Lock.com Enters Early Access With Isolated Signing and Post-Quantum Architecture

TheNewsCryptoPublicado a 2026-05-18Actualizado a 2026-05-18

Resumen

Quantography Labs has launched the early-access phase for Lock.com, a hardware-free cryptocurrency wallet designed with an isolated, air-gapped security architecture. The platform eliminates the need for dedicated hardware wallets by separating the private key storage and signing process from internet-connected devices. Private keys remain entirely offline on a user-owned signer, while transaction creation and broadcasting occur on a connected device. This approach aims to remove dependency on third-party hardware manufacturers and their supply chains. Additionally, Lock.com integrates post-quantum cryptographic standards, including ML-DSA and ML-KEM. The early access release seeks user feedback ahead of a full public launch.

London, United Kingdom, May 18th, 2026, Chainwire

Quantography Labs announced the early-access release of Lock.com, a hardware-free crypto wallet built around an isolated, air-gapped security approach.

Lock.com is now available to early access users. The platform separates private key storage from network-connected systems, removing the need for dedicated hardware wallet devices.

Hardware wallets have long been the standard for protecting digital assets. But they come with a trade-off: users must trust the device, the manufacturer, and the supply chain behind it.

Lock.com removes that dependency by separating the signing environment from the broadcasting environment. Private keys remain on a fully offline signer, while transactions are created and broadcast on a connected device. Private keys never touch the internet. The system is designed to work with devices users already own, removing the need for purpose-built hardware.

Lock.com was built out of frustration with how crypto security works today. Too many people are still losing funds in ways that shouldn’t be happening, not because self-custody failed, but because the software environment around the hardware was never built to the same standard. Lock wanted to close that gap structurally

Lock.com is designed to function as an isolated crypto wallet without relying on third-party hardware manufacturers or proprietary device supply chains. The architecture integrates post-quantum cryptographic standards, specifically ML-DSA signatures and ML-KEM key encapsulation alongside the isolated signing model.

The early access phase is focused on gathering user feedback ahead of general availability. Early access enrolment is available at https://www.lock.com/

About Quantography Labs

Quantography Labs is an investment and technology firm focused on secure finance, digital assets, and applied research. The company develops privacy-focused, quantum-ready systems designed to advance the future of digital asset security and infrastructure. Lock.com is its first publicly released product.

Users can learn more about Lock.com’s isolated crypto wallet architecture: https://www.lock.com/

Contact

Neal Taylor
marketing@lock.com

Criptos en tendencia

Preguntas relacionadas

QWhat is the core security innovation that Lock.com introduces, and how does it differ from traditional hardware wallets?

ALock.com introduces an 'isolated, air-gapped security approach' that separates the private key storage and signing environment from any network-connected systems. Unlike traditional hardware wallets which are dedicated physical devices, Lock.com's system uses a fully offline signer for private keys while transaction creation and broadcasting happen on a separate, connected device. This removes dependency on trusting a specific hardware manufacturer and its supply chain.

QAccording to the article, what specific post-quantum cryptographic standards does Lock.com's architecture integrate?

ALock.com's architecture integrates the post-quantum cryptographic standards ML-DSA signatures and ML-KEM key encapsulation alongside its isolated signing model.

QWhat is the main goal of the early access phase for Lock.com, and how can interested users enroll?

AThe main goal of the early access phase is to gather user feedback ahead of the product's general availability. Interested users can enroll for early access by visiting https://www.lock.com/.

QWhat problem did the developers of Lock.com aim to solve, as mentioned in the article?

AThe developers of Lock.com were frustrated that many people were losing crypto funds not due to a failure of self-custody itself, but because 'the software environment around the hardware was never built to the same standard.' They aimed to close this security gap structurally with their new architecture.

QWhat company is behind the development of Lock.com, and what is the company's focus?

ALock.com is developed by Quantography Labs. It is an investment and technology firm focused on secure finance, digital assets, and applied research, developing privacy-focused, quantum-ready systems for digital asset security.

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