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Source channel @olddriverGDstudy · Post #37 · Mar 17

1.前戏长点,能亲的不只嘴,还有锁骨、胸、大腿内侧 。侧着在后面含着耳垂舔。 2.后入时抓手臂更好用力,注意不要抓手腕(会弄疼女孩子),抓肩膀也可以哦。 3.大部分女生的耳朵是敏感处吧,吹气、低声说骚话真的会让女生不自觉地把腿夹紧。 4.洗白白吻遍身体很nice哦。 5.揉着胸从下面顶在洞口,没有见过不湿的。先来正常姿势,等她湿了就用龟头在洞口探进去再出来,一直挑逗,过一会就会发现她自己往里吸,忍着等她忍不住浑身扭,求你再进入。开始慢点,等明显感觉她夹得很紧,再开始。 #知识

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@githubtrending · Post #15283 · 11/09/2025, 02:30 PM

#go#a2a#agents#agents_sdk#ai#aiagentframework#gemini#genai#go#llm#mcp#multi_agent_collaboration#multi_agent_systems#sdk#vertex_ai The Agent Development Kit (ADK) for Go is an open-source toolkit that makes it easy to build, test, and deploy smart AI agents using the Go programming language. It lets you create simple or complex agent workflows, use ready-made or custom tools, and run your agents anywhere, especially in cloud environments. With ADK, you get full control, flexibility, and the ability to scale your applications, making it faster and simpler to develop powerful AI solutions for real-world tasks. https://github.com/google/adk-go

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@githubtrending · Post #14693 · 05/10/2025, 12:00 PM

#jupyter_notebook#a2a#agentic_ai#dapr#dapr_pub_sub#dapr_service_invocation#dapr_sidecar#dapr_workflow#docker#kafka#kubernetes#langmem#mcp#openai#openai_agents_sdk#openai_api#postgresql_database#rabbitmq#rancher_desktop#redis#serverless_containers The Dapr Agentic Cloud Ascent (DACA) design pattern helps you build powerful, scalable AI systems that can handle millions of AI agents working together without crashing. It uses Dapr technology with Kubernetes to efficiently manage many AI agents as lightweight virtual actors, ensuring fast response, reliability, and easy scaling. You can start small using free or low-cost cloud tools and grow to planet-scale systems. The OpenAI Agents SDK is recommended for beginners because it is simple, flexible, and gives you good control to develop AI agents quickly. This approach saves costs, avoids vendor lock-in, and supports resilient, event-driven AI workflows, making it ideal for developers aiming to create advanced, cloud-native AI applications[1][2][3][4]. https://github.com/panaversity/learn-agentic-ai