Comprehensive intelligent agents Tools for Every Need

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intelligent agents

  • SendCall.AI offers advanced AI-driven call agents for sales, HR interviews, and customer service.
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    What is Sendcall AI?
    SendCall.AI delivers an innovative platform for automating calls through advanced AI-driven agents. These agents can conduct seamless, human-like conversations, making them highly effective for sales, HR interviews, customer service, and more. With capabilities including infinite memory, perfect recall, and the ability to perform autonomous actions, SendCall.AI enriches user interactions and operational efficiency. The platform supports a wide range of applications, including problem-solving and customer engagement, ensuring businesses can exceed their communication goals effortlessly.
  • A web-based AI agent platform enabling autonomous task planning and execution with API tool integration.
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    What is Agentic AI?
    Agentic AI provides a fully web-based environment where users define objectives for autonomous agents. Each agent analyzes goals, selects appropriate tools or APIs, executes tasks in sequence, and adapts based on intermediate results. The platform includes memory management for context retention, a monitoring dashboard for real-time progress, and customizable agent configurations. Agents can interact with external services, fetch data, generate reports, and perform automated decision-making to streamline operational workloads.
  • Taiat lets developers build autonomous AI agents in TypeScript that integrate LLMs, manage tools, and handle memory.
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    What is Taiat?
    Taiat (TypeScript AI Agent Toolkit) is a lightweight, extensible framework for building autonomous AI agents in Node.js and browser environments. It enables developers to define agent behaviors, integrate with large language model APIs such as OpenAI and Hugging Face, and orchestrate multi-step tool execution workflows. The framework supports customizable memory backends for stateful conversations, tool registration for web searches, file operations, and external API calls, as well as pluggable decision strategies. With taiat, you can rapidly prototype agents that plan, reason, and execute tasks autonomously, from data retrieval and summarization to automated code generation and conversational assistants.
  • A minimal Python framework to create autonomous GPT-powered AI agents with tool integration and memory.
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    What is TinyAgent?
    TinyAgent provides a lightweight agent framework for orchestrating complex tasks with OpenAI GPT models. Developers install via pip, configure an API key, define tools or plugins, and leverage in-memory context to maintain multi-step conversations. TinyAgent supports chaining tasks, integrating external APIs, and persisting user or system memories. Its simple Pythonic API lets you prototype autonomous data analysis workflows, customer service chatbots, code generation assistants, or any use case requiring an intelligent, stateful agent. The library remains fully open-source, extensible, and platform-agnostic.
  • TinyAgent enables you to build and deploy custom AI agents for automating tasks, research, and text generation.
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    What is TinyAgent?
    TinyAgent is a low-code AI agent builder that allows anyone to design, test, and deploy intelligent agents. Define custom prompts, integrate external APIs or data sources, and configure agent memory to retain context. Once configured, agents can be used via a web chat interface, Chrome extension, or embed code. With analytics and logging, you can monitor performance and iterate quickly. TinyAgent streamlines repetitive tasks such as report generation, email triage, and lead qualification, reducing manual work and scaling team productivity.
  • Neuron AI offers a serverless platform to orchestrate LLMs, enabling developers to build and deploy custom AI agents rapidly.
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    What is Neuron AI?
    Neuron AI is an end-to-end serverless platform for creating, deploying, and managing intelligent AI agents. It supports major LLM providers (OpenAI, Anthropic, Hugging Face) and enables multi-model pipelines, conversation context handling, and automated workflows via a low-code interface or SDKs. With built-in data ingestion, vector search, and plugin integration, Neuron simplifies knowledge sourcing and service orchestration. Its auto-scaling infrastructure and monitoring dashboards ensure performance and reliability, making it ideal for enterprise-grade chatbots, virtual assistants, and automated data processing bots.
  • AgentSmithy is an open-source framework enabling developers to build, deploy, and manage stateful AI agents using LLMs.
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    What is AgentSmithy?
