import { BaseChatModel } from "@langchain/core/language_models/chat_models";
import { ChatPromptTemplate } from "@langchain/core/prompts";
import { StructuredToolInterface } from "@langchain/core/tools";
import { AgentRunnableSequence } from "../agent.js";
import { ToolsAgentStep } from "./output_parser.js";
/**
 * Params used by the createOpenAIToolsAgent function.
 */
export type CreateToolCallingAgentParams = {
    /**
     * LLM to use as the agent. Should work with OpenAI tool calling,
     * so must either be an OpenAI model that supports that or a wrapper of
     * a different model that adds in equivalent support.
     */
    llm: BaseChatModel;
    /** Tools this agent has access to. */
    tools: StructuredToolInterface[];
    /** The prompt to use, must have an input key of `agent_scratchpad`. */
    prompt: ChatPromptTemplate;
    /**
     * Whether to invoke the underlying model in streaming mode,
     * allowing streaming of intermediate steps. Defaults to true.
     */
    streamRunnable?: boolean;
};
/**
 * Create an agent that uses tools.
 * @param params Params required to create the agent. Includes an LLM, tools, and prompt.
 * @returns A runnable sequence representing an agent. It takes as input all the same input
 *     variables as the prompt passed in does. It returns as output either an
 *     AgentAction or AgentFinish.
 * @example
 * ```typescript
 * import { ChatAnthropic } from "@langchain/anthropic";
 * import { ChatPromptTemplate, MessagesPlaceholder } from "@langchain/core/prompts";
 * import { AgentExecutor, createToolCallingAgent } from "langchain/agents";
 *
 * const prompt = ChatPromptTemplate.fromMessages(
 *   [
 *     ["system", "You are a helpful assistant"],
 *     ["placeholder", "{chat_history}"],
 *     ["human", "{input}"],
 *     ["placeholder", "{agent_scratchpad}"],
 *   ]
 * );
 *
 *
 * const llm = new ChatAnthropic({
 *   modelName: "claude-3-opus-20240229",
 *   temperature: 0,
 * });
 *
 * // Define the tools the agent will have access to.
 * const tools = [...];
 *
 * const agent = createToolCallingAgent({ llm, tools, prompt });
 *
 * const agentExecutor = new AgentExecutor({ agent, tools });
 *
 * const result = await agentExecutor.invoke({input: "what is LangChain?"});
 *
 * // Using with chat history
 * import { AIMessage, HumanMessage } from "@langchain/core/messages";
 *
 * const result2 = await agentExecutor.invoke(
 *   {
 *     input: "what's my name?",
 *     chat_history: [
 *       new HumanMessage({content: "hi! my name is bob"}),
 *       new AIMessage({content: "Hello Bob! How can I assist you today?"}),
 *     ],
 *   }
 * );
 * ```
 */
export declare function createToolCallingAgent({ llm, tools, prompt, streamRunnable, }: CreateToolCallingAgentParams): AgentRunnableSequence<{
    steps: ToolsAgentStep[];
}, import("@langchain/core/agents").AgentFinish | import("@langchain/core/agents").AgentAction[]>;
