Security Scan Report: nid-naver-mail-nidlogin-login1-aqapoyhcysyazxzutpwahthv.pages.dev

Redirected to:
https://help.naver.com/service/5640/category/bookmark?lang=ko
Submitted: Apr 10, 2026, 4:22:15 AMCompleted: Apr 10, 2026, 4:23:35 AMpubliccompleted
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Summary

This website contacted 9 IPs in 3 countries across 10 domains to perform 97 HTTP transactions. The main domain is help.naver.com and was registered NaN years ago.

Submitted URL: https://nid-naver-mail-nidlogin-login1-aqapoyhcysyazxzutpwahthv.pages.dev/

Effective URL: https://help.naver.com/service/5640/category/bookmark?lang=koRedirected

AI Security Verdict

Safe Website

Confidence: 92%

1
Risk Score

The page redirects to the legitimate Naver help site and shows no malicious activity.

Safety Factors
Redirect leads to official Naver help domain
Meta tags correctly describe Naver customer support
Zero forms collecting sensitive data
No suspicious JavaScript behavior
Domain age information unavailable

Details

Page Title

회원정보 고객센터

Scan Type

public

Language

🇰🇷

Korean

(80% confidence)

Category

technology software

(77%)

Domain Information

The domain name 'nid-naver-mail-nidlogin-login1-aqapoyhcysyazxzutpwahthv.pages.dev' uses the developer-focused generic top-level domain (.dev), featuring subdomain 'nid-naver-mail-nidlogin-login1-aqapoyhcysyazxzutpwahthv'. The registrable portion 'pages' spans 5 characters holding 2 vowels versus three consonants. Splitting it apart reveals 1 word: pages. Average segment length settles at 5 characters. No strong language cues emerged from the frequency lists.

Screenshot

Security scan screenshot of https://nid-naver-mail-nidlogin-login1-aqapoyhcysyazxzutpwahthv.pages.dev/

Page Load Overview

4.58s
Total Load Time
79
HTTP Requests
9
Domains
387 KB
Total Size

Language Analysis

Primary Language

🇰🇷Korean
Code: ko
Confidence:80%
Script:Hangul
Direction:ltr

Detection Details

Language Code:ko
Detection Confidence:80%
Script Type:Hangul
HTML Lang Attribute:ko
Text Length:2,383 chars
Detector Agreement:100%

Website Classification

Primary Category

technology software77% confidence
Type: spa
Method: ml+structural

All Detected Categories

technology software
77%
social media network
62%
corporate business
51%
documentation technical
43%
government public service
30%

Detected Features

Search

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
152.23.245.18Frankfurt am Main, Hesse, Germany
AS16625Akamai Technologies, Inc.
8203.104.162.225Germany
AS23576NAVER Cloud Corp.
8125.209.233.25South Korea
AS23576NAVER Cloud Corp.
8125.209.233.17South Korea
AS23576NAVER Cloud Corp.
823.55.161.78Frankfurt am Main, Hesse, Germany
AS20940Akamai International B.V.
823.52.180.223Frankfurt am Main, Hesse, Germany
AS16625Akamai Technologies, Inc.
8188.114.97.3United States
AS13335Cloudflare, Inc.
8202.179.180.81UnknownUnknown
823.48.23.19UnknownUnknown
799--

Detected Technologies3

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T10E64077AF698947FB17745746DC3A69C7218C0428A172EBAFFDD9F1CD2C3C8A021A905

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

6144:OcXcA1Hna8lDnGYT35CtIZVxLCkuQQE2t3SrDvxqR6nBleqxE8UshONShNCx9XEs:/cAV1lDnGYT35CtIZVxLCkuQQE2t3SrE

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:3:334664:ERBIRwhBoGQ4uFMnQhgSWmWUyUMQAcAUiAAs+gERqyBgkAOQJriDQBiwkwiRaKLAEwshAwBigZQgFIKQgMHLdGAnTpQwLLQq

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:0000ffffffffffff
Perceptual Hash:9d0a0222f5a7fdc9
Difference Hash:09f1322c20222222
Wavelet Hash:000000bebebfbfbe
Color Hash:#ac9653

Other Hashes

Crop Resistant:09f1322c20222222

Scan History

Scan history not available

Unable to load historical scan data