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We’re seeking a hands-on AI/ML engineer to design, build, and produce Generative AI solutions —including RAG pipelines and multi-agent systems —to automate workflows and drive operational excellence. You’ll work closely with solution/data architects, software developers, data engineers, and domain experts to rapidly prototype and deliver scalable, enterprise-grade systems. This is an individual contributor role requiring strong research skills, deep expertise in AI foundation models, and the ability to translate cutting-edge concepts into impactful solutions for digital grid challenges. A Snapshot of your Day How You’ll Make an Impact (responsibilities of role) End-to-End GenAI Development: Design and implement RAG pipelines, agentic workflows, and LLM integrations for tasks such as document understanding, classification, and knowledge assistance. Multi-Agent Orchestration: Build agent-based applications for planning, tool use, and execution using frameworks like LangGraph, Semantic Kernel, and prompt orchestration tools. AI Enterprise Architecture: Strong Experience in AI architecture (scalable, modern, and secure) design across AI/ML enterprise solutions. Data & MLOps Foundations: Architect data pipelines and cloud solutions for training, deployment, and monitoring on Azure/AWS with Docker, Kubernetes, and CI/CD. Rapid Prototyping to Production: Convert problem statements into prototypes, iterate with stakeholders, and harden into production-ready microservices (FastAPI) with APIs and event-driven workflows. Evaluation & Reliability: Define rigorous evaluation metrics for LLM/ML systems (accuracy, latency, cost, safety), optimize retrieval quality, prompt strategies, and agent policies. Security & Compliance: Implement Responsible AI guardrails, data privacy, PII handling, access controls, and auditability. Collaboration & Enablement: Partner with data engineers, mentor junior team members, and contribute to internal documentation and demos. What You Bring (required qualification and skill sets) Education: Bachelor’s/master’s in computer science, Data Science, Engineering, or equivalent experience Experience: 7–12 years delivering AI/ML, Data Science solutions in production. 2-3 years focused on Generative AI/LLM applications. Technical Skills: Programming: Strong Python (typing, packaging, testing), data stacks (NumPy, Pandas, scikit-learn), API development (FastAPI/Flask). GenAI Expertise: Prompt engineering, RAG design (indexing, chunking, reranking). Embeddings and vector databases (FAISS, Azure AI Search, Pinecone). Agent frameworks (LangGraph, Semantic Kernel) and orchestration strategies. Model selection/fine-tuning, cost-performance optimization, safety filters. Cloud & Data: Hands-on with Azure/AWS; experience with Azure OpenAI, Azure AI Search, Microsoft Fabric/Databricks (preferred), Snowflake or similar DWH. MLOps: Docker, Kubernetes, CI/CD (GitHub Actions/Gitlab), model deployment/monitoring. Architecture: Microservices, event-driven design, API security, scalability, and resilience. Soft Skills: Excellent team player with the ability to work collaboratively in cross-functional and multicultural teams. Strong communication skills able to explain complex technical ideas to non-technical stakeholders. Adaptability to changing priorities and evolving technologies. Problem-solving mindset with creativity, curiosity, and a proactive approach. Time management & prioritization in fast-paced, iterative environments. A mentoring attitude toward junior colleagues and an openness to receiving feedback. Strong sense of ownership and accountability over deliverables. Domain Knowledge: Experience applying AI/ML to power systems, electrical grids, or related domains. Preferred Qualifications Experience with Azure OpenAI, Microsoft Fabric/Prompt Flow, Copilot Studio connectors, or enterprise integrations (SharePoint/Teams). Expertise in ML/DL techniques: time-series forecasting, anomaly detection, NLP document AI (OCR, classification, extraction). Familiarity with security (OAuth2, RBAC), observability (OpenTelemetry), and cost governance (token budgeting). Tech Stack Languages/Frameworks: Python, FastAPI/Flask, LangGraph/Semantic Kernel/CrewAI/AutoGen, scikit-learn, PyTorch/TensorFlow. LLM & Retrieval: Azure OpenAI/Open weights, embeddings, vector DBs (FAISS/Milvus/Pinecone), reranking. Data & Cloud: Snowflake, Azure/AWS (storage, compute, messaging), SQL. Ops: Docker, Kubernetes, GitHub Actions/Jenkins, Helm, monitoring/logging. Collaboration: Git, Jira/Azure DevOps, Agile/Scrum.
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