Subnet ZK-Compose is a specialized meta-layer subnet on the Bittensor network dedicated to recursive zero-knowledge (ZK) proof aggregation. It enables scalable, private, and verifiable multi-step AI w
The Privacy Backbone for Bittensor's AI Future
Recursive Zero-Knowledge Proof Aggregation for Verifiable, Private Multi-Step AI Workflows
Subnet ZK-Compose is a specialized meta-layer subnet on the Bittensor network that enables recursive zero-knowledge proof aggregation. We take multiple ZK proofs from different subnets and compose them into a single, succinct recursive proof—maintaining complete privacy without revealing intermediate data or models.
Think of it as the privacy glue that connects Bittensor's AI subnets into verifiable, compliant pipelines.

In 2026, Bittensor's inference subnets are exploding (text, image, coding, medical AI), but there's a critical gap:

Problems:
❌ No Privacy for Multi-Step Workflows: Each step exposes intermediate data
❌ No Verifiability: Can't prove the entire pipeline is correct
❌ Compliance Impossible: EU AI Act (2026) requires verifiable high-risk AI
❌ Scalability Bottleneck: Single proofs don't scale to complex pipelines
Real-World Impact:
Healthcare: Can't chain diagnosis models privately
Finance: Can't verify multi-model predictions
Enterprise: Can't meet regulatory requirements
ZK-Compose solves this by composing multiple proofs into one:

How It Works:
Validators fetch base proofs from other subnets (SN2, SN8, etc.)
Miners use recursive ZK systems (Nova, Arkworks) to aggregate proofs
Verification happens in constant time O(1) regardless of pipeline depth
Rewards scale with recursion depth, succinctness, and cross-subnet usage

No other subnet focuses on recursive composition or cross-subnet proof bridging.

Arkworks: Industry-standard Groth16 for base proof verification
Nova: Cutting-edge IVC for O(n) recursive proving
Result: Maximum compatibility + performance

Why It's Unfakeable:
Requires solving R1CS constraints (NP-complete)
Cryptographic guarantees (pairing-based verification)
Invalid proofs = instant detection = 0 rewards

Incentive Multipliers:
🔄 Recursion Depth: 1.5x–5.0x for deeper chains
📦 Succinctness: +50% for high compression
🌐 Cross-Subnet: 2x for multi-subnet proofs

Market Drivers:
EU AI Act (2026): Mandates verifiable high-risk AI systems
Healthcare: HIPAA-compliant private diagnostics chains
Finance: Auditable multi-model predictions
Enterprise: Privacy-preserving AI pipelines


Market Size:
zkML Market: $2.3B by 2027 (CAGR 67%)
Bittensor TAO Market Cap: $1.8B (growing)
Regulatory Compliance AI: $8.5B by 2028

Revenue Streams:
Bittensor Emissions: Standard subnet rewards
Micro-TAO Fees: Per-proof composition charges
Enterprise Subscriptions: Healthcare, finance, etc.
API Access: External developers

Built with ❤️ for the Bittensor Ecosystem
Making AI Private, Verifiable, and Compliant
DONE
NA