parameter-tuning

There are 140 repositories under parameter-tuning topic.

  • EpistasisLab/tpot

    A Python Automated Machine Learning tool that optimizes machine learning pipelines using genetic programming.

    Language:Python9.8k2899221.6k
  • databricks/spark-sklearn

    (Deprecated) Scikit-learn integration package for Apache Spark

    Language:Python1.1k9449228
  • sberbank-ai-lab/LightAutoML

    LAMA - automatic model creation framework

    Language:Python908325895
  • FEDOT

    aimclub/FEDOT

    Automated modeling and machine learning framework FEDOT

    Language:Python6501155388
  • cerlymarco/shap-hypetune

    A python package for simultaneous Hyperparameters Tuning and Features Selection for Gradient Boosting Models.

    Language:Jupyter Notebook56773371
  • Hyperactive

    SimonBlanke/Hyperactive

    An optimization and data collection toolbox for convenient and fast prototyping of computationally expensive models.

    Language:Python515127742
  • EpistasisLab/tpot2

    A Python Automated Machine Learning tool that optimizes machine learning pipelines using genetic programming.

    Language:Jupyter Notebook214105829
  • baggepinnen/Hyperopt.jl

    Hyperparameter optimization in Julia.

    Language:Julia1997020
  • openmole/openmole

    Workflow engine for exploration of simulation models using high throughput computing

    Language:Scala1442045137
  • jfcg/sorty

    :zap: Fast Concurrent / Parallel Sorting in Go

    Language:Go133576
  • kennedyCzar/STOCK-RETURN-PREDICTION-USING-KNN-SVM-GUASSIAN-PROCESS-ADABOOST-TREE-REGRESSION-AND-QDA

    Forecast stock prices using machine learning approach. A time series analysis. Employ the Use of Predictive Modeling in Machine Learning to Forecast Stock Return. Approach Used by Hedge Funds to Select Tradeable Stocks

    Language:Jupyter Notebook1317035
  • HAL-42/AlchemyCat

    Alchemy Cat —— 🔥Config System for SOTA

    Language:Python1209410
  • openmole/mgo

    Purely functional genetic algorithms for multi-objective optimisation

    Language:Scala7214114
  • aimclub/iOpt

    Framework of intelligent optimization methods iOpt

    Language:Python5341624
  • fugue-project/tune

    An abstraction layer for parameter tuning

    Language:Python364273
  • AlphaEx

    AmiiThinks/AlphaEx

    A Python Toolkit for Managing a Large Number of Experiments

    Language:Python31452
  • lasgroup/gosafeopt

    Globally Safe Model-free Exploration of Dynamical Systems

    Language:Python29406
  • NikhilaThota/CapstoneProject_House_Prices_Prediction

    Understand the relationships between various features in relation with the sale price of a house using exploratory data analysis and statistical analysis. Applied ML algorithms such as Multiple Linear Regression, Ridge Regression and Lasso Regression in combination with cross validation. Performed parameter tuning, compared the test scores and suggested a best model to predict the final sale price of a house. Seaborn is used to plot graphs and scikit learn package is used for statistical analysis.

    Language:Jupyter Notebook210013
  • eswar3/Zillow-prediction-models

    Machine Learning Project using Kaggle dataset

    Language:Jupyter Notebook19105
  • ssl-oyamata/postgres_opttune

    Trying PostgreSQL parameter tuning using machine learning.

    Language:Python19204
  • uob-positron-imaging-centre/ACCES-CoExSiST

    Learning simulation parameters from experimental data, from the micro to the macro, from laptops to clusters.

    Language:Python16434
  • etfovac/bpsk-ber

    MATLAB simulation of a BPSK data transmission system with AWGN channel, and its benchmark against BER(SNR).

    Language:MATLAB13110
  • watermark

    etfovac/watermark

    Robustness of DWT vs DCT is graded based on the quality of extracted watermark. The measure used is the Correlation coefficient (0-100%).

    Language:MATLAB121124
  • souzamarcelo/acviz

    Algorithm Configuration Visualizations for irace!

    Language:Python11221
  • Cheejyg/Genetic-Algorithms-for-Swarm-Parameter-Tuning

    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.

    Language:Python9201
  • hotaki-lab/Product-Review-Sentiment-Analysis

    The goal of this project is to design a classifier to use for sentiment analysis of product reviews. Our training set consists of reviews written by Amazon customers for various food products. The reviews, originally given on a 5 point scale, have been adjusted to a +1 or -1 scale, representing a positive or negative review, respectively.

    Language:Python9103
  • WeiFoo/EasyOverHard

    a case study on deep learning where tuning simple SVM is much faster and better than CNN

    Language:Python9303
  • EhsanBaninajar/MPS-APO

    MPS-APO is a rapid and automatic parameter optimizer for multiple-point geostatistics

    Language:MATLAB8302
  • ghimohammadr/Metaheuristics_SVR

    The performance of SVR models highly depends upon the appropriate choice of SVR parameters. Here, different metaheuristic algorithms are used to tune the hyperparameters.

    Language:MATLAB8100
  • harsh1795/Hackathons

    Online Hackathons/Competitions

    Language:Jupyter Notebook8202
  • MainRo/xgbtune

    a library to tune xgboost models

    Language:Python8301
  • mansipatel2508/Yelp-Review-Stars-Prediction-with-Machine-Learning

    The project has text vectorization, handling big data with merging and cleaning the text and getting the required columns while boosting the performance by feature extraction and parameter tuning for NN, compares the Performances through applied different models treating the problem as classification and regression both.

    Language:Jupyter Notebook8213
  • rudrajit1729/Machine-Learning-Codes-And-Templates

    Codes and templates for ML algorithms created, modified and optimized in Python and R.

    Language:Python8203
  • sharmaroshan/Christiano-Ronaldo---Goal-Prediction-Top-40-

    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.

    Language:Jupyter Notebook7201
  • tkimhofer/msbrowser

    An RShiny dashboard for visualisation of mass spectrometry (MS) data and fine-tuning of xcms pre-processing parameters

    Language:R7142