Worried about AI's Self-Evolution, Anthropic Intends to Stop Training?

marsbitPublished on 2026-06-05Last updated on 2026-06-05

Abstract

In early 2026, Anthropic signaled a significant shift in its public narrative regarding AI development timelines and safety. In June, its Anthropic Institute published a detailed article, "When AI builds itself," presenting internal data suggesting accelerating AI self-improvement. Key figures included over 80% of merged code being written by Claude and a 52x speedup in certain optimization tasks. The article outlined three future scenarios, with the most speculative being full recursive self-improvement (RSI), where AI autonomously builds better successors. Anthropic stated RSI is "possible" and may arrive faster than most institutions are prepared for. This narrative pivot followed a series of strategic moves. In January, CEO Dario Amodei wrote about a powerful self-improvement feedback loop. In February, Anthropic revised its Responsible Scaling Policy, removing a core commitment to pause training if capabilities outstripped safety controls, citing the risk of falling behind competitors. This change coincided with reported pressure from the US Department of Defense. By May, Anthropic's valuation had soared to $965 billion. Anthropic's stance was mirrored by other industry leaders. DeepMind CEO Demis Hassabis adjusted his AGI timeline to "by 2029" and admitted to using provocative language like "foothills of the singularity" to create urgency. OpenAI also released a model claiming a key role in its own creation process. The article's carefully calibrated tone—presenting ...

On May 4, 2026, Anthropic co-founder Jack Clark posted a message on the social platform X. His original words were: "I now believe the probability of recursive self-improvement occurring by the end of 2028 is 60%."

Within minutes of the post going live, Eliezer Yudkowsky, a long-time active researcher in AI safety, replied underneath: "Then we will die together." He immediately followed up by citing an analogy pointing to the design flaw of the Chernobyl nuclear reactor RBMK, implying that this system being activated is one no one truly knows how to stop.

This exchange, completed within tens of seconds, lit a match to discussions previously hidden in technical papers and internal assessments. Recursive Self-Improvement (RSI) – where AI systems not only optimize outputs but also autonomously optimize the improvement process itself, ultimately constructing successor systems more powerful than themselves – a concept long relegated to the theoretical margins, was placed by an Anthropic co-founder into a countdown clock with a 60% probability before the end of 2028.

A month later, Anthropic officially published a lengthy article. Titled "When AI builds itself," it was co-authored by Marina Favaro and Jack Clark and published by the newly formed Anthropic Institute in March. Using a series of previously undisclosed internal data and a meticulously calibrated narrative structure, Anthropic handed the outside world a precisely scaled acceleration signal card. This card stated both "we are not there yet" and "but it may arrive faster than most institutions are prepared for."

In the same month, DeepMind CEO Demis Hassabis used a phrasing never before seen in public at the Google I/O stage: humanity stands at the "foothills of the singularity." In subsequent interviews, he adjusted his timeline for Artificial General Intelligence (AGI) from "shortly after 2030" to "2029 is a real possibility," and admitted that his use of dramatic language was "deliberately provocative," aiming to create a sense of urgency for governments, economists, and the public.

Two leading institutions built on a foundation of safety, long serving as forces of restraint in the AI industry, adjusted the volume and scale of their external messaging almost simultaneously. This timing itself needs to be examined as an independent event.

A Meticulously Calibrated Long Article

The long article published by Anthropic on June 4 immediately laid out its narrative goal. It aimed to argue not just a technical trend, but a directional process with acceleration. To this end, it presented a set of previously undisclosed internal data.

The first set of numbers pointed to a structural change: as of May 2026, over 80% of merged code in Anthropic's codebase was written by Claude. Two years ago, this number was in the low single digits. The same data also showed that in Q2 2026, the typical Anthropic engineer was merging 8 times more code per day than in 2024.

One can imagine the reaction of anyone not deeply tracking the AI industry reading these two numbers for the first time. But Anthropic itself acknowledged several important caveats in footnotes: leadership had publicly estimated that if scripts and experimental code were included, Claude-authored code exceeded 90%; 80% was a more conservative statistic for merged code; lines of code are "an imperfect metric" and might overestimate real productivity gains; the code attribution pipeline itself "has gaps."

The very writing of these footnotes is worth analyzing. Their existence ostensibly serves as honest concessions, but their actual function is to make the numbers in the main text appear to have undergone prudent self-filtering, thus gaining greater credibility. This is a two-tier structure in narrative engineering: the main text releases the signal, the footnotes provide the disclaimer.

The second set of numbers involved speed. On code optimization tasks, Claude Opus 4 achieved approximately a 3x speed-up effect in May 2025, which would take a skilled human researcher 4 to 8 hours to achieve. By April 2026, Claude Mythos Preview pushed this number to approximately 52x. The maximum duration for AI to independently complete tasks also doubled every four months, from 4 minutes in March 2024 to 12 hours in March 2026. The speed of doubling every four months itself constitutes a highly memorable point, easily spread with its implication of geometric progression.

Another set of data came from an internal survey of 130 Anthropic research team employees in March 2026. The median respondent estimated that output using Mythos Preview was about 4 times that of not using AI. A footnote again pointed out that prior independent research by METR suggested developers may generally overestimate AI productivity gains. The same two-tier structure reappeared.

The third set of numbers pointed to AI approaching the boundary of human researcher judgment. In November 2025, Claude Opus 4.5 made better research direction choices than human researchers in 51% of cases. By April 2026, this number rose to 64%. With a sample size of 129 cases, Anthropic explained in a footnote that these were cases deliberately chosen where human choices had room for improvement.

Any single number taken out of context could be placed into different interpretive frameworks. But placed together, the direction is consistent: speed is increasing, the gap is narrowing, and all of this is happening inside Anthropic's own codebase and labs, not theoretical speculation on some external benchmark.

After listing this data, the article presented three future scenarios.

The first is trend stagnation, entering an S-curve plateau. Anthropic's phrasing: "we do not believe this is very likely."

The second is compound efficiency gains, where AI continues to replace humans in broader R&D aspects, but humans still set the direction and define success criteria. Anthropic assessed this as "evidence suggests we are likely heading toward this scenario."

