Skip to main content

ScaleDP is a library for processing documents using Apache Spark and LLMs

Project description


ScaleDP

An Open-Source Library for Processing Documents using AI/ML in Apache Spark.

GitHub StabRise Codacy Badge


Source Code: https://github.com/StabRise/ScaleDP

Quickstart: 1.QuickStart.ipynb

Tutorials: https://github.com/StabRise/ScaleDP-Tutorials


Welcome to the ScaleDP library

ScaleDP is library allows you to process documents using AI/ML capabilities and scale it using Apache Spark.

LLM (Large Language Models) and VLM (Vision Language Models) models are used to extract data from text and images in combination with OCR engines.

Discover pre-trained models for your projects or play with the thousands of models hosted on the Hugging Face Hub.

Key features

Document processing:

  • ✅ Loading PDF documents/Images to the Spark DataFrame (using Spark PDF Datasource and as binaryFile)
  • ✅ Extraction text/images from PDF documents/Images
  • ✅ Zero-Shot extraction structured data from text/images using LLM and ML models
  • ✅ Possibility run as REST API service without Spark Session for have minimum processing latency
  • ✅ Support Streaming mode for processing documents in real-time

LLM:

Support OpenAI compatible API for call LLM/VLM models (GPT, Gemini, GROQ, etc.)

  • OCR Images/PDF documents using Vision LLM models
  • Extract data from the image using Vision LLM models
  • Extract data from the text/images using LLM models
  • Extract data using DSPy framework
  • NER using LLM's
  • Visualize results

NLP:

  • Extract data from the text/images using NLP models from the Hugging Face Hub
  • NER using classical ML models

OCR:

Support various open-source OCR engines:

CV:

  • Object detection on images using YOLO models
  • Text detection on images

Installation

Prerequisites

  • Python 3.10 or higher
  • Apache Spark 3.5 or higher
  • Java 8

Installation using pip

Install the ScaleDP package with pip:

pip install scaledp

Installation using Docker

Build image:

  docker build -t scaledp .

Run container:

  docker run -p 8888:8888 scaledp:latest

Open Jupyter Notebook in your browser:

  http://localhost:8888

Qiuckstart

Start a Spark session with ScaleDP:

from scaledp import *
spark = ScaleDPSession()
spark

Read example image file:

image_example = files('resources/images/Invoice.png')
df = spark.read.format("binaryFile") \
    .load(image_example)

df.show_image("content")

Output:

Zero-Shot data Extraction from the Image:

from pydantic import BaseModel
import json

class Items(BaseModel):
    date: str
    item: str
    note: str
    debit: str

class InvoiceSchema(BaseModel):
    hospital: str
    tax_id: str
    address: str
    email: str
    phone: str
    items: list[Items]
    total: str
    

pipeline = PipelineModel(stages=[
    DataToImage(
        inputCol="content",
        outputCol="image"
    ),
    LLMVisualExtractor(
        inputCol="image",
        outputCol="invoice",
        model="gemini-1.5-flash",
        apiKey="",
        apiBase="https://generativelanguage.googleapis.com/v1beta/",
        schema=json.dumps(InvoiceSchema.model_json_schema())
    )
])

result = pipeline.transform(df).cache()

Show the extracted json:

result.show_json("invoice")

Let's show Invoice as Structured Data in Data Frame

result.select("invoice.data.*").show()

Output:

+-------------------+---------+--------------------+--------------------+--------------+--------------------+-------+
|           hospital|   tax_id|             address|               email|         phone|               items|  total|
+-------------------+---------+--------------------+--------------------+--------------+--------------------+-------+
|Hope Haven Hospital|26-123123|855 Howard Street...|hopedutton@hopeha...|(123) 456-1238|[{10/21/2022, App...|1024.50|
+-------------------+---------+--------------------+--------------------+--------------+--------------------+-------+

Schema:

result.printSchema()
root
 |-- path: string (nullable = true)
 |-- modificationTime: timestamp (nullable = true)
 |-- length: long (nullable = true)
 |-- image: struct (nullable = true)
 |    |-- path: string (nullable = false)
 |    |-- resolution: integer (nullable = false)
 |    |-- data: binary (nullable = false)
 |    |-- imageType: string (nullable = false)
 |    |-- exception: string (nullable = false)
 |    |-- height: integer (nullable = false)
 |    |-- width: integer (nullable = false)
 |-- invoice: struct (nullable = true)
 |    |-- path: string (nullable = false)
 |    |-- json_data: string (nullable = true)
 |    |-- type: string (nullable = false)
 |    |-- exception: string (nullable = false)
 |    |-- processing_time: double (nullable = false)
 |    |-- data: struct (nullable = true)
 |    |    |-- hospital: string (nullable = false)
 |    |    |-- tax_id: string (nullable = false)
 |    |    |-- address: string (nullable = false)
 |    |    |-- email: string (nullable = false)
 |    |    |-- phone: string (nullable = false)
 |    |    |-- items: array (nullable = false)
 |    |    |    |-- element: struct (containsNull = false)
 |    |    |    |    |-- date: string (nullable = false)
 |    |    |    |    |-- item: string (nullable = false)
 |    |    |    |    |-- note: string (nullable = false)
 |    |    |    |    |-- debit: string (nullable = false)
 |    |    |-- total: string (nullable = false)

