Hi..
Greetings...!
Hope you are doing well.
Tittle: Azure AI Architect
Location: Boston, MA (“Onsite”)
Duration: 6+ months
Hourly Pay Rate-$70/hr - $75/C2C
Role
Overview
The AI Tech Lead is responsible for architecting, designing, and leading end to
end AI/GenAI solutions across enterprise programs. This role combines deep
technical expertise with leadership to drive AI adoption, guide technical
teams, collaborate with business stakeholders, and ensure scalable, secure, and
compliant AI delivery. The AI Tech Lead acts as the primary technical authority
for AI initiatives within the program/CoE.
Key Responsibilities
1. AI Solution Architecture & Design
• Lead the architecture and design of AI/ML/GenAI solutions (LLMs, prompt
engineering, vector search, RAG, NLP, computer vision, MLOps, automation).
• Evaluate and select appropriate AI frameworks, models (open-source &
proprietary), cloud services, and data pipelines.
• Define scalable architectures using Azure, AWS, GCP, or hybrid environments.
• Drive RAG pipelines, model fine tuning, and embeddings strategy for
enterprise use cases.
2. Technical Leadership
• Mentor and guide a team of AI engineers, data scientists, ML engineers,
analysts, and automation engineers.
• Conduct code reviews, design reviews, and ensure best practices in AI and
software engineering.
• Build reusable AI components, accelerators, and frameworks for the
organization.
3. Delivery & Execution
• Translate business requirements into technical specifications and AI solution
approaches.
• Lead POCs, pilots, and AI product lifecycle from ideation to deployment.
• Ensure accuracy, performance, and reliability of AI systems through
evaluations, testing, and optimizations.
• Coordinate with DevOps/MLOps teams for CI/CD pipelines, model deployment,
monitoring, and observability.
4. Data Engineering & Governance
• Work closely with data engineering teams to define data ingestion, cleansing,
feature engineering, and model training datasets.
• Ensure compliance with enterprise data governance, privacy, security, and
ethical AI guidelines.
• Set up monitoring systems for model drift, data drift, and performance
degradation.
5. Stakeholder Management
• Collaborate with business leaders, product owners, architects, QA and
Validation leads, and delivery partners.
• Communicate technical concepts in a simple, business-friendly manner.
• Prepare architecture documents, solution blueprints, and presentations for
leadership reviews.
Thanks & Regards!
Ankita Pal
Lead IT Recruiter
Email: ankit...@pacerstaffing.com