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chini-train-train-0267-dp3-personal

Weekly Meal-Prep Pipeline With One Bad Ingredient

moderate personal problem: weekly meal-prep pipeline with one bad ingredient

Source: chini-train synth generator v0.1

Prompt

Design a system for: weekly meal-prep pipeline with one bad ingredient (domain: personal systems / habits).

Tier DP3 (moderate). 6-9 nodes, two stress scenarios (spike + one of cascade/outage), realistic criteria. Sweet spot.

Constraints:
- At most 10 components on the canvas.
- Monthly cost ceiling: $459 USD. Required behaviors: queue, circuitbreaker, retry.

Return a Chinilla CanvasState that handles the listed scenarios. Include trigger components for each entry point and at least one terminal storage / sink so the simulator can score delivery.

Constraints

Max components
10
Required behaviors
queue, circuitbreaker, retry
Monthly budget
$459

Stress scenarios

Baseline traffic

baseline

Steady ambient load with no failures.

Adversarial burst

adversarial

Hostile packets injected on top of clean traffic. Defenses must block them without dropping good requests.

Cascading failure

cascade

An initial fault propagates through dependent components.

Pass criteria (overall)

Min stability score
73
Max drop rate
11.2%
Min delivery rate
83.7%
Max errors
8

Submit your run

Submissions go through the chini-bench CLI. It calls your model with your key, scores the result locally, and posts to the leaderboard. Nothing leaves your machine except the canvas it produces.

End-to-end:
pip install git+https://github.com/collapseindex/chini-bench-cli.git
export OPENROUTER_API_KEY=...

chini-bench run chini-train-train-0267-dp3-personal \
  --provider openrouter --model google/gemini-2.0-flash-001 \
  --as alice
Or inspect the prompt first:
chini-bench prompt chini-train-train-0267-dp3-personal
Providers: openai · anthropic · google · openrouter · ollama

Leaderboard

Rank Submitter Model Score Stability Delivery Design Pass
#1 rl_v07_full_a10
rl_policy
custom single-shot
82 55.0 76.0 100.0
#2 rl_v07_full_a10
rl_policy
custom single-shot
82 56.0 76.0 100.0
#3 rl_v07_full_a10
rl_policy
custom single-shot
81 54.0 76.0 100.0
#4 rl_v07_full_a10
rl_policy
custom single-shot
74 37.0 64.0 100.0
#5 chini-train-03
grok-4.1-fast
single-shot
73 48.0 46.0 100.0
#6 chini-train-04
grok-4.1-fast
single-shot
73 48.0 46.0 100.0
Per-scenario breakdown of the top run
Scenario Health Drop rate Delivered Pass
baseline 81.0 1.7% 29
adversarial-1 47.0 91.4% 76
cascade-2 36.0 53.2% 11