Principal AI Solutions Architect Healthcare
TechVerseCorp
Posted on 12 Mar
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Nationality
Any Nationality
Gender
Not Mentioned
Vacancy
1 Vacancy
Job Description
Roles & Responsibilities
Key Responsibilities
Solution Analysis & Architecture
Lead the technical discovery and analysis phase for healthcare AI use cases.
Translate clinical and business requirements into end-to-end AI solution architectures.
Define system architecture covering:
Data ingestion & pipelines
AI/ML model lifecycle
Application & integration layers
Deployment, monitoring, and scalability
Ensure solutions meet clinical safety, data privacy, and regulatory expectations.
AI & Data Architecture Leadership
Design architectures for:
Machine Learning & Deep Learning models
Generative AI (LLMs, clinical assistants, decision support)
Medical imaging & diagnostics pipelines
Define data engineering architectures including:
Data lakes, feature stores, and analytics platforms
Structured & unstructured healthcare data handling
Establish MLOps standards for:
Model training, validation, deployment, and monitoring
Versioning, retraining, and drift detection
Technical Leadership & Delivery Ownership
Own the technical delivery of AI healthcare solutions end to end.
Lead and mentor a local engineering team ( 5 engineers).
Act as the technical authority across:
Design reviews
Architecture decisions
Code and model quality
Work closely with Product, CTO, and stakeholders to ensure alignment between vision and execution.
Security, Compliance & Standards
Ensure architectures comply with healthcare data protection principles (HIPAA-like controls, data governance, auditability).
Define security-by-design practices including:
Data encryption
Access control
Secure model deployment
Establish architectural standards and best practices for healthcare AI systems.
Collaboration & Stakeholder Engagement
Act as the technical bridge between business, product, and engineering teams.
Participate in solution discussions, requirement refinement, and technical decision-making.
Support internal product strategy with technical insights and feasibility assessments.
Required Technical Skills & Expertise
AI & Machine Learning
Strong experience in:
Machine Learning & Deep Learning architectures
Model lifecycle management in production
Experience with:
Clinical decision support systems
Medical imaging or diagnostics AI (preferred)
Generative AI
Hands-on experience designing or integrating:
LLM-based systems
AI assistants or decision-support tools
Understanding of prompt engineering, orchestration, and model governance.
Data Engineering & Analytics
Strong knowledge of:
Data pipelines, ETL/ELT processes
Healthcare data (structured & unstructured)
Experience with analytics platforms and large-scale data processing.
MLOps & Cloud Architecture
Experience designing and implementing:
CI/CD pipelines for ML
Model monitoring, retraining, and performance tracking
Cloud-native architecture experience (AWS, Azure, GCP, or OCI).
Leadership & Professional Skills
Proven ability to own architecture and technical delivery.
Strong analytical and problem-solving mindset.
Ability to translate complex business and clinical needs into technical solutions.
Excellent communication skills with technical and non-technical stakeholders.
Comfortable setting standards, making decisions, and being accountable.
Desired Candidate Profile
Requirements
Company Industry
- IT - Software Services
Department / Functional Area
- IT Software
Keywords
- Principal AI Solutions Architect Healthcare
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TechVerseCorp
TechVerse is seeking a Principal AI Solutions Architect Healthcare to lead the end-to-end technical design and delivery of a new generation of AI-powered clinical applications, including diagnostics, medical imaging, and clinical decision support systems.