You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
I am writing to propose the addition of a new recommendation engine, CoreRec, to the CoreNet repository/technology. CoreRec is a cutting-edge recommendation engine specifically designed for graph-based algorithms. It seamlessly integrates advanced neural network architectures and excels in node recommendations, model training, and graph visualizations.
Key Features of CoreRec:
GraphTransformer Model: A Transformer model tailored for graph data with customizable parameters.
GraphDataset: A PyTorch dataset for efficient handling of graph data.
Training Functionality: Comprehensive training functions for various graph-based machine learning models.
Prediction Capability: Accurate prediction of similar nodes within a graph.
Graph Visualization: Robust 2D and 3D graph visualization tools.
Dear CoreNet Team,
I am writing to propose the addition of a new recommendation engine, CoreRec, to the CoreNet repository/technology. CoreRec is a cutting-edge recommendation engine specifically designed for graph-based algorithms. It seamlessly integrates advanced neural network architectures and excels in node recommendations, model training, and graph visualizations.
Key Features of CoreRec:
Benefits of Including CoreRec in CoreNet:
Repository URL: CoreRec GitHub Repository
We believe that CoreRec would be a valuable addition to the CoreNet repository/technology and look forward to your feedback and consideration.
Thank you for your time and attention.
Best regards,
Vishesh Yadav
mail
corerec site
The text was updated successfully, but these errors were encountered: