openenv-hackathon / openenv.yaml
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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.