We performed a comparison between kdb Insights and Yellowfin based on real PeerSpot user reviews.Find out what your peers are saying about Tableau, Qlik, Splunk and others in Data Visualization.
kdb Insights brings the small but mighty kdb engine to data scientists and engineers with full support for Docker and Kubernetes and native integration with industry-standard programming languages. It’s the fastest time series analytics engine!
Fully cloud-enabled to operate on AWS, Azure, and GCP as well as on-prem private-cloud environments, kdb Insights allows you to harness the technology that powers Wall Street directly within your cloud services. It lets you modernize your cloud-native analytics stacks and develop transformative machine learning operations (MLOps) pipelines.
With kdb Insights Enterprise Edition – the fastest and most efficient time series analytics engine in the cloud – you can harness the technology that powers Wall Street. With its integrated data management and streaming analytics engine, kdb Insights Enterprise makes it easier for data scientists and analysts to create robust, production-ready data-driven applications. Using an easy-to-use interface, data scientists and business users can work alongside expert coders to design real-time pipelines and dashboards and deploy them into resilient, high-availability, and autoscaling infrastructures.
kdb Insights is ranked 33rd in Data Visualization while Yellowfin is ranked 30th in Data Visualization. kdb Insights is rated 0.0, while Yellowfin is rated 8.0. On the other hand, kdb Insights is most compared with Tableau, whereas Yellowfin is most compared with Microsoft Power BI, Tableau, 9 Spokes and SAP Crystal Reports.
See our list of best Data Visualization vendors.
We monitor all Data Visualization reviews to prevent fraudulent reviews and keep review quality high. We do not post reviews by company employees or direct competitors. We validate each review for authenticity via cross-reference with LinkedIn, and personal follow-up with the reviewer when necessary.