Building and deploying a model which predicts the sentiment of a user-provided movie review and creating a simple web app that uses the deployed model.
-
Updated
Nov 6, 2020 - HTML
Building and deploying a model which predicts the sentiment of a user-provided movie review and creating a simple web app that uses the deployed model.
Fraud Detection of a 6 million row dataset using AWS and Spark
Deploying a Pytorch model in Amazon SageMaker and connecting a web app to it
Project for Deep Learning Nanodegree, unit 6 (Deploying a Model).
This repo contains the first project of Udacity Machine Learning Engineer NanoDegree program.
Building a scalable and safe image classification model on Amazon Sagemaker implemented with AWS Lambda Functions for supporting services and AWS Step Functions to merge them into an an event-driven application
Movie Reviews Sentiment Analysis.
Deploying a Pytorch model in Amazon Sagemaker and access it through open endpoint Amazon Lambda function
Sentiment Analysis of the IMDB data set using SageMaker
RF Signals ML demo with SpectrumSens system for hackathon AWS Disaster Response.
Udacity's Machine Learning Nanodegree Graded Project. Includes a binary classification neural network model for sentiment analysis of movie reviews and scripts to deploy the trained model to a web app using AWS Lambda.
Projects implemented as part of the Udacity deep learning Nanodegree program.
AWS Sagemaker Ground Truth Scripts for Human Evaluation of Dialog Response Generation Models | Supports Amazon Mechanical Turk (MTurk) / Private in-lab study backend
Sentiment Analysis
Machine Learning Nanodegree program
A simple web app which interacts with a deployed recurrent neural network performing sentiment analysis on movie reviews using SageMaker & XGBoost.
Plagiarism Detection is a Python-based project that aims to identify potential cases of plagiarism in textual documents. This project provides a useful tool for educators, researchers, and content creators to detect and prevent academic and intellectual property violations.
Add a description, image, and links to the sagemaker topic page so that developers can more easily learn about it.
To associate your repository with the sagemaker topic, visit your repo's landing page and select "manage topics."