In today's fast-paced world, businesses across various industries are seeking innovative ways to leverage artificial intelligence (AI) and computer vision technologies to gain a competitive edge. However, developing and deploying computer vision models has traditionally been a time-consuming and resource-intensive process. Fortunately, with the advent of no-code platforms like Navan.ai, organizations can now build and deploy powerful computer vision models in a matter of minutes, revolutionizing the landscape of AI development.
25 posts tagged with "navan.ai"
View All TagsYOLOv4 vs. YOLOv7- Unleashing the Power of Computer Vision
Introduction:
Computer vision has revolutionized various industries, enabling machines to perceive and understand visual data. Thanks to advancements in artificial intelligence (AI), developers can now create powerful computer vision applications without extensive coding knowledge. In this article, we will delve into the key differences between YOLOv4 and YOLOv7 models, explore their applications in computer vision, and help developers make informed decisions when choosing between these two models. Powered by Navan AI, the no-code platform for computer vision, developers can unlock their creativity and drive innovation effortlessly.
EfficientNet Models - Building Powerful AI without Coding
Introduction
In today's fast-paced world, Artificial Intelligence (AI) has become an integral part of numerous industries, revolutionizing the way we solve complex problems. However, developing AI models often requires extensive coding knowledge and technical expertise, limiting the accessibility for businesses without dedicated data science teams. Enter EfficientNet models, a groundbreaking solution that allows users to build and deploy AI models without any coding.
Quality Control in Manufacturing
In the previous blog, we discussed the applications of computer vision in the manufacturing industry.
This blog explains how to use navan.ai, a no-code computer vision platform to build an image classification model to classify damaged and intact medical packages.
Challenges in AI development
Challenges in AI development
Artificial Intelligence market size is growing and it is said that it can grow up to $15.7 trillion by 2030, as quoted in the research paper https://www.europarl.europa.eu/RegData/etudes/BRIE/2019/637967/EPRS_BRI(2019)637967_EN.pdf
As AI grows, the impact and challenges rise parallely as well. Let's see some of the most common challenges in Artificial Intelligence Development.