We are seeking a highly skilled GenAI Lead Engineer  to design and implement advanced frameworks for alternate data analysis in the investment management domain.
The candidate will leverage LLM APIs (GPT, LLaMA, etc.) , build scalable orchestration pipelines, and architect cloud/private deployments to power next-generation AI-driven investment insights.
This role will also involve leading a cross-functional team of Machine Learning Engineers and UI Developers  to deliver robust, production-ready solutions.
Responsibilities  
- GenAI Framework Development -  Develop custom frameworks using GPT APIs or LLaMA  for alternate data analysis and insights generation.
 
 Optimize LLM usage for investment-specific workflows, including data enrichment, summarization, and predictive analysis.
 
 
- Automation & Orchestration -  Design and implement document ingestion workflows  using tools such as n8n  (or similar orchestration frameworks).
 
 Build modular pipelines for structured and unstructured data.
 
 
- Infrastructure & Deployment -  Architect deployment strategies on cloud (AWS, GCP, Azure) or private compute environments (CoreWeave, on-premises GPU clusters) .
 
 Ensure high availability, scalability, and security in deployed AI systems.
 
 
Required Candidate Profile  
- Strong proficiency in Python  with experience in frameworks such as TensorFlow or PyTorch .
 
 
- 2+ years of experience in Generative AI and Large Language Models (LLMs) .
 
 
- Experience with VectorDBs (e.g., Pinecone, Weaviate, Milvus, FAISS)  and document ingestion pipelines.
 
 
- Familiarity with data orchestration tools  (e.g., n8n, Airflow, LangChain Agents).
 
 
- Understanding of cloud deployments  and GPU infrastructure (CoreWeave or equivalent).
 
 
- Proven leadership skills with experience managing cross-functional engineering teams .
 
 
- Strong problem-solving skills and ability to work in fast-paced, data-driven environments.
 
 
- Experience with financial or investment data platforms .
 
 
- Knowledge of RAG (Retrieval-Augmented Generation)  systems.
 
 
- Familiarity with frontend integration  for AI-powered applications.
 
 
- Exposure to MLOps practices  for continuous training and deployment.