Security Scan Report: d1liekpayvooaz.cloudfront.net

Redirected to: https://www.theshoppad.com/

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Submitted: Nov 25, 2025, 2:55:13 AMCompleted: Nov 25, 2025, 2:56:47 AMpubliccompleted
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Summary

This website contacted 27 IPs in 3 countries across 9 domains to perform 77 HTTP transactions. The main domain is theshoppad.com and was registered NaN years ago.

Submitted URL: https://d1liekpayvooaz.cloudfront.net/

Effective URL: https://www.theshoppad.com/Redirected

AI Security Verdict

Low Risk

Confidence: 85%

2
Risk Score

Redirect from a cloud storage CDN to a legitimate site; low risk but monitor for abuse.

Risk Factors
Use of a cloud storage CDN subdomain for redirect (potential obfuscation)
UNRANKED domain status in Cisco Umbrella
Safety Factors
Domain age is over 13 years (well‑established)
No malicious Indicators of Compromise matches found
Final destination is a legitimate‑looking domain with matching branding
No credential or payment collection forms present
Domain age information unavailable

Details

Page Title

ShopPad | Shopify eCommerce Solutions

Scan Type

public

Language

🇺🇸

English

(80% confidence)

Category

social media network

(76%)

Domain Information

The domain name 'd1liekpayvooaz.cloudfront.net' uses the network infrastructure generic top-level domain (.net); it also runs on subdomain 'd1liekpayvooaz'. The registrable portion 'cloudfront' spans 10 characters with 3 vowels and seven consonants. Splitting it apart reveals 2 words: cloud, front. Expect 5 characters per word on average. No strong language cues emerged from the frequency lists.

Screenshot

Security scan screenshot of https://d1liekpayvooaz.cloudfront.net/

Page Load Overview

1.73s
Total Load Time
77
HTTP Requests
9
Domains
1.0 MB
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:1,454 chars
Detector Agreement:100%

Website Classification

Primary Category

social media network76% confidence
Type: dynamic
Method: ml+structural

All Detected Categories

social media network
76%
e-commerce shopping
50%
technology software
47%
documentation technical
25%
corporate
25%

Detected Features

OG: website

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
5744.205.46.221Ashburn, Virginia, United States
AS14618AMAZON-AES
592.123.106.11Rome, Lazio, Italy
AS6762TELECOM ITALIA SPARKLE S.p.A.
5157.240.0.35Frankfurt am Main, Hesse, Germany
AS32934FACEBOOK
3157.240.0.6Frankfurt am Main, Hesse, Germany
AS32934FACEBOOK
2142.250.186.142United States
AS15169GOOGLE
2184.24.77.156Frankfurt am Main, Hesse, Germany
AS20940Akamai International B.V.
2184.24.77.144Frankfurt am Main, Hesse, Germany
AS20940Akamai International B.V.
218.66.107.213United StatesUnknown
2216.58.212.136United States
AS15169GOOGLE
23.208.110.214Ashburn, Virginia, United States
AS14618AMAZON-AES
7727--

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T156C2BB3251F710AF10C7DE8766362A7A2F91DA07EA4A854077BD4BF51F82DA3CC23459

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

192:4/O02OOD/GIFJ6iJgL1dD4SjKe19qhSGNOd6qBNn9bV57eSIPy9C++CQ:4/O02OOD/GliKN6kdPzbV5HIK9ICQ

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:3:26788:Cj2ClgiIAuAESIhQXAVcIQsEsChODHhFiOCQQAU6RYoR8QMWKgAGCg9fJDAgIQxGRFhIEWAbYlD6hK0YBBVACJIUAZASuEZW

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:183c3c003c3c0000
Perceptual Hash:8afc6c92386c9e93
Difference Hash:356969716969d349
Wavelet Hash:d97d3d013d3d3901
Color Hash:#a8c587

Scan History

Scan history not available

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