Overview
On Site
USD 175,000.00 - 230,000.00 per year
Full Time
Skills
Analytics
Machine Learning Operations (ML Ops)
Use Cases
Performance Monitoring
Real-time
Research
Collaboration
Data Science
Control Flow Graph
Continuous Integration and Development
Python
Scripting
Amazon SageMaker
Flask
Django
scikit-learn
PyTorch
XGBoost
Continuous Integration
Continuous Delivery
Workflow
Bitbucket
Jenkins
Nexus
Extract
Transform
Load
Machine Learning (ML)
Apache Spark
Apache Kafka
Artificial Intelligence
Docker
Orchestration
Kubernetes
Training
Military
Decision-making
Privacy
Legal
Job Details
Job Description
Principal ML Ops Engineer
The Enterprise Data & Analytics and Enterprise Data Platforms team is seeking a Principal ML Ops Engineer with expertise in operationalizing ML pipelines on AI/ML platforms such as AWS Sagemaker and H2O.ai.
Role Overview:
As a Principal ML Ops Engineer, you will lead the development of ML Ops processes and standards, utilizing code boilerplates and model inferencing frameworks to operationalize ML pipelines (including data/feature pipelines) on enterprise AI platforms. You will drive automation efforts to reduce time-to-market for ML use cases by identifying and optimizing data pipeline, model pipeline, and model consumption patterns. Collaboration with stakeholders across the organization will be key to integrating ML pipelines with business applications.
Responsibilities:
Key Requirements:
Education & Certifications:
Hours & Work Schedule:
Pay Transparency
The salary range for this position is $175,000 - $ 230,000 per year plus an opportunity to earn an annual discretionary bonus. Actual pay is based on various factors including but not limited to the work location, and relevant skills and experience.
We offer competitive pay, comprehensive medical, dental and vision coverage, retirement benefits, maternity/paternity leave, flexible work arrangements, education reimbursement, wellness programs and more. Note, Citizens' paid time off policy exceeds the mandatory, paid sick or paid time-away policy of very local and state jurisdiction in the United States. For an overview of our benefits, visit ;br>
#LI-Citizens1
About Us
Equal Employment Opportunity
Citizens, its parent, subsidiaries, and related companies (Citizens) provide equal employment and advancement opportunities to all colleagues and applicants for employment without regard to age, ancestry, color, citizenship, physical or mental disability, perceived disability or history or record of a disability, ethnicity, gender, gender identity or expression, genetic information, genetic characteristic, marital or domestic partner status, victim of domestic violence, family statparenthood, medical condition, military or veteran status, national origin, pregnancy/childbirth/lactation, colleague's or a dependent's reproductive health decision making, race, religion, sex, sexual orientation, or any other category protected by federal, state and/or local laws. At Citizens, we are committed to fostering an inclusive culture that enables all colleagues to bring their best selves to work every day and everyone is expected to be treated with respect and professionalism. Employment decisions are based solely on merit, qualifications, performance and capability.
Equal Employment and Opportunity Employer
Job Applicant Data Privacy Policy
Background Check
Any offer of employment is conditioned upon the candidate successfully passing a background check, which may include initial credit, motor vehicle record, public record, prior employment verification, and criminal background checks. Results of the background check are individually reviewed based upon legal requirements imposed by our regulators and with consideration of the nature and gravity of the background history and the job offered. Any offer of employment will include further information.
Principal ML Ops Engineer
The Enterprise Data & Analytics and Enterprise Data Platforms team is seeking a Principal ML Ops Engineer with expertise in operationalizing ML pipelines on AI/ML platforms such as AWS Sagemaker and H2O.ai.
Role Overview:
As a Principal ML Ops Engineer, you will lead the development of ML Ops processes and standards, utilizing code boilerplates and model inferencing frameworks to operationalize ML pipelines (including data/feature pipelines) on enterprise AI platforms. You will drive automation efforts to reduce time-to-market for ML use cases by identifying and optimizing data pipeline, model pipeline, and model consumption patterns. Collaboration with stakeholders across the organization will be key to integrating ML pipelines with business applications.
