It provides everything you need to develop GPU-accelerated applications
It is an open-source matrix library accelerated with NVIDIA CUDA. CuPy provides GPU accelerated computing with Python. It uses CUDA-related libraries including cuBLAS, cuDNN, cuRand, cuSolver, cuSPARSE, cuFFT and NCCL to make full use of the GPU architecture. | It is the fastest way to transform text from chats, emails, surveys, reviews, social networks into real business intelligence. Experience the power of data science without being a data scientist |
It's interface is highly compatible with NumPy in most cases it can be used as a drop-in replacement; Supports various methods, indexing, data types, broadcasting and more; You can easily make a custom CUDA kernel if you want to make your code run faster, requiring only a small code snippet of C++; It automatically wraps and compiles it to make a CUDA binary; Compiled binaries are cached and reused in subsequent runs | Unsupervised deep learning models to analyze your unstructured text data;
Deepers are pre trained deep learning models to get custom detections inside your data;
Real time tagging;
Conversation analysis;
Easy integrations |
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GitHub Stars 10.6K | GitHub Stars - |
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