Building a Cross-AI Large Model "Privacy Memory Layer", ZetaChain Shapes New AI Experience with Multi-Model Aggregation Application Anuma

marsbitPubblicato 2026-01-29Pubblicato ultima volta 2026-01-29

Introduzione

ZetaChain has launched its 2.0 upgrade, introducing a privacy-focused "Private Memory Layer" designed to unify AI interactions across multiple models. This layer allows users to retain, encrypt, and carry over conversation context seamlessly between different AI platforms, such as ChatGPT and Claude, without losing history or compromising privacy. Accompanying the upgrade is Anuma, a multi-model AI application currently in private beta, which leverages ZetaChain’s decentralized infrastructure to offer end-to-end encrypted, user-controlled conversations. By combining blockchain-based security with AI interoperability, ZetaChain aims to solve issues of data fragmentation and centralization in current generative AI services, offering users greater control, continuity, and privacy.

Author: Zen, PANews

In today's generative AI applications, users often face a fragmented conversational experience. When switching between different models, the context of previous conversations often cannot be continued, forcing users to start over and repeat information each time. For example, details of a project discussed on ChatGPT cannot be directly inherited when switching to Claude or other models, severely impacting efficiency.

Moreover, the conversational data from these large models is typically stored on the platforms' servers, leaving users with little privacy protection and control over their own data. "These real-world issues not only create a disjointed user experience but also raise concerns about user data sovereignty and security.

Addressing this pain point, the industry has begun exploring the concept of a "migratable, user-controlled memory layer," and blockchain technology may be the key to achieving this goal.

Leveraging the open interoperability of blockchain, it might be possible to create a privacy memory layer that saves AI context as a digital asset, allowing seamless transfer across multiple AI platforms. This would eliminate the worry of "forgetting" past interactions every time a tool is changed, while ensuring data privacy and sovereignty.

ZetaChain 2.0 Released, Building a Universal Layer for AI and Web3

Addressing the above needs, ZetaChain, a public chain project focused on cross-chain interoperability, seized the opportunity presented by the convergence of AI and Web3. In its roadmap review at the end of 2025, ZetaChain announced its "2.0" version plan, introducing new features for the AI era on top of its existing universal cross-chain architecture.

On January 27, 2026, ZetaChain 2.0 officially launched, alongside its first AI product—Anuma, a privacy-centric large model aggregation application. According to official introductions, ZetaChain 2.0 revolves around the following three core capabilities:

Private Memory Layer is a protocol-level memory system specifically designed for AI interactions, aiming to bridge the contextual gap between AI tools, turning users' digital memories into assets they truly control. Based on the privacy memory layer, all user conversation content is stored encrypted, with only the user holding the key; even the platform itself cannot view it. Valuable information generated across different models and at different times will be controlled by the user, allowing for continuous accumulation and随时 migration to new conversations, without being monopolized by any single AI service.

AI Portal is a unified routing and execution layer, enabling applications to access multiple AI model providers without being locked in, with built-in support for availability, fallback, and cost/performance optimization. The AI Portal handles the underlying model routing and context bridging. Users can freely choose different models like ChatGPT, Anthropic Claude, Google Gemini, etc., to get answers, with previous conversational memories supported by the privacy memory layer.

Beyond the protocol itself, ZetaChain 2.0 also packages its key capabilities into a Software Development Kit (SDK). Developers can directly integrate privacy-persistent memory, cross-model switching, and monetization components into their products. This SDK allows applications or AI Agents to maintain continuous context across different models and call upon different model capabilities on demand, significantly reducing the cost and complexity for teams to build their own infrastructure.

In terms of mechanism design, the three core modules complement each other. The Private Memory Layer provides privacy-first user memory and data support, the AI Portal enables continuous interaction across mainstream large models, and the SDK ecosystem facilitates efficient and rapid participation and expansion by third-party developers. This also allows ZetaChain to expand from a底层 cross-chain protocol to a universal platform serving both Web3 and AI.

