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VovSoft Machine Learning Requester 1.4

VovSoft Machine Learning Requester 1.4
Free Download VovSoft Machine Learning Requester 1.4 | 3.1 Mb
Vovsoft Machine Learning Requester is a user-friendly software for desktop and laptop computers. It simplifies the interaction between user and AI (artificial intelligence) servers, making it effortless to execute machine learning models and generate results.


Machine learning can now do some extraordinary things, but it's still hard to use. The good news is, you no longer need to rely on your own hardware and store gigabytes of trained data; you can utilize AI servers in the cloud! You can easily run open-source models that other people have published.
Open-source models
With this software, you can simply leverage a wide variety of open-source generative AI models, which are trained, packaged, and published.
Chat (Vicuna-13b, Llama-2-70b-chat, etc.)
Image (Stable Diffusion, SDXL, etc.)
Audio (tortoise-tts: Multilingual Text To Speech)
Operating System:Windows 11, Windows 10, Windows 8/8.1, Windows 7 (32-bit & 64-bit)
Home Page-
https://vovsoft.com/software/machine-learning-requester/





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