Machine Learning with TensorFlow and PyTorch: A Comparative Analysis

Gaurav Agrawal, Shazmeen Taqvi, Richa Gulati
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Abstract

: Machine learning frameworks play a pivotal position inside the development and deployment of modern fashions for a big selection of programs. TensorFlow and PyTorch, two prominent frameworks, have emerged as leaders in the discipline, each with its particular strengths and characteristics. This research paper conducts a complete comparative evaluation of TensorFlow and PyTorch, that specialize in their architecture, ease of use, network aid, and overall performance in system studying packages. The paper begins via offering an outline of the historic improvement and key features of each TensorFlow and PyTorch. Subsequently, it delves into an in depth exam of their respective computational graphs, dynamic/static graph execution modes, and model deployment abilities. Special emphasis is positioned on know-how the learning curve related to each framework, exploring their high-degree APIs, and assessing their extensibility for studies and production environments. The study conducts a performance analysis, evaluating TensorFlow and PyTorch across various benchmarks and real-international eventualities. Metrics such as education pace, useful resource usage, and scalability are taken into consideration to provide a holistic information of their computational efficiency. Additionally, the research investigates the frameworks' compatibility with specialized hardware, which includes GPUs and TPUs, to assess their capability for
使用 TensorFlow 和 PyTorch 进行机器学习:比较分析
:机器学习框架在大量程序的现代时尚开发和部署中发挥着举足轻重的作用。TensorFlow 和 PyTorch 这两个著名的框架已成为该领域的佼佼者,它们各有自己的优势和特点。本研究论文对 TensorFlow 和 PyTorch 进行了全面的比较评估,专门研究了它们在系统研究软件包中的架构、易用性、网络辅助和整体性能。论文首先概述了 TensorFlow 和 PyTorch 各自的历史改进和关键特性。随后,论文深入研究了它们各自的计算图、动态/静态图执行模式和模型部署能力。本研究特别强调了解与每个框架相关的学习曲线、探索它们的高级应用程序接口,以及评估它们在研究和生产环境中的可扩展性。本研究进行了性能分析,评估了 TensorFlow 和 PyTorch 在各种基准和实际国际情况下的表现。研究考虑了教育速度、有用资源使用和可扩展性等指标,以提供有关其计算效率的整体信息。此外,研究还调查了这些框架与专用硬件(包括 GPU 和 TPU)的兼容性,以评估它们在以下方面的能力
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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