Focusing on Privacy and User Sovereignty, Anuma Launches and Opens Applications

Alongside the official launch of ZetaChain 2.0, the project team's other highlight is its first consumer-grade AI product on the platform, Anuma. Currently, Anuma is in a private beta phase, gradually opening up trial access through an invitation-based waitlist; users can apply for early access via the public waitlist.

As a large model aggregation application, Anuma integrates with multiple mainstream large models, allowing users to invoke different AI engines within a single conversation. It offers the convenience of聚合 tools like Poe, while supporting models such as OpenAI's GPT series and Anthropic's Claude.

When a user asks a question, they can specify or change the model used for the response. Switching between engines requires just a click, without needing to migrate to another application. Users can flexibly choose the most suitable model on Anuma to get answers based on the question type, while the entire conversation process continues seamlessly in the same window.

Technically, thanks to ZetaChain's Private Memory Layer, every segment of a user's conversation in Anuma is encrypted and stored as personal memory, seamlessly migrating to new models or new sessions. When a user starts a new conversation or switches AI models within an existing conversation, Anuma can securely inject the relevant context into the target model, enabling it to understand the prior background and user intent. This eliminates the need for users to repeat the same background information across different AIs, greatly improving the efficiency of cross-model collaboration.

Traditional Web2 enterprises exploiting their centralized advantage to misuse user data has long been deeply resented. Practices like platform-based price discrimination and data selling are repeatedly prohibited yet persist. This user vigilance and concern towards centralized platforms has also extended to the rapidly developing AI field.

Anuma places great emphasis on the confidentiality of conversation content and user sovereignty. The entire platform employs an end-to-end encryption scheme to protect user data. From the moment a user inputs a message on the front end, the content is encrypted using the user's key before being passed to the privacy memory layer for storage. When context needs to be provided to an AI model, it is decrypted by the user's client or a trusted execution environment before being sent to the model. Throughout this process, conversation records are always stored on-chain or in transit in ciphertext form; even ZetaChain's nodes or servers cannot窥视 the content.

This stands in stark contrast to traditional AI chat services, where chat logs are typically stored in plain text on servers, posing risks of being viewed by operators or leaked. Anuma, through blockchain and encryption technology, achieves a level of security similar to Web3 wallet private key management—only the user can interpret their data. It can provide a more reassuring choice for sensitive AI applications in fields like law and medicine, encouraging users to engage in more private exchanges.

In fact, even before Anuma's launch, there were already some multi-model aggregated AI conversation products on the market, notably Poe from the "American Quora" Quora, and TypingMind from the open-source community.

Compared to the cloud service model of these two platforms and local deployment, Anuma's on-chain encrypted storage balances privacy and sovereignty. In terms of ease of use and model richness, Anuma eliminates the cumbersome configuration process of the TypingMind model, offering direct access to the convenient multi-model conversation experience similar to Poe.

Behind the Move into AI: ZetaChain's Technical Logic and Natural Evolution

ZetaChain's decision to launch version 2.0 and Anuma at this time is backed by solid technical accumulation and a clear evolutionary logic.

As the first universal L1 blockchain project, ZetaChain has focused on solving the fragmentation problem in the blockchain领域 since its launch in 2021,致力于 building an underlying network connecting all public chains. Built based on Cosmos SDK, it natively supports interoperability with heterogeneous chains like Ethereum, Bitcoin, and Cosmos.

Through innovations like CAF, ZetaChain simplifies traditional cross-chain operations that require bridges and wrapping into a single contract call on one chain, providing users with unified liquidity and user experience. By the end of 2025, the ZetaChain mainnet had integrated ten major mainstream blockchain networks, including Bitcoin, covering tens of millions of users, with累计 on-chain transactions reaching 225 million.

At the ecosystem and capital level, ZetaChain has also gained broad recognition. According to public data, the project raised $27 million in funding from知名 institutions including Blockchain.com, Jane Street, and Sky9 Capital. In 2024-2025, global tech and infrastructure giants like Google Cloud, Deutsche Telekom, and Alibaba Cloud successively joined the network as validator nodes, endorsing its security and compliance.