The third is full recursive self-improvement, where AI autonomously designs, trains, and deploys successor systems more powerful than itself, with humans no longer in the loop. The wording is "plausible."

The arrangement order and tone allocation of these three scenarios form a complete narrative gradient. The first is downplayed, serving to accommodate skeptics; the second is anchored in "evidence," lending the article a rational veneer; the third, through "plausible" and conditional "if technological trends continue," pushes the boldest hypothesis to the edge of the reader's imagination without bearing the burden of proof for it.

At the very core of the entire article, Anthropic's stance is compressed into one sentence: "We are not there yet, and recursive self-improvement is not inevitable. But it may arrive faster than most institutions are prepared for."

From 'Willing to Pause' to 'A Unilateral Pause Would Only Let Reckless Actors Catch Up'

If the June 4th long article is a carefully framed snapshot, placing it on a timeline reveals a longer trajectory.

In 2023, Anthropic released its Responsible Scaling Policy (RSP). The core commitment of this policy document was: if model capabilities exceed the company's safety control capabilities, the company will pause training more powerful models. This was not a verbal statement, but an internal governance document with an assessment framework and trigger conditions. This document was once regarded by the AI safety community as an operational sample of "voluntary regulation."

In 2024, CEO Dario Amodei published a widely circulated article, suggesting the possibility of "powerful AI" arriving between 2027 and 2030. At that time, Anthropic still presented itself as an independent safety-minded entity, maintaining a restrained facade towards scale expansion and acceleration narratives.

On January 26, 2026, Amodei published a 38-page article "The Adolescence of Technology" on his personal website. It contained a judgment later repeatedly cited: "Because AI is now writing most of the code inside Anthropic, it is already substantially accelerating our progress toward building the next generation of AI systems. This feedback loop is gaining momentum month by month, and may be only 1 to 2 years away from the current generation of AI autonomously building the next generation." In the same article, he described the impending "powerful AI" as a "genius nation in a data center."

This was almost the starting point for Anthropic to systematically release the signal that a "self-improvement feedback loop is happening." And the timing of this blog post coincided with the company's transition from a $350 billion valuation to a higher valuation range.

Less than a month later, the turn came.

On February 25, 2026, CNN reported that Anthropic had revised its Responsible Scaling Policy, removing the core commitment to "pause training stronger models if capabilities exceed safety control abilities," replacing it with a non-binding "Frontier Safety Roadmap." In the same week, U.S. Secretary of Defense Pete Hegseth issued an ultimatum to Dario Amodei: withdraw the safety red line, or lose a $200 million Department of Defense contract.

The report quoted Anthropic's Chief Scientist Jared Kaplan's response to Time magazine: "We don't think stopping model training actually helps anyone... if competitors are sprinting at full speed." The phrasing in this response is noteworthy. "Doesn't help anyone" is not a technical argument, but a statement of stakeholder calculus. "If competitors are sprinting at full speed" is structurally identical in narrative framing to "a unilateral pause would only let the least cautious actors catch up": it replaces the original pause logic based on one's own safety capabilities with a speed logic based on competitor actions.

Anthropic still emphasized in the CNN report that it retained two red lines: not using AI systems to control weapons systems, and not using them for mass domestic surveillance. This point is important because it shows Anthropic did not abandon its safety stance wholesale, but made selective concessions and defenses across different safety dimensions. However, this selectivity itself is also a core clue in narrative strategy analysis: where it conceded and where it held firm delineates the recalibrated scale of safety.

On March 11, the Anthropic Institute was formally established, led by Jack Clark, positioned as a "public interest research institute." Less than two months later, on May 4, Clark posted the "60%" message.

Once juxtaposed, the signal density and release rhythm of this timeline are not random. From the personal article preview in January, to the policy revision in February, to the institute's establishment in March, to the founder's probability prediction in May, to the official long article release in June, this is a clearly paced, gradually escalating narrative pipeline. One cannot directly conclude "this was all pre-planned" from this, but the sequence itself constitutes a question analysts must confront: does this sense of rhythm indicate that Anthropic has already incorporated the "acceleration narrative" into its public communications management?

Hassabis's Deliberate Provocation

If only Anthropic had adjusted its messaging in the first half of 2026, analysts would have sufficient reason to focus on the internal decision logic of the enterprise. But DeepMind CEO Demis Hassabis made a directionally consistent adjustment almost simultaneously, making the "single enterprise case" argument untenable.

On January 20, at the Davos Forum, Hassabis still maintained his longstanding judgment: a 50% probability of AGI by 2030. Three weeks later, on February 18, at the India AI Impact Summit, he relented: "AGI could arrive within five years."

From May 20 to 22, at Google I/O, Hassabis said in his keynote that humanity stands at the "foothills of the singularity." Around the same time, OpenAI released GPT-5.3-Codex, stating the model "played a key role in its own creation process," specifically including assisting in debugging the training process, managing deployment, and analyzing evaluation results. The timing gap between the three leading labs was compressed to weeks.

After Google I/O, Hassabis gave an interview to Axios. This interview was later widely cited, with the most crucial line being his admission that using language like "foothills of the singularity" was "deliberately provocative," aimed at jolting governments, economists, and the public into recognizing the urgency of AI's accelerating development. He also adjusted his AGI timeline from "shortly after 2030" to "2029 is a real possibility," though still broadly expected around 2030, plus or minus a year.

Hassabis was more direct in an interview with The Seoul Economic Daily: "Five to ten years from now, when we look back at 2026 and 2027, we will say 'that was when we entered the AGI era.'"

The term "deliberately provocative" deserves careful consideration. It is a rare, first-hand confession by a principal actor about narrative intent. It acknowledges that at least some of his chosen phrasing is not a passive reflection of technical facts, but an actively chosen communication tool. This confession itself does not negate that he may also genuinely see a technical inflection point, but it explicitly lifts "narrative" from the shadow of "facts," making it an object that can be examined separately.

Hassabis's self-explanation of his phrasing opens a side door to interpreting this round of synchronized signals. His "deliberate provocation" and the "footnote disclaimers" in Anthropic's lengthy data argument exhibit the same amphibious posture: one hand pushes signals shocking enough to stir public opinion, the other retains a safe space to retreat to "this is just one possibility."

