Split PDF Online - Free PDF Splitter Tool | Toolorium

Professional PDF Tools - Free & Secure

Split PDF Online

Extract or split PDF pages easily. Choose from multiple split options.

Click to upload or drag PDF file
Upload a single PDF file to split
Document: ( pages)

Choose Split Method:

Select Pages
Click to select specific pages to extract
Page Range
Specify a range of pages (e.g., 1-5)
Split Every N Pages
Split into multiple PDFs of N pages each
Extract All Pages
Extract each page as a separate PDF
Enter page numbers (e.g., 1-5, 2,4,6, or 3 for interval)
100% Secure
Files processed locally in your browser. No uploads to servers.
Lightning Fast
Split PDFs instantly with our optimized processing engine.
Multiple Options
Select pages, ranges, intervals, or extract all pages individually.
Mobile Friendly
Works perfectly on all devices - desktop, tablet, and mobile.

How to Split PDF Online

  1. Upload PDF: Click upload area or drag and drop your PDF file
  2. Choose Method: Select from 4 splitting options available
  3. Select Pages: Preview and select the pages you need
  4. Split PDF: Click Split button to process
  5. Download: Save your split PDF file

Frequently Asked Questions

Is it safe to split PDFs online?
Yes! All processing happens in your browser. Files never leave your device.
What's the maximum file size?
Depends on your device memory. Most devices handle up to 50-100 MB easily.
Does splitting affect quality?
No, splitting preserves 100% original quality with no compression.

Privacy Policy

Data Processing

All PDF processing occurs locally in your browser. We do not collect, store, or transmit any files or personal information.

Security

Your files never leave your device. Processing is done entirely client-side using JavaScript.

🔖
Bookmark your favorite tools to access them instantly whenever you need.
Professional Section Divider
Machine Learning in Everyday Applications - Toolorium Blog

Machine Learning in Everyday Applications: AI All Around Us

Published on October 17, 2024 • 6 min read
Machine Learning Applications

Machine learning has seamlessly integrated into our daily lives, powering the applications and services we use without even realizing it. From personalized recommendations on streaming platforms to voice assistants understanding our commands, ML algorithms are quietly working behind the scenes to enhance user experiences and solve complex problems in ways that feel almost magical.

Personalized Recommendations

Streaming services like Netflix and Spotify use sophisticated machine learning algorithms to analyze viewing and listening patterns, creating personalized recommendations that keep users engaged. These systems process billions of data points including user preferences, viewing time, ratings, and even the time of day content is consumed. E-commerce platforms like Amazon use similar technology to suggest products, with recommendation engines driving up to 35% of their revenue through increased sales.

Smart Photography and Image Processing

Modern smartphones employ machine learning for computational photography, automatically adjusting exposure, focus, and color balance to capture professional-quality photos. Portrait mode uses ML to distinguish subjects from backgrounds, while night mode combines multiple exposures using intelligent algorithms. Social media platforms use computer vision to automatically tag friends, detect inappropriate content, and enhance photo quality in real-time.

Natural Language Processing

Virtual assistants like Siri, Alexa, and Google Assistant rely on natural language processing to understand and respond to human speech. Email platforms use ML to filter spam, categorize messages, and suggest responses. Translation services like Google Translate employ neural networks to provide increasingly accurate real-time translations across dozens of languages, breaking down communication barriers worldwide.

Transportation and Navigation

Navigation apps like Google Maps and Waze use machine learning to predict traffic patterns, suggest optimal routes, and estimate arrival times with remarkable accuracy. These systems analyze historical traffic data, current conditions, accidents, and even weather patterns to provide real-time routing decisions. Ride-sharing platforms use ML for dynamic pricing, driver-passenger matching, and fraud detection to optimize their services.

Financial Services and Security

Banks employ machine learning for fraud detection, analyzing spending patterns to identify suspicious transactions within milliseconds. Credit scoring algorithms use ML to assess loan risks more accurately than traditional methods. Investment platforms use algorithmic trading and robo-advisors to manage portfolios automatically. Even mobile payment systems use ML for biometric authentication and transaction verification, making financial services more secure and accessible.

Professional Section Divider
Toolorium - Footer Component