    AgentSmithy is designed to streamline the development lifecycle of AI agents by offering modular components for memory management, task planning, and execution orchestration. The framework leverages Google Cloud Storage or Firestore for persistent memory, Cloud Functions for event-driven triggers, and Pub/Sub for scalable messaging. Handlers define agent behaviors, while planners manage multi-step task execution. Observability modules track performance metrics and logs. Developers can integrate bespoke plugins to enhance capabilities such as custom data sources, specialized LLMs, or domain-specific tools. AgentSmithy’s cloud-native architecture ensures high availability and elasticity, allowing deployment across development, testing, and production environments seamlessly. With built-in security and role-based access controls, teams can maintain governance while rapidly iterating on intelligent agent solutions.
  • A Java-based interpreter for AgentSpeak(L), enabling developers to build, execute, and manage BDI-enabled intelligent agents.
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    What is AgentSpeak?
    AgentSpeak is an open-source Java-based implementation of the AgentSpeak(L) programming language, designed to facilitate the creation and management of BDI (Belief-Desire-Intention) autonomous agents. It features a runtime environment that parses AgentSpeak(L) code, maintains agents’ belief bases, triggers events, and selects and executes plans based on current beliefs and goals. The interpreter supports concurrent agent execution, dynamic plan updates, and customizable semantics. With a modular architecture, programmers can extend core components such as plan selection and belief revision. AgentSpeak enables developers in academia and industry to prototype, simulate, and deploy intelligent agents in simulations, IoT systems, and multi-agent scenarios.
  • A visual AI Agent development platform enabling creation of chatbots, digital workers, and workflow automation using Baidu AI services.
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    What is Baidu AI App Builder?
    Baidu AI App Builder offers a comprehensive environment for developing AI-powered agents and applications through a visual low-code approach. Users can leverage integrated Baidu AI services such as NLP, knowledge graph retrieval, speech-to-text, and text-to-speech to build intelligent chatbots that support multi-turn conversations and handle user intents. The platform provides drag-and-drop modules for designing dialogue flows, connecting to external APIs, and automating backend tasks via workflow builders. It also supports knowledge base management by importing FAQ data and custom documents, improving agent accuracy. Once configured, agents can be deployed across web, WeChat, Baidu Smart Mini Programs, and other channels. Built-in analytics dashboard tracks user interactions, agent performance, and helps refine responses.
  • AutoAct is an open-source AI agent framework enabling LLM-based reasoning, planning, and dynamic tool invocation for task automation.
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    What is AutoAct?
    AutoAct is designed to streamline the development of intelligent agents by combining LLM-driven reasoning with structured planning and modular tool integration. It offers a Planner component to generate action sequences, a ToolKit for defining and invoking external APIs, and a Memory module to maintain context. With logging, error handling, and configurable policies, AutoAct supports robust end-to-end automation for tasks such as data analysis, content generation, and interactive assistants. Developers can customize workflows, extend tools, and deploy agents on-premise or in the cloud.
  • An open-source framework for developers to build, customize, and deploy autonomous AI agents with plugin support.
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    What is BeeAI Framework?
    BeeAI Framework provides a fully modular architecture for building intelligent agents that can perform tasks, manage state, and interact with external tools. It includes a memory manager for long-term context retention, a plugin system for custom skill integration, and built-in support for API chaining and multi-agent coordination. The framework offers Python and JavaScript SDKs, a command-line interface for scaffolding projects, and deployment scripts for cloud, Docker, or edge devices. Monitoring dashboards and logging utilities help track agent performance and troubleshoot issues in real time.
  • Effortlessly design, launch text-based, and human-like voice AI for multi-step conversations.
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    What is BotCircuits?
    BotCircuits provides a no-code platform that simplifies the creation and deployment of text-based and voice-enabled AI agents. Whether you're looking to automate customer support, create interactive chatbots, or develop intelligent virtual assistants, BotCircuits offers a suite of powerful tools and integrations. The platform supports dynamic conversation design, making it easier to build multi-step workflows and human-like interactions. No coding skills are required, making it accessible to a wide range of users.
  • Five9 AI Agents enhance customer interactions with intelligent automation.
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    What is Five9 Agents?