The Same Set of Data, Completely Different Interpretations

While Anthropic and DeepMind jointly constructed a narrative framework of "AI is accelerating its own evolution," external independent researchers offered alternative interpretations of the same set of data and phenomena. These interpretations are important not because any one side possesses ultimate truth, but because they reveal the interpretative range of the official narrative itself.

The sharpest response came from Eliezer Yudkowsky. He not only replied to Jack Clark but also continued to speak out on multiple occasions. A MindStudio blog recorded his complete stance: he used the Chernobyl RBMK reactor as an analogy for the safety design of current AI systems. The core argument of this analogy is that if control rods and accelerators are bound within the same system, attempting to slow down can actually cause the system to lose control faster.

Nathan Lambert of the Allen Institute for AI proposed the concept of "Lossy Self-Improvement" (LSI). His argument directly challenges the "accelerating flywheel" model: as systems become increasingly complex, each generational improvement process creates friction and loss, akin to signal attenuation over long-distance transmission. According to this logic, the improvements that made 80% or 90% AI-authored code possible cannot be infinitely replicated onto the next-generation system, because the next generation will face a more complex problem space, and the noise and errors in the AI's own output will amplify across generations.

Dean Ball, a senior fellow at the Foundation for American Innovation, offered a more direct linguistic framework, dimensionalizing Anthropic's data. He told IEEE Spectrum: "Maybe eventually they'll automate genius, but not next year. Next year they're automating drudgery." This distinction strikes at the core ambiguity of "80% of code written by AI." If AI automates the fixed-pattern parts of a codebase, batch parameter generation, or end-to-end pipeline configuration, then this work indeed corresponds to "drudgery" in software engineering contexts. The remaining 20% might contain architecture design, directional judgment, trade-offs based on incomplete information – these are the genius parts.

David Scott Krueger of the University of Montreal, as founder of the AI safety non-profit Evitable, proposed a pause trigger red line: "99% of code written by AI." He told IEEE Spectrum: "I think we may be crossing that line now." The tension between his framework and Anthropic's already loosened pause commitment is one of the most important structural contradictions in this round of narratives.

UBC computer scientist Jeff Clune, in an interview with IEEE Spectrum, stood in another direction. He said: "We are at an inflection point for recursive self-improvement systems." If his statement were validated, it would mean Yudkowsky's alarm bell rang at the right beat.

Four sets of voices, pointing in different directions, with even internal tension within the same direction. But their commonality lies in the fact that they do not rely on the official narrative framework; instead, they each offer independent judgments on the same set of phenomena based on their own methodologies. The diversity and conflict among these judgments themselves are the most powerful rebuttal to the notion that "any single narrative sufficiently covers the whole truth."

Coupling of Valuation Curves and Narrative Rhythm

In January 2026, Anthropic completed a funding round at a valuation of $350 billion. Investors included Microsoft and Nvidia. This number had been preemptively reported by some media by late 2025, but its formal announcement came right after Amodei published "The Adolescence of Technology."

In February, another $30 billion funding round completed, maintaining the valuation around $350 billion. In the same month, the safety policy was revised, removing the pause commitment. The Pentagon's $200 million contract threat landed.

In May, Reuters, The New York Times, and TechCrunch almost simultaneously reported that Anthropic had completed a $65 billion funding round, reaching a valuation of $965 billion. This number not only exceeded its own valuation two months prior but also surpassed OpenAI's $852 billion valuation from March 2026. The New York Times additionally cited Dario Amodei's remarks at a developer conference, stating the company's annualized revenue reached $30 billion, with him even joking that he "hopes this year's 80x revenue growth doesn't continue, because that would be insane."

On June 4, the Anthropic Institute published the "When AI builds itself" long article.

Lining up these time points is not to imply a precise causal arrow on a chart. Anyone claiming a causal relationship between these things must provide direct evidence. In the absence of internal decision records, no analyst can or should make such assertions.

On the other hand, it is equally unreasonable to not observe and record these correspondences at all. That an enterprise's valuation nearly tripled from $350 billion to $965 billion within five months, while undergoing a major safety policy shift, while constructing a narrative pipeline of "acceleration signals" led by an independent research institute, while its co-founder offered a 60% probability prediction – when all these events are densely compressed within six months, investors at least have the right to ask: To what extent do these signal releases serve the function of conveying the message "we are at the accelerating frontier" to the market?

This inquiry itself is the value of analysis. The answer may never be singular. But once the question is clearly posed, it cannot be easily withdrawn.

Global AI market funding reached $297 billion in Q1 2026, with the top five deals occupying a significant share of that total. At this level, all frontier labs face the same pressure: you need to convince investors that your technology curve will be steeper than your rivals'. Your risk warnings must also be loud enough so that when regulators finally step in to make rules, your voice is pre-embedded into the policy framework. Your narrative must also be attractive enough to make top researchers choose your lab, and alarming enough to maintain your remaining credibility within the safety community.

There are inherent contradictions among these demands. Anthropic's narrative adjustments in the first half of 2026 can be seen as a recalibration of the linguistic balance point among these conflicting demands. The weakening of safety commitments, the strengthening of acceleration signals, and the repeated use of the argument "we cannot unilaterally stop" collectively form a set of vectors pointing in the same direction.

The Signals Are Out, And Then

We must return to the core question: do these signals more resemble reflections of a technical inflection point, or rhetorical escalation aimed at capital and regulation?

Available public evidence does not allow for simply checking a box between the two options. Because the evidence used by both explanations is, in fact, the same set of data. The 80% code share, 52x speed-up, task duration doubling every four months can both support "an inflection point is approaching" and explain "we are communicating a trend perception our own technical staff have personally experienced to the market." The boundary between these is blurred.

But some facts are determinate, requiring no choosing of sides between interpretations.

First, Anthropic's narrative pivot completed in the first half of 2026 is not an isolated case. DeepMind's Hassabis made a directionally consistent, if differing in degree but essentially similar, adjustment almost in the same quarter. OpenAI's Sam Altman said at the India summit "the world is not ready," and in February 2026 released GPT-5.3-Codex, claiming it "played a key role in its own creation process." If this were only Anthropic releasing signals, perhaps analysis from an enterprise strategy perspective would suffice. But three leading labs simultaneously raising their voices within a dense few months constitutes an industry-level narrative shift.

