Performance and Cost Bottlenecks: Proof Generation Remains Expensive
Despite significant optimizations over the past three years (such as Plonky2, Halo2, Boojum, RISC-V ZK circuits), ZK proof generation remains one of the most computationally expensive operations in blockchain.
Proof generation time is still lengthy
- For complex circuits (DeFi states, game logic), generating proofs often takes anywhere from hundreds of milliseconds to several seconds.
- On mobile devices or lightweight hardware, proof generation is nearly impossible and still relies on cloud services or validator nodes.
High hardware requirements
- Some ZK systems require GPU/FPGA to achieve usable speeds.
- Cloud-based generation introduces new trust assumptions and centralization risks.
On-chain verification is not free
- SNARKs have low verification costs but require a trusted setup.
- STARKs do not need a trusted setup, but proofs are larger and verification costs exceed those of SNARKs.
Conclusion
ZK is best suited for separating privacy and verification from “real-time logic,” making it ideal for settlement, compliance checks, and batch processing—rather than for all business logic.
Auditability vs. Regulatory Requirements
ZK inherently provides privacy, but excessive privacy can clash with global compliance frameworks (AML/KYC/anti-terrorist financing).
Typical regulatory concerns
- On-chain private assets make it hard to track fund flows.
- Participant identities are obscured.
- Transaction mixing may conceal suspicious activity.
Regulatory requirements
As a result, regulators often require:
- Selective disclosure
- Regulatory exception access (Regulator Backdoor—not a universal backdoor)
- Transaction audit proofs
Compliance solutions for ZK are emerging
Including:
- ZK-KYC (proving you meet requirements without exposing your identity)
- Auditable private accounts (regulator-readable proofs)
- On-chain flow-of-funds proofs
However, divergent regulatory stances across countries make it difficult for projects to meet global standards in one go.
High Development Complexity: Shortage of Talent and Toolchains
ZK engineering is far more challenging than traditional smart contracts due to:
- Required expertise in cryptography, circuit design, compilers, and distributed systems
- Each ZK framework uses its own DSL (Circom, Noir, Leo, etc.)
- High auditing thresholds and costly errors
Result: Development is expensive, audit cycles are long, and tooling cannot fully abstract underlying complexity.
Key future directions
- More mature ZK compilers (zkVM, zkEVM)
- Higher-level abstractions (Rust → Circuit)
- Standardized privacy compliance protocols
User Experience Is Still Underdeveloped
User experience remains one of the biggest obstacles to ZK adoption:
Complex wallet interactions
- Users must understand what “proof generation” means
- Proof generation can take several seconds, impacting UX
High and volatile transaction fees
- Proof generation typically costs more than standard transactions
- Batch processing experiences are still inconsistent
Privacy vs. recovery mechanism conflict
- Full privacy makes account recovery harder
- Social recovery mechanisms require new ZK process designs
High user education costs
Most users don’t understand:
- What is a circuit?
- How are proofs generated?
- Why does privacy require computation?
This leads to low user migration and adoption willingness.
Unclear Commercialization Path: Bridging the Gap from Technology to Product
ZK is “deep tech,” but not automatically commercially viable. Current projects commonly face:
No clear payment model
- Ordinary users have low willingness to pay for privacy.
- Developers hesitate over high proof-generation costs.
Slow enterprise adoption
- High compliance demands and integration costs.
- Poor compatibility with existing systems.
- Enterprises are unwilling to shoulder proof-generation expenses.
Lack of quantifiable ROI (Return on Investment)
Privacy, compression, and security are hard to directly translate into revenue.
Potential commercial opportunities are emerging
- On-chain identity (ZK-ID)
- Compliance-focused finance (ZK-RegTech)
- Enterprise data collaboration (ZK data exchange)
- AI × ZK: verifiable AI inference
- ZK computation outsourcing
But these remain in early validation stages.
Future Trends: Key Drivers for ZK’s Real-World Adoption
Verifiable AI will be the biggest catalyst
- Making AI models “provable”
- Ensuring AI outcomes are trustworthy and traceable
This drives industrial-scale demand for ZK models.
Proliferation of hardware acceleration (GPU/ASIC)
Apple, Samsung, Nvidia are integrating ZK acceleration capabilities, which will drastically lower ZK costs.
Standardization and formation of ZK compliance frameworks
- Standardized ZK-KYC
- Audit proofs readable by financial institutions
- “Private yet regulatable” infrastructure
Maturity of ZK Rollups and zkEVMs
More L1/L2s will adopt ZK as their default settlement mechanism.
Improved toolchains and developer education
- Low-barrier ZK DSLs
- Circuit visualization tools
- Modular proof architectures
Experiences closer to everyday users
- Wallets automatically generate proofs
- Asynchronous proof generation (no waiting for completion)
- Modular privacy toggles
ZK will evolve from a “technical capability” to a “core infrastructure.”
Course Summary
Zero-Knowledge Proofs are becoming a cornerstone of blockchain, AI, and fintech’s future. However, real-world implementation still faces:
- Computational performance bottlenecks
- Conflicts between compliance and auditability
- A complex developer ecosystem
- Immature user experience
- Unclear commercialization models
Nevertheless, the industry is actively seeking solutions. With hardware acceleration, maturation of zkVM technology, emerging compliance frameworks, and surging demand for AI verifiability, ZK will gradually move from cutting-edge technology toward widespread real-world adoption.