MARKET ENGAGEMENT on behalf of NHS CFA- Advanced Analytical Data Science Capability to Counter Fraud in the NHS - Delivery Partner
A Pre-Procurement Notice
by NHS SHARED BUSINESS SERVICES
- Source
- Contracts Finder
- Type
- Future Contract ()
- Duration
- not specified
- Value
- ___
- Sector
- TECHNOLOGY
- Published
- 28 Sep 2023
- Delivery
- not specified
- Deadline
- 09 Oct 2023 22:59
Concepts
Location
1 buyer
- NHS Shared Business Services Salford
Description
It is the NHSCFA's intention to use advanced analytical techniques underpinned by data science including machine learning, together with the integration of technology to not only help stop known frauds but predict and uncover those that have yet to occur or those that have yet to be reported or observed. By creating a data science technological capability and utilising the copious amount of data captured each day in the NHS. Harnessing the power of expertise, then actionable outcome through an evidence-based data science approach to fraud detection will not only identify novel patterns of concern but unlock the value of data meaning abuse can be detected earlier in turn protecting NHS funds from fraud. The inclusion of fraud detection techniques will also highlight patterns in data that will identify previously unseen fraud trends, therefore improving the time to action. The requirement is to secure a partner to build our advanced analytical capability and data environment. We require a partner who has supported organisations drive forward innovative data analysis to counter fraud. They will support NHSCFA to become a Centre of Excellence for analytical fraud detection and pattern identification. We are looking to start the project in October 2023 and deliver the objectives of the project by the end of March 25 Please refer to the full draft specification document for details.
CPV Codes
- 72316000 - Data analysis services
Indicators
- Contract is suitable for SMEs.
Other Information
Please access the procurement portal using the link https://discovery.ariba.com/rfx/17577460 to respond to the Market Engagement Questionnaire(MEQ) https://discovery.ariba.com/rfx/17577460
Reference
- WS1645793959
- CF cee8d817-0665-46b8-8d6d-2a958762f716