Senior Data Operations Engineer - AI/ML Training Pipelines

rex.zone • United State
Remote
Apply
AI Summary

Design and improve LLM training pipelines, build and operate scalable data labeling and evaluation workflows, and partner with distributed teams to drive measurable model performance improvement.

Key Highlights
Design and improve LLM training pipelines
Build and operate scalable data labeling and evaluation workflows
Partner with distributed teams to drive measurable model performance improvement
Key Responsibilities
Design and improve LLM training pipelines for supervised fine-tuning and RLHF
Build and maintain annotation tooling, task routing, and QA evaluation checks
Define labeling taxonomies for NLP tasks (e.g., named entity recognition, classification)
Support computer vision annotation workflows (bounding boxes, polygons, segmentation QA)
Run prompt evaluation and rubric-based model evaluation to identify failure modes
Implement content safety labeling policies, audits, and escalation paths
Create annotation guidelines, sampling plans, and ensure annotation guidelines compliance
Analyze training data quality metrics, disagreement patterns, and error distributions
Document datasets and evaluation artifacts for traceability and reproducibility
Technical Skills Required
Data labeling systems QA evaluation Model evaluation pipelines RLHF concepts Large language model evaluation methods NLP and/or computer vision annotation

Job Description


About Rex.zone

Rex.zone connects India-aligned STEM talent with Remote, Full-Time engineering programs supporting AI/ML training workflows. You will help improve training data quality and evaluation rigor across LLM training pipelines, RLHF, and model evaluation.

About The Role

You will build and operate scalable data labeling and evaluation workflows, implement annotation tooling, run prompt evaluation, and partner with distributed teams to drive measurable model performance improvement.

Key Responsibilities

  • Design and improve LLM training pipelines for supervised fine-tuning and RLHF
  • Build and maintain annotation tooling, task routing, and QA evaluation checks
  • Define labeling taxonomies for NLP tasks (e.g., named entity recognition, classification)
  • Support computer vision annotation workflows (bounding boxes, polygons, segmentation QA)
  • Run prompt evaluation and rubric-based model evaluation to identify failure modes
  • Implement content safety labeling policies, audits, and escalation paths
  • Create annotation guidelines, sampling plans, and ensure annotation guidelines compliance
  • Analyze training data quality metrics, disagreement patterns, and error distributions
  • Document datasets and evaluation artifacts for traceability and reproducibility

Required Qualifications

  • Mid-Senior experience in engineering, data operations engineering, or applied ML workflows
  • Hands-on experience with data labeling systems, QA evaluation, or model evaluation pipelines
  • Familiarity with RLHF concepts and large language model evaluation methods
  • Working knowledge of NLP and/or computer vision annotation
  • Strong written communication for remote collaboration

How To Apply

Apply via Rex.zone and highlight experience in training data quality, annotation guidelines compliance, QA evaluation, RLHF, prompt evaluation, NLP/NER, computer vision annotation, and content safety labeling.

Similar Jobs

Explore other opportunities that match your interests

Software Engineer, Frontend

Programming
•
58m ago

Premium Job

Sign up is free! Login or Sign up to view full details.

•••••• •••••• ••••••
Job Type ••••••
Experience Level ••••••

mission, a cdw company

United State
Visa Sponsorship Relocation Remote
Job Type Part-time
Experience Level Not Applicable

Mercor

United State

Vice President of Business Development

Programming
•
5h ago

Premium Job

Sign up is free! Login or Sign up to view full details.

•••••• •••••• ••••••
Job Type ••••••
Experience Level ••••••

Tinuiti

United State

Subscribe our newsletter

New Things Will Always Update Regularly