ベンダー
English

STATEMENT :Cash Intelligence Platform ーAIを活用した常時稼働の流動性管理

Create a vendor selection project
Click to express your interest in this report
Indication of coverage against your requirements
A subscription is required to activate this feature. Contact us for more info.
Celent have reviewed this profile and believe it to be accurate.
We are waiting for the vendor to publish their solution profile. Contact us or request the RFX.
Projects allow you to export Registered Vendor details and survey responses for analysis outside of Marsh CND. Please refer to the Marsh CND User Guide for detailed instructions.
Download Registered Vendor Survey responses as PDF
Contact vendor directly with specific questions (ie. pricing, capacity, etc)
2024/09/30

Abstract

Historically, banks have faced challenges providing comprehensive cash position and forecasting solutions due to limited access to transaction data restricted to their own institution. To overcome this limitation, Celent suggests exploring various solution providers and partnership models tailored to the specific needs of each bank and client segment. Providers like Statement stand out for banks seeking to serve the needs of multi-banked corporate clients with leading-edge AI-enabled cash intelligence tools.

Statement is an AI-powered financial platform that connects and enriches multi-bank and ERP data to enable applications including global liquidity reporting, real-time cash-flow forecasting, automated A/R reconciliation, and payments. Statement began its journey by re-imagining corporate-to-bank connectivity with a flexible approach that allows them to connect to any bank or ERP using APIs, SFTP, or screen-scraping. They also built a generic model that can make sense of raw transaction and accounting data, making it available both within Statement and through the customer’s corporate ERP. Since then, the solution has transformed into a cash intelligence platform and integration hub, enabling a single, cohesive view of a corporate client’s financial health in real-time.