Transforming SaaS DLP

DoControl Redefines SaaS DLP with Powerful New Enhancements
Get a Demo

The Problem with Legacy DLP

Today’s DLP tools are broken. They’re bloated, expensive, and plagued by poor accuracy, performance bottlenecks, and an avalanche of false positives. Worse, they lack identity context and real-time adaptability - failing to protect data in dynamic, cloud-native SaaS environments.

Traditional DLP inspects content in isolation, using rigid rulesets and generic engines. It misses the who, why, and how - leading to compliance gaps, alert fatigue, and operational friction for security teams.

DoControl's Cutting-Edge, Identity-Aware DLP

DoControl reimagines DLP for the SaaS-first enterprise. We focus on precision, automation, and context-rich protection - powered by integrations with IdPs, HRIS, and deep SaaS visibility. Our “Just-in-Time” scanning model ensures maximum coverage with minimal disruption.

No agents. No slow network taps. No guesswork.

Now Launching

Advanced Data Scanning in Workflows

Our most powerful DLP upgrade yet - a unified, scalable “Data Scan” Workflow step that leaps far beyond PII/regex detection:

200+ data classifiers

(up from 33) to detect secrets, financials, PHI, IP, and more

Intelligent match context

exact matches with offsets, masked snippets, and surrounding text

OCR for images

scan contracts, IDs, screenshots and expand data visibility dramatically

Categorized findings

Security, PII, Finance, etc., for faster triage

Compliance drift detection

map findings to standards like SOC 2, HIPAA, ISO

 Custom regex and match rules

stop after X matches, set thresholds, tune as needed

 Confidence scoring

match probability for smarter decisions

Unified UX

one powerful step replaces multiple clunky ones, drastically improving usability

A New Era of SaaS-Aware DLP

With this launch, DoControl is not just closing the gaps of traditional DLP - we’re opening a new frontier. Deep scanning, smarter signals, and tighter controls - delivered with surgical precision, not noise.