Spaces:
Sleeping
Support Queue OpenEnv
A real-world OpenEnv benchmark for SaaS support triage.
Agents must read incoming support tickets, assign the right priority, route the case to the correct internal queue, choose the next action, and draft a safe first reply. The benchmark is designed to feel like an actual support operations workflow rather than a toy task.
Why This Environment
Real support teams repeatedly solve the same high-value triage problems:
- decide how urgent a ticket is
- route it to the right team
- avoid unsafe or misleading replies
- handle ambiguous requests without over-escalating
This makes support triage a strong RL and agent-evaluation environment because success is measurable, partial credit is meaningful, and mistakes are easy to interpret.
What The Agent Does
For each ticket, the agent must produce a SupportQueueAction with:
priority:P1 | P2 | P3 | P4queue:billing | security | technical | success | trust_safetydisposition:respond | request_info | escalate | closesummary: short internal triage noteresponse: first customer-facing replyconfidence: float in[0.0, 1.0]
Observation Space
Each reset() and step() returns a typed SupportQueueObservation containing:
| Field | Meaning |
|---|---|
task_id, task_title, difficulty |
Active benchmark task metadata |
instructions |
Task-specific operating guidance |
current_index, total_tickets |
Episode progress |
ticket |
Current customer ticket payload |
allowed_priorities, allowed_queues, allowed_dispositions |
Valid discrete actions |
scoring_weights |
Reward decomposition |
last_feedback |
Previous grader output |
reward, cumulative_reward, done |
Episode feedback |
info |
Extra metadata such as episode_id |
The ticket payload includes:
ticket_idsubjectbodycustomer_tierproduct_areasla_hoursrecent_events
State Space
state() returns a typed SupportQueueState with:
- active task card
- current cursor
- cumulative and average reward
- processed ticket ids
- full action history
- full per-ticket grading history
Tasks
The benchmark includes three deterministic tasks with increasing difficulty.
| Task ID | Difficulty | Tickets | Description |
|---|---|---|---|
easy_inbox_cleanup |
Easy | 2 | Straightforward access and billing tickets |
medium_sla_defense |
Medium | 3 | Mix of phishing escalation, webhook failure, and billing ambiguity |
hard_exec_escalations |
Hard | 4 | Executive-pressure tickets spanning production, security, commercial, and retention workflows |
Reward Design
Each processed ticket gets a reward in [0.0, 1.0].
Reward components:
| Component | Weight |
|---|---|
| Priority accuracy | 0.30 |
| Queue accuracy | 0.25 |
| Disposition accuracy | 0.20 |
| Summary keyword coverage | 0.15 |
| Response keyword coverage | 0.10 |
| Unsafe reply penalty | -0.10 |
This gives useful partial progress signals. An agent can still earn reward for a good route or good reply even if one part of the triage decision is wrong.
API Surface
The environment server exposes:
POST /resetPOST /stepGET /stateGET /tasksGET /healthGET /
Example reset payload:
{
"task_id": "easy_inbox_cleanup"
}
Project Structure
support_queue_env/
client.py
grading.py
models.py
tasks.py
server/
app.py
openenv_compat.py
support_queue_environment.py
Dockerfile
openenv.yaml
inference.py
Running Locally
Python
pip install -r requirements.txt
uvicorn support_queue_env.server.app:app --host 0.0.0.0 --port 8000
Docker
docker build -t support-queue-openenv .
docker run --rm -p 8000:8000 support-queue-openenv
Baseline Inference
The required inference script is inference.py.
It:
- uses the OpenAI Python client
- reads
API_BASE_URL,MODEL_NAME,HF_TOKEN, and optionalLOCAL_IMAGE_NAME - emits structured
[START],[STEP], and[END]logs - writes
inference_results.json
Set environment variables:
API_BASE_URL=https://api.openai.com/v1
MODEL_NAME=gpt-4o-mini
HF_TOKEN=your_token
LOCAL_IMAGE_NAME=
Then run:
python inference.py
Baseline Scores
Expected deterministic baseline scores from the bundled heuristic policy:
| Task | Score |
|---|---|
easy_inbox_cleanup |
1.00 |
medium_sla_defense |
0.98 |
hard_exec_escalations |
0.97 |
| Average | 0.98 |
Hugging Face Space
This repository is configured for a Docker Space.
- front matter in
README.mdsetssdk: docker - app serves on port
8000 GET /healthandPOST /resetsupport deployment checks
OpenEnv Files
Core submission files:
- openenv.yaml
- inference.py
- Dockerfile
- support_queue_env/models.py
- support_queue_env/server/support_queue_environment.py
Submission Checklist
- typed action, observation, and state models included
reset(),step(), andstate()implemented- three graded tasks included
- reward bounded to
[0.0, 1.0] - Dockerfile included
- Hugging Face Docker Space compatible
- root
inference.pyincluded