Responsibilities:
- Architect, design, and build ML engineering capabilities on the CFG ML Platform to accelerate ML pipeline build and delivery.
- Develop and enhance platform capabilities and frameworks to standardize and automate the deployment of ML models and pipelines.
- Implement capabilities such as feature stores, feature tracking, feature serving (real-time, batch), real-time features, model performance monitoring, model lineage tracking, model health, and model serving and consumption (real-time, batch, event-triggered, near real-time using Kafka).
- Define processes, research market trends, and implement best practices to develop and deploy ML pipelines and standards on the CFG ML Platform.
- Collaborate with stakeholders such as business teams, data science teams, enterprise architects, and security to uphold the highest standards of ML engineering practices and tools on the CFG platform.
- Develop CI/CD pipelines for continuous integration and delivery of ML models.
- Identify and automate ML pipeline and model deployment patterns to streamline ML workflows and processes.
- Troubleshoot and resolve issues related to ML model deployment and performance.
Key Requirements:
- 7+ years of experience with Python for scripting ML workflows.
- 5+ years of experience deploying ML pipelines and models using AWS Sagemaker.
- 3+ years of experience developing APIs with Flask, Django, FastAPI.
- 2+ years of experience with ML frameworks and tools such as scikit-learn, PyTorch, XGBoost, LightGBM, MLflow.
- Solid understanding of the ML lifecycle: model development, training, validation, deployment, and monitoring.
- Solid understanding of CI/CD pipelines for ML workflows using Bitbucket, Jenkins, Nexus.
- Experience with ETL processes for ML pipelines using Spark, Kafka.
- Preferred experience with H2O.ai.
- Preferred experience with containerization using Docker and orchestration using Kubernetes.
Education & Certifications:
- Bachelor's Degree or equivalent combination of education, training, and experience required, along with high technical competency to perform the needed responsibilities.
Hours & Work Schedule:
- Hours per Week: 40
- Work Schedule: Monday-Friday
Pay Transparency
The salary range for this position is $175,000 - $ 230,000 per year plus an opportunity to earn an annual discretionary bonus. Actual pay is based on various factors including but not limited to the work location, and relevant skills and experience.
We offer competitive pay, comprehensive medical, dental and vision coverage, retirement benefits, maternity/paternity leave, flexible work arrangements, education reimbursement, wellness programs and more. Note, Citizens' paid time off policy exceeds the mandatory, paid sick or paid time-away policy of very local and state jurisdiction in the United States. For an overview of our benefits, visit ;br>
#LI-Citizens1
About Us
Equal Employment Opportunity
Citizens, its parent, subsidiaries, and related companies (Citizens) provide equal employment and advancement opportunities to all colleagues and applicants for employment without regard to age, ancestry, color, citizenship, physical or mental disability, perceived disability or history or record of a disability, ethnicity, gender, gender identity or expression, genetic information, genetic characteristic, marital or domestic partner status, victim of domestic violence, family statparenthood, medical condition, military or veteran status, national origin, pregnancy/childbirth/lactation, colleague's or a dependent's reproductive health decision making, race, religion, sex, sexual orientation, or any other category protected by federal, state and/or local laws. At Citizens, we are committed to fostering an inclusive culture that enables all colleagues to bring their best selves to work every day and everyone is expected to be treated with respect and professionalism. Employment decisions are based solely on merit, qualifications, performance and capability.
Equal Employment and Opportunity Employer
Job Applicant Data Privacy Policy
Background Check
Any offer of employment is conditioned upon the candidate successfully passing a background check, which may include initial credit, motor vehicle record, public record, prior employment verification, and criminal background checks. Results of the background check are individually reviewed based upon legal requirements imposed by our regulators and with consideration of the nature and gravity of the background history and the job offered. Any offer of employment will include further information.
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.