APEX-Agents · GPT-5.5 · dual
World 129_CY_Task 6
GPT-5.5 on APEX-Agents: World 129_CY_Task 6 (dual harness). Browse score, rubric, and public trace.
Grader rubric
Criteria verdict
States that Daniel Holden's score is 12
PassStates that Michael Chen's score is 11
PassStates that Sarah Martinez's score is 11
PassStates that Aisha Roberts' score is 7
PassStates that Daniel Holden is ranked first
PassStates that Michael Chen is ranked second
PassStates that Sarah Martinez is ranked third
PassStates that Aisha Roberts is ranked fourth
Pass
Prompt excerpt
Task context
Using Brightpath's Discount Approval Logs, review each approver’s total score and rank. Reply to me with a short message here, outlining your findings. Scores are determined using four criteria: 1. Violated Policy Threshold: Score 1 goes to the approver with the most deals exceeding the policy threshold; score 4 goes to the fewest. Scores 2–3 follow their ranking. 2. Negotiation-Based Discounts: Score 1 for approving the most negotiation-driven deals exceeding the threshold; score 4 for the fewest. Scores 2–3 follow. 3. Pilot-Program Discounts: Same logic as in #1, scoring based on deals exceeding the threshold due to pilot-program discounts. 4. Level of Approval: Score 1 for approving the fewest CFO-level deals within policy; score 4 for the most. Scores 2–3 follow. Notes: - Round all scores to the nearest whole number. - Ties receive the same score (e.g., both highest = 1, both fewest = 4, middle = 2). - For ties in total score, use Director-level approval counts from criterion (4) as the tiebreaker.
Response trace
Agent response, tools, files, and edits
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