• Historical growth: 1 at the beginning of 2023 → surpassed 100 in April 2025 → stabilized at 128+ in early 2026
• System cap: Current protocol designed limit of 256, aligned with the 2026 ecosystem expansion goal.
2. Objective Development Trends (Neutral Description, No Positioning Guidance)
1. Growth in quantity slowing down, shifting from expansion phase to stock optimization phase The growth rate of subnet numbers has significantly decreased, no longer aiming for “rapid scaling,” entering a stable + survival of the fittest stage.
2. Mechanism tilting toward “Effective Computing Power / Real Utility” Influenced by governance rules like BIT-0016, the network begins to regularly clean low-activity, low-contribution, low-utility subnets, overall converging toward “high-quality nodes.”
3. Application directions becoming vertical and specialized From early general-purpose AI inference, gradually differentiating into vertical scenarios:
◦ Computer Vision
◦ Biomedicine / Molecular Modeling
◦ Data Collection and Processing
◦ AI Security and Verification Single subnets focusing on a single track, increasing specialization.
4. Economic model evolving from a single token to subnet ecosystem differentiation With upgrades like dTAO, subnets gradually acquire independent asset attributes, leading to subnet tokens, independent incentives, and independent cash flows, with ecosystem value beginning to sink into the subnet layer.
5. Participants becoming institutionalized and specialized Participants shifting from early individual miners/hobbyists to professional miners, institutional nodes, custodial solutions, and dedicated funds; network computing power and capital structures becoming more institutionalized.
3. Neutral Summary
Bittensor subnet development has moved from the early wild growth stage into a mature phase characterized by steady quantity increase, quality prioritization, vertical specialization, and complex economic models; the overall network is converging toward “genuine AI utility” and “sustainable economic models.”
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$TAO 1. Subnet Objective Data (As of 2026-02-14)
• Number of active subnets: 126–129
• Historical growth: 1 at the beginning of 2023 → surpassed 100 in April 2025 → stabilized at 128+ in early 2026
• System cap: Current protocol designed limit of 256, aligned with the 2026 ecosystem expansion goal.
2. Objective Development Trends (Neutral Description, No Positioning Guidance)
1. Growth in quantity slowing down, shifting from expansion phase to stock optimization phase
The growth rate of subnet numbers has significantly decreased, no longer aiming for “rapid scaling,” entering a stable + survival of the fittest stage.
2. Mechanism tilting toward “Effective Computing Power / Real Utility”
Influenced by governance rules like BIT-0016, the network begins to regularly clean low-activity, low-contribution, low-utility subnets, overall converging toward “high-quality nodes.”
3. Application directions becoming vertical and specialized
From early general-purpose AI inference, gradually differentiating into vertical scenarios:
◦ Computer Vision
◦ Biomedicine / Molecular Modeling
◦ Data Collection and Processing
◦ AI Security and Verification
Single subnets focusing on a single track, increasing specialization.
4. Economic model evolving from a single token to subnet ecosystem differentiation
With upgrades like dTAO, subnets gradually acquire independent asset attributes, leading to subnet tokens, independent incentives, and independent cash flows, with ecosystem value beginning to sink into the subnet layer.
5. Participants becoming institutionalized and specialized
Participants shifting from early individual miners/hobbyists to professional miners, institutional nodes, custodial solutions, and dedicated funds; network computing power and capital structures becoming more institutionalized.
3. Neutral Summary
Bittensor subnet development has moved from the early wild growth stage into a mature phase characterized by steady quantity increase, quality prioritization, vertical specialization, and complex economic models; the overall network is converging toward “genuine AI utility” and “sustainable economic models.”