List of the Top 3 Deep Learning Software for Cirrascale in 2025

Reviews and comparisons of the top Deep Learning software with a Cirrascale integration


Below is a list of Deep Learning software that integrates with Cirrascale. Use the filters above to refine your search for Deep Learning software that is compatible with Cirrascale. The list below displays Deep Learning software products that have a native integration with Cirrascale.
  • 1
    Qualcomm Cloud AI SDK Reviews & Ratings

    Qualcomm Cloud AI SDK

    Qualcomm

    Optimize AI models effortlessly for high-performance cloud deployment.
    The Qualcomm Cloud AI SDK is a comprehensive software package designed to improve the efficiency of trained deep learning models for optimized inference on Qualcomm Cloud AI 100 accelerators. It supports a variety of AI frameworks, including TensorFlow, PyTorch, and ONNX, enabling developers to easily compile, optimize, and run their models. The SDK provides a range of tools for onboarding, fine-tuning, and deploying models, effectively simplifying the journey from initial preparation to final production deployment. Additionally, it offers essential resources such as model recipes, tutorials, and sample code, which assist developers in accelerating their AI initiatives. This facilitates smooth integration with current infrastructures, fostering scalable and effective AI inference solutions in cloud environments. By leveraging the Cloud AI SDK, developers can substantially enhance the performance and impact of their AI applications, paving the way for more groundbreaking solutions in technology. The SDK not only streamlines development but also encourages collaboration among developers, fostering a community focused on innovation and advancement in AI.
  • 2
    H2O.ai Reviews & Ratings

    H2O.ai

    H2O.ai

    Empowering innovation through open-source AI for everyone.
    H2O.ai leads the way in open-source artificial intelligence and machine learning, striving to make AI available to everyone. Our advanced platforms are tailored for enterprise use and assist numerous data scientists within over 20,000 organizations globally. By empowering businesses in various fields, including finance, insurance, healthcare, telecommunications, retail, pharmaceuticals, and marketing, we are playing a crucial role in cultivating a new generation of companies that leverage AI to produce real value and innovation in the modern market. Our dedication to democratizing technology is not just about accessibility; it's about reshaping the operational landscape across industries to encourage growth and resilience in a rapidly evolving environment. Through these efforts, we aspire to redefine the future of work and enhance productivity across sectors.
  • 3
    PaddlePaddle Reviews & Ratings

    PaddlePaddle

    PaddlePaddle

    Empowering innovation through advanced, versatile deep learning solutions.
    PaddlePaddle, developed by Baidu after extensive research and practical experience in deep learning, integrates a core framework, a foundational model library, an end-to-end development kit, various tool components, and a comprehensive service platform into a powerful solution. Launched as an open-source project in 2016, it has gained recognition as a versatile deep learning platform celebrated for its cutting-edge technology and rich feature set. The evolution of this platform, driven by real-world industrial use cases, highlights its commitment to strengthening partnerships across different sectors. Today, PaddlePaddle plays a crucial role in numerous domains, such as industry, agriculture, and services, and supports a thriving community of 3.2 million developers while working alongside partners to enhance the integration of AI into an ever-growing array of industries. This widespread utilization not only emphasizes PaddlePaddle's importance but also illustrates its impact on fostering innovation and improving operational efficiency in various applications. Moreover, its continual advancement reflects the dynamic nature of technology and its potential to address emerging challenges in the field.
  • Previous
  • You're on page 1
  • Next