This repository contains related material, project files, logs and resources for the Data Sicence / Machine Learning Study Group.
In the course material from the Machine Learning Career Pathway lesson at the AWS Educate, there was a short quiz testing the intuition on cloud service selection matching the requirements and needs of a hypothetical client. I made a small summary for you in the AWS_ML_stack.md.
In this notebook AWS-SDK-for-python-boto3, the boto library is used to execute creation, deletion, adding files, manage permission for an S3 bucket. Furthermore, it show how to incorporate file listing and html generation using pandas, as well as demonstration of data visualization in bokeh with html conversion.
In this notebook, the AWS Rekognite service is utilized in combination with S3 and boto. A front-end part is yet to be added for simple presentation of the results of image classification. AWS-boto3-AWS-Rekognite
Project_AWS_Sagemaker - Code from the Deep Learning Nanodegree program.
Selection and configuration of AWS services
Introduction: Building a model using SageMaker L2-1
Setting up jupyter notebooks: Building a model using SageMaker - L2-4
Video tutorial from Udacity: Cloning a repo to SageMaker