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🔥 Day 8 Hot Topic: XRP ETF Goes Live
REX-Osprey XRP ETF (XRPR) to Launch This Week! XRPR will be the first spot ETF tracking the performance of the world’s third-largest cryptocurrency, XRP, launched by REX-Osprey (also the team behind SSK). According to Bloomberg Senior ETF Analyst Eric Balchunas,
Elon Musk abruptly lays off 500 people from xAI! From "cutting general" to "increasing specialization", a major shift in AI strategy behind the scenes.
This weekend, Elon Musk's xAI staged a "swift action" in the AI industry, laying off 500 general AI tutors who were involved in data labeling for the Grok Bots within a single day, and immediately announced the expansion of the professional AI tutor team to ten times its original size. This is not just a personnel adjustment, but a clear signal that the AI development route is shifting from "quantity" to "quality."
Dismantling 500 People: From Mass Tactics to Precision Strikes
According to a report by Business Insider, xAI's layoffs target the company's largest department—the General Annotation team, where about one-third of the workforce was immediately removed, and system access was shut down the same day, demonstrating decisive action.
In the internal letter, xAI clearly stated: "We must accelerate our expansion and focus resources on professional AI tutors."
This shows that Musk has a clearer direction for the next steps with Grok: rather than pursuing vast general data, it is better to focus on expertise in vertical fields, allowing AI to be more reliable and commercially valuable in specific scenarios.
Why has the 'Professional AI Tutor' become the new core?
1. General Data Dividend Peaks
The low-threshold repetitive labeling work has seen a decline in marginal value as automation tools mature.
2. Vertical knowledge barriers are more valuable
Mentors with professional backgrounds in healthcare, law, finance, etc., can provide high-precision training data, directly enhancing the model's performance in specific fields.
3. Business Moat
The accumulation and transformation efficiency of professional knowledge will be the key to creating a gap between AI companies and their competitors.
Reallocation of Capital and Talent
This time "cutting the general, increasing the professional" means:
Budget focus shift: from a large number of low-cost annotators to hiring highly paid professionals and senior engineers.
Short-term costs increase: The investment in professional tutors and automated systems is higher, but the long-term returns are more accurate models and a more solid market position.
Investors assess new indicators: In the future, when looking at AI companies, it will no longer be sufficient to focus solely on computing power and data volume, but rather on their depth of knowledge in vertical scenarios and their ability to implement solutions.
This is the turning point of the AI development curve
xAI's actions not only responded to the initial quality challenges of Grok but also reflect the transformation of the entire AI industry:
Past: Stacking massive amounts of data in pursuit of the breadth of Artificial General Intelligence (AGI).
Now: Deeply cultivate professional fields to create highly credible and commercially viable professional AI Agents.
For businesses and individuals, the competitiveness of the next decade will depend on the combination of professional capabilities and AI governance frameworks.
Conclusion
Musk's recent "cut first, increase later" action at xAI appears to be a personnel adjustment on the surface, but in reality, it is a re-betting on AI development strategy. As the marginal benefits of general data decline, whoever can establish a professional knowledge barrier first will be able to dominate the next golden decade of AI.