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Gestion des coûts

Optimisation des coûts LLM : Guide des tarifs API et des stratégies

Guide complet pour optimiser les coûts des API LLM, la gestion des jetons, le choix des modèles, les stratégies de mise en cache et la gestion budgétaire en entreprise.

Veni AI Technical Team28 Aralık 20247 dk okuma
Optimisation des coûts LLM : Guide des tarifs API et des stratégies

Optimisation des coûts LLM : Guide des tarifs API et des stratégies

Les coûts d’API LLM peuvent représenter une dépense importante dans les applications à grand volume. Dans ce guide, nous examinons des stratégies d’optimisation des coûts.

Comparaison des tarifs API

Tarification OpenAI (2024)

ModèleEntrée (/1M tokens)Sortie (/1M tokens)
GPT Turbo$10.00$30.00
GPTo$5.00$15.00
GPTo-mini$0.15$0.60
GPT-3.5 Turbo$0.50$1.50

Tarification Anthropic

ModèleEntrée (/1M tokens)Sortie (/1M tokens)
Claude 3 Opus$15.00$75.00
Claude 3 Sonnet$3.00$15.00
Claude 3 Haiku$0.25$1.25

Tarification Google

ModèleEntrée (/1M tokens)Sortie (/1M tokens)
Gemini Pro$0.50$1.50
Gemini Pro 1.5$3.50$10.50

Calcul des coûts

Calculateur de coûts en tokens

1class CostCalculator: 2 PRICING = { 3 "gpt-4-turbo": {"input": 0.01, "output": 0.03}, 4 "gpt-4o": {"input": 0.005, "output": 0.015}, 5 "gpt-4o-mini": {"input": 0.00015, "output": 0.0006}, 6 "gpt-3.5-turbo": {"input": 0.0005, "output": 0.0015}, 7 "claude-3-opus": {"input": 0.015, "output": 0.075}, 8 "claude-3-sonnet": {"input": 0.003, "output": 0.015}, 9 "claude-3-haiku": {"input": 0.00025, "output": 0.00125}, 10 } 11 12 def calculate(self, model: str, input_tokens: int, output_tokens: int) -> float: 13 pricing = self.PRICING.get(model, {"input": 0, "output": 0}) 14 15 input_cost = (input_tokens / 1000) * pricing["input"] 16 output_cost = (output_tokens / 1000) * pricing["output"] 17 18 return input_cost + output_cost 19 20 def estimate_monthly(self, model: str, daily_requests: int, 21 avg_input_tokens: int, avg_output_tokens: int) -> dict: 22 daily_cost = daily_requests * self.calculate( 23 model, avg_input_tokens, avg_output_tokens 24 ) 25 26 return { 27 "daily": daily_cost, 28 "weekly": daily_cost * 7, 29 "monthly": daily_cost * 30, 30 "yearly": daily_cost * 365 31 } 32 33# Usage 34calc = CostCalculator() 35cost = calc.calculate("gpt-4-turbo", 1000, 500) 36print(f"Cost: ${cost:.4f}") 37 38monthly = calc.estimate_monthly("gpt-4-turbo", 10000, 500, 200) 39print(f"Monthly estimate: ${monthly['monthly']:.2f}") 40## Stratégie de routage des modèles 41 42### Routage basé sur la complexité 43 44```python 45class ModelRouter: 46 def __init__(self): 47 self.models = { 48 "simple": "gpt-4o-mini", 49 "medium": "gpt-4o", 50 "complex": "gpt-4-turbo" 51 } 52 53 def classify_complexity(self, prompt: str) -> str: 54 # Simple heuristics 55 word_count = len(prompt.split()) 56 57 complexity_indicators = [ 58 "analyze", "compare", "evaluate", 59 "strategy", "detailed", "comprehensive" 60 ] 61 62 has_complexity = any(ind in prompt.lower() for ind in complexity_indicators) 63 64 if word_count < 50 and not has_complexity: 65 return "simple" 66 elif word_count < 200 or not has_complexity: 67 return "medium" 68 else: 69 return "complex" 70 71 def route(self, prompt: str) -> str: 72 complexity = self.classify_complexity(prompt) 73 return self.models[complexity] 74 75# LLM-based complexity classification 76def classify_with_llm(prompt: str) -> str: 77 response = client.chat.completions.create( 78 model="gpt-4o-mini", # Classification with cheap model 79 messages=[ 80 { 81 "role": "system", 82 "content": "Determine the complexity of the given prompt: simple, medium, complex" 83 }, 84 {"role": "user", "content": prompt} 85 ], 86 max_tokens=10 87 ) 88 return response.choices[0].message.content.strip().lower()

