Spaces:
Sleeping
Sleeping
| name: scheduling-opt-env | |
| description: > | |
| A real-world AI agent training environment for combinatorial scheduling | |
| optimisation. Agents must determine schedule feasibility, classify constraint | |
| violations, and repair infeasible schedules to minimise makespan — mirroring | |
| the daily workflow of operations researchers and production planners. | |
| version: "1.0.0" | |
| author: "Team SchedulingOpt" | |
| license: MIT | |
| tasks: | |
| - id: feasibility_check | |
| name: Feasibility Check | |
| difficulty: easy | |
| description: Determine whether a proposed schedule satisfies all constraints. | |
| max_steps: 3 | |
| action_schema: | |
| response: | |
| type: string | |
| enum: ["feasible", "infeasible"] | |
| task_id: | |
| type: string | |
| - id: conflict_classification | |
| name: Conflict Classification | |
| difficulty: medium | |
| description: Identify the type of constraint violation present in an infeasible schedule. | |
| max_steps: 5 | |
| action_schema: | |
| response: | |
| type: string | |
| enum: | |
| - resource_overload | |
| - deadline_violation | |
| - precedence_violation | |
| - availability_conflict | |
| - capacity_exceeded | |
| task_id: | |
| type: string | |
| - id: schedule_repair | |
| name: Schedule Repair | |
| difficulty: hard | |
| description: > | |
| Return a corrected schedule (as JSON) that resolves all constraint | |
| violations and minimises total makespan. | |
| max_steps: 8 | |
| action_schema: | |
| response: | |
| type: string | |
| description: > | |
| JSON object with key "assignments": list of {job_id, machine_id, | |
| start_time} dicts. | |
| task_id: | |
| type: string | |
| action_space: | |
| type: object | |
| properties: | |
| response: | |
| type: string | |
| description: > | |
| The agent's response: "feasible"/"infeasible", a violation category, | |
| or a JSON repair schedule. | |
| task_id: | |
| type: string | |
| description: Identifier for the current task. | |
| observation_space: | |
| type: object | |
| properties: | |
| schedule_instance: | |
| type: string | |
| description: JSON-encoded scheduling problem instance (jobs, machines, proposed assignments). | |
| task_id: | |
| type: string | |
| description: Current task identifier. | |
| context: | |
| type: string | |
| description: Instructions or context for the current step. | |
| step_number: | |
| type: integer | |
| description: Current step number within the episode. | |