    Five9 AI Agents leverage artificial intelligence to automate routine customer interactions, providing 24/7 support. They can understand natural language queries, optimize responses, and integrate seamlessly with existing systems. This allows businesses to enhance their customer service efficiency while reducing operational costs. The AI Agents utilize machine learning to improve over time, ensuring they deliver precise and relevant information based on user inquiries.
  • Create conversational AI agents using the Google Agent Development Kit.
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    What is Google Agent Development Kit?
    The Google Agent Development Kit is a powerful toolkit designed for developers to build intelligent conversational agents. It provides an extensive set of features and tools, enabling the integration of AI capabilities into applications seamlessly. With support for natural language understanding, voice recognition, and multi-platform deployment, developers can create agents that interact with users through conversation, enhancing user experience significantly.
  • AI agents to explore, understand, and extract structured data for your business automatically.
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    What is Jsonify?
    Jsonify uses advanced AI agents to explore and understand websites automatically. They work based on your specified objectives, finding, filtering, and extracting structured data at scale. Utilizing computer vision and generative AI, Jsonify's agents can perceive and interpret web content just like a human. This eliminates the need for traditional, time-consuming manual data scraping, offering a faster and more efficient solution for data extraction.
  • Junjo Python API offers Python developers seamless integration of AI agents, tool orchestration, and memory management in applications.
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    What is Junjo Python API?
    Junjo Python API is an SDK that empowers developers to integrate AI agents into Python applications. It provides a unified interface for defining agents, connecting to LLMs, orchestrating tools like web search, databases, or custom functions, and maintaining conversational memory. Developers can build chains of tasks with conditional logic, stream responses to clients, and handle errors gracefully. The API supports plugin extensions, multilingual processing, and real-time data retrieval, enabling use cases from automated customer support to data analysis bots. With comprehensive documentation, code samples, and Pythonic design, Junjo Python API reduces time-to-market and operational overhead of deploying intelligent agent-based solutions.
  • LangMem enhances AI capabilities by providing extensive memory management functions.
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    What is LangMem?
    LangMem provides specialized memory management capabilities for AI agents, enabling them to retain and recall vast amounts of information. This tool allows users to add memories, modify existing information, and retrieve memories based on specific queries. By integrating memory into AI processes, LangMem enhances the contextual understanding and relevance of responses, making it invaluable for applications that require continuous learning and adaptation.
  • Llama-Agent is a Python framework that orchestrates LLMs to perform multi-step tasks using tools, memory, and reasoning.
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    What is Llama-Agent?
    Llama-Agent is a developer-focused toolkit for creating intelligent AI agents powered by large language models. It offers tool integration to call external APIs or functions, memory management to store and retrieve context, and chain-of-thought planning to break down complex tasks. Agents can execute actions, interact with custom environments, and adapt through a plugin system. As an open-source project, it supports easy extension of core components, enabling rapid experimentation and deployment of automated workflows across various domains.
  • LLM-Agent is a Python library for creating LLM-based agents that integrate external tools, execute actions, and manage workflows.
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    What is LLM-Agent?
    LLM-Agent provides a structured architecture for building intelligent agents using LLMs. It includes a toolkit for defining custom tools, memory modules for context preservation, and executors that orchestrate complex chains of actions. Agents can call APIs, run local processes, query databases, and manage conversational state. Prompt templates and plugin hooks allow fine-tuning of agent behavior. Designed for extensibility, LLM-Agent supports adding new tool interfaces, custom evaluators, and dynamic routing of tasks, enabling automated research, data analysis, code generation, and more.
  • An open-source LLM-based agent framework using ReAct pattern for dynamic reasoning with tool execution and memory support.
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    What is llm-ReAct?
    llm-ReAct implements the ReAct (Reasoning and Acting) architecture for large language models, enabling seamless integration of chain-of-thought reasoning with external tool execution and memory storage. Developers can configure a toolkit of custom tools—such as web search, database queries, file operations, and calculators—and instruct the agent to plan multi-step tasks, invoking tools as needed to retrieve or process information. The built-in memory module preserves conversational state and past actions, supporting more context-aware agent behaviors. With modular Python code and support for OpenAI APIs, llm-ReAct simplifies experimentation and deployment of intelligent agents that can adaptively solve problems, automate workflows, and provide context-rich responses.
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