companyToss logo

[Core] Data Analytics Engineer (Feature)

TossSeoul
On-site Full-time

Clicking Apply Now takes you to AutoApply where you can tailor your resume and apply.


Unlock Your Potential

Generate Job-Optimized Resume

One Click And Our AI Optimizes Your Resume to Match The Job Description.

Is Your Resume Optimized For This Role?

Find Out If You're Highlighting The Right Skills And Fix What's Missing

Experience Level

Experience

Qualifications

- Experience in Feature Engineering or designing/building a Feature Store.- Direct experience in designing/building large-scale data pipelines (e.g., Spark, Flink, Kafka).- Experience designing data lineage or metadata management systems is advantageous.- Experience in creating or operating data quality (DQ) monitoring systems is advantageous.

About the job

About the Data Reliability Team

The Data Reliability Team at Toss, part of the Data Platform Tribe, focuses on monitoring the company’s data assets end-to-end. The team identifies critical data points, manages data quality checks, and oversees the full data lifecycle. Formed to address the lack of visibility into how backend and frontend code deployments affect data, features, models, and serving processes, the team plays a key role in maintaining trust in Toss’s data infrastructure.

What You Will Do

  • Design and build pipelines to generate features used across the organization, including inputs for machine learning models, Elasticsearch indices, Redis, and API responses.
  • Develop and operate systems for feature quality management, such as retention policies and data quality maintenance.
  • Directly develop common features that serve multiple teams within Toss.
  • Review existing metadata for features and models, and work to fill any gaps in metadata coverage.
  • Create processes to detect ad-hoc features and promote them to Verified Features status.
  • Systematically manage data quality and assess the impact of data as it flows into online serving and machine learning systems.

Who We’re Looking For

  • Experience in feature engineering or in designing and building a feature store.
  • Proven ability to design and build large-scale data pipelines using tools such as Spark, Flink, or Kafka.
  • Familiarity with data lineage or metadata management systems is a plus.
  • Experience building or operating data quality monitoring systems is also valued.

Application Tips

  • If you have designed or operated a feature store, please describe its structure and the challenges it addressed in your application.
  • Include examples of how you have systematically resolved data quality issues.

Hiring Process

  1. Application
  2. Job Interview
  3. Cultural Fit Interview
  4. Reference Check
  5. Compensation Negotiation
  6. Final Acceptance and Onboarding

Why Join Toss as a Data Analytics Engineer

This role offers the chance to set the standard for organization-wide features at Toss. Help design processes and management systems, and lead the development and operation of shared data infrastructure that supports the company’s growth.

Location

Seoul

About Toss

Toss is a leading fintech company in South Korea, dedicated to providing innovative financial solutions and enhancing data reliability across its platforms. With a vibrant working culture, Toss encourages creativity and collaboration among its teams.

Similar jobs

Tailoring 0 resumes

We'll move completed jobs to Ready to Apply automatically.