| name | experiment-bridge |
| description | Workflow 1.5: Bridge between idea discovery and auto review. Reads EXPERIMENT_PLAN.md, implements experiment code, deploys to GPU, collects initial results. Use when user says "实现实验", "implement experiments", "bridge", "从计划到跑实验", "deploy the plan", or has an experiment plan ready to execute. |
Workflow 1.5: Experiment Bridge
Implement and deploy experiments from plan: $ARGUMENTS
Overview
This skill bridges Workflow 1 (idea discovery + method refinement) and Workflow 2 (auto review loop). It takes the experiment plan and turns it into running experiments with initial results.
Workflow 1 output: This skill: Workflow 2 input:
refine-logs/EXPERIMENT_PLAN.md → implement → deploy → collect → initial results ready
refine-logs/EXPERIMENT_TRACKER.md code /run-experiment for /auto-review-loop
refine-logs/FINAL_PROPOSAL.md
Constants
- AUTO_DEPLOY = true — Automatically deploy experiments after implementation. Set
false to review code before deploying.
- SANITY_FIRST = true — Run the sanity-stage experiment first (smallest, fastest) before launching the rest. Catches setup bugs early.
- MAX_PARALLEL_RUNS = 4 — Maximum number of experiments to deploy in parallel (limited by available GPUs).
Override: /experiment-bridge "EXPERIMENT_PLAN.md" — auto deploy: false, max parallel: 2
Inputs
This skill expects one or more of:
refine-logs/EXPERIMENT_PLAN.md (best) — claim-driven experiment roadmap from /experiment-plan
refine-logs/EXPERIMENT_TRACKER.md — run-by-run execution table
refine-logs/FINAL_PROPOSAL.md — method description for implementation context
IDEA_REPORT.md — fallback if refine-logs don't exist
If none exist, ask the user what experiments to implement.
Workflow
Phase 1: Parse the Experiment Plan
Read EXPERIMENT_PLAN.md and extract:
- Run order and milestones — which experiments run first (sanity → baseline → main → ablation → polish)
- For each experiment block:
- Dataset / split / task
- Compared systems and variants
- Metrics to compute
- Setup details (backbone, hyperparameters, seeds)
- Success criterion
- Priority (MUST-RUN vs NICE-TO-HAVE)
- Compute budget — total estimated GPU-hours
- Method details from
FINAL_PROPOSAL.md — what exactly to implement
Present a brief summary:
📋 Experiment plan loaded:
- Milestones: [N] (sanity → baseline → main → ablation)
- Must-run experiments: [N]
- Nice-to-have: [N]
- Estimated GPU-hours: [X]
Proceeding to implementation.
Phase 2: Implement Experiment Code
For each milestone (in order), write the experiment scripts:
-
Check existing code — scan the project for existing experiment scripts, model code, data loaders. Reuse as much as possible.
-
Implement missing pieces:
- Training scripts with proper argparse (all hyperparameters configurable)
- Evaluation scripts computing the specified metrics
- Data loading / preprocessing if needed
- Baseline implementations if not already present
- Fixed random seeds for reproducibility
- Results saved to JSON/CSV for later analysis
- Proper logging (wandb if configured in AGENTS.md)
-
Follow the plan's run order — implement sanity-stage experiments first, then baselines, then main method, then ablations.
-
Self-review before deploying:
- Are all hyperparameters from EXPERIMENT_PLAN.md reflected in argparse?
- Is the random seed fixed and controllable?
- Are results saved in a parseable format (JSON/CSV)?
- Does the code match FINAL_PROPOSAL.md's method description?
Phase 3: Sanity Check (if SANITY_FIRST = true)
Before deploying the full experiment suite, run the sanity-stage experiment:
/run-experiment [sanity experiment command]
Wait for completion. Verify:
- Training loop runs without errors
- Metrics are computed and saved correctly
- GPU memory usage is within bounds
- Output format matches expectations
If sanity fails → fix the code, re-run. Do not proceed to full deployment with broken code.
Phase 4: Deploy Full Experiments
Deploy experiments following the plan's milestone order:
/run-experiment [experiment commands]
For each milestone:
- Deploy experiments in parallel (up to MAX_PARALLEL_RUNS)
- Use
/monitor-experiment to track progress
- Collect results as experiments complete
🚦 Checkpoint (if AUTO_DEPLOY = false):
🔧 Code implementation complete. Ready to deploy:
Milestone 0 (sanity): [status — passed/pending]
Milestone 1 (baseline): [N experiments, ~X GPU-hours]
Milestone 2 (main method): [N experiments, ~X GPU-hours]
Milestone 3 (ablations): [N experiments, ~X GPU-hours]
Total estimated: ~X GPU-hours on [N] GPUs
Deploy now? Or review the code first?
Phase 5: Collect Initial Results
As experiments complete:
- Parse output files (JSON/CSV/logs) for key metrics
- Update
refine-logs/EXPERIMENT_TRACKER.md — fill in Status and Notes columns
- Check success criteria from EXPERIMENT_PLAN.md — did each experiment meet its bar?
- Write initial results summary:
# Initial Experiment Results
**Date**: [today]
**Plan**: refine-logs/EXPERIMENT_PLAN.md
## Results by Milestone
### M0: Sanity — PASSED
- [result]
### M1: Baselines
| Run | System | Key Metric | Status |
|-----|--------|-----------|--------|
| R001 | baseline_1 | X.XX | DONE |
### M2: Main Method
| Run | System | Key Metric | Status |
|-----|--------|-----------|--------|
| R003 | our_method | X.XX | DONE |
### M3: Ablations
...
## Summary
- [X/Y] must-run experiments completed
- Main result: [positive/negative/inconclusive]
- Ready for /auto-review-loop: [YES/NO]
## Next Step
→ /auto-review-loop "[topic]"
Phase 6: Handoff
Present final status:
🔬 Experiment bridge complete:
- Implemented: [N] experiment scripts
- Deployed: [N] experiments on [M] GPUs
- Completed: [X/Y] must-run, [A/B] nice-to-have
- Main result: [one sentence]
Results: refine-logs/EXPERIMENT_RESULTS.md
Tracker: refine-logs/EXPERIMENT_TRACKER.md
Ready for Workflow 2:
→ /auto-review-loop "[topic]"
Key Rules
- Large file handling: If the Write tool fails due to file size, immediately retry using Bash (
cat << 'EOF' > file) to write in chunks. Do NOT ask the user for permission — just do it silently.
- Follow the plan. Do not invent experiments not in EXPERIMENT_PLAN.md. If you think something is missing, note it but don't add it.
- Sanity first. Never deploy a full suite without verifying the sanity stage passes.
- Reuse existing code. Scan the project before writing new scripts. Extend, don't duplicate.
- Save everything as JSON/CSV. The auto-review-loop needs parseable results, not just terminal output.
- Update the tracker.
EXPERIMENT_TRACKER.md should reflect real status after each run completes.
- Don't wait forever. If an experiment exceeds 2x its estimated time, flag it and move on to the next milestone.
- Budget awareness. Track GPU-hours against the plan's budget. Warn if approaching the limit.
Composing with Other Skills
/idea-discovery "direction" ← Workflow 1: find + refine + plan
/experiment-bridge ← you are here (Workflow 1.5: implement + deploy)
/auto-review-loop "topic" ← Workflow 2: review + iterate
/paper-writing "NARRATIVE_REPORT.md" ← Workflow 3: write the paper
Or use /research-pipeline for the full end-to-end flow (includes this bridge).