Second, there exists a temporally traceable correspondence between the rhythm of these signal releases and the beats of financing, policy adjustments, and organizational restructuring. This correspondence itself needs to prove nothing; it only needs to be honestly presented. Once presented, each person's inherent methodology will determine what they think next.

Third, Anthropic itself still labels the status of the third scenario, "full recursive self-improvement," as "plausible," not "likely." This means that within the internal judgment framework of the company releasing this data, their acceleration narrative is not yet fully closed. The forces that compel them to habitually include qualifiers in academic papers and blog writing are still pulling the reins on their public phrasing.

Fourth, Hassabis's "deliberate provocation" confession confirms a mechanism long suspected but rarely admitted by the actors themselves: at least some leaders of frontier labs choose their phrasing with explicit communication objectives in mind. This necessitates that all interpretations of their pronouncements must simultaneously analyze two layers: the facts they claim, and the rhetorical strategy they employ in choosing those claims as a behavioral event in itself.

Those who carefully read Anthropic's data-filled article and those who only remember the two numbers "80% of code written by AI" and "52x acceleration" receive vastly different signal strengths. But in this matter, "how it is remembered" might be a more important object of analysis than "what was actually said."

This very article is itself a precise sample of the phenomenon it describes. It constructs a sense of impending acceleration using data, yet retains room for retreat through footnotes and qualifiers; it calls for global coordination and verifiable deceleration, yet has already withdrawn the pause commitment in a prior policy revision. This is not hypocrisy, nor simple inconsistency between words and actions. It is the narrative balancing act of an institution caught between technical uncertainty, commercial pressure, and public responsibility. And Hassabis's "deliberate provocation" confession precisely confirms from the side door that such balancing acts are now a consciously employed method among leading labs.

Related Questions

QWhat is recursive self-improvement (RSI) in the context of AI, and why did Anthropic's co-founder's comments about its probability spark significant discussion?

ARecursive self-improvement (RSI) refers to an AI system's ability to not only optimize its outputs but also autonomously improve its own improvement processes, ultimately leading to the creation of successor systems more capable than itself. The discussion was ignited because Anthropic's co-founder, Jack Clark, publicly stated a 60% probability of RSI occurring by the end of 2028. This moved the concept from theoretical speculation to a near-term, quantified risk, prompting immediate and alarmed responses from figures like AI safety researcher Eliezer Yudkowsky.

QAccording to the article, what key data did Anthropic present in its June 4th post 'When AI builds itself' to argue that AI development is accelerating?

AAnthropic presented several key data points: 1) Over 80% of merged code in its codebase was written by Claude as of May 2026, up from low single digits two years prior. 2) Typical engineers merged 8 times more code daily in Q2 2026 compared to 2024. 3) Code optimization speed increased from a 3x acceleration with Claude Opus 4 to a 52x acceleration with Claude Mythos Preview. 4) The maximum duration of tasks AI could complete independently doubled every 4 months, reaching 12 hours by March 2026. 5) An internal survey showed a median 4x productivity increase using AI tools.

QHow did Anthropic's Responsible Scaling Policy (RSP) change in early 2026, and what was cited as a reason for this change?

AIn February 2026, Anthropic modified its Responsible Scaling Policy by removing the core commitment to pause training more powerful models if capabilities outpaced safety controls. This was replaced with a non-binding 'Frontier Safety Roadmap.' A key reason cited for the change, as articulated by Chief Scientist Jared Kaplan, was that a unilateral pause 'doesn't actually help anyone... if competitors are sprinting full speed ahead.' This shifted the rationale from an internal safety threshold to a competitive race dynamic.

QWhat does Demis Hassabis of DeepMind mean by calling his use of dramatic language like 'foothills of the singularity' a 'deliberate provocation'?

ADemis Hassabis described his dramatic language as a 'deliberate provocation' to acknowledge that his word choice was an active communication strategy, not just a passive reflection of technical facts. His stated goal was to create a sense of urgency among governments, economists, and the public regarding the accelerating pace of AI development. This admission highlights that the public statements from leading AI labs are carefully crafted narratives intended to achieve specific effects, alongside reporting perceived technical trends.

QWhat alternative interpretations or critiques did external researchers offer regarding Anthropic's data on AI self-improvement?

AExternal researchers offered several critiques: 1) Eliezer Yudkowsky used the Chernobyl RBMK reactor analogy, warning of a system where controls might accelerate rather than slow down a runaway process. 2) Nathan Lambert proposed 'Lossy Self-Improvement,' suggesting complexity and error amplification could limit indefinite acceleration. 3) Dean Ball argued that AI is automating 'grunt work,' not genius-level tasks. 4) David Scott Krueger suggested a stricter pause threshold (99% AI-written code) that Anthropic might be approaching. 5) Jeff Clune agreed a turning point was near. These views highlight the interpretative range and lack of consensus surrounding the same data.

Related Reads

Silicon Valley 'Startup Guru' Steve Hoffman: Web3 + AI Could Be a Trap

Silicon Valley investor and "Godfather of Startups" Steve Hoffman warns that combining Web3 with AI is likely a trap, not a promising venture. In an interview, Hoffman argues that while AI is a foundational technology touching all industries, Web3 adds complexity, friction, and regulatory risk without solving mainstream consumer or business needs. He advises founders to focus on deep, specialized applications where startups can out-iterate giants, rather than on generic features easily replicated by large tech companies. Hoffman observes that Silicon Valley will lead foundational AI research, while China excels at rapid, large-scale application and commercialization, particularly in robotics. He stresses that AI-driven autonomous agents capable of collaborative, multi-step tasks are 2-4 years away, which will cause significant job displacement. The solution is not to slow AI but to redesign business models around human-AI collaboration and reform social systems like education and retraining. For startups, Hoffman recommends focusing on vertical, expertise-heavy domains to build defensibility. He sees major opportunities in AI fraud detection and cybersecurity. Key founder mindsets include systemic thinking over feature-focus, relentless customer centricity, building adaptive teams, and deeply understanding AI's capabilities and limits. Hoffman is also leading a non-profit initiative to establish university centers aimed at training future leaders in responsible, human-value-aligned AI innovation.

