Senior Data Engineer

Posted 2 Days Ago
New York, NY, USA
In-Office
170K-190K Annually
Senior level
Artificial Intelligence • HR Tech • Information Technology • Professional Services
The Role
The Senior Data Engineer will optimize the data platform, build scalable data pipelines, improve data access and quality, and establish data engineering discipline within the company.
Summary Generated by Built In
About Our Client
Our client is reshaping the consumer finance landscape by bringing a more human approach to the industry. Their data-powered products help financial institutions modernize their collections operations, giving borrowers clear, compassionate paths back to financial stability and control. Beyond expanding access to credit, the company is focused on restoring dignity and offering millions of people a genuine opportunity to achieve financial freedom.

About the Role
As our client's founding Senior Data Engineer, you'll redefine how the company uses data to broaden access to credit — not by patching what already exists, but by unlocking what's still possible. You'll take complete ownership of the modern data stack, evolving it from a capable system maintained part-time by analysts and engineers into a best-in-class platform that anticipates and supports the company's most ambitious data initiatives. You'll design the data infrastructure that helps millions of people regain financial footing, ensuring every insight moves seamlessly from production systems to the decision-makers who rely on it. By establishing data engineering as a core discipline at the company, you'll free analysts to focus on insight generation while you build the scalable foundation that powers the next stage of growth.

Key Responsibilities
⦁ Own and optimize the entire data platform — evolving the Snowflake warehouse from analyst-maintained to engineer-optimized while standardizing data models for client reporting, operational dashboards, and ML features.
⦁ Build self-healing data pipelines — designing ETL processes that scale automatically with volume, implementing monitoring that surfaces issues before anyone notices, and tuning cost without compromising performance.
⦁ Democratize data access — designing intuitive models that empower PMs, analysts, and ops teams to find answers on their own, all while upholding security and compliance standards.
⦁ Bridge engineering and analytics — creating feedback loops between production systems and analytical needs, making sure schema changes don't disrupt downstream dependencies, and influencing how new features generate data.
⦁ Institute modern data practices — rolling out testing frameworks, building CI/CD pipelines for infrastructure changes, and producing documentation that allows others to extend your work.
⦁ Drive strategic infrastructure decisions — pinpointing where new tools unlock capabilities, balancing quick wins against long-term architectural vision, and laying the groundwork for an eventual data engineering team.
⦁ Deliver immediate impact through key projects, including:
Priority Projects
⦁ Data Model Redesign: Architect unified models that cut query redundancy for client reporting by 50% while preserving flexibility.
⦁ Pipeline Reliability: Reinforce monitoring systems to catch 99% of issues before they reach users.
⦁ Cost Optimization: Reduce Snowflake spend by 30–40% through smart clustering and lifecycle management.
⦁ Analytics Enablement: Build semantic layers that let both technical and non-technical users easily draw value from rich user data.

Requirements
⦁ 5+ years in data engineering or analytics engineering with steadily growing technical scope (data or analytics engineering should be the primary discipline in your most recent role).
⦁ Deep expertise with modern data warehouses (Snowflake, BigQuery, or Redshift), including performance tuning and cost optimization.
⦁ Advanced SQL skills — you can write clean, elegant queries and figure out why that 45-minute monster is burning through the compute budget.
⦁ Production experience with dbt or comparable transformation tools, including testing and documentation best practices.
⦁ Demonstrated ability to build and maintain ETL/ELT pipelines at scale using modern orchestration tools.
⦁ Experience as a sole or lead data engineer, owning infrastructure end-to-end without a large team behind you.
⦁ Experience implementing data quality frameworks and proactive monitoring systems.

Bonus Skills
⦁ Experience with streaming architectures and real-time analytics.
⦁ Familiarity with ML infrastructure and feature stores.
⦁ Knowledge of financial data privacy regulations and compliance.
⦁ Previous startup or high-growth company experience.
⦁ A track record of partnering with engineering teams to improve data quality at the source.
⦁ A systems thinker who looks past individual pipelines to understand how data flows across the organization.
⦁ Ownership mentality — you set your own roadmap and move initiatives forward without waiting for permission.
⦁ Strategic perspective that ties technical decisions back to business outcomes.
⦁ Collaborative working style with analysts, engineers, and product managers.
⦁ Clear communicator who writes documentation people actually read.
⦁ Bias toward shipping iteratively rather than chasing perfection.

Logistics
Location: New York
Compensation: $170K – $190K + Equity
Openings: 1

Benefits / Other: Open to relocation for strong non-NYC candidates (relocation required within 60 days); visa transfers considered by default (new visa sponsorships handled case by case).

Interview Process
1. Recruiter Screen
2. Hiring Manager Screen
3. Case Study / Panel
4. Onsite Interviews
5. Culture / CEO Interview
6. Offer
Compensation
The base pay range for this role is $170,000 – $190,000 per year.

Skills Required

  • 5+ years in data engineering or analytics engineering
  • Deep expertise with modern data warehouses (Snowflake, BigQuery, or Redshift)
  • Advanced SQL skills
  • Production experience with dbt or comparable transformation tools
  • Demonstrated ability to build and maintain ETL/ELT pipelines at scale
  • Experience as a sole or lead data engineer
  • Experience implementing data quality frameworks and monitoring systems
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
63 Employees
Year Founded: 2014

What We Do

Syndesus builds engineering teams in Canada for US-based VC-backed startups, offering Employer of Record (PEO) services for remote employment and assisting with cross-border hiring and immigration issues.

Similar Jobs

Order.co Logo Order.co

Data Engineer

eCommerce • Fintech • Payments • Software
Remote or Hybrid
United States
120 Employees
175K-200K Annually

Chartmetric Logo Chartmetric

Senior Data Engineer

Music • Software • Analytics
In-Office
2 Locations
56 Employees
140K-160K Annually

PwC Logo PwC

Artificial Intelligence Engineer

Artificial Intelligence • Professional Services • Business Intelligence • Consulting • Cybersecurity • Generative AI
Hybrid
11 Locations
370000 Employees
72K-212K Annually

PwC Logo PwC

Artificial Intelligence Engineer

Artificial Intelligence • Professional Services • Business Intelligence • Consulting • Cybersecurity • Generative AI
Hybrid
11 Locations
370000 Employees
119K-337K Annually

Similar Companies Hiring

Bellagent Thumbnail
Artificial Intelligence • Machine Learning • Business Intelligence • Generative AI
Chicago, IL
20 Employees
Golden Pet Brands Thumbnail
Digital Media • eCommerce • Information Technology • Marketing Tech • Pet • Retail • Social Media
El Segundo, California
178 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