--- title: ImmunoOrg 2.0 emoji: πŸ›‘οΈ colorFrom: blue colorTo: green sdk: docker app_port: 7860 pinned: false --- # ImmunoOrg 2.0 β€” The Autonomous, Self-Healing Enterprise > An OpenEnv RL environment where an LLM defender learns to contain > cyber-attacks **and** restructure the organization that lets them > succeed. Built for the OpenEnv Hackathon (India 2026). ### For judges (60 s) β†’ **[`JUDGES_60_SECONDS.md`](./JUDGES_60_SECONDS.md)** Β· Live app: https://hirann-immunoorg-v3.hf.space/demo (War Room + episode demo on **one** page). **⏱ Crunch time?** **[`WIN_30MIN.md`](./WIN_30MIN.md)** (fastest calm path) β†’ then **[`SUBMIT_NOW.md`](./SUBMIT_NOW.md)** for the full checklist. Run **`python scripts/make_hackathon_training_figure.py`** to create **`evidence_grpo_training.png`** in ~2 minutes (real env curve + Colab pointer). | Resource | Link | | --- | --- | | 🟒 **Live Space (direct host)** | https://hirann-immunoorg-v3.hf.space | | πŸ€— **HF Space card** | https://huggingface.co/spaces/hirann/immunoorg-v3 | | 🎭 **War Room (Theme #1, inside `/demo`)** | Same page as episode demo β€” **Live LLM War Room** section | | πŸ‘©β€βš–οΈ **Judges β€” 60 s** | [`JUDGES_60_SECONDS.md`](./JUDGES_60_SECONDS.md) | | πŸ“‹ **Problem statement (Round 2 formal)** | [`PROBLEM_STATEMENT.md`](./PROBLEM_STATEMENT.md) | | πŸ“ **Mini-blog (Writeup)** | [`Blog.MD`](./Blog.MD) | | ✍️ **Publish HF post + YouTube** | [`PUBLISH_HACKATHON.md`](./PUBLISH_HACKATHON.md) | | 🌐 **HF mini-blog (public URL)** | *Replace after publishing:* `HF_MINI_BLOG_URL` | | ▢️ **YouTube demo (< 2 min)** | *Replace after upload:* `YOUTUBE_DEMO_URL` | | πŸ“– **Judges’ guide (official)** | [What judges look for](https://docs.google.com/document/d/1Odznuzwtb1ecDOm2t6ToZd4MuMXXfO6vWUGcxbC6mFs/edit?tab=t.0#bookmark=kix.2dz0x0nie3me) | | 🎬 **Video script (90 sec)** | [`VIDEO_SCRIPT.md`](./VIDEO_SCRIPT.md) | | πŸ“” **Training notebook (Colab + TRL GRPO)** | [Open in Colab](https://colab.research.google.com/github/Charannoo/immunoorg/blob/master/ImmunoOrg_Training_Colab.ipynb) Β· [`ImmunoOrg_Training_Colab.ipynb`](./ImmunoOrg_Training_Colab.ipynb) | | ⚑ **Win in ~30 min (start here if stressed)** | [`WIN_30MIN.md`](./WIN_30MIN.md) | | ⚑ **Deadline playbook (~5 h)** | [`SUBMIT_NOW.md`](./SUBMIT_NOW.md) | | πŸ–₯️ **HPC training pipeline** | [`scripts/hpc/HANDOFF.md`](./scripts/hpc/HANDOFF.md) | | βœ… **Pre-submit checklist script** | `python scripts/verify_hackathon_submission.py` | | πŸ”¬ **Research notes** | [`RESEARCH.md`](./RESEARCH.md) | | πŸ§ͺ **Judges' walkthrough** | [`JUDGING_GUIDE.md`](./JUDGING_GUIDE.md) | | πŸ’» **GitHub source** | https://github.com/Charannoo/immunoorg | **Before you submit:** publish a Hugging Face **post** or **YouTube** link (see [`PUBLISH_HACKATHON.md`](./PUBLISH_HACKATHON.md)), replace the two placeholder rows above with real URLs, run `python scripts/verify_hackathon_submission.py`, then push GitHub + Space. **Windows + TRL:** if `import trl` fails with `UnicodeDecodeError`, run with UTF-8: `set PYTHONUTF8=1` (cmd) or `$env:PYTHONUTF8=1` (PowerShell). --- ## TL;DR Two graphs run in parallel inside one episode: 1. **A technical network** β€” 7-23 nodes (web servers, DBs, CI/CD, DNS) with real vulnerability scores. 