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HEC-Ecole de gestion de l'Université de Liège
HEC-Ecole de gestion de l'Université de Liège
Mémoire

Mémoire-projet

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Spedicato, Tania ULiège
Promoteur(s) : Aerts, Stéphanie ULiège
Date de soutenance : 16-jui-2025/24-jui-2025 • URL permanente : http://hdl.handle.net/2268.2/22671
Détails
Titre : Mémoire-projet
Auteur : Spedicato, Tania ULiège
Date de soutenance  : 16-jui-2025/24-jui-2025
Promoteur(s) : Aerts, Stéphanie ULiège
Membre(s) du jury : Bressers, Serge 
Shneor, Maurice 
Langue : Français
Nombre de pages : 107
Mots-clés : [en] Artificial Intelligence
[en] Machine Learning
[en] Sales and Operations Planning
[en] Sales Forecast
[en] ARIMA
[en] Additive Model
[en] RMSE
[en] MAE
[en] MAPE
Discipline(s) : Sciences économiques & de gestion > Production, distribution & gestion de la chaîne logistique
Institution(s) : Université de Liège, Liège, Belgique
Diplôme : Master en sales management, à finalité spécialisée
Faculté : Mémoires de la HEC-Ecole de gestion de l'Université de Liège

Résumé

[en] Sales forecasting is a complex but essential exercise for any company. This process helps to optimise
supply chain management, resources allocation, production planning and, most importantly, to
improve customer satisfaction by responding more effectively to demand.
In recent years, artificial intelligence (AI) has made significant advances, opening the way to new
business applications. A number of forecasting solutions based on AI are now available on the market.
But are these tools really based on advanced technologies, or are they simply riding the AI trend? What
are the concrete mechanisms behind them?
Through the case study of Sauermann Group, this thesis seeks to assess the impact of AI on two key
aspects: the accuracy of sales forecasts and the operational gains it can generate.
To achieve this, several forecasting models, including one based on machine learning, have been
compared using performance indicators and graphical analyses to help interpret the results.
The second part of the analysis is based on a simulation comparing the time spent on the forecasting
process in its current version versus a version incorporating a machine learning tool. This comparison
was carried out for both the S&OP department and the regional sales managers, who are key
stakeholders in the process.
The aim of this work is to demonstrate the extent to which AI-based forecasting models can be an
alternative or a complement to traditional approaches, while adding real value to the company's
decision-making process.


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Access Mémoire_SPEDICATO Tania_s170670.pdf
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Format: Adobe PDF

Auteur

  • Spedicato, Tania ULiège Université de Liège > Mast. sales. man. à fin. spéc. (en alternance)

Promoteur(s)

Membre(s) du jury

  • Bressers, Serge
  • Shneor, Maurice








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