List of HEAVY.AI Integrations
This is a list of platforms and tools that integrate with HEAVY.AI. This list is updated as of September 2025.
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Tableau is a powerful and versatile analytics platform that enables organizations to transform their data into valuable insights, supporting better decision-making at all levels. With the introduction of Tableau Next, businesses can now take advantage of agentic analytics, powered by AI, to uncover deeper insights and make faster, more informed decisions. Whether deployed in the cloud, on-premises, or natively within Salesforce CRM, Tableau integrates seamlessly with various data sources, providing a unified experience that ensures data accuracy, governance, and management. The platform’s AI and machine learning capabilities allow users to predict trends, optimize workflows, and identify key business opportunities in real-time. Tableau’s visual storytelling and intuitive interface make it easy for analysts and business leaders to explore data, share insights, and drive action. Tableau fosters a Data Culture within organizations, helping to accelerate innovation and improve operational efficiency. With solutions tailored to analysts, IT leaders, business executives, and developers, Tableau empowers everyone in an organization to make data-driven decisions that drive business growth and improve customer outcomes.
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Hadoop
Apache Software Foundation
Empowering organizations through scalable, reliable data processing solutions.The Apache Hadoop software library acts as a framework designed for the distributed processing of large-scale data sets across clusters of computers, employing simple programming models. It is capable of scaling from a single server to thousands of machines, each contributing local storage and computation resources. Instead of relying on hardware solutions for high availability, this library is specifically designed to detect and handle failures at the application level, guaranteeing that a reliable service can operate on a cluster that might face interruptions. Many organizations and companies utilize Hadoop in various capacities, including both research and production settings. Users are encouraged to participate in the Hadoop PoweredBy wiki page to highlight their implementations. The most recent version, Apache Hadoop 3.3.4, brings forth several significant enhancements when compared to its predecessor, hadoop-3.2, improving its performance and operational capabilities. This ongoing development of Hadoop demonstrates the increasing demand for effective data processing tools in an era where data drives decision-making and innovation. As organizations continue to adopt Hadoop, it is likely that the community will see even more advancements and features in future releases. -
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NVIDIA RAPIDS
NVIDIA
Transform your data science with GPU-accelerated efficiency.The RAPIDS software library suite, built on CUDA-X AI, allows users to conduct extensive data science and analytics tasks solely on GPUs. By leveraging NVIDIA® CUDA® primitives, it optimizes low-level computations while offering intuitive Python interfaces that harness GPU parallelism and rapid memory access. Furthermore, RAPIDS focuses on key data preparation steps crucial for analytics and data science, presenting a familiar DataFrame API that integrates smoothly with various machine learning algorithms, thus improving pipeline efficiency without the typical serialization delays. In addition, it accommodates multi-node and multi-GPU configurations, facilitating much quicker processing and training on significantly larger datasets. Utilizing RAPIDS can upgrade your Python data science workflows with minimal code changes and no requirement to acquire new tools. This methodology not only simplifies the model iteration cycle but also encourages more frequent deployments, which ultimately enhances the accuracy of machine learning models. Consequently, RAPIDS plays a pivotal role in reshaping the data science environment, rendering it more efficient and user-friendly for practitioners. Its innovative features enable data scientists to focus on their analyses rather than technical limitations, fostering a more collaborative and productive workflow.
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