There are no reviews yet. Be the first to send feedback to the community and the maintainers!
Dicom-Images-preprocessing
Ultrasound imaging has become one ol the most widely used medical imaging modalities in clinical practice, it is characterized by low image quality with great variability compared to other modalities. Researchers have thus applied computer vision and deep learning techniques to ultrasound DICOM images for classification, detection and segmentation. These techniques, despite offering Interesting performances are very hard to implement at a large scale because of the complexity of the data coming from different sources and with different distributions. Fortunately, the cloud is changing the way applications are designed, including how data is processed and stored before training and deploying deep learning models. In this project, we aim to design and build a DICOM data pipeline in Microsoft Azure that describes how data flows through a solution, wherê it is processed, where it is stored, and how il is consumed by the next component in the pipeline including an annotation platform, a training cluster or a deployment endpoint.E2E-ML-Pipeline-With-Docker-Airflow
We will implement this pipeline using Apache Airflow, a popular open-source orchestrator that allows for programmatically building, scheduling, and monitoring workflows. We installed it via #dockercompose and configured it to run in our local environment.chatbot-using-NLTK-Keras
We will create a retrieval based chatbot using NLTK, Keras, Python, etc. A retrieval-based chatbot uses predefined input patterns and responses. It then uses some type of heuristic approach to select the appropriate response. It is widely used in the industry to make goal-oriented chatbots where we can customize the tone and flow of the chatbot to drive our customers with the best experience.Detection-of-Fake-News
This high level python task of identifying fakenews manages phony and genuine news. Utilizing sklearn, we fabricate a TfidfVectorizer on our dataset. Then, at that point, we introduce a PassiveAggressive Classifier and fit the model. Eventually, the accuracy score and the confusion matrix disclose to us how well our model is.Kafka-Twitter-Producer-Elastic-Search-Consumer
Building a Kafka Twitter Producer where the data can be consumed by inserting it to ElasticSearchData-Modeling-With-PostgresSQL
ETL pipeline for populating the Sparkify database, which is designed to enable Sparkify to analyze data on its users, the songs they listen to, and the artists of those songs.Sentiment_Analysis_Using_Twitter_API
This projet includes a pdf document that explains each taken step during the implementation phasedrowsiness-detection-of-the-driver
The majority of accidents happen because of the drowsiness of the driver. So, to forestall these accidents we will build a system using Python, OpenCV, and Keras which will caution the driver when he feels languid.Image-Segmentation-
lets implement already well known architecture, UNetIntegrate-mlflow-with-kubeflow
You've been provided with the helm file that would help you to configure MLflow with Kubeflow , this file can be adjusted according to your needsNLP-Spam-Detection
A simple Flask API to detect spam or ham using Python and sklearnSpark-Project-on-Cloudera-Hadoop-CDH-and-GCP
Check out the pipeline architecture for better understandingAnalysis-and-Visualization-of-Covid-19-Data
Analysis-and-Visualization-of-Covid-19-DataMlops-End-To-End-Machine-Learning-Pipeline-CI-CD
The main objective of this project is to automate the whole machine learning app deployment process. To implement this project we will be using TensorFlow and basic knowledge in dockers and Kubernetes , cloudbuild (GCP)Psychological-Platform
The project consists of providing answers to the various subscribers of the platform. We have three actors, the user, the HR and the psychologistNumber-Plate-Recognition
Automatic license plate recognition systems play a major role in a number of safety-related applications. They are used to identify given vehicles quickly and reliably, without disrupting the trac. Applications are far from being limited to fight against crime: license plate recognition systems find their place wherever access is restricted to a type or category of vehicleattrition-of-bank-customers
Identify and visualize which factors contribute to the attrition of clients. Classify if a customer is going to quit or not , ideally and in view of model execution, pick a model that will connect a likelihood to the stir to make it simpler for client support to target low draping organic products in their endeavors to forestall quittingScrapping-avito-website
We did the scrapping using the beautiful soup library on the avito.com website. We got a lot of information about its uses.classification-of-traffic-sign
we will build a neural network model that can classify traffic signs of different images. Thanks to this model, we will be able to understand traffic signs which are a important task for autonomous cars.Love Open Source and this site? Check out how you can help us