AI, Why Does It Also Need to Sleep?

marsbit发布于2026-04-07更新于2026-04-07

文章摘要

Anthropic's accidental leak of Claude Code's source code in 2026 revealed an experimental feature called "autoDream," part of the KAIROS system, which gives AI a sleep-like cycle. Unlike the prevailing AI agent paradigm of continuous, uninterrupted operation, autoDream operates offline when users are inactive. It processes and consolidates daily logs—resolving contradictions, converting vague observations into facts, and discarding redundant information—while avoiding the accumulation of noise in the limited context window, a phenomenon known as "context corruption." This mirrors human brain function: the hippocampus temporarily stores daily experiences, and during rest, the brain prioritizes and transfers important memories to the neocortex through processes like active systems consolidation. Both systems must go offline to perform memory maintenance, as simultaneous processing and consolidation compete for resources. autoDream differs in one key aspect: it labels its outputs as "hints" rather than definitive truths, requiring verification upon use—a cautious approach unlike human memory, which often constructs narratives with high confidence. The emergence of this sleep-like mechanism suggests that, beyond mere biological imitation, intelligent systems may inherently require periodic rest to maintain coherence and performance. It challenges the assumption that more power and continuous operation always lead to greater intelligence, pointing instead to the necessity of rh...

Written by: Tang Yitao

Edited by: Jing Yu

Source: GeekPark

On March 31, 2026, Anthropic accidentally leaked 510,000 lines of Claude Code's source code to the public npm registry due to a packaging error. The code was mirrored to GitHub within hours and could not be retrieved.

A lot of content was leaked, and security researchers and competitors took what they needed. But among all the unreleased features, one name sparked widespread discussion—autoDream, automatic dreaming.

autoDream is part of a background resident system called KAIROS (Ancient Greek for "the right moment").

KAIROS continuously observes and records while the user is working, maintaining a daily log (somewhat like a lobster). autoDream, on the other hand, only starts after the user turns off the computer, organizing the memories accumulated during the day, resolving contradictions, and converting vague observations into confirmed facts.

The two form a complete cycle: KAIROS is awake, autoDream is asleep—Anthropic's engineers have created a sleep-wake cycle for AI.

Over the past two years, the hottest narrative in the AI industry has been Agent: autonomous operation, never stopping, which is seen as AI's core advantage over humans.

But the company that has pushed Agent capabilities the deepest has precisely set rest times for AI in its own code.

Why?

The Cost of Never Stopping

An AI that never stops will hit a wall.

Every large language model has a "context window," a physical upper bound on the total amount of information it can process at any one moment. As an Agent runs continuously, project history, user preferences, and conversation records keep piling up. After exceeding a critical point, the model begins to forget early instructions, becomes inconsistent, and fabricates facts.

The tech community calls this "context corruption."

Many Agents adopt a crude coping strategy: shove all the history into the context window and hope the model can prioritize on its own. The result is that the more information there is, the worse the performance becomes.

The human brain hits the same wall.

Everything experienced during the day is quickly written into the "hippocampus." This is a temporary storage area with limited capacity, more like a whiteboard. True long-term memories are stored in the "neocortex," which has large capacity but is slow to write to.

A core task of human sleep is to empty this overloaded whiteboard, moving useful information to the hard drive.

The laboratory of Björn Rasch at the Neuroscience Center of the University of Zurich, Switzerland, named this process "active systems consolidation."

Continuous sleep deprivation experiments repeatedly prove: a brain that never shuts down does not become more efficient; memory fails first, followed by attention, and finally even basic judgment collapses.

Natural selection is extremely cruel to inefficient behaviors, but sleep has not been eliminated. From fruit flies to whales, almost all animals with a nervous system sleep. Dolphins evolved "unihemispheric sleep," where the two brain hemispheres rest alternately—it would rather invent a whole new way of sleeping than give up sleep itself.

Killer whales, belugas, and bottlenose dolphins resting at the bottom of a pool | Image source: National Library of Medicine (United States)

The two systems face the same set of constraints: instant processing power is limited, but historical experience expands infinitely.

Two Answers

In biology, there is a concept called convergent evolution: species that are distantly related, because they face similar environmental pressures, independently evolve similar solutions. The classic example is the eye.

Both octopuses and humans have camera-like eyes: a adjustable lens focuses light onto a retina, and an iris controls the amount of light entering. The overall structure is almost identical.

Comparison of octopus and human eye structure | Image source: OctoNation

But octopuses are mollusks, and humans are vertebrates. Their common ancestor lived over 500 million years ago, a time when there were no complex visual organs on Earth. Two completely independent evolutionary paths arrived at almost the same endpoint. Because to efficiently convert light into a clear image, the path allowed by physical laws is almost only the camera type: a lens that can focus, a light-sensitive surface to capture the image, and an aperture to regulate light intake—all indispensable.

The relationship between autoDream and human brain sleep might be of this kind—under similar constraints, the two types of systems may converge to similar structures.

