PDFs are rich with both text and visual content — from descriptive paragraphs to illustrations and tables. This example builds an end-to-end flow that parses, embeds, and indexes both, with full traceability to the original page.
In this example, we splits out both text and images, linking them back to page metadata, and enabling unified semantic search. We’ll use CocoIndex to define the flow, SentenceTransformers for text embeddings, and CLIP for image embeddings — all stored in Qdrant for retrieval.
🔍 What It Does
This flow automatically:
- Extracts page texts and images from PDF files
- Skips tiny or redundant images
- Creates consistent thumbnails (up to 512×512)
- Chunks and embeds text with SentenceTransformers (all-MiniLM-L6-v2)
- Embeds images with CLIP (openai/clip-vit-large-patch14)
- Stores both embeddings and metadata (e.g., where the text or image came from) in Qdrant, enabling unified semantic search across text and image modalities
📦 Prerequisite:
Run Qdrant
If you don’t have Qdrant running locally, start it via Docker:
docker run -p 6333:6333 -p 6334:6334 qdrant/qdrant
📁 Input Data
We’ll use a few sample PDFs (board game manuals). Download them into the source_files directory:
./fetch_manual_urls.sh
Or, feel free to drop in any of your own PDFs.
⚙️ Run the Flow
Install dependencies:
pip install -e .
Then build your index (sets up tables automatically on first run):
cocoindex update --setup main
Or Run in CocoInsight
cocoindex server -ci main
Define the flow
Flow definition
Let’s break down what happens inside the PdfElementsEmbedding flow
@cocoindex.flow_def(name="PdfElementsEmbedding")
def multi_format_indexing_flow(
flow_builder: cocoindex.FlowBuilder, data_scope: cocoindex.DataScope
) -> None:
data_scope["documents"] = flow_builder.add_source(
cocoindex.sources.LocalFile(
path="source_files", included_patterns=["*.pdf"], binary=True
)
)
text_output = data_scope.add_collector()
image_output = data_scope.add_collector()
We defines the flow, added source and added data collectors.
For flow definition, the decorator
@cocoindex.flow_def(name="PdfElementsEmbedding")
marks the function as a CocoIndex flow definition, registering it as part of the data indexing system. When executed via CocoIndex runtime, it orchestrates data ingestion, transformation, and collection.When started, CocoIndex’s runtime executes the flow in either one-time update or live update mode, and incrementally embedding only what changed.
Process Each Document
Extract PDF documents
We iterate each document row and run a custom transformation which extract pdf elements.
with data_scope["documents"].row() as doc:
doc["pages"] = doc["content"].transform(extract_pdf_elements)
Extract PDF Elements
Define dataclass for structured extraction - we want to extract a list of PdfPage each has page number, text, and list of images.
@dataclass
class PdfImage:
name: str
data: bytes
@dataclass
class PdfPage:
page_number: int
text: str
images: list[PdfImage]
Next, define a CocoIndex function called extract_pdf_elements that extracts both text and images from a PDF file, returning them as structured, page-wise data objects.
@cocoindex.op.function()
def extract_pdf_elements(content: bytes) -> list[PdfPage]:
"""
Extract texts and images from a PDF file.
"""
reader = PdfReader(io.BytesIO(content))
result = []
for i, page in enumerate(reader.pages):
text = page.extract_text()
images = []
for image in page.images:
img = image.image
if img is None:
continue
# Skip very small images.
if img.width < 16 or img.height < 16:
continue
thumbnail = io.BytesIO()
img.thumbnail(IMG_THUMBNAIL_SIZE)
img.save(thumbnail, img.format or "PNG")
images.append(PdfImage(name=image.name, data=thumbnail.getvalue()))
result.append(PdfPage(page_number=i + 1, text=text, images=images))
return result
The extract_pdf_elements function reads a PDF file from bytes and extracts both text and images from each page in a structured way. Using pypdf, it parses every page to retrieve text content and any embedded images, skipping empty or very small ones to avoid noise.
