Most businesses depend on good, relevant, and reliable data. However, it is easy to lose sight of where your data is flowing, being transformed, or split along pipelines, particularly in more complex data systems.
Data observability is introduced to provide visibility and understanding into your data environment. Not sure if your company requires it? These are the seven indicators that it is time to invest in data observability.
How to Know When Your Business Needs Data Observability
Data observability measures will track the health of data in real-time. Here are some signs that your business requires some data observability.
Common problems of data quality
The fact that your team repeatedly has to cope with lost records, duplicates, or inconsistency alerts is concerning. This is because poor data quality hinders the decision-making process, and costly business mistakes can be incurred. Interestingly, data observability will ensure that you can spot problems and resolve them before they become critical.
Greater pipeline ruptures
Do your data pipelines break in an unpredictable process? In case analysts or engineers frantically rush out to figure out the reason a report went down or a dashboard stopped receiving updates, then you are working in a reactive mode.
Observability of data facilitates proactive alerting and root cause analysis, which minimizes downtime in the system and maximizes reliability.
Long incident response times
When something goes wrong, does it require taking hours and even days to find the root cause of the issue? Poor visibility also implies time-wasting as teams go through logs and scripts.
You will have a unified understanding of your pipelines and data lineage, making troubleshooting much quicker with data observability.
Trust deficit in reporting
People wondering about the validity of dashboards or any Analytics reports will lead to a loss of trust in your data organization. Data observability establishes trust in your data products because it consistently monitors the schema changes, anomalies, and freshness.
Scaling challenges
The more your business expands, the more complicated your data ecosystem becomes. The more sources, pipelines, and users there are, the higher the incidence of blind spots.
Data observability is what is needed to deliver that scalability to stay within a sprawling architecture and offer performance and reliability.
Data siloes and mistaken property
With the various areas of data siloed and lacking communication and governance, errors may be caught outside. Data observability enables an integrated perspective, which spurs cooperation and responsibility among teams.
Regulatory and compliance risks
Sectors such as the finance and health sectors have data compliance. It is hard to use data lineage and audit without observability. Compliance occurs through observability tools that give traceability and documentation in audits that are based on regulations.
Conclusion
When one or more of these warning signs sound familiar to your organization, it may be time to consider data observability solutions.
More than simply repairing damaged pipelines, observability guarantees quality of data, instills confidence, and enables your business to make informed decisions based on data. Finally, you should visit a data expert like Sifflet to help you organize your system.