archive.zip
204.8 MB
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
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Forwarded from ENG. Hussein Sheikho
This channels is for Programmers, Coders, Software Engineers.
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3οΈβ£ Data Visualization
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archive.zip
1.6 GB
Prostate Cancer MRI
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
π3π₯1
well-documented Alzheimer's dataset
This is a well-documented, skull-stripped, new MRI dataset.Take what you want
About Dataset
This is a well-documented, skull-stripped, new MRI dataset.Take what you want
About Dataset
I created this dataset because I found that many Alzheimer's MRI datasets on Kaggle are highly repetitive (all based on the 6400-image version, with various augmented datasets), and they lack specific data sources. This causes issues for research and citation. This dataset is sourced from OASIS and includes MRI images (axial slices) of 457 individuals (note that there is a data imbalance issue, please perform upsampling as needed). Each image is specifically named to help you locate the corresponding OASIS research phase and individual. I first extracted MRI images from 457*4 NIfTI files (each person has three MRI scan NIfTI files) and converted them to PNG format. Then, I performed skull stripping on the converted MRIs. Finally, I manually removed images with black regions and incomplete brain displays, which took a lot of time. If this dataset is well-received, I will consider releasing a skull-stripped dataset from ADNI. I hope Kagglers can use it to improve the accuracy of Alzheimer's diagnosis using various deep learning frameworks and contribute to Alzheimer's research.
2024-12-1 There are four nii files in the βVeryMildDementedβ folder that I forgot to delete. However, this does not affect the images imported using tools like ImageFolder. If you batch convert the images to three channels, it may cause errors. Please search for βbrain.niiβ and βmask.niiβ in the folder and delete them manually.
π₯2
archive.zip.003
116.1 MB
well-documented Alzheimer's dataset
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
π6π₯1
Colorectal Cancer Global Dataset & Predictions
Predicting Colorectal Cancer Outcomes Based on Global Health Trends
Predicting Colorectal Cancer Outcomes Based on Global Health Trends
This dataset contains real-world information about colorectal cancer cases from different countries. It includes patient demographics, lifestyle risks, medical history, cancer stage, treatment types, survival chances, and healthcare costs. The dataset follows global trends in colorectal cancer incidence, mortality, and prevention.
Dataset Structure
Each row represents an individual case, and the columns include:
Patient_ID (Unique identifier)
Country (Based on incidence distribution)
Age (Following colorectal cancer age trends)
Gender (M/F, considering men have 30-40% higher risk)
Cancer_Stage (Localized, Regional, Metastatic)
Tumor_Size_mm (Randomized within medical limits)
Family_History (Yes/No)
Smoking_History (Yes/No)
Alcohol_Consumption (Yes/No)
Obesity_BMI (Normal/Overweight/Obese)
Diet_Risk (Low/Moderate/High)
Physical_Activity (Low/Moderate/High)
Diabetes (Yes/No)
Inflammatory_Bowel_Disease (Yes/No)
Genetic_Mutation (Yes/No)
Screening_History (Regular/Irregular/Never)
Early_Detection (Yes/No)
Treatment_Type (Surgery/Chemotherapy/Radiotherapy/Combination)
Survival_5_years (Yes/No)
Mortality (Yes/No)
Healthcare_Costs (Country-dependent, $25K-$100K+)
Incidence_Rate_per_100K (Country-level prevalence)
Mortality_Rate_per_100K (Country-level mortality)
Urban_or_Rural (Urban/Rural)
Economic_Classification (Developed/Developing)
Healthcare_Access (Low/Moderate/High)
Insurance_Status (Insured/Uninsured)
Survival_Prediction (Yes/No, based on factors)
β€4π3
archive.zip
3.9 MB
Colorectal Cancer Global Dataset & Predictions
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
π6
Forwarded from Machine Learning with Python
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It was a challenge - a marathon 300$ to 30.000$ on trading, together with Lisa!
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Car Number Plate Dataset (YOLO Format)
Car Number Plate Dataset with labels in #YOLO format (Label, Xc, Yc, W, H)
Dataset: Car License Plate Detection
Car Number Plate Dataset with labels in #YOLO format (Label, Xc, Yc, W, H)
Dataset: Car License Plate Detection
This dataset consists of images of car license plates, paired with their corresponding annotations in YOLO format. It is designed for training and evaluating models focused on detecting car license plates in images. The dataset was derived from the Car License Plate Detection dataset on Kaggle and has been split into training and testing subsets.
