Griptape

Open-source Python framework for building AI agents and pipelines with minimal code.

4.8 (6)
Daniel Nikulshynİnceleyen Daniel Nikulshyn·Güncellendi Mayıs 2026

Genel Bakış

Griptape is a Python framework designed to help developers build AI agents, pipelines, and workflows that interact with large language models, tools, and external data sources. It provides a structured way to compose LLM-driven applications without writing extensive boilerplate code. The framework includes built-in support for memory, retrieval-augmented generation, and modular tools that agents can call to perform tasks. Developers can connect to multiple LLM providers, vector stores, and APIs, making it suitable for building chatbots, research assistants, and automation systems. Griptape also offers Griptape Cloud, a managed environment for deploying and scaling agents, which complements the open-source library for teams moving from prototype to production.

Temel özellikler

  • Agent and pipeline abstractions
  • Tool integrations for APIs and data sources
  • Conversation and task memory
  • Vector store and RAG support
  • Multi-LLM provider compatibility
  • Optional managed cloud deployment

Artılar ve eksiler

Artılar

  • Open-source and Python-native
  • Modular design for agents, tools, and pipelines
  • Built-in memory and RAG support
  • Works with multiple LLM providers

Eksiler

  • Requires Python development skills
  • Smaller community than larger frameworks
  • Documentation can be sparse for advanced use cases

İncelemeler

4.8

6 puandan ortalama.

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İnceleme bırakmak için giriş yap.

S

Sofia Lindqvist

Solid for our team

We rolled this out across the team last quarter and open-source and Python-native. Tool integrations for APIs and data sources fits neatly into how we already work, and multi-LLM provider compatibility removed a step we used to do by hand. Documentation can be sparse for advanced use cases, which is the main caveat, but it has held up under daily use.

L

Linda Petersen

Compared a few options

Evaluated this against two competitors. Where it wins: agent and pipeline abstractions and modular design for agents, tools, and pipelines. Where it lags: requires Python development skills. On balance the feature set — especially agent and pipeline abstractions — justifies the 5 stars for our use case.

A

Aisha Khan

Compared a few options

Evaluated this against two competitors. Where it wins: agent and pipeline abstractions and works with multiple LLM providers. Where it lags: smaller community than larger frameworks. On balance the feature set — especially tool integrations for APIs and data sources — justifies the 5 stars for our use case.

Y

Yuki Mori

Years in this space

I've evaluated a lot of these over the years. What stands out here is tool integrations for APIs and data sources — handled better than most — and modular design for agents, tools, and pipelines. Documentation can be sparse for advanced use cases is my one real gripe. Worth the time if this is your use case.

G

Gunnar Eriksson

Years in this space

I've evaluated a lot of these over the years. What stands out here is tool integrations for APIs and data sources — handled better than most — and built-in memory and RAG support. Worth the time if this is your use case.

L

Leila Hassan

Skeptical, then convinced

I went in skeptical — most tools in this space overpromise. It actually delivers on conversation and task memory, and works with multiple LLM providers caught me off guard. still, I'd recommend giving it a real trial.

Sorular

Henüz soru yok — ilk soruyu sen sor.

Soru sor

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