Repository navigation
hyper-parameter-optimization
- Website
- Wikipedia
Automated Deep Learning: Neural Architecture Search Is Not the End (a curated list of AutoDL resources and an in-depth analysis)
Train, Evaluate, Optimize, Deploy Computer Vision Models via OpenVINO™
An autoML framework & toolkit for machine learning on graphs.
DEEPScreen: Virtual Screening with Deep Convolutional Neural Networks Using Compound Images
A paper collection about automated graph learning
Students Performance Evaluation using Feature Engineering, Feature Extraction, Manipulation of Data, Data Analysis, Data Visualization and at lat applying Classification Algorithms from Machine Learning to Separate Students with different grades
Nature-inspired algorithms for hyper-parameter tuning of Scikit-Learn models.
Convenient classes for optimizing Hyper-parameters, using Random search, Spearmint and SigOpt
Combined hyper-parameter optimization and feature selection for machine learning models using micro genetic algorithms
A gradient free optimization routine which combines Particle Swarm Optimization with a local optimization for each particle
Grammaropt : a framework for optimizing over domain specific languages (DSLs)
Pipelineopt, sckit-learn automatic pipeline optimization
Pipoh is a library that implements several diversification techniques base on mean-variance framework. In addition, it includes a novel purely data-driven methods for determining the optimal value of the hyper-parameters associated with each investment strategy.
Python implementation that explores how different parameters impact a single hidden layer of a feed-forward neural network using gradient descent
To utilize the Breast Cancer Wisconsin Dataset for machine learning purposes. The aim is to diagnose breast cancer by employing a supervised binary, distance-based classifier (K Nearest Neighbours), which will classify cases as either benign or malignant.
Hyper-Parameter Optimisation experiment as part of my undergraduate dissertation (2019)
Students Performance Evaluation using Feature Engineering, Feature Extraction, Manipulation of Data, Data Analysis, Data Visualization and at lat applying Classification Algorithms from Machine Learning to Separate Students with different grades