We architect and deploy custom smart contracts that form the immutable backbone of your Web3 application. Our development process is built for security and speed, delivering a 2-4 week MVP for most projects.
Federated Learning with zkML
Smart Contract Development
Secure, production-ready smart contracts built to your exact specifications.
- Full-Stack Expertise:
Solidity 0.8+,Rust(Solana),Vyper, andMove(Aptos/Sui). - Security-First: Contracts are built with OpenZeppelin patterns and undergo rigorous internal audits before delivery.
- Gas Optimization: We write efficient code to reduce user transaction fees by up to 40% versus industry averages.
We don't just write code; we deliver a secure, auditable, and maintainable foundation for your product.
Core Technical Capabilities
We deliver production-ready federated learning systems with zero-knowledge privacy guarantees, built on a foundation of audited cryptography and battle-tested infrastructure.
Business Outcomes for Your AI Initiative
Our federated learning with zkML service delivers verifiable, private AI models that unlock new business models and compliance advantages. We focus on measurable results that accelerate your time-to-market.
Privacy-Preserving Model Training
Train AI models on sensitive user data without centralizing it. Maintain GDPR, CCPA, and HIPAA compliance while leveraging decentralized datasets for superior model accuracy.
Verifiable Inference & Provenance
Generate cryptographic proofs for every AI inference. Provide immutable audit trails for model decisions, essential for regulated industries like DeFi and healthcare.
Reduced Infrastructure & Data Costs
Eliminate the need for costly, centralized data lakes and associated security overhead. Leverage client-side compute for scalable, cost-effective model training.
Faster Regulatory Approval
Accelerate go-to-market for AI products in finance and healthcare. Our verifiable, privacy-by-design architecture simplifies audits and regulatory reviews.
Monetize Data Without Selling It
Enable new revenue streams by allowing data contributors to participate in model training and share in the value creation, all while retaining full data ownership.
Enterprise-Grade Security & SLAs
Deploy with confidence. Our infrastructure includes 99.9% uptime SLAs, penetration testing by certified auditors, and disaster recovery protocols.
Industries We Serve
Chainscore's Federated Learning with zkML enables privacy-preserving, verifiable AI across regulated and data-sensitive sectors. We deliver production-ready infrastructure for collaborative intelligence without data exposure.
Phased Implementation Tiers
A modular approach to deploying a private, verifiable federated learning system, scaling from proof-of-concept to enterprise-grade infrastructure.
| Capability | Proof-of-Concept | Production-Ready | Enterprise Scale |
|---|---|---|---|
zkML Model Verification | |||
Federated Orchestrator Node | |||
Multi-Chain Aggregation (EVM/Solana) | |||
Custom Privacy-Preserving Aggregation | |||
Real-Time Anomaly Detection Dashboard | |||
SLA & 24/7 Infrastructure Monitoring | |||
Dedicated Security & Model Audit | Basic Review | Full Audit Report | Ongoing Pen-Testing |
Implementation Timeline | 4-6 weeks | 8-12 weeks | 12+ weeks |
Typical Engagement | $50K - $80K | $120K - $250K | Custom Quote |
Our Delivery Methodology
We deliver production-ready, privacy-preserving ML models through a structured, transparent process designed for enterprise-grade security and rapid deployment.
Privacy-First Architecture Design
We architect your federated learning system from the ground up with zero-knowledge proofs (zk-SNARKs/STARKs) to ensure model training occurs on-device, with only verifiable updates aggregated centrally. This guarantees data never leaves its source, meeting strict compliance requirements.
Model & zkCircuit Development
Our team develops your core ML model (TensorFlow/PyTorch) and the corresponding zkML circuits (using Circom, Halo2, or Noir) to generate cryptographic proofs of correct training execution. We focus on gas-efficient circuit design for on-chain verification.
On-Chain Verification Layer
We deploy and audit smart contracts (Solidity, Rust) that verify zk proofs on-chain (EVM, SVM, or appchain). This creates a tamper-proof, trustless record of model updates, enabling decentralized consensus on the federated learning process.
Secure Aggregation & Orchestration
We implement the secure aggregation server and client-side SDKs that coordinate the federated learning rounds, handle proof generation, and aggregate encrypted model updates without decrypting individual contributions.
Performance Tuning & Optimization
We rigorously benchmark and optimize the entire pipeline—from proof generation speed and on-chain verification cost to final model accuracy—ensuring the system is production-viable and cost-effective at scale.
Deployment & Ongoing Support
We manage the full deployment of your zkML federated learning network and provide ongoing monitoring, model retraining pipelines, and protocol upgrades. Includes comprehensive documentation and developer training.
Frequently Asked Questions
Get clear answers on how we deliver secure, private AI on the blockchain for your FinTech or Web3 application.
A complete end-to-end solution, from design to mainnet deployment, typically takes 6-10 weeks. This includes 1-2 weeks for architecture design, 3-5 weeks for model adaptation and zk-circuit development, and 2-3 weeks for integration, testing, and audit preparation. We provide a detailed sprint plan within the first week of engagement.
Get In Touch
today.
Our experts will offer a free quote and a 30min call to discuss your project.