Security Scan Report: 3dvf.com

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Submitted: Oct 16, 2025, 1:33:53 PMCompleted: Oct 16, 2025, 1:37:28 PMpubliccompleted
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Summary

This website contacted 171 IPs in 4 countries across 35 domains to perform 261 HTTP transactions. The main domain is 3dvf.com and was registered NaN years ago.

Submitted URL: https://3dvf.com/en/monster-the-netflix-series-on-ed-gein-unravels-fact-from-fiction-between-chilling-voices-and-links-to-ted-bundy/

AI Security Verdict

Safe Website

Confidence: 78%

2
Risk Score

Site likely a legitimate news article, but brand impersonation raises minor concerns.

Risk Factors
Brand impersonation/typosquatting detected (Netflix branding on non‑Netflix domain)
Safety Factors
Domain age of 9313 days (well‑established)
No forms collecting sensitive data
No malicious Indicators of Compromise
Domain age information unavailable

Details

Page Title

Monster: The Netflix Series on Ed Gein Unravels Fact from Fiction Between Chilling Voices and Links to Ted Bundy - 3DVF

Scan Type

public

Language

🇺🇸

English

(100% confidence)

Category

entertainment media

(80%)

Domain Information

The domain '3dvf.com' uses the commercial generic top-level domain (.com) and has no subdomain. Its registrable label '3dvf' stretches across 4 characters with 0 vowels and three consonants; it also includes one digit. Tokenizing the label suggests three words: 3, d, vf. Average segment length settles at one character. Most frequently, 'd' shows up in Catalan. You may catch it in Breton and French as well. Taken together, it feels Catalan with character flair.

Screenshot

Security scan screenshot of https://3dvf.com/en/monster-the-netflix-series-on-ed-gein-unravels-fact-from-fiction-between-chilling-voices-and-links-to-ted-bundy/

Page Load Overview

0.16s
Total Load Time
261
HTTP Requests
35
Domains
2.7 MB
Total Size

Language Analysis

Primary Language

🇺🇸English
Code: en
Confidence:100%
Script:Latin
Direction:ltr

Detection Details

Language Code:en
Detection Confidence:100%
Script Type:Latin
HTML Lang Attribute:en-US
Text Length:71,142 chars
Detector Agreement:100%

Website Classification

Primary Category

entertainment media80% confidence
Type: static
Method: ml+structural

All Detected Categories

entertainment media
80%
government public service
75%
social media network
62%
news media journalism
58%
adult content
55%

Detected Features

Search
OG: article

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
161162.159.137.54United States
AS13335CLOUDFLARENET
91142.250.181.238United States
AS15169GOOGLE
17172.66.162.81United States
AS13335CLOUDFLARENET
8142.250.184.206United States
AS15169GOOGLE
5142.250.186.174United States
AS15169GOOGLE
4142.250.184.194United States
AS15169GOOGLE
4172.67.149.20United States
AS13335CLOUDFLARENET
3142.250.185.195United States
AS15169GOOGLE
3213.239.211.175Nuremberg, Bavaria, Germany
AS24940Hetzner Online GmbH
2104.26.6.108United States
AS13335CLOUDFLARENET
261171--

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T1D1B49331F840293F673F05C8E64A970E71D6A31FF4990850D5E647288AF9E78F52E2A7

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

1536:2UOvpEWAptBpesPNZScxdvyDQIkSxnHXnhVaD1z933hiaqfXFG0XIn9tUermutev:2UOv0pIsPNdvkmhixc78rA3M

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:3:500275:EoCaw0AAQCMQEhrCCUGAhpATNSA1kxNJB0IesSA8IKIQUrEARMHIMQQjNDhCilUoSCwRoIcAtCUAIEepAYJAIAQQgBKMiAkh

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:00181c3c18180000
Perceptual Hash:9cc1364963679c7c
Difference Hash:0933323233332b2d
Wavelet Hash:009f9fbd99998187
Color Hash:#d22d9e

Other Hashes

Scan History

Scan history not available

Unable to load historical scan data