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GenAI ML/MLOps Engineering Lead (Remote or Hybrid)

S&P Global

Victoria

Remote

CAD 90,000 - 150,000

Full time

6 days ago
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Job summary

An established industry player is seeking a GenAI ML/MLOps Engineering Lead to spearhead the development of innovative AI solutions. This role involves leading engineering activities to build production-grade generative AI services, ensuring seamless deployment and monitoring of models and data pipelines. You'll collaborate with a talented AI ML team, contributing to cutting-edge ML operations solutions that drive transformation and deliver value to customers. If you're passionate about AI and looking to make a significant impact in a forward-thinking environment, this opportunity is perfect for you.

Qualifications

  • 8+ years of experience in machine learning or data analytics.
  • 5+ years of experience with MLOps and machine learning engineering.

Responsibilities

  • Lead ML engineering efforts for production-grade GenAI services.
  • Develop MLOps platforms and automated pipelines for model deployment.

Skills

Python
MLOps
Machine Learning Engineering
Big Data
Containerization
Cloud Platforms
Distributed Systems
Microservices

Education

Bachelor's degree in Computer Science

Tools

Elasticsearch
SQL
NoSQL
Apache Airflow
Spark
Kafka
Databricks
MLflow
Kubernetes

Job description

GenAI ML/MLOps Engineering Lead (Remote or Hybrid)

Join to apply for the GenAI ML/MLOps Engineering Lead (Remote or Hybrid) role at S&P Global

About The Role:

We are seeking a Lead/Associate Director of ML & MLOps Engineering - GenAI to join our ML team within the Data Science COE at S&P Global, focusing on building Generative AI solutions. You will lead the engineering activities for building production-grade generative AI solutions, ensuring seamless deployment, monitoring, and management of models and data pipelines.

The Team:

You will work closely with a world-class AI ML team, including experts in AI ML modeling, ML & LLMOps engineers, data science, and data engineering. You will contribute to ML operations solutions and be a key part of S&P’s AI-driven transformation to deliver value internally and to customers.

Responsibilities and Impact:
  • Lead ML engineering efforts to architect, build, and deploy production-grade GenAI services and solutions.
  • Work on large-scale distributed systems, including infrastructure, data ingestion platforms, databases, microservices, and orchestration services.
  • Develop MLOps/LLMOps platforms and automated pipelines for deploying, monitoring, and maintaining models, with governance, cost, and performance optimization.
  • Collaborate with cross-functional teams to integrate machine learning models into production systems.
  • Create and maintain documentation, best practices, and processes for MLOps/LLMOps.
  • Work with technology teams on developing and implementing the Enterprise AI platform.
Qualifications:

Minimum Requirements:

  • Bachelor's degree in Computer Science, Engineering, or related field.
  • 8+ years of experience in machine learning, data analytics, or similar roles.
  • 5+ years of experience with:
    • Python (or Scala) coding at production level.
    • MLOps/LLMOps, machine learning engineering, Big Data, etc.
    • Tools like Elasticsearch, SQL, NoSQL, Apache Airflow, Spark, Kafka, Databricks, MLflow.
    • Containerization, Kubernetes, cloud platforms, CI/CD, workflow orchestration.
    • Distributed systems, AI/ML solutions architecture, Microservices.

Preferred Qualifications:

  • 2-3 years of operationalizing large-scale data pipelines.
  • Open-source contributions, research projects, Kaggle experience.
  • Experience with RAG pipelines, prompt engineering, Generative AI use cases.
  • Experience with SageMaker and/or Vertex AI.
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