Entering the second half of 2025, with the explosion of generative AI, the ZetaChain team keenly realized that the industry's multi-chain ecosystem and multi-model AI actually share similar pain points—both involve fragmentation across multiple platforms and systems, requiring a universal layer for integration. Thus, they proposed the strategic concept of an "AI Universal Platform," introducing blockchain's trusted computing and storage into the AI field to build blockchain infrastructure for the AI era.

ZetaChain 2.0 is the realization of this vision. It retains and strengthens the original cross-chain functions while adding new AI privacy memory and interaction capabilities. This aligns with ZetaChain's consistent vision of making Web3 friendly to both humans and AI. The natural evolution from a "Universal Blockchain" to an "AI Universal Platform" is both顺应 the trend of technological convergence and an extension of the project's mission.

"ZetaChain has already achieved scaled unification at the blockchain experience level." As Ankur Nandwani, a core contributor to ZetaChain, stated, "ZetaChain 2.0 extends the same approach to AI, enabling the next generation of applications and Agents to operate between models and blockchains,默认 equipped with private, authorizable memory capabilities and global monetization channels."

New Paradigm of Deep Integration of Blockchain and AI, What are the Prospects?

The launch of ZetaChain 2.0 and its debut product Anuma represents a significant attempt at the deep integration of blockchain and AI. Within this system, we see a new paradigm for multi-model AI applications: privacy-first, user-controlled, cross-platform portability.

Of course, it must be objectively noted that Anuma is currently in a very early Private Beta stage, and the overall ecosystem is also in its initial construction phase. Many features and details await feedback from广大 testers for refinement, such as support for more models, optimization of memory layer capacity and performance, and enrichment of third-party developer tools. This means that in the short term, Anuma is far from replacing the experience of mature individual platforms, and some users will need time to adapt to this new interaction mode.

However, it cannot be ignored that the direction represented by Anuma is pioneering. In the track of multi-model aggregation experience, Anuma offers a different approach from the solutions of large companies. Instead of monopolizing data and model invocation rights by a centralized platform, it returns choice and memory to the user, achieving trust-minimized coordination through blockchain technology.

As Anuma's public beta opens and features iterate, perhaps more innovative applications will emerge on this platform, such as privacy-guaranteed AI advisors, cross-domain intelligent search assistants, and so on. How far this new trend of privacy-first multi-model experience can go remains to be tested by time.

Domande pertinenti

QWhat is the main problem that ZetaChain's Anuma application aims to solve in the AI space?

AAnuma addresses the fragmented user experience where switching between different AI models (like ChatGPT and Claude) causes loss of conversation context, requiring users to repeatedly provide the same information. It also tackles privacy concerns and lack of user control over data stored on centralized platforms.

QWhat are the three core capabilities introduced in ZetaChain 2.0 to support AI integration?

AThe three core capabilities are: 1) Private Memory Layer - a protocol-level memory system for encrypted, user-controlled storage of AI conversation context; 2) AI Portal - a unified routing and execution layer for accessing multiple AI models without platform lock-in; 3) SDK - a developer toolkit for integrating privacy, cross-model switching, and monetization features into third-party applications.

QHow does Anuma ensure user privacy and data control compared to traditional AI chat services?

AAnuma uses end-to-end encryption where user messages are encrypted with user-held keys before storage or transmission. Conversations are stored encrypted on-chain, and only the user can decrypt them. This contrasts with traditional AI services where data is often stored in plain text on central servers, exposing it to potential viewing or leakage by operators.

QWhat technical background does ZetaChain have that supports its expansion into AI infrastructure?

AZetaChain has built a universal L1 blockchain focused on interoperability, connecting major chains like Bitcoin, Ethereum, and Cosmos. It uses innovations like CAF to simplify cross-chain operations. With over 225 million transactions and integration with 10+ blockchains by end-2025, plus backing from major investors and infrastructure providers like Google Cloud and Deutsche Telekom, it has the technical and ecosystem foundation to expand into AI as a universal layer.

QHow does Anuma differentiate itself from existing multi-model AI platforms like Poe or TypingMind?

