Twitter
youtube
Discord
Contact us
Menu
Forums
New posts
Trending
Rules
Explore
Bioenergetic Wiki
Bioenergetic Life Search
Bioprovement Peat Search
Ray Peat Interviews by Danny Roddy
Master List: Ray Peat, PhD Interviews & Quotes by FPS
Traveling Resources
Google Flights
Wiki Voyage
DeepL Translator
Niche
Numbeo
Merch
Log in
Register
What's new
Search
Search
Search engine:
Threadloom Search
XenForo Search
Search titles only
By:
New posts
Trending
Menu
Log in
Register
Navigation
More options
Light/Dark Mode
Contact us
Close Menu
Forums
Information
World News
Show HN: Cito – Actionable data observability for data teams
JavaScript is disabled. For a better experience, please enable JavaScript in your browser before proceeding.
You are using an out of date browser. It may not display this or other websites correctly.
You should upgrade or use an
alternative browser
.
Reply to thread
Message
<blockquote data-quote="Hacker News" data-source="post: 74160" data-attributes="member: 365"><p>Hi HN! We’re Clemens and Felix from Cito - thrilled to show you what we’ve built to help data engineers stay on top of data quality issues. Think Datadog meets Incident.io.</p><p>Tests in dbt are great when checking whether specific expectations are true, but don’t work well for use cases where data patterns may change over time. When relying on testing alone, data teams regularly face situations where business stakeholders identify data issues in dashboards first, eroding trust. In such situations, understanding the implications of an issue and debugging can be a very manual and time-consuming process.</p><p>To help data engineers ensure trust in data, Cito makes it easy to go beyond simple tests. By executing scheduled or near real-time out-of-the-box anomaly detection tests (row count, schema change, etc.) or custom SQL tests, data anomalies are detected and communicated in the context of the relevant column-level lineage via Slack.</p><p>We believe data observability solutions should not stop at alerting teams to anomalies and our ambition is to support the complete end-to-end workflow of data engineers. Leveraging column-level lineage, our solution makes it straightforward to understand the context of anomalies. In addition, by automatically providing transparency in a git-blame-like fashion around ownership of data models and showing who made changes most recently, Cito helps to accelerate internal communications when troubleshooting.</p><p>We’re super keen to hear your thoughts, ideas and experiences! You can also use our docs to try Cito in less than 15 min.</p><p></p><hr /><p></p><p>Comments URL: <a href="https://news.ycombinator.com/item?id=33521894" target="_blank">https://news.ycombinator.com/item?id=33521894</a></p><p></p><p>Points: 8</p><p></p><p># Comments: 0</p><p></p><p><a href="https://www.citodata.com" target="_blank">Continue reading...</a></p></blockquote><p></p>
[QUOTE="Hacker News, post: 74160, member: 365"] Hi HN! We’re Clemens and Felix from Cito - thrilled to show you what we’ve built to help data engineers stay on top of data quality issues. Think Datadog meets Incident.io. Tests in dbt are great when checking whether specific expectations are true, but don’t work well for use cases where data patterns may change over time. When relying on testing alone, data teams regularly face situations where business stakeholders identify data issues in dashboards first, eroding trust. In such situations, understanding the implications of an issue and debugging can be a very manual and time-consuming process. To help data engineers ensure trust in data, Cito makes it easy to go beyond simple tests. By executing scheduled or near real-time out-of-the-box anomaly detection tests (row count, schema change, etc.) or custom SQL tests, data anomalies are detected and communicated in the context of the relevant column-level lineage via Slack. We believe data observability solutions should not stop at alerting teams to anomalies and our ambition is to support the complete end-to-end workflow of data engineers. Leveraging column-level lineage, our solution makes it straightforward to understand the context of anomalies. In addition, by automatically providing transparency in a git-blame-like fashion around ownership of data models and showing who made changes most recently, Cito helps to accelerate internal communications when troubleshooting. We’re super keen to hear your thoughts, ideas and experiences! You can also use our docs to try Cito in less than 15 min. [HR][/HR] Comments URL: [URL]https://news.ycombinator.com/item?id=33521894[/URL] Points: 8 # Comments: 0 [url="https://www.citodata.com"]Continue reading...[/url] [/QUOTE]
Loading…
Insert quotes…
Verification
Post reply
Forums
Information
World News
Show HN: Cito – Actionable data observability for data teams
This site uses cookies to help personalise content, tailor your experience and to keep you logged in if you register.
By continuing to use this site, you are consenting to our use of cookies.
Accept
Learn more…
Top