List of the Top 3 AI Agents for Gemini Managed Agents in 2026

Reviews and comparisons of the top AI Agents with a Gemini Managed Agents integration


Below is a list of AI Agents that integrates with Gemini Managed Agents. Use the filters above to refine your search for AI Agents that is compatible with Gemini Managed Agents. The list below displays AI Agents products that have a native integration with Gemini Managed Agents.
  • 1
    Eigent Reviews & Ratings

    Eigent

    Eigent AI

    Transform inquiries into precise answers with seamless efficiency.
    Eigent is an open-source AI cowork platform built to automate real-world operations directly from the desktop. It functions as a dynamic AI workforce, capable of understanding context and executing actions across complex workflows. Unlike traditional automation tools, Eigent uses multi-agent collaboration to decompose large tasks into smaller units that run in parallel. This approach enables faster execution and lower operational costs. Users can design and deploy custom worker nodes, giving full control over how tasks are performed. Pluggable MCPs allow agents to integrate with browsers, terminals, enterprise software, and custom APIs. Eigent emphasizes privacy-first architecture by supporting local hosting and self-deployment. Sensitive data and workflows remain fully under user ownership at all times. The platform supports a wide array of use cases, including research automation, ERP transactions, document processing, social media publishing, and large-scale content generation. Eigent is trusted by developers, enterprises, and academic institutions worldwide. Its open-source nature provides transparency and flexibility for continuous innovation. By combining security, performance, and extensibility, Eigent delivers a powerful foundation for building intelligent automation systems.
  • 2
    Agno Reviews & Ratings

    Agno

    Agno

    Empower agents with unmatched speed, memory, and reasoning.
    Agno is an innovative framework tailored for the development of agents that possess memory, knowledge, tools, and reasoning abilities. It enables developers to create a wide array of agents, including those that reason, operate multimodally, collaborate in teams, and execute complex workflows. With an appealing user interface, Agno not only facilitates seamless interaction with agents but also includes features for monitoring and assessing their performance. Its model-agnostic nature guarantees a uniform interface across over 23 model providers, effectively averting the challenges associated with vendor lock-in. Agents can be instantiated in approximately 2 microseconds on average, which is around 10,000 times faster than LangGraph, while utilizing merely 3.75KiB of memory—50 times less than LangGraph. The framework emphasizes reasoning, allowing agents to engage in "thinking" and "analysis" through various reasoning models, ReasoningTools, or a customized CoT+Tool-use strategy. In addition, Agno's native multimodality enables agents to process a range of inputs and outputs, including text, images, audio, and video. The architecture of Agno supports three distinct operational modes: route, collaborate, and coordinate, which significantly enhances agent interaction flexibility and effectiveness. Overall, by integrating these advanced features, Agno establishes a powerful platform for crafting intelligent agents capable of adapting to a multitude of tasks and environments, promoting innovation in agent-based applications.
  • 3
    LlamaIndex Reviews & Ratings

    LlamaIndex

    LlamaIndex

    Transforming data integration for powerful LLM-driven applications.
    LlamaIndex functions as a dynamic "data framework" aimed at facilitating the creation of applications that utilize large language models (LLMs). This platform allows for the seamless integration of semi-structured data from a variety of APIs such as Slack, Salesforce, and Notion. Its user-friendly yet flexible design empowers developers to connect personalized data sources to LLMs, thereby augmenting application functionality with vital data resources. By bridging the gap between diverse data formats—including APIs, PDFs, documents, and SQL databases—you can leverage these resources effectively within your LLM applications. Moreover, it allows for the storage and indexing of data for multiple applications, ensuring smooth integration with downstream vector storage and database solutions. LlamaIndex features a query interface that permits users to submit any data-related prompts, generating responses enriched with valuable insights. Additionally, it supports the connection of unstructured data sources like documents, raw text files, PDFs, videos, and images, and simplifies the inclusion of structured data from sources such as Excel or SQL. The framework further enhances data organization through indices and graphs, making it more user-friendly for LLM interactions. As a result, LlamaIndex significantly improves the user experience and broadens the range of possible applications, transforming how developers interact with data in the context of LLMs. This innovative framework fundamentally changes the landscape of data management for AI-driven applications.
  • Previous
  • You're on page 1
  • Next