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  • Reference Rating
    4.7 / 5.0
    Customer References84 total
    About

    Embarcadero is committed to providing the industry's broadest and deepest set of software tools for developers, DBAs, and architects. Widely recognized for its award-winning products, Embarcadero enables customers to work more efficiently with the industry's major database platforms, operating systems, frameworks, and programming languages. Embarcadero's heterogeneous tools enable customers to design, build, and run their databases and applications in the environments they choose, free from the constraints, costs, and learning curves associated with multiple platform-specific tools.

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    4.7 / 5.0
    Customer References19 total
    About

    Magnetic is a technology company with a marketing platform for enterprises, brands and agencies. Their ad, email and site solutions help marketers find, keep and bring back customers. These solutions are powered by their unique data including purchase intent data from more than 450,000 partner sites, shopping profiles of over 250 million individuals, and behavioral insights across a billion active devices.

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    4.7 / 5.0
    Customer References72 total
    About

    Ontotext is a global leader in semantic technology and knowledge graph solutions. It helps enterprises lower data management costs by up to 30%, enable data fabric architectures, structure and integrate complex siloed data, making it accessible, interpretable, and reusable. Ontotext is the vendor of GraphDB - a highly scalable and performant RDF database engine used for building knowledge graphs - and a few other distinct products. This makes the company a suitable choice for handling large-scalce datasets, for powerful and cost effective text analysis, and for enterprise knowledge management, where deriving meaning and context from unstructured and semi-structured data is of prime importance.