Security Scan Report: kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid.nmrodam.com

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Submitted: Nov 26, 2025, 1:34:10 PMCompleted: Nov 26, 2025, 1:36:53 PMpubliccompleted
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Summary

This website contacted 12 IPs in 1 country across 1 domain to perform 2 HTTP transactions. The main domain is kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid.nmrodam.com.

Submitted URL: https://kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid.nmrodam.com/

The Cisco Umbrella rank of the primary domain is #17,326 of the top 1 million websites

AI Security Verdict

Safe Website

Confidence: 85%

0
Risk Score

No suspicious indicators detected; the site appears legitimate.

Safety Factors
Cisco Umbrella ranking within top 20,000 indicates high traffic and likely legitimate usage
No malicious Indicators of Compromise matches found
No forms collecting credentials or payment information
No brand impersonation or health‑related claims detected
Domain age information unavailable

Details

Page Title

kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid.nmrodam.com (1×1)

Scan Type

public

Language

🇵🇹

Portuguese

(50% confidence)

Category

news media journalism

(69%)

Domain Information

Domain 'kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid.nmrodam.com' uses the commercial generic top-level domain (.com) and includes subdomain 'kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid'. Count 7 characters in 'nmrodam' holding two vowels versus five consonants. Word splitting yields three words: nmr, o, dam. The median word length lands at three characters. No strong language cues emerged from the frequency lists.

Screenshot

Security scan screenshot of https://kpimyjr8cewxyvgm6jo06s9a1hhoa1760379067.uaid.nmrodam.com/

Page Load Overview

0.12s
Total Load Time
2
HTTP Requests
1
Domains
0 KB
Total Size

Language Analysis

Primary Language

🇵🇹Portuguese
Code: pt
Confidence:50%
Script:Latin
Direction:ltr

Detection Details

Language Code:pt
Detection Confidence:50%
Script Type:Latin
Text Length:62 chars
Detector Agreement:100%

Website Classification

Primary Category

news media journalism69% confidence
Type: static
Method: ml+structural

All Detected Categories

news media journalism
69%
healthcare medical
69%
cryptocurrency blockchain
66%
e-commerce shopping
63%
real estate property
59%

Detected Features

No structural features detected

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
265.9.175.88United States
AS16509AMAZON-02
265.9.175.89United States
AS16509AMAZON-02
02600:9000:2096:c800:1d:667e:2a40:93a1United States
AS16509AMAZON-02
02600:9000:2096:1c00:1d:667e:2a40:93a1United States
AS16509AMAZON-02
065.9.175.13United States
AS16509AMAZON-02
02600:9000:2096:8a00:1d:667e:2a40:93a1United States
AS16509AMAZON-02
02600:9000:2096:0:1d:667e:2a40:93a1United States
AS16509AMAZON-02
02600:9000:2096:d200:1d:667e:2a40:93a1United States
AS16509AMAZON-02
02600:9000:2096:ac00:1d:667e:2a40:93a1United States
AS16509AMAZON-02
02600:9000:2096:4e00:1d:667e:2a40:93a1United States
AS16509AMAZON-02
212--

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T12BF0D412C1833F4CFA1340AD9CE8711815F9C0101B8D7A26B374B1A371DD46054710DD

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

6:q/o0H/fAbploUWZZc6jdVIFGFKkX96v6Oq5Ss/0KZGbRadUqYYl91fqMLeTPFTRo:3uAYUh6BVxF3kvEZ//B1fqMWyn6BVxa

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:1:0:13d27773aab8020c729d8014e66b888e

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:0000000000000000
Perceptual Hash:8000000000000000
Difference Hash:0000000000000000
Wavelet Hash:f0f0f8f83c3c3030
Color Hash:#e06c9e

Other Hashes

Crop Resistant:0000000000000000

Scan History

Scan history not available

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