Free Download Complete Machine Learning Project YOLOv10
Published 5/2024
Created by William Farokhzad
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 15 Lectures ( 3h 11m ) | Size: 1.46 GB
Learn Complete Machine Learning Project Using YOLOv10 Model and Train Custom Dataset
What you'll learn:
How to create a YOLOv10 deep learning project using the RoboFlow website
Techniques for training a custom dataset with the YOLOv10 model
Methods for annotating and preparing datasets for object detection
How to test and validate trained models with custom pictures and videos
Requirements:
Access to a computer with internet connectivity
Familiarity with Python programming Basic level
Optional: Previous experience with object detection frameworks (helpful but not necessary)
Optional: Basic understanding of deep learning and machine learning concepts
Description:
Welcome to this comprehensive hands-on course on YOLOv10 for real-time object detection! YOLOv10 is the latest version in the YOLO family, building on the successes and lessons from previous versions to provide the best performance yet. This course is designed to take you from beginner to proficient in using YOLOv10 for various object detection tasks.Throughout the course, you will learn how to set up and use YOLOv10, label and create datasets, and train the model with custom data. The course is divided into three main partsart 1: Learning to Use YOLOv10 with Pre-trained Models In this section, we will start by setting up our environment using Google Colab, a free cloud-based platform with GPU support. You will learn to download and use pre-trained YOLOv10 models to detect objects in images. We will cover the following:Setting up the environment and installing necessary packages.Downloading pre-trained YOLOv10 models.Performing object detection on sample images.Visualizing and interpreting detection results.Part 2: Labeling and Making a Dataset with RoboFlowIn the second part, we will focus on creating and managing custom datasets using RoboFlow. This section will teach you how to:Create a project workspace on the RoboFlow website.Upload and annotate images accurately.Follow best practices for data labeling to ensure high-quality training results.Export labeled datasets in formats compatible with YOLOv10.Part 3: Training with Custom DatasetsThe final section of the course is dedicated to training YOLOv10 with your custom datasets. You will learn how to:Configure the training process, including setting parameters such as epochs and batch size.Train the YOLOv10 model using your labeled dataset from RoboFlow.Monitor training progress and evaluate the trained model.Fine-tune the model for improved performance.Test the trained model with your own images and videos, applying it to real-world scenarios.This course is very useful for students, developers, and enthusiasts who are new to YOLOv10 and want to create and train custom deep learning projects. By the end of this course, you will have hands-on experience with state-of-the-art object detection techniques and will be proficient in using RoboFlow for various deep learning and machine learning projects.Hope to see you in the course!
Who this course is for:
This course is designed for students, developers, and enthusiasts and Beginners
Beginners and those with some prior knowledge in deep learning will both find this course valuable
It is also suitable for those who want to leverage RoboFlow for deep learning and machine learning projects
This course is designed for students, developers, and enthusiasts who are new to YOLOv10 and want to learn how to create and train custom deep learning projects. It is also suitable for those who want to leverage RoboFlow for deep learning and machine learning projects. Beginners and those with some prior knowledge in deep learning will both find this course valuable
Homepage
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!
Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!