PDF Table Extractor Comparison by Buyer Fit

This task compares PDF table extractors based on buyer fit, returning structured data relevant to decision-making.

Try for free
PDF Table Extractor / Docling Wrapper
PDF Table Extractor / Docling Wrapperzentrafoundry/pdf-table-docling-extractor
Opportunity Id
Title
Buyer Name
Deadline
+9 fields
Text
Number
Boolean
List
Object

Input

Tender Opportunity keywords:compare pdf table extractor / docling wrapper by buyer fit+1
Tender Opportunity task intent:compare-buyer-fit
Run sample or approved live sources(required):startUrls
Tender Opportunity output mode:buyer-ready-records
Approved Tender Opportunity source URLs
URL(required):https://docs.apify.com/platform/storage/dataset
Maximum Tender Opportunity rows:10
Maximum rows per source:25
Maximum total charge (USD):5
Overall timeout seconds:900
Source request timeout seconds:30
Maximum source retries:2
Only emit new logical records:false
Delta mode:true

Output fields

Opportunity Id
Title
Buyer Name
Deadline
Estimated Value
Currency
Source Url
Fit Score
Record id
Source name
Score
Confidence
Retrieved at

How it works

Sign up on Apify01

Create your Apify account to access the PDF Table Extractor / Docling Wrapper.

Start the run02

The Actor will start running based on the input automatically.

Receive the output03

Monitor the progress in real-time. You will be notified as soon as your dataset is complete and ready for review.

Integrate into your workflow04

The final output is delivered in JSON, CSV, or Excel format, ready to be plugged into your workflow.

Image

Integrate Actor directly into your workflow

Choose from one of 100+ integration options we provide or integrate via API

Webhook

Webhook

n8n

n8n

Make

Make

Zapier

Zapier

Airbyte

Airbyte

Keboola

Keboola

IFTTT

IFTTT

Hubspot

Hubspot

GDrive

GDrive

Gmail

Gmail

Apify MCP

Apify MCP

GitHub

GitHub

Slack

Slack

LangChain

LangChain

LlamaIndex

LlamaIndex

Flowise

Flowise

Pinecone

Pinecone

OpenAI

OpenAI

Mastra

Mastra

Clay

Clay