AI is moving fast—but many enterprises are stuck in neutral. Not because they lack ambition or compute, but because their data can’t be trusted at scale.
According to industry studies, over 70% of AI initiatives stall before reaching production—not because models fail, but because the data beneath them is incomplete, misaligned, or opaque. This is where data observability comes in.
Today, data observability has evolved from a niche discipline into a foundational enabler of AI success. And C-suite leaders are starting to realize: if your pipelines aren’t observable, your predictions aren’t reliable.
Data observability brings DevOps-like intelligence to enterprise data systems. It empowers teams to detect pipeline anomalies, monitor data quality in real-time, and understand lineage across distributed environments. In an AI-driven world, this isn’t a luxury—it’s a requirement.
Yet many organizations still treat data quality as an afterthought—relying on static rules or retrospective audits to catch issues. That doesn’t work anymore.
A missing feed from an IoT sensor. A silent schema drift from a partner integration. A broken DAG in an ETL job that no one noticed for 3 days. These aren’t rare incidents—they’re everyday realities. And they’re why even the best machine learning models underperform in production.
At ACI Infotech, we bring a deep, real-world understanding of what data observability truly demands in enterprise environments. Our approach combines:
Our experience spans sectors where data precision is paramount—from retail logistics and omnichannel commerce to healthcare systems managing regulated patient data.
ACI’s expertise, working with Dynatrace elevates our observability stack with real-time analytics, full-stack telemetry, and AI-assisted insights. We integrate Dynatrace’s Davis AI engine to:
Whether you're operating in AWS, Azure, Snowflake, Databricks, or hybrid environments, ACI and Dynatrace deliver a unified observability fabric built for complexity.
When a Fortune 500 retailer partnered with ACI Infotech, their AI-driven demand forecasting engine was only as accurate as the data feeding it. An anomaly detection alert flagged a drop in product scan rates at several major distribution centers—caused by a failing IoT stream.
Without observability, the issue would have silently degraded forecast accuracy, triggering millions in lost revenue. But with real-time monitoring, the client detected and corrected the anomaly within hours—before decisions based on bad data could ripple through the business.
The New Playbook for Data Leadership
If data is the foundation of your AI strategy, observability is the blueprint that ensures it holds.