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Back to numenta/htm.java

Open-source alternatives to Htm.java

30 open-source projects similar to numenta/htm.java, ranked by how many features they have in common. Compare stars, activity and what each one does to find the best Htm.java alternative.

  • airbnb/aerosolveairbnb avatar

    airbnb/aerosolve

    4,804View on GitHub↗

    Aerosolve is a machine learning framework designed for training and deploying interpretable models. It functions as a feature engineering tool and a model trainer that utilizes sparse feature modeling to simplify weight debugging and accelerate data iteration. The system includes a specialized domain-specific transformation language for converting raw data families into model-ready representations. It also provides capabilities for visual content analysis by mapping images into dense high-dimensional vector spaces to rank and organize data by style or content. The framework allows for human-

    Scala
    View on GitHub↗4,804
  • aksnzhy/xlearnaksnzhy avatar

    aksnzhy/xlearn

    3,095View on GitHub↗

    High performance, easy-to-use, and scalable machine learning (ML) package, including linear model (LR), factorization machines (FM), and field-aware factorization machines (FFM) for Python and CLI interface.

    C++
    View on GitHub↗3,095
  • alan-turing-institute/mlj.jlalan-turing-institute avatar

    alan-turing-institute/MLJ.jl

    1,928View on GitHub↗

    A Julia machine learning framework

    Julia
    View on GitHub↗1,928
  • alejandro-isaza/braincorealejandro-isaza avatar

    alejandro-isaza/BrainCore

    378View on GitHub↗

    The iOS and OS X neural network framework

    Swift
    View on GitHub↗378
  • alexrudall/ruby-openaialexrudall avatar

    alexrudall/ruby-openai

    3,224View on GitHub↗

    OpenAI API Ruby! 🤖❤️ GPT-5 & Realtime WebRTC compatible!

    Ruby
    View on GitHub↗3,224

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  • alibaba/mnnalibaba avatar

    alibaba/MNN

    14,242View on GitHub↗

    MNN is a high-performance inference engine and framework designed for on-device machine learning. It provides a comprehensive environment for executing, optimizing, and deploying neural network models directly on mobile and resource-constrained edge devices. The framework distinguishes itself through a robust model optimization toolkit that supports quantization, compression, and structural graph manipulation to minimize memory footprint and maximize execution speed. It features a modular architecture that abstracts hardware-specific backends, allowing models to run efficiently across diverse

    C++armconvolutiondeep-learning
    View on GitHub↗14,242
  • amaiya/ktrainamaiya avatar

    amaiya/ktrain

    1,265View on GitHub↗

    ktrain is a Python library that makes deep learning and AI more accessible and easier to apply

    Jupyter Notebookcomputer-visiondeep-learninggraph-neural-networks
    View on GitHub↗1,265
  • amazaspshumik/sklearn-bayesAmazaspShumik avatar

    AmazaspShumik/sklearn-bayes

    524View on GitHub↗

    Python package for Bayesian Machine Learning with scikit-learn API

    Jupyter Notebook
    View on GitHub↗524
  • andreibondarev/langchainrbandreibondarev avatar

    andreibondarev/langchainrb

    1,989View on GitHub↗

    Build LLM-powered applications in Ruby

    Ruby
    View on GitHub↗1,989
  • ankane/epsankane avatar

    ankane/eps

    687View on GitHub↗

    Machine learning for Ruby

    Ruby
    View on GitHub↗687
  • apache/flinkapache avatar

    apache/flink

    26,086View on GitHub↗

    Apache Flink is a distributed processing engine designed for both high-throughput, low-latency data streams and finite batch workloads. It functions as a stateful stream processor and a SQL stream processing engine, providing a unified runtime to execute relational queries and event-based transformations. The system is distinguished by its ability to manage persistent operator state to ensure exactly-once processing guarantees and consistency during failures. It features specialized capabilities for complex event processing to detect temporal patterns and handles out-of-order events using eve

    Java
    View on GitHub↗26,086
  • apache/incubator-mxnetapache avatar

    apache/incubator-mxnet

    20,812View on GitHub↗

    Apache MXNet is a deep learning framework and distributed machine learning library designed for training and deploying neural networks across distributed systems, mobile devices, and hardware accelerators. It functions as a cross-platform runtime and a dynamic dataflow scheduler that optimizes neural network execution. The framework provides a multi-language API, enabling the development of machine learning models using Python, R, Julia, Scala, Go, and JavaScript. It supports high-performance model training and the scaling of workloads across multiple GPUs and machines. The system covers cap

    C++
    View on GitHub↗20,812
  • apache/mahoutapache avatar

    apache/mahout

    2,294View on GitHub↗

    Apache Mahout - an environment for quickly creating scalable, performant machine learning applications.

