Cardiva
Cardiva is a company in the healthcare sector. Among other products, it manufactures single-use packs for operating rooms. Thanks to the digitisation of the demand management process, Cardiva has been able to service its business model and commercialise these packs under a pay-per-use service model.
Cardiva set itself the challenge of optimising its order-to-delivery process.
The challenge was addressed by sequentially solving the following two phases. 1) Forecasting the demand for surgical consumables, in order to anticipate its customers’ needs. Generate biweekly forecasts at the reference centre level using a time series ML algorithm, based on both business data and exogenous variables that impact consumption. 2) Optimising logistics, both in terms of delivery routes and improving stock levels for the end customer. To achieve this, a linear optimisation problem is formulated and resolved at the plant level.
Cloud
Machine learning and deep learning
Historical time series of activity by centre: references, stock, consumption, capacities. External factors: Calendar holidays, weather, atypical events.
A team composed of different profiles: Cardiva: Business and IT managers. Versia: Data analyst, data engineer, data scientist.
Diversity of consumption behaviour at the reference centre level.
Consumption levels, number of replenishments, stock per plant. Results obtained for the scope defined in the challenge: Delivery reduction ability: 20%. Ability to free up shelf space: 18%.
Dataton Euskadi 2023
VERSIA BAIC
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