Comprehensive API connections Tools for Every Need

Get access to API connections solutions that address multiple requirements. One-stop resources for streamlined workflows.

API connections

  • LlamaIndex is an open-source framework that enables retrieval-augmented generation by building and querying custom data indexes for LLMs.
    0
    0
    What is LlamaIndex?
    LlamaIndex is a developer-focused Python library designed to bridge the gap between large language models and private or domain-specific data. It offers multiple index types—such as vector, tree, and keyword indices—along with adapters for databases, file systems, and web APIs. The framework includes tools for slicing documents into nodes, embedding those nodes via popular embedding models, and performing smart retrieval to supply context to an LLM. With built-in caching, query schemas, and node management, LlamaIndex streamlines building retrieval-augmented generation, enabling highly accurate, context-rich responses in applications like chatbots, QA services, and analytics pipelines.
  • ChainLite lets developers build LLM-driven agent applications via modular chains, tools integration, and live conversation visualization.
    0
    0
    What is ChainLite?
    ChainLite streamlines creation of AI agents by abstracting the complexities of LLM orchestration into reusable chain modules. Using simple Python decorators and configuration files, developers define agent behaviors, tool interfaces and memory structures. The framework integrates with popular LLM providers (OpenAI, Cohere, Hugging Face) and external data sources (APIs, databases), allowing agents to fetch real-time information. With a built-in browser-based UI powered by Streamlit, users can inspect token-level conversation history, debug prompts, and visualize chain execution graphs. ChainLite supports multiple deployment targets, from local development to production containers, enabling seamless collaboration between data scientists, engineers, and product teams.
  • Open-source multi-agent AI framework enabling customizable LLM-driven bots for efficient task automation and conversational workflows.
    0
    0
    What is LLMLing Agent?
    LLMLing Agent is a modular framework for building, configuring, and deploying AI agents powered by large language models. Users can instantiate multiple agent roles, connect external tools or APIs, manage conversational memory, and orchestrate complex workflows. The platform includes a browser-based playground that visualizes agent interactions, logs message history, and allows real-time adjustments. With a Python SDK, developers can script custom behaviors, integrate vector databases, and extend the system through plugins. LLMLing Agent streamlines creation of chatbots, data analysis bots, and automated assistants by providing reusable components and clear abstractions for multi-agent collaboration.
  • QueryCraft is a toolkit for designing, debugging, and optimizing AI agent prompts, with evaluation and cost analysis capabilities.
    0
    0
    What is QueryCraft?
    QueryCraft is a Python-based prompt engineering toolkit designed to streamline the development of AI agents. It enables users to define structured prompts through a modular pipeline, connect seamlessly to multiple LLM APIs, and conduct automated evaluations against custom metrics. With built-in logging of token usage and costs, developers can measure performance, compare prompt variations, and identify inefficiencies. QueryCraft also includes debugging tools to inspect model outputs, visualize workflow steps, and benchmark across different models. Its CLI and SDK interfaces allow integration into CI/CD pipelines, supporting rapid iteration and collaboration. By providing a comprehensive environment for prompt design, testing, and optimization, QueryCraft helps teams deliver more accurate, efficient, and cost-effective AI agent solutions.
  • A no-code AI agent builder for creating custom conversational assistants from documents, APIs, and workflows.
    0
    0
    What is TheTen AI Agent?
    The Ten AI Agent platform provides a graphical builder where users connect various data sources—cloud documents, databases, or APIs—and define an agent’s purpose and tone. Agents can answer user queries with context-aware responses, summarize large documents on demand, and trigger automated workflows such as ticket creation or email notifications. A built-in analytics dashboard tracks usage, performance, and user satisfaction. Agents can be customized with unique personalities and fine-tuned prompts without writing code. Once ready, they can be deployed via embed code, REST APIs, or integrations with Slack, MS Teams, and other messaging platforms to deliver seamless conversational experiences across channels.
  • Connery SDK enables developers to build, test, and deploy memory-enabled AI agents with tool integrations.
    0
    0
    What is Connery SDK?
    Connery SDK is a comprehensive framework that simplifies the creation of AI agents. It provides client libraries for Node.js, Python, Deno, and the browser, enabling developers to define agent behaviors, integrate external tools and data sources, manage long-term memory, and connect to multiple LLMs. With built-in telemetry and deployment utilities, Connery SDK accelerates the entire agent lifecycle from development to production.
Featured