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Quant Crypto Price Aggregation

Robust aggregation of cryptocurrency prices across fragmented trading venues, with attention to noisy quotes, venue reliability, outlier handling and market microstructure effects.

Problem

Crypto markets are fragmented across exchanges with heterogeneous liquidity, latency, fee structures and data quality. A single venue price can be unstable, stale or affected by microstructure noise.

Approach

This work studies robust estimators, venue weighting, quote filtering and diagnostics for identifying unreliable observations before producing an aggregate reference price.

Technical Focus

  • Robust statistics for noisy cross-venue data.
  • Outlier detection and stale quote handling.
  • Market microstructure-aware reliability metrics.
  • Reproducible Python research pipeline.

Stack

Python Quant Finance Robust Statistics Crypto Markets