Analyzing Symbolic Properties for DRL Agents in Systems and Networking
Mohammad Zangooei, Jannis Weil, Amr Rizk, Mina Tahmasbi Arashloo, Raouf Boutaba

TL;DR
This paper introduces a framework for analyzing symbolic properties of DRL agents in systems and networking, enabling broader and more meaningful verification than traditional point-based methods.
Contribution
It presents a generic formulation for symbolic properties, encodes them as comparisons between related executions, and demonstrates practical analysis across multiple control systems.
Findings
Symbolic properties offer broader coverage than point properties.
Verification reveals non-obvious counterexamples and solver trade-offs.
The framework enables analysis of property satisfaction evolution during training.
Abstract
Deep reinforcement learning (DRL) has shown remarkable performance on complex control problems in systems and networking, including adaptive video streaming, wireless resource management, and congestion control. For safe deployment, however, it is critical to reason about how agents behave across the range of system states they encounter in practice. Existing verification-based methods in this domain primarily focus on point properties, defined around fixed input states, which offer limited coverage and require substantial manual effort to identify relevant input-output pairs for analysis. In this paper, we study symbolic properties, that specify expected behavior over ranges of input states, for DRL agents in systems and networking. We present a generic formulation for symbolic properties, with monotonicity and robustness as concrete examples, and show how they can be analyzed using…
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