Senior Data Engineer - Agents Systems

Multiple Locationsfull-timeJun 23, 20261 viewBe an early applicantOperations
AI Summary

Job Description

Building the Future of Open Finance

Payward - the parent company behind Kraken, NinjaTrader, Breakout, xStocks, Payward Services and CF Benchmarks - has spent the last 15 years building one of the most modern and globally accessible financial infrastructure platforms in the industry, built to advance an open, global financial system.


Before you apply, we encourage you to explore our culture page to understand what drives us and how we work.

Proof of work

The team

Founded in 2011, Kraken is one of the world's longest-standing crypto platforms, trusted by over 10 million individuals and institutions across the globe. It offers spot trading, margin, futures, staking, and OTC services, with products built for both individual investors and institutional clients.

The Agent Systems team is a 0→1 engineering group building internal AI-powered agents that interact directly with company systems. The mandate is to dramatically increase internal speed of execution through automation, intelligent inference, and workflow orchestration.

This team operates at the intersection of AI, backend systems, and applied product engineering. The work is pragmatic and fast-moving — prototypes are expected, but the bar for production reliability remains high. Engineers on this team move fluidly between experimentation and shipping, building systems that reason over user interactions and take meaningful action across internal tools.

You’ll work closely with cross-functional partners across product, infrastructure, and internal operations to deploy agent-driven capabilities that compound leverage across the organization.

The opportunity

  • Own and evolve streaming data pipelines that power live inference and real-time model serving across Kraken's AI infrastructure

  • Design and build feature stores that serve low-latency, high-reliability features to production ML models

  • Implement and maintain streaming systems using RisingWave, Apache Flink, or Kafka Streams, selecting the right tool for the workload

  • Partner with ML engineers and AI infra teams to define data contracts, feature schemas, and pipeline SLAs

  • Drive pipelines toward real-time where batch exists today reducing latency from hours to seconds

  • Ensure data quality, observability, and auditability across all streaming and feature engineering systems

  • Contribute to inference pipeline tooling where data engineering and model serving intersect

  • Evaluate emerging streaming and feature store technologies and shape the team's technical roadmap

What You Bring

  • 5+ years in data engineering with at least 2 years focused on streaming systems in production

  • Hands-on experience with RisingWave, Apache Flink, Kafka Streams, or comparable stream processing frameworks

  • Strong understanding of feature store design — online/offline consistency, point-in-time correctness, low-latency serving

  • Experience building data pipelines that feed production ML models or inference systems

  • Proficiency in Python and/or Scala; SQL fluency required

  • Familiarity with data quality frameworks, pipeline observability, and SLA ownership

  • Comfortable operating in a fast-moving, ambiguous environment embedded within an AI-focused team

Nice to haves

  • Direct experience with RisingWave in production

  • Exposure to inference pipeline architecture or model serving infrastructure

  • Experience with feature platforms

  • Crypto or fintech domain experience

Unless a specific application deadline is stated in the job posting, applications are accepted on an ongoing basis.

Please note, applicants are permitted to redact or remove information on their resume that identifies age, date of birth, or dates of attendance at or graduation from an educational institution.

We consider qualified applicants with criminal histories for employment on our team, assessing candidates in a manner consistent with the requirements of the San Francisco Fair Chance Ordinance.

Our commitment

Payward is powered by people from around the world and we celebrate the diverse talents, backgrounds, contributions, and unique perspectives that everyone brings to the table. We hire based on merit, seeking out people with the right abilities, knowledge, and skills for the job. We encourage you to apply for roles where you don't fully meet the listed requirements, especially if you're passionate or knowledgeable about crypto.

We may ask candidates to complete job-related skills or work-style assessments as part of our hiring process. These assessments evaluate competencies relevant to the role and are applied consistently across candidates for similar positions. Results are considered alongside experience and interviews, and are not the sole basis for any employment decision.

As an equal opportunity employer, we don't tolerate discrimination or harassment of any kind, whether based on race, ethnicity, age, gender identity, citizenship, religion, sexual orientation, disability, pregnancy, veteran status, or any other protected characteristic as outlined by federal, state, or local laws.

Stay connected

Follow us on Twitter

Learn on the Kraken Blog

Connect on LinkedIn


Candidate Privacy Notice

to track your applications

Job Fit Score

Interview Prep

Generate tailored interview questions for this role — Technical, Behavioral, and Culture fit.

Share this job

About Kraken

One of the largest and oldest cryptocurrency exchanges in the world, offering trading, staking, and futures across a wide range of digital assets.

Company Reviews

3.5(2)

Mission-driven team with great remote culture

Product Manager

Pros: Fully remote and they mean it. Great international team. Competitive pay for a remote company. Bitco…

Cons: Can feel chaotic at times. Communication across time zones is challenging. Some legacy tech debt.

Good place to learn but growing pains

Software Engineer

Pros: Remote-first is genuine. Good exposure to crypto trading systems. Decent benefits.

Cons: The 2022 layoffs changed the culture. Pay has fallen behind competitors. Career progression is uncle…

Job Details

Regionworldwide
Job Typefull-time
PostedJun 23, 2026
Visa SponsorshipNo
Closesin 60 days

Salary Intelligence

Based on 19 community reports for similar roles

Median$134k
Average$147k
Typical range$97k – $190k
View salary database →

Get similar job alerts

Be the first to hear about new full-time roles in Multiple Locations.