All Projects → RubensZimbres → Repo 2019

RubensZimbres / Repo 2019

BERT, AWS RDS, AWS Forecast, EMR Spark Cluster, Hive, Serverless, Google Assistant + Raspberry Pi, Infrared, Google Cloud Platform Natural Language, Anomaly detection, Tensorflow, Mathematics

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2019 Python Codes

Google Research BERT: Bidirectional Encoder Representations from Transformers - Positional Encodings

OpenAI GPT-2

Graph Neural Networks in Tensorflow

Social Networks Analysis with networkx

Pull Request to Microsoft's PySpark Predictive Maintenance model

Time Series Forecasting with Tensorflow Probability

Mind Controlled Apparatus

Infrared Raspberry Pi3

Knowledge Graphs

Isolation Forest for outlier/anomaly detection

Mathematics

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