marsbit10m ago

Silicon Valley 'Startup Guru' Steve Hoffman: Web3 + AI Could Be a Trap

marsbit10m ago

Token Inefficient, Economy Tokenless

The article "Tokens Aren't Economical, Economics Aren't Tokenized" analyzes a pivotal shift in the AI industry from a technology-driven narrative to one dominated by capital efficiency. It highlights two concurrent trends: a severe capital shortage due to the exorbitant and recurring costs of compute (e.g., OpenAI's high burn rate) and a wave of corporate spin-offs where major tech companies are separating their AI units (like Kuaishou's Kling and Baidu's Kunlunxin). The core argument is that AI's "anti-internet" business model, where user growth increases costs rather than profits, has created a disconnect between high valuations and actual cash flow. Spin-offs address this by allowing AI assets to be valued independently. Within a parent company, they are seen as cost centers, but as standalone entities, they are priced based on their growth potential and scarcity in the primary market, leading to massive valuation premiums (e.g., Kling's estimated value tripling post-spin-off). The industry is at an inflection point, moving from "model worship" to "value realization." The competition is evolving from a pure compute (GPU) race to a broader focus on systemic efficiency and full-stack engineering (involving CPUs and orchestration) to achieve viable commercialization. The year 2026 is framed as a critical moment where the industry must definitively answer how to economically translate AI capability into tangible business value, reshaping the sector's future power structure.

marsbit15m ago

Token Inefficient, Economy Tokenless

marsbit15m ago

Crossing the 'Memory Wall': The Wafer-Level Revolution and Computing Power Routes in the AI Inference Era

In 2026, a historic shift occurred in AI as major cloud providers' inference spending surpassed training spending for the first time, signaling a move from "building large models" to "using large models." This shifts the core challenge from computing power to the "memory wall"—the bottleneck of data movement (model weights, activations, KV Cache) between external DRAM and processors, where energy and latency from data transfer far exceed computation itself. Companies like Nvidia face GPU idle time due to bandwidth limits. In contrast, Cerebras Systems adopts a radical "wafer-scale" approach with its Wafer-Scale Engine (WSE). Instead of cutting a silicon wafer into many chips, Cerebras uses almost the entire wafer as one massive chip (WSE-3). This design provides 44GB of on-chip SRAM, delivering memory bandwidth thousands of times higher than traditional HBM (e.g., 21 PB/s vs. Nvidia B200). For LLM inference, weights are streamed layer-by-layer from external MemoryX storage to the chip, avoiding HBM bottlenecks. This results in token generation speeds 1.5–5 times faster than Nvidia's B200 in some models and significant advantages in first-token latency and long-context tasks. Additionally, Cerebras's architecture offers much lower interconnect power consumption (0.15 pJ/bit vs. GPU's ~10 pJ/bit). However, Cerebras faces challenges: SRAM scaling has slowed with advanced nodes, limiting future capacity gains; the chip requires specialized liquid cooling and custom software stacks; and its external I/O bandwidth (150 GB/s) is low compared to NVLink, hindering multi-system scaling for very large models. Competition is intensifying. Major players are pursuing three paths: 1) Developing proprietary inference ASICs (e.g., Google TPU, Microsoft Maia), 2) Leveraging advanced packaging (e.g., TSMC's SoW) to democratize wafer-scale-like integration, potentially eroding Cerebras's process advantage within a few years, and 3) Exploring optical interconnects for ultimate bandwidth. Commercially, Cerebras is transitioning from a hardware vendor to a service provider, facing the immense challenge of building high-power, specialized data centers to meet large contracts (e.g., 250MW/year from 2026–2028). In conclusion, the AI inference era presents a fundamental architectural trade-off. Cerebras opts for extreme physical optimization for low-latency, single-task performance, while Nvidia prioritizes versatility and massive cluster throughput. The path forward remains uncertain, with technology and business models still evolving in the race toward advanced AI.

marsbit21m ago

Crossing the 'Memory Wall': The Wafer-Level Revolution and Computing Power Routes in the AI Inference Era

marsbit21m ago

Has Bitcoin's 'Rebound Ended', Officially Entering the Late Bear Market Phase?

**Title: Has Bitcoin's Rebound Ended, Entering the Late Bear Market Phase?** **Summary:** Bitcoin's price has declined by 13% this week, signaling a potential return to late-stage bear market conditions. The price fell to around $67k, positioned between the Realized Price and Realized Cap Weighted Average. For the first time since early 2022, the Short-Term Holder cost basis has dropped below this key average, confirming a hallmark of late-cycle bear markets. Profitability metrics have collapsed sharply. The 7-day average of the Realized Profit/Loss ratio plummeted from a local high of 3.16 to 0.29, mirroring the February panic sell-off. Critically, the 90-day average never breached the threshold of 2, indicating the recent rally to $82k was a bear market bounce, not a structural shift. Realized losses surged to $1.35 billion daily, with $770 million coming from Long-Term Holders selling at a loss. This accelerating redistribution of supply from weak to strong hands is a necessary but ongoing process for a market bottom. The rally stalled almost precisely at the aggregate cost basis (~$83k) of US spot Bitcoin ETF investors, turning that level into strong resistance and leaving the average ETF holder underwater again. Spot market flows have turned decisively negative, showing sellers are dominating order books despite the price drop. While a significant futures long liquidation event cleared over $400 million in leverage, providing a potential reset, sustained spot demand is yet to materialize. Options markets continue to price in higher future volatility (Implied Volatility) than recent price action (Realized Volatility) has shown, with a persistent skew towards put options, indicating ongoing demand for downside protection. In conclusion, multiple metrics point to a fragile market structure. Resistance at the ETF cost basis, accelerating realized losses, dominant spot selling, and cautious options pricing all suggest the bear market trend persists. A sustainable recovery likely requires a resurgence of spot demand, ETF holders returning to profit, and a clear reduction in selling pressure.

marsbit21m ago

Has Bitcoin's 'Rebound Ended', Officially Entering the Late Bear Market Phase?

marsbit21m ago

TechFlow Intelligence Agency: Anthropic Calls for Global Pause in AI Development While Preparing for Trillion-Dollar IPO; SpaceX IPO Roadshow Heats Up, But S&P 500 Rejects Fast-Track Inclusion