AAnuma combines the convenience of multi-model aggregation (like Poe) with blockchain-based encrypted storage for privacy and user sovereignty. Unlike Poe's cloud service model, Anuma gives users control over their data through encryption. Compared to locally-deployed solutions like TypingMind, Anuma offers easier setup without complex configurations while maintaining similar multi-model flexibility.

Letture associate

Can DeepSeek Save China One Trillion Dollars?

"DeepSeek and the $1 Trillion Infrastructure Question" The article examines whether DeepSeek's AI optimization breakthroughs could potentially save China $1 trillion in future AI infrastructure costs. The analysis begins with Nvidia's upcoming Vera Rubin AI platform, costing ~$7.8 million, where memory (HBM4/LPDDR5X) constitutes $2 million—a 435% cost increase in one year, highlighting how AI hardware spending is shifting toward expensive memory components. DeepSeek's approach works in the opposite direction. Through three key technical innovations showcased in DeepSeek V4, the company dramatically improves hardware efficiency: 1. **Memory Compression (MLA)**: Re-engineers the attention mechanism to compress long-context memory (KV Cache) by over 90%, drastically reducing expensive HBM usage. 2. **Selective Activation (MoE)**: Employs Mixture-of-Experts architecture where only a small fraction of parameters (e.g., 49B out of 1.6T in V4-Pro) are activated per token, allowing most parameters to reside in cheaper memory/SSD. 3. **Computation Caching**: Reuses previously computed results via cache hits, replacing expensive GPU computations with cheap memory reads. Combined, these optimizations allow the same hardware to produce approximately 4x more tokens, effectively reducing required hardware investment by 75%. DeepSeek's pricing reflects this: a 10-billion token workload costs ~$522 monthly versus ~$9,000-$10,000 for competitors. The $1 trillion savings projection stems from McKinsey's estimate that global AI infrastructure will require ~$5.2 trillion investment by 2030. As China's daily token consumption grows toward quadrillions, even marginal efficiency gains scale massively. With a conservative 4x throughput improvement, China could avoid building tens of thousands of AI data centers equivalent to ~7 trillion RMB ($1 trillion) in saved investment. Critically, this strategy shifts dependency from scarce, expensive GPU/HBM—where China lags—toward more accessible storage, caching, and systems engineering where domestic suppliers like CXMT are gaining strength. Rather than "replacing Nvidia," DeepSeek rebalances AI's value chain away from monolithic hardware dependency. Ultimately, DeepSeek's technical breakthroughs could lower the barrier to AI adoption across Chinese industries by making advanced capabilities affordable at scale—transforming who can access next-generation AI.

marsbit45 min fa

Can DeepSeek Save China One Trillion Dollars?

marsbit45 min fa

Overturning the Mainstream Approach to Hallucinations: Metacognition is the New Solution for Large Models to Break the Hallucination Barrier

This paper, "Hallucinations Undermine Trust; Metacognition is a Way Forward," proposes a paradigm shift in combating AI hallucination. It argues that the current mainstream approaches—striving for omniscience by scaling data/models or having AI abstain from uncertain answers—are fundamentally flawed. The former has inevitable knowledge gaps, while the latter imposes a crippling "utility tax," requiring the rejection of many correct answers to achieve high accuracy, due to models' poor "discrimination" (the ability to distinguish correct from incorrect answers internally). The core contribution is redefining hallucination not as "being wrong," but as "expressing false information with unwarranted certainty." The proposed solution is **Faithful Uncertainty** or **Metacognition**: enabling AI to accurately perceive its internal uncertainty and honestly express it in its language (e.g., using hedging phrases when unsure). This creates a more reliable assistant that provides useful information while signaling its confidence, minimizing harm from errors. The paper emphasizes that metacognition is critical for the era of AI Agents. Without it, Agents cannot intelligently decide when to use tools like search engines, leading to inefficiency and misuse. Key implementation challenges are highlighted: the "bootstrapping paradox" of training with static uncertainty data, the "alignment distortion signal" where human preference training suppresses internal uncertainty cues, and the difficulty of causally evaluating true metacognition vs. its superficial imitation. The paper concludes that the goal should not be an infallible AI, but one that is honest about the limits of its knowledge, thereby building user trust through transparent communication of its certainty.

