Glenn Kroegel (glennkroegel)

glennkroegel

Geek Repo

Location:Berlin, Germany

Home Page:https://medium.com/@glenn.kroegel

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Glenn Kroegel's repositories

PLAsTiCC-Astronomical-Classification-RNN-Search

An RNN based architecture to classify astronomical objects including those that are unknown. An RNN encodes input signals from several passbands. NMSlib used to perform cosine similarity on the objects. Unknown objects detected if similarity with others is low.

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pytorch-starlightcurves

Encoder/Decoder network for star light time series data

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imdb

Playground to test SOTA NLP architectures

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keras-demonstration

Basic demonstration of python & keras ability.

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ma-rmq

Multi asset application using RabbitMQ

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model-control

Docker environment to run model

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pytorch-earthquakeprediction

Earthquake prediction models (CNN and RNN based)

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pytorch-mixed-input-fully-connected-model

PyTorch mixed input (continuous/categorical) fully connected model for binary classification.

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PassNet

Deep learning based password generator and mutator.

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RabbitMQ

Receive data feed from source and port to python script using RabbitMQ

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SoundEvents-WaveNet

TUT Sound Events prediction

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Steel-Defect-Detection-UNET

UNET to detect defects in steel. Developed for the Sevastal Kaggle competition.

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Train-Model

Obtain machine learning model from feature calculation, preprocessing and training.

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Websocket

Real time execution using trained model (from Train-Model repository) and websocket

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