317 lines
10 KiB
Markdown
317 lines
10 KiB
Markdown
---
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license: apache-2.0
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base_model: Qwen/Qwen2.5-1.5B-Instruct
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library_name: transformers
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pipeline_tag: text-generation
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tags:
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- openenv
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- reinforcement-learning
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- mechanism-design
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- auctions
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- llm-agents
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- grpo
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- trl
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- unsloth
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- peft
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- lora
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- qwen2.5
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language:
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- en
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model-index:
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- name: daedalus-designer-v2
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results:
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- task:
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type: reinforcement-learning
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name: Adversarial mechanism design (DAEDALUS)
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dataset:
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type: kabilesh-c/Daedalus-Env
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name: DAEDALUS OpenEnv
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metrics:
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- type: composite_reward
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value: 0.434
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name: Informed-greedy baseline (mean over 30 episodes)
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- type: composite_reward
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value: 0.326
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name: Uniform-random baseline (mean over 30 episodes)
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---
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# DAEDALUS Designer v2 — Adversarial Auction-Mechanism Design
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> A 1.5 B-parameter LLM that **designs auction mechanisms** robust to a
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> population of strategic adversaries (colluders, shaders, dropouts,
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> exploiters). Trained with **GRPO** (TRL) on the
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> [`kabilesh-c/Daedalus-Env`](https://huggingface.co/spaces/kabilesh-c/Daedalus-Env) OpenEnv environment using
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> **Unsloth + 4-bit + LoRA**.
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|---|---|
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| **Live demo (interactive UI)** | [`kabilesh-c/Daedalus-Env`](https://huggingface.co/spaces/kabilesh-c/Daedalus-Env) |
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| **Base model** | [`Qwen/Qwen2.5-1.5B-Instruct`](https://huggingface.co/Qwen/Qwen2.5-1.5B-Instruct) |
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| **Training Space (image builder)** | [`kabilesh-c/daedalus-training-space`](https://huggingface.co/spaces/kabilesh-c/daedalus-training-space) |
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| **Long-form blog** | served from the live Space at `/blog.md` |
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| **Standalone script** | `inference.py` in the live Space repo |
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| **Author** | Laksh Krish Kabilesh |
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---
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## 1. What this model does
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Given a partial observation of an auction market — recent (welfare,
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fairness, participation) outcomes, round number, episode length — the
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model emits a **structured JSON mechanism**:
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```json
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{
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"auction_type": "second_price",
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"reserve_price": 0.18,
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"reveal_reserve": false,
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"reveal_competing_bids": false,
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"reveal_winner_identity": true,
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"reveal_clearing_price": true,
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"reveal_bid_distribution": false,
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"shill_penalty": 1.2,
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"withdrawal_penalty": 0.6,
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"collusion_penalty": 1.9,
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"coalition_policy": "penalize_suspected"
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}
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```
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The mechanism is then *used* — the env runs 5 market rounds against an
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adaptive adversarial population, and scores the result on the composite
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reward `R = welfare_ratio · fairness_score · participation_rate · stability_score`.
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This is the **inverse** of the usual RL setup: the model is the
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*referee*, not the player.
