Protocols

Good data, always

Take control of your data quality with intuitive data cleaning features and real-time validation built for enterprise scale.

Thank you, you're all set!

We'll get back to you shortly. For now, you can create your workspace by clicking below.

Illustration: Complete data collected across the entire customer journey
Illustration: Complete data collected across the entire customer journey

Create a shared data dictionary

Align all the teams in your company around a single data dictionary.

Illustration: Single source of truth

Diagnose data quality issues

Automate the QA process

Manually testing your tracking code is time consuming and doesn’t always catch every incorrect property or data type. With automatic Data Validation, you can audit your implementation in minutes.

Have confidence making decisions with clean data

Most companies detect issues after their team has used bad data to make decisions or trigger campaigns. Quickly take action on every invalid event with in-app reporting and daily email digests.

Illustration: Powerful integrations

Trusted by startups and the 

world's largest companies

“Until we started standardizing our data, people didn’t realize how messy it had become. With Protocols, we can be confident that data quality issues don’t happen anymore.”

Colin Furlong Data Operations & Tracking
75%
Reduction in duplicate or extraneous tracked events

“Protocols provides the context my teams need to effectively use our customer data in campaigns and analyses.”

Akshay Singh Former extended & Product Analytst
93%
Reduction in time to detect data issues

Frequently asked questions

Data cleansing is the process of ensuring data is complete, accurate, and reliable so that it can be used for analysis, decision-making, and reporting. Data cleansing includes correcting outdated or missing information, applying standardized naming conventions to data entries for consistency, deduplicating events, recording data transformations for transparency, and more.

Without properly cleaning data, organizations run the risk of basing strategies and campaigns off inaccurate or misleading information. Duplicate data entries, incomplete fields, and inconsistent naming conventions are common culprits behind “bad data,” which can cost businesses millions of dollars each year in misguided insights and poor decision-making.

Getting started is easy

Start connecting your data with Segment.