English

TIP-Search: Time-Predictable Inference Scheduling for Market Prediction under Uncertain Load

Artificial Intelligence 2025-06-18 v2 Machine Learning Systems and Control Systems and Control Computational Finance

Abstract

This paper proposes TIP-Search, a time-predictable inference scheduling framework for real-time market prediction under uncertain workloads. Motivated by the strict latency demands in high-frequency financial systems, TIP-Search dynamically selects a deep learning model from a heterogeneous pool, aiming to maximize predictive accuracy while satisfying per-task deadline constraints. Our approach profiles latency and generalization performance offline, then performs online task-aware selection without relying on explicit input domain labels. We evaluate TIP-Search on three real-world limit order book datasets (FI-2010, Binance BTC/USDT, LOBSTER AAPL) and demonstrate that it outperforms static baselines with up to 8.5% improvement in accuracy and 100% deadline satisfaction. Our results highlight the effectiveness of TIP-Search in robust low-latency financial inference under uncertainty.

Keywords

Cite

@article{arxiv.2506.08026,
  title  = {TIP-Search: Time-Predictable Inference Scheduling for Market Prediction under Uncertain Load},
  author = {Xibai Wang},
  journal= {arXiv preprint arXiv:2506.08026},
  year   = {2025}
}
R2 v1 2026-07-01T03:07:31.873Z