Mode de travail
Sur site
Seniorité
Lead
Catégorie
IT
Catégorie IT
Data Science et ML
Langue
English
Publié
29 mai 2026
Dernière vérification
29 mai 2026
Où ce poste est disponible
Replié par défaut pour garder la description facile à parcourir.
États-Unis
- United States, États-Unis
- États-Unis
Contexte JobGrid
Résumé du poste par JobGrid
Quant Trader (Sports & Prediction Markets) at crypto is an on-site role in the United States, classified as IT / Data Science & ML at lead level. JobGrid normalizes the source facts, keeps the employer copy separate, and preserves the original application path.
- Location and workplace: United States, on-site.
- Comparable classification: IT, subcategory Data Science & ML.
- Seniority level in the payload: Lead.
- Source freshness: posted 2026-05-29 and last checked 2026-05-29; the source content is in English, and JobGrid keeps the original-language boundary intact while presenting a mapped
About the role:
You will help design the engine powering OG.com’s liquidity. You’ll build and maintain a system for continuous, two-way quotes across thousands of simultaneous markets, bridging high-level theory and production-grade automation.
You will help design the engine powering OG.com’s liquidity. You’ll build and maintain a system for continuous, two-way quotes across thousands of simultaneous markets, bridging high-level theory and production-grade automation.
Focus: Architecting a multi-market autonomous pricing engine.
Responsibilities:
- Autonomous Live Valuation: Engineer the logic synthesizing real-time sports data, player metrics, and market feeds into fair-value anchors and dynamic, real-time spreads.
- Liability & Inventory Skewing: Build self-correcting models that automatically adjust odds based on book exposure and lopsided betting volume to incentivize balancing the book.
- Defensive Design & Sharp Mitigation: Implement high-velocity protocols to mitigate adverse selection from "sharp" action, court-siding, and information asymmetry in milliseconds.
- Risk Automation & Hedging: Define the algorithmic logic for warehousing sports risk internally versus routing and hedging exposure across external exchanges and market makers.
- Technical Translation: Convert complex sports pricing strategies and mathematical models into scalable requirements for data and platform engineering teams.
- Trading Desk Guardrails: Partner with the risk desk to define the engine’s operational boundaries, maximum liability thresholds, and automated kill-switches.
- Real-Time Leadership: Act as the technical anchor during high-leverage sporting events, providing rapid calibration and manual intervention when the system is under peak pressure.
Requirements:
- Quantitative Sports Fluency: Deep understanding of probability, binary prediction contracts, and sports analytics; treating every match, inning, or political event as a shifting probability curve.
- Pipeline Design: Experience building production-ready betting or trading systems, from low-latency sports data ingestion (e.g., Opta, Sportradar) to automated bet acceptance engines.
- Applied Data Science: Success deploying predictive models that learn from in-play microstructure, public betting sentiment, and price velocity.
- Systems Integrity: Expertise in building error-tolerant infrastructure that remains rock-solid under extreme throughput (e.g., Super Bowl, World Cup, or election nights).