Auf einen Blick
- Aufgaben: Develop a stream-oriented anomaly detector for cloud service infrastructures using Deep Neural Networks.
- Arbeitgeber: Join SEEBURGER, a leading global B2B software provider with over 10,000 satisfied customers.
- Mitarbeitervorteile: Enjoy growth opportunities and the chance to utilize your talents in a supportive environment.
- Warum dieser Job: Be part of a team driving digitalization and innovation in a globally renowned company.
- Gewünschte Qualifikationen: A background in computer science or related fields is preferred for this master thesis.
- Andere Informationen: This role offers a unique opportunity to work on cutting-edge AI technology.
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Master Thesis: Streamable Multivariate Time Series Anomaly Detection (all genders) – Bretten
Location: Bretten, DE, 75015
Division/Department: Development
Experience: Bachelor- / Masterthesis
”Accelerating business to improve the lives of people”. This is our purpose statement and encapsulates what we enthusiastically do every day. We integrate our customers’ IT systems to make sure that the right data is at the right place at the right time when they digitalize their processes.
Our success story began in 1986, when we helped the German automotive industry to digitalize their paper-based supply chains. Today, SEEBURGER is a leading global B2B software provider with more than 1,000 #businessaccelerators in 15 countries worldwide and over 10,000 satisfied customers that rely on our innovative solutions.
Topic
Streamable Multivariate Time Series Anomaly Detection for Cloud Service Infrastructures
Motivation and Goals
Automatic anomaly detection is an important tool for monitoring complex cloud service infrastructures for B2B communications. Multivariate anomalies arise simultaneously from a variety of metrics and the context of individual services. A changing workload may be related to the number of successful processes, the elimination of processing errors, and declining orders from a discount retailer.
In operation, previously unknown or rare errors occur, comparatively few anomalies can be labeled by experts, and data for training ML models are insufficiently cleaned of anomalies. The goal of this work is to develop a stream-oriented, multivariate anomaly detector and an alert communication system, as well as to evaluate the system on the example of a cloud service infrastructure with the provided data.
Tasks
- Investigation and evaluation of different approaches for anomaly detection with a focus on Deep Neural Networks.
- Pre-processing, filtering, cleaning, as well as enrichment of monitoring data, message tracking data, and the cloud structure data for the anomaly detector.
- Development and implementation of the AI anomaly detector as well as a framework for the regular training of the ML models and the stream-oriented detection of anomalies.
- Development and implementation of a dynamic alert system suitable for different users such as system operators or customers, as well as analysis and evaluation of the anomalies.
- Development of criteria for the evaluation of the system.
Benefit from being part of a globally renowned company that is driving digitalisation forward. We continue to grow – and so can you! It is important to us that you can fully utilise your talents and strengths and go your own way, regardless of whether you are aiming for a specialist or management career.
Sounds exciting? Become a #Businessaccelerator today!
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Masterarbeit Streamable Multivariate Time Series Anomaly Detection (m/w/d) Arbeitgeber: SEEBURGER AG

Kontaktperson:
SEEBURGER AG HR Team
StudySmarter Bewerbungstipps 🤫
So bekommst du den Job: Masterarbeit Streamable Multivariate Time Series Anomaly Detection (m/w/d)
✨Tip Number 1
Finde heraus, welche Technologien und Tools in der Anomalieerkennung verwendet werden. Informiere dich über Deep Neural Networks und deren Anwendung in der Cloud-Infrastruktur, um im Gespräch zu glänzen.
✨Tip Number 2
Netzwerke mit Fachleuten aus der Branche, die Erfahrung in der Cloud-Datenverarbeitung haben. LinkedIn oder lokale Meetups sind großartige Orte, um Kontakte zu knüpfen und wertvolle Einblicke zu gewinnen.
✨Tip Number 3
Bereite dich darauf vor, deine Ideen zur Verbesserung von Anomalieerkennungssystemen zu präsentieren. Überlege dir innovative Ansätze, die du in deiner Masterarbeit umsetzen könntest, um das Interesse der Interviewer zu wecken.
✨Tip Number 4
Informiere dich über SEEBURGER und deren Rolle in der digitalen Transformation. Zeige dein Interesse an der Unternehmensmission und wie deine Arbeit zur Verbesserung der Lebensqualität beitragen kann.
Diese Fähigkeiten machen dich zur top Bewerber*in für die Stelle: Masterarbeit Streamable Multivariate Time Series Anomaly Detection (m/w/d)
Tipps für deine Bewerbung 🫡
Understand the Topic: Make sure to thoroughly understand the topic of your master thesis. Research streamable multivariate time series anomaly detection and familiarize yourself with the relevant technologies and methodologies.
Tailor Your CV: Customize your CV to highlight your relevant skills and experiences related to data analysis, machine learning, and cloud services. Emphasize any projects or coursework that align with the thesis topic.
Craft a Strong Motivation Letter: Write a compelling motivation letter that explains why you are interested in this specific thesis topic and how it aligns with your career goals. Mention your passion for digitalization and your desire to contribute to the field.
Proofread Your Application: Before submitting your application, carefully proofread all documents to ensure there are no spelling or grammatical errors. A polished application reflects your attention to detail and professionalism.
Wie du dich auf ein Vorstellungsgespräch bei SEEBURGER AG vorbereitest
✨Understand the Topic
Make sure you have a solid grasp of streamable multivariate time series anomaly detection. Familiarize yourself with the key concepts, especially around Deep Neural Networks and how they apply to anomaly detection in cloud service infrastructures.
✨Show Your Problem-Solving Skills
Be prepared to discuss how you would approach the challenges mentioned in the job description, such as handling insufficiently cleaned data or developing a dynamic alert system. Use examples from your past experiences to illustrate your problem-solving abilities.
✨Demonstrate Your Technical Knowledge
Highlight your experience with machine learning models, data pre-processing, and any relevant programming languages or tools. Be ready to explain how you would implement the AI anomaly detector and the framework for training ML models.
✨Express Your Enthusiasm for Digitalization
Convey your passion for digital transformation and how it aligns with the company's mission. Discuss why you are excited about the opportunity to contribute to a leading global B2B software provider and how you can help accelerate business processes.