Join the beta test of SOTA GenAI Toolkit now !
Text to Speech (TTS) model from OpenAI executed in LabVIEW
In this video, we demonstrate the power of the LabVIEW Deep GenAI Toolkit through a practical example: connecting to OpenAI models and using them!
The philosophy behind the GenAI Toolkit is to provide a complete set of functions for LabVIEW users, offering two key approaches:
The ability to leverage proprietary models such as Anthropic and OpenAI for those who require high-performance, closed-source solutions.
The possibility to run open-source models, with ready-to-use software architectures deployable on industrial, research, and academic hardware.
Additionally, the GenAI Toolkit will soon support fine-tuning of open-source models, further enhancing its flexibility for customized AI applications.
We deliver a solution designed to revolutionize how you approach deep learning models. Our functional method guarantees results by simplifying every step—importing, fine-tuning, integrating, and deploying models—with unmatched ease. By harnessing the power of LabVIEW as an abstraction engine, you gain the advantage of a graphical programming environment, freeing you from complex coding and unlocking new opportunities for rapid development.
With universal interoperability, you can seamlessly integrate models from leading AI frameworks into your software architecture.
Watch as we showcase how this powerful tool simplifies the implementation of advanced deep learning models for critical applications like segmenting medical images.
🌐 Join the conversation and explore how the LabVIEW Deep Learning Toolkit can transform your AI projects.
📧 Contact us for more information or to join the beta test:
https://graiphic.io/about-us/
contact@graiphic.io
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