Get to know us
About Data Ladder
- Pinpoint Matching Accuracy
- Real-Time Processing
- US & CA Address Verification
- ZIP+4 Level Geocoding
- User-Friendly Interface
- Hands-On Support
Our History
Delivering 15+ years’ worth of industry experience
Based out of Suffield, Connecticut, Data Ladder has relentlessly pursued to fulfill market needs for high-precision data quality and matching.
With over 15 years in product installations across government, financial services, education, and marketing verticals, Data Ladder’s matching prowess and rapid time-to-value has successfully delivered modern data cleansing, address verification, and entity resolution projects. This has enabled Data Ladder to serve large Fortune 500 companies such as Deloitte, GE and HP, government institutions such as USDA and Department of Transportation, and small to mid-sized startups.
Our Values
What do we care about?
Integrity
We pride ourselves on offering solutions based on expertise and industry experience.
Trust
Our teams work closely with clients to understand their unique challenges and deliver accordingly.
Scalability
We equip you with the solutions to accelerate your operations and long-term profitability
Employees
Our employees are the foundation of our success and the secret to achieving higher milestones.
There’s more
Where are we headed?
We firmly believe in the importance of keeping our ear close to the ground to learn from our experiences and continually refine and optimize our product offering to address current and upcoming data quality and matching challenges.
At Data Ladder, we aim to embed and harness the power of AI to tailor our solutions for complex matching environments without compromising simplicity in usability and time to value.
Customer Stories
Still unsure? See what others are saying…
Want to know more?
Check out DME resources
Merging Data from Multiple Sources – Challenges and Solutions
Oops! We could not locate your form.
The Truth About Data as a Service (DaaS): Why It All Breaks Without Data Matching
Everyone’s Talking About DaaS, Few Are Ready for It The concept of Data as a Service (DaaS) is having its moment. On paper, it’s easy
Big Data Analytics Is Booming – But Is Your Data Ready for It?
Amazon generates 35% of its revenue from data-powered recommendations. Netflix enjoys an 89% retention rate by personalizing every experience using viewer behavior, preferences, and interaction
The Truth About Data as a Service (DaaS): Why It All Breaks Without Data Matching
Everyone’s Talking About DaaS, Few Are Ready for It The concept of Data as a Service (DaaS) is having its moment. On paper, it’s easy
Big Data Analytics Is Booming – But Is Your Data Ready for It?
Amazon generates 35% of its revenue from data-powered recommendations. Netflix enjoys an 89% retention rate by personalizing every experience using viewer behavior, preferences, and interaction
Data Ethics in the Age of AI: Why Responsible Matching Matters More Than Ever
When AI systems deliver inaccurate or inequitable results, many people immediately assume that something went wrong in the algorithms. Rarely do we look upstream –
ready? let's go
Try now or get a demo with an expert!
"*" indicates required fields