Senior Data Engineer

machinify • United State
Remote
Apply
AI Summary

Transform raw external data into powerful, trusted datasets that drive payment, product, and operational decisions. Design and implement robust, production-grade pipelines using Python, Spark SQL, and Airflow. Onboard new customers by integrating their raw data into internal pipelines and canonical models.

Key Highlights
Design and implement robust, production-grade pipelines
Onboard new customers by integrating their raw data
Transform raw external data into powerful, trusted datasets
Key Responsibilities
Design and implement robust, production-grade pipelines
Lead efforts to canonicalize raw healthcare data
Onboard new customers by integrating their raw data into internal pipelines and canonical models
Build resilient, idempotent transformation logic
Refactor and scale existing pipelines
Tune Spark jobs and optimize distributed processing performance
Technical Skills Required
Python Spark SQL Airflow AWS Kafka SQS
Benefits & Perks
Competitive salary
Equity
401(k) including employer match
Full Medical/Dental/Vision for employees & their families
Flexible and trusting environment
Work from anywhere in the US
Unlimited FTO
Nice to Have
Familiarity with healthcare data (837, 835, EHR, UB04, claims normalization)

Job Description


Machinify is a leading healthcare intelligence company with expertise across the payment continuum, delivering unmatched value, transparency, and efficiency to health plan clients across the country. Deployed by over 85 health plans, including many of the top 20, and representing more than 270 million lives, Machinify brings together a fully configurable and content-rich, AI-powered platform along with best-in-class expertise. We’re constantly reimagining what’s possible in our industry, creating disruptively simple, powerfully clear ways to maximize financial outcomes and drive down healthcare costs.

As a Senior Data Engineer, you’ll be at the heart of transforming raw external data into powerful, trusted datasets that drive payment, product, and operational decisions. You’ll work closely with product managers, data scientists, subject matter experts, engineers, and customer teams to build, scale, and refine production pipelines — ensuring data is accurate, observable, and actionable.

You’ll also play a critical role in onboarding new customers, integrating their raw data into our internal models. Your pipelines will directly power the company’s ML models, dashboards, and core product experiences. If you enjoy owning end-to-end workflows, shaping data standards, and driving impact in a fast-moving environment, this is your opportunity.

What You’ll Do

  • Design and implement robust, production-grade pipelines using Python, Spark SQL, and Airflow to process high-volume file-based datasets (CSV, Parquet, JSON).
  • Lead efforts to canonicalize raw healthcare data (837 claims, EHR, partner data, flat files) into internal models.
  • Own the full lifecycle of core pipelines — from file ingestion to validated, queryable datasets — ensuring high reliability and performance.
  • Onboard new customers by integrating their raw data into internal pipelines and canonical models; collaborate with SMEs, Account Managers, and Product to ensure successful implementation and troubleshooting.
  • Build resilient, idempotent transformation logic with data quality checks, validation layers, and observability.
  • Refactor and scale existing pipelines to meet growing data and business needs.
  • Tune Spark jobs and optimize distributed processing performance.
  • Implement schema enforcement and versioning aligned with internal data standards.
  • Collaborate deeply with Data Analysts, Data Scientists, Product Managers, Engineering, Platform, SMEs, and AMs to ensure pipelines meet evolving business needs.
  • Monitor pipeline health, participate in on-call rotations, and proactively debug and resolve production data flow issues.
  • Contribute to the evolution of our data platform — driving toward mature patterns in observability, testing, and automation.
  • Build and enhance streaming pipelines (Kafka, SQS, or similar) where needed to support near-real-time data needs.
  • Help develop and champion internal best practices around pipeline development and data modeling.

What You Bring

  • 6+ years of experience as a Data Engineer (or equivalent), building production-grade pipelines.
  • Strong expertise in Python, Spark SQL, and Airflow.
  • Experience processing large-scale file-based datasets (CSV, Parquet, JSON, etc) in production environments.
  • Experience mapping and standardizing raw external data into canonical models.
  • Familiarity with AWS (or any cloud), including file storage and distributed compute concepts.
  • Experience onboarding new customers and integrating external customer data with non-standard formats.
  • Ability to work across teams, manage priorities, and own complex data workflows with minimal supervision.
  • Strong written and verbal communication skills — able to explain technical concepts to non-engineering partners.
  • Comfortable designing pipelines from scratch and improving existing pipelines.
  • Experience working with large-scale or messy datasets (healthcare, financial, logs, etc.).
  • Experience building or willingness to learn streaming pipelines using tools such as Kafka or SQS.
  • Bonus: Familiarity with healthcare data (837, 835, EHR, UB04, claims normalization).

🌱 Why Join Us

  • Real impact — your pipelines will directly support decision-making and claims payment outcomes from day one.
  • High visibility — partner with ML, Product, Analytics, Platform, Operations, and Customer teams on critical data initiatives.
  • Total ownership — you’ll drive the lifecycle of core datasets powering our platform.

Customer-facing impact — you will directly contribute to successful customer onboarding and data integration.

What We Offer

  • Work from anywhere in the US! Machinify is digital-first.
  • Full Medical/Dental/Vision for employees & their families
  • Flexible and trusting environment where you’ll feel empowered to do your best work
  • Unlimited FTO
  • Competitive salary, equity, 401(k) including employer match

The salary for this position is based on an array of factors unique to each candidate: Such as years and depth of experience, set skills, certifications, etc. The base salary range for this role is $180k-$220k. We are hiring for different levels, and our Recruiting team will let you know if you qualify for a different role/range. Salary is one component of the total compensation package, which includes meaningful equity, excellent healthcare, flexible time off, and other benefits and perks.

Equal Employment Opportunity at Machinify

We are committed to equal employment opportunity regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender, gender identity or expression, or veteran status. We are proud to be an equal opportunity workplace. Machinify is an employment at will employer. We participate in E-Verify as required by applicable law. In accordance with applicable state laws, we do not inquire about salary history during the recruitment process. If you require a reasonable accommodation to complete any part of the application or recruitment process, please let our recruiters know. See our Candidate Privacy Notice at: https://www.machinify.com/candidate-privacy-notice/

Similar Jobs

Explore other opportunities that match your interests

Regional Staffing Manager

Data Science
•
6h ago

Premium Job

Sign up is free! Login or Sign up to view full details.

•••••• •••••• ••••••
Job Type ••••••
Experience Level ••••••

US Foods

United State

Senior Data Engineer

Data Science
•
21h ago
Visa Sponsorship Relocation Remote
Job Type Full-time
Experience Level Mid-Senior level

Insight Global

United State

Senior Data Scientist

Data Science
•
21h ago

Premium Job

Sign up is free! Login or Sign up to view full details.

•••••• •••••• ••••••
Job Type ••••••
Experience Level ••••••

adelaide

United State

Subscribe our newsletter

New Things Will Always Update Regularly