Idle Macs Can Also Make Money? An Overview of Eigen Labs' Decentralized AI Inference Network Darkbloom

marsbitPublished on 2026-06-22Last updated on 2026-06-22

Abstract

AI inference is becoming a crucial layer of internet infrastructure, yet it remains largely dependent on costly, capacity-limited centralized systems with potential security risks. Meanwhile, millions of powerful computers sit idle globally. Eigen Labs' Darkbloom network aims to utilize this idle capacity by enabling distributed AI inference on Mac computers, specifically those with Apple Silicon chips. Darkbloom's architecture consists of three components: users who send inference requests, a coordinator (operated by Eigen Labs) that routes these requests, and providers (Mac owners) whose machines run the models and return outputs without being able to see the request content. The system prioritizes privacy through a hardened provider process, software integrity checks, and hardware-supported attestation based on Apple's security architecture to ensure verifiable privacy. Economically, Darkbloom differs from traditional models. It leverages existing hardware, with marginal costs primarily driven by electricity, allowing it to offer pricing roughly 50% lower than major API aggregators. Providers keep 100% of the inference revenue, and the project does not rely on token subsidies; earnings come solely from real AI inference demand. However, early-stage earnings are modest, with top providers currently earning under $6 per day, influenced by factors like hardware specs, uptime, and network demand. The network currently supports models like Google's Gemma 4 and OpenAI's GPT-OS...

Compiled by: Felix, PANews

AI inference is gradually becoming a critical layer of internet infrastructure. However, most inference currently still relies on a centralized architecture, which is costly, has limited capacity, involves multiple layers of stacking, and carries certain security risks. At the same time, there are millions of powerful computers worldwide that remain idle for most of the day.

Eigen Labs recently launched the AI inference network Darkbloom, which explores performing distributed AI inference on idle Mac computers. By combining verified nodes, hardware-level privacy protection, and superior economic efficiency, it transforms idle Apple Silicon chips into a more efficient, privacy-first computing network.

The project was launched as a research preview around April this year, upgraded to a public alpha version in May, and is now available on the OpenRouter platform. In the alpha version, the available models are Google's Gemma 4 and OpenAI's GPT-OSS.

Core Architecture and Verifiable Privacy

The Darkbloom network consists of three parts: users, coordinators, and providers.

  • Users can send inference requests through a chat interface or a compatible OpenAI API.
  • The coordinator (operated by Eigen Labs) routes these requests to eligible Macs in the network.
  • Providers (users who own these eligible Macs) run the models and return the output, but they cannot see the request content.

Darkbloom is built on a privacy-first distributed inference model. The provider process is hardened to resist common local inspection paths, including debugger attachment and external memory inspection. The integrity of the running binary is also part of the trust model, helping to ensure that the software serving requests conforms to network expectations.

The system also uses hardware-supported attestation based on Apple's security architecture. Secure Enclave keys, attestation signals, and periodic challenge-response checks are used to verify that participating nodes are running with the intended protections and software state, achieving truly verifiable privacy.

Economic Model and Daily Earnings

Darkbloom is fundamentally different in its business model compared to the vast majority of projects. In the traditional tech stack, costs include hardware, facilities, cooling, networking, operational overhead, and layers of profit margins. In Darkbloom's model, the hardware already exists, and the marginal cost is primarily driven by electricity. Darkbloom's benchmark pricing is only about 50% of current mainstream API aggregators. Providers (Mac hosts) can keep 100% of the inference revenue. Furthermore, Darkbloom has not taken the path of issuing tokens to subsidize early participants; node earnings come entirely from real AI inference demand.

It is worth noting that, given the project's early stage of development, earnings are relatively modest. Factors such as memory and hardware configuration, uptime, model demand, node health, and network demand can all influence earnings to some extent.

Current leaderboard data shows that the top provider earns less than $6 per day, and the fifth-ranked provider earns even less than $2. However, as the network opens up to large language models with high memory requirements and real user usage increases, this situation is expected to improve.

