Data Engineer - Growth Team

Enterprise Performance Management (EPM) platform helping companies achieve financial goals by responding to dynamic market factors.
Data
Mid-Level Software Engineer
Hybrid
101 - 500 Employees
2+ years of experience
Enterprise SaaS · Finance

Description For Data Engineer - Growth Team

Pigment, a rapidly growing SaaS company founded in 2019, has become a leader in Enterprise Performance Management (EPM) solutions. With over 450 employees across offices in New York, Toronto, London, Paris, and soon San Mateo, Pigment has secured $393M in investment from top VCs. They're seeking a Data Engineer for their Growth team to drive revenue and efficiencies across GTM teams.

The role combines technical expertise with business acumen, working in a 9-person team where you'll be the third engineer. You'll collaborate with sales, marketing, and revenue operations teams to design and implement scalable solutions. The position requires strong system design skills and autonomy, as you'll be working on creating maintainable software solutions rather than just running scripts.

Key technical responsibilities include building Cloud Functions, developing dbt models, and adding features to their FastAPI/React web app. You'll also participate in code reviews and architectural decisions. The collaborative aspect involves working closely with non-technical team members, developing company-wide data projects, and contributing to the team's technical roadmap.

The ideal candidate should have 2+ years of experience, strong Python and SQL skills, and cloud platform experience (preferably GCP). They value someone who can work independently, handle uncertainty, and effectively communicate with stakeholders. The position offers competitive compensation, equity, healthcare, and access to modern offices in major global cities.

Join a company that serves major clients like Unilever, Deliveroo, Gong, and Brex, while working in an environment that values collaboration, continuous learning, and taking initiative.

Last updated 7 minutes ago

Responsibilities For Data Engineer - Growth Team

  • Build Cloud Functions to collect and enrich data using third party APIs
  • Build dbt models to leverage data for business tools
  • Add new features to web app (FastAPI/React)
  • Review code of fellow engineers
  • Take architectural design decisions
  • Collaborate with non-engineer team members
  • Develop company-level data projects
  • Work on long-term planning and tech roadmap

Requirements For Data Engineer - Growth Team

Python
React
TypeScript
  • 2+ years of experience in Engineering, Growth, or Data role
  • Growth mindset with interest in Sales/Marketing initiatives
  • Ability to work in fast-paced environment
  • Strong communication skills with non-technical team members
  • Experience with Python and SQL
  • Experience with cloud provider (preferably GCP)
  • Doer personality with ability to own and build growth projects

Benefits For Data Engineer - Growth Team

Medical Insurance
Equity
  • Competitive package
  • Healthcare
  • Annual company offsite
  • High-end equipment
  • New offices in major cities

Interested in this job?

Jobs Related To Pigment Data Engineer - Growth Team

Data Engineer

Data Engineer position at CI&T in Lisboa, focusing on cloud data architecture and pipeline optimization with Azure technologies in a hybrid work environment.

Sales Engineer

Sales Engineer position at Astronomer, working with data orchestration platform Astro, offering $200K-$265K + equity, remote work, and opportunity to impact enterprise data solutions.

Data Engineer

Remote Data Engineer position at Supabase, building and maintaining data infrastructure with DBT and Airflow in an open-source environment.

Intermediate Engineer (Syft Integration)

Mid-level Software Engineer position at Xero, focusing on Syft Analytics integration and building scalable data solutions with modern cloud technologies.

Business Intelligence Engineer

Business Intelligence Engineer role at Amazon focusing on transportation technology and logistics optimization through data analysis and insights.