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ZKML: An Optimizing System for ML Inference in Zero-Knowledge Proofs
Bing Jyue Chen
, Suppakit Waiwitlikhit
, Ion Stoica
,
Daniel Kang
Siebel School of Computing and Data Science
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Keyphrases
Chat Generative Pre-trained Transformer (ChatGPT)
25%
Closed-loop System
50%
Design Decisions
25%
Fast Verification
25%
Gadgets
50%
GPT-2
25%
Low Level Operations
25%
Machine Learning
50%
Machine Learning Based
25%
Machine Learning Inference
100%
Machine Learning Models
75%
Model Weight
25%
Optimization System
100%
Optimizing Compilers
25%
Private Model
25%
Recommendation Algorithm
25%
Service Provider
25%
Small Animal Model
25%
Social Media Use
25%
Systems for Machine Learning
100%
TensorFlow
25%
Twitter Recommendation
25%
Vision Model
25%
Zero-knowledge Proof
100%
Zk-SNARK
100%
Computer Science
Affect Performance
14%
ChatGPT
14%
Knowledge Proof
100%
Learning System
100%
Level Operation
14%
Machine Learning
100%
Optimizing Compiler
14%
Recommendation Algorithm
14%
Service Provider
14%
TensorFlow
14%
Trade Secret
14%