Tender Matching and Labelling AI Module
Purpose:
To match suppliers with tenders that best fit their capabilities and criteria, optimizing their participation.
Process:
Data Input: The module takes detailed tender documents and supplier profiles as inputs.
Criteria Extraction: Key aspects such as price, type of service or good, and other relevant factors are extracted from the tenders using NLP techniques.
Numeric Labelling: These aspects are translated into a framework with numeric labels, representing various attributes such as:
Price Range: Numeric value indicating the budget category.
Service Type: Numeric code corresponding to the type of service or product required.
Complexity Level: Numeric rating of the project's complexity or technical requirements.
Geographical Location: Numeric code representing the location of the project.
Supplier Profile Matching: Suppliers provide their criteria, such as the services they offer, price range, and geographical preferences. These criteria are also converted into numeric labels.
Matching Algorithm: The module uses a matching algorithm to compare the numeric labels of tenders and suppliers. This algorithm calculates the degree of match based on the provided criteria.
Recommendation Display: The module displays a list of tenders that best match the suppliers' criteria, ranking them based on the degree of match. Suppliers can then view and decide on which tenders to pursue.