path to automating high-impact functions without granting frontier systems that level of access.
If the United States does not win the AI race, enterprises eventually face a constrained choice. Either grant that access to Chinese models controlled by an adversarial government, or rely on sub-optimal intelligence to automate functions that still must be automated. Both outcomes are not acceptable. And ultimately, this becomes the greatest national security risk the United States has ever faced.
AI models are trained by humans. The judgment embedded in pre-training data and especially in expert post-training data largely determines how a model behaves. While emergent behavior exists, a useful approximation is that a model reflects the weighted aggregate of the human judgment distilled into it.
Assisting foreign actors—who will naturally prioritize expert tasks aligned with their own interests—to dominate data creation embeds those interests directly into the intelligence layer itself. Once encoded at scale, these interests propagate through every downstream applications that relies on that intelligence.
Here’s how we win.
First, leverage is in software. China is ahead in hardware for physically intelligent systems. Catching up there is a long and difficult battle. Software, both large language models and robotics models, remains the bottleneck. Advancing the brain (AI models) is the fastest way to increase the usefulness of existing hardware and deployed systems.
Second, the U.S. must 100x its investment in structured human judgment. Continued investment in compute and algorithmic efficiency is critical. But that investment is ultimately a bet on very high future inference demand. For that bet to pay off, models must unlock many new capabilities, and in practice the only way to unlock those capabilities is through expert human data.
Historically, experts like doctors and lawyers were never incentivized to produce high-quality reasoning data in a machine-verifiable format. There was no reason for a doctor to generate precise, structured simulations of patient interactions, diagnostic reasoning, or treatment tradeoffs. There was no reason for a lawyer to document complex legal reasoning paths in a way that could be programmatically evaluated.
AI systems now require exactly this kind of data. The incentive finally exists because this data directly improves systems that operate at massive scale, and experts can be paid well to produce it. Once expert judgment is encoded into models in a structured, verifiable way, it compounds. Those who delay do not just lose time. They lose the ability to catch up.
Third, distillation from Chinese labs must be stopped. AI labs must do everything they can to prevent Chinese labs and models from distilling frontier models. Simply calling frontier APIs, or even interacting through UIs, lets Chinese model companies rapidly generate high-quality supervised fine-tuning datasets and close the gap at a fraction of the cost.
This method does not put you at the frontier, but it does let you catch up quickly, which is what we saw with DeepSeek. The West significantly overreacted to DeepSeek’s headline capabilities, but underreacted to the underlying dynamic: frontier access itself becomes a training set at a fraction of the cost. Human data platforms also have a duty to help prevent this distillation.
Lastly, the U.S.government should set the standard for AI Evaluation that leads to real production usage.
AI agents are under-deployed relative to what the technology allows because they are probabilistic systems that require a fundamentally different QA approach than deterministic software. Generic QA is insufficient; safely shipping agents requires explicit evaluation frameworks that assess their full action space. Organizations must clearly define which functions an agent is allowed to perform, how quality is measured for each function, and which domain experts are qualified to judge outcomes. With these frameworks in place, agents can be rigorously tested using structured human data, deployed to production with confidence, and continuously improved over time.
The U.S. government should be the first large enterprise to implement rigorous evaluation systems across every function. If the government leads on evaluation-driven deployment, adoption across the private sector accelerates naturally.
This is how American workers become more powerful. Each worker operates digital or physical agents that expand their effective output. Recruiting, manufacturing, logistics, and other domains shift toward human judgment overseeing autonomous execution. Reshoring occurs because it becomes economically rational. Work becomes more meaningful.
This is a race to determine who controls the intelligence layer of the global economy.
And that must be us. 🇺🇸
Models need to train on environments that replicate the real world. No one does that better than @micro1_ai.
To give you a better understanding of what today’s launch is:
Micro1 Intelligence is a catalog that the big AI Labs can explore, choose which domain they want to improve their models on, and then connect to Micro1’s platform/data to improve them.
This type of Reinforcement Learning environment (think: filling out tax forms,
multi-step software engineering workflows, enterprise legal negotiations, etc) will drive the next rev of improvements in foundational models.
Awesome launch today @micro1_ai team!
I’m excited to announce micro1 has raised a $35M Series A, valuing us at $500M. This round was led by 01A with @adambain joining our board of directors.
We’re grateful to be partnering with leading AI Labs & fortune 10s, such as Microsoft, to train frontier LLMs.
We’re just getting started building the infrastructure layer for AGI, with the ultimate goal of answering the very fundamental question: “where should humanity spend its time?”
The last few seconds of this video are a must see!
The 3 wholistic consequences of removing indexation are beautifully summarized here by @raghav_chadha 🔥🔥
✅ Low investment in real estate in the future!
✅ More sale agreements at Collector rates rather than Market rates!
✅ Increase in black-money in real estate sector!
Excited to introduce the world’s first AI interviewer, gpt-vetting.
With gpt-vetting, you can interview 100x more candidates in less time & candidates get a more enjoyable, gamified, and less biased interview experience.
You define the skills you want the interview to focus on, gpt-vetting asks verbal questions, and then jumps into a coding exercise. You then review the report that includes an AI assessment of each tech stack, and a trust score.
In its beta, gpt-vetting has already conducted 13,000 AI interviews, saving ~10k hours for software engineers who would otherwise be conducting technical interviews.