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---
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## 2. Model details
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|---|---|
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| **Architecture** | Qwen2.5-1.5B-Instruct (decoder-only transformer, 28 layers) |
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| **Total parameters** | 1,562,179,072 |
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| **Trainable parameters (LoRA)** | 18,464,768 (**1.18 %**) |
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| **PEFT method** | LoRA, r = 16, applied to all attention + MLP linear layers |
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| **Quantisation (training)** | 4-bit NF4 via `bitsandbytes` + Unsloth |
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| **Storage format** | merged 16-bit `bf16` (no separate adapter file required at inference) |
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| **Context length** | 32,768 tokens (Qwen2.5 default) |
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| **Output schema** | Pydantic `DaedalusAction` — see live Space for full type definition |
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| **License** | Apache-2.0 (inherited from Qwen2.5-1.5B-Instruct) |
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---
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## 3. Training details
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### Pipeline
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```
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Qwen2.5-1.5B-Instruct (4-bit, Unsloth)
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| LoRA r=16 on attn + MLP
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v
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+--- SFT on synthetic (prompt, valid_mechanism) pairs
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| (teaches JSON shape only; ~300 steps)
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v
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GRPO (TRL) on DAEDALUS env, 50 steps
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reward = format_reward + welfare + fairness + composite
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| merge_and_unload + push_to_hub_merged
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v
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kabilesh-c/daedalus-designer-v2 (this checkpoint)
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```
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### Hyperparameters
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|---|---|
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| **RL algorithm** | GRPO (Group-Relative PPO, no value head) |
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| **Generations per state** | 4 |
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| **Steps** | 50 |
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| **Batch size** | 4 × 2 grad-accum × 1 GPU = 8 effective |
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| **Learning rate** | 5e-6 (LoRA) |
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| **Reward stack** | `format` (JSON parseability) → `welfare` → `fairness` → `composite` |
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| **Hardware** | 1 × NVIDIA L4 (24 GB) on Hugging Face Jobs |
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| **Wall-clock** | ~7 minutes per +50-step iteration |
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| **Cost** | ~\$0.10 per iteration |
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### Training signals (from `training_history.json`)
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| Metric | Range | Mean | What it tells you |
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|---|---|---|---|
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| `grad_norm` | 0.46 – 0.84 | 0.71 | healthy gradient flow, no vanish/explode |
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| `reward_std` (within-group) | 0.53 – 0.86 | 0.69 | GRPO advantage signal stays informative |
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| `entropy` (policy) | 1.65 – 2.50 nats | 1.95 | narrowed by ~5.5 nats from uniform; still exploring |
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| `completions/mean_length` | 140 tokens (pinned) | 140 | schema-locked output |
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Plots and per-step CSV are served from the live Space at `/plots/`.
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---
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## 4. Evaluation
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30-episode baseline boxplot on the env's true composite reward (no
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training-time shaping):
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| Policy | Mean R | IQR |
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|---|---|---|
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| Uniform-random mechanisms | **+0.326** | ≈ 0.27 |
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| Informed-greedy (hand-engineered "robust") | **+0.434** | ≈ 0.21 |
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The +0.108 gap (≈ +33 % relative) is the structural signal the model is
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trained to find. The trained model's online behaviour can be inspected
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directly in the live Space — every `/api/design` call hits this
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checkpoint.
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A typical stage-3 (mixed shaders + colluders) output:
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```json
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{
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"auction_type": "second_price",
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"reserve_price": 0.18,
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"reveal_competing_bids": false,
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"reveal_clearing_price": true,
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"reveal_winner_identity": true,
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"collusion_penalty": 1.9,
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"shill_penalty": 1.2,
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"withdrawal_penalty": 0.6,
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"coalition_policy": "penalize_suspected"
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}
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```
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Three things to read off this:
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1. Picks **second-price** (truthful in static, robust to non-VCG-aware bidders).
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2. **Hides bid distribution but reveals clearing price** — gives honest bidders calibration signal while starving cartels of enforcement signal.
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3. Penalty ranking: `collusion (1.9) > shill (1.2) > withdrawal (0.6)` matches the relative cost of each pathology in this population.
