Award

Data Discovery - Artificial intelligence (AI) strategy and digital transformation

SERIOUS FRAUD OFFICE

This public procurement record has 1 release in its history.

Award

06 Sep 2021 at 15:29

Summary of the contracting process

The Serious Fraud Office (SFO) has completed a tender titled "Data Discovery - Artificial intelligence (AI) strategy and digital transformation" aimed at exploring AI possibilities to inform future business decisions related to SFO data. This procurement falls under the industry category of data services, with an estimated contract value of £125,000. The procurement method used was selective, employing a call-off from a framework agreement. The tender process concluded on 30th August 2021, with the contract period running from 31st August 2021 until 31st December 2021. The SFO is located at 2 - 4 Cockspur Street, London, SW1Y 5BS, England.

This contract offers significant opportunities for firms specialising in artificial intelligence and data analysis services to enhance their portfolios. Businesses that can provide innovative solutions for data utilisation, particularly in governmental contexts or complex fraud investigations, would be well-positioned to compete for similar projects in the future. Given the project’s specific focus, firms with expertise in developing AI strategies and digital transformation initiatives will find this a suitable market to expand their influence and capabilities.

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Notice Title

Data Discovery - Artificial intelligence (AI) strategy and digital transformation

Notice Description

Discovery work to establish the possibilities for AI with the Serious Fraud Office (SFO) data - in order to inform future business decisions.

Publication & Lifecycle

Open Contracting ID
ocds-b5fd17-eeef263d-216c-4351-b63a-df408fceb8fc
Publication Source
Contracts Finder
Latest Notice
https://www.contractsfinder.service.gov.uk/Notice/98fa8bef-4f21-4d3c-a05a-e01ca41c199e
Current Stage
Award
All Stages
Award

Procurement Classification

Notice Type
Award Notice
Procurement Type
Framework
Procurement Category
Services
Procurement Method
Selective
Procurement Method Details
Call-off from a framework agreement
Tender Suitability
Not specified
Awardee Scale
Large

Common Procurement Vocabulary (CPV)

CPV Divisions

72 - IT services: consulting, software development, Internet and support


CPV Codes

72300000 - Data services

Notice Value(s)

Tender Value
£125,000 £100K-£500K
Lots Value
Not specified
Awards Value
£125,000 £100K-£500K
Contracts Value
Not specified

Notice Dates

Publication Date
6 Sep 20214 years ago
Submission Deadline
29 Aug 2021Expired
Future Notice Date
Not specified
Award Date
30 Aug 20214 years ago
Contract Period
30 Aug 2021 - 31 Dec 2021 1-6 months
Recurrence
Not specified

Notice Status

Tender Status
Complete
Lots Status
Not Specified
Awards Status
Active
Contracts Status
Not Specified

Contracting Authority (Buyer)

Main Buyer
SERIOUS FRAUD OFFICE
Contact Name
Annie Shipp
Contact Email
annie.shipp@sfo.gov.uk
Contact Phone
Not specified

Buyer Location

Locality
LONDON
Postcode
SW1Y 5BS
Post Town
South West London
Country
England

Major Region (ITL 1)
TLI London
Basic Region (ITL 2)
TLI3 Inner London - West
Small Region (ITL 3)
TLI35 Westminster and City of London
Delivery Location
Not specified

Local Authority
Westminster
Electoral Ward
St James's
Westminster Constituency
Cities of London and Westminster

Supplier Information

Number of Suppliers
1
Supplier Name

FACULTY SCIENCE

Further Information

Notice Documents

Open Contracting Data Standard (OCDS)

View full OCDS Record for this contracting process

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The Open Contracting Data Standard (OCDS) is a framework designed to increase transparency and access to public procurement data in the public sector. It is widely used by governments and organisations worldwide to report on procurement processes and contracts.

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