Security Scan Report: collegefootballnews.com

Submitted: Oct 15, 2025, 6:15:34 PMCompleted: Oct 15, 2025, 6:16:13 PMpubliccompleted
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Summary

This website contacted 22 IPs in 2 countries across 4 domains to perform 10 HTTP transactions. The main domain is collegefootballnews.com and was registered NaN years ago.

Submitted URL: https://collegefootballnews.com/college-football/utep-vs-sam-houston-prediction-preview-2025

AI Security Verdict

Safe Website

Confidence: 95%

0
Risk Score

No security concerns identified; site appears legitimate.

Safety Factors
Well‑established domain age
No credential or payment collection forms
No malicious Indicators of Compromise detected
Domain age information unavailable

Details

Primary Scan Blocked — Fallback Capture Shown

The primary scanner could not load this page (possible bot protection). The screenshot and page details shown were captured by a fallback browser that loaded the page successfully.

Page Title

collegefootballnews.com

Scan Type

public

Language

🇺🇸

English

(80% confidence)

Category

unknown

(0%)

Domain Information

Within the commercial generic top-level domain (.com), 'collegefootballnews.com' is registered and has no subdomain. The second-level label 'collegefootballnews' is 19 characters long containing seven vowels alongside twelve consonants. Word splitting yields 3 words: college, football, news. Average segment length settles at 7 characters. 'college' most often appears in English. Secondary signals appear in Chinese (Pinyin) and Tagalog.

Screenshot

Security scan screenshot of https://collegefootballnews.com/college-football/utep-vs-sam-houston-prediction-preview-2025

Page Load Overview

3.07s
Total Load Time
10
HTTP Requests
4
Domains
34 KB
Total Size

Language Analysis

Primary Language

🇺🇸English
Code: en
Confidence:80%
Script:Latin
Direction:ltr

Detection Details

Language Code:en
Detection Confidence:80%
Script Type:Latin
HTML Lang Attribute:en
Text Length:23 chars
Detector Agreement:100%

Website Classification

Primary Category

unknown0% confidence
Type: static
Method: structural

All Detected Categories

No categories detected

Detected Features

No structural features detected

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
10151.101.130.98San Francisco, California, United States
AS54113FASTLY
013.32.99.128New York, New York, United States
AS16509AMAZON-02
0151.101.66.98San Francisco, California, United States
AS54113FASTLY
013.32.99.78New York, New York, United States
AS16509AMAZON-02
065.9.66.86United States
AS16509AMAZON-02
0151.101.194.98San Francisco, California, United States
AS54113FASTLY
03.78.137.250Frankfurt am Main, Hesse, Germany
AS16509AMAZON-02
02600:9000:2251:2a00:7:c516:5a80:93a1United States
AS16509AMAZON-02
02600:9000:2251:b400:7:c516:5a80:93a1United States
AS16509AMAZON-02
02600:9000:2251:4c00:7:c516:5a80:93a1United States
AS16509AMAZON-02
1022--

Detected Technologies2

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T1B531627E5F23926C1A6303A6B0A0F05C9215134933C0ECB5F494FA5AEE836F31882BD9

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

24:nwlvJHtV8doDblCZ5dNXtUmJuZ785yZqsl2RV3bJptUG1OE1MIozbRv5wts:nu1X8q05SmcdVZD2fJD1MIU+q

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:3:1465:AgEAAAAAAAAAABAAAQAAAAAAAAAAARIkABAAAQAgEAAAEAAgAAAAEAIABAAAAAIQCgAAAJgAAAQCAEAAAIAAAAAgAAIQAAAA

These hashes enable detection of similar websites and malware variants by comparing content similarity even when exact matches aren't found.

Image Hashes

Perceptual Hashes

Average Hash:ffe7ff0000cfffff
Perceptual Hash:b3c6cc3333cccc31
Difference Hash:0808001858180000
Wavelet Hash:0f07ff000000ffff
Color Hash:#a2e06c

Other Hashes

Crop Resistant:0808001858180000

Scan History

Scan history not available

Unable to load historical scan data