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Guido.Tech/ai_intelligence_layer/prompts/brainstorm_prompt.py

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"""
Prompt template for strategy brainstorming.
"""
from typing import List
from models.input_models import EnrichedTelemetryWebhook, RaceContext
from utils.validators import TelemetryAnalyzer
from config import get_settings
def build_brainstorm_prompt_fast(
enriched_telemetry: List[EnrichedTelemetryWebhook],
race_context: RaceContext
) -> str:
"""Build a faster, more concise prompt for quicker responses (lap-level data)."""
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settings = get_settings()
count = settings.strategy_count
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latest = max(enriched_telemetry, key=lambda x: x.lap)
pit_window = latest.optimal_pit_window
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# Format position and competitive info
position = race_context.driver_state.current_position
gap_to_leader = race_context.driver_state.gap_to_leader
gap_to_ahead = race_context.driver_state.gap_to_ahead
comp_info = f"P{position}"
if gap_to_ahead > 0:
comp_info += f", {gap_to_ahead:.1f}s behind P{position-1}"
if gap_to_leader > 0 and position > 1:
comp_info += f", {gap_to_leader:.1f}s from leader"
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if count == 1:
# Ultra-fast mode: just generate 1 strategy
return f"""Generate 1 F1 race strategy for {race_context.driver_state.driver_name} at {race_context.race_info.track_name}.
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CURRENT: Lap {race_context.race_info.current_lap}/{race_context.race_info.total_laps}, {comp_info}, {race_context.driver_state.current_tire_compound} tires ({race_context.driver_state.tire_age_laps} laps old)
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TELEMETRY: Tire deg {latest.tire_degradation_rate:.2f}, Cliff risk {latest.tire_cliff_risk:.2f}, Pace {latest.pace_trend}, Position trend {latest.position_trend}, Competitive pressure {latest.competitive_pressure:.2f}
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Generate 1 optimal strategy considering competitive position. Min 2 tire compounds required.
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JSON: {{"strategies": [{{"strategy_id": 1, "strategy_name": "name", "stop_count": 1, "pit_laps": [32], "tire_sequence": ["medium", "hard"], "brief_description": "one sentence", "risk_level": "medium", "key_assumption": "main assumption"}}]}}"""
elif count <= 5:
# Fast mode: 2-5 strategies with different approaches
return f"""Generate {count} diverse F1 race strategies for {race_context.driver_state.driver_name} at {race_context.race_info.track_name}.
CURRENT: Lap {race_context.race_info.current_lap}/{race_context.race_info.total_laps}, {comp_info}, {race_context.driver_state.current_tire_compound} tires ({race_context.driver_state.tire_age_laps} laps old)
TELEMETRY: Tire deg {latest.tire_degradation_rate:.2f}, Cliff risk {latest.tire_cliff_risk:.2f}, Pace {latest.pace_trend}, Delta {latest.performance_delta:+.2f}s, Position trend {latest.position_trend}, Competitive pressure {latest.competitive_pressure:.2f}
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COMPETITIVE SITUATION: Gap to ahead {gap_to_ahead:.1f}s ({"DRS RANGE - attack opportunity!" if gap_to_ahead < 1.0 else "close battle" if gap_to_ahead < 3.0 else "need to push"})
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Generate {count} strategies balancing tire management with competitive pressure. Consider if aggressive undercut makes sense given gaps. Min 2 tire compounds each.
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JSON: {{"strategies": [{{"strategy_id": 1, "strategy_name": "Conservative Stay Out", "stop_count": 1, "pit_laps": [35], "tire_sequence": ["medium", "hard"], "brief_description": "extend current stint then hard tires to end", "risk_level": "low", "key_assumption": "tire cliff risk stays below 0.7"}}]}}"""
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return f"""Generate {count} F1 race strategies for {race_context.driver_state.driver_name} at {race_context.race_info.track_name}.
CURRENT: Lap {race_context.race_info.current_lap}/{race_context.race_info.total_laps}, {comp_info}, {race_context.driver_state.current_tire_compound} tires ({race_context.driver_state.tire_age_laps} laps old)
TELEMETRY: Tire deg {latest.tire_degradation_rate:.2f}, Cliff risk {latest.tire_cliff_risk:.2f}, Pace {latest.pace_trend}, Delta {latest.performance_delta:+.2f}s, Position trend {latest.position_trend}, Competitive pressure {latest.competitive_pressure:.2f}
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COMPETITIVE: Gap ahead {gap_to_ahead:.1f}s, Position trending {latest.position_trend}
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Generate {count} diverse strategies considering both tire management AND competitive positioning. Min 2 compounds.