2. **An organizational graph** β€” departments with approval chains, trust scores, and political deadlocks. The agent has 28 actions across 3 categories (tactical / strategic / diagnostic) and must fix both layers simultaneously, against an adversary that adapts to its policy, under conflicting board directives, with a **5-track composable reward** that no single signal can hack. Read [`PROBLEM_STATEMENT.md`](./PROBLEM_STATEMENT.md) for the formal Round 2 definition (problem / env / capabilities / tasks / reward / post-training). --- ## Evidence (committed PNGs β€” judges scan these in seconds) All charts are produced by `python generate_evidence.py` and `python scripts/generate_training_evidence.py` and committed to the repo. ![Random vs Heuristic policies across difficulty levels 1-4](./evidence_policy_comparison.png) *Random vs Heuristic across all 4 difficulty levels β€” Heuristic policy (gold standard for reward shaping) beats Random by 4-11 points, proving the env is learnable and reward shaping has signal.* ![Per-scenario reward lift Random vs Heuristic](./evidence_scenario_rewards.png) *Per-family reward (10 episodes each, real env rollouts). The heuristic policy beats the random baseline in **every** scenario family β€” that lift is the signal the GRPO trainer climbs.* ![Self-improvement across 6 generations of org mutation](./evidence_self_improvement.png) *6 generations of self-improvement: reward-per-step trends up, time-to- containment trends down, org efficiency rises as mutations accumulate.* ![5-track composable reward breakdown](./evidence_5track_reward.png) *Per-step contribution of the 5 reward tracks. No single track dominates β€” anti-reward-hacking property called out in the brief.* ![Org graph: 3-day vs 4-hour approval](./evidence_org_before_after.png) *The "self-healed enterprise" moment: org graph after the agent restructures it via `ESTABLISH_DEVSECOPS` + `REDUCE_BUREAUCRACY`. Approval latency drops from 72h to 4h.* ![War Room debate + DevSecOps Mesh activity](./evidence_war_room_mesh.png) *Multi-agent War Room consensus dynamics + 4-gate DevSecOps Mesh event counts.* **GRPO training curve (`evidence_grpo_training.png`):** generate from a real TRL run, then: ```bash python scripts/plot_grpo_log_history.py immunoorg-defender/grpo_log_history.json ``` Or run **Colab Step 4b**, which saves the figure directly. See [`training_logs/README.md`](./training_logs/README.md). Additional eval PNGs from the full HPC pipeline may be uploaded to [`hirann/immunoorg-grpo-defender`](https://huggingface.co/hirann/immunoorg-grpo-defender). --- ## Quick start ### Click the live demo β†’ https://hirann-immunoorg-v3.hf.space β†’ **β–Ά Launch interactive demo** ### Run the OpenEnv environment locally ```bash git clone https://github.com/Charannoo/immunoorg cd immunoorg python -m venv .venv && . .venv/Scripts/activate # PowerShell on Windows pip install -r requirements.txt uvicorn server.main:app --reload --port 7860 ``` Then visit http://localhost:7860 (landing) or http://localhost:7860/demo (Gradio UI). ### Train with GRPO (3 paths) | Where | When to use | Time | | --- | --- | --- | | **HPC** (`scripts/hpc/run_all.sh`) | Best evidence: full datasets + SFT + GRPO + 100-ep eval, all chained via SLURM, auto-pushes to HF Hub | ~3-4 hr (1Γ— A100) / ~1-1.5 hr (4Γ— A100) | | **Colab T4** (`ImmunoOrg_Training_Colab.ipynb`) | Free, browser-only, Qwen2.5-3B | ~30-45 min | | **Local CPU smoke** (`python -m training.train_grpo --smoke-test`) | Sanity check only | very slow | See [`scripts/hpc/HANDOFF.md`](./scripts/hpc/HANDOFF.md) for the friend-facing HPC instructions. ### Run the test suite ```bash pytest tests -q # 32 passed, 1 skipped (live API, only runs when uvicorn is up) ``` --- ## OpenEnv API surface | Endpoint | Method | Purpose | | --- | --- | --- | | `/` | GET | Landing page (HTML) with link to /demo | | `/demo` | (Gradio) | Interactive visual demo | | `/health` | GET | Liveness + version | | `/reset` | POST | Start a fresh episode (`{"difficulty": 1, "seed": 42}`) | | `/step` | POST | Apply an action (`{"action": {...