AI Data Engines


Associate two data sets based on a commonality such as time or date.

Correlation runs on the aiWARE Enterprise AI platform, which orchestrates a diverse ecosystem of ready-to-deploy machine learning models to transform audio, video, text, and other data sources into actionable intelligence, at scale, with no AI expertise. With aiWARE, leverage digital workers to save manual review time, gain valuable data insights, and cognitively enrich end-to-end workflows.

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The Veritone correlation — also known as data correlation — engines associate structured datasets with audio and video files based on some commonality, such as temporal or location co-occurrence, for keywords, geography, tags, demographic data, and radio logs to produce a cohesive structured output. For example, television ratings data can be correlated to broadcasts; website visitor data can be correlated to radio advertising; and sports score data can be correlated to game broadcast archives. This correlation enhances search capabilities.

Correlation Features:

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    Custom Structured Data Schemas

    Create custom data schemas via the Veritone aiWARE Developer application for processing of most proprietary structured data sets.

  • Searchable Results

    Identify the keywords, tags, geographic location, and more you are looking for quickly within correlated data with searchable correlation engine output via API and Veritone applications.

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    Near Real-Time Processing

    Process unstructured and structured data in near real-time for use cases requiring quick correlation.

  • Flexible Deployment

    Deploy in a new or integrate into an existing application in the cloud via aiWARE GraphQL APIs, or with a subset that can be deployed on-premise via a Docker container. Learn more.

  • Powered by Advanced Machine Learning

    Leverage advanced geolocation machine learning algorithm from the Veritone data science team.

Experience the power of hundreds of AI engines across 20+ cognitive categories.