An avahiai library which makes your Gen-AI tasks effortless
Project description
avahiplatform
Quickstart
Installation
You can install avahiplatform by running:
pip install avahiplatform
Welcome to AvahiPlatform! ๐
Hey there, AI enthusiast! ๐ Are you ready to supercharge your Gen-AI projects? Look no further than AvahiPlatform - your new best friend in the world of Large Language Models (LLMs)!
With AvahiPlatform, you can create and deploy GenAI applications on Bedrock in just 60 seconds. It's that fast and easy!
What's AvahiPlatform all about?
AvahiPlatform is not just a library; it's your ticket to effortless AI-powered applications. We've taken the complexity out of working with LLMs on AWS Bedrock, so you can focus on what really matters - bringing your brilliant ideas to life!
Here's what makes AvahiPlatform special:
- Simplicity at its core: With just a few lines of Python code, you'll be up and running. No PhD in AI required! ๐
- AWS Bedrock integration: We've done the heavy lifting to seamlessly connect you with the power of AWS Bedrock. It's like having a direct line to AI goodness!
- Enterprise-ready: Whether you're a solo developer or part of a large team, AvahiPlatform scales with your needs. From proof-of-concept to production, we've got you covered.
- Python-friendly: If you can Python, you can AvahiPlatform. It's that simple!
- Global Gradio URL: Quickly generate and share a URL to allow others to experience your functionality directly from your running environment.
๐งฑ What can you build with avahiplatform?
- Text summarization (plain text, local files, S3 files) ๐
- Structured information extraction ๐๏ธ
- Data masking ๐ต๏ธโโ๏ธ
- Natural Language to SQL conversion ๐ฃ๏ธโก๏ธ๐พ
- PDF summarization ๐
- Grammar correction โ๏ธ
- Product description generation ๐๏ธ
- Image generation ๐จ
- Medical scribing ๐ฉโโ๏ธ
- ICD-10 code generation ๐ฅ
- CSV querying ๐
- Retrieval-Augmented Generation (RaG) with Sources ๐๐
- Semantic Search ๐๐ก
- Chatbot ๐ค
- Global gradio URL for Any Functionality/Features ๐
- Support for custom prompts and different Anthropic Claude model versions ๐ง
- Error handling with user-friendly messages ๐ ๏ธ
Basic Usage
import avahiplatform
# Summarization - Text summarization (plain text, local files, S3 files) ๐
summary, input_tokens, output_tokens, cost = avahiplatform.summarize("This is a test string to summarize.")
print("Summary:", summary)
# Structured Extraction - Structured information extraction ๐๏ธ
extraction, input_tokens, output_tokens, cost = avahiplatform.structredExtraction("This is a test string for extraction.")
print("Extraction:", extraction)
# Data Masking - Data masking ๐ต๏ธโโ๏ธ
masked_data, input_tokens, output_tokens, cost = avahiplatform.DataMasking("This is a test string for Data Masking.")
print("Masked Data:", masked_data)
# PDF Summarization - PDF summarization ๐
summary, _, _, _ = avahiplatform.summarize("path/to/pdf/file.pdf")
print("PDF Summary:", summary)
# Grammar Correction - Grammar correction โ๏ธ
corrected_text, _, _, _ = avahiplatform.grammarAssistant("Text with grammatical errors")
print("Corrected Text:", corrected_text)
# Product Description Generation - Product description generation ๐๏ธ
description, _, _, _ = avahiplatform.productDescriptionAssistant("SKU123", "Summer Sale", "Young Adults")
print("Product Description:", description)
# Image Generation - Image generation ๐จ
image, seed, cost = avahiplatform.imageGeneration("A beautiful sunset over mountains")
print("Generated Image:", image)
# Medical Scribing - Medical scribing ๐ฉโโ๏ธ
medical_summary, _ = avahiplatform.medicalscribing("path/to/audio.mp3", "input-bucket", "iam-arn")
print("Medical Summary:", medical_summary)
# Icd10code Generation ๐ฅ
codes = avahiplatform.icdcoding("Any prescription or path/to/prescription.txt")
print("Icd 10 codes:", codes)
# CSV querying ๐
csv_query_answer = avahiplatform.query_csv("How many active locations are there in each region?", csv_file_path="path/to/input_csv.csv")
print(f"csv query answer: {csv_query_answer}")
# RaG with Sources ๐๐
answer, sources = avahiplatform.perform_rag_with_sources("What is kafka?", s3_path="s3://your-bucket-path-where-doc-is-present/")
print(f"Generated answer: {answer}")
print(f"Retrieved sourcce: {sources}")
# Semantic Search ๐๐ก
similar_docs = avahiplatform.perform_semantic_search("What is kafka?", s3_path="s3://your-bucket-path-where-doc-is-present/")
print(f"similar docs: {similar_docs}")
# Chatbot ๐ค
--------------------------------
chatbot = avahiplatform.chatbot()
chatbot.initialize_instance(system_prompt="You are a python developer, you only answer queries related to python only, if you get any other queries, then please say I don't know")
chatbot_response = chatbot.chat(user_input="Create me a function to add 2 numbers")
print(f"chatbot_response: {chatbot_response}")
chatbot_response = chatbot.chat(user_input="What is avahi?")
