Client library for LLM Whisperer
Project description
LLMWhisperer Python Client
LLMs are powerful, but their output is as good as the input you provide. LLMWhisperer is a technology that presents data from complex documents (different designs and formats) to LLMs in a way that they can best understand. LLMWhisperer features include Layout Preserving Mode, Auto-switching between native text and OCR modes, proper representation of radio buttons and checkboxes in PDF forms as raw text, among other features. You can now extract raw text from complex PDF documents or images without having to worry about whether the document is a native text document, a scanned image or just a picture clicked on a smartphone. Extraction of raw text from invoices, purchase orders, bank statements, etc works easily for structured data extraction with LLMs powered by LLMWhisperer's Layout Preserving mode.
Refer to the client documentation for more information: LLMWhisperer Client Documentation
Features
- Easy to use Pythonic interface.
- Handles all the HTTP requests and responses for you.
- Raises Python exceptions for API errors.
Installation
You can install the LLMWhisperer Python Client using pip:
pip install llmwhisperer-client
Usage
First, import the LLMWhispererClient
from the client
module:
from unstract.llmwhisperer.client import LLMWhispererClient
Then, create an instance of the LLMWhispererClient
:
client = LLMWhispererClient(base_url="https://llmwhisperer-api.unstract.com/v1", api_key="your_api_key")
Now, you can use the client to interact with the LLMWhisperer API:
# Get usage info
usage_info = client.get_usage_info()
# Process a document
# Extracted text is available in the 'extracted_text' field of the result
whisper = client.whisper(file_path="path_to_your_file")
# Get the status of a whisper operation
# whisper_hash is available in the 'whisper_hash' field of the result of the whisper operation
status = client.whisper_status(whisper_hash)
# Retrieve the result of a whisper operation
# whisper_hash is available in the 'whisper_hash' field of the result of the whisper operation
whisper = client.whisper_retrieve(whisper_hash)
Error Handling
The client raises LLMWhispererClientException
for API errors:
try:
result = client.whisper_retrieve("invalid_hash")
except LLMWhispererClientException as e:
print(f"Error: {e.message}, Status Code: {e.status_code}")
Simple use case with defaults
client = LLMWhispererClient()
try:
result = client.whisper(file_path="sample_files/restaurant_invoice_photo.pdf")
extracted_text = result["extracted_text"]
print(extracted_text)
except LLMWhispererClientException as e:
print(e)
Simple use case with more options set
We are forcing text processing and extracting text from the first two pages only.
client = LLMWhispererClient()
try:
result = client.whisper(
file_path="sample_files/credit_card.pdf",
processing_mode="text",
force_text_processing=True,
pages_to_extract="1,2",
)
extracted_text = result["extracted_text"]
print(extracted_text)
except LLMWhispererClientException as e:
print(e)
Extraction with timeout set
The platform has a hard timeout of 200 seconds. If the document takes more than 200 seconds to convert (large documents), the platform will switch to async extraction and return a hash. The client can be used to check the status of the extraction and retrieve the result. Also note that the timeout is in seconds and can be set by the caller too.
client = LLMWhispererClient()
try:
result = client.whisper(
file_path="sample_files/credit_card.pdf",
pages_to_extract="1,2",
timeout=2,
)
if result["status_code"] == 202:
print("Timeout occured. Whisper request accepted.")
print(f"Whisper hash: {result['whisper-hash']}")
while True:
print("Polling for whisper status...")
status = client.whisper_status(whisper_hash=result["whisper-hash"])
if status["status"] == "processing":
print("STATUS: processing...")
elif status["status"] == "delivered":
print("STATUS: Already delivered!")
break
elif status["status"] == "unknown":
print("STATUS: unknown...")
break
elif status["status"] == "processed":
print("STATUS: processed!")
print("Let's retrieve the result of the extraction...")
resultx = client.whisper_retrieve(
whisper_hash=result["whisper-hash"]
)
print(resultx["extracted_text"])
break
time.sleep(2)
except LLMWhispererClientException as e:
print(e)
Questions and Feedback
On Slack, join great conversations around LLMs, their ecosystem and leveraging them to automate the previously unautomatable!
LLMWhisperer Playground: Test drive LLMWhisperer with your own documents. No sign up needed!
LLMWhisperer developer documentation and playground: Learn more about LLMWhisperer and its API.
Project details
Release history Release notifications | RSS feed
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
File details
Details for the file llmwhisperer_client-0.23.0.tar.gz
.
File metadata
- Download URL: llmwhisperer_client-0.23.0.tar.gz
- Upload date:
- Size: 3.2 MB
- Tags: Source
- Uploaded using Trusted Publishing? Yes
- Uploaded via: pdm/2.10.0 CPython/3.8.10
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 627774fbdd39d71127b9227efa57b554e6468c0cdc379085020f96c99336856b |
|
MD5 | e6dee6aca48ecdf24c30d1e8b04017ee |
|
BLAKE2b-256 | 570a23427cd671ae6b54b2e98aa615d3925ab718aa65ecdf4f70738e50a5b2c6 |
File details
Details for the file llmwhisperer_client-0.23.0-py3-none-any.whl
.
File metadata
- Download URL: llmwhisperer_client-0.23.0-py3-none-any.whl
- Upload date:
- Size: 13.3 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? Yes
- Uploaded via: pdm/2.10.0 CPython/3.8.10
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 37788e0d3728513e65e41fee54d0eb4be184ceb17f22cd7021ae86b76effb80f |
|
MD5 | f936f4db2e0ffee1ecb47b1e8bb39235 |
|
BLAKE2b-256 | c28bb0b690f67778ebbc157ad894413e8e9170bc58fd6c2d2c760bf40d65ad27 |