Applying machine learning to optimize standard gross margin in medtech
| Název práce: | Applying machine learning to optimize standard gross margin in medtech |
|---|---|
| Autor(ka) práce: | Hakl, Tomáš |
| Typ práce: | Závěrečná práce - Institut celoživotního vzdělávání |
| Vedoucí práce: | Zimmermann, Pavel |
| Oponenti práce: | Fázik, Peter |
| Jazyk práce: | English |
| Abstrakt: | This thesis explores how transaction-level machine learning can strengthen margin management in a global medical device company facing pressure on its standard gross margin (SGM). Using several years of invoice-line data, it develops an XGBoost model that predicts SGM% based on commercially intuitive factors such as product characteristics, sales channel, and consignment usage, complemented by simple time variables. The model outperforms a traditional rolling-average benchmark and is used to flag transactions where realized margins appear weak relative to model expectations. These outliers are then linked to a realistic set of pricing and portfolio levers to estimate their potential financial impact. The results show that focusing corrective actions on a relatively small subset of underperforming business can improve overall SGM with only a limited effect on revenue, illustrating how interpretable machine learning can be embedded into existing BI and pricing processes as a practical tool for margin governance. |
| Klíčová slova: | medical device; standard gross margin; machine learning |
| Název práce: | Applying machine learning to optimize standard gross margin in medtech |
|---|---|
| Autor(ka) práce: | Hakl, Tomáš |
| Typ práce: | Závěrečná práce - Institut celoživotního vzdělávání |
| Vedoucí práce: | Zimmermann, Pavel |
| Oponenti práce: | Fázik, Peter |
| Jazyk práce: | English |
| Abstrakt: | This thesis explores how transaction-level machine learning can strengthen margin management in a global medical device company facing pressure on its standard gross margin (SGM). Using several years of invoice-line data, it develops an XGBoost model that predicts SGM% based on commercially intuitive factors such as product characteristics, sales channel, and consignment usage, complemented by simple time variables. The model outperforms a traditional rolling-average benchmark and is used to flag transactions where realized margins appear weak relative to model expectations. These outliers are then linked to a realistic set of pricing and portfolio levers to estimate their potential financial impact. The results show that focusing corrective actions on a relatively small subset of underperforming business can improve overall SGM with only a limited effect on revenue, illustrating how interpretable machine learning can be embedded into existing BI and pricing processes as a practical tool for margin governance. |
| Klíčová slova: | standard gross margin; medical devices; machine learning |
Informace o studiu
| Studijní program / obor: | Data & Analytics for Business Management |
|---|---|
| Typ studijního programu: | Celoživotní vzdělávání studijní program |
| Přidělovaná hodnost: | MBA |
| Instituce přidělující hodnost: | Vysoká škola ekonomická v Praze |
| Fakulta: | Fakulta informatiky a statistiky |
| Katedra: | Katedra informačních technologií |
Informace o odevzdání a obhajobě
| Datum zadání práce: | 12. 12. 2024 |
|---|---|
| Datum podání práce: | 15. 12. 2025 |
| Datum obhajoby: | 5. 3. 2026 |
| Identifikátor v systému InSIS: | https://insis.vse.cz/zp/94915/podrobnosti |
Soubory ke stažení
Hlavní práce
Zveřejnění souboru odloženo na: 16. 12. 2030 Stáhnout
Zveřejnění souboru odloženo na: 16. 12. 2030 Stáhnout