Role Overview : Full Stack Engineer
As an Full Stack Engineer within the Digital department, you will be responsible for designing, building, and deploying advanced AI solutions. These include chatbots, intelligent agents, and agentic workflows that utilize state-of-the-art large language model (LLM) APIs such as OpenAI, Anthropic, and Google Gemini. Your work will involve integrating retrieval-augmented generation (RAG), multimodal LLMs, and document understanding to address real-world challenges in renewable energy and industrial settings. Additionally, you will be tasked with training and deploying classical machine learning models that predict events and identify root causes of failures in factory environments.
Key Responsibilities
- Conversational AI & Agent Orchestration : Develop robust chatbots and agentic systems using LLMs (OpenAI, Anthropic, Gemini). Implement retrieval-augmented generation (RAG), vector search, and multimodal pipelines to deliver reliable, high-quality user experiences.
- Backend APIs & Model Serving : Deploy production-grade APIs and web services that serve ML / LLM models and chatbots utilizing FastAPI or Node / Express. Implement OpenAPI / Swagger, OAuth / OIDC authentication, and pagination.
- Frontend UX : Create lightweight front ends using modern frameworks (React, Next.js, Angular, or Streamlit) to demo, operate, and monitor AI features, including dashboards, chat user interfaces, forms, and simple admin tools.
- Document Intelligence & Multimodal Extraction : Build tools for multimodal extraction and analysis of complex documents such as PDFs and engineering drawings (P&IDs, electrical schematics), delivering structured and actionable outputs.
- Cloud DevOps & Productionization : Deploy solutions to production using CI / CD practices, containerize services, and integrate with data sources and enterprise systems. Ensure reliability, scalability, and cost efficiency.
- MLOps Observability & Quality : Monitor latency, accuracy, and cost metrics. Implement observability, prompt / response logging, evaluations, and automated regressions to maintain high quality.
Model Tuning, Training & Evaluation : Fine-tune and perform few-shot learning with LLMs, train supporting models (classification, OCR, extraction), build datasets, conduct experiments, compare checkpoints, and document results.
Required Skills
At least 1 year of hands-on experience building and deploying generative AI products such as chatbots, agents, or agentic workflowsMinimum 4 years of professional software engineering experienceBachelor's degree in Computer Science, Statistics, or a related fieldStrong proficiency in Python and experience with OpenAI, Anthropic, or Google Gemini APIsProven ability to develop production APIs and web services using FastAPI, Flask, Django, or Node / ExpressWorking knowledge of front-end fundamentals (HTML, CSS, JavaScript) and experience with at least one modern framework (React, Next.js, Angular, or Vue) for delivering basic UIsSolid foundation in software engineering best practices including Git, code review, testing, CI / CD, and experience with cloud platforms (AWS, GCP, Azure)Strong communication skills and ability to address open-ended, ambiguous problemsPreferred Skills
PhD or Master's degree in Computer Science, Statistics, or a related fieldOver 2 years of industrial experience in Generative AI and Machine LearningExperience with LangChain, LlamaIndex, orchestration frameworks, and tool-use / agentsPractical expertise in retrieval-augmented generation (RAG), embeddings, and vector databases (such as FAISS, Pinecone, Weaviate, pgvector)Familiarity with industrial control systems, including PLCs and SCADAExperience in renewable energy, manufacturing, or industrial automation sectorsKnowledge of MLOps practices including Docker / Kubernetes, model packaging, feature / vector stores, evaluations, tracing / observability(OpenTelemetry), and A / B testing
Technology Stack
FastAPIExpressReact / Next.jsAngularPostgreSQLAWSDockerBitbucket Pipelines