The necessity to go offline is one of their most similar common points.

autoDream cannot run while the user is working. It starts independently as a forked subprocess, completely isolated from the main thread, with strictly limited tool permissions.

The human brain faces the same problem and offers a more radical solution: moving memories from the hippocampus (temporary storage) to the neocortex (long-term storage) requires a set of brainwave rhythms that only appear during sleep.

The most critical among these are the hippocampal sharp-wave ripples, responsible for packaging the day's encoded memory fragments and sending them piece by piece to the cerebral cortex; the slow oscillations of the cortex and the spindle waves from the thalamus provide precise timing coordination for the entire process.

This set of rhythms cannot form in a waking state; external stimuli disrupt it. So you don't sleep because you are tired; rather, the brain must close the front door to open the back door.

Or put another way, within the same time window, information intake and structural organization compete for resources; they are not complementary.

Active systems consolidation model during sleep. A (Data Migration): During deep sleep (slow-wave sleep), memories recently written to the 'hippocampus' (temporary storage) are repeatedly replayed, gradually transferred, and consolidated into the 'neocortex' (long-term storage). B (Transmission Protocol): This data transfer process relies on highly synchronized 'dialogue' between the two regions. The cerebral cortex emits slow brainwaves (red line) as the master rhythm. Driven by the wave peaks, the hippocampus packages memory fragments into high-frequency signals (green line, sharp-wave ripples), perfectly synchronized with the carrier waves (blue line, spindle waves) emitted by the thalamus. This is like embedding high-frequency memory data precisely into the gaps of the transmission channel, ensuring information is synchronously uploaded to the cerebral cortex. | Image source: National Library of Medicine (United States)

Another similarity is not making full memories, but editing them.

After starting, autoDream does not keep all logs. It first reads existing memories to confirm known information, then scans KAIROS's daily log, focusing on processing parts that deviate from previous cognition: memories that contradict what was said yesterday, or are more complex than previously thought, are prioritized for recording.

The organized memories are stored in a three-layer index: a lightweight pointer layer is always loaded, topic files are loaded on demand, and the full history is never loaded directly. Facts that can be directly looked up from the project code (like which file a function is defined in) are not written into memory at all.

The human brain does almost the same thing during sleep.

A study by Harvard Medical School lecturer Erin J. Wamsley showed that sleep preferentially consolidates unusual information, such as things that surprised you, caused emotional波动, or are related to unsolved problems. Large amounts of repetitive, featureless daily details are discarded, leaving only abstract patterns—you might not remember exactly what you saw on your way to work yesterday, but you clearly remember how to get there.

Interestingly, there is one point where the two systems made different choices. The memories produced by autoDream are explicitly labeled as "hint" rather than "truth" in the code. The agent must re-verify their validity before each use because it knows its organized content might be inaccurate.

The human brain lacks this mechanism. This is why eyewitnesses in court often give wrong testimony. They are not intentionally lying; it's because memory is temporarily pieced together from scattered fragments in the brain, and errors are the norm.

Evolution probably found no need to install an uncertainty tag for the human brain. In a primitive environment requiring quick physical reactions, believing memory enables immediate action, while doubting memory leads to hesitation—and hesitation means defeat.

But for an AI that repeatedly makes knowledge-based decisions, the cost of verification is low, while blind confidence is dangerous.

Two different contexts lead to two different answers.

Smarter Laziness

In evolutionary biology, convergent evolution means two independent lineages, without directly exchanging information, arrive at the same endpoint. There is no plagiarism in nature, but engineers can read papers.

When Anthropic designed this sleep mechanism, was it because they hit the same physical wall as the human brain, or did they reference neuroscience from the start?

The leaked code contains no citations of neuroscience literature; the name "autoDream" seems more like a programmer's joke. A stronger driver was likely the engineering constraints themselves: the context has a hard limit, long-term operation leads to noise accumulation, and online organization would pollute the main thread's reasoning. They were solving an engineering problem; biomimicry was never the goal.

What truly determined the shape of the answer was the compressive force of the constraints themselves.

Over the past two years, the AI industry's definition of "stronger intelligence" has almost always pointed in the same direction—larger models, longer context, faster reasoning, 7×24 uninterrupted operation. The direction is always "more."

The existence of autoDream suggests a different proposition: a smarter agent might be a lazier one.

An agent that never stops to organize itself will not become smarter; it will only become more chaotic.

The human brain, through hundreds of millions of years of evolution, arrived at a seemingly clumsy conclusion: intelligence must have rhythm. Wakefulness is for perceiving the world; sleep is for understanding it. When an AI company, in solving an engineering problem, independently arrives at the same conclusion, this perhaps hints at something:

Intelligence has some unavoidable basic overhead.

Perhaps, an AI that never sleeps is not a stronger AI. It is merely an AI that has not yet realized it needs to sleep.

相关问答

QWhat is the main reason AI systems like Claude Code might need a 'sleep' mechanism similar to humans?

