Sorry to hear that. Could you let me know which Indian breed your dog is?
The model is currently trained on 124 specific breeds, so if your dogβs breed isnβt in that list, it wonβt be recognized. Iβm working on expanding the coverage to include more regional breeds based on user feedback like yours.
Thanks for testing and letting me know.
Eric Chung PRO
DawnC
AI & ML interests
Computer Vision, LLM, Hybrid Architectures, MultiModel, Reinforcement Learning
Recent Activity
replied to
their
post
2 days ago
PawMatchAI β Smarter, Safer, and More Thoughtful Recommendations πβ¨
πΎ Recommendation system update β deeper reasoning, safer decisions
Over the past weeks, user feedback led me to rethink how PawMatchAI handles description-based breed recommendations. Instead of only matching surface-level preferences, the system now implements a multi-dimensional semantic reasoning architecture that emphasizes real-life compatibility and risk awareness.
Key technical improvements:
- SBERT-powered semantic understanding with dynamic weight allocation across six constraint dimensions (space, activity, noise, grooming, experience, family)
- Hierarchical constraint management distinguishing critical safety constraints from flexible preferences, with progressive relaxation when needed
-Multi-head scoring system combining semantic matching (15%), lifestyle compatibility (70%), constraint adherence (10%), and confidence calibration (5%)
-Intelligent risk filtering that applies graduated penalties (-10% to -40%) for genuine incompatibilities while preserving user choice
The goal: π Not just dogs that sound good on paper, but breeds people will actually thrive with long-term.
What's improved?
- π― Clearer separation of must-have safety constraints versus flexible preferences
- π§ Bidirectional semantic matching evaluating compatibility from both user and breed perspectives
- π Context-aware prioritization where critical factors (safety, space, noise) automatically receive higher weighting
What's next?
- π Expanding behavioral and temperament analysis dimensions
- πΎ Extension to additional species with transfer learning
- π± Mobile-optimized deployment for easier access
- π§© Enhanced explainability showing why specific breeds are recommended
π Try PawMatchAI: https://huggingface.co/spaces/DawnC/PawMatchAI
#AIProduct #SBERT #RecommendationSystems #DeepLearning #MachineLearning #NLP
posted
an
update
3 days ago
PawMatchAI β Smarter, Safer, and More Thoughtful Recommendations πβ¨
πΎ Recommendation system update β deeper reasoning, safer decisions
Over the past weeks, user feedback led me to rethink how PawMatchAI handles description-based breed recommendations. Instead of only matching surface-level preferences, the system now implements a multi-dimensional semantic reasoning architecture that emphasizes real-life compatibility and risk awareness.
Key technical improvements:
- SBERT-powered semantic understanding with dynamic weight allocation across six constraint dimensions (space, activity, noise, grooming, experience, family)
- Hierarchical constraint management distinguishing critical safety constraints from flexible preferences, with progressive relaxation when needed
-Multi-head scoring system combining semantic matching (15%), lifestyle compatibility (70%), constraint adherence (10%), and confidence calibration (5%)
-Intelligent risk filtering that applies graduated penalties (-10% to -40%) for genuine incompatibilities while preserving user choice
The goal: π Not just dogs that sound good on paper, but breeds people will actually thrive with long-term.
What's improved?
- π― Clearer separation of must-have safety constraints versus flexible preferences
- π§ Bidirectional semantic matching evaluating compatibility from both user and breed perspectives
- π Context-aware prioritization where critical factors (safety, space, noise) automatically receive higher weighting
What's next?
- π Expanding behavioral and temperament analysis dimensions
- πΎ Extension to additional species with transfer learning
- π± Mobile-optimized deployment for easier access
- π§© Enhanced explainability showing why specific breeds are recommended
π Try PawMatchAI: https://huggingface.co/spaces/DawnC/PawMatchAI
#AIProduct #SBERT #RecommendationSystems #DeepLearning #MachineLearning #NLP
updated
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4 days ago
DawnC/PawMatchAI
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