Data Ladder - WinPure Alternative
- Detect fuzzy, phonetic, and exact match variations for higher accuracy
- Easily scalable to process 2 billion plus records for enterprise use
- Built-in Pattern Designer & Builder for proprietary records validation
- No limits imposed on maximum number of records per project
Customer Stories
See what our customers say...
DataMatch Enterprise was much easier to use than the other solutions we looked at. Being able to automate data cleaning and matching has saved us hundreds of person-hours each year
DataMatch Enterprise is an efficient, effective, and relatively easy to use software
We could not do these reports before. Now, DataMatch has become a main staple in my suite of tools that I work with!
Our Differentiators
DataMatch Enterprise or WinPure – You Choose
Intuitive cleansing & standardization features
Flexible matching options
Choose between, within or all match configurations to define how your data sources should be matched either by searching inter-data matches, matches within each data source, or both. Select exact, fuzzy, numeric or phonetic matching types to detect different types of variations. Easily configure match threshold levels to effect number of false positives.
Data Ladder Solution | DataMatch Enterprise (DME: Desktop) | DataMatch Enterprise + Address Verification (DME + CASS:Desktop) | DataMatch Enterprise (DMES: Server) | DataMatch Enterprise Server + Api (DMES + API:Server) |
---|---|---|---|---|
Fuzzy Matching | Yes(Advanced Weight System, Advanced Algorithms) | Yes(Advanced Weight System, Advanced Algorithms) | Yes(Advanced Weight System, Advanced Algorithms) | Yes(Advanced Weight System, Advanced Algorithms) |
Profiling | Advanced (Pattern Delection and Outlier Monitoring) | Advanced (Pattern Delection and Outlier Monitoring) | Advanced (Pattern Delection and Outlier Monitoring) | Advanced (Pattern Delection and Outlier Monitoring) |
Speed | 1 Million Rec. 10 to 45 Minutes | 1 Million Rec. 5 to 20 Minutes | 1 Million Rec. 5 to 20 Minutes | 1 Million Rec. 5 to 20 Minutes (Web Services - Response Time In Milliseconds) |
Users | 1 Desktop | 1 Desktop | 3 Virtual Machines on 1 server | 3 Virtual Machines on 1 server (Web Services - Response Time In Milliseconds) |
Records | No Imposed Limit(Tested on 50 Million+) | No Imposed Limit(Tested on 50 Million+) | No Imposed Limit(Tested on 100 Million+) | No Imposed Limit(Tested on 1 Billion+) |
Number of Tables | 10+ | 10+ | Unlimited in Theory | Unlimited in Theory |
Upgradable* | YES | YES | YES | NO |
Regex | YES | YES | YES | YES |
Scheduler | YES | YES | YES | YES |
Wordsmith | YES | YES | YES | YES |
Report Building | YES | YES | YES | YES |
Address Verification | NO | YES | YES | YES |
Support | Platinum: Same Day Email/Phone Based Response(Before 4:00 PM EST) | Platinum: Same Day Email/Phone Based Response(Before 4:00 PM EST) | Platinum: Same Day Email/Phone Based Response(Before 4:00 PM EST) | Platinum: Same Day Email/Phone Based Response(Before 4:00 PM EST) |
Training | 2 HRS | 2 HRS | 5 HRS | 10 HRS |
Want to know more?
Check out DME resources
Merging Data from Multiple Sources – Challenges and Solutions
Oops! We could not locate your form.
Address standardization guide: What, why, and how?
Inaccurate and incomplete address data can cause your mail deliveries to be returned. In fact, the US postal service handled 6.5 billion pieces of UAA
What is data integrity and how can you maintain it?
While surveying 2,190 global senior executives, only 35% claimed that they trust their organization’s data and analytics. As data usage surges across various business functions,
Address standardization guide: What, why, and how?
Inaccurate and incomplete address data can cause your mail deliveries to be returned. In fact, the US postal service handled 6.5 billion pieces of UAA
What is data integrity and how can you maintain it?
While surveying 2,190 global senior executives, only 35% claimed that they trust their organization’s data and analytics. As data usage surges across various business functions,
Guide to data survivorship: How to build the golden record?
92% of organizations claim that their data sources are full of duplicate records. To make things worse, valuable information is present in every duplicate that
ready? let's go
Try now or get a demo with an expert!
"*" indicates required fields