Aktiviere Job-Benachrichtigungen per E-Mail!

Senior Ontologist, Product Knowledge

Amazon

München

Vor Ort

EUR 50.000 - 90.000

Vollzeit

Vor 30+ Tagen

Erhöhe deine Chancen auf ein Interview

Erstelle einen auf die Position zugeschnittenen Lebenslauf, um deine Erfolgsquote zu erhöhen.

Zusammenfassung

Ein innovatives Unternehmen sucht einen Ontologen, der in einem globalen Team arbeitet, um umfassende und intuitive Taxonomien und Ontologie-Modelle zu entwickeln. Diese spannende Rolle bietet die Möglichkeit, direkt zur Verbesserung der Kundenerfahrung beizutragen, indem Sie an der Optimierung der Produktentdeckung für Web- und Mobile-Erlebnisse mitwirken. Sie werden mit verschiedenen Teams zusammenarbeiten, um wissensbasierte Lösungen zu liefern, die die Auffindbarkeit von Produkten ermöglichen. Wenn Sie eine Leidenschaft für Daten und deren Anwendung haben, ist dies die ideale Gelegenheit für Sie, Ihre Fähigkeiten in einem dynamischen Umfeld weiterzuentwickeln.

Leistungen

Flexible Arbeitszeiten
Karrierewachstumsmöglichkeiten
Diverse Kultur und Inklusion
Zugang zu internen Affinitätsgruppen

Qualifikationen

  • 5+ Jahre Erfahrung in Ontologie- und Taxonomie-Rollen.
  • Kenntnisse in Semantic Web Technologien (RDF/s, OWL).

Aufgaben

  • Entwicklung semantisch reicher Datenmodelle für Amazons Produktkatalog.
  • Koordination von Projekten mit verschiedenen Teams zur Optimierung der Produktentdeckung.

Kenntnisse

Datenretrieval
Kommunikationsfähigkeiten
Problemlösungsfähigkeiten
Generative KI
Detailorientierung

Ausbildung

Abschluss in Bibliothekswissenschaft
Master-Abschluss in relevanten Bereichen

Tools

Protege
TopQuadrant Produkte
PoolParty
SQL
SPARQL

Jobbeschreibung

Job ID: 2844434 | Amazon Development Center Germany GmbH

Job Location: Munich (this is not a remote opportunity).

The vision of the Ontology Product Knowledge Team is to provide a standardized, semantically rich, easily discoverable, extensible, and universally applicable body of product knowledge that can be consistently utilized across customer shopping experiences, selling partner listing experiences and internal enrichment of product data. We aim to make product knowledge compelling, easy to use, and feature rich. Our work to build comprehensive product knowledge allows us to semantically understand a customer’s intent – whether that is a shopping mission or a seller offering products. We strive to make these experiences more intuitive for all customers.

As an Ontologist, you work on a global team of knowledge builders to deliver world-class, intuitive, and comprehensive taxonomy and ontology models to optimize product discovery for Amazon web and mobile experiences. You collaborate with business partners and engineering teams to deliver knowledge-based solutions to enable product discoverability for customers. In this role, you will directly impact the customer experience as well as the company’s product knowledge foundation.

Tasks and Responsibilities:
  1. Develop logical, semantically rich, and extensible data models for Amazon's extensive product catalog.
  2. Ensure our ontologies provide comprehensive domain coverage that are available for both human and machine ingestion and inference.
  3. Create new schema using Generative Artificial Intelligence (generative AI) models.
  4. Analyze website metrics and product discovery behaviors to make data-driven decisions on optimizing our knowledge graph data models globally.
  5. Expand and refine the expansion of data retrieval techniques to utilize our extensive knowledge graph.
  6. Contribute to team goal setting and future state vision.
  7. Drive and coordinate cross-functional projects with a broad range of merchandisers, engineers, designers, and other groups that may include architecting new data solutions.
  8. Develop team operational excellence programs, data quality initiatives and process simplifications.
  9. Evangelize ontology and semantic technologies within and across teams at Amazon.
  10. Develop and refine data governance and processes used by global Ontologists.
  11. Mentor and influence peers.