Compromis qualité‑coût

1class AdaptiveRouter: 2 def __init__(self, quality_threshold: float = 0.8): 3 self.quality_threshold = quality_threshold 4 self.model_hierarchy = ["gpt-4o-mini", "gpt-4o", "gpt-4-turbo"] 5 6 def get_response_with_fallback(self, prompt: str) -> dict: 7 for model in self.model_hierarchy: 8 response = self.call_model(model, prompt) 9 quality = self.assess_quality(response) 10 11 if quality >= self.quality_threshold: 12 return { 13 "response": response, 14 "model_used": model, 15 "quality_score": quality 16 } 17 18 # Continue with strongest model 19 return { 20 "response": response, 21 "model_used": self.model_hierarchy[-1], 22 "quality_score": quality 23 } 24## Stratégies de mise en cache 25 26### Mise en cache des réponses 27 28```python 29import hashlib 30import redis 31import json 32 33class LLMCache: 34 def __init__(self, redis_url: str, ttl: int = 3600): 35 self.redis = redis.from_url(redis_url) 36 self.ttl = ttl 37 self.stats = {"hits": 0, "misses": 0} 38 39 def _cache_key(self, model: str, messages: list, **kwargs) -> str: 40 content = json.dumps({ 41 "model": model, 42 "messages": messages, 43 **kwargs 44 }, sort_keys=True) 45 return f"llm:{hashlib.md5(content.encode()).hexdigest()}" 46 47 def get(self, model: str, messages: list, **kwargs) -> dict | None: 48 key = self._cache_key(model, messages, **kwargs) 49 cached = self.redis.get(key) 50 51 if cached: 52 self.stats["hits"] += 1 53 return json.loads(cached) 54 55 self.stats["misses"] += 1 56 return None 57 58 def set(self, model: str, messages: list, response: dict, **kwargs): 59 key = self._cache_key(model, messages, **kwargs) 60 self.redis.setex(key, self.ttl, json.dumps(response)) 61 62 def get_savings(self, cost_per_request: float) -> float: 63 return self.stats["hits"] * cost_per_request 64 65# Usage 66cache = LLMCache("redis://localhost:6379") 67 68def cached_completion(model: str, messages: list, **kwargs): 69 cached = cache.get(model, messages, **kwargs) 70 if cached: 71 return cached 72 73 response = client.chat.completions.create( 74 model=model, 75 messages=messages, 76 **kwargs 77 ) 78 79 result = response.choices[0].message.content 80 cache.set(model, messages, {"content": result}) 81 82 return {"content": result}

Mise en cache sémantique

1class SemanticCache: 2 def __init__(self, vector_store, similarity_threshold: float = 0.95): 3 self.vector_store = vector_store 4 self.threshold = similarity_threshold 5 6 def get_similar(self, query: str) -> dict | None: 7 query_embedding = get_embedding(query) 8 9 results = self.vector_store.search( 10 vector=query_embedding, 11 top_k=1, 12 filter={"type": "cache"} 13 ) 14 15 if results and results[0].score >= self.threshold: 16 return { 17 "response": results[0].metadata["response"], 18 "similarity": results[0].score, 19 "original_query": results[0].metadata["query"] 20 } 21 22 return None 23 24 def store(self, query: str, response: str): 25 embedding = get_embedding(query) 26 27 self.vector_store.upsert([{ 28 "id": f"cache_{hash(query)}", 29 "values": embedding, 30 "metadata": { 31 "type": "cache", 32 "query": query, 33 "response": response, 34 "timestamp": datetime.now().isoformat() 35 } 36 }]) 37## Optimisation des tokens 38 39### Compression des prompts 40 41```python 42def compress_prompt(prompt: str, target_reduction: float = 0.3) -> str: 43 """Save tokens by shortening prompt""" 44 45 response = client.chat.completions.create( 46 model="gpt-4o-mini", 47 messages=[ 48 { 49 "role": "system", 50 "content": f"Shorten text by {int(target_reduction*100)}%. Keep important information." 51 }, 52 {"role": "user", "content": prompt} 53 ] 54 ) 55 56 return response.choices[0].message.content 57 58def remove_redundancy(text: str) -> str: 59 """Remove redundant content""" 60 sentences = text.split(". ") 61 unique_sentences = list(dict.fromkeys(sentences)) 62 return ". ".join(unique_sentences)

