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| """ | |
| Viraltest — Edge Case & Scenario Tests (Daily Plan Format) | |
| Runs scenarios for all 3 tasks using the new daily step format. | |
| Each step = one full day. Agent submits a sparse daily plan. | |
| """ | |
| import random as stdlib_random | |
| from typing import Callable, Dict, List, Tuple | |
| from models import ScheduledAction, ViraltestAction | |
| from server.viraltest_environment import ( | |
| TAG_POOL, | |
| ViraltestEnvironment, | |
| ViraltestObservation, | |
| ) | |
| TASKS = ["weekly_engage", "weekly_strategic", "weekly_competitive"] | |
| SEED = 42 | |
| _CONTENT_TYPES = ["reel", "carousel", "story", "text_post"] | |
| _TOPICS = ["AI tools", "fitness routine", "growth hacks", "travel guide", "food recipe", "wellness tips"] | |
| _rng = stdlib_random.Random(99) | |
| def _plan(actions: list) -> ViraltestAction: | |
| return ViraltestAction(scheduled_actions=[ScheduledAction(**a) for a in actions]) | |
| def run_episode( | |
| task: str, | |
| plan_fn: Callable[[Dict, int], ViraltestAction], | |
| label: str, | |
| ) -> float: | |
| env = ViraltestEnvironment() | |
| obs = env.reset(task=task, seed=SEED) | |
| obs_dict = obs.model_dump() | |
| rewards: List[float] = [] | |
| min_energy = 1.0 | |
| burned_out = False | |
| for day in range(1, 8): | |
| action = plan_fn(obs_dict, day) | |
| obs = env.step(action) | |
| obs_dict = obs.model_dump() | |
| r = obs.reward if obs.reward is not None else 0.0 | |
| rewards.append(r) | |
| min_energy = min(min_energy, obs.creator_energy) | |
| if obs.done and obs.creator_energy <= 0: | |
| burned_out = True | |
| if obs.done: | |
| break | |
| score = (obs.metadata or {}).get("grader_score", 0.0) | |
| total_steps = len(rewards) | |
| print(f" Task: {task}") | |
| print(f" Days: {total_steps} | Done: {obs.done} | Burned out: {burned_out}") | |
| print(f" Score: {score:.4f} | Total reward: {sum(rewards):.2f} | Avg reward: {sum(rewards)/len(rewards):.3f}") | |
| print(f" Energy: {obs.creator_energy:.2f} | Min energy: {min_energy:.2f}") | |
| print(f" Followers: {obs.follower_count} (started 10000, delta {obs.follower_count - 10000:+d})") | |
| print(f" Engagement rate: {obs.engagement_rate:.4f}") | |
| print(f" Unique tags: {len(obs.tag_performance)}") | |
| print(f" Niche saturation: {obs.niche_saturation:.3f}") | |
| print() | |
| return score | |
| def plan_always_rest(obs: dict, day: int) -> ViraltestAction: | |
| return _plan([]) | |
| def plan_spam(obs: dict, day: int) -> ViraltestAction: | |
| return _plan([{"hour": h, "action_type": "post", "content_type": "reel", | |
| "topic": "AI tools", "tags": ["ai"]} for h in range(24)]) | |
| def plan_smart(obs: dict, day: int) -> ViraltestAction: | |
| trending = (obs.get("trending_topics") or ["AI tools"])[0] | |
| t_tags = list((obs.get("trending_tags") or [])[:2]) | |
| pool_tag = TAG_POOL[(day * 2) % len(TAG_POOL)] | |
| pool_tag2 = TAG_POOL[(day * 2 + 1) % len(TAG_POOL)] | |
| ct1 = _CONTENT_TYPES[(day * 2) % 4] | |
| ct2 = _CONTENT_TYPES[(day * 2 + 1) % 4] | |
| return _plan([ | |
| {"hour": 8, "action_type": "create_content"}, | |
| {"hour": 12, "action_type": "post", "content_type": ct1, "topic": trending, "tags": t_tags + [pool_tag]}, | |
| {"hour": 19, "action_type": "post", "content_type": ct2, "topic": trending, "tags": t_tags + [pool_tag2]}, | |
| ]) | |
| def plan_no_rest(obs: dict, day: int) -> ViraltestAction: | |
| actions = [] | |
| for h in range(24): | |
| ct = _CONTENT_TYPES[h % 4] | |
| topic = _rng.choice(_TOPICS) | |
| tags = _rng.sample(TAG_POOL, 3) | |
| actions.append({"hour": h, "action_type": "post", "content_type": ct, "topic": topic, "tags": tags}) | |
| return _plan(actions) | |
| def plan_minimal(obs: dict, day: int) -> ViraltestAction: | |
| trending = (obs.get("trending_topics") or ["minimalism"])[0] | |
| tags = list((obs.get("trending_tags") or [])[:3]) | |
| return _plan([ | |
| {"hour": 12, "action_type": "post", "content_type": "carousel", "topic": trending, "tags": tags}, | |
| ]) | |
| def plan_tag_explorer(obs: dict, day: int) -> ViraltestAction: | |
| trending = (obs.get("trending_topics") or ["devtools"])[0] | |
| start = (day * 6) % len(TAG_POOL) | |
| tags1 = [TAG_POOL[(start + i) % len(TAG_POOL)] for i in range(3)] | |
