Job Description

Job description

What you’ll be working on:
  • Designing and building hybrid ML models that combine supervised learning, time‑series forecasting, and NLP to extract insights from unstructured data like PDFs, fund memos, and regulatory filings.
  • Adding explainability to models using techniques like SHAP, LIME, and feature attribution so outputs are transparent and human‑readable.
  • Building scalable data pipelines across off‑chain fundamentals, on‑chain activity, and macro benchmarks.
  • Integrating data from sources like FRED, PitchBook LCD, Securitize, Centrifuge, Maple, and TrueFi, with strong data lineage and freshness guarantees.
  • Developing anomaly detection and reconciliation tools across issuer, administrator, and blockchain datasets.
  • Creating evaluation frameworks to measure accuracy, confidence intervals, latency, and data quality.
  • Backtesting model outputs against historical NAVs, secondary‑market trade...

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