Starting at $5,998 per year Monitor up to 5 databases
View PricingOverview
What is DQO.ai?
DQO.ai is a DataOps data observability tool with customizable data quality checks and data quality dashboards. According to the vendor, data observability is a way to define data quality rules to monitor ingestion tables. DQO users can detect schema changes,…
Recent Reviews
Leaving a review helps other professionals like you evaluate Data Quality Software
Be the first one in your network to review DQO.ai, and make your voice heard!
Get StartedPricing
Entry-level set up fee?
- No setup fee
For the latest information on pricing, visithttps://dqo.ai/pricing
Offerings
- Free Trial
- Free/Freemium Version
- Premium Consulting/Integration Services
Starting price (does not include set up fee)
- $5,998 per year Monitor up to 5 databases
Product Details
- About
- Competitors
- Tech Details
- FAQs
What is DQO.ai?
DQO.ai is a DataOps data observability tool with customizable data quality checks and data quality dashboards. According to the vendor, data observability is a way to define data quality rules to monitor ingestion tables. DQO users can detect schema changes, data format changes, missing data or inconsistent delays in the data delivery.
DQO.ai enables users to observe the quality of all databases in one place. The user can connect all data sources to DQO.ai and monitor the same quality measures. Detect Data Quality issues from multiple angles by monitoring all popular data quality dimensions like validity, availability, reliability, timeliness, uniqueness, reasonability, completeness, and accuracy.
DQO.ai is a second generation Data Observability tool that was designed after enabling thousands of Data quality checks. The vendor states DQO.ai was redesigned to meet both the requirements of data engineering teams and data science teams. The Data Quality and Data Observability should be simple enough that the benefits overcome any initial learning challenges.
Users can detect data format and data ranges issues in source data before the data pipeline fails on the transformation steps. Validity checks like the data format, not null, data ranges or uniqueness checks are defined for each source table. Data Quality checks are executed after the source data was loaded into ingestion tables. DQO.ai helps to make data quality issues easy to understand.
DQO.ai is a second generation Data Observability tool that was designed after enabling thousands of Data quality checks. The vendor states DQO.ai was redesigned to meet both the requirements of data engineering teams and data science teams. The Data Quality and Data Observability should be simple enough that the benefits overcome any initial learning challenges.
DQO.ai Competitors
DQO.ai Technical Details
Operating Systems | Unspecified |
---|---|
Mobile Application | No |
Frequently Asked Questions
DQO.ai is a DataOps data observability tool with customizable data quality checks and data quality dashboards. According to the vendor, data observability is a way to define data quality rules to monitor ingestion tables. DQO users can detect schema changes, data format changes, missing data or inconsistent delays in the data delivery.
DQO.ai starts at $5998.
Bigeye Data Observability Platform, Monte Carlo, and Great Expectations are common alternatives for DQO.ai.