Quick Summary
Overview
function googleTranslateElementInit() { new google.translate.TranslateElement({pageLanguage: 'en'}, 'google_translate_element'); } MLOps Engineer (Remote)…
Technical Tools
bigquerydockergcpgithub-actionspythonpytorchsqltensorflowterraformab-testingci-cddatabase-designperformance-optimization
Location: Remote (working in CST hours)
Requirements
~1 min read- 4+ years of MLOps/ML platform or DevOps for data/ML systems
- Hands on GCP experience: BigQuery, Cloud Run, Cloud Storage, Pub/Sub, Cloud Build (Vertex AI a plus)
- Proficiency with Python, packaging (Docker), and CI/CD
- Solid SQL skills and understanding of data modeling for ML features/labels
- Experience operating production models with monitoring, alerting, and incident response
Nice to Have
~1 min read- Model registry & experiment tracking (ML Flow, W&B, or Vertex AI)
- Data validation & monitoring (Great Expectations, TensorFlow Data Validation, WhyLabs, Arize)
- Feature store concepts (BQ-based or managed)
- Canary/shadow deployments, autoscaling, and performance tuning
- IaC (Terraform), testing frameworks (unit/integration/lead), and observability (Open Telemetry, Cloud Monitoring)
Requirements
~1 min read- N/A
Responsibilities
~1 min read- →Pipelines & orchestration: Design CI/CD and scheduled pipelines for training and inference (Cloud Build, Workflows/Scheduler, Pub/Sub, Cloud Run; Vertex Pipelines if used).
- →Packaging & deployment: Standardize model packaging (Docker), artifact/versioning, and rollout strategies (A/B, canary, shadow) with automated rollbacks.
- →Data/feature flows: Define contracts for features/labels in BigQuery and manage backfills; support batch and (where applicable) streaming features.
- →Registry & experimentation: Stand up a model registry and experiment tracking (MLflow/Weights & Biases/Vertex) with approvals and audit trails.
- →Monitoring & quality: Implement data/feature validation, drift/decay monitoring, performance/latency SLOs, and alerting; build dashboards and playbooks.
- →Security & compliance: Enforce IAM least privilege, service accounts, Secrets Manager, provenance/lineage, and change management.
- →Cost & performance: Track training/inference cost and latency; optimize hardware/ autoscaling and query patterns.
- →Enablement: Create templates, docs, and tooling so DS/contractors can add models with minimal friction.
- Compute/Orchestration: Cloud Run, Workflows/Scheduler, Pub/Sub, Vertex Pipelines (optional)
- Data/Storage: BigQuery, Cloud Storage (artifacts, datasets)
- CI/CD & IaC: Cloud Build or GitHub Actions, Terraform
- ML Tooling: MLflow/W&B/Vertex, Docker, PyTorch/TF/XGBoost (as provided by DS)
- Monitoring: Cloud Logging/Monitoring, Evidently/WhyLabs/Arize, custom run IDs & metrics
- Small, versioned releases; test-first pipelines; documented runbooks.
- Clear SLOs and blameless incident reviews.
Compensation
Hourly Rate Range - $40-$60/ hr
Benefits Offered:
[Health, Dental, Vision Insurance]
Deadline: Applications accepted until 10/30/2025 at 11:59 PM CST
We are an Equal Pay Employer. All employment decisions, including compensation, benefits, hiring, training, and promotions, are made based on merit, qualifications, and business needs. We do not discriminate on the basis of gender, race, ethnicity, age, disability, sexual orientation, or any other protected characteristic. We are committed to ensuring equal pay for equal work and regularly review our compensation practices to promote fairness, equity, and transparency across our organization.
Location & Eligibility
Where is the job
—
Location terms not specified
Listing Details
- First seen
- May 6, 2026
- Last seen
- May 8, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 49%
- Scored at
- May 6, 2026
Signal breakdown
freshnesssource trustcontent trustemployer trust
4 other jobs at dt
View all →Explore open roles at dt.
Similar Machine Learning Engineer jobs
View all →L
LilasciencesStaff ML Engineer, Life Sciences AI
USD 162800-200200
C
Ca Office Of Digital InnovationChief AI Engineer
Machine Learning Engineer (Toronto, ON)
Senior DevOps/MLOps Engineer (Chantilly, VA; Herndon, VA; Hybrid; Northern Virginia)
$150k–$200k/yr
AI Engineer
Senior ML Engineer
Newsletter
Stay ahead of the market
Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.
A
B
C
D
No spam. Unsubscribe at any time.
.jpg)