A Python Automated Machine Learning tool that optimizes machine learning pipelines using genetic programming.
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Updated
Aug 25, 2022 - Python
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A Python Automated Machine Learning tool that optimizes machine learning pipelines using genetic programming.
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Swarming behaviour is based on aggregation of simple drones exhibiting basic instinctive reactions to stimuli. However, to achieve overall balanced/interesting behaviour the relative importance of these instincts, as well their internal parameters, must be tuned. In this project, you will learn how to apply Genetic Programming as means of such tuning, and attempt to achieve a series of non-trivial swarm-level behaviours.
Online Hackathons/Competitions
It is a Problem Which I got During the ZS Data Science Challenge From Interview Bit Hiring Challenge Where I secured a 40th Rank out of 10,000 Students across India. It is a Dataset which requires Intensive Cleaning and Processing. Here I have Performed Classification Using Random Forest Classifier and Used Hyper Tuning of the Parameters to achieve the Accuracy. I got a very Satisfiable Accuracy from the Model in both the Training and Testing Sets.
Learning simulation parameters from experimental data, from the micro to the macro, from laptops to clusters.
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