Formalizes agentic surveillance, releases SurveilBench for testing AI reporting behaviors across corporate, education, and police scenarios, and develops three prompt-injection evasion techniques.
Workspace-Bench 1.0: Benchmarking AI Agents on Workspace Tasks with Large-Scale File Dependencies
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
Workspace learning requires AI agents to identify, reason over, exploit, and update explicit and implicit dependencies among heterogeneous files in a worker's workspace, enabling them to complete both routine and advanced tasks effectively. Despite its importance, existing relevant benchmarks largely evaluate agents on pre-specified or synthesized files with limited real-world dependencies, leaving workspace-level evaluation underexplored. To this end, we introduce Workspace-Bench, a benchmark for evaluating AI agents on Workspace Learning involving Large-Scale File Dependencies. We construct realistic workspaces with 5 worker profiles, 74 file types, 20,476 files (up to 20GB) and curate 388 tasks, each with its own file dependency graph, evaluated across 7,399 total rubrics that require cross-file retrieval, contextual reasoning, and adaptive decision-making. We further provide Workspace-Bench-Lite, a 100-task subset that preserves the benchmark distribution while reducing evaluation costs by about 70%. We evaluate 4 popular agent harnesses and 7 foundation models. Experimental results show that current agents remain far from reliable workspace learning, where the best reaches only about 60%, substantially below the human result of 80.7%, and the average performance across agents is only 43.3%.
years
2026 2verdicts
UNVERDICTED 2representative citing papers
AgenticDataBench is a new benchmark covering realistic data science tasks across 15 domains using extracted skills and LLM-generated workflows to evaluate data agents at fine granularity.
citing papers explorer
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AgenticDataBench: A Comprehensive Benchmark for Data Agents
AgenticDataBench is a new benchmark covering realistic data science tasks across 15 domains using extracted skills and LLM-generated workflows to evaluate data agents at fine granularity.