Description
Key Responsibilities
- Architect and lead enterprise-wide AI/ML and Generative AI platforms.
- Design scalable AI solutions using LLMs, Agentic AI, RAG pipelines, and Vector Databases.
- Build production-grade AI applications including AI Copilots, Intelligent Chatbots, Recommendation Engines, and Knowledge Assistants.
- Design end-to-end ML pipelines covering data ingestion, feature engineering, model training, deployment, monitoring, and optimization.
- Develop high-performance AI services and backend APIs using Python and cloud-native technologies.
- Lead implementation of MLOps, AI governance, model versioning, monitoring, and continuous deployment.
- Architect distributed AI systems with high availability, scalability, and security.
- Integrate enterprise applications with AI services using REST APIs, event-driven architecture, and microservices.
- Collaborate with Data Scientists, Data Engineers, Product Managers, and Executive Leadership to deliver AI-driven business solutions.
- Mentor engineering teams, establish AI engineering standards, and drive innovation across enterprise AI initiatives.
Required Technical Skills
Artificial Intelligence & Generative AI
- Large Language Models (LLMs)
- OpenAI GPT
- Azure OpenAI
- Anthropic Claude
- Google Gemini
- Llama
- Mistral
- Prompt Engineering
- Fine-Tuning
- AI Agents
- Function Calling
- Tool Calling
Agentic AI & AI Frameworks
- LangChain
- LangGraph
- CrewAI
- AutoGen
- LlamaIndex
- Semantic Kernel
- Hugging Face
Machine Learning & Deep Learning
- Python
- Scikit-learn
- TensorFlow
- PyTorch
- NLP
- Deep Learning
- Supervised & Unsupervised Learning
- Reinforcement Learning
- Statistical Modeling
- Model Evaluation
- Feature Engineering
RAG & Vector Databases
- Retrieval-Augmented Generation (RAG)
- Pinecone
- FAISS
- ChromaDB
- Weaviate
- Milvus
- Embedding Models
- Semantic Search
Cloud AI Platforms
- Microsoft Azure
- AWS
- Google Cloud Platform (GCP)
- Azure AI Services
- Azure OpenAI
- AWS Bedrock
- Amazon SageMaker
- Google Vertex AI
MLOps & AI Engineering
- MLflow
- Kubeflow
- Docker
- Kubernetes
- CI/CD Pipelines
- Model Serving
- Model Monitoring
- AI Observability
- AI Governance
Big Data & Data Engineering
- Apache Spark
- PySpark
- Databricks
- Snowflake
- SQL
- Data Lakes
- Data Warehousing