Echo Global Logistics

Lead, Data Science Operations

Echo Global Logistics$129K — $188K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Hands-on experience with operating ML or software systems in production.
  • Strong working knowledge of CI/CD, deployment automation, and major cloud platforms (AWS, Azure, GCP).
  • Expertise in error handling, fault tolerance, and systems design for graceful failure.
  • Proficiency in Python and working understanding of ML model serving and monitoring.
  • Comfort with being the first point of contact for production issues, including on-call expectations.
  • Ability to teach complex infrastructure concepts to colleagues without tech backgrounds.

Responsibilities

  • Serve as the primary liaison between Data Science and the Architecture/Platform Engineering team.
  • Act as the first point of contact for production issues across deployed models.
  • Design practices that enhance error handling and system resilience.
  • Establish monitoring and observability for production model portfolios.
  • Guide the team in understanding the evolving deployment system.
  • Own model versioning, reproducibility, and operational governance.

Benefits

  • Comprehensive health and wellness programs.
  • Flexible remote work options.
  • Professional development opportunities.
  • Generous vacation and personal days policy.
Full Job Description
The Data Science Operations Lead sits at the intersection of Data Science, Engineering, and IT Architecture: a senior individual-contributor role focused on the operational side of the model lifecycle, including deployment, monitoring, scaling, and maintenance. Echo runs a growing portfolio of models in production, and this role exists to keep that portfolio reliable, observable, and well-governed without pulling our Data Scientists away from building new capabilities. The Lead is the team's resource for moving models from R&D to production services, the first line on production issues, and the standing point of contact with Architecture on everything deployment- and reliability-related.
What You'll Own
  • Model deployment partnership. Serve as Data Science's primary counterpart to the Architecture / Platform Engineering team on model deployment. Own the day-to-day collaboration, hand-offs, and coordination. Data Scientists typically hand off a trained model and its training data. Engineering needs a running service: an API, a web tool, something the business can call. Your job is to bridge that gap.
  • Production reliability and incident response. Act as first point of contact for production issues (outages, errors, degraded endpoints) across all deployed models and endpoints. This role carries an explicit on-call / off-hours availability expectation; production issues don't keep business hours, and shielding the development team from that interruption is central to the job.
  • Resilient, error-aware systems. Bring rigor to error handling and fault tolerance. Design and enforce practices that prevent errors before they happen and ensure models and endpoints degrade or fail gracefully, with sensible fallbacks, retries, alerting, and recovery paths.
  • Monitoring and observability. Establish and maintain the monitoring and observability needed to manage a portfolio of production models as an enterprise capability by tracking model health, endpoint performance, latency, logging, and prediction quality.
  • Deployment expertise and team enablement. Develop a detailed, working understanding of the deployment system as it continues to evolve, and act as the team's guide. Help Data Scientists move from experiment to production quickly and safely, and drive the templating, documentation, and automation that reduce the time the team spends on infrastructure.
  • Governance and quality. Own versioning, reproducibility, and operational governance for models in production, partnering with Architecture on the standards and controls that keep our model and algorithm footprint trustworthy.


Who You Might Be

This role sits at the intersection of data science and software/DevOps, and strong candidates arrive from either side of that line:
  • A software, DevOps, or platform engineer who has grown toward data science, having started in infrastructure, CI/CD, or production operations and since learned how data science models are built, served, and monitored.
  • A data scientist who has grown toward infrastructure, DevOps, and MLOps, having started by building models and since moved deliberately toward deployment, reliability, and the engineering discipline of keeping models healthy in production.

What Success Looks Like
  • The Data Science team spends materially less time on deployment logistics and incident response, and more on new development.
  • Production issues are caught early, triaged quickly, and resolved or escalated cleanly, with clear ownership.
  • Deployment becomes a repeatable, well-understood path for the team rather than a per-model project.
  • Data Science and Architecture operate as two well-aligned sides of one bridge.


Qualifications

Required
  • Hands-on experience operating ML or software systems in production: an MLOps, DevOps, SRE, platform, or data science background with demonstrated production ownership.
  • Strong working knowledge of CI/CD pipelines, deployment automation, and a major cloud platform (AWS, Azure, or GCP).
  • Demonstrated expertise in error handling, fault tolerance, and designing systems that fail gracefully (retries, fallbacks, alerting, monitoring/observability).
  • Proficiency in Python (R a plus), and a working understanding of how ML models are packaged, served, monitored, and retrained.
  • Comfort serving as first point of contact for production issues, including an on-call / off-hours expectation.
  • A teaching disposition, with the ability to translate complex infrastructure into clear guidance for colleagues who are not infrastructure specialists.


Preferred
  • Experience standing up monitoring and observability for a portfolio of production models or services (e.g., drift detection, performance tracking, alerting).
  • Familiarity with containerization (Docker) and orchestration (Kubernetes), infrastructure-as-code, and model-serving frameworks.
  • Familiarity with MLOps tooling such as MLflow, Airflow, or Kubeflow, or managed equivalents (e.g., SageMaker, Vertex AI), and with data/model versioning.
  • Experience working across an engineering/architecture boundary as a liaison or embedded operations partner.
  • Pragmatic use of AI tooling to accelerate operations and code-quality work, paired with sound judgment about when human reasoning is required.


Work environment/physical demands summary:

This job operates in an office environment and uses a computer, telephone and otheroffice equipment as needed to perform duties. The noise level in the work environment is typical of that of an office with an open seating floor plan. The employee may encounter frequent interruptions throughout the work day. The employee is regularly required to sit, talk, or hear.

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Benefits

For more information about our benefit offerings, please visit our careers page at https://www.echo.com/company/careers.

Compensation
$129,352.00-188,077.00 per year

This role is eligible for a bonus that is based on a combination of personal and business performance.

About Echo Global Logistics

Echo Global Logistics is a leading provider of technology-enabled transportation and supply chain management services. The company offers a wide range of services, including truckload, less-than-truckload, intermodal, and expedited shipping, as well as managed transportation, supply chain analytics, and freight audit and payment services. Echo's clients include shippers of all sizes, from small businesses to Fortune 100 companies, across a variety of industries. The company's proprietary technology platform, EchoShip, provides real-time visibility and control over shipments, helping clients optimize their supply chains and reduce costs. Echo has been recognized for its innovative technology and customer service, and has received numerous awards and accolades.
Learn more about Echo Global Logistics
Size
9 employees
Market Cap
$1.2 billion
Industry
Net Income
$15.8 million
Founded
2015
5 Year Trend
+10.7%
Revenue
$2.5 billion
NASDAQ

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