Company Description  
High Volt Analytics assists medium to large organizations in becoming AI ready, starting with Finance & Accounts automation.
We focus on automating financial processes to deliver real-time insights and error-free reports, integrating data into a secure AI-ready foundation, offering interactive AI-powered insights, and developing enterprise AI roadmaps.
Our clients include CFOs, Controllers, FP&A leaders, and CEOs who aim to move beyond manual processes and harness AI-driven competitive advantages.
Core Focus Areas :
- Build and optimize RAG (Retrieval-Augmented Generation)  systems on Azure.
 
 
- Deploy, fine-tune, and manage LLMs  within Azure environments (OpenAI, HuggingFace, or custom models).
 
 
- Deep integration with Azure AI Search , Cognitive Services , and Azure Machine Learning pipelines .
 
 
- Collaborate on vector store (Qdrant / Azure AI Search), embeddings, and prompt orchestration.
 
 
- Translate finance data structures into meaningful, conversational AI outputs.
 
 
Must-Have Skills:
- Strong experience with Azure AI Studio / Foundry  or Azure OpenAI Service .
 
 
- Proven knowledge of deploying and scaling LLM-based applications .
 
 
- Practical hands-on with vector databases , embedding workflows, and tools like LangChain  or Semantic Kernel .
 
 
- Understanding of Power BI semantic models , finance document structures, and business logic.
 
 
- Familiarity with Azure Machine Learning , Azure Functions , and Key Vault  for secure orchestration.
 
 
- Python-based AI pipeline development (FastAPI experience is a plus).
 
 
Good-to-Have Skills:- Familiarity with financial or BI reporting systems  (Power BI, QuickBooks, accounting workflows).
 
 
- Experience integrating search + chat UIs  (Streamlit, Gradio, React, etc.).
 
 
- Background in building AI copilots  or enterprise-focused assistants .
 
 
Why This Role Matters:
While your Technical Project Lead  will guide the overall engineering and system integration, this AI Engineer  will: 
- Specialize in the AI layer , handling model workflows, retrieval systems, and Azure-based intelligence.
 
 
- Bridge the gap between business data and conversational output , enabling smarter responses.
 
 
- Accelerate integration with Azure-native AI tools , reducing friction and increasing speed-to-market.