List of the Top 3 Neural Network Software for OpenVINO in 2025

Reviews and comparisons of the top Neural Network software with an OpenVINO integration


Below is a list of Neural Network software that integrates with OpenVINO. Use the filters above to refine your search for Neural Network software that is compatible with OpenVINO. The list below displays Neural Network software products that have a native integration with OpenVINO.
  • 1
    Keras Reviews & Ratings

    Keras

    Keras

    Empower your deep learning journey with intuitive, efficient design.
    Keras is designed primarily for human users, focusing on usability rather than machine efficiency. It follows best practices to minimize cognitive load by offering consistent and intuitive APIs that cut down on the number of required steps for common tasks while providing clear and actionable error messages. It also features extensive documentation and developer resources to assist users. Notably, Keras is the most popular deep learning framework among the top five teams on Kaggle, highlighting its widespread adoption and effectiveness. By streamlining the experimentation process, Keras empowers users to implement innovative concepts much faster than their rivals, which is key for achieving success in competitive environments. Built on TensorFlow 2.0, it is a powerful framework that effortlessly scales across large GPU clusters or TPU pods. Making full use of TensorFlow's deployment capabilities is not only possible but also remarkably easy. Users can export Keras models for execution in JavaScript within web browsers, convert them to TF Lite for mobile and embedded platforms, and serve them through a web API with seamless integration. This adaptability establishes Keras as an essential asset for developers aiming to enhance their machine learning projects effectively and efficiently. Furthermore, its user-centric design fosters an environment where even those with limited experience can engage with deep learning technologies confidently.
  • 2
    PyTorch Reviews & Ratings

    PyTorch

    PyTorch

    Empower your projects with seamless transitions and scalability.
    Seamlessly transition between eager and graph modes with TorchScript, while expediting your production journey using TorchServe. The torch-distributed backend supports scalable distributed training, boosting performance optimization in both research and production contexts. A diverse array of tools and libraries enhances the PyTorch ecosystem, facilitating development across various domains, including computer vision and natural language processing. Furthermore, PyTorch's compatibility with major cloud platforms streamlines the development workflow and allows for effortless scaling. Users can easily select their preferences and run the installation command with minimal hassle. The stable version represents the latest thoroughly tested and approved iteration of PyTorch, generally suitable for a wide audience. For those desiring the latest features, a preview is available, showcasing the newest nightly builds of version 1.10, though these may lack full testing and support. It's important to ensure that all prerequisites are met, including having numpy installed, depending on your chosen package manager. Anaconda is strongly suggested as the preferred package manager, as it proficiently installs all required dependencies, guaranteeing a seamless installation experience for users. This all-encompassing strategy not only boosts productivity but also lays a solid groundwork for development, ultimately leading to more successful projects. Additionally, leveraging community support and documentation can further enhance your experience with PyTorch.
  • 3
    Caffe Reviews & Ratings

    Caffe

    BAIR

    Unleash innovation with a powerful, efficient deep learning framework.
    Caffe is a robust deep learning framework that emphasizes expressiveness, efficiency, and modularity, and it was developed by Berkeley AI Research (BAIR) along with several contributors from the community. Initiated by Yangqing Jia during his PhD studies at UC Berkeley, this project operates under the BSD 2-Clause license. An interactive web demo for image classification is also available for exploration by those interested! The framework's expressive design encourages innovation and practical application development. Users are able to create models and implement optimizations using configuration files, which eliminates the necessity for hard-coded elements. Moreover, with a simple toggle, users can switch effortlessly between CPU and GPU, facilitating training on powerful GPU machines and subsequent deployment on standard clusters or mobile devices. Caffe's codebase is highly extensible, which fosters continuous development and improvement. In its first year alone, over 1,000 developers forked Caffe, contributing numerous enhancements back to the original project. These community-driven contributions have helped keep Caffe at the cutting edge of advanced code and models. With its impressive speed, Caffe is particularly suited for both research endeavors and industrial applications, capable of processing more than 60 million images per day on a single NVIDIA K40 GPU. This extraordinary performance underscores Caffe's reliability and effectiveness in managing extensive tasks. Consequently, users can confidently depend on Caffe for both experimentation and deployment across a wide range of scenarios, ensuring that it meets diverse needs in the ever-evolving landscape of deep learning.
  • Previous
  • You're on page 1
  • Next