#Python SDK

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semantic-kernel
Semantic Kernel seamlessly integrates LLMs like OpenAI with programming languages such as C#. It simplifies AI plugin orchestration, enabling efficient and automated user goal fulfillment. Enterprises benefit from robust security features and adaptability. Designed for future-proofing, it supports new AI models with minimal code changes and is available for Python, Java, and more.
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superagent-py
Superagent is an open-source framework for quick AI Assistant integration into applications. It provides an SDK for both synchronous and asynchronous operations with flexible installation via 'pip' or 'poetry'. The framework facilitates AI agent creation and execution through an easy-to-use API. In its beta stage, Superagent promotes rapid adaptation to AI technologies while suggesting version pinning to avoid breaking changes. Community contributions, especially to the README, are welcomed.
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LLMstudio
LLMstudio offers access to advanced language models from OpenAI, Anthropic, and Google, supporting custom and local models through an intuitive interface. It features a Python SDK, LangChain integration, and efficient batch processing, ensuring continuous service through smart routing. Users can keep track of their operations with detailed monitoring, and look forward to future type casting capabilities. It integrates easily into existing systems, helps reduce complexity, and improves performance, providing developers with tools to enrich AI interactions.
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sagemaker-python-sdk
SageMaker Python SDK allows for the training and deployment of machine learning models on Amazon SageMaker, with support for popular frameworks such as Apache MXNet and TensorFlow, in addition to Amazon's scalable, GPU-optimized algorithms. It also supports the use of custom algorithms in Docker containers compatible with SageMaker. The SDK includes detailed documentation and examples for various machine learning applications, including model tuning, batch transformations, and training security with VPC. Suitable for Unix/Linux and Mac operating systems and equipped with comprehensive testing and telemetry, it is licensed under Apache 2.0, aiming to simplify machine learning implementations.