Posted on: 22/08/2025
Position : Solutions Architect - AI
Experience : 14-20 Years
Role Overview
We are seeking a highly experienced AI Solutions Architect with a strong background in software development and a proven track record of leading AI/ML initiatives at scale. The ideal candidate will combine hands-on technical expertise with strategic leadership to architect innovative AI-driven solutions that align with organizational objectives.
This role demands deep knowledge in Generative AI, large-scale AI deployments, vector databases, prompt engineering, and cloud AI/ML ecosystems, along with the ability to translate complex business problems into scalable technical architectures.
Key Responsibilities :
AI/ML Solution Architecture :
- Lead the design and implementation of AI/ML solutions across multiple business units, ensuring alignment with strategic objectives.
- Architect scalable, secure, and high-performance AI platforms, integrating Generative AI, LLMs, and advanced AI paradigms (RAG, Agentic AI, base model fine-tuning).
- Define solution architecture for prompt engineering, embedding pipelines, and vector database integration.
- Establish best practices for AI model deployment, lifecycle management, and monitoring at scale.
Cloud & Infrastructure :
- Leverage cloud-native AI/ML services on AWS, Azure, or GCP to implement robust AI solutions.
- Design cloud architectures for large-scale data processing, AI inference pipelines, and real-time arbitration use cases.
- Ensure integration with existing enterprise systems, databases (SQL/NoSQL), and vector storage systems.
Technical Leadership & Governance :
- Serve as the technical lead for AI/ML projects, mentoring teams of data scientists, ML engineers, and software developers.
- Define data compliance, security protocols, and AI governance frameworks, ensuring ethical and fair AI implementations.
- Collaborate with legal, business, and risk management teams to ensure AI deployments meet regulatory and ethical standards.
Business & Stakeholder Engagement :
- Act as the bridge between technical teams and business stakeholders, translating technical capabilities into actionable business solutions.
- Analyze complex business requirements and architect AI-driven digital transformation initiatives to optimize workflows and decision-making.
- Oversee the delivery of AI-enabled platforms, ensuring on-time execution, adherence to quality standards, and measurable business impact.
Innovation & Continuous Improvement :
- Research, evaluate, and implement emerging AI frameworks, generative models, and vector database technologies.
- Drive adoption of advanced prompt design patterns, embedding techniques, and model fine-tuning strategies.
- Foster a culture of innovation and AI-driven experimentation across the organization.
Required Skills & Expertise :
Technical Skills :
- 14-20 years of software development experience with at least 5+ years in AI/ML and 3+ years in an architectural/leadership role.
- Hands-on experience with Generative AI frameworks, LLMs, RAG, Agentic AI, and base model fine-tuning.
- Strong prompt engineering and design patterns expertise.
- Deep knowledge of vector databases, embeddings, semantic search, and AI-driven retrieval systems.
- Proficiency in cloud AI/ML services (AWS SageMaker, Azure ML, GCP Vertex AI, etc.) and deployment pipelines.
- Strong understanding of databases (SQL, NoSQL), distributed data systems, and ETL/data pipelines.
- Expertise in security, data compliance, and AI governance frameworks.
- Knowledge of AI ethics, fairness, explainability, and responsible AI practices.
Leadership & Business Skills :
- Excellent communication, stakeholder management, and change management skills.
- Experience in large-scale digital platform design with AI integration.
- Ability to translate complex AI/ML technical concepts into business value propositions.
- Proven track record of mentoring technical teams and driving AI strategy across an organization.
Preferred Qualifications :
- Advanced degree in Computer Science, AI/ML, Data Science, or related fields.
- Previous experience delivering real-time AI platforms for high-stakes applications (finance, arbitration, healthcare, or enterprise SaaS).
- Hands-on familiarity with MLOps frameworks, CI/CD pipelines for AI/ML, model versioning, and monitoring.
Did you find something suspicious?