#data science
metaflow
Metaflow, developed at Netflix, is a user-oriented library that simplifies building and scaling data science projects. It equips scientists with tools for rapid prototyping, experiment tracking, and cloud scalability, offering extensive resources like tutorials and community support for seamless integration.
www.mlcompendium.com
This compendium provides an extensive array of curated resources for machine and deep learning, covering approximately 500 topics such as modern algorithms, statistics, NLP, and more. It serves both industry professionals and academics, fostering knowledge sharing and author collaboration in a nonprofit, open-access environment. Community contributions enhance its evolving nature, furthering the connection between learners and subject matter experts.
tensor-house
Discover a vast collection of Jupyter notebooks and AI/ML demos tailored for enterprise needs. Expedite readiness assessment, model prototyping, and solution evaluation across marketing, pricing, supply chain management, and manufacturing sectors. Utilize proven methods in deep learning, reinforcement learning, and causal inference to advance decision-making and automation.
xorbits
Explore an open-source framework that scales data science and machine learning tasks from preprocessing to model serving. Leverage multi-core processing and GPU support for both single-machine and large-scale deployments, compatible with popular Python libraries, and requires minimal infrastructure knowledge. Enhance computational speed with minimal code changes, transitioning smoothly from laptops to clusters.
ml-workspace
This all-in-one web-based IDE is tailored for machine learning and data science enthusiasts. It boasts a straightforward deployment across different operating systems using Docker. Users gain access to web-based IDEs like Jupyter and VS Code, integrated with essential data science libraries such as TensorFlow, PyTorch, and Keras. The setup ensures efficient resource management with Git integration and hardware monitoring, while secure authentication and SSL support protect user privacy. Ideal for those looking for a configurable workspace solution.
thorough-pytorch
Understand PyTorch through a well-organized course that guides both newcomers and experienced users. The curriculum spans fundamental to advanced PyTorch subjects, such as key modules, model deployment, and deep learning operations. Participants enhance programming skills and effectively use PyTorch in practical scenarios. Involve in practice sessions, join collaborative learning, and utilize additional video tutorials, enabling a deeper grasp of PyTorch's capabilities.
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