| tags2 = [TAG_POOL[(start + 3 + i) % len(TAG_POOL)] for i in range(3)] | |
| ct1 = _CONTENT_TYPES[(day * 2) % 4] | |
| ct2 = _CONTENT_TYPES[(day * 2 + 1) % 4] | |
| return _plan([ | |
| {"hour": 10, "action_type": "post", "content_type": ct1, "topic": trending, "tags": tags1}, | |
| {"hour": 18, "action_type": "post", "content_type": ct2, "topic": trending, "tags": tags2}, | |
| ]) | |
| def plan_queue_optimizer(obs: dict, day: int) -> ViraltestAction: | |
| trending = (obs.get("trending_topics") or ["productivity"])[0] | |
| tags = list((obs.get("trending_tags") or [])[:2]) + ["growth"] | |
| queue = obs.get("content_queue_size", 0) | |
| if day < 3 or queue < 2: | |
| return _plan([ | |
| {"hour": 8, "action_type": "create_content"}, | |
| {"hour": 10, "action_type": "create_content"}, | |
| {"hour": 14, "action_type": "create_content"}, | |
| ]) | |
| ct = _CONTENT_TYPES[day % 4] | |
| return _plan([ | |
| {"hour": 12, "action_type": "post", "content_type": ct, "topic": trending, "tags": tags}, | |
| {"hour": 19, "action_type": "post", "content_type": _CONTENT_TYPES[(day + 1) % 4], "topic": trending, "tags": tags}, | |
| ]) | |
| def plan_double_peak(obs: dict, day: int) -> ViraltestAction: | |
| trending = (obs.get("trending_topics") or ["peak time content"])[0] | |
| tags = list((obs.get("trending_tags") or [])[:3]) | |
| return _plan([ | |
| {"hour": 9, "action_type": "post", "content_type": "reel", "topic": trending, "tags": tags}, | |
| {"hour": 15, "action_type": "post", "content_type": "carousel", "topic": trending, "tags": tags}, | |
| ]) | |
| def plan_random(obs: dict, day: int) -> ViraltestAction: | |
| actions = [] | |
| for h in range(24): | |
| r = _rng.random() | |
| if r < 0.1: | |
| ct = _rng.choice(_CONTENT_TYPES) | |
| topic = _rng.choice(["random topic", "AI tools", "fitness", "travel"]) | |
| tags = _rng.sample(TAG_POOL, 2) | |
| actions.append({"hour": h, "action_type": "post", "content_type": ct, "topic": topic, "tags": tags}) | |
| elif r < 0.15: | |
| actions.append({"hour": h, "action_type": "create_content"}) | |
| return _plan(actions) | |
| SCENARIOS: List[Tuple[str, Callable, str]] = [ | |
| ("Always Rest", plan_always_rest, "Zero engagement, no growth, energy stays max"), | |
| ("Spam Post", plan_spam, "Post every hour, burns out instantly"), | |
| ("Smart Agent", plan_smart, "Peak hours, trending, varied types, energy management"), | |
| ("No Rest", plan_no_rest, "Post every hour, never rests, burns out"), | |
| ("Minimal Poster", plan_minimal, "1 carousel at noon per day"), | |
| ("Tag Explorer", plan_tag_explorer, "Rotates through tag pool for max discovery"), | |
| ("Queue Optimizer", plan_queue_optimizer, "Creates content first, posts from queue"), | |
| ("Double Peak", plan_double_peak, "Posts at 9am and 3pm"), | |
| ("Random Actor", plan_random, "Random sparse actions each day"), | |
| ] | |
| if __name__ == "__main__": | |
| print("=" * 70) | |
| print("VIRALTEST — DAILY PLAN SCENARIO TESTS") | |
| print("=" * 70) | |
| print() | |
| for scenario_name, plan_fn, description in SCENARIOS: | |
| print("=" * 70) | |
| print(f"{scenario_name}") | |
| print(f" {description}") | |
| print("=" * 70) | |
| print() | |
| for task in TASKS: | |
| _rng = stdlib_random.Random(99) | |
| run_episode(task, plan_fn, scenario_name) | |
| print() | |
| print("=" * 70) | |
| print("SUMMARY TABLE") | |
| print("=" * 70) | |
| print() | |
| print(f"{'Scenario':<30} {'Engage':>8} {'Strategic':>10} {'Competitive':>12}") | |
| print("-" * 62) | |
| for scenario_name, plan_fn, _ in SCENARIOS: | |
| scores = [] | |
| for task in TASKS: | |
| _rng = stdlib_random.Random(99) | |
| env = ViraltestEnvironment() | |
| obs = env.reset(task=task, seed=SEED) | |
| obs_dict = obs.model_dump() | |
| for day in range(1, 8): | |
| action = plan_fn(obs_dict, day) | |
| obs = env.step(action) | |
| obs_dict = obs.model_dump() | |
| if obs.done: | |
| break | |
| scores.append((obs.metadata or {}).get("grader_score", 0.0)) | |
| print(f"{scenario_name:<30} {scores[0]:>8.4f} {scores[1]:>10.4f} {scores[2]:>12.4f}") | |
| print() | |
| print("EXPECTED: Smart/Queue/Tag Explorer should score highest.") | |
| print("Burnout agents (spam, no_rest) should score near 0 on strategic/competitive.") | |