AAI systems need a 'sleep' mechanism to prevent 'context corruption,' where continuous operation leads to information overload, causing the model to forget early instructions, become inconsistent, and generate false information, due to the physical limits of their context window.

QHow does the human brain's memory consolidation during sleep compare to the AI's autoDream system?

ABoth systems offline to transfer information from temporary storage (human hippocampus or AI's daily logs) to long-term storage (human neocortex or AI's indexed memory), prioritizing unusual or conflicting information for consolidation while discarding redundant details.

QWhat is 'convergent evolution' as mentioned in the article, and how does it relate to AI and human sleep patterns?

AConvergent evolution refers to unrelated species developing similar solutions to similar environmental pressures. Similarly, AI (like Anthropic's autoDream) and human brains independently evolved offline 'sleep' mechanisms to manage limited processing capacity and infinite historical data expansion.

QWhy does the AI's autoDream label its consolidated memories as 'hints' rather than 'truth,' and how the human brain handles memories?

AAI labels memories as 'hints' to enforce verification before use, avoiding overconfidence in potentially inaccurate consolidated data. Human brains lack this mechanism, often leading to false memories, as evolution prioritized quick action over accuracy in primitive environments.

QWhat does the existence of autoDream suggest about the future direction of AI intelligence development?

AIt suggests that smarter AI may not be about continuous operation ('more'), but about rhythmic cycles of activity and rest ('laziness'), emphasizing that intelligence has fundamental overheads like periodic consolidation to avoid chaos and improve understanding.

你可能也喜欢

黄仁勋 2026 GTC Taipei 演讲:AI 代理人时代来临,计算就是收入

在2026年GTC台北大会上,英伟达CEO黄仁勋宣布AI已进入“代理人”时代,AI从生成内容转变为能实际工作的利润与GDP创造者。其核心观点包括: 1. **AI代理人时代到来**:AI的计算模式发生根本改变,以“大语言模型+代理人框架”为核心的全新系统能理解、推理、规划并使用工具完成实际任务,每家公司都将成为运行代理人的公司。 2. **计算即收入**:在此模式下,AI生成的Token(计算单元)直接转化为收入和利润。AI工厂的经济核心是最大化每瓦电力产生的Token(收入),因此基础设施的吞吐量和能效至关重要。 3. **发布Vera Rubin系统**:英伟达推出史上最雄心勃勃的工程——Vera Rubin。它并非单一芯片,而是为运行代理人而设计的端到端完整系统,标志着英伟达从GPU公司、系统公司进一步转型为AI基础设施公司。 4. **推出Vera CPU**:首款专为AI代理人设计的CPU。代理人要求极低延迟和极高响应速度,Vera CPU强调顶级的单线程性能、每时钟指令数(IPC)和系统带宽,以满足代理人“没有耐心”的计算需求。 5. **与微软重新定义PC**:英伟达与微软合作推出新一代Windows PC产品线(桌面、笔记本、工作站),将代理式计算模式延伸至个人设备。新的PC操作系统将是传统系统与大语言模型的结合,应用程序将被“代理人运行时”取代。 6. **布局物理AI**:宣布了用于物理AI和机器人基础模型的Cosmos 3、用于自动驾驶的开放模型Alpamayo 2,以及完整的人形机器人技术栈与参考平台Isaac GR00T。这些系统遵循与云端代理人相同的“模型-框架-工具-运行时”模式。 **总结**:黄仁勋指出,过去六个月计算机行业因“有用AI”的实现而被彻底改变。未来十年,这种代理式计算模式将统一应用于云端、企业、PC、机器人及各类边缘设备。英伟达通过提供从芯片、系统到完整基础设施的全栈解决方案,旨在帮助客户建设高利润的AI工厂。对台湾供应链而言,AI工厂的交付效率、功耗控制及全栈协同能力将成为关键增长动力。

marsbit59分钟前

黄仁勋 2026 GTC Taipei 演讲:AI 代理人时代来临,计算就是收入

marsbit59分钟前

交易

现货
合约

热门文章

加密市场宏观研报:原油飓风、AI巨浪与比特币的十字路口

全球金融市场正经历一场由地缘冲突引发的系统性重估:霍尔木兹海峡封锁导致原油一度暴涨30%,G7紧急释放储备后涨幅收窄,滞胀风险取代通胀成为核心担忧,美元成为“唯一避风港”并逼近100大关,亚太及美股遭遇“黑色星期一”全线重挫;AI领域则冰火两重天,国家发改委提出“十五五”末10万亿规模目标,OpenClaw项目火爆推动概念股狂飙;比特币在宏观风暴中跌破70000美元关键防线。

541人学过发布于 2026.03.12更新于 2026.03.12

加密市场宏观研报:原油飓风、AI巨浪与比特币的十字路口

相关讨论

欢迎来到HTX社区。在这里,您可以了解最新的平台发展动态并获得专业的市场意见。以下是用户对AI(AI)币价的意见。

活动图片