Back to Jobs

Senior Data Scientist- Conversational AI

Bengaluru
Technology
2 Openings

Location: Bengaluru

Experience: 4-8 Years

What youโ€™ll work on:

  • Building and owning a conversational AI research assistant for retail investors in Indian capital markets, think Claude but specialized for different instruments and macro analysis for non-expert users.
  • Designing multi-agent agentic pipelines with tool-calling, memory management, and multi-turn conversational flows that handle real, messy, incomplete queries from retail users (not just clean, structured prompts from analysts).
  • RAG pipeline architecture: source curation, chunking strategy, embedding quality, retrieval tuning, reranking, and citation-grounded responses that retail users can trust.
  • Integrating real-time financial data sources (NSE/BSE feeds, Screener, Tickertape, news APIs, company filings) as live tool-callable data layers, not just static retrieval.
  • Building the guardrails and evaluation layer: domain scoping, hallucination mitigation, confidence scoring, and monitoring to ensure the system stays accurate and within bounds over time.
  • Fine-tuning or adapting LLMs where retrieval alone isn't sufficient.
  • Building ML models for user behaviour, personalization, and financial insights that feed into the conversational layer.

Expectations :

  • 4โ€“8 years of hands-on experience in Data Science, Machine Learning, or Applied AI.
  • Capital Markets/WealthTech domain experience is highly preferred, or candidates who have built AI research assistants for financial products or have strong personal knowledge of investing/trading.
  • Understanding of large language models (LLMs) like LLAMA, Anthropic Claude 3, or Sonnet.
  • Familiarity with cloud platforms for data science like AWS Bedrock and GCP Vertex AI.
  • Strong proficiency in Python and data science libraries (scikit-learn, TensorFlow, PyTorch).
  • Solid understanding of statistical methods, machine learning algorithms, and wealth tech applications.
  • Experience in data wrangling, visualization, and analysis.

Good to Have:

  • Experience in capital market usecases.
  • Familiarity with recommender systems and personalization techniques.
  • Experience building and deploying production models.
  • Data science project portfolio or contributions to open-source libraries.
  • Experience with embedding models and retrieval quality improvement.
  • Worked at an AI-first startup in any domain.

Recruitment Notice

โ€œDue to high interest, our team connects only with candidates whose profiles closely match the role mandate.โ€

Exploring your next leadership move?

Most leadership roles never reach job boards. ExecEdge helps senior professionals access the hidden leadership market through positioning, outreach, and warm introductions.

Join Community