Sparkling Water

Sparkling Water

Sparkling Water is an innovative machine learning software that integrates H2O’s scalable algorithms with Spark’s robust capabilities. It enables users to deploy custom AI models, monitor performance, and ensure compliance through a no-code interface. Designed for flexible on-premises and cloud environments, it empowers organizations to extract valuable insights and enhance decision-making processes efficiently.

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Top Sparkling Water Features

  • End-to-end GenAI platform
  • On-premises or cloud deployments
  • Own your data and prompts
  • Fully scalable with K8s
  • Customizable open-source AI models
  • No-code fine-tuning for LLMs
  • Open weight SLMs for offline applications
  • Automated testing and bias detection
  • Explainability and failure analysis
  • AI-powered data labeling
  • Low-code AI app development
  • Integration with Spark SQL
  • Distributed in-memory computing
  • Predictive insights for decision making
  • 24/7 enterprise support
  • Fast and accurate model deployment
  • Use case customization options
  • Democratizing AI for enterprises
  • Model hosting and monitoring
  • Seamless interoperability between tools.