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LiteParse — Local Document Parsing

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LiteParse — Local Document Parsing

Overview

LiteParse is a fast, open-source document parser (Rust core, Python/Node bindings) focused on local, layout-aware text extraction with bounding boxes. It does not produce Markdown and does not call cloud LLMs. Outputs are plain text (layout-preserved) or structured JSON with per-page text_items (position, font metadata, optional confidence).

Version note: Examples target liteparse 2.0.0 (PyPI, May 2026). The upstream V1 branch is legacy; this skill documents V2 / main only.

For parser selection vs MarkItDown, the pdf skill, or LlamaParse, see references/choosing_a_parser.md.

When to Use This Skill

Use LiteParse when you need:

  • Fast local parsing of PDFs or converted Office/image files without cloud dependencies
  • Spatial text with bounding boxes for layout-aware RAG, citation grounding, or figure/table region logic
  • OCR on scanned PDFs or images (bundled Tesseract, or a user-run HTTP OCR server)
  • Page screenshots (PNG) for multimodal agents that must see charts, figures, or handwriting
  • Batch ingestion of literature folders, supplementary PDFs, or protocol libraries
  • Page subsets or password-protected PDFs

When Not to Use

TaskUse instead
Markdown for LLM ingestion (EPUB, audio, YouTube, HTML)markitdown skill
Merge/split PDFs, forms, watermarks, rotationpdf skill
Dense tables, handwriting, production cloud pipelinesLlamaParse (cloud; sign up separately)

Installation

bash
uv pip install "liteparse==2.0.0"

This installs the Python bindings and the lit CLI. Verify:

bash
lit --help
python -c "import liteparse; print(liteparse.__version__)"

Optional system tools (for non-PDF inputs):

  • LibreOffice — Word, Excel, PowerPoint, OpenDocument, CSV/TSV
  • ImageMagick — PNG, JPEG, TIFF, WebP, SVG, etc.

Install commands are in references/ocr_and_formats.md.

Node.js / TypeScript (optional): npm i @llamaindex/liteparse — see references/api_reference.md.


Quick Start

Python

python
from liteparse import LiteParse

parser = LiteParse(quiet=True)
result = parser.parse("paper.pdf")
print(result.text)

for page in result.pages:
    print(f"Page {page.page_num}: {len(page.text_items)} items")

CLI

bash
# Layout-preserved text (default)
lit parse paper.pdf

# Structured JSON with bounding boxes
lit parse paper.pdf --format json -o paper.json

# Disable OCR on text-native PDFs (faster)
lit parse paper.pdf --no-ocr

Core Workflows

1. Parse to layout-preserved text

Best for quick full-document text or feeding chunkers that do not need coordinates.

python
parser = LiteParse(ocr_enabled=True, quiet=True)
result = parser.parse("document.pdf")
full_text = result.text
bash
lit parse document.pdf -o output.txt

2. Parse to structured JSON (bounding boxes)

Use when building layout-aware RAG, highlighting source regions, or joining text with screenshots.

python
import json
from liteparse import LiteParse

parser = LiteParse(output_format="json", quiet=True)
result = parser.parse("document.pdf")

# Programmatic access
for page in result.pages:
    for item in page.text_items:
        bbox = (item.x, item.y, item.width, item.height)
        # item.text, item.confidence, item.font_name, item.font_size
bash
lit parse document.pdf --format json -o document.json

JSON field layout: references/output_formats.md.

