Download Udemy – YOLO-NAS, OpenAI, SAM with WebApps using Flask and Streamlit 2023-7

YOLO-NAS OpenAI SAM with WebApps using Flask and Streamlit

Description

YOLO-NAS OpenAI SAM course with WebApps using Flask and Streamlit. Welcome to the course This comprehensive course covers YOLO-NAS, Segment Anything Model and ChatGPT and provides hands-on projects, applications and web application development using Flask and Streamlit projects with Real World 16+. This course covers object detection, tracking, and web application development using popular frameworks such as Flask and Streamlit. This course also includes image segmentation using YOLO-NAS and the Segment Anything model. but this is not the whole story! We’re going even further by exploring the development of Streamlit apps, combining the expertise of YOLO-NAS and ChatGPT. What you will learn in this course:

  • YOLO-NAS: A new base model for object recognition
  • What’s new at YOLO-NAS | Is YOLO-NAS the future of object detection?
  • Implementation of YOLO-NAS Windows
  • Object detection with YOLO-NAS on images
  • Object detection with YOLO-NAS in videos
  • Object detection with YOLO-NAS in live webcam feed
  • Run YOLO-NAS on Google Colab
  • YOLO-NAS + DeepSORT Tracking
  • Tracing YOLO-NAS + DeepSORT on custom datasets
  • YOLO-NAS with SORT object tracking
  • Vehicle counting (entry and exit) using YOLO-NAS and SORT object tracking
  • Building a Computer Vision web application and why UI is important
  • Work smoothly with YOLO-NAS integration
  • Turn YOLO-NAS on images
  • Turn YOLO-NAS on videos
  • Deploy your Streamlit web app
  • Streamlit app to count incoming and outgoing vehicles
  • Empty shelf detection using YOLO-NAS
  • Vehicle license plate recognition using YOLO-NAS
  • Automatic license plate recognition using YOLO-NAS and EasyOCR
  • Automatic license plate recognition using YOLO-NAS and PaddleOCR
  • YOLO-NAS multi-camera license plate recognition program
  • Face recognition using YOLO-NAS
  • Face blur using YOLO-NAS
  • Face recognition and gender classification using YOLO-NAS
  • Thermal map of car intensity YOLO-NAS
  • Integrate YOLO-NAS with Flask and create a web application
  • Identification of personal protective equipment (PPE) with YOLO-NAS
  • Web Application – Identification of Personal Protective Equipment (PPE).
  • Web application – count vehicles (entry and exit) using YOLO-NAS and SORT object tracking
  • Turn on apps with YOLO-NAS and ChatGPT
  • Creating a ChatGPT article with Python and Streamlite
  • Identifying vegetables with YOLO-NAS
  • Create a Streamlit app using YOLO-NAS and ChatGPT to generate recipes
  • Introducing the Segment Anything model
  • YOLO-NAS + SAM: Image segmentation using YOLO-NAS and Segment Anything model

What you will learn in the YOLO-NAS OpenAI SAM with WebApps using Flask and Streamlit course

  • YOLO-NAS: A new base model for object detection

  • What’s new at YOLO-NAS | Is YOLO-NAS the future of object detection?

  • Implementation of YOLO-NAS Windows

  • Object detection with YOLO-NAS on images

  • Object detection with YOLO-NAS in videos

  • Object detection with YOLO-NAS in live webcam feed

  • Run YOLO-NAS on Google Colab

  • YOLO-NAS + DeepSORT Tracking

  • Tracing YOLO-NAS + DeepSORT on custom datasets

  • YOLO-NAS with SORT object tracking

  • Vehicle counting (entry and exit) using YOLO-NAS and SORT object tracking

  • Building a Computer Vision web application and why UI is important

  • Work smoothly with YOLO-NAS integration

  • Turn YOLO-NAS on images

  • Turn YOLO-NAS on videos

  • Deploy your Streamlit web app

  • Streamlit app to count incoming and outgoing vehicles

  • Empty shelf detection using YOLO-NAS

  • Vehicle license plate recognition using YOLO-NAS

  • Automatic license plate recognition using YOLO-NAS and EasyOCR

  • Automatic license plate recognition using YOLO-NAS and PaddleOCR

  • YOLO-NAS multi-camera license plate recognition program

  • Face recognition using YOLO-NAS

  • Face blur using YOLO-NAS

  • Face recognition and gender classification using YOLO-NAS

  • Thermal map of car intensity YOLO-NAS

  • Integrate YOLO-NAS with Flask and create a web application

  • Identification of personal protective equipment (PPE) with YOLO-NAS

  • Web Application – Identification of Personal Protective Equipment (PPE).

  • Web application – count vehicles (entry and exit) using YOLO-NAS and SORT object tracking

  • Turn on apps with YOLO-NAS and ChatGPT

  • Creating a ChatGPT article with Python and Streamlite

  • Identifying vegetables with YOLO-NAS

  • Create a Streamlit app using YOLO-NAS and OpenAI to generate recipes

  • Introducing the Segment Anything model

  • YOLO-NAS + SAM: Image segmentation using YOLO-NAS and Segment Anything model

This course is suitable for people who

  • For anyone interested in computer vision
  • For everyone who studies computer vision and wants to know how to use YOLO for object recognition
  • For everyone who wants to learn the latest version of YOLO-NAS
  • Building deep learning applications with computer vision
  • Making web applications with Computer Vision

Specifications of the YOLO-NAS OpenAI SAM course with WebApps using Flask and Streamlit

  • Publisher: Udemy
  • teacher: Muhammad Moin
  • Training level: beginner to advanced
  • Training duration: 17 hours and 51 minutes
  • Number of courses: 57

Headlines of YOLO-NAS OpenAI SAM with WebApps using Flask and Streamlit course on October 2023

Prerequisites of the YOLO-NAS OpenAI SAM course with WebApps using Flask and Streamlit

  • Python programming experience is an advantage but not required
  • Laptop/PC

Course images

YOLO-NAS OpenAI SAM with WebApps using Flask and Streamlit

Sample video of the course

Installation guide

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English subtitle

Quality: 720p

download link

Download part 1 – 5 GB

Download part 2 – 5 GB

Download part 3 – 5 GB

Download part 4-5 GB

Download part 5 – 1.8 GB

File(s) password: www.downloadly.ir

Size

21.8 GB

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