Posted on: 25/02/2026
Key Responsibilities :
- Design and architect end-to-end, enterprise-grade AI/ML systems with a focus on scalability, compliance, and security.
- Lead and participate in highly agile, iterative development cycles using Azure DevOps sprints, ensuring rapid delivery and continuous improvement.
- Architect and oversee solutions utilizing CrewAI and Langraph frameworks for advanced AI orchestration (mandatory).
- Guide teams using Python and C# for AI solution development and integration.
- Define Retrieval Augmented Generation (RAG) pipelines, including vector database
integration, knowledge ingestion, and caching layers.
- Architect dynamic system prompts, context memory, and persona alignment frameworks.
- Implement model routing strategies to optimize performance, accuracy, and cost.
- Establish best practices for CI/CD pipelines, MLOps, and cloud-native AI deployments.
- Ensure infrastructure meets compliance standards.
- Oversee the SDLC for AI initiatives, ensuring best practices in requirements gathering, design,
implementation, testing, deployment, and ongoing support.
- Drive rapid prototyping and MVP delivery, balancing speed with quality and scalability.
- Foster a culture of innovation, encouraging experimentation and continuous learning within
the team.
- Collaborate closely with data engineers, AI engineers, and product stakeholders to align system design with business objectives.
- Provide technical leadership, mentoring, and architectural oversight for engineering teams.
Required Qualifications :
- 10+ years of experience in AI/ML architecture and enterprise solution design.
lifecycle (SDLC), including requirements analysis, system design, development, testing,
deployment, and maintenance.
- Proven ability to deliver enterprise-grade AI solutions from concept to production, ensuring
alignment with business goals and technical standards.
- Hands-on experience managing and delivering projects using Azure DevOps sprints or similar
agile tools.
- Proficiency in both Python and C# programming languages.
- Deep expertise with CrewAI and Langraph (mandatory).
- Strong expertise in LLM fine-tuning, LoRA/QLoRA, quantization, and system prompt
engineering.
- Deep knowledge of RAG pipelines, vector databases, and semantic search.
- Proficiency with cloud platforms (GCP Vertex AI preferred; AWS SageMaker or Azure ML
acceptable).
- Proven track record in architecting scalable, distributed AI systems.
- Excellent communication, stakeholder management, and technical documentation skills.
- Strong research skills and a proactive, self-driven approach to problem-solving and
technology evaluation.
- Willingness and ability to overlap with USA Eastern Time for at least 34 hours daily to
collaborate with distributed teams.
Nice-to-Have Skills :
- Experience with Microsoft Semantic Kernel.
- Prior work in regulated industries (healthcare, finance, insurance).
- Strong understanding of compliance, data security, and risk frameworks.
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