print(f"chatbot_response: {chatbot_response}")
# Get chat history
chatbot_history = chatbot.get_history()
print(chatbot_history)
# clear_chat_history
chatbot.clear_history()
---------------------------------------
# Few examples for getting global gradio URL for Any Functionality/Features ๐
# For summarizer
avahiplatform.summarize.create_url()
# For medical-scribing
avahiplatform.medicalscribing.create_url()
# For csv querying
avahiplatform.query_csv.create_url()
# For RAG with sources
avahiplatform.perform_rag_with_sources.create_url()
# For chatbot we first have initialize chatbot and then we can create the url
chatbot = avahiplatform.chatbot()
chatbot.create_url()
# This will generate a global URL which you can share with anyone, allowing them to explore and utilize any of the features which is running in your environment using avahiplatform sdk
Configuration
AWS Credentials Setup ๐
AvahiPlatform requires AWS credentials to access AWS Bedrock and S3 services. You have two options for providing your AWS credentials:
Default AWS Credentials
- Configure your AWS credentials in the ~/.aws/credentials file
- Or use the AWS CLI to set up your credentials
Explicit AWS Credentials
- Pass the AWS Access Key ID and Secret Access Key directly when calling functions
๐ก Tip: For detailed instructions on setting up AWS credentials, please refer to the AWS CLI Configuration Guide.
Ensuring your AWS credentials are correctly set up will allow you to seamlessly use all of AvahiPlatform's powerful features. If you encounter any issues with authentication, double-check your credential configuration or reach out to our support team for assistance.
Usage Examples
Summarization
# Summarize text
summary, _, _, _ = avahiplatform.summarize("Text to summarize")
# Summarize a local file
summary, _, _, _ = avahiplatform.summarize("path/to/local/file.txt")
# Summarize a file from S3
summary, _, _, _ = avahiplatform.summarize("s3://bucket-name/file.txt",
aws_access_key_id="your_access_key",
aws_secret_access_key="your_secret_key")
Structured Extraction
extraction, _, _, _ = avahiplatform.structredExtraction("Text for extraction")
Data Masking
masked_data, _, _, _ = avahiplatform.DataMasking("Text containing sensitive information")
Natural Language to SQL
result = avahiplatform.nl2sql("Your natural language query",
db_type="postgresql", username="user", password="pass",
host="localhost", port=5432, dbname="mydb")
PDF Summarization
summary, _, _, _ = avahiplatform.pdfsummarizer("path/to/file.pdf")
Grammar Correction
corrected_text, _, _, _ = avahiplatform.grammarAssistant("Text with grammatical errors")
Product Description Generation
description, _, _, _ = avahiplatform.productDescriptionAssistant("SKU123", "Summer Sale", "Young Adults")
Image Generation
image, seed, cost = avahiplatform.imageGeneration("A beautiful sunset over mountains")
Medical Scribing
summary, transcript = avahiplatform.medicalscribing("path/to/audio.mp3", "input-bucket", "iam-arn")
# Note in medical scribe in iam_arn: It should have iam pass role inline policy which should look like this:
{
"Version": "2012-10-17",
"Statement": [
{
"Effect": "Allow",
"Action": [
"iam:GetRole",
"iam:PassRole"
],
"Resource": [
"arn:aws:iam::<account-id>:role/<role-name>"
]
}
]
}
Along with this, the role/user should have full access to both Transcribe and Comprehend.
ICD-10 Code Generation
icd_code = avahiplatform.icdcoding("local_file.txt")
CSV Querying
result = avahiplatform.query_csv("What is the average age?", "path/to/data.csv")
Global Gradio URL for Any Functionality/Features ๐
avahiplatform.feature_name.create_url()
For example:
- avahiplatform.summarize.create_url()
- avahiplatform.medicalscribing.create_url()
# For interactive chatbot
chatbot = avahiplatform.chatbot()
chatbot.create_url()
Error Handling ๐ ๏ธ
AvahiPlatform provides user-friendly error messages for common issues, ensuring you can quickly identify and resolve any problems. Here are some examples:
- โ Invalid AWS credentials
- ๐ File not found
- ๐ Database connection errors
- โ ๏ธ Unexpected errors
Our detailed error messages will guide you towards quick resolutions, keeping your development process smooth and efficient.
Requirements ๐
To use AvahiPlatform, make sure you have the following:
- Python 3.9 or higher
Required Libraries:
boto3==1.34.160
python-docx==1.1.2
PyMuPDF==1.24.9
loguru==0.7.2
setuptools==72.1.0
chromadb==0.5.3
sqlalchemy>=2.0.35
gradio>=4.44.0
tabulate==0.9.0
python-magic-bin>=0.4.14
pillow>=10.4.0
pandas>=2.2.3
You can install these dependencies using pip. We recommend using a virtual environment for your project.
Contributing ๐ค
We welcome contributions from the community! Whether you've found a bug or have a feature in mind, we'd love to hear from you. Here's how you can contribute:
- Open an issue to discuss your ideas or report bugs
- Fork the repository and create a new branch for your feature
- Submit a pull request with your changes
Let's make AvahiPlatform even better together!
License ๐
This project is licensed under the MIT License. See the Open-source MIT license file for details.
Contact Us ๐ฌ
We're here to help! If you have any questions, suggestions, or just want to say hi, feel free to reach out:
- Author: Avahi Tech
- Email: info@avahitech.com
- GitHub: https://github.com/avahi-org/avahiplatform
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