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ekagra-ranjan/README.md

Hi there 👋

Checkout my Professional Portfolio to know more about my work.

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  1. malllabiisc/ASAP Public

    AAAI 2020 - ASAP: Adaptive Structure Aware Pooling for Learning Hierarchical Graph Representations

    Python 100 29

  2. pyg-team/pytorch_geometric Public

    Graph Neural Network Library for PyTorch

    Python 22.7k 3.9k

  3. pytorch/vision Public

    Datasets, Transforms and Models specific to Computer Vision

    Python 17k 7.1k

  4. AE-CNN Public

    ICVGIP' 18 Oral Paper - Classification of thoracic diseases on ChestX-Ray14 dataset

    Python 46 17

  5. fake-news-detection-LIAR-pytorch Public

    Fake News Detection by Learning Convolution Filters through Contextualized Attention

    Python 41 11

  6. Auto-SCMA Public

    NCC 2021 - Auto-SCMA: Learning Codebook for Sparse Code Multiple Access using Machine Learning

    Jupyter Notebook 7 1

294 contributions in the last year

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Contribution Graph
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Activity overview

Contributed to vllm-project/vllm, ekagra-ranjan/CUDA, ekagra-ranjan/vllm and 6 other repositories
Loading A graph representing ekagra-ranjan's contributions from July 28, 2024 to August 01, 2025. The contributions are 34% code review, 33% pull requests, 30% commits, 3% issues. 34% Code review 3% Issues 33% Pull requests 30% Commits

Contribution activity

August 1, 2025

ekagra-ranjan has no activity yet for this period.
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