1. Use BERT, ALBERT and GPT2 as tensorflow2.0's layer. 2. Implement GCN, GAN, GIN and GraphSAGE based on message passing.
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Updated
Jun 9, 2020 - Python
1. Use BERT, ALBERT and GPT2 as tensorflow2.0's layer. 2. Implement GCN, GAN, GIN and GraphSAGE based on message passing.
Erlang node implemented in Python 3.5+ (Asyncio-based)
Source code for GNN-LSPE (Graph Neural Networks with Learnable Structural and Positional Representations), ICLR 2022
factor graph library
The official PyTorch implementation of "Pathfinder Discovery Networks for Neural Message Passing" (WebConf '21)
Belief propagation with sparse matrices (scipy.sparse) in Python for LDPC codes. Includes NumPy implementation of message passing (min-sum and sum-product) and a few other decoders.
Concurrent, Asynchronous, Distributed, Communicating Tasks with Python
Linear Gaussian Bayesian Networks - Inference, Parameter Learning and Representation. 🖧
Graph-based machine learning for chemical property prediction
Gradient gating (ICLR 2023)
Example of High-Speed Subscriber Patterns in ZeroMQ
COntagion Simulation And Source Identification: a Python package for graph diffusion source inference
DGL implementation of GNN-CCA: Graph Neural Networks for Cross-Camera Data Association [arXiv:2201.06311]
Advanced Message Passing
Refactored the Udaconnect app (from monolithic to microservices) and implemented Kafka, gRPC, and RESTful API to allow message passing between the microservices. I also created OpenAPI documentation for the API endpoints and provided a Postman library for the endpoints created.
A DGL implementation of "Representation Learning on Graphs with Jumping Knowledge Networks".(ICML 2018)
Package for generating and inverse-designing 2D lattice materials. Represents lattices as heterogeneous graphs and utilizes message passing, automatic differentiation and surrogate gradients for the inverse design.
Message passing project of the Udacity's Cloud Native Application Architecture Nanodegree
Recurrent relational networks (arXiv:1711.08028) implemented in PyTorch
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