Security Scan Report: insmoksitus-dpn3hanzk477.edgeone.app

Site favicon
Submitted: Jun 22, 2026, 9:13:26 PMCompleted: Jun 22, 2026, 9:14:34 PMpubliccompleted
Loading additional data...

Summary

This website contacted 5 IPs in 3 countries across 5 domains to perform 2 HTTP transactions. The main domain is insmoksitus-dpn3hanzk477.edgeone.app and was registered NaN years ago.

Submitted URL: https://insmoksitus-dpn3hanzk477.edgeone.app/alexander-james-richard-sinclair.html

The Cisco Umbrella rank of the primary domain is #455,732 of the top 1 million websites

AI Security Verdict

Low Risk

Confidence: 72%

3
Risk Score

Moderate risk site; lacks credential collection but low reputation and heuristic phishing flag warrant caution.

Risk Factors
Unranked/low‑reputation domain
Unknown subdomain age on a hosting platform
Heuristic phishing label from content analyzer
Safety Factors
No forms collecting credentials or payment data
No malicious JavaScript or YARA matches
No network IDS alerts or credential exfiltration observed
Verdict cited a credential/login form, but DOM analysis found no password field (real or disguised) or payment field, and no other hard signal — credential-phishing framing unsupported; risk adjusted from 5 to 3
Domain age information unavailable

Details

Page Title

Alexander James Richard Sinclair: A Profile of a Rising Talent in the Arts

Scan Type

public

Language

🇺🇸

English

(80% confidence)

Category

phishing scam

(66%)

Domain Information

The domain name 'insmoksitus-dpn3hanzk477.edgeone.app' uses the application-focused generic top-level domain (.app), featuring subdomain 'insmoksitus-dpn3hanzk477'. The core label 'edgeone' covers 7 characters holding four vowels versus 3 consonants. Segmentation suggests 2 words: edge, one. Expect 3.5 characters per word on average. No strong language cues emerged from the frequency lists.

Screenshot

Security scan screenshot of https://insmoksitus-dpn3hanzk477.edgeone.app/alexander-james-richard-sinclair.html

Page Load Overview

2.11s
Total Load Time
13
HTTP Requests
10
Domains
154 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-US
Text Length:2,880 chars
Detector Agreement:100%

Website Classification

Primary Category

phishing scam66% confidence
Type: dynamic
Method: ml+structural

All Detected Categories

phishing scam
66%
documentation technical
64%
entertainment media
55%
blog personal website
52%
technology software
49%

Detected Features

OG: article
Schema.org

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
5185.183.35.234Naaldwijk, South Holland, Netherlands
AS49981WorldStream B.V.
243.152.26.58Singapore
2142.250.154.95United States
AS15169Google LLC
2172.240.108.84United States
AS7979Servers.com, Inc.
2104.21.0.120United States
AS13335Cloudflare, Inc.
135--

Detected Technologies2

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T15F62FA53ADC15238B7724659A493B2FD792C802AE3478CF075ECB334DBC26D798B4A49

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

384:SGIhnYf8zX+khl678auSBJJd60/oC6Uag49Uc0:RIhnz+khW8UBJWRC6Uag4mV

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:3:15229:ADXDUQjCGVkjEarkQUoPGuAAQRggSEmCNCAQAgigkDAGyIQ0AgYegUxCAucwCAMA4gU4OlQBEgwqHjOQpDOmciAUqRKRBiTE

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:197800013d217d7f
Perceptual Hash:8a7dc1499c3d3c2e
Difference Hash:f1c10121c9c1c1cd
Wavelet Hash:197901017d617d7f
Color Hash:#783a5b

Other Hashes

Crop Resistant:f1c10121c9c1c1cc

Scan History

Scan history not available

Unable to load historical scan data