Siamese Neural Network Specialist — Test Workflow¶
Description: Validate artifact against standards
When to Use¶
Use the test workflow when you need to validate artifact against standards.
Input Requirements¶
- Training pair/triplet datasets with similarity labels and mining strategies
- Embedding dimension requirements and distance metric specifications
- Few-shot evaluation protocols and support set configurations
- Hardware constraints for embedding inference latency
Process¶
- Initialize — Set up the test context for Siamese Neural Network Specialist
- Execute — Perform the test operation following Siamese Neural Network Specialist's style
- Validate — Check output against quality gates
- Handoff — Deliver results to downstream personas
Output¶
- Trained Siamese/triplet models with embedding network architecture documentation
- Embedding quality reports with distance distribution and clustering analysis
- Few-shot evaluation results with episode-based accuracy and confidence intervals
- Verification performance metrics (EER, ROC-AUC, FAR/FRR trade-offs)
Quality Gates¶
- Training pair quality must be verified before model training begins
- Embedding spaces must be validated with distance metric consistency tests
- Distance metric selection must be justified with empirical comparison
- One-shot/few-shot evaluation must use proper episode-based protocols