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---
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## 5. Inference
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### 5.1 Hosted (no setup) — call the live Space
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```python
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import requests
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BASE = "https://kabilesh-c-daedalus-env.hf.space"
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# Reset and read the initial observation
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r = requests.post(BASE + "/reset",
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json={"session_id": "demo", "n_agents": 8, "episode_length": 10})
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obs = r.json()["observation"]
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# Ask the trained designer for a mechanism
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r = requests.post(BASE + "/api/design", json={
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"round_number": obs["round_number"],
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"episode_length": obs["episode_length"],
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"market_outcomes": obs.get("market_outcomes", []),
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})
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print(r.json()["mechanism"])
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# Apply it and observe the reward
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r = requests.post(BASE + "/step",
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json={"session_id": "demo", "action": r.json()["mechanism"]})
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print("R =", r.json()["reward"])
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```
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### 5.2 Local — `transformers` + `huggingface_hub`
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> **Important:** this repo was originally pushed via Unsloth's
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> `save_pretrained_merged()`, which leaves a leftover `adapter_config.json`
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> whose `base_model_name_or_path` points at `./sft-merged` (a path that
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> only exists on the training filesystem). Plain `from_pretrained(repo_id)`
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> will follow that pointer and crash with
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> `HFValidationError: Repo id must use alphanumeric chars`. Use
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> `snapshot_download` with `ignore_patterns` to skip the adapter file:
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```python
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from huggingface_hub import snapshot_download
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from transformers import AutoModelForCausalLM, AutoTokenizer
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import torch
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local_dir = snapshot_download(
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repo_id="kabilesh-c/daedalus-designer-v2",
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ignore_patterns=["adapter_config.json", "adapter_model.safetensors"],
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)
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tok = AutoTokenizer.from_pretrained(local_dir)
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model = AutoModelForCausalLM.from_pretrained(
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local_dir,
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torch_dtype=torch.bfloat16, # fp16 if no bf16
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device_map="auto",
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)
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system = (
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"You are an auction mechanism designer. Given a market observation, "
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"output ONLY a JSON object matching the DaedalusAction schema."
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)
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user = (
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"round_number: 3 / 10\n"
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"recent_outcomes: [{welfare:0.7, fairness:0.4, participation:1.0}]\n"
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"Respond with the JSON only."
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)
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prompt = tok.apply_chat_template(
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[{"role": "system", "content": system},
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{"role": "user", "content": user}],
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tokenize=False, add_generation_prompt=True,
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)
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ids = tok(prompt, return_tensors="pt").to(model.device)
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out = model.generate(**ids, max_new_tokens=180, do_sample=False, temperature=0.0)
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print(tok.decode(out[0, ids.input_ids.shape[1]:], skip_special_tokens=True))
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```
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### 5.3 Local — full env rollouts via `inference.py`
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The repo at [`kabilesh-c/Daedalus-Env`](https://huggingface.co/spaces/kabilesh-c/Daedalus-Env) ships an
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`inference.py` that reproduces the §4 baseline numbers:
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```bash
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# one-shot mechanism for a fresh env
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python inference.py
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# 30 episodes trained-vs-random (writes inference_results.json)
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python inference.py --n-episodes 30 --baseline
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# point at a different checkpoint
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python inference.py --repo-id kabilesh-c/daedalus-designer-v2
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```
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---
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## 6. Intended use & limitations
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**Intended use:** demonstration / research on LLM-driven mechanism
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design. The model is trained to output well-formed `DaedalusAction`
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JSON for the DAEDALUS env; it has no production guarantees.
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**Limitations:**
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- Trained for only 50 GRPO steps — the +50 step lift over a randomly-
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initialised LoRA is real but small in absolute terms (composite-reward
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mean from −0.594 → −0.579).
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- The "format reward" dominates early steps; malformed JSON is heavily
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penalised, so the model is **schema-locked but not strategically
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perfect**. On stage-4 (full-adversarial) populations it occasionally
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emits `coalition_policy: "allow"`, which craters the run.
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- Reward is engineered for the DAEDALUS env's specific multiplicative
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composite. The model is **not** guaranteed to produce sensible
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mechanisms outside this rubric.
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- Inherits any biases / failure modes from
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[`Qwen/Qwen2.5-1.5B-Instruct`](https://huggingface.co/Qwen/Qwen2.5-1.5B-Instruct).
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---
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## 7. Citation
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```bibtex
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@misc{kabilesh2026daedalus,
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title = {DAEDALUS: Training an LLM to Design Auction Markets via Adversarial RL},
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author = {Laksh Krish Kabilesh},
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year = {2026},
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url = {https://huggingface.co/spaces/kabilesh-c/Daedalus-Env},
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}
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```
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---
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*Made by Laksh Krish Kabilesh.*
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