In today's TechFlow Intelligence Briefing, several major tech stories highlight a growing theme of trust and credibility gaps across AI, crypto, and finance. AI company Anthropic has publicly called for a global pause in AI development, citing risks from Claude's "recursive self-improvement." Ironically, this coincides with reports the company is preparing for a massive IPO targeting a near $1 trillion valuation. This perceived hypocrisy, coupled with widespread user complaints about Claude's declining performance, is sparking debate over whether the safety warning is genuine or a competitive tactic. Meanwhile, in a substantive security move, Anthropic open-sourced a framework for AI-powered vulnerability discovery. In the crypto market, Bitcoin's price drop below $61,000 triggered over $1.16 billion in liquidations, flipping the market into a state where more BTC is held at a loss than at a profit, a historical bearish signal. On the corporate front, SpaceX's highly anticipated IPO is generating immense Wall Street excitement, with Goldman Sachs projecting 100x revenue growth by 2030. However, the S&P 500 has refused to fast-track the company's inclusion post-IPO, potentially limiting immediate institutional demand. Separately, ByteDance's AI app Doubao lost over 6 million monthly active users after introducing a subscription model, highlighting the challenges of AI monetization. Other notable developments include Nvidia certifying HBM4 memory from Samsung, SK Hynix, and Micron; Cloudflare's acquisition of front-end tooling company VoidZero; and its CEO warning that bot traffic now exceeds human traffic online. The underlying narrative connects these events: a trust crisis. From AI firms' contradictory actions and crypto volatility to the clash between SpaceX's hyped narrative and institutional rules, a pattern is emerging where stated intentions and actual practices are increasingly misaligned.

marsbit36m ago

TechFlow Intelligence Agency: Anthropic Calls for Global Pause in AI Development While Preparing for Trillion-Dollar IPO; SpaceX IPO Roadshow Heats Up, But S&P 500 Rejects Fast-Track Inclusion

marsbit36m ago

Trading

Spot
Futures

Hot Articles

What is SONIC

Sonic: Pioneering the Future of Gaming in Web3 Introduction to Sonic In the ever-evolving landscape of Web3, the gaming industry stands out as one of the most dynamic and promising sectors. At the forefront of this revolution is Sonic, a project designed to amplify the gaming ecosystem on the Solana blockchain. Leveraging cutting-edge technology, Sonic aims to deliver an unparalleled gaming experience by efficiently processing millions of requests per second, ensuring that players enjoy seamless gameplay while maintaining low transaction costs. This article delves into the intricate details of Sonic, exploring its creators, funding sources, operational mechanics, and the timeline of significant events that have shaped its journey. What is Sonic? Sonic is an innovative layer-2 network that operates atop the Solana blockchain, specifically tailored to enhance the existing Solana gaming ecosystem. It accomplishes this through a customised, VM-agnostic game engine paired with a HyperGrid interpreter, facilitating sovereign game economies that roll up back to the Solana platform. The primary goals of Sonic include: Enhanced Gaming Experiences: Sonic is committed to offering lightning-fast on-chain gameplay, allowing players and developers to engage with games at previously unattainable speeds. Atomic Interoperability: This feature enables transactions to be executed within Sonic without the need to redeploy Solana programmes and accounts. This makes the process more efficient and directly benefits from Solana Layer1 services and liquidity. Seamless Deployment: Sonic allows developers to write for Ethereum Virtual Machine (EVM) based systems and execute them on Solana’s SVM infrastructure. This interoperability is crucial for attracting a broader range of dApps and decentralised applications to the platform. Support for Developers: By offering native composable gaming primitives and extensible data types - dining within the Entity-Component-System (ECS) framework - game creators can craft intricate business logic with ease. Overall, Sonic's unique approach not only caters to players but also provides an accessible and low-cost environment for developers to innovate and thrive. Creator of Sonic The information regarding the creator of Sonic is somewhat ambiguous. However, it is known that Sonic's SVM is owned by the company Mirror World. The absence of detailed information about the individuals behind Sonic reflects a common trend in several Web3 projects, where collective efforts and partnerships often overshadow individual contributions. Investors of Sonic Sonic has garnered considerable attention and support from various investors within the crypto and gaming sectors. Notably, the project raised an impressive $12 million during its Series A funding round. The round was led by BITKRAFT Ventures, with other notable investors including Galaxy, Okx Ventures, Interactive, Big Brain Holdings, and Mirana. This financial backing signifies the confidence that investment foundations have in Sonic’s potential to revolutionise the Web3 gaming landscape, further validating its innovative approaches and technologies. How Does Sonic Work? Sonic utilises the HyperGrid framework, a sophisticated parallel processing mechanism that enhances its scalability and customisability. Here are the core features that set Sonic apart: Lightning Speed at Low Costs: Sonic offers one of the fastest on-chain gaming experiences compared to other Layer-1 solutions, powered by the scalability of Solana’s virtual machine (SVM). Atomic Interoperability: Sonic enables transaction execution without redeployment of Solana programmes and accounts, effectively streamlining the interaction between users and the blockchain. EVM Compatibility: Developers can effortlessly migrate decentralised applications from EVM chains to the Solana environment using Sonic’s HyperGrid interpreter, increasing the accessibility and integration of various dApps. Ecosystem Support for Developers: By exposing native composable gaming primitives, Sonic facilitates a sandbox-like environment where developers can experiment and implement business logic, greatly enhancing the overall development experience. Monetisation Infrastructure: Sonic natively supports growth and monetisation efforts, providing frameworks for traffic generation, payments, and settlements, thereby ensuring that gaming projects are not only viable but also sustainable financially. Timeline of Sonic The evolution of Sonic has been marked by several key milestones. Below is a brief timeline highlighting critical events in the project's history: 2022: The Sonic cryptocurrency was officially launched, marking the beginning of its journey in the Web3 gaming arena. 2024: June: Sonic SVM successfully raised $12 million in a Series A funding round. This investment allowed Sonic to further develop its platform and expand its offerings. August: The launch of the Sonic Odyssey testnet provided users with the first opportunity to engage with the platform, offering interactive activities such as collecting rings—a nod to gaming nostalgia. October: SonicX, an innovative crypto game integrated with Solana, made its debut on TikTok, capturing the attention of over 120,000 users within a short span. This integration illustrated Sonic’s commitment to reaching a broader, global audience and showcased the potential of blockchain gaming. Key Points Sonic SVM is a revolutionary layer-2 network on Solana explicitly designed to enhance the GameFi landscape, demonstrating great potential for future development. HyperGrid Framework empowers Sonic by introducing horizontal scaling capabilities, ensuring that the network can handle the demands of Web3 gaming. Integration with Social Platforms: The successful launch of SonicX on TikTok displays Sonic’s strategy to leverage social media platforms to engage users, exponentially increasing the exposure and reach of its projects. Investment Confidence: The substantial funding from BITKRAFT Ventures, among others, emphasizes the robust backing Sonic has, paving the way for its ambitious future. In conclusion, Sonic encapsulates the essence of Web3 gaming innovation, striking a balance between cutting-edge technology, developer-centric tools, and community engagement. As the project continues to evolve, it is poised to redefine the gaming landscape, making it a notable entity for gamers and developers alike. As Sonic moves forward, it will undoubtedly attract greater interest and participation, solidifying its place within the broader narrative of blockchain gaming.

