--- description: Native LLM orchestration with Conductor — supported LLM providers, vector database integration for RAG pipelines, and multimodal content generation tasks. --- # LLM orchestration Conductor provides native system tasks for LLM orchestration and integration. No external frameworks or custom workers required — configure a provider and use it in any workflow. Each provider supports function calling via MCP tool integration. ## Supported LLM providers | Provider | Chat Completion | Text Completion | Embeddings | |---|---|---|---| | Anthropic (Claude) | ✓ | ✓ | — | | OpenAI (GPT) | ✓ | ✓ | ✓ | | Azure OpenAI | ✓ | ✓ | ✓ | | Google Gemini | ✓ | ✓ | ✓ | | AWS Bedrock | ✓ | ✓ | ✓ | | Mistral | ✓ | ✓ | ✓ | | Cohere | ✓ | ✓ | ✓ | | HuggingFace | ✓ | ✓ | ✓ | | Ollama | ✓ | ✓ | ✓ | | Perplexity | ✓ | — | — | | Grok (xAI) | ✓ | ✓ | — | | StabilityAI | — | — | — | No other open source workflow engine provides native LLM orchestration at this breadth. Each provider is a configuration — switch models by changing a parameter, not your code. ## Built-in tools & advanced capabilities Conductor supports provider-native tools that run on the provider's infrastructure — no MCP server or custom worker needed. Enable them with a single parameter in the `LLM_CHAT_COMPLETE` task. | Capability | Parameter | OpenAI | Anthropic | Google Gemini | |---|---|---|---|---| | Web Search | `webSearch: true` | ✓ | ✓ | ✓ | | Code Execution | `codeInterpreter: true` | ✓ (code_interpreter) | ✓ (code_execution) | ✓ (code_execution) | | File Search | `fileSearchVectorStoreIds: [...]` | ✓ | — | — | | Extended Thinking | `thinkingTokenLimit: N` | — | ✓ | ✓ | | Reasoning Effort | `reasoningEffort: "high"` | ✓ | — | — | | Google Search | `googleSearchRetrieval: true` | — | — | ✓ | | Custom Functions | `tools: [...]` | ✓ | ✓ | ✓ | ### Web search The LLM can search the web for real-time information during chat completion. Enable it with `"webSearch": true`: ```json { "type": "LLM_CHAT_COMPLETE", "inputParameters": { "llmProvider": "openai", "model": "gpt-4o-mini", "messages": [{"role": "user", "message": "What happened in tech news today?"}], "webSearch": true } } ``` Works with OpenAI, Anthropic, and Google Gemini. Each provider uses its own native web search implementation. ### Code execution The LLM can write and execute code in a sandboxed environment. Enable it with `"codeInterpreter": true`: ```json { "type": "LLM_CHAT_COMPLETE", "inputParameters": { "llmProvider": "google_gemini", "model": "gemini-2.5-flash", "messages": [{"role": "user", "message": "Calculate the first 100 prime numbers and plot them"}], "codeInterpreter": true } } ``` Use this for data analysis, chart generation, mathematical computation, or any task that benefits from running code. ### Extended thinking Give the LLM a token budget for step-by-step reasoning before it responds. Useful for complex problems that benefit from chain-of-thought reasoning: ```json { "type": "LLM_CHAT_COMPLETE", "inputParameters": { "llmProvider": "anthropic", "model": "claude-sonnet-4-20250514", "messages": [{"role": "user", "message": "Prove that there are infinitely many primes"}], "thinkingTokenLimit": 10000, "maxTokens": 16000 } } ``` Supported by Anthropic and Google Gemini. ## Vector database workflows Built-in vector database integration enables RAG (retrieval-augmented generation) pipelines as standard vector database workflows. | Vector Database | Store Embeddings | Index Text | Semantic Search | |---|---|---|---| | Pinecone | ✓ | ✓ | ✓ | | pgvector (PostgreSQL) | ✓ | ✓ | ✓ | | MongoDB Atlas Vector Search | ✓ | ✓ | ✓ | ### Example: RAG pipeline A complete RAG workflow using native system tasks — index documents, search, and generate an answer. No custom workers required. ```json { "name": "rag_pipeline", "description": "Index documents, search, and generate RAG answer", "version": 1, "schemaVersion": 2, "tasks": [ { "name": "index_document", "taskReferenceName": "index_ref", "type": "LLM_INDEX_TEXT", "inputParameters": { "vectorDB": "postgres-prod", "index": "knowledge_base", "namespace": "docs", "docId": "${workflow.input.docId}", "text": "${workflow.input.text}", "embeddingModelProvider": "openai", "embeddingModel": "text-embedding-3-small", "dimensions": 1536, "metadata": "${workflow.input.metadata}" } }, { "name": "search_index", "taskReferenceName": "search_ref", "type": "LLM_SEARCH_INDEX", "inputParameters": { "vectorDB": "postgres-prod", "index": "knowledge_base", "namespace": "docs", "query": "${workflow.input.question}", "embeddingModelProvider": "openai", "embeddingModel": "text-embedding-3-small", "dimensions": 1536, "maxResults": 3 } }, { "name": "generate_answer", "taskReferenceName": "answer_ref", "type": "LLM_CHAT_COMPLETE", "inputParameters": { "llmProvider": "openai", "model": "gpt-4o-mini", "messages": [ { "role": "system", "message": "Answer the question using only the provided context." }, { "role": "user", "message": "Context:\n${search_ref.output.result}\n\nQuestion: ${workflow.input.question}" } ], "temperature": 0.2 } } ], "outputParameters": { "searchResults": "${search_ref.output.result}", "answer": "${answer_ref.output.result}" } } ``` Every task type — `LLM_INDEX_TEXT`, `LLM_SEARCH_INDEX`, `LLM_CHAT_COMPLETE` — is a native Conductor system task. The vector database, embedding model, and LLM provider are all configuration parameters. Switch from pgvector to Pinecone or from OpenAI to Anthropic by changing a parameter value. ## Content generation Native system tasks for multimodal content generation: | Task | Type | Description | |---|---|---| | Generate Image | `GENERATE_IMAGE` | Text-to-image generation via AI models | | Generate Audio | `GENERATE_AUDIO` | Text-to-speech synthesis | | Generate Video | `GENERATE_VIDEO` | Text/image-to-video generation (async) | | Generate PDF | `GENERATE_PDF` | Markdown-to-PDF document conversion | ## Examples Ready-to-use workflow definitions for every AI task type. Each example is a complete JSON workflow you can register and run directly. | Example | Task types used | |---|---| | [Chat Completion](https://github.com/conductor-oss/conductor/blob/main/ai/examples/01-chat-completion.json) | `LLM_CHAT_COMPLETE` | | [Generate Embeddings](https://github.com/conductor-oss/conductor/blob/main/ai/examples/02-generate-embeddings.json) | `LLM_GENERATE_EMBEDDINGS` | | [Image Generation](https://github.com/conductor-oss/conductor/blob/main/ai/examples/03-image-generation.json) | `GENERATE_IMAGE` | | [Audio Generation](https://github.com/conductor-oss/conductor/blob/main/ai/examples/04-audio-generation.json) | `GENERATE_AUDIO` | | [Semantic Search](https://github.com/conductor-oss/conductor/blob/main/ai/examples/05-semantic-search.json) | `LLM_SEARCH_INDEX` | | [RAG Basic](https://github.com/conductor-oss/conductor/blob/main/ai/examples/06-rag-basic.json) | `LLM_SEARCH_INDEX`, `LLM_CHAT_COMPLETE` | | [RAG Complete](https://github.com/conductor-oss/conductor/blob/main/ai/examples/07-rag-complete.json) | `LLM_INDEX_TEXT`, `LLM_SEARCH_INDEX`, `LLM_CHAT_COMPLETE` | | [MCP List Tools](https://github.com/conductor-oss/conductor/blob/main/ai/examples/08-mcp-list-tools.json) | `LIST_MCP_TOOLS` | | [MCP Call Tool](https://github.com/conductor-oss/conductor/blob/main/ai/examples/09-mcp-call-tool.json) | `CALL_MCP_TOOL` | | [MCP AI Agent](https://github.com/conductor-oss/conductor/blob/main/ai/examples/10-mcp-ai-agent.json) | `LIST_MCP_TOOLS`, `LLM_CHAT_COMPLETE`, `CALL_MCP_TOOL` | | [Video — OpenAI Sora](https://github.com/conductor-oss/conductor/blob/main/ai/examples/11-video-openai-sora.json) | `GENERATE_VIDEO` | | [Video — Gemini Veo](https://github.com/conductor-oss/conductor/blob/main/ai/examples/12-video-gemini-veo.json) | `GENERATE_VIDEO` | | [Image-to-Video Pipeline](https://github.com/conductor-oss/conductor/blob/main/ai/examples/13-image-to-video-pipeline.json) | `GENERATE_IMAGE`, `GENERATE_VIDEO` | | [StabilityAI Image](https://github.com/conductor-oss/conductor/blob/main/ai/examples/14-stabilityai-image.json) | `GENERATE_IMAGE` | | [PDF Generation](https://github.com/conductor-oss/conductor/blob/main/ai/examples/15-pdf-generation.json) | `GENERATE_PDF` | | [LLM-to-PDF Pipeline](https://github.com/conductor-oss/conductor/blob/main/ai/examples/16-llm-to-pdf-pipeline.json) | `LLM_CHAT_COMPLETE`, `GENERATE_PDF` | | [Web Search](https://github.com/conductor-oss/conductor/blob/main/ai/examples/17-web-search.json) | `LLM_CHAT_COMPLETE` (web search) | | [Code Execution](https://github.com/conductor-oss/conductor/blob/main/ai/examples/18-code-execution.json) | `LLM_CHAT_COMPLETE` (code execution) | | [Coding Agent](https://github.com/conductor-oss/conductor/blob/main/ai/examples/19-coding-agent.json) | `LLM_CHAT_COMPLETE` (code_interpreter) | | [Extended Thinking](https://github.com/conductor-oss/conductor/blob/main/ai/examples/20-extended-thinking.json) | `LLM_CHAT_COMPLETE` (thinking) | | [Web Research Agent](https://github.com/conductor-oss/conductor/blob/main/ai/examples/21-web-search-research-agent.json) | `LLM_CHAT_COMPLETE` (web search + thinking), `GENERATE_PDF` | | [Multi-Turn Chain](https://github.com/conductor-oss/conductor/blob/main/ai/examples/22-multi-turn-chain.json) | `LLM_CHAT_COMPLETE` (previousResponseId) | Browse all examples: [`ai/examples/`](https://github.com/conductor-oss/conductor/tree/main/ai/examples) ## Next steps - **[Durable Agents](durable-agents.md)** — What persists, what gets retried, and why JSON is AI-native. - **[Dynamic Workflows](dynamic-workflows.md)** — Agents that build their own execution plans at runtime. - **[AI & LLM Recipes](../cookbook/ai-llm.md)** — Practical recipes for common LLM workflow patterns.