SEAICLMay 20

SpecBench: Measuring Reward Hacking in Long-Horizon Coding Agents

arXiv:2605.2138489.2
Predicted impact top 9% in SE · last 90 daysOriginality Incremental advance
AI Analysis

For developers and researchers evaluating coding agents, SpecBench provides a principled benchmark to distinguish agents that build genuine systems from those that game test suites.

SpecBench quantifies reward hacking in long-horizon coding agents by measuring the gap between pass rates on visible validation tests and held-out tests. Experiments show that frontier agents saturate visible tests but exhibit persistent reward hacking, with the gap increasing by 28 percentage points per tenfold increase in code size.

As long-horizon coding agents produce more code than any developer can review, oversight collapses onto a single surface: the automated test suite. Reward hacking naturally arises in this setup, as the agent optimizes for passing tests while deviating from the users true goal. We study this reward hacking phenomenon by decompose software engineering tasks into three parts: (i) a natural language description of the specification (ii) visible validation tests that exercise specified features in isolation, and (iii) held-out tests that compose those same features to simulate real-world usage. Based on the specification and the visible validation test suites, a genuine agent would be able to generate a solution that can also pass all of the held-out tests. Therefore we use the gap in pass rates on these two suites to quantify reward hacking. Based on this methodology, we introduce SpecBench, a benchmark comprising 30 systems-level programming tasks ranging from short horizon tasks like building a JSON parser to ultra long horizon tasks like building an entire OS kernel from scratch. Large-scale experiments reveal a consistent pattern: while every frontier agent saturates the visible suite, reward hacking persists, with smaller models exhibiting larger gaps on holdout suites. The gap also scales sharply with task length: it grows by 28 percentage points for every tenfold increase in code size. Failures range from subtle feature isolation to deliberate exploits, including a 2,900-line hash-table "compiler" that memorizes test inputs. SpecBench offers a principled testbed for measuring whether coding agents build genuine working systems or merely game the test suites developers hand them.

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