Dashboard
Welcome back! Here's what's happening with your academic integrity checks.
Total Documents
1,247
Authentic
1,156
Plagiarized
91
Accuracy Rate
99.2%
Document Analysis Overview
Weekly Uploads
Recent Scans
| Document | Status | Similarity | Date |
|---|---|---|---|
|
Research Paper - AI Ethics
|
Authentic | 2.3% | 2 hours ago |
|
Thesis - Quantum Computing
|
Review | 7.8% | 5 hours ago |
|
Essay - Climate Change
|
Flagged | 18.5% | 1 day ago |
Upload Document
Upload your academic documents for authenticity verification.
Document Upload
Click to upload or drag and drop
PDF, DOC, DOCX up to 10MB
Security Features
- End-to-end encryption
- No data retention after 30 days
- GDPR compliant
Upload Guidelines
- • Maximum file size: 10MB
- • Supported formats: PDF, DOC, DOCX
- • Files are encrypted during transfer
- • Results available within minutes
Quick Actions
Scan Results
View detailed analysis of your document authenticity checks.
Document Analysis Results
AuthenticDocument Details
Title: Advanced Machine Learning in Healthcare
Author: Dr. Sarah Johnson
Institution: Stanford University
Upload Date: March 15, 2024
Overall Similarity Score
2.3%Very low similarity detected
Sources Checked
Academic Databases
15,247,891 sources
Web Content
2,847,392 pages
Key Findings
- • No direct plagiarism detected
- • 3 minor citations need formatting
- • 1 potential paraphrasing issue (0.8%)
- • All references properly cited
Detailed Report
| Source | Similarity | Type | Action |
|---|---|---|---|
|
Journal of Medical AI 2023, Vol. 45 |
0.8% | Citation | View Details |
|
Stanford Research Archive 2023, Thesis #1247 |
0.5% | Reference | View Details |
|
Nature Medicine 2023, Article #847 |
0.3% | Reference | View Details |
Quick Actions
Authenticity Certificate
Certificate ID: CERT-2024-0315-001
Valid until March 15, 2025
Research Environment
Your document was analyzed against 18+ million academic sources
Analysis Stats
Research Library
Access to premium academic databases included
Quality Assurance
Triple-verified results with human oversight
Reports
Generate and manage comprehensive academic integrity reports.
Recent Reports
| Report Name | Documents | Date | Status | Actions |
|---|---|---|---|---|
|
Q1 2024 Institutional Report
Comprehensive analysis of all submissions
|
1,247 | Mar 15, 2024 | Completed | |
|
Thesis Batch Analysis
Graduate student submissions
|
89 | Mar 12, 2024 | Completed | |
|
Weekly Scan Summary
Automated weekly report
|
234 | Mar 10, 2024 | Processing | |
|
Research Paper Analysis
Faculty publications
|
67 | Mar 8, 2024 | Failed |
Report Distribution
Monthly Reports
Quick Actions
Report Templates
Institutional Report
Comprehensive analysis for institutions
Individual Report
Personal document analysis
Batch Report
Multiple documents analysis
Statistics
Report Analysis
Advanced analytics for comprehensive reporting
Study Insights
Trends and patterns in academic integrity
Text Analysis
Deep linguistic analysis for accurate detection
Analytics
Deep insights into academic integrity trends and performance metrics.
Total Analyses
2,847
Accuracy Rate
99.7%
Trend Score
8.5
Processing Time
2.3 min
Real-time Analytics
Performance Metrics
Processing Accuracy
System Uptime
Trend Analysis
Geographic Distribution
User Behavior
Detailed Performance
Accuracy Over Time
User Engagement
Engagement Metrics
Insights & Recommendations
Key Insights
- • 97.8% accuracy rate maintained across all submissions
- • 2.3% average processing time improvement month-over-month
- • 89% of submissions processed within 5 minutes
- • 0.5% false positive rate in last quarter
Recommendations
- • Implement advanced AI models for 0.3% improvement
- • Expand multilingual support for broader reach
- • Enhance real-time processing capabilities
- • Improve batch processing efficiency by 15%
User Management
Total Users
1,247
+8% from last month
Active Users
342
+8% from last month
User Dashboard
Recent Activities
User John Doe
Uploaded thesis_draft_v2.pdf
2 hours ago
User Jane Doe
Updated profile information
1 day ago
Quick Actions
Settings
Security Settings
Security Tips
- • Use strong passwords
- • Enable 2FA for extra protection
- • Regularly update settings
Status Indicators
Quick Actions
Notification Preferences
Email Notifications
Receive email alerts for scan results
Push Notifications
Get real-time browser notifications
Weekly Reports
Receive summary reports every Monday
Help
Getting Started
Learn the basics of using our plagiarism detection system
Upload Documents
Step-by-step guide for uploading and scanning documents
Understanding Results
How to interpret scan results and similarity scores
Frequently Asked Questions
Our system achieves 99.7% accuracy with comprehensive database coverage.
PDF, DOCX, TXT, and RTF files up to 10MB are supported.
All documents are encrypted and automatically deleted after processing.