Dataset Overview:
Total Images: 433 car license plate images
Image Format: .png
Annotation Format: YOLO (Label, Xc, Yc, Width, Height)
Image Resolution: Varies
Annotations: Bounding box coordinates for car license plates, normalized to image dimensions
Dataset Structure:
The dataset is divided into two main directories: train and test. Each directory contains two subdirectories: images and labels.
train: Contains 346 images and corresponding YOLO annotation files for training
test: Contains 87 images and corresponding YOLO annotation files for testing
Each image file (e.g., Cars0.png) is paired with a corresponding annotation file (e.g., Cars0.txt).
The annotation files contain the following information in YOLO format:
Label: The class of the object (for this dataset, it will always be 0, representing car license plates).
Xc, Yc: Center coordinates of the bounding box, normalized to the width and height of the image.
W, H: Width and height of the bounding box, also normalized.
File Information:
train/images/: 346 .png image files of car license plates.
train/labels/: 346 .txt annotation files in YOLO format.
test/images/: 87 .png image files for testing.
test/labels/: 87 .txt annotation files in YOLO format.
data.yaml: Configuration file with dataset details.
Dataset Splitting:
Training Set: 346 images (80% of total dataset)
Test Set: 87 images (20% of total dataset)
Example:
An example annotation for a license plate might look like this:
0 0.548 0.612 0.432 0.075
Where:
0: Class label (always 0 for license plates).
0.548: X-center (normalized to image width).
0.612: Y-center (normalized to image height).
0.432: Width of the bounding box (normalized to image width).
0.075: Height of the bounding box (normalized to image height).
π7β€1
archive.zip
203 MB
Car Number Plate Dataset (YOLO Format)
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
π5
ASL Alphabet
Image data set for alphabets in the American Sign Language
Image data set for alphabets in the American Sign Language
Content
The training data set contains 87,000 images which are 200x200 pixels. There are 29 classes, of which 26 are for the letters A-Z and 3 classes for SPACE, DELETE and NOTHING.
These 3 classes are very helpful in real-time applications, and classification.
The test data set contains a mere 29 images, to encourage the use of real-world test images.
enter image description here
https://www.nidcd.nih.gov/sites/default/files/Content%20Images/NIDCD-ASL-hands-2014.jpg
π3
archive.zip
1 GB
ASL Alphabet
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
π7β€1
pothole, cracks and openmanholes (Road Hazards)
The dataset includes train and valid sets with annotations
The dataset includes train and valid sets with annotations
This dataset contains 2,700 images focused on detecting potholes, cracks, and open manholes on roads. It has been augmented to enhance the variety and robustness of the data. The images are organized into training and validation sets, with three distinct categories:
Potholes: class 0
Cracks: class 1
Open Manholes: class 2
The dataset includes bounding box annotations in .txt files formatted for YOLOv8s, ensuring compatibility for model training. It is structured into separate folders for each class and contains train, valid, and all classes folders, allowing for easy access and custom augmentation. The dataset is designed for further model training, testing, and custom augmentation tasks related to road safety and infrastructure detection.
Usability
archive.zip
1 GB
pothole, cracks and openmanholes (Road Hazards)
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
π5β€2π₯1
archive.zip
11.3 MB
Signature βοΈ
#KaggleDatasets #DataScience #MachineLearning #DataAnalysis #DataVisualization #OpenData #DataCleaning #TextClassification #NLP #SentimentAnalysis #BigData #APIAutomation #DataLicensing #SocialMediaData #PythonIntegration #DataModeling #kaggle #ComputerVision #python #LLM #DeepLearning #Pytorch #HuggingFace #Dataset
https://t.me/datasets1
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Forwarded from Machine Learning with Python
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Alzheimer MRI Disease Classification Dataset
Dataset focuses on the classification of Alzheimer's disease based on MRI scans.
Dataset focuses on the classification of Alzheimer's disease based on MRI scans.
Introduction
Alzheimer MRI Disease Classification dataset is a valuable resource for researchers and health medicine applications. This dataset focuses on the classification of Alzheimer's disease based on MRI scans. The dataset consists of brain MRI images labeled into four categories:
'0': Mild_Demented
'1': Moderate_Demented
'2': Non_Demented
'3': Very_Mild_Demented
Dataset Information
Train split:
Name: train
Number of bytes: 22,560,791.2
Number of examples: 5,120
Test split:
Name: test
Number of bytes: 5,637,447.08
Number of examples: 1,280
Download size: 28,289,848 bytes
Dataset size: 28,198,238.28 bytes
π3π₯1