Each image is resized to a consistent thumbnail size (up to 512×512) and converted into bytes for downstream use. The result is a clean, per-page data structure (PdfPage) that contains the page number, extracted text, and processed images — making it easy to embed and index PDFs for multimodal search.
Process Each Page
Once we have the pages, we will process each page
- Chunk the text
Takes each PDF page’s text and splits it into smaller, overlapping chunks
with doc["pages"].row() as page:
page["chunks"] = page["text"].transform(
cocoindex.functions.SplitRecursively(
custom_languages=[
cocoindex.functions.CustomLanguageSpec(
language_name="text",
separators_regex=[
r"\n(\s*\n)+",
r"[\.!\?]\s+",
r"\n",
r"\s+",
],
)
]
),
language="text",
chunk_size=600,
chunk_overlap=100,
)
- Process each chunk
Embed and collect the metadata we need, each chunk has embedding, original text, and reference the filename and page in where it came from.
with page["chunks"].row() as chunk:
chunk["embedding"] = chunk["text"].call(embed_text)
text_output.collect(
id=cocoindex.GeneratedField.UUID,
filename=doc["filename"],
page=page["page_number"],
text=chunk["text"],
embedding=chunk["embedding"],
)
- Process each image
We use CLIP to embed the image and collects the data, embedding and metadata filename, page_number.
with page["images"].row() as image:
image["embedding"] = image["data"].transform(clip_embed_image)
image_output.collect(
id=cocoindex.GeneratedField.UUID,
filename=doc["filename"],
page=page["page_number"],
image_data=image["data"],
embedding=image["embedding"],
)
When we collect image outputs, we also want to preserve relevant metadata alongside the embedding. For each image, we not only collect the image embedding and binary data, but also metadata such as the original file name and page number. This association makes it possible to trace embedded images back to their source document and page during retrieval or exploration.
Export to Qdrant
Finally we export the collected info to the target store
text_output.export(
"text_embeddings",
cocoindex.targets.Qdrant(
connection=qdrant_connection,
collection_name=QDRANT_COLLECTION_TEXT,
),
primary_key_fields=["id"],
)
image_output.export(
"image_embeddings",
cocoindex.targets.Qdrant(
connection=qdrant_connection,
collection_name=QDRANT_COLLECTION_IMAGE,
),
primary_key_fields=["id"],
)
🧭 Explore with CocoInsight (Free Beta)
Use CocoInsight to visually trace your data lineage and debug the flow.
It connects locally with zero data retention.
Start your local server:
cocoindex server -ci main
Then open the UI 👉 https://cocoindex.io/cocoinsight
💡 Why This Matters
Traditional document search only scratches the surface — it’s text-only and often brittle across document layouts. This flow gives you multimodal recall, meaning you can:
- Search PDFs by text or image similarity
- Retrieve related figures, diagrams, or captions
- Build next-generation retrieval systems across rich content formats
Compare with ColPali Vision Model (OCR Free)
We also had an example for ColPali
To compare two approaches:
|
Aspect |
ColPali Multi-Vector Image Grids |
Separate Text and Image Embeddings |
|---|---|---|
|
Input |
Whole page as an image grid (multi-vector patches) |
Text extracted via OCR + images processed separately |
|
Embedding |
Multi-vector patch-level embeddings preserving spatial context |
Independent text and image vectors |
|
Query Matching |
Late interaction between text token embeddings and image patches |
Separate embedding similarity / fusion |
|
Document Structure Handling |
Maintains layout and visual cues implicitly |
Layout structure inferred by heuristics |
|
OCR Dependence |
Minimal to none; model reads text visually |
Heavy dependence on OCR (for scanned PDF) and text extraction |
|
Use Case Strength |
Document-heavy, visual-rich formats |
General image and text data, simpler layouts |
|
Complexity |
Higher computational cost, more complex storage |
Simpler, fewer compute resources needed |
In essence, ColPali excels in deep, integrated vision-text understanding, ideal for visually complex documents, while splitting text and images for separate embeddings is more modular but prone to losing spatial and semantic cohesion. The choice depends on your document complexity, precision needs, and resource constraints.
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