Data Engineer

Posted Yesterday
Be an Early Applicant
Paris, Île-de-France, FRA
In-Office
Junior
Financial Services
The Role
Build and operate scalable ETL/ELT pipelines to ingest, transform, and model data across Palantir Foundry and Databricks. Ensure data quality, lineage, observability, and access controls. Collaborate with analysts and product teams to translate requirements into reliable, documented datasets and establish standards, monitoring, and automation for production data flows.
Summary Generated by Built In

About Rimes

Rimes provides enterprise data management solutions to the global investment community. Driven by our passion for solving the most complex data problems, we provide our clients with investment intelligence that powers more than US$75 trillion in assets under management annually. The world’s leading institutional investors, asset managers and service providers rely on Rimes to help them make better investment decisions using accurate information and industry-leading technology.

The Opportunity: 

We’re looking for a Data Engineer to own data onboarding and build scalable, reliable data pipelines that power analytics, operational workflows, and data‑driven decisions across Rimes. You’ll work closely with data producers, analysts, and product teams to ingest, transform, and operationalize data across Palantir Foundry and Databricks as our two target data platforms. 

Note: Experience with Palantir Foundry or Databricks is a strong plus but not required. If you bring solid data engineering fundamentals in Python/PySpark, SQL, and modern ELT patterns, we’ll support a fast ramp‑up on both platforms. 

Responsibilities:

  • Ingest & onboard datasets from internal systems, APIs, databases, files, external providers, and real‑time feeds. 
  • Build and operate scalable ETL/ELT pipelines using Python, PySpark, SQL, and Foundry pipeline tooling; schedule and automate batch/stream refreshes. 
  • Model and operationalize data (e.g., defining entities/relationships) to support analytics and operational applications in collaboration with domain experts. 
  • Ensure trust in data through testing, data quality checks, observability/alerting, lineage, and compliant access controls. 
  • Collaborate with analysts and product teams to translate business requirements into robust data solutions and clear data contracts/SLOs. 

What Success Looks Like (First 3–6 Months):

  • You onboard and productionize new data sources with reliable refresh (scheduled or real‑time). 
  • You deliver trusted, well‑documented datasets consumed by analytics and operational teams. 
  • Key business entities are clearly modeled and discoverable. 
  • Pipelines have meaningful monitoring and alerting, with reduced failures/re‑runs. 
  • You contribute to standards/templates that speed up future onboarding. 

Requirements:

  • 1-3 years in data engineering or analytics engineering with end‑to‑end pipeline delivery in production. 
  • Proficiency in Python & PySpark for distributed data processing. 
  • Strong SQL for analytical and transformation logic. 
  • Data modeling skills for both analytics and operational use cases. 
  • Experience with data ingestion from APIs, databases, external feeds, and real-time sources. 
  • Solid grasp of data quality, testing, observability, lineage, and governance practices. 
  • Comfort working with large datasets and distributed compute using modern ELT patterns. 

Nice To Have:

  • Databricks or cloud‑native compute with compute pushdown. 
  • Palantir Foundry: pipelines/transforms, Code Repos, Ontology, and operational applications. 
  • Spark execution concepts: partitions, shuffles, caching, and performance optimization. 
  • Experience with financial or enterprise operational data. 
  • Experience with AI‑assisted ETL/ELT or data quality tooling. 
  • Familiarity with streaming frameworks and/or orchestration tools. 

What We Offer:

Compensation: Competitive pay and bonus eligibility 

Work Life Balance: Flexible hybrid work environment 

Only selected candidates will be contacted for interviews. We appreciate your understanding. Thank you for considering a career with us.

Rimes is committed to promote the values of diversity and inclusion throughout the business. Whether it’s through recruitment, retention, career progression or training and development, we are committed to improving opportunities for people regardless of their background or circumstances.

Visit our Careers page to see our complete listings.

Skills Required

  • 1-3 years in data engineering or analytics engineering with end-to-end pipeline delivery in production
  • Proficiency in Python and PySpark for distributed data processing
  • Strong SQL for analytical and transformation logic
  • Data modeling skills for analytics and operational use cases
  • Experience ingesting data from APIs, databases, external feeds, and real-time sources
  • Solid grasp of data quality, testing, observability, lineage, and governance practices
  • Comfort working with large datasets and distributed compute using modern ELT patterns
  • Databricks or cloud-native compute experience (compute pushdown)
  • Palantir Foundry experience (pipelines/transforms, Code Repos, Ontology, operational apps)
  • Spark execution concepts: partitions, shuffles, caching, performance optimization
  • Experience with financial or enterprise operational data
  • Experience with AI-assisted ETL/ELT or data quality tooling
  • Familiarity with streaming frameworks and/or orchestration tools
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
HQ: New York, NY
310 Employees
Year Founded: 1996

What We Do

Rimes provides transformative data management and investment intelligence solutions to the world's leading investors and asset managers. Driven by our passion for solving the most complex data problems, we partner with our clients to help them make better investment decisions using accurate information and industry-leading technology. Headquartered in New York and London, Rimes serves its global clients through offices in Europe, the Americas and the Asia Pacific.

Similar Jobs

Datadog Logo Datadog

Staff Engineer

Artificial Intelligence • Cloud • Security • Software • Cybersecurity
Easy Apply
Hybrid
2 Locations
6500 Employees

Vibe.co Logo Vibe.co

Data Engineer

AdTech • Marketing Tech • Design
Hybrid
Paris, Île-de-France, FRA
152 Employees
90K-120K Annually

White Circle Logo White Circle

Data Engineer

Artificial Intelligence • Security • Software • Cybersecurity
Hybrid
Paris, Île-de-France, FRA
23 Employees
60K-80K Annually

SWEEP Logo SWEEP

Data Engineer

Artificial Intelligence • Software
Hybrid
Paris, Île-de-France, FRA
144 Employees

Similar Companies Hiring

Granted Thumbnail
Mobile • Insurance • Healthtech • Financial Services • Artificial Intelligence
New York, New York
23 Employees
Hanover Park Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
42 Employees
Onshore Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
60 Employees

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account