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Overview
Senior

Sr. Data Engineer I

Confirmed live in the last 24 hours

iHerb

iHerb

Compensation

$116,000 - $170,000/year

United States of America - Remote / Home Office
Remote
Posted April 22, 2026

Job Description

Job Description 

We are looking for a Senior Data Engineer to help evolve and scale our modern data ecosystem, including our data lake, data warehouse, and machine-learning enablement platforms. This role will contribute to the company’s data-driven culture, bring innovative approaches to cloud-native engineering, and help advance our MLOps capabilities to support production-grade AI/ML initiatives. You will collaborate closely with data scientists, analytics engineers, and cross-functional partners to deliver reliable, high-quality data and operationalized machine-learning solutions.

Responsibilities

  • Designs and builds scalable data extracts, integrations, transformations, and data models.

  • Ensures successful deployment and provisioning of data solutions across required environments.

  • Designs and implements data architectures and applications that enable speed, quality, and operational efficiency.

  • Interacts with cross-functional stakeholders to gather and define requirements and translate them into technical designs.

  • Develops deep familiarity with enterprise datasets, builds domain knowledge, and advances data quality.

  • Reviews requirements, identifies gaps, and drives resolution with stakeholders.

  • Identifies and recommends continuous improvement opportunities, ensuring integrations are automated, governed, and observable.

  • Serves as a key team member in designing and deploying a ground-up cloud data platform and pipeline.

  • Partners with data scientists to design, build, and maintain reproducible machine-learning pipelines, including feature engineering, model training, validation, deployment, and monitoring.

  • Implements CI/CD for data and ML workflows (model packaging, automated testing, environment management, release automation).

  • Builds and maintains production-grade ML infrastructure such as feature stores, model registries, data versioning, and experiment tracking frameworks (e.g., MLflow).

  • Ensures ML models follow best-practice governance, including automated model performance monitoring, drift detection, logging, observability, and alerting.

  • Designs scalable data pipelines optimized for ML workloads, such as batch, streaming, and real-time inference use cases.

  • Establishes MLOps standards, coding practices, and automation patterns that scale across teams.
     

Qualifications

  • Bachelor or Master`s degree in technical discipline such as Computer Science, Information Systems or another technical field

  • People person, team player with a strong can-do mentality

  • 5+ years of experience as a Data Engineer within a data and analytics environment.

  • Strong interpersonal skills with a collaborative, proactive, and solution-driven mindset.

  • Proficiency in data modeling concepts and techniques.

  • Expertise with Databricks and other cloud data warehousing solutions such as S3, Redshift, or BigQuery.

  • Hands-on experience building data pipelines and ETL/ELT workflows using PySpark for semi-structured data (merge, delete, combine, wrangling).

  • Advanced knowledge of Python and advanced working SQL skills including query optimization.

  • Ability to write, test, and debug RESTful APIs.

  • Experience working in agile, cross-functional environments.

  • Strong analytical, problem-solving, and critical-thinking capabilities.

  • Ability to guide junior engineers and contribute to technical design reviews.

  • Strong communication skills with the ability to present complex concepts clearly.

  • Experience in data quality initiatives such as Master Data Management (MDM).

  • Experience operationalizing machine-learning

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