Regarding how to set up an idle Mac, the steps are as follows:

  • Acquire a Mac with an Apple Silicon chip
  • Ensure it runs macOS 14 or higher
  • Install the Darkbloom provider
  • Keep the Mac online with a stable internet connection
  • Let the network route supported AI tasks

Related reading: A Roundup of Recent Stocks and Crypto Assets Worth Watching: AI, RWA, and Space Stocks...

Trending Cryptos

Related Questions

QWhat is the core concept of Eigen Labs' Darkbloom network, as described in the article?

ADarkbloom is a decentralized AI inference network that aims to utilize the idle computing power of Mac computers equipped with Apple Silicon chips. It distributes AI inference tasks across these devices, offering a more cost-effective and privacy-focused alternative to centralized infrastructure.

QHow does Darkbloom's architecture ensure privacy for user requests?

ADarkbloom ensures privacy through a hardware-supported verification model. It uses Apple's Secure Enclave keys, attestation signals, and periodic challenge-response checks to verify that provider nodes are running with the expected protections. Provider processes are hardened against local inspection, and providers cannot see the content of user requests.

QWhat is the current economic model for providers (Mac owners) participating in the Darkbloom network?

AProviders keep 100% of the inference revenue they generate. The model is based on real AI inference demand, not token subsidies. Currently, however, earnings are low; the top provider earns less than $6 per day, and the fifth earns under $2, with factors like hardware, uptime, and network demand influencing income.

QWhich AI models are available in Darkbloom's current alpha version, and where is it accessible?

AIn its current public alpha version, Darkbloom offers Google's Gemma 4 and OpenAI's GPT-OSS models for inference. The network is accessible on the OpenRouter platform.

QWhat are the basic requirements for a Mac to become a provider on the Darkbloom network?

ATo become a provider, a user needs a Mac with an Apple Silicon chip, running macOS 14 or a higher version. They must install the Darkbloom provider software and keep the Mac online with a stable internet connection to allow the network to route AI tasks to it.

Related Reads

Bitcoin Falls Below $60,000 Again; After 20 Months, We've Reached a New Low

Bitcoin Drops Below $60,000, Hitting a 20-Month Low Bitcoin fell below the key $60,000 psychological level again, reaching a low of $59,023—its lowest point in approximately 20 months, dating back to October 2024. While it later recovered slightly to around $60,600, this marks its third significant breach of $60,000 this year. The downturn is attributed to two primary factors. First, U.S. spot Bitcoin ETFs are experiencing their longest streak of net outflows since launch, with nearly $5.94 billion withdrawn over 30 days. This creates sustained selling pressure as Authorized Participants sell Bitcoin to meet redemptions. Second, shifting macroeconomic expectations are adding pressure. Strong U.S. job data and hawkish remarks from Fed officials have increased market pricing for potential rate hikes, reversing the earlier liquidity-driven bullish sentiment and prompting a shift away from risk assets like Bitcoin. Analyst views are mixed. 21Shares maintains a bullish long-term outlook, expecting prices to recover towards $100,000, citing historical post-halving cycles and substantial ETF holdings as a base. In contrast, Arthur Hayes predicts a potential bottom around $40,000 within six months due to persistent Fed hawkishness. CryptoQuant suggests, based on on-chain data, that the market may not find a bottom until prices fall below the average investor cost basis around $53,000, potentially extending the bearish phase into late 2026 or early 2027. The immediate focus is on upcoming U.S. inflation data and Fed signals. Lower-than-expected CPI could offer relief, but confirmation of sticky inflation or continued ETF outflows may lead to further downside pressure. Bitcoin's ability to hold above $60,000 remains a critical test for the near-term market direction.

Odaily星球日报32m ago

Bitcoin Falls Below $60,000 Again; After 20 Months, We've Reached a New Low

Odaily星球日报32m ago

When Billions Begin to Operate Everything by Voice, How Far is ‘All Assets on Chain’?

