bayesian-bandit.js

bayesian-bandit.js

bayesian-bandit.js From United States

bayesian-bandit.js is a versatile implementation of Bayesian Bandit algorithms designed for both Node.js and browser environments. Built from the foundations of d3bandits.js, it offers idiomatic code and supports pre-existing data through the constructor. The package includes unit tests to ensure reliability, enhancing user feedback integration.

1 vote

Top bayesian-bandit.js Alternatives

StackScan

StackScan

Unlock deep insights into website technologies with StackScan, tracking 50,000+ tools (450+ technology categories to explore).

StackScan Pte Ltd
Recommender

Recommender

Recommender is a C library designed for generating personalized product recommendations through collaborative filtering. By analyzing both implicit and explicit user feedback, it identifies preference patterns to predict items that align closely with individual user interests. This tool facilitates enhanced user engagement and tailored shopping experiences.

Recommender From United States
1 vote
gago

gago

gago serves as a versatile machine learning toolkit designed for implementing various genetic algorithms. It allows users to define problem-specific logic through its Genome interface while managing populations efficiently. With features like customizable mutation and crossover methods, as well as support for parallel processing, gago facilitates robust optimization solutions tailored to users' needs.

gago From United States
1 vote
metric-learn

metric-learn

Metric-learn offers efficient Python implementations of popular supervised and weakly-supervised metric learning algorithms, ensuring compatibility with scikit-learn. This integration allows users to seamlessly utilize scikit-learn routines for pipelining and model selection, enhancing the functionality of metric learning through a unified interface. Comprehensive documentation is available for installation and usage guidance.

metric-learn From United States
1 vote
haskell-ml

haskell-ml

Haskell-ml offers a collection of Haskell implementations for fundamental machine learning algorithms. It features a demonstration, where users can observe the training of a Hopfield network on patterns like O and X, showcasing the network's ability to reconstruct these patterns even from distorted versions, highlighting its practical applications in ML.

haskell-ml From United States
1 vote
LDA.js

LDA.js

LDA.js enables efficient topic modeling in Node.js using the Latent Dirichlet Allocation algorithm. It skillfully identifies multiple topics within documents, extracting relevant keywords while filtering out common terms. Users can customize stop-words for various languages and control randomness in results, ensuring tailored and reproducible outcomes for diverse datasets.

LDA.js From United States
1 vote
KRKmeans-Algorithm

KRKmeans-Algorithm

KRKmeans-Algorithm employs the K-Means clustering algorithm to facilitate multi-dimensional clustering, making it ideal for applications such as data mining, image compression, and classification. By effectively recovering trained models, it predicts patterns with precision, enhancing users' ability to analyze complex datasets. Version 2.6.1 is released under the MIT license.

KRKmeans-Algorithm From United States
1 vote
Vulpes

Vulpes

Vulpes is a deep belief network implementation in F#, leveraging Alea.cuBase for GPU access. Designed for Visual Studio, it efficiently processes the MNIST handwritten digit dataset through pretraining and fine-tuning techniques. Developers can engage in its evolution by joining the mailing list, contributing to ongoing discussions and milestones.

Vulpes From United States
1 vote
TopicModels.jl

TopicModels.jl

TopicModels.jl offers a specialized implementation of Bayesian hierarchical mixture models tailored for topic modeling in Julia. Primarily focused on Latent Dirichlet Allocation (LDA), it facilitates data manipulation and inference procedures, enabling users to read documents, define model parameters, train models using collapsed Gibbs sampling, and extract top words associated with identified topics.

TopicModels.jl From United States
1 vote
ToPS

ToPS

ToPS is an advanced machine learning software that meticulously analyzes user feedback to enhance functionality and performance. It prioritizes user input, ensuring that each suggestion is carefully considered. Users can access extensive documentation to explore all available qualifiers and fully leverage the software's capabilities for tailored solutions.

ToPS From United States
1 vote
Clojush

Clojush

Clojush is an innovative machine learning software that implements the Push programming language and PushGP genetic programming system in Clojure. Designed for evolutionary computation, it excels in multi-core concurrency, enabling users to evolve programs that utilize multiple data types while simplifying automatic program structures. Users can customize parameters easily via command line or IDE, facilitating tailored experimental setups.

Push From United States
1 vote
SwiftLearner

SwiftLearner

SwiftLearner is a Scala-based machine learning library designed for clarity and experimentation. It features straightforward algorithms using plain Java types with minimal dependencies, ideal for prototyping and learning. With accessible methods and examples like the Fisher Iris dataset, it fosters understanding while achieving functional performance for small datasets.

SwiftLearner From United States
1 vote
Conjecture

Conjecture

Conjecture offers a robust framework for developing machine learning models within Hadoop using the Scalding DSL. It emphasizes flexibility, efficiently handling large datasets for applications like classification, ranking, and filtering. With features like binary classification and cross-validation, Conjecture facilitates seamless integration into existing ETL processes for real-time model deployment.

Conjecture From United States
1 vote
Spearmint

Spearmint

Spearmint is a robust software package that facilitates Bayesian optimization by automating experimental processes. It intelligently adjusts parameters to efficiently minimize objectives across fewer runs. Designed for academic and non-commercial research, it outputs results for easy access and manipulation, enhancing the userโ€™s ability to analyze experimental data effectively.

Spearmint From United States
1 vote
DecisionTree.jl

DecisionTree.jl

DecisionTree.jl offers a robust Julia implementation of Decision Tree (CART) and Random Forest algorithms, supporting various models like DecisionTreeClassifier and RandomForestRegressor. It seamlessly integrates with ScikitLearn.jl for advanced functionalities, including cross-validation and hyperparameter tuning, while emphasizing efficient data management for optimal performance.

DecisionTree.jl From United States
1 vote
ml.js

ml.js

ml.js offers a collection of specialized machine learning tools tailored for JavaScript, primarily designed for browser use. It provides functions for handling data points with x and y coordinates, enabling users to merge, sort, and manage arrays effectively. Each npm package is prefixed with ml- for easy identification.

ml.js From United States
1 vote

Company Information

  • Company: bayesian-bandit.js
  • Country: United States