AI News 02月26日
Fetch.ai launches first Web3 agentic AI model
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Fetch.ai推出了ASI-1 Mini,一款Web3原生大型语言模型,旨在支持复杂的Agentic AI工作流。它在AI可访问性和性能方面具有颠覆性,以显著降低的硬件成本提供与领先LLM相当的结果,是使AI为企业做好准备的一大飞跃。ASI-1 Mini集成到Web3生态系统中,实现安全和自主的AI交互。它的发布为AI领域的更广泛创新奠定了基础,包括即将推出的Cortex套件,这将进一步增强大型语言模型和通用智能的使用。通过去中心化AI的价值链,Fetch.ai赋能Web3社区投资、训练和拥有基础AI模型。

🚀ASI-1 Mini是Fetch.ai推出的Web3原生大型语言模型,旨在支持复杂的Agentic AI工作流,降低硬件成本,使AI更易于企业使用,并集成到Web3生态系统中,实现安全和自主的AI交互。

💡ASI-1 Mini引入了适应性决策的四种动态推理模式:多步、完整、优化和简短推理。这种灵活性使其能够根据具体任务平衡深度和精度,并结合模型混合(MoM)和代理混合(MoA)框架,进一步增强了这种通用性。

💰Fetch.ai 致力于基础AI模型的民主化,允许Web3社区不仅可以使用,还可以训练和拥有像ASI-1 Mini这样的专有LLM,用户可以通过Fetch.ai的平台投资精选的AI模型集合,为他们的发展做出贡献,并分享产生的收入。

🛡️ASI-1 Mini通过持续的多步推理来缓解“黑盒”问题,促进实时校正和优化决策,并提供更可解释的输出,这对于医疗保健和金融等行业至关重要, 其多专家模型架构不仅确保了透明度,还优化了跨不同行业的复杂工作流程。

Fetch.ai has launched ASI-1 Mini, a native Web3 large language model designed to support complex agentic AI workflows.

Described as a gamechanger for AI accessibility and performance, ASI-1 Mini is heralded for delivering results on par with leading LLMs but at significantly reduced hardware costs—a leap forward in making AI enterprise-ready.

ASI-1 Mini integrates into Web3 ecosystems, enabling secure and autonomous AI interactions. Its release sets the foundation for broader innovation within the AI sector—including the imminent launch of the Cortex suite, which will further enhance the use of large language models and generalised intelligence.

“This launch marks the beginning of ASI-1 Mini’s rollout and a new era of community-owned AI. By decentralising AI’s value chain, we’re empowering the Web3 community to invest in, train, and own foundational AI models,” said Humayun Sheikh, CEO of Fetch.ai and Chairman of the Artificial Superintelligence Alliance.

“We’ll soon introduce advanced agentic tool integration, multi-modal capabilities, and deeper Web3 synergy to enhance ASI-1 Mini’s automation capabilities while keeping AI’s value creation in the hands of its contributors.”

Democratising AI with Web3: Decentralised ownership and shared value  

Key to Fetch.ai’s vision is the democratisation of foundational AI models, allowing the Web3 community to not just use, but also train and own proprietary LLMs like ASI-1 Mini. 

This decentralisation unlocks opportunities for individuals to directly benefit from the economic growth of cutting-edge AI models, which could achieve multi-billion-dollar valuations.  

Through Fetch.ai’s platform, users can invest in curated AI model collections, contribute to their development, and share in generated revenues. For the first time, decentralisation is driving AI model ownership—ensuring financial benefits are more equitably distributed.

Advanced reasoning and tailored performance  

ASI-1 Mini introduces adaptability in decision-making with four dynamic reasoning modes: Multi-Step, Complete, Optimised, and Short Reasoning. This flexibility allows it to balance depth and precision based on the specific task at hand.  

Whether performing intricate, multi-layered problem-solving or delivering concise, actionable insights, ASI-1 Mini adapts dynamically for maximum efficiency. Its Mixture of Models (MoM) and Mixture of Agents (MoA) frameworks further enhance this versatility.  

Mixture of Models (MoM):  

ASI-1 Mini selects relevant models dynamically from a suite of specialised AI models, which are optimised for specific tasks or datasets. This ensures high efficiency and scalability, especially for multi-modal AI and federated learning.  

Mixture of Agents (MoA):  

Independent agents with unique knowledge and reasoning capabilities work collaboratively to solve complex tasks. The system’s coordination mechanism ensures efficient task distribution, paving the way for decentralised AI models that thrive in dynamic, multi-agent systems.  

This sophisticated architecture is built on three interacting layers:  

    Foundational layer: ASI-1 Mini serves as the core intelligence and orchestration hub.  Specialisation layer (MoM Marketplace): Houses diverse expert models, accessible through the ASI platform.  Action layer (AgentVerse): Features agents capable of managing live databases, integrating APIs, facilitating decentralised workflows, and more.  

By selectively activating only necessary models and agents, the system ensures performance, precision, and scalability in real-time tasks.  

Transforming AI efficiency and accessibility

Unlike traditional LLMs, which come with high computational overheads, ASI-1 Mini is optimised for enterprise-grade performance on just two GPUs, reducing hardware costs by a remarkable eightfold. For businesses, this means reduced infrastructure costs and increased scalability, breaking down financial barriers to high-performance AI integration.  

On benchmark tests like Massive Multitask Language Understanding (MMLU), ASI-1 Mini matches or surpasses leading LLMs in specialised domains such as medicine, history, business, and logical reasoning.  

Rolling out in two phases, ASI-1 Mini will soon process vastly larger datasets with upcoming context window expansions:  

These enhancements will make ASI-1 Mini invaluable for complex and multi-layered tasks.  

Tackling the “black-box” problem  

The AI industry has long faced the challenge of addressing the black-box problem, where deep learning models reach conclusions without clear explanations.

ASI-1 Mini mitigates this issue with continuous multi-step reasoning, facilitating real-time corrections and optimised decision-making. While it doesn’t entirely eliminate opacity, ASI-1 provides more explainable outputs—critical for industries like healthcare and finance.  

Its multi-expert model architecture not only ensures transparency but also optimises complex workflows across diverse sectors. From managing databases to executing real-time business logic, ASI-1 outperforms traditional models in both speed and reliability.  

AgentVerse integration: Building the agentic AI economy

ASI-1 Mini is set to connect with AgentVerse, Fetch.ai’s agent marketplace, providing users with the tools to build and deploy autonomous agents capable of real-world task execution via simple language commands. For example, users could automate trip planning, restaurant reservations, or financial transactions through “micro-agents” hosted on the platform.

This ecosystem enables open-source AI customisation and monetisation, creating an “agentic economy” where developers and businesses thrive symbiotically. Developers can monetise micro-agents, while users gain seamless access to tailored AI solutions.  

As its agentic ecosystem matures, ASI-1 Mini aims to evolve into a multi-modal powerhouse capable of processing structured text, images, and complex datasets with context-aware decision-making.  

See also: Endor Labs: AI transparency vs ‘open-washing’

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