In June 2026, WeChat began a limited rollout of "Xiaowei," its native AI assistant. This move is more than an upgrade to a smarter chatbot; it signals a crucial step from "universal internet access" toward the broader vision of "full asset tokenization." Xiaowei, powered primarily by WeChat's in-house WeLM model, demonstrates four key capabilities: 1) direct voice/web chat control of app functions, 2) automated access to mini-programs for services, 3) instant comprehension and summarization of complex documents like PDFs, and 4) generating functional mini-program prototypes from simple natural language requests. This represents a fundamental shift from GUI (Graphical User Interface) to LUI (Language User Interface), eliminating friction in human-digital interaction. The rollout is pivotal because it brings AI Agents to China's massive user base with zero friction—no new app downloads or accounts needed. This "seamless access" mirrors past platform revolutions like the App Store or WeChat Mini-Programs, potentially unlocking a global AI Agent market projected to grow from $7.92 billion in 2025 to nearly $295 billion by 2035. The article argues that China's internet evolution has moved from "connecting everyone" to "putting all services online." The next phase is "tokenizing all assets"—a concept broader than just Real World Assets (RWA) like real estate. It encompasses tokenizing personal assets like social influence, attention, and credit history. RWA tokenization itself is forecast to explode from $35 billion in 2025 to over $500 billion in 2026. The convergence of ubiquitous AI Agents and rapidly tokenizing assets points to a future paradigm for wealth management. Your AI Agent could autonomously manage a globally diversified, tokenized portfolio based on your preferences. Initiatives like EXIO Group's full-stack RWA services aim to lower investment barriers, paralleling WeChat's democratization of AI access. In conclusion, the launch of Xiaowei is not merely a technical upgrade but a historic inflection point. It marks AI Agents' transition from niche tools to essential utilities and accelerates the movement toward a future where voice commands seamlessly interact with tokenized value, redefining humanity's relationship with the digital and financial worlds.

marsbit1h ago

When Billions Begin to Operate Everything by Voice, How Far is ‘All Assets on Chain’?

marsbit1h ago

SoftBank CEO Masayoshi Son's New Trillion-Dollar "Gamble"

SoftBank founder Masayoshi Son is embroiled in a new trillion-dollar "bet" on Physical AI and humanoid robotics, even as his massive wager on OpenAI faces uncertainty ahead of its potential IPO. Recent reports reveal OpenAI's steep losses—$85 billion net loss by Q1 2026 and a $38.5 billion loss in 2025—casting doubt on its path to a trillion-dollar valuation. SoftBank, OpenAI's second-largest external shareholder with a planned 13% stake, stands to gain hugely if OpenAI succeeds. Undeterred, Son is already pushing forward with his next ambitious venture: consolidating SoftBank's AI and robotics assets into a new U.S.-based company named "Roze," targeting a $100 billion IPO as early as late 2026. This move aligns with his belief that Physical AI, merging AI cognition with robotic physical execution, is the next trillion-dollar frontier. Son's confidence stems from recent AI wins; SoftBank's stock surged and he briefly regained the title of Asia's richest person, largely due to OpenAI's soaring valuation. However, his aggressive strategy has raised internal concerns about over-reliance on OpenAI and strained finances. With competitors like Anthropic advancing rapidly and OpenAI's IPO timing uncertain, Son is racing to capitalize on the AI boom. His long-term vision for Physical AI includes a decade of investments in robotics, from Boston Dynamics to recent acquisitions like ABB's robotics unit, and a planned $1 trillion investment in U.S.-based AI robotics industrial parks. Yet, challenges remain: humanoid robotics firms like Figure AI lack the clear revenue paths of AI software companies, and Roze's lofty valuation faces skepticism. For Son, these bets are also driven by an unfulfilled promise of massive returns to key investors like Saudi Arabia's PIF. Despite risks, he continues to double down, betting that the fusion of AI and physical machines will define the next technological era.

marsbit1h ago

SoftBank CEO Masayoshi Son's New Trillion-Dollar "Gamble"

marsbit1h ago

Trading

Spot
Futures

Hot Articles

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 AI (AI) are presented below.

活动图片