What is TensorFlow’s role in deploying machine learning models to production environments?

The question is about Tensorflow

Answer:

The major role of TensorFlow in the production environment is deployment, providing tools and frameworks that support the whole deployment process. With TensorFlow Serving, it can enable the fast and flexible deployment of models for real-time predictions in production environments. TensorFlow Lite allows the model to be optimized and deployed on mobile and embedded devices, while the TensorFlow.js runtime enables deployment directly in web browsers. Further, TensorFlow Extended provides an end-to-end pipeline for data validation, model training, evaluation, and serving consistently and in a scalable production workflow. These utilities available within the community make TensorFlow versatile and effective, deploying models on diverse platforms from cloud servers to edge devices.

hero image
Hire remote Tensorflow developers
Developers who got their wings at:
Testimonials
star star star star star
Gotta drop in here for some Kudos. I’m 2 weeks into working with a super legit dev on a critical project, and he’s meeting every expectation so far 👏
avatar
Francis Harrington
Founder at ProCloud Consulting, US
star star star star star
I recommend Lemon to anyone looking for top-quality engineering talent. We previously worked with TopTal and many others, but Lemon gives us consistently incredible candidates.
avatar
Allie Fleder
Co-Founder & COO at SimplyWise, US
star star star star star
I've worked with some incredible devs in my career, but the experience I am having with my dev through Lemon.io is so 🔥. I feel invincible as a founder. So thankful to you and the team!
avatar
Michele Serro
Founder of Doorsteps.co.uk, UK