Machine Learning Engineer - Platforms
Remote · مکمل وقت
درخواست دینے والے پہلے فرد بنیں۔
- تجربہ
- 3+ سال
- تنخواہ
- USD 123,000 – USD 185,000 / year
- کھلنا
- 1
- پوسٹ کیا گیا
- 6 گھنٹے قبل
- کام کا موڈ
- گھر سے کام کریں۔
- تعلیم
- بیچلر کی ڈگری
- دوبارہ شروع کریں۔
- درخواست دینے کی ضرورت ہے۔
ملازمت کی تفصیل
Role Overview
As a Machine Learning Engineer specializing in Platforms within the Data Impact & Governance group, you will lead the design and expansion of the institution-wide AI/ML enterprise platform that supports clinical, research, and operational machine learning applications. This is a technically hands-on position influencing data science workflows across the entire organization to foster secure, efficient, and impactful AI implementation.
Responsibilities
- Develop, administer, and maintain the AI/ML infrastructure including Dataiku, Kubernetes, and Azure ensuring robustness, scalability, and seamless integration with other institutional systems.
- Orchestrate the deployment and operation of training, inference, and pipelines in Dataiku across Azure cloud and Kubernetes clusters hosted on-premises.
- Establish and sustain reproducible MLOps workflows emphasizing version control, governance, and governance across the model lifecycle.
- Manage containerized environments utilizing Docker and Kubernetes to support data science workloads effectively.
- Provide technical platform support, troubleshoot environment or dependency-related problems for data scientists and ML engineers.
- Monitor and optimize platform performance, cost-efficiency, security, and ensure compliance with enterprise and regulatory policies.
- Construct scalable feature engineering, model validation, tracking, and testing pipelines within Dataiku, Kubernetes, and Azure.
- Apply problem-solving skills to debug and resolve complex platform and pipeline challenges.
- Assist with healthcare data integration leveraging standards such as HL7, FHIR, or DICOM when necessary for model development.
- Document and share best practices and platform knowledge through training sessions and cross-team collaboration.
- Support analytical processes by facilitating data access, reviewing project inputs, and aiding interpretation.
- Communicate clearly about platform status, risks, and mitigation during meetings and collaborative forums.
- Collaborate efficiently with leadership, peers, and users across technical and non-technical groups.
- Perform any additional duties to advance the AI/ML platform, MLOps, and institutional data science efforts.
Qualifications
- Education: Bachelor's degree in Computer Science, Software Engineering, Data Science, Physics, Mathematics & Statistics, or closely related fields is required. A Master's degree in similar disciplines is preferred.
- Experience: Minimum of three years in machine learning engineering, data science, data engineering, or software engineering is required; possession of a Master's degree reduces the required experience to one year. PhD holders are exempt from experience requirements.
- Preferred Skills: Experience in healthcare, familiarity with MLOps platforms and cloud AI certifications, proficiency with CI/CD pipelines and AI lifecycle automation. Hands-on skills with Azure services including Azure Kubernetes Service and Azure ML or equivalent, and Kubernetes expertise are advantageous.
Benefits & Additional Information
- Comprehensive benefits encompass medical and dental coverage, paid leave, retirement plans, tuition assistance, and recognition programs.
- This role carries responsibility for safeguarding critical infrastructure as outlined in Texas law, necessitating routine security assessments and compliance.
- The organization is committed to equal employment opportunities across all protected classes and complies with applicable institutional and legal anti-discrimination policies.
- Requisition ID: 178799
- Employment Status: Full-Time, Regular
- Work Schedule: Day shifts
- Salary Range: $123,000 minimum to $185,000 maximum with a midpoint of $154,000 annually
- FLSA Status: Exempt (not eligible for overtime)
- Fund Type: Hard funding
- Work Location: Remote within Texas
- This is a pivotal position eligible for referral bonuses and relocation assistance.