KPMG Ukraine

Assistant Manager

KPMG Ukraine  •  Bengaluru, IN (Onsite)  •  2 months ago
Apply
AI can make mistakes so check important info. Chat history is never stored.

Job Description

Role: Data Modeler

Key Responsibilities

Enterprise Data Modelling & Architecture (Primary Focus)

  • Support the Lead Enterprise Data Architect in the creation, refinement, and maintenance of enterprise‑level data models
  • Support the data models governance process, ensuring standards, naming conventions, and modelling quality.
  • Support and maintain the ER/Idera modelling repository, including version control and model lineage.
  • Support projects from a data architecture perspective, ensuring alignment with enterprise modelling practices.
  • Build the necessary material and define repeatable processes to run the Data Architecture Assurance Service
  • Contribute to data dictionaries, business glossaries, and enterprise metadata assets.
  • Contribute to the creation of data flows, end‑to‑end lineage, and cross‑domain data relationships.
  • Support data definitions working groups and other data governance bodies, ensuring consistency and traceability.

Data Platform & Engineering Support

  • Ensuring alignment with data architecture standards.
  • Support definition of data schemas, ingestion patterns, and ETL/ELT solutions for consumption, validation, storage, and quality control.
  • Shape and embed data management best practices across engineering teams (lineage, quality, storage design, master/reference data).
  • Support the design and implementation of metadata capabilities, including lineage, business glossary, technical metadata, and stewardship workflows.
  • Contribute to data harvesting efforts and support the implementation of business catalogue tools

Key Technical Skills & Experience

  • Strong data modelling skills across conceptual, logical, and physical layers.
  • Hands‑on experience with the Microsoft data technology stack (e.g., Azure SQL, Synapse, ADF, Databricks).
  • Experience in data collection, integration, and management across distributed systems.
  • Understanding of defining data schemas and ETL/ELT solutions for consumption, validation, and secure storage of data.
  • Proven experience in designing and implementing metadata management capabilities (lineage, glossary, metadata store, cataloguing tools).
  • Experience with data definitions creation and stewardship activities.
  • Strong business mindset to interpret organizational business capabilities and translate them into data domains and entities.
  • Experience in data harvesting, business catalogue, and data discovery tools
  • Deep understanding of data management concepts including:
    • Traceability
    • Lineage
    • System of Record (SoR) and System of Authority (SoA)
    • Master Data and Reference Data
    • Metadata lifecycle and curation

Role: Data Modeler

Key Responsibilities

Enterprise Data Modelling & Architecture (Primary Focus)

  • Support the Lead Enterprise Data Architect in the creation, refinement, and maintenance of enterprise‑level data models
  • Support the data models governance process, ensuring standards, naming conventions, and modelling quality.
  • Support and maintain the ER/Idera modelling repository, including version control and model lineage.
  • Support projects from a data architecture perspective, ensuring alignment with enterprise modelling practices.
  • Build the necessary material and define repeatable processes to run the Data Architecture Assurance Service
  • Contribute to data dictionaries, business glossaries, and enterprise metadata assets.
  • Contribute to the creation of data flows, end‑to‑end lineage, and cross‑domain data relationships.
  • Support data definitions working groups and other data governance bodies, ensuring consistency and traceability.

Data Platform & Engineering Support

  • Ensuring alignment with data architecture standards.
  • Support definition of data schemas, ingestion patterns, and ETL/ELT solutions for consumption, validation, storage, and quality control.
  • Shape and embed data management best practices across engineering teams (lineage, quality, storage design, master/reference data).
  • Support the design and implementation of metadata capabilities, including lineage, business glossary, technical metadata, and stewardship workflows.
  • Contribute to data harvesting efforts and support the implementation of business catalogue tools

