Data Culpa (@dataculpa) 's Twitter Profile
Data Culpa

@dataculpa

We make data observability fast and easy for any data pipeline, warehouse, or lake or file system. #dataobservability #dataengineering #dataquality

ID: 1141750341509287938

linkhttp://www.dataculpa.com calendar_today20-06-2019 16:51:08

169 Tweet

95 Followers

315 Following

Data Culpa (@dataculpa) 's Twitter Profile Photo

We love MongoDB's flexibility and ease of use. But that flexibility can create challenges with data schemas. Here's a look at the problem and how to fix it. dataculpa.com/blog/mongodbs-… #data #dataengineering #dataquality #datascience #mongodb

Data Culpa (@dataculpa) 's Twitter Profile Photo

Data meshes create new challenges for #dataquality monitoring and #observability #dataengineering #datamesh #datapipeline #datawarehouse dataculpa.com/blog/data-mesh…

Data Culpa (@dataculpa) 's Twitter Profile Photo

Data Culpa receives our first issued patent for monitoring data quality in data pipelines and databases. Here's our announcement. dataculpa.com/blog/data-culp… #AI #BI #data #databases #dataengineering #dataquality #datascience #patent #observability

Rugg (@rd_rugg) 's Twitter Profile Photo

Bad quality data is worse than no data: ML models will do wrong predictions. Dashboards will show wrong metrics. Still data quality, monitoring and observability are not treated as priorities in many companies. #DataScience

Data Culpa (@dataculpa) 's Twitter Profile Photo

Data Culpa receives a patent for monitoring data quality in data pipelines and databases. Here's our announcement. dataculpa.com/blog/data-culp… #AI #BI #data #databases #dataengineering #dataquality #datascience #patent #observability

Data Culpa (@dataculpa) 's Twitter Profile Photo

Want to monitor data without getting deluged with meaningless alerts? Try monitoring against a relative baseline. dataculpa.com/blog/effective… #AI #data #dataengineering #datamonitoring #dataops #dataquality #datascience #MLOps

Jordan Ellenberg (@jsellenberg) 's Twitter Profile Photo

Explained in class today that delta means a small positive number you choose and epsilon means a small positive number your enemy chooses.

SeattleDataGuy (@seattledataguy) 's Twitter Profile Photo

THEY'RE CALLED DATA CONTRACTS THEY'RE API-LIKE AGREEMENTS BETWEEN THE SOFTWARE ENGINEERS WHO OWN THE SERVICES AND THE DATA CONSUMERS THAT RELY ON THEM. IT'LL ALLOW THE SWES TO WORRY LESS ABOUT BREAKING PRODUCTION DATA PIPELINES AND HELP THE DATA TEAM MOVE AWAY FROM FIXING IN SQL

THEY'RE CALLED DATA CONTRACTS THEY'RE API-LIKE AGREEMENTS BETWEEN THE SOFTWARE ENGINEERS WHO OWN THE SERVICES AND THE DATA CONSUMERS THAT RELY ON THEM. IT'LL ALLOW THE SWES TO WORRY LESS ABOUT BREAKING PRODUCTION DATA PIPELINES AND HELP THE DATA TEAM MOVE AWAY FROM FIXING IN SQL
Data Culpa (@dataculpa) 's Twitter Profile Photo

The best #dataquality monitoring for busy data teams relies on relative baselines, not rigid unit tests. Here's why. #AI #BI #dataengineering #datascience #MLOPs #observability dataculpa.com/blog/effective…

Data Culpa (@dataculpa) 's Twitter Profile Photo

Data mesh architectures are on the rise, but they create special challenges for #dataquality #monitoring. Is your data team ready to address them? #data #dataengineering #datamesh #datascience #observability dataculpa.com/blog/data-mesh…

Data Culpa (@dataculpa) 's Twitter Profile Photo

To make #datacontracts work, you need to agree on what's really important in a #datapipeline. Keeping track of #datacontext can help. #dataengineering #datascience dataculpa.com/blog/data-cont…

Data Culpa (@dataculpa) 's Twitter Profile Photo

Data teams expect a lot of their data. In fact, it's possible to even identify a #dataquality hierarchy of needs. #dataengineering #datamanagement #datascience dataculpa.com/blog/the-data-…

Data Culpa (@dataculpa) 's Twitter Profile Photo

For data teams to deliver #dataproducts that meet the needs of their customers according to #datacontracts, they need to consider context. Here's why. #data #dataengineering #datascience #enterpriseIT dataculpa.com/blog/data-cont…

Data Culpa (@dataculpa) 's Twitter Profile Photo

Looking for help with #FinOps and cloud cost-cutting? Our new Streamliner service can help. #cloud #cloudops #dataengineering #datawarehouses #snowflakedb dataculpa.com/blog/streamlin…

Data Culpa (@dataculpa) 's Twitter Profile Photo

Most data observability products fall short. Here's why. #data #dataengineering #datamonitoring #observability dataculpa.com/blog/where-mos…

Gergely Orosz (@gergelyorosz) 's Twitter Profile Photo

Here are a few trends I am observing, from talking to a few people: - Optimize cloud spending bill: understand where things can be cut down, identify waste - Optimize logging provider spend. Basically: stop logging stuff that doesn't matter - Review pricing of eg pager systems

Data Culpa (@dataculpa) 's Twitter Profile Photo

Optimizing cloud expenses helps free money for new investments in AI and other IT ventures. Another reason to adopt #FinOps. #AI #cloud #strategy streamliner.biz/blog/how-finop…

Jamin Ball (@jaminball) 's Twitter Profile Photo

Seems to be 2 main headwinds in software currently: 1) new bookings slowing due to macro 2) Optimizations (everything from lowering AWS / Azure / GCP, Snow, DataDog, etc bills, to cutting / consolidating vendors) 1 will last until macro turns around. But how about 2?