Inclusive Team Culture: Our team has a global presence: we celebrate diverse cultures and backgrounds within our team and our customer base. We are committed to furthering our culture of inclusion, offering continuous access to internal affinity groups as well as highlighting diversity programs.

Work/Life Harmony: Our team believes that striking the right balance between work and your outside life is key. Our work is not removed from everyday life, but instead is influenced by it. We offer flexibility in working hours and will work with you to facilitate your own balance between your work and personal life.

Career Growth: Our team cares about your career growth, from your initial company introduction and training sessions, to continuous support throughout your entire career at Amazon. We recognize each team member as an individual, and we will build on your skills to help you grow. We have a broad mix of experience levels and tenures, and we are building an environment that celebrates knowledge sharing.

BASIC QUALIFICATIONS
  1. Degree in Library Science, Information Systems, Linguistics or equivalent professional experience.
  2. 5+ years of relevant work experience working in ontology and/or taxonomy roles.
  3. Proven skills in data retrieval and data research techniques.
  4. Ability to quickly understand complex processes and communicate them in simple language.
  5. Experience creating and communicating technical requirements to engineering teams.
  6. Ability to communicate to senior leadership (Director and VP levels).
  7. Experience with generative AI (e.g. creating prompts).
  8. Knowledge of Semantic Web technologies (RDF/s, OWL), query languages (SPARQL) and validation/reasoning standards (SHACL, SPIN).
  9. Knowledge of open-source and commercial ontology engineering editors (e.g. Protege, TopQuadrant products, PoolParty).
  10. Detail-oriented problem solver who is able to work in fast-changing environment and manage ambiguity.
  11. Proven track record of strong communication and interpersonal skills.
  12. Proficient English language skills.
PREFERRED QUALIFICATIONS
  1. Master’s degree in Library Science, Information Systems, Linguistics or other relevant fields.
  2. Experience building ontologies in the e-commerce and semantic search spaces.
  3. Experience working with schema-level constructs (e.g. higher-level classes, punning, property inheritance).
  4. Proficiency in SQL, SPARQL.
  5. Familiarity with software engineering life cycle.
  6. Familiarity with ontology manipulation programming libraries.
  7. Exposure to data science and/or machine learning, including graph embedding.

Amazon is an equal opportunities employer. We believe passionately that employing a diverse workforce is central to our success. We make recruiting decisions based on your experience and skills. We value your passion to discover, invent, simplify and build. Protecting your privacy and the security of your data is a longstanding top priority for Amazon. Please consult our Privacy Notice (https://www.amazon.jobs/en/privacy_page) to know more about how we collect, use and transfer the personal data of our candidates.

m/w/d

Our inclusive culture empowers Amazonians to deliver the best results for our customers. If you have a disability and need a workplace accommodation or adjustment during the application and hiring process, including support for the interview or onboarding process, please visit https://amazon.jobs/content/en/how-we-hire/accommodations for more information. If the country/region you’re applying in isn’t listed, please contact your Recruiting Partner.

Posted: December 6, 2024 (Updated about 12 hours ago)

Posted: July 19, 2024 (Updated 1 day ago)

Posted: November 18, 2024 (Updated 1 day ago)

Posted: November 18, 2024 (Updated 1 day ago)

Posted: October 3, 2024 (Updated 1 day ago)

Amazon is committed to a diverse and inclusive workplace. Amazon is an equal opportunity employer and does not discriminate on the basis of race, national origin, gender, gender identity, sexual orientation, protected veteran status, disability, age, or other legally protected status.

Hol dir deinen kostenlosen, vertraulichen Lebenslauf-Check.
eine PDF-, DOC-, DOCX-, ODT- oder PAGES-Datei bis zu 5 MB per Drag & Drop ablegen.