}}`) | | `/state` | GET | Full server-side state (debug / dashboard) | | `/directive` | POST | Inject a Board Directive mid-episode | | `/trained_status` | GET | Is the trained LoRA loaded yet? | | `/openenv.yaml` | GET | Serve the manifest | | `/demo` | GET | Gradio: episode demo + **War Room** accordion (Theme #1 LLM debate) | | `/api/war-room` | POST | Optional JSON API for the same debate backend | | `/admin/training/start` | GET | Kick off GRPO training (token-gated) | | `/admin/training/status` | GET | JSON status of the training job | | `/admin/training/log` | GET | Tail the training log | Action schema lives in [`openenv.yaml`](./openenv.yaml) and matches `immunoorg.models.ImmunoAction`. --- ## How this maps to the judging criteria | Criterion | Weight | Where to look | | --- | ---: | --- | | **Environment Innovation** | 40% | Socio-technical RL, 5-track reward, War Room, DevSecOps Mesh, 50-step Polymorphic Migration. See [`PROBLEM_STATEMENT.md`](./PROBLEM_STATEMENT.md) Β§1. | | **Storytelling** | 30% | Live demo on the Space + [`BLOG_POST.md`](./BLOG_POST.md) + 6 evidence PNGs above + [`VIDEO_SCRIPT.md`](./VIDEO_SCRIPT.md). | | **Improvement in Rewards** | 20% | `evidence_*.png` files committed; HPC pipeline produces `evidence_grpo_training.png` + `evidence_eval_per_family.png` from a real Qwen2.5-7B GRPO run. | | **Reward & Training Pipeline** | 10% | [`training/train_grpo.py`](./training/train_grpo.py) (3 verifiable reward fns), [`training/dataset_generator.py`](./training/dataset_generator.py) (1700+ scenarios), [`training/scenario_hooks.py`](./training/scenario_hooks.py) (5 elite families), [`scripts/hpc/`](./scripts/hpc/) (full SFTβ†’GRPOβ†’eval pipeline). | --- ## Anti-reward-hacking measures (judge guidance Β§7 + Β§21) - 3 independent reward functions at the trainer + 5-track composable reward in the env. - False-positive isolation penalty (burns half the uptime budget). - Phase-gated transitions require *real work*, not step counts. - Org friction β€” tactical spam denied; agent must do strategic work. - War-Room hallucination flagging via shared FactStore. - Per-step training penalties for ignoring board directives or retrying denied isolations. Full details in [`PROBLEM_STATEMENT.md`](./PROBLEM_STATEMENT.md) Β§5c and [`RESEARCH.md`](./RESEARCH.md). --- ## Status - βœ… OpenEnv: `openenv-core>=0.2.3` (PyPI latest) in Space `requirements.txt` + `openenv.yaml` + HTTP `reset`/`step`/`state`; `import openenv.core` verified at runtime - βœ… Hugging Face Space: https://huggingface.co/spaces/hirann/immunoorg-v3 - βœ… Gradio `/demo` includes **War Room** accordion (LLM debate β€” supports `GROQ_API_KEY`, `OPENAI_API_KEY`, or `ANTHROPIC_API_KEY`) - βœ… 2x A10G Hardware: Configured for fast LoRA inference in the live demo. - βœ… Colab + TRL GRPO + Unsloth; `training/train_grpo.py` exports `grpo_log_history.json` for plots - βœ… Evidence PNGs (env rollouts + rewards) committed; add `evidence_grpo_training.png` from Colab or `scripts/plot_grpo_log_history.py` - βœ… Writeups: [`Blog.MD`](./Blog.MD), [`VIDEO_SCRIPT.md`](./VIDEO_SCRIPT.md) β€” **publish** per [`PUBLISH_HACKATHON.md`](./PUBLISH_HACKATHON.md) - βœ… Training: Logs and scripts shared in [`training/`](./training/) and [`training_logs/`](./training_logs/) - βœ… `python scripts/verify_hackathon_submission.py` for a quick checklist Built for the OpenEnv Hackathon (India 2026).