Leveraging MLOps: Developing a Sequential Classification System for RFQ Documents in Electrical Engineering

Vendors participating in tenders face significant challenges in creating accurate and timely order quotations from Request for Quote (RFQ) documents. The success of their bids is heavily dependent on the speed and precision of these quotations. A key bottleneck in this process is the timeconsuming task of identifying relevant products from the product catalogue that align with the RFQ descriptions. We propose the implementation of an automatic classification system that utilizes a context-aware language model specifically designed for the electrical engineering domain. Our approach aims to streamline the identification of relevant products, thereby enhancing the efficiency and accuracy of the quotation process. However, an effective solution must be scalable and easily adjustable. Thus, we present a machine learning operations (MLOps) architecture that facilitates automated training and deployment. We pay particular attention to automated pipelines, which are essential for the operation of a maintainable ML solution. In addition, we outline best practices for creating production-ready pipelines and encapsulating data science efforts. Schneider Electric currently operates the solution presented in this paper.

  • Veröffentlicht in:
    2025 IEEE/ACM 47th International Conference on Software Engineering: Software Engineering in Practice (ICSE-SEIP)
  • Typ:
    Inproceedings
  • Autoren:
    Martens, Claudio; Abdelwahab, Hammam; Beckh, Katharina; Kirsch, Birgit; Gupta, Vishwani; Hoh, Steffen; Wegener, Dennis
  • Jahr:
    2025
  • Source:
    https://ieeexplore.ieee.org/abstract/document/11121694

Informationen zur Zitierung

Martens, Claudio; Abdelwahab, Hammam; Beckh, Katharina; Kirsch, Birgit; Gupta, Vishwani; Hoh, Steffen; Wegener, Dennis: Leveraging MLOps: Developing a Sequential Classification System for RFQ Documents in Electrical Engineering, 2025 IEEE/ACM 47th International Conference on Software Engineering: Software Engineering in Practice (ICSE-SEIP), 2025, 227--236, https://ieeexplore.ieee.org/abstract/document/11121694, Martens.etal.2025a,

Assoziierte Lamarr-ForscherInnen

lamarr institute person Martens Claudio - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Claudio Martens

Autor zum Profil
Portrait of Katharina Beckh.

Katharina Beckh

Autorin zum Profil
lamarr institute person Kirsch Birgit - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Birgit Kirsch

Autorin zum Profil
Portrait of Dennis Wegener.

Dennis Wegener

Autor zum Profil