Python Client for INTELLIHUB.
Project description
INTELLIHUB
About
Our philosophy is to create a Deep Technologies platform with ethical AI for enterprises that offers meaningful insights and actions.
INTELLIHUB Unified Deep Learning platform can be leveraged to build solutions that are Application-Specific and Industry-Specific where AI opportunity found by using INTELLIHUB SDKs, APIs and Microservices. With best of the breed AI Services from platform pioneers like H2O, Google's TensorFlow, WEKA and a few trusted open-sources models and libraries, we offer custom AI algorithms with co-innovation support.
Getting Started
Pre-requisite
- INTELLIHUB : INTELLIHUB is collection of open-source docker images, where processing of images, text or structured tabular data is done using state-of-the-art AI models.
Please follow the below link for instructions on INTELLIHUB Installation
Note: To use third party AI engines please provide your credentials. Instructions on getting credentials and configuring are provided below.
Installation
Installing through pip
pip install intellihub
Installing from Source
a. Clone the repo
git clone https://github.com/Spotflock/intellihub-sdk-python.git
b. Set working directory to intellihub folder
c. Install requirements from requirements.txt file
pip install -r requirements.txt
Choose any one of the above options for Installation
Usage
import intellihub
client = intellihub.IntellihubClient(base_url='http://localhost:8000')
text = "The product is very easy to use and has got a really good life expectancy."
sentiment_analysis_response = client.sentiment_analysis(text)
print(sentiment_analysis_response)
Important Parameters:
1. API key:
2. base_url: The base_url is the url for the machine where base service is installed by default its localhost, so base_url needs to be http://localhost:8000
Expected Output
{
"spacy": {"emotion": "POSITIVE", "scores": {"neg": 0.0, "neu": 0.653, "pos": 0.347, "compound": 0.7496}}
}
Services
1. Machine Learning
-
ML Wrapper - It parse user request parameters
-
ML Scikit - This Microservice uses widely used Scikit package for training and evaluating classification, regression, clustering models and other ML related tasks on dataset provided by user.
-
ML H2O - This Microservice uses H2O.ai python SDK for training and evaluating classification, regression, clustering models and other ML related tasks on dataset provided by user.
-
ML Weka - This Microservice uses WEKA for training and evaluating classification, regression, clustering models and other ML related tasks on dataset provided by user.
2. NLP
- This microservice provides features like Sentiment analysis, Name Entity Recognition, Tag Extraction using widely used
Spacy
andNLTK
package. It also provide support for various AI engines like Azure & IBM.
3. Computer Vision
-
CV Wrapper - This microservice receives images provided by user and route to right service based on the feature requested by them.
-
Image Classification - This microservice classify images into various classes using pretrained model and also using supported AI Engines.
-
Object Detection - This microservice detect objects in Images provided by user using pretrained model and using supported AI Engines.
Reference
For more detail on INTELLIHUB features & usage please refer INTELLIHUB SDK Client Documentation
License
The content of this project itself is licensed under GNU LGPL, Version 3 (LGPL-3)
Contact
Spotflock Email-ID - connect@spotflock.com
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for intellihub-1.3.1-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 1a3462385c509d303370d49679799c3723e3e506724dd2e05264122a68668cdc |
|
MD5 | 409d6c3362a3e6740db31c7d24df6ee9 |
|
BLAKE2b-256 | 158c879a30a2a5e1ad998eba127168be2c0677d048d11234eec2a5055efc52ad |