    Rust
    View on GitHub↗2,294
  • apache/mxnetapache avatar

    apache/mxnet

    20,829View on GitHub↗

    This project is a deep learning framework designed for constructing, training, and deploying neural networks across diverse hardware environments. It functions as a high-performance tensor computation library that provides both imperative and symbolic programming interfaces, allowing developers to balance flexible, step-by-step model building with the efficiency of compiled computation graphs. The framework distinguishes itself through a hybrid execution engine that integrates declarative graph compilation with imperative runtime logic. It supports scalable, distributed training across multip

    C++mxnet
    View on GitHub↗20,829
  • apache/predictionioapache avatar

    apache/predictionio

    12,522View on GitHub↗

    PredictionIO is a machine learning server designed for the deployment of predictive models to transform raw data into actionable predictions. It manages the full lifecycle of machine learning operations, from ingesting event data via APIs to hosting production-ready predictive services for real-time inference. The system supports distributed model training by spreading computational workloads across a cluster of nodes to increase processing speed. It enables the implementation of custom prediction engines using programming languages or the application of pre-built model templates for common t

    Scala
    View on GitHub↗12,522
  • apache/sparkapache avatar

    apache/spark

    43,467View on GitHub↗

    Apache Spark is a unified distributed data processing engine designed for large-scale data analysis and computation graphs. It functions as a distributed machine learning framework, a graph processing system, a real-time stream processor, and a SQL analytics engine. The system enables the execution of distributed SQL querying, large-scale graph analysis, and real-time stream analytics across clusters of machines. It also provides a scalable environment for implementing machine learning algorithms and predictive model development on massive datasets. The engine incorporates relational query e

    Scalabig-datajavajdbc
    View on GitHub↗43,467
  • apache/systemmlapache avatar

    apache/systemml

    1,090View on GitHub↗

    An open source ML system for the end-to-end data science lifecycle

    Java
    View on GitHub↗1,090
  • apple/turicreateapple avatar

    apple/turicreate

    11,171View on GitHub↗

    This project is an automated machine learning framework and toolkit designed for training and tuning custom models for classification, regression, and recommendations. It functions as a multimodal machine learning toolkit capable of processing and training models using a combination of text, image, audio, and sensor data. The framework distinguishes itself as a multimodal data processor that can handle and visualize large datasets on a single machine using column-oriented disk storage. It includes a core machine learning model generator that converts trained models into formats compatible wit

    C++
    View on GitHub↗11,171
  • arbox/data-science-with-rubyarbox avatar

    arbox/data-science-with-ruby

    724View on GitHub↗

    RubyNLP | RubyML | RubyInterop

    Ruby
    View on GitHub↗724
  • arogozhnikov/einopsarogozhnikov avatar

    arogozhnikov/einops

    9,398View on GitHub↗

    Einops is a tensor manipulation library that provides a framework-agnostic interface for reshaping, Einstein summation, and multi-dimensional array operations. It serves as an abstraction layer that works across NumPy, PyTorch, TensorFlow, and JAX, allowing for tensor transformations without changing the API. The library distinguishes itself through a declarative notation system that uses readable string patterns to describe tensor rearrangements and reductions. This approach includes an extended Einstein summation interface that supports multi-letter axis names and a named dimension mapping

    Pythoncupydeep-learningeinops
    View on GitHub↗9,398
  • asafschers/scorubyasafschers avatar

    asafschers/scoruby

    70View on GitHub↗

    Ruby Scoring API for PMML

    Ruby
    View on GitHub↗70
  • autonomio/talosautonomio avatar

    autonomio/talos

    1,637View on GitHub↗

    Hyperparameter Experiments with TensorFlow and Keras

    Pythonartificial-intelligencedeep-learninghyperparameter-optimization
    View on GitHub↗1,637
  • autowarefoundation/modelzooautowarefoundation avatar

    autowarefoundation/modelzoo

    63View on GitHub↗

    A collection of machine-learned models for use in autonomous driving applications.

    Python
    View on GitHub↗63
  • avibryant/brushfireA

    avibryant/brushfire

    0View on GitHub↗
    View on GitHub↗0
  • aws/aws-sdk-rubyaws avatar

    aws/aws-sdk-ruby

    3,658View on GitHub↗

    The official AWS SDK for Ruby

    Ruby
    View on GitHub↗3,658
  • azure/azure-sdk-for-rubyAzure avatar

    Azure/azure-sdk-for-ruby

    279View on GitHub↗

    This project provides a Ruby package that makes it easy to access and manage Microsoft Azure Services like Storage, Service Bus and Virtual Machines.

    Ruby
    View on GitHub↗279
  • azure/mmlsparkAzure avatar

    Azure/mmlspark

    5,228View on GitHub↗

    Mmlspark is a distributed framework for executing machine learning models, data transformations, and AI service integrations across Apache Spark clusters. It functions as a distributed machine learning library and pipeline orchestrator, allowing users to integrate pre-trained cognitive services and custom models into large-scale batch and streaming workflows. The project is distinguished by its ability to incorporate external AI services and web APIs directly into big data pipelines for text and vision analysis. It provides a scalable model training framework that coordinates gradient boostin

    Scala
    View on GitHub↗5,228
  • batzner/tensorlmbatzner avatar

    batzner/tensorlm

    60View on GitHub↗

    Wrapper library for text generation / language models at character and word level with RNNs in TensorFlow

    Python
    View on GitHub↗60
  • bensadeghi/decisiontree.jlbensadeghi avatar

    bensadeghi/DecisionTree.jl

    9View on GitHub↗

    Julia implementation of Decision Tree (CART) and Random Forest algorithms

    Julia
    View on GitHub↗9
  • ai4finance-foundation/finrlAI4Finance-Foundation avatar

    AI4Finance-Foundation/FinRL

    13,964View on GitHub↗

    FinRL is a reinforcement learning framework designed for the development, training, and backtesting of automated trading strategies. It functions as a quantitative finance toolkit that integrates deep learning algorithms with financial market simulations to address complex portfolio management and asset allocation tasks. The platform provides an end-to-end pipeline for transforming raw market data into actionable trading models. The project distinguishes itself through a layered, modular architecture that separates data processing, environment simulation, and agent training. This design allow

    Jupyter Notebookalgorithmic-tradingdeep-reinforcement-learningdrl-algorithms
    View on GitHub↗13,964