Key Technical Skills & Experience

  • Strong data modelling skills across conceptual, logical, and physical layers.
  • Hands‑on experience with the Microsoft data technology stack (e.g., Azure SQL, Synapse, ADF, Databricks).
  • Experience in data collection, integration, and management across distributed systems.
  • Understanding of defining data schemas and ETL/ELT solutions for consumption, validation, and secure storage of data.
  • Proven experience in designing and implementing metadata management capabilities (lineage, glossary, metadata store, cataloguing tools).
  • Experience with data definitions creation and stewardship activities.
  • Strong business mindset to interpret organizational business capabilities and translate them into data domains and entities.
  • Experience in data harvesting, business catalogue, and data discovery tools
  • Deep understanding of data management concepts including:
    • Traceability
    • Lineage
    • System of Record (SoR) and System of Authority (SoA)
    • Master Data and Reference Data
    • Metadata lifecycle and curation

Role: Data Modeler

Key Responsibilities

Enterprise Data Modelling & Architecture (Primary Focus)

  • Support the Lead Enterprise Data Architect in the creation, refinement, and maintenance of enterprise‑level data models
  • Support the data models governance process, ensuring standards, naming conventions, and modelling quality.
  • Support and maintain the ER/Idera modelling repository, including version control and model lineage.
  • Support projects from a data architecture perspective, ensuring alignment with enterprise modelling practices.
  • Build the necessary material and define repeatable processes to run the Data Architecture Assurance Service
  • Contribute to data dictionaries, business glossaries, and enterprise metadata assets.
  • Contribute to the creation of data flows, end‑to‑end lineage, and cross‑domain data relationships.
  • Support data definitions working groups and other data governance bodies, ensuring consistency and traceability.

Data Platform & Engineering Support

  • Ensuring alignment with data architecture standards.
  • Support definition of data schemas, ingestion patterns, and ETL/ELT solutions for consumption, validation, storage, and quality control.
  • Shape and embed data management best practices across engineering teams (lineage, quality, storage design, master/reference data).
  • Support the design and implementation of metadata capabilities, including lineage, business glossary, technical metadata, and stewardship workflows.
  • Contribute to data harvesting efforts and support the implementation of business catalogue tools

Key Technical Skills & Experience

  • Strong data modelling skills across conceptual, logical, and physical layers.
  • Hands‑on experience with the Microsoft data technology stack (e.g., Azure SQL, Synapse, ADF, Databricks).
  • Experience in data collection, integration, and management across distributed systems.
  • Understanding of defining data schemas and ETL/ELT solutions for consumption, validation, and secure storage of data.
  • Proven experience in designing and implementing metadata management capabilities (lineage, glossary, metadata store, cataloguing tools).
  • Experience with data definitions creation and stewardship activities.
  • Strong business mindset to interpret organizational business capabilities and translate them into data domains and entities.
  • Experience in data harvesting, business catalogue, and data discovery tools
  • Deep understanding of data management concepts including:

    • Traceability
    • Lineage
    • System of Record (SoR) and System of Authority (SoA)
    • Master Data and Reference Data
    • Metadata lifecycle and curation

    #LI-KS1

    #KGS

KPMG Ukraine

About KPMG Ukraine

KPMG – це міжнародна мережа фірм, що надають аудиторські, податкові та консультаційні послуги. В офісах KPMG у 143 країнах світу працюють понад 273,000 співробітників (FY23). Кожна фірма KPMG є незалежною юридичною особою і представляє себе як таку.

KPMG працює в Україні з 1992 року. KPMG в Україні надає аудиторські, податкові, бухгалтерські та консультаційні послуги для місцевих і міжнародних компаній. Нашою метою завжди було використання глобального інтелектуального потенціалу фірми в поєднанні з практичним досвідом наших українських професіоналів, щоб допомогти провідним компаніям досягти своїх цілей.

Офіси компанії знаходяться у Києві та Львові.

______________

KPMG is a global network of professional services firms providing audit, tax and advisory services. We operate in 143 countries and territories, and in FY23, collectively employed more than 273,000 people working in member firms around the world.

KPMG in Ukraine provides audit, tax, accounting and advisory services to local and international businesses. KPMG has been working in Ukraine since 1992, and our goal has always been to use the firm's global intellectual potential, combined with the practical experience of our Ukrainian professionals, to help leading companies to achieve their goals.

In Ukraine KPMG has its offices in Kyiv and Lviv.

Industry
Consulting & Advisory
Company Size
201-500 employees
Headquarters
Kyiv, UA
Year Founded
1992
Website
kpmg.com
Social Media