Dlocal
Dlocal26mo ago

Senior Machine Learning Engineer

MadridFull Timesenior
Data ScienceMachine Learning EngineerDataData & AI
2 views0 saves0 applied

Quick Summary

Requirements Summary

MLOps, data platforms, or large‑scale backend / distributed systems. Hands‑on

Technical Tools
Data ScienceMachine Learning EngineerDataData & AI
Why should you join dLocal?
 
dLocal enables the biggest companies in the world to collect payments in 40 countries in emerging markets. Global brands rely on us to increase conversion rates and simplify payment expansion effortlessly. As both a payments processor and a merchant of record where we operate, we make it possible for our merchants to make inroads into the world’s fastest-growing, emerging markets. 
 
By joining us you will be a part of an amazing global team that makes it all happen. Being a part of dLocal means working with 1000+ teammates from 30+ different nationalities and developing an international career that impacts millions of people’s daily lives. We are builders, we never run from a challenge, we are customer-centric, and if this sounds like you, we know you will thrive in our team.
 
 
 

What’s the opportunity?

As a Senior MLOps Engineer at dLocal, you will be a key individual contributor in the team that builds and operates our ML and AI platform, with a strong focus on Feature Store and MLOps workflows.

You will implement and evolve the components that Data Science and AI teams use every day to take models and AI‑powered services from idea to production: feature pipelines, training and deployment workflows, observability and automation.

A core part of this role is to use agents and AI services to automate as much as possible of what we do in MLOps — from feature store and platform operations to fraud/anomaly workflows and ML cost optimization — working side by side with the AI Team and the MLOps Technical Referent.

  • Implement and maintain online and offline feature pipelines that feed our enterprise Feature Store, combining:

    • Flink‑based streaming jobs ingesting large volumes of events from multiple sources (payments, fraud, anomaly, etc.) into online stores.

    • Databricks / Spark pipelines for offline feature computation, backfills and training datasets.

    • Ensure:

      • Point‑in‑time correctness for offline training and backtesting.

      • Low‑latency, high‑throughput online feature serving with clear SLAs, TTL semantics and multi‑tenant safety.

      • Contribute to the feature catalog and specs:

        • Define entities, feature views, schemas, SLAs, PII classification and owners.

        • Help data scientists and domain teams onboard new features safely and consistently across Flink and Databricks.

        • Develop tooling for:

          • Backfills and materialization coordination between Flink and Databricks (Lakehouse / Delta).

          • Offline–online parity checks, data quality, drift and freshness monitoring for critical feature groups.

          • Unified feature retrieval APIs (online/offline/batch) and SDK/CLI usage from models and services.

  • Implement and improve training and evaluation pipelines:

    • Reproducible workflows, experiment tracking and model registry integration.

    • Promotion flows from dev → staging → production, following platform standards.

    • Work on online and batch inference paths:

      • Model packaging and deployment.

      • Rollout strategies (canary, shadow, rollback) aligned with SRE/Infra.

      • Instrument pipelines and services with metrics, logs and traces:

        • Integrate with our observability stack (e.g. OTel, Coralogix).

        • Expose dashboards and alerts for ML components (latency, errors, drift, freshness).

  • Integrate and extend agents and AI services (built by the AI Team and MLOps) to automate key parts of the Feature Store and MLOps workflows (health checks, drift and quality analysis, documentation/specs, incident triage, FinOps suggestions, etc.).

  • Design these automations with clear guardrails: observable, auditable and easy to roll back, always keeping humans in control of production decisions.

  • Implement changes that respect platform standards around:

    • Access control, secrets management and PII handling in features and models.

    • Environment separation and change management for ML/AI components.

    • Participate in on‑call rotations or escalation paths for ML pipelines and feature infrastructure:

      • Diagnose and fix incidents.

      • Contribute improvements to playbooks, dashboards and tests.

  • Work closely with:

    • MLOps Technical Referent to align on architecture and technical direction.

    • Data Science squads and the AI Team to understand requirements and unblock use cases.

    • Fraud, Anomaly and other product squads as consumers of features and models.

    • Contribute to internal documentation, RFCs, examples and onboarding guides so other engineers and data scientists can adopt the platform more easily.

    • Mentor mid‑level engineers on good practices in pipelines, testing, observability and automation.

  • Solid experience as a Senior Engineer working on:

    • MLOps, data platforms, or large‑scale backend / distributed systems.

    • Hands‑on experience with big data / streaming technologies (e.g. Spark, Flink, Kafka, Kinesis, or similar).

    • Proven track record building production‑grade ML pipelines:

      • Experiment tracking and reproducible training flows.

      • CI/CD for models and data pipelines.

      • Online and batch inference at scale.

      • Familiarity with cloud‑based ML platforms and containerized deployments
        (e.g. Databricks, SageMaker, Vertex AI, or equivalent).

      • Strong understanding of observability:

        • Metrics, logs and traces.

        • Data and model drift, freshness and quality checks.

        • Ability to write clean, maintainable code and collaborate through reviews, design docs and pairing sessions.

        • Comfortable communicating with Data Scientists, ML Engineers and Infra/SRE, translating requirements into concrete technical solutions.

Nice to Have

~1 min read
  • Experience working with or around Feature Stores (Feast, Databricks Feature Store, custom implementations, etc.).

  • Exposure to LLMs, agents and AI assistants, especially applied to:

    • Developer productivity (code/infra copilots).

    • Log/metric/incident analysis or documentation generation.

    • Experience in Fintech, risk, fraud or anomaly detection environments.

    • Contributions to internal standards, RFCs, runbooks or technical talks.





Location & Eligibility

Where is the job
Madrid
Hybrid — some on-site time required
Who can apply
Same as job location
Listed under
Worldwide

Listing Details

Posted
February 21, 2024
First seen
March 26, 2026
Last seen
April 30, 2026

Posting Health

Days active
35
Repost count
0
Trust Level
33%
Scored at
April 30, 2026

Signal breakdown

freshnesssource trustcontent trustemployer trust
Dlocal
Dlocal
lever

dLocal is a Uruguayan company that specializes in cross-border payments, providing innovative local payment solutions for emerging markets.

Employees
750
Founded
2016
View company profile
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DlocalSenior Machine Learning Engineer