Pracuj.pl Praca zdalna Senior

Senior Data Engineer, AI and Systems Engineering

DROPBOX POLAND sp. z o.o.

⚲ Warszawa

Do uzgodnienia

Wymagania

  • Databricks
  • Apache Spark
  • SQL
  • Python
  • Jira Assets
  • ServiceNow
  • Okta
  • Jamf
  • Zscaler
  • Oracle
  • Concur

Opis stanowiska

Nasze wymagania:
9+ years of experience building and maintaining data pipelines and large-scale data platforms
Strong experience with Databricks, Apache Spark, and SQL for distributed data processing and transformation
Experience designing data models and architectures such as medallion architecture, data lakes, or lakehouse systems
Proficiency in Python or similar programming languages for data engineering and ETL development
Experience integrating data from multiple enterprise systems (e.g., SaaS tools, financial systems, identity systems)
Strong understanding of data quality, data governance, and entity resolution techniques across heterogeneous datasets
Excellent collaboration and communication skills, with experience working cross-functionally with technical and non-technical stakeholders

Mile widziane:
Experience working with CMDB systems such as Jira Assets or ServiceNow
Familiarity with identity, security, or IT asset management systems (e.g., Okta, Jamf, Zscaler)
Experience implementing cost-optimized data processing strategies in cloud environments
Exposure to financial data systems (e.g., Oracle, Concur) and spend analytics use cases
Bachelor’s or Master’s degree in Computer Science, Engineering, or a related technical field

O projekcie:
As a Senior Data Engineer on the CMDB and Asset Intelligence platform, you will help build the unified data foundation that powers asset visibility, cost optimization, and security insights across the company. You will design scalable pipelines and data models that bring together sources like ServiceNow, Okta, Oracle, and Jamf into a centralized lakehouse architecture, turning messy, multi-system data into trusted, decision-ready signals.
This role is a chance to raise the bar on data quality and governance while building systems that teams actually rely on day to day. You will partner closely with IT, Security, and Finance to define what “good” looks like, deliver high-impact solutions, and shape the long-term direction of the platform.
On-call work may be necessary occasionally to help address bugs, outages, or other operational issues, with the goal of maintaining a stable and high-quality experience for our customers.

Zakres obowiązków:
Design and build scalable data pipelines using Databricks and Spark to ingest, transform, and unify data from multiple enterprise systems
Develop and maintain medallion architecture (Bronze, Silver, Gold) data models to create reliable and performant “Golden Record” datasets
Implement data normalization, mapping, and entity resolution techniques (e.g., fuzzy matching, XREF tables) to unify asset data across disparate systems
Build data workflows to detect and surface Shadow IT across financial, identity, endpoint, and network signals and integrate results into CMDB systems
Partner with IT, Security, Finance, Procurement, and GRC teams to define and enforce data standards for critical CMDB attributes (e.g., ownership, approval status, lifecycle)
Develop and maintain data integrations and APIs to synchronize curated datasets into operational systems such as ServiceNow and Jira Assets
Monitor, troubleshoot, and improve data quality, reliability, and observability across the data platform

🔍 Dekoder Ogłoszenia

🔴
9+ years of experience building and maintaining data pipelines and large-scale data platforms
Może oznaczać, że szukają kogoś, kto nie tylko budował, ale też długo utrzymywał systemy, co może sugerować stabilność projektu lub brak innowacji.
🔴
Excellent collaboration and communication skills, with experience working cross-functionally with technical and non-technical stakeholders
Oznacza, że będziesz musiał tłumaczyć skomplikowane zagadnienia techniczne osobom bez wiedzy technicznej, co może być czasochłonne i frustrujące.
🔴
Experience implementing cost-optimized data processing strategies in cloud environments
Może oznaczać, że obecne rozwiązania są drogie i szukają kogoś, kto będzie musiał je optymalizować, co może być trudnym zadaniem.
🟡
Bachelor’s or Master’s degree in Computer Science, Engineering, or a related technical field
Chociaż mile widziane, może sugerować, że formalne wykształcenie jest preferowane nad doświadczeniem praktycznym, co nie zawsze przekłada się na realne umiejętności.