1.6k Total ViewsPublished 2024.04.04Updated 2024.12.03

What is SONIC

What is $S$

Understanding SPERO: A Comprehensive Overview Introduction to SPERO As the landscape of innovation continues to evolve, the emergence of web3 technologies and cryptocurrency projects plays a pivotal role in shaping the digital future. One project that has garnered attention in this dynamic field is SPERO, denoted as SPERO,$$s$. This article aims to gather and present detailed information about SPERO, to help enthusiasts and investors understand its foundations, objectives, and innovations within the web3 and crypto domains. What is SPERO,$$s$? SPERO,$$s$ is a unique project within the crypto space that seeks to leverage the principles of decentralisation and blockchain technology to create an ecosystem that promotes engagement, utility, and financial inclusion. The project is tailored to facilitate peer-to-peer interactions in new ways, providing users with innovative financial solutions and services. At its core, SPERO,$$s$ aims to empower individuals by providing tools and platforms that enhance user experience in the cryptocurrency space. This includes enabling more flexible transaction methods, fostering community-driven initiatives, and creating pathways for financial opportunities through decentralised applications (dApps). The underlying vision of SPERO,$$s$ revolves around inclusiveness, aiming to bridge gaps within traditional finance while harnessing the benefits of blockchain technology. Who is the Creator of SPERO,$$s$? The identity of the creator of SPERO,$$s$ remains somewhat obscure, as there are limited publicly available resources providing detailed background information on its founder(s). This lack of transparency can stem from the project's commitment to decentralisation—an ethos that many web3 projects share, prioritising collective contributions over individual recognition. By centring discussions around the community and its collective goals, SPERO,$$s$ embodies the essence of empowerment without singling out specific individuals. As such, understanding the ethos and mission of SPERO remains more important than identifying a singular creator. Who are the Investors of SPERO,$$s$? SPERO,$$s$ is supported by a diverse array of investors ranging from venture capitalists to angel investors dedicated to fostering innovation in the crypto sector. The focus of these investors generally aligns with SPERO's mission—prioritising projects that promise societal technological advancement, financial inclusivity, and decentralised governance. These investor foundations are typically interested in projects that not only offer innovative products but also contribute positively to the blockchain community and its ecosystems. The backing from these investors reinforces SPERO,$$s$ as a noteworthy contender in the rapidly evolving domain of crypto projects. How Does SPERO,$$s$ Work? SPERO,$$s$ employs a multi-faceted framework that distinguishes it from conventional cryptocurrency projects. Here are some of the key features that underline its uniqueness and innovation: Decentralised Governance: SPERO,$$s$ integrates decentralised governance models, empowering users to participate actively in decision-making processes regarding the project’s future. This approach fosters a sense of ownership and accountability among community members. Token Utility: SPERO,$$s$ utilises its own cryptocurrency token, designed to serve various functions within the ecosystem. These tokens enable transactions, rewards, and the facilitation of services offered on the platform, enhancing overall engagement and utility. Layered Architecture: The technical architecture of SPERO,$$s$ supports modularity and scalability, allowing for seamless integration of additional features and applications as the project evolves. This adaptability is paramount for sustaining relevance in the ever-changing crypto landscape. Community Engagement: The project emphasises community-driven initiatives, employing mechanisms that incentivise collaboration and feedback. By nurturing a strong community, SPERO,$$s$ can better address user needs and adapt to market trends. Focus on Inclusion: By offering low transaction fees and user-friendly interfaces, SPERO,$$s$ aims to attract a diverse user base, including individuals who may not previously have engaged in the crypto space. This commitment to inclusion aligns with its overarching mission of empowerment through accessibility. Timeline of SPERO,$$s$ Understanding a project's history provides crucial insights into its development trajectory and milestones. Below is a suggested timeline mapping significant events in the evolution of SPERO,$$s$: Conceptualisation and Ideation Phase: The initial ideas forming the basis of SPERO,$$s$ were conceived, aligning closely with the principles of decentralisation and community focus within the blockchain industry. Launch of Project Whitepaper: Following the conceptual phase, a comprehensive whitepaper detailing the vision, goals, and technological infrastructure of SPERO,$$s$ was released to garner community interest and feedback. Community Building and Early Engagements: Active outreach efforts were made to build a community of early adopters and potential investors, facilitating discussions around the project’s goals and garnering support. Token Generation Event: SPERO,$$s$ conducted a token generation event (TGE) to distribute its native tokens to early supporters and establish initial liquidity within the ecosystem. Launch of Initial dApp: The first decentralised application (dApp) associated with SPERO,$$s$ went live, allowing users to engage with the platform's core functionalities. Ongoing Development and Partnerships: Continuous updates and enhancements to the project's offerings, including strategic partnerships with other players in the blockchain space, have shaped SPERO,$$s$ into a competitive and evolving player in the crypto market. Conclusion SPERO,$$s$ stands as a testament to the potential of web3 and cryptocurrency to revolutionise financial systems and empower individuals. With a commitment to decentralised governance, community engagement, and innovatively designed functionalities, it paves the way toward a more inclusive financial landscape. As with any investment in the rapidly evolving crypto space, potential investors and users are encouraged to research thoroughly and engage thoughtfully with the ongoing developments within SPERO,$$s$. The project showcases the innovative spirit of the crypto industry, inviting further exploration into its myriad possibilities. While the journey of SPERO,$$s$ is still unfolding, its foundational principles may indeed influence the future of how we interact with technology, finance, and each other in interconnected digital ecosystems.

