Welcome to Deploy End to End Machine Learning–based Image Classification Web App in Cloud Platform from scratch
Image Processing & classification is one of the areas of Data Science and has a wide variety of applications in the industries in the current world. Many industries looking for a Data Scientist with these skills. This course covers modeling techniques for data preprocessing, model building, evaluation, tuning, and production
We start the course by learning Scikit Image for image processing which is the essential skill required and then we will do the necessary preprocessing techniques & feature extraction to an image like HOG.
After that we will start building the project. In this course you will learn how to label the images, image data preprocessing and analysis using scikit image and python.
Then we will train machine learning here we will see Stochastic Gradient Descenct Classifier for image classification and followed by model evaluation proces and pipeline the machine learning model.
After that we will create web app in Flask by rendering HTML, CSS, Boostrap. Then, we finally deploy web app in Python Anywhere which is cloud platform.
WHAT YOU LEARN ?
Python
Scikit Image
Data Preprocessing
HOG
Base Estimator and TransformerMixIn
Specification: Build and Deploy Machine Learning App in Cloud with Python
|
5 reviews for Build and Deploy Machine Learning App in Cloud with Python
Add a review Cancel reply
This site uses Akismet to reduce spam. Learn how your comment data is processed.
Price | $9.99 |
---|---|
Provider | |
Duration | 6.5 hours |
Year | 2022 |
Level | Intermediate |
Language | English ... |
Certificate | Yes |
Quizzes | No |
$84.99 $9.99
Gss Srinu –
I like it Thank you.
Thumpuru Prasanna Laxmi –
This udemy platform have given me very good knowledge and made me to understand every single sentence.thank you udemy and the staff working over there.
Atanu Chowdhury –
nice course
Daniel Rinc n Riveros –
Falt la un video o las instrucciones de la instalaci n de las librer as a usar.
Jesus Elias Miranda Vega –
hasta el momeno es muy emocionante y divertido