Best Deep Learning Software of 2025 - Page 5

Find and compare the best Deep Learning software in 2025

Use the comparison tool below to compare the top Deep Learning software on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Bright Cluster Manager Reviews
    Bright Cluster Manager offers a variety of machine learning frameworks including Torch, Tensorflow and Tensorflow to simplify your deep-learning projects. Bright offers a selection the most popular Machine Learning libraries that can be used to access datasets. These include MLPython and NVIDIA CUDA Deep Neural Network Library (cuDNN), Deep Learning GPU Trainer System (DIGITS), CaffeOnSpark (a Spark package that allows deep learning), and MLPython. Bright makes it easy to find, configure, and deploy all the necessary components to run these deep learning libraries and frameworks. There are over 400MB of Python modules to support machine learning packages. We also include the NVIDIA hardware drivers and CUDA (parallel computer platform API) drivers, CUB(CUDA building blocks), NCCL (library standard collective communication routines).
  • 2
    PaddlePaddle Reviews
    PaddlePaddle, built on years of research and practical applications in deep learning by Baidu, combines a core framework, a fundamental model library, an end-to-end development kit, tool components, and a service platform into a robust offering. Officially released as open-source in 2016, it stands out as a well-rounded deep learning platform known for its advanced technology and extensive features. The platform, which has evolved from real-world industrial applications, remains dedicated to fostering close ties with various sectors. Currently, PaddlePaddle is utilized across multiple fields, including industry, agriculture, and services, supporting 3.2 million developers and collaborating with partners to facilitate AI integration in an increasing number of industries. This widespread adoption underscores its significance in driving innovation and efficiency across diverse applications.
  • 3
    FortressIQ Reviews

    FortressIQ

    Automation Anywhere

    FortressIQ is the industry's most advanced process-intelligence platform. It allows enterprises to decode work and transform experiences. FortressIQ combines innovative computer vision with artificial intelligence to provide unprecedented process insights. It is extremely fast and delivers detail and accuracy that are unattainable using traditional methods. The platform automatically acquires process data across multiple systems. This empowers enterprises to understand, monitor and improve their operations, employee and customer experience, and every business process. FortressIQ was established in 2017 and is supported by Lightspeed Venture Partners and Boldstart Ventures as well as Comcast Ventures and Eniac Ventures. Continuously and automatically identify inefficiencies and process variations to determine optimal process paths and reduce time to automate.
  • 4
    ABEJA Platform Reviews
    The ABEJA platform represents a groundbreaking AI solution that integrates state-of-the-art technologies, including IoT, Big Data, and Deep Learning. In 2013, the volume of data circulated reached 4.4 zettabytes, and this figure is projected to soar to 44 zettabytes by 2020. This raises critical questions about how we can efficiently gather and leverage such vast and varied data sets, as well as how we can extract new insights from them. The ABEJA Platform stands out as one of the most sophisticated AI technologies globally, addressing the increasingly complex technological challenges ahead by facilitating the effective use of diverse data types. It offers advanced capabilities for image analysis through Deep Learning and processes extensive data swiftly with its cutting-edge decentralized architecture. Furthermore, it employs Machine Learning and Deep Learning techniques to analyze the amassed data, making it straightforward to share analysis results across different systems via API. As the data landscape continues to evolve, the need for such innovative platforms becomes ever more critical.