marsbit49 min fa

Overturning the Mainstream Approach to Hallucinations: Metacognition is the New Solution for Large Models to Break the Hallucination Barrier

marsbit49 min fa

Hedge by Buying Gold and Oil, Chase Soaring Returns with AI. ‘Dated’ Bitcoin Enters a Bear Market

Bitcoin has recently declined, hitting a two-month low near $66,123, while Ethereum fell to a three-month low around $1,837. Analysts suggest the drop is not merely due to factors like ETF outflows or MicroStrategy's selling but reflects a deeper issue: Bitcoin is losing a broader asset competition. In a near-zero interest rate environment, Bitcoin previously thrived as an outlet for investor dissatisfaction with inflation and limited options. However, the market landscape has shifted. Bitcoin now occupies an "awkward middle ground," facing competition on three fronts. For inflation hedging, investors prefer gold, energy stocks, and commodity producers—assets with tangible backing and clearer pricing power. For growth exposure, AI-related companies with actual revenues and profits are more attractive. Even within crypto, investors can choose stablecoins, exchanges, or infrastructure firms tied directly to adoption, offering clearer business models and leverage. Thus, Bitcoin is no longer the top choice for hedging, growth, or crypto exposure. This shift is evident in market reactions: despite recent warnings about persistent inflation from a Fed official, Bitcoin did not rally as it might have in the past. Instead, capital flowed to assets with direct commodity or energy exposure. The recent ETF outflows and MicroStrategy sales are symptoms, not causes, of this new reality. Investors are becoming more selective, demanding clearer value propositions beyond mere scarcity. The emerging bear case for Bitcoin is not about it being a bubble or failed technology, but that scarcity alone is no longer sufficient.

华尔街日报52 min fa

Hedge by Buying Gold and Oil, Chase Soaring Returns with AI. ‘Dated’ Bitcoin Enters a Bear Market

华尔街日报52 min fa

Trading

Spot
Futures

Articoli Popolari

Come comprare LAYER

Benvenuto in HTX.com! Abbiamo reso l'acquisto di Solayer (LAYER) semplice e conveniente. Segui la nostra guida passo passo per intraprendere il tuo viaggio nel mondo delle criptovalute.Step 1: Crea il tuo Account HTXUsa la tua email o numero di telefono per registrarti il tuo account gratuito su HTX. Vivi un'esperienza facile e sblocca tutte le funzionalità,Crea il mio accountStep 2: Vai in Acquista crypto e seleziona il tuo metodo di pagamentoCarta di credito/debito: utilizza la tua Visa o Mastercard per acquistare immediatamente SolayerLAYER.Bilancio: Usa i fondi dal bilancio del tuo account HTX per fare trading senza problemi.Terze parti: abbiamo aggiunto metodi di pagamento molto utilizzati come Google Pay e Apple Pay per maggiore comodità.P2P: Fai trading direttamente con altri utenti HTX.Over-the-Counter (OTC): Offriamo servizi su misura e tassi di cambio competitivi per i trader.Step 3: Conserva Solayer (LAYER)Dopo aver acquistato Solayer (LAYER), conserva nel tuo account HTX. In alternativa, puoi inviare tramite trasferimento blockchain o scambiare per altre criptovalute.Step 4: Scambia Solayer (LAYER)Scambia facilmente Solayer (LAYER) nel mercato spot di HTX. Accedi al tuo account, seleziona la tua coppia di trading, esegui le tue operazioni e monitora in tempo reale. Offriamo un'esperienza user-friendly sia per chi ha appena iniziato che per i trader più esperti.

287 Totale visualizzazioniPubblicato il 2025.02.11Aggiornato il 2026.06.02

Come comprare LAYER

Discussioni

Benvenuto nella Community HTX. Qui puoi rimanere informato sugli ultimi sviluppi della piattaforma e accedere ad approfondimenti esperti sul mercato. Le opinioni degli utenti sul prezzo di LAYER LAYER sono presentate come di seguito.

活动图片