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JSON: {{"strategies": [{{"strategy_id": 1, "strategy_name": "name", "stop_count": 1, "pit_laps": [32], "tire_sequence": ["medium", "hard"], "brief_description": "one sentence", "risk_level": "low|medium|high|critical", "key_assumption": "main assumption"}}]}}"""
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def build_brainstorm_prompt(
enriched_telemetry: List[EnrichedTelemetryWebhook],
race_context: RaceContext
) -> str:
"""
Build the brainstorm prompt for Gemini.
Args:
enriched_telemetry: Recent enriched telemetry data
race_context: Current race context
Returns:
Formatted prompt string
"""
# Get latest telemetry
latest = max(enriched_telemetry, key=lambda x: x.lap)
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# Format telemetry data (lap-level)
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telemetry_data = []
for t in sorted(enriched_telemetry, key=lambda x: x.lap, reverse=True)[:10]:
telemetry_data.append({
"lap": t.lap,
"tire_degradation_rate": round(t.tire_degradation_rate, 3),
"pace_trend": t.pace_trend,
"tire_cliff_risk": round(t.tire_cliff_risk, 3),
"optimal_pit_window": t.optimal_pit_window,
"performance_delta": round(t.performance_delta, 2),
"competitive_pressure": round(t.competitive_pressure, 3),
"position_trend": t.position_trend
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})
# Format competitors
competitors_data = []
for c in race_context.competitors:
competitors_data.append({
"position": c.position,
"driver": c.driver,
"tire_compound": c.tire_compound,
"tire_age_laps": c.tire_age_laps,
"gap_seconds": round(c.gap_seconds, 1)
})
prompt = f"""You are an expert F1 strategist. Generate 20 diverse race strategies based on lap-level telemetry AND competitive positioning.
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LAP-LEVEL TELEMETRY METRICS:
- tire_degradation_rate: 0-1 (higher = worse tire wear)
- tire_cliff_risk: 0-1 (probability of hitting tire cliff)
- pace_trend: "improving", "stable", or "declining"
- position_trend: "gaining", "stable", or "losing" positions
- competitive_pressure: 0-1 (combined metric from position and gaps)
- optimal_pit_window: [start_lap, end_lap] recommended pit range
- performance_delta: seconds vs baseline (negative = slower)
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RACE STATE:
Track: {race_context.race_info.track_name}
Current Lap: {race_context.race_info.current_lap} / {race_context.race_info.total_laps}
Weather: {race_context.race_info.weather_condition}
Track Temperature: {race_context.race_info.track_temp_celsius}°C
DRIVER STATE:
Driver: {race_context.driver_state.driver_name}
Position: P{race_context.driver_state.current_position}
Current Tires: {race_context.driver_state.current_tire_compound} ({race_context.driver_state.tire_age_laps} laps old)
Fuel Remaining: {race_context.driver_state.fuel_remaining_percent}%
COMPETITORS:
{competitors_data}
ENRICHED TELEMETRY (Last {len(telemetry_data)} laps, newest first):
{telemetry_data}
KEY INSIGHTS:
- Latest tire degradation rate: {latest.tire_degradation_rate:.3f}
- Latest tire cliff risk: {latest.tire_cliff_risk:.3f}
- Latest pace trend: {latest.pace_trend}
- Optimal pit window: Laps {latest.optimal_pit_window[0]}-{latest.optimal_pit_window[1]}
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- Laps remaining: {race_context.race_info.total_laps - race_context.race_info.current_lap}
TASK: Generate exactly 20 diverse strategies.
DIVERSITY: Conservative (1-stop), Standard (balanced), Aggressive (undercut), Reactive (competitor), Contingency (safety car)
RULES:
- Pit laps: {race_context.race_info.current_lap + 1} to {race_context.race_info.total_laps - 1}
- Min 2 tire compounds (F1 rule)
- Consider optimal pit window and tire cliff risk
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For each strategy provide:
- strategy_id: 1-20
- strategy_name: Short descriptive name
- stop_count: 1, 2, or 3
- pit_laps: [array of lap numbers]
- tire_sequence: [array of compounds: "soft", "medium", "hard"]
- brief_description: One sentence rationale
- risk_level: "low", "medium", "high", or "critical"
- key_assumption: Main assumption this strategy relies on
OUTPUT FORMAT (JSON only, no markdown):
{{
"strategies": [
{{
"strategy_id": 1,
"strategy_name": "Conservative 1-Stop",
"stop_count": 1,
"pit_laps": [32],
"tire_sequence": ["medium", "hard"],
"brief_description": "Extend mediums to lap 32, safe finish on hards",
"risk_level": "low",
"key_assumption": "Tire degradation stays below 0.85 until lap 32"
}}
]
}}"""
return prompt