Coresignal vs Xverum
See how Coresignal compares to Xverum in 10 criteria.
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Features | Coresignal | Xverum |
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Data statistics |
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Number of sources | 20 | Unspecified |
Discovery | 18M+ new records discovered monthly | Unspecified |
Data freshness | 685M+ records checked for updates monthly | Unspecified |
Delivery frequency | Daily, weekly, monthly, quarterly | Unspecified |
Data formats |
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|
Delivery methods |
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In-line with GDPR/CCPA | Unspecified | |
AI-enriched data | Unspecified | |
Historical data | Yes (5+ years) | Yes (years unspecified) |
The comparison provided herein is based on public data available as of May 3, 2024. All users should verify the current status of products, services, or offerings before relying on any comparative information.
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The precision of big data is paramount. Any inaccuracies can lead to significant time and financial losses. To mitigate these risks, it's essential to rigorously evaluate the data's relevance and quality before making a purchase.
Coresignal's data solutions
Database API
Search and enrich with direct access to a large-scale database.
How to select a reliable data provider?
Coverage and freshness
The number of data records and locations represent the technical capabilities of the data vendor. However, data freshness is just as important. Refreshing data in a systematic way that brings the most value to the clients requires and experienced team that can develop the necessary infrastructure and processes.
Communication
A reliable data provider will give you all the relevant information about data quality, fill rates, data structure, and features mentioned above before and after you purchase. At Coresignal, clients are supported by dedicated account managers and get prompt technical support.
Resources for testing
It's essential to test and see if the data you’re getting from the provider meets your business needs and expectations. We encourage you to share what information is needed to properly evaluate our datasets or APIs.