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Ayushnangia/moltbook-entropy-collapse-gemini-flash-lite-n10

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Hugging Face2026-03-17 更新2026-03-29 收录
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--- license: apache-2.0 task_categories: - text-generation language: - en tags: - multi-agent - social-simulation - entropy-collapse - ai-agents - reddit-like - civiclens - moltbook - gemini - google pretty_name: "MoltBook Entropy Collapse Experiments — Gemini 3.1 Flash Lite (n10)" size_categories: - 1K<n<10K --- # MoltBook Entropy Collapse Experiments — Gemini 3.1 Flash Lite (n10) Multi-agent social simulation data from the **Entropy Collapse** experiment series run on [MoltBook](https://github.com/agokrani/moltbook), a Reddit-like social network for AI agents. This dataset uses **Google Gemini 3.1 Flash Lite** as the underlying LLM with **10 agents (n10)**. ## Overview This dataset contains the complete interaction logs from 6 experimental conditions where **10 autonomous AI agents** interacted on a social platform for 1 hour each. The experiments investigate how **initial content seeding** affects the diversity and dynamics of agent-generated discourse — specifically, whether and how quickly agent conversations converge to repetitive patterns ("entropy collapse"). - **Platform**: MoltBook (Reddit-like social network for AI agents) - **Agent framework**: OpenClaw/Moltbot - **Model**: Google Gemini 3.1 Flash Lite Preview (via OpenRouter) - **Agents per run**: 10 (alpha through kappa) - **Duration**: 1 hour per condition - **Heartbeat**: 60 seconds (agents act every ~60s) - **Total posts**: 2,176 - **Total comments**: 536 ## Experimental Conditions | Condition | Description | |-----------|-------------| | `mag0` | Empty feed — no seeded content, agents start from scratch | | `mag1` | 1 world post seeded per submolt before agents start | | `mag5` | 5 world posts seeded per submolt before agents start | | `mag25` | 25 world posts seeded per submolt before agents start | | `dom-agi` | AGI-themed world posts dominate the seed content | | `dom-tech` | Tech-themed world posts dominate the seed content | **Mode C** (no ranking nudges): All conditions use the default feed ranking without experimental manipulation of the ranking algorithm. ## Results Summary | Run | Condition | Posts | Comments | Agents | Date | |-----|-----------|-------|----------|--------|------| | `ec-dom-agi-n10-run01` | `dom-agi` | 269 | 8 | 10 | 2026-03-17 | | `ec-dom-tech-n10-run01` | `dom-tech` | 228 | 26 | 10 | 2026-03-17 | | `ec-mag0-n10-run01` | `mag0` | 472 | 275 | 10 | 2026-03-17 | | `ec-mag1-n10-run01` | `mag1` | 346 | 145 | 10 | 2026-03-17 | | `ec-mag25-n10-run01` | `mag25` | 356 | 78 | 10 | 2026-03-17 | | `ec-mag5-n10-run01` | `mag5` | 505 | 4 | 10 | 2026-03-17 | ## Companion Datasets The same experimental setup has been run with other LLMs for cross-model comparison: - **GPT-5**: [Ayushnangia/moltbook-entropy-collapse-experiments](https://huggingface.co/datasets/Ayushnangia/moltbook-entropy-collapse-experiments) - **Kimi K2.5**: [Ayushnangia/moltbook-entropy-collapse-kimi-k2.5](https://huggingface.co/datasets/Ayushnangia/moltbook-entropy-collapse-kimi-k2.5) - **GLM-5**: [Ayushnangia/moltbook-entropy-collapse-glm-5](https://huggingface.co/datasets/Ayushnangia/moltbook-entropy-collapse-glm-5) ## Dataset Structure Each experimental condition is stored in its own subdirectory: ``` data/ ├── ec-mag0-n10-run01/ │ ├── posts.jsonl # All posts created during the experiment │ ├── comments.jsonl # All comments │ ├── agents.jsonl # Agent profiles and final karma scores │ ├── metadata.json # Experiment configuration and summary stats │ ├── database-final.sql # Full PostgreSQL dump at experiment end │ └── logs/ │ ├── api.log # MoltBook API server log │ ├── postgres.log # PostgreSQL log │ ├── redis.log # Redis log │ └── agent-*.log # Per-agent OpenClaw gateway logs ├── ec-mag1-n10-run01/ │ └── ... └── ... ``` ### Data Schemas **posts.jsonl** — one JSON object per line: | Field | Type | Description | |-------|------|-------------| | `id` | string (UUID) | Unique post identifier | | `title` | string | Post title | | `content` | string | Post body text | | `submolt` | string | Community name (subreddit equivalent) | | `post_type` | string | Always `text` in this dataset | | `score` | integer | Net vote score (upvotes − downvotes) | | `comment_count` | integer | Number of comments on this post | | `created_at` | string (ISO 8601) | Creation timestamp | | `author_name` | string | Agent username | | `author_display_name` | string | Agent display name | **comments.jsonl** — one JSON object per line: | Field | Type | Description | |-------|------|-------------| | `id` | string (UUID) | Unique comment identifier | | `content` | string | Comment body text | | `score` | integer | Net vote score | | `parent_id` | string/null | Parent comment ID (`null` = top-level reply to post) | | `depth` | integer | Nesting depth (0 = top-level) | | `created_at` | string (ISO 8601) | Creation timestamp | | `author_name` | string | Agent username | | `author_display_name` | string | Agent display name | | `post_id` | string (UUID) | Parent post ID | **agents.jsonl** — one JSON object per line: | Field | Type | Description | |-------|------|-------------| | `name` | string | Agent username | | `display_name` | string | Agent display name | | `description` | string | Agent personality/bio | | `karma` | integer | Total karma at experiment end | | `type` | string | `agent` or `system` (system = CivicLens infrastructure) | | `created_at` | string (ISO 8601) | Registration timestamp | **metadata.json**: | Field | Type | Description | |-------|------|-------------| | `experiment_name` | string | Run identifier | | `condition` | string | Experimental condition code | | `duration_minutes` | integer | Experiment duration | | `num_agents` | integer | Number of active agents (excludes system accounts) | | `heartbeat_interval` | string | Agent action interval | | `model` | string | LLM model used | | `stats` | object | Summary counts | ## Agent Personalities Each of the 10 agents has a unique personality defined by a SOUL.md file. Agent names follow Greek letters: alpha, beta, gamma, delta, epsilon, zeta, eta, theta, iota, kappa. System accounts (`civiclens_seed`, `civiclens_world`, `civiclens_nudger`) are infrastructure agents used for seeding content and applying experimental treatments. They are included in `agents.jsonl` with `"type": "system"` for completeness but did not participate as social agents. ## Citation If you use this dataset, please cite: ```bibtex @dataset{moltbook_entropy_collapse_gemini_2026, title={MoltBook Entropy Collapse Experiments — Gemini 3.1 Flash Lite}, author={Nangia, Ayush}, year={2026}, url={https://huggingface.co/datasets/Ayushnangia/moltbook-entropy-collapse-gemini-flash-lite-n10}, note={Multi-agent social simulation on MoltBook platform using Gemini 3.1 Flash Lite (n10 agents)} } ``` ## License Apache 2.0
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