NER using model from the HuggingFace models Hub

Define pipeline for extract text from the image and run NER:

pipeline = PipelineModel(stages=[
    DataToImage(inputCol="content", outputCol="image"),
    TesseractOcr(inputCol="image", outputCol="text", psm=PSM.AUTO, keepInputData=True),
    Ner(model="obi/deid_bert_i2b2", inputCol="text", outputCol="ner", keepInputData=True),
    ImageDrawBoxes(inputCols=["image", "ner"], outputCol="image_with_boxes", lineWidth=3, 
                   padding=5, displayDataList=['entity_group'])
])

result = pipeline.transform(df).cache()

result.show_text("text")

Output:

Show NER results:

result.show_ner(limit=20)

Output:

+------------+-------------------+----------+-----+---+--------------------+
|entity_group|              score|      word|start|end|               boxes|
+------------+-------------------+----------+-----+---+--------------------+
|        HOSP|  0.991257905960083|  Hospital|    0|  8|[{Hospital:, 0.94...|
|         LOC|  0.999171257019043|    Dutton|   10| 16|[{Dutton,, 0.9609...|
|         LOC| 0.9992585778236389|        MI|   18| 20|[{MI, 0.93335297,...|
|          ID| 0.6838774085044861|        26|   29| 31|[{26-123123, 0.90...|
|       PHONE| 0.4669836759567261|         -|   31| 32|[{26-123123, 0.90...|
|       PHONE| 0.7790696024894714|    123123|   32| 38|[{26-123123, 0.90...|
|        HOSP|0.37445762753486633|      HOPE|   39| 43|[{HOPE, 0.9525460...|
|        HOSP| 0.9503226280212402|     HAVEN|   44| 49|[{HAVEN, 0.952546...|
|         LOC| 0.9975488185882568|855 Howard|   59| 69|[{855, 0.94682700...|
|         LOC| 0.9984399676322937|    Street|   70| 76|[{Street, 0.95823...|
|        HOSP| 0.3670221269130707|  HOSPITAL|   77| 85|[{HOSPITAL, 0.959...|
|         LOC| 0.9990363121032715|    Dutton|   86| 92|[{Dutton,, 0.9647...|
|         LOC|  0.999313473701477|  MI 49316|   94|102|[{MI, 0.94589012,...|
|       PHONE| 0.9830010533332825|   ( 123 )|  110|115|[{(123), 0.595334...|
|       PHONE| 0.9080978035926819|       456|  116|119|[{456-1238, 0.955...|
|       PHONE| 0.9378324151039124|         -|  119|120|[{456-1238, 0.955...|
|       PHONE| 0.8746233582496643|      1238|  120|124|[{456-1238, 0.955...|
|     PATIENT|0.45354968309402466|hopedutton|  132|142|[{hopedutton@hope...|
|       EMAIL|0.17805588245391846| hopehaven|  143|152|[{hopedutton@hope...|
|        HOSP|  0.505658745765686|   INVOICE|  157|164|[{INVOICE, 0.9661...|
+------------+-------------------+----------+-----+---+--------------------+

Visualize NER results:

result.visualize_ner(labels_list=["DATE", "LOC"])

Original image with NER results:

result.show_image("image_with_boxes")

Ocr engines

Bbox level Support GPU Separate model for text detection Processing time 1 page (CPU/GPU) secs Support Handwritten Text
Tesseract OCR character no no 0.2/no not good
Tesseract OCR CLI character no no 0.2/no not good
Easy OCR word yes yes
Surya OCR line yes yes
DocTR word yes yes

Projects based on the ScaleDP

  • PDF Redaction - Free AI-powered tool for redact PDF files (remove sensitive information) online.

pdf-redaction

Disclaimer

This project is not affiliated with, endorsed by, or connected to the Apache Software Foundation or Apache Spark.

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

scaledp-0.2.3rc44.tar.gz (911.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

scaledp-0.2.3rc44-py3-none-any.whl (947.8 kB view details)

Uploaded Python 3

File details

Details for the file scaledp-0.2.3rc44.tar.gz.

File metadata

  • Download URL: scaledp-0.2.3rc44.tar.gz
  • Upload date:
  • Size: 911.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/2.1.3 CPython/3.12.3 Linux/6.14.0-27-generic

File hashes

Hashes for scaledp-0.2.3rc44.tar.gz
Algorithm Hash digest
SHA256 9073ac722be954f9eae8db6a57c8b5955c3816279f11d65f1887cde771d2b626
MD5 604ac736ba143cba3a24a573f1d655e8
BLAKE2b-256 a24157cf5069565df628c6e3708292577886a15a2b396c730288d2188828d909

See more details on using hashes here.

File details

Details for the file scaledp-0.2.3rc44-py3-none-any.whl.

File metadata

  • Download URL: scaledp-0.2.3rc44-py3-none-any.whl
  • Upload date:
  • Size: 947.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/2.1.3 CPython/3.12.3 Linux/6.14.0-27-generic

File hashes

Hashes for scaledp-0.2.3rc44-py3-none-any.whl
Algorithm Hash digest
SHA256 5f344727eda8a902b2982908f11f323f7a8a2f7f6d05f7f2888a06686dee1c92
MD5 271a592c2352666249b66aa67836213b
BLAKE2b-256 34daaad3a3bb0e97535fda649d4631d450a139587a96660185c68cf2ee1fe5fd

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page