No Code AI/ML platform

Overview

NoCodeAIML

No Code AI/ML platform - Community Edition

Watch the video credits: Uday Kiran

Video credits: Uday Kiran

Typical No Code AI/ML Platform will have features like drag and drop, data source connectivity, social media analysis, analytics, and content analysis.No code AI/ML platform can be built using python and streamlit, which helps in images analysis. The analytical data in the no-code AI/ML platform is imported, validated, cleansed, trained, and testing of the model. New scenarios come in due to unseen data and the model is refined for predictive analytics.

Planning to add more features, please contribute.

check out my article on AI4 blog No Code AI/ML Platform

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Use Cases

1.analyze text messages
2.classify shipping documents
3.categorize social media pictures
4.categorize Instagram pictures
5.check onboarding documents
6.categorize startups by description
7.filter startup databases for investment decisions
8.categorizing emails
9.tracking keyword engagement
10.social listening
11.categorizing app crash reports using NLP
12.moderate user-generated content
13.insurance claims identification
14.quality inspection
15.auto-tagging real estate images,
16.tagging email attachments
17.categorizing support tickets
18.analyze text responses of surveys
19.track social sentiments
20.categorizing SMS responses
21.recognize shipping documents

Features

1.Data Visualization
2.Data Analysis
3.Machine Learning Algorithms
4.Image Analysis
5.NLP & NLU
6.WebRTC API
7.Drawing API
8.Grids for tables

Instructions for setting up locally - webapp

  1. Ensure that python3 and streamlit

2.git clone this repository

git clone https://github.com/bhagvank/NoCodeAIML.git

  1. Install the required packages
pip3 install -r requirements.txt
  1. Run streamlit
streamlit run main.py
Owner
Bhagvan Kommadi
Bhagvan founded Quantica Computacao, the first quantum computing startup in India.
Bhagvan Kommadi
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