Optum - Principal Data Scientist - Machine Learning/Artificial Intelligence (10-15 yrs)

Optum Global Solutions
Posted on
Optum Global Solutions logo

Experience
10 - 15 yrs
Salary (CTC)
5,800,000 - 8,270,000
Job Location
Bengaluru, India
Vacancy
1
Designation
Principal Data Scientist
Job Type
ONSITE

Job Description

Job Description :


As a Principal Data Scientist, you will hands on design, build, and productionize Agentic AI and GenAI solutions on top of a Healthcare Core Data Platform. You will deliver reliable, compliant, and scalable AI systems that work across large healthcare datasets (claims/clinical/provider/member) and enable measurable improvements in quality, cost, and operational efficiency.


Primary Responsibilities :


Agentic AI & GenAI Delivery :


- Design and implement agentic AI systems (multi step, tool using agents) that can plan, execute, and verify outcomes under defined guardrails for healthcare workflows


- Build GenAI solutions using enterprise approved LLMs including Claude 4.6 and OpenAI Codex (and equivalents) for :


i. intelligent data exploration and analytics assistance


ii. automated insight generation and summarization


iii. engineering productivity accelerators (code generation, refactoring, test creation)


iv. workflow automation and triage support


- Develop hybrid systems combining LLMs with classical ML (predictive/prescriptive models) for robust performance on healthcare use cases


Core Data Platform Integration :


- Implement AI solutions tightly integrated with the Core Data Platform (curated datasets, standardized semantics, governed access, reusable components)


- Partner with data engineering/platform teams to implement scalable patterns for :


i. secure tool-calling and controlled data access


ii. retrieval / grounding patterns (enterprise search, knowledge bases, curated datasets)


iii. reusable agent skills and shared libraries


Model / Agent Lifecycle Ownership :


- Own end to end delivery: problem framing - data readiness - prototyping - evaluation - production deployment - monitoring and iteration


- Build and maintain evaluation frameworks for LLM and agent behavior (quality, hallucination risk, safety, latency, and cost)


- Implement drift and behavior monitoring for models and agents; create feedback loops and runbooks to maintain performance over time


- Ensure production readiness: reliability, observability, incident response, and cost controls


Governance, Security & Responsible AI :


- Build solutions compliant with healthcare privacy and governance expectations (e.g., PHI handling, access controls, auditability, retention, and policy adherence)


- Implement guardrails: prompt protections, tool use restrictions, sensitive data redaction, and explainability approaches where required


- Document system behavior, limitations, and risk mitigations for technical and non technical stakeholders


Technical Influence :


- Influence adoption through hands-on artifacts: reference implementations, templates, evaluation harnesses, reusable agent patterns, and technical documentation


- Contribute to platform standards for LLMOps / AgentOps: telemetry, gating checks, prompt/version management, and secure deployment patterns


- Comply with the terms and conditions of the employment contract, company policies and procedures, and any and all directives (such as, but not limited to, transfer and/or re-assignment to different work locations, change in teams and/or work shifts, policies in regards to flexibility of work benefits and/or work environment, alternative work arrangements, and other decisions that may arise due to the changing business environment). The Company may adopt, vary or rescind these policies and directives in its absolute discretion and without any limitation (implied or otherwise) on its ability to do so


Required Qualifications :


- Bachelors or Masters degree in Computer Science, Data Science, Statistics, Engineering, or related field


- 12+ years of overall experience, with 5+ years in Data Science / AI/ML / Applied AI in enterprise environments


- Hands-on experience with ML frameworks: Scikit Learn, and at least one of TensorFlow / PyTorch


- Experience building evaluation + monitoring for ML/AI systems (metrics, drift, observability, reliability)


- Practical experience applying LLMs and coding assistants in real workflows, including Claude 4.6 and OpenAI Codex (or equivalent enterprise-approved tools/models)


- Solid proficiency in Python (pandas, numpy) and SQL; solid debugging and problem-solving skills


- Proven track record delivering production-grade AI/ML solutions end to end (not just experimentation)


Preferred Qualifications :


- Hands-on experience with agentic orchestration patterns: tool calling, memory strategies, guardrails, and multi-step workflow design


- Experience with streaming/event-driven systems (Kafka) for near-real-time use cases


- Exposure to LLMOps / AgentOps: prompt/version management, automated evaluation, red-teaming, telemetry, CI/CD integration


- Familiarity with big data / distributed compute (PySpark, distributed SQL engines) and large-scale pipelines


- Healthcare domain familiarity: claims/clinical/provider/member data and regulated delivery environments (privacy/security/compliance)


- Proven ability to own complex problem spaces end-to-end with minimal supervision, from design through production operations


- Proven ability to drive impact primarily through technical execution and reusable artifacts, not people management


- Proven ability to make engineering tradeoffs across accuracy, safety, latency, reliability, compliance, and cost and documents decisions clearly


- Proven ability to produce solutions that are adoptable and repeatable across multiple assets via templates, libraries, and reference implementations


Success Measures (What Good Looks Like in 6-12 Months) :


- Production Adoption: agent/GenAI capability used by multiple downstream teams or workflows


- Quality & Safety: measurable improvements in evaluation scores; reduced hallucination/safety incidents via guardrails


- Operational Excellence: monitoring coverage, drift detection, and incident response readiness implemented


- Productivity: reduced cycle time for analytics/engineering workflows via Claude 4.6/Codex-enabled accelerators


- Governance: audit-ready documentation, controlled PHI access, compliant deployments


Job Title : Principal Data Scientist


Industry Type : Analytics / KPO / Research


Department : Engineering - Software & QA


Employment Type : Full Time, Permanent


Role Category : Software Development


No Referrers Available

There are currently no referrers available for this job. You can still apply, will let you know once there is any referrer available.