3. Parse specific pages

python
parser = LiteParse(target_pages="1-5,10,15-20", quiet=True)
result = parser.parse("long_paper.pdf")
bash
lit parse long_paper.pdf --target-pages "1-5,10"

4. Parse from bytes or stdin

Useful for uploads, S3 downloads, or piping remote PDFs.

python
with open("document.pdf", "rb") as f:
    result = parser.parse(f.read())
bash
curl -sL https://example.com/report.pdf | lit parse -

5. Page screenshots for multimodal agents

Screenshots capture visual content that text extraction alone misses (figures, complex tables, handwriting).

python
from pathlib import Path

parser = LiteParse(dpi=150, quiet=True)
shots = parser.screenshot("document.pdf", page_numbers=[1, 2, 3])
out = Path("screenshots")
out.mkdir(exist_ok=True)
for s in shots:
    (out / f"page_{s.page_num}.png").write_bytes(s.image_bytes)
bash
lit screenshot document.pdf --target-pages "1,3,5" -o ./screenshots
lit screenshot document.pdf --dpi 300 -o ./screenshots

Combine JSON parse + screenshots when an agent needs both coordinates and pixels for the same pages.

6. Batch-parse a directory

For large corpora, prefer the CLI (parallel OCR workers) or the bundled script.

bash
lit batch-parse ./papers ./parsed --format json --recursive
lit batch-parse ./papers ./parsed --extension .pdf --no-ocr
bash
python scripts/batch_parse_dir.py ./papers ./parsed --format json --recursive

See scripts/batch_parse_dir.py for a Python batch wrapper without network calls.

7. OCR configuration

OCR is on by default. Tesseract is bundled; no extra install for basic English OCR.

python
parser = LiteParse(
    ocr_enabled=True,
    ocr_language="eng",       # Tesseract codes: fra, deu, etc.
    num_workers=4,            # parallel OCR (default: CPU cores - 1)
    dpi=150,                  # higher DPI → better OCR, slower
)
bash
lit parse scan.pdf --ocr-language fra
lit parse scan.pdf --no-ocr
lit parse scan.pdf --ocr-server-url http://localhost:8080/ocr

Offline / air-gapped: set TESSDATA_PREFIX to a directory of .traineddata files, or pass --tessdata-path. Details: references/ocr_and_formats.md.

8. Encrypted PDFs

python
parser = LiteParse(password="secret", quiet=True)
result = parser.parse("protected.pdf")
bash
lit parse protected.pdf --password secret

9. Search text items by phrase

Merge adjacent items and return combined bounding boxes for a phrase (e.g. section titles).

python
from liteparse import search_items

page = result.get_page(1)
matches = search_items(page.text_items, "Materials and Methods", case_sensitive=False)

Multi-Format Inputs

CategoryExtensions (examples)Requirement
PDF.pdfNative
Office.docx, .xlsx, .pptx, .doc, .odt, …LibreOffice
Images.png, .jpg, .tiff, .webp, .svg, …ImageMagick

Files are converted to PDF internally, then parsed. If conversion tools are missing, parsing fails with an actionable error — install the dependency and retry.


Performance Tips

  • --no-ocr on born-digital PDFs — largest speedup
  • target_pages — parse only methods/supplement sections
  • num_workers — scale OCR across CPU cores
  • max_pages — cap very large files (default 1000)
  • lit batch-parse — directory-scale jobs with --recursive and --extension
  • Lower dpi (e.g. 100) when OCR quality is already sufficient

Reference Files

FileRead when
references/choosing_a_parser.mdUnsure whether to use LiteParse, MarkItDown, pdf, or LlamaParse
references/api_reference.mdPython/TypeScript API, types, search_items
references/cli_reference.mdFull lit command flags
references/output_formats.mdJSON schema, bboxes, confidence scores
references/ocr_and_formats.mdTesseract, HTTP OCR, LibreOffice, ImageMagick

Troubleshooting

IssueFix
Office file failsInstall LibreOffice; ensure soffice is on PATH (Windows: add LibreOffice program dir)
Image failsInstall ImageMagick; verify convert or magick works
OCR poor qualityIncrease --dpi; try --ocr-language; or HTTP OCR server
OCR slow--no-ocr if not needed; reduce pages; increase num_workers
Air-gapped OCRexport TESSDATA_PREFIX=/path/to/tessdata or --tessdata-path
ParseError on bytesEnsure input is valid PDF bytes (Office bytes need a file path + conversion)

Resources