Requirements:
â Required Qualifications
â 8+ years of experience in AI/ML engineering and architecture
â Proven track record of implementing ML models in commercial production environments
â Deep expertise in traditional machine learning (supervised/unsupervised learning, feature engineering, model optimization)
â Significant experience with Generative AI technologies (LLMs, prompt engineering, RAG, fine\-tuning, vector databases)
â Hands\-on experience building agentic AI systems and multi\-agent architectures
â Strong programming skills in Python and relevant ML/AI frameworks (SKlearn, XGBoost, PyTorch, TensorFlow, LangChain, LlamaIndex, etc.) â Demonstrated ability to design and implement GenAI evaluation
â Excellent communication skills with ability to present complex technical topics clearly to both technical and non\-technical audiences
â Strong project management capabilities with history of delivering complex projects on schedule
â Preferred Qualifications
â Experience with enterprise AI platform development and MLOps practices
â Knowledge of AI governance frameworks and responsible AI practices
â Familiarity with cloud platforms (AWS, Azure, GCP) and their AI/ML services
â Experience with real\-time AI systems and low\-latency architectures
â Background in telecommunications, financial services, or other regulated industries
â Advanced degree in Computer Science, AI/ML, or related technical field
â Key Competencies
â Technical Excellence
â Expert understanding of GenAI design pattern tradeoffs (RAG architectures, agent frameworks, tool use, memory systems)
â Proficiency in GenAI evaluation methodologies (automated metrics, LLM\-as\-judge, human evaluation)
â Strong foundation in traditional ML fundamentals and deployment patterns
â Leadership & Delivery
â Ability to drive teams toward concrete deliverables while maintaining quality standards
â Experience managing multiple stakeholders and competing priorities
â Track record of delivering complex technical projects in client environments
â Communication & Influence
â Confident, clear communication style suitable for executive engagement
â Ability to build credibility quickly with technical and business stakeholders
â Skill in translating technical complexity into actionable business insights
â Mindset & Approach
â Continuous learning orientation with pulse on latest AI developments
â Pragmatic decision\-making that balances innovation with implementability
â Client\-centric mindset focused on delivering measurable business value
â Comfortable with ambiguity and able to structure unstructured problems