Best Data Engineering Tools for Apache Cassandra

Find and compare the best Data Engineering tools for Apache Cassandra in 2024

Use the comparison tool below to compare the top Data Engineering tools for Apache Cassandra on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Kestra Reviews
    Kestra is a free, open-source orchestrator based on events that simplifies data operations while improving collaboration between engineers and users. Kestra brings Infrastructure as Code to data pipelines. This allows you to build reliable workflows with confidence. The declarative YAML interface allows anyone who wants to benefit from analytics to participate in the creation of the data pipeline. The UI automatically updates the YAML definition whenever you make changes to a work flow via the UI or an API call. The orchestration logic can be defined in code declaratively, even if certain workflow components are modified.
  • 2
    Molecula Reviews
    Molecula, an enterprise feature store, simplifies, speeds up, and controls big-data access to power machine scale analytics and AI. Continuously extracting features and reducing the data dimensionality at the source allows for millisecond queries, computations, and feature re-use across formats without copying or moving any raw data. The Molecula feature storage provides data engineers, data scientists and application developers with a single point of access to help them move from reporting and explaining with human scale data to predicting and prescribing business outcomes. Enterprises spend a lot of time preparing, aggregating and making multiple copies of their data before they can make any decisions with it. Molecula offers a new paradigm for continuous, real time data analysis that can be used for all mission-critical applications.
  • 3
    witboost Reviews
    witboost allows your company to become data-driven, reduce time-to market, it expenditures, and overheads by using a modular, scalable and efficient data management system. There are a number of modules that make up witboost. These modules are building blocks that can be used as standalone solutions to solve a specific problem or to create the ideal data management system for your company. Each module enhances a specific function of data engineering and can be combined to provide the perfect solution for your specific needs. This will ensure a fast and seamless implementation and reduce time-to market, time-to value and, consequently, the TCO of your data engineering infrastructure. Smart Cities require digital twins to anticipate needs and avoid unforeseen issues, gather data from thousands of sources, and manage telematics that is ever more complicated.
  • Previous
  • You're on page 1
  • Next