Contrôle de la longueur de sortie

1def optimize_output_tokens(prompt: str, max_tokens: int = None) -> dict: 2 """Optimize output token count""" 3 4 # Set max_tokens based on task type 5 task_limits = { 6 "classification": 10, 7 "extraction": 200, 8 "summarization": 300, 9 "generation": 500, 10 "analysis": 800 11 } 12 13 task_type = detect_task_type(prompt) 14 optimal_max = max_tokens or task_limits.get(task_type, 500) 15 16 response = client.chat.completions.create( 17 model="gpt-4o-mini", 18 messages=[{"role": "user", "content": prompt}], 19 max_tokens=optimal_max 20 ) 21 22 return { 23 "response": response.choices[0].message.content, 24 "tokens_used": response.usage.completion_tokens, 25 "tokens_saved": 4096 - optimal_max # Potential savings 26 }

Traitement par lots

Utilisation de l’API Batch

1async def batch_process(prompts: list, model: str = "gpt-4o-mini") -> list: 2 """Cost reduction with batch processing""" 3 4 # OpenAI Batch API 5 batch_input = [ 6 { 7 "custom_id": f"request-{i}", 8 "method": "POST", 9 "url": "/v1/chat/completions", 10 "body": { 11 "model": model, 12 "messages": [{"role": "user", "content": prompt}] 13 } 14 } 15 for i, prompt in enumerate(prompts) 16 ] 17 18 # Create batch job 19 batch = client.batches.create( 20 input_file_id=upload_batch_file(batch_input), 21 endpoint="/v1/chat/completions", 22 completion_window="24h" 23 ) 24 25 # Wait for and retrieve results 26 return await wait_for_batch(batch.id)

Suivi du budget

1class BudgetMonitor: 2 def __init__(self, daily_limit: float, alert_threshold: float = 0.8): 3 self.daily_limit = daily_limit 4 self.alert_threshold = alert_threshold 5 self.daily_spend = 0 6 self.last_reset = datetime.now().date() 7 8 def track_usage(self, cost: float) -> dict: 9 # Check daily reset 10 if datetime.now().date() > self.last_reset: 11 self.daily_spend = 0 12 self.last_reset = datetime.now().date() 13 14 self.daily_spend += cost 15 16 status = { 17 "current_spend": self.daily_spend, 18 "remaining": self.daily_limit - self.daily_spend, 19 "percentage": self.daily_spend / self.daily_limit 20 } 21 22 if status["percentage"] >= self.alert_threshold: 23 self.send_alert(status) 24 25 if self.daily_spend >= self.daily_limit: 26 raise BudgetExceededError("Daily budget limit exceeded") 27 28 return status 29 30 def send_alert(self, status: dict): 31 # Email/Slack notification 32 pass 33 34# Usage as Middleware 35budget = BudgetMonitor(daily_limit=100.0) 36 37def monitored_completion(model: str, messages: list, **kwargs): 38 response = client.chat.completions.create( 39 model=model, messages=messages, **kwargs 40 ) 41 42 cost = calculate_cost(model, response.usage) 43 budget.track_usage(cost) 44 45 return response 46## Calcul du ROI 47 48```python 49def calculate_ai_roi( 50 manual_cost_per_task: float, 51 tasks_per_month: int, 52 ai_cost_per_task: float, 53 accuracy_rate: float = 0.95 54) -> dict: 55 56 manual_monthly = manual_cost_per_task * tasks_per_month 57 ai_monthly = ai_cost_per_task * tasks_per_month 58 59 # Error correction cost 60 error_cost = (1 - accuracy_rate) * tasks_per_month * manual_cost_per_task * 0.5 61 62 total_ai_cost = ai_monthly + error_cost 63 savings = manual_monthly - total_ai_cost 64 65 return { 66 "manual_cost": manual_monthly, 67 "ai_cost": total_ai_cost, 68 "monthly_savings": savings, 69 "yearly_savings": savings * 12, 70 "roi_percentage": (savings / total_ai_cost) * 100 71 }

Conclusion

L’optimisation des coûts LLM est obtenue grâce au routage de modèles, à la mise en cache, à la gestion des tokens et au suivi du budget. Avec les bonnes stratégies, des économies de 50 à 80 % sont possibles.

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