Team Name | Scrappy Number 2 |
Track | Banking |
Use Case | Automation of our Loan Approval and Underwriting Processes. We want to leverage OCR to scrape text from various underwriting documents, use data quality and match codes for matching, improve banking transaction parsing and improve our time to fund. |
Technology |
Open Source OCR SAS Visual Text Analytics SAS VDMML SAS Intelligent Decisioning HTTP,XML,JSON packages |
Region |
Toronto, Ontario, Canada |
Team Members |
Elmar Taghizade - Risk and Analytics Dorrian Khouri - Real Estate and PM Crysi Popowich - Channel Enablement Alicia Liberty - Central Loan Approval Guilherme Ferreira - Channel Enablement and Insights Namrata Ail - Channel Enablement Surya Surya - Risk and Analytics Katelyn Paterson - Central Loan Approval John Jonkman - Central Loan Approval |
Is your team interested in participating in an interview? | Yes |
Optional: Expand on your technology expertise |
SAS 9.x - 10 Years SAS 3.5 - 3 Years Python - Varied |
Pitch Video:
Jury Video:
Hard to make loan approval process that would be approved by models very difficult. Also the government requests models used and developed. Internal validation teams also run validations but have a limited time as well.