54 Total ViewsPublished 2024.12.17Updated 2024.12.17

What is $S$

What is AGENT S

Agent S: The Future of Autonomous Interaction in Web3 Introduction In the ever-evolving landscape of Web3 and cryptocurrency, innovations are constantly redefining how individuals interact with digital platforms. One such pioneering project, Agent S, promises to revolutionise human-computer interaction through its open agentic framework. By paving the way for autonomous interactions, Agent S aims to simplify complex tasks, offering transformative applications in artificial intelligence (AI). This detailed exploration will delve into the project's intricacies, its unique features, and the implications for the cryptocurrency domain. What is Agent S? Agent S stands as a groundbreaking open agentic framework, specifically designed to tackle three fundamental challenges in the automation of computer tasks: Acquiring Domain-Specific Knowledge: The framework intelligently learns from various external knowledge sources and internal experiences. This dual approach empowers it to build a rich repository of domain-specific knowledge, enhancing its performance in task execution. Planning Over Long Task Horizons: Agent S employs experience-augmented hierarchical planning, a strategic approach that facilitates efficient breakdown and execution of intricate tasks. This feature significantly enhances its ability to manage multiple subtasks efficiently and effectively. Handling Dynamic, Non-Uniform Interfaces: The project introduces the Agent-Computer Interface (ACI), an innovative solution that enhances the interaction between agents and users. Utilizing Multimodal Large Language Models (MLLMs), Agent S can navigate and manipulate diverse graphical user interfaces seamlessly. Through these pioneering features, Agent S provides a robust framework that addresses the complexities involved in automating human interaction with machines, setting the stage for myriad applications in AI and beyond. Who is the Creator of Agent S? While the concept of Agent S is fundamentally innovative, specific information about its creator remains elusive. The creator is currently unknown, which highlights either the nascent stage of the project or the strategic choice to keep founding members under wraps. Regardless of anonymity, the focus remains on the framework's capabilities and potential. Who are the Investors of Agent S? As Agent S is relatively new in the cryptographic ecosystem, detailed information regarding its investors and financial backers is not explicitly documented. The lack of publicly available insights into the investment foundations or organisations supporting the project raises questions about its funding structure and development roadmap. Understanding the backing is crucial for gauging the project's sustainability and potential market impact. How Does Agent S Work? At the core of Agent S lies cutting-edge technology that enables it to function effectively in diverse settings. Its operational model is built around several key features: Human-like Computer Interaction: The framework offers advanced AI planning, striving to make interactions with computers more intuitive. By mimicking human behaviour in tasks execution, it promises to elevate user experiences. Narrative Memory: Employed to leverage high-level experiences, Agent S utilises narrative memory to keep track of task histories, thereby enhancing its decision-making processes. Episodic Memory: This feature provides users with step-by-step guidance, allowing the framework to offer contextual support as tasks unfold. Support for OpenACI: With the ability to run locally, Agent S allows users to maintain control over their interactions and workflows, aligning with the decentralised ethos of Web3. Easy Integration with External APIs: Its versatility and compatibility with various AI platforms ensure that Agent S can fit seamlessly into existing technological ecosystems, making it an appealing choice for developers and organisations. These functionalities collectively contribute to Agent S's unique position within the crypto space, as it automates complex, multi-step tasks with minimal human intervention. As the project evolves, its potential applications in Web3 could redefine how digital interactions unfold. Timeline of Agent S The development and milestones of Agent S can be encapsulated in a timeline that highlights its significant events: September 27, 2024: The concept of Agent S was launched in a comprehensive research paper titled “An Open Agentic Framework that Uses Computers Like a Human,” showcasing the groundwork for the project. October 10, 2024: The research paper was made publicly available on arXiv, offering an in-depth exploration of the framework and its performance evaluation based on the OSWorld benchmark. October 12, 2024: A video presentation was released, providing a visual insight into the capabilities and features of Agent S, further engaging potential users and investors. These markers in the timeline not only illustrate the progress of Agent S but also indicate its commitment to transparency and community engagement. Key Points About Agent S As the Agent S framework continues to evolve, several key attributes stand out, underscoring its innovative nature and potential: Innovative Framework: Designed to provide an intuitive use of computers akin to human interaction, Agent S brings a novel approach to task automation. Autonomous Interaction: The ability to interact autonomously with computers through GUI signifies a leap towards more intelligent and efficient computing solutions. Complex Task Automation: With its robust methodology, it can automate complex, multi-step tasks, making processes faster and less error-prone. Continuous Improvement: The learning mechanisms enable Agent S to improve from past experiences, continually enhancing its performance and efficacy. Versatility: Its adaptability across different operating environments like OSWorld and WindowsAgentArena ensures that it can serve a broad range of applications. As Agent S positions itself in the Web3 and crypto landscape, its potential to enhance interaction capabilities and automate processes signifies a significant advancement in AI technologies. Through its innovative framework, Agent S exemplifies the future of digital interactions, promising a more seamless and efficient experience for users across various industries. Conclusion Agent S represents a bold leap forward in the marriage of AI and Web3, with the capacity to redefine how we interact with technology. While still in its early stages, the possibilities for its application are vast and compelling. Through its comprehensive framework addressing critical challenges, Agent S aims to bring autonomous interactions to the forefront of the digital experience. As we move deeper into the realms of cryptocurrency and decentralisation, projects like Agent S will undoubtedly play a crucial role in shaping the future of technology and human-computer collaboration.

713 Total ViewsPublished 2025.01.14Updated 2025.01.14

What is AGENT S

Discussions

Welcome to the HTX Community. Here, you can stay informed about the latest platform developments and gain access to professional market insights. Users' opinions on the price of S (S) are presented below.

活动图片