Model Security Threats

Algorithm

Model security threats within algorithmic trading systems in cryptocurrency and derivatives markets frequently stem from vulnerabilities in code logic, potentially leading to unintended execution or manipulation of orders. Backtesting inadequacies can fail to reveal edge cases exploited during live trading, creating opportunities for adverse selection or market impact. Furthermore, reliance on flawed or biased data inputs can induce systematic errors, impacting model performance and increasing exposure to unforeseen risks, particularly in rapidly evolving crypto environments.