LLM OpenAI
Gambaran Umum
Section titled “Gambaran Umum”Komponen LLM OpenAI menyediakan integrasi dengan OpenAI dan API yang kompatibel dengan OpenAI (Azure OpenAI, Ollama, dll.).
Konfigurasi
Section titled “Konfigurasi”{ "component-llm-openai": { "api_key": "sk-xxx...", "api_base": "https://api.openai.com/v1", "default_model": "gpt-4" }}Untuk Azure OpenAI
Section titled “Untuk Azure OpenAI”{ "component-llm-openai": { "api_key": "your-azure-key", "api_base": "https://your-resource.openai.azure.com", "api_type": "azure", "api_version": "2024-02-15-preview", "deployment_name": "gpt-4" }}Penggunaan di Flow
Section titled “Penggunaan di Flow”Completion Dasar
Section titled “Completion Dasar”- id: ask_llm type: llm config: model: "gpt-4" prompt: "What is the capital of France?" next: use_responseDengan System Prompt
Section titled “Dengan System Prompt”- id: classify type: llm config: model: "gpt-4" system_prompt: | You are a customer service intent classifier. Classify the user's message into one of: greeting, question, complaint, other. Respond with JSON: {"intent": "...", "confidence": 0.0-1.0} prompt: "{{message}}" output_format: json next: route_intentChat Completion
Section titled “Chat Completion”- id: chat type: llm config: model: "gpt-4" messages: - role: system content: "You are a helpful assistant." - role: user content: "{{user_message}}" temperature: 0.7 max_tokens: 500Dengan Function Calling
Section titled “Dengan Function Calling”- id: extract_entities type: llm config: model: "gpt-4" prompt: "Extract order information from: {{message}}" functions: - name: extract_order description: "Extract order details" parameters: type: object properties: order_id: type: string description: "The order ID" product: type: string description: "Product name" required: ["order_id"] function_call: "auto"Parameter
Section titled “Parameter”| Parameter | Jenis | Default | Deskripsi |
|---|---|---|---|
model | string | ”gpt-4” | Nama model |
prompt | string | - | Prompt pengguna |
system_prompt | string | - | Pesan system |
messages | array | - | Array pesan penuh |
temperature | float | 1.0 | Kreativitas (0-2) |
max_tokens | int | - | Maksimum token respons |
output_format | string | ”text" | "text” atau “json” |
functions | array | - | Definisi function |
function_call | string | ”auto” | Mode pemanggilan function |
Penanganan Respons
Section titled “Penanganan Respons”- id: ask_llm type: llm config: model: "gpt-4" prompt: "{{question}}" output: llm_response next: use_response
- id: use_response type: reply config: message: "{{llm_response}}"Penanganan Error
Section titled “Penanganan Error”- id: safe_llm_call type: llm config: model: "gpt-4" prompt: "{{message}}" timeout: 30000 retry_count: 3 on_error: handle_error next: success
- id: handle_error type: reply config: message: "I'm having trouble processing that. Please try again."