Targon is a decentralised artificial intelligence (AI) infrastructure and confidential cloud computing platform developed by Manifold Labs. It operates as Subnet 4 (SN4) on the Bittensor network, providing a marketplace for computational resources and secure, scalable GPU and CPU rentals for training and deploying AI models. [1] [2]
Targon is designed to serve two primary functions: as a confidential cloud platform offering secure hardware rentals and as a decentralized compute market within the Bittensor ecosystem. The platform's core value proposition is to provide high-performance, cost-effective, and censorship-resistant AI compute services. It aims to enable the secure monetisation of proprietary AI models by ensuring their data and intellectual property remain protected during execution. [3] [4]
The platform's architecture is built around the Targon Virtual Machine (TVM), which leverages hardware-level security technologies to create isolated and verifiable environments for AI workloads. This allows developers to rent compute resources with cryptographic assurance that their models and data are not accessible, even by the infrastructure provider. Targon integrates OpenAI-compliant endpoints to simplify adoption for developers and supports various AI models, such as Llama-3 70b. The project's ecosystem includes distinct roles for miners, who provide computational resources, and validators, who ensure network integrity and service quality. [5] [2]
The development of Targon began with early commits to its public repository in 2024, with the project's license file being added on January 30, 2024. On March 31, 2025, Manifold Labs announced Targon v6, which detailed the architecture of the Targon Virtual Machine (TVM). [5] [3]
Throughout 2025, the project and its parent company, Manifold Labs, engaged in community-building and development activities. In early 2025, Manifold Labs hosted the first annual Bittensor Hackathon at ETHDenver, where teams competed to build applications using the Targon API. The company later announced "Manifold 2.0," stating its mission to build a decentralized frontier AI lab with Targon as a core component. On August 30, 2025, Manifold Labs announced it had raised a $10.5 million Series A funding round to accelerate the growth of the Targon compute market. [1]
The official X (formerly Twitter) account for the project, @TargonCompute, was created in June 2025. The platform's main product, "Secure Targon Compute," officially launched on October 28, 2025, enabling developers to rent H200 GPU and CPU nodes secured by the TVM. Following the launch, the team released a pre-configured Ubuntu image on October 31 and introduced support for attachable, persistent storage volumes on November 4, 2025. [6]
Targon's technology stack is centered on providing a secure and verifiable environment for AI computations through its proprietary Targon Virtual Machine and integration with the Bittensor network.
Targon operates as Subnet 4 on the Bittensor network, a decentralised protocol that uses incentive mechanisms to coordinate a network of machine learning systems. Within this framework, Targon functions as a decentralized compute market where miners offer computational power and are rewarded based on their performance and reliability, which is assessed by validators. The platform utilizes InfiniBand for its networking infrastructure to facilitate low-latency performance for inference tasks. [1] [2]
The TVM is the core of Targon's security model, designed to deploy Confidential Virtual Machines (CVMs) on bare-metal hardware. It provides end-to-end security and attestation for both the host server and the attached GPUs. The TVM architecture consists of four primary layers:
Targon's platform is built on a foundation of hardware-enforced security to protect data and models throughout the AI lifecycle.
The platform's roadmap includes plans for expanded functionality such as secure model training, multi-vendor support for technologies like AMD SEV-SNP, and the development of a comprehensive AI development platform with user-friendly tools. [5] [2]
Targon's native token is identified by the ticker symbol SN4, signifying its role as Bittensor's Subnet 4.
The SN4 token is used within the Targon subnet's incentive mechanism to reward miners for providing compute resources and validators for ensuring network integrity. The token is traded on decentralized exchanges, with the primary marketplace being Subnet Tokens. The most active trading pair is SN4 against TAO, the native token of the Bittensor network. [7] [8]
Targon is developed and maintained by Manifold Labs Inc., an AI infrastructure company headquartered in Austin, Texas. The company specializes in decentralized machine learning systems and Bittensor integration. [1]
Key figures at Manifold Labs include:
On August 30, 2025, Manifold Labs announced it had closed a $10.5 million Series A funding round. The round was led by OSS Capital, with participation from Digital Currency Group (DCG), Tobias Lütke, Ram Shriram, and others. The company stated that the funds would be used to accelerate the growth of the Targon compute market and its cloud inference business. [1]
Targon's infrastructure is designed to support a range of AI-related services, primarily focused on AI inference, model leasing, and general-purpose GPU compute. The platform offers a "Playground" interface for users to test and compare different large language models in real-time. [4]
Manifold Labs has developed several applications on top of the Targon network to demonstrate its capabilities:
These products showcase the platform's ability to support user-facing applications in sectors such as entertainment and information retrieval. [4]
A research report published by Token Metrics in May 2025 highlighted several areas where the project lacked transparency at the time. The report noted that the project did not prominently disclose information about its core team, which could limit verifiability for users and investors. It also pointed out that public GitHub repositories had limited visibility, making a comprehensive independent code audit difficult. Finally, the report mentioned the absence of a formal, detailed public roadmap, which made it challenging to assess the project's long-term strategic direction. [4]