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Student for Master Thesis Semantic Enrichment of Object-Centric Process Mining

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Job

  • Level
    Junior
  • Job Field
    Software
  • Employment Type
    Full Time
  • Contract Type
    Internship / school internship
  • Location
    Sindelfingen
  • Working Model
    Hybrid, Onsite
  • Job Summary

    In this position, you will develop concepts for enriching OCPM data semantically to enhance explainable process intelligence in automotive production and support the integration of ontologies into existing systems.

    Job Technologies

    Your role in the team

    • The thesis is embedded in the Versioned Planning initiative at Mercedes-Benz Manufacturing Engineering (MO/ET). In our center, we contribute to the digital transformation with initiatives such as the MO360 platform or the digital twin inside the omniverse. Furthermore, we integrate engineering processes with these new and AI-driven capabilities. Your thesis in the team 'MO360 Engineering AI & Data Management' contributes directly to the long-term vision of a business end of the Semantic Layer for MO/E as the foundation for AI Native Engineering and Agent2Agent orchestration.
    • Object-Centric Process Mining (OCPM) in Celonis provides a powerful, quantitative view on planning processes - it reveals how often, how long, and in which variants activities are executed across multiple object types. However, in complex automotive production planning (e.g., Mercedes-Benz MO/E), the resulting Process Intelligence Graph remains largely descriptive: it answers 'how much?' but not 'why?'. The semantic context - which scenario, premise, milestone, or review order (Prüfauftrag) triggered a given planning iteration - is not natively captured in event logs.
    • Our approach, which is currently being rolled out as the methodological backbone, explicitly models scenarios and specifications. It therefore provides exactly the semantic information that OCPM lacks and is envisioned as the foundation of a Semantic Layer for MO/E.
    • The thesis investigates how we can complement OCPM by adding a semantic 'why' layer on top of the quantitative 'how much' delivered by Celonis. The goal is to design, prototype and evaluate a concept that links object-centric event data from Celonis with the version- and scenario-semantics from our software, enabling explainable, scenario-aware process intelligence in production planning.
    • Possible Research Questions (to be discussed and aligned with your university): Which structural and semantic gaps exist in the Celonis OCPM representation of the current Mercedes-Benz planning process? Which semantic concepts of our approach can be formalized as a Semantic Layer (e.g., as an ontology / knowledge graph)? How can this Semantic Layer be technically integrated with Celonis OCPM (e.g., via the Process Intelligence Graph, AI Annotation Builder, or external graph alignment) to enrich object-centric events with planning rationale? To what extent does the enriched representation improve explainability, scenario awareness, and impact analysis compared to a baseline OCPM model?
    • Expected Contribution: A formalized Semantic Layer concept for versioned planning, bridging OCPM and engineering semantics. A prototype demonstrating the integration of eVMS semantics with Celonis OCPM. Empirical insights into the added value of semantic enrichment for impact analysis, scenario steering, and autonomous planning agents in the MO/E context. In simple words, extraction of some useful KPIs and steering concepts for management.
    • The activity can begin from September (or October).

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    Our expectations of you

    Qualifications

    • Ongoing Master's studies in Computer Science, Information Systems, Data Science, Industrial Engineering with IT focus, or a comparable program.
    • Solid foundation in software engineering, data modeling and database systems (relational and graph-based).
    • Working knowledge of process mining concepts, ideally Object-Centric Process Mining (OCPM); prior exposure to Celonis EMS / Process Intelligence Graph is a strong plus.
    • Understanding of semantic technologies: ontologies, knowledge graphs, RDF/OWL, SPARQL, or property-graph models (e.g., Neo4j).
    • Fähigkeit, komplexe Domänenprozesse in formale Modelle zu abstrahieren.
    • Strong conceptual and analytical thinking, combined with the ability to communicate results clearly to both technical and business stakeholders.
    • Self-driven and independent way of working, paired with strong collaboration skills in an interdisciplinary team (PO, TTO, engineering).
    • Fluent English (written and spoken); German language skills are an advantage for stakeholder interaction within Mercedes-Benz.

    Experience

    • Programming experience in Python (data processing, PM4Py, RDFLib, pandas) and basic familiarity with SQL; experience with REST APIs and data integration is beneficial.

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    What we offer

    • The final thesis selection is made in close consultation with you, the university, and us.

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    Benefits

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    Job Locations

    • Location Sindelfingen

      Baden-Württemberg

      Germany

    This is your employer

    Mercedes - Benz AG

    Mercedes - Benz AG

    The Mercedes-Benz brand of automobiles is a registered trademark of Daimler AG. In 2016, sales of new vehicles reached 2.08 million. With business units including Mercedes-Benz Cars, Daimler Trucks, Mercedes-Benz Vans, Daimler Buses and Daimler Mobility, the company ranks among the leading providers of premium cars and is the world's largest commercial vehicle manufacturer.

    Description

  • Founding year
    1926
  • Company Type
    Established Company
  • Working Model
    Hybrid, Onsite
  • Industry
    Vehicle Manufacturing, Supplier, Industry, Production
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    Student for Master Thesis Semantic Enrichment of Object-Centric Process Mining

    Location
    Sindelfingen
    Working Model
    Hybrid, Onsite
    Diversity
    Open for all genders

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