Security Scan Report: www.zumper.com

Redirected to: https://www.zumper.com/apartment-buildings/p584984/122-west-of-twin-peaks-san-francisco-ca

Submitted: Oct 9, 2025, 9:39:48 AMCompleted: Oct 9, 2025, 9:42:28 AMpubliccompleted
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Summary

This website contacted 252 IPs in 4 countries across 93 domains to perform 405 HTTP transactions. The main domain is zumper.com and was registered NaN years ago.

Submitted URL: https://www.zumper.com/apartment-buildings/p584984/122-west-of-twin-peaks-san-francisco-caundefined

Effective URL: https://www.zumper.com/apartment-buildings/p584984/122-west-of-twin-peaks-san-francisco-caRedirected

The Cisco Umbrella rank of the primary domain is #188,771 of the top 1 million websites

AI Security Verdict

Safe Website

Confidence: 95%

0
Risk Score

The site shows no security concerns and appears legitimate.

Safety Factors
Established domain age
Domain appears in Cisco Umbrella top 1M rankings
No suspicious forms or data collection
Domain age information unavailable

Details

Page Title

122 (725 Monterey) Apartments - 725 Monterey Blvd San Francisco CA | Zumper

Scan Type

public

Language

🇺🇸

English

(80% confidence)

Category

real estate property

(88%)

Domain Information

The domain 'www.zumper.com' uses the commercial generic top-level domain (.com), featuring subdomain 'www'. Its registrable label 'zumper' stretches across 6 characters with 2 vowels and four consonants. Splitting it apart reveals two words: zum, per. Average segment length settles at 3 characters. 'zum' most often appears in Italian. Secondary signals appear in Catalan and Albanian. Net impression: Italian phrase.

Screenshot

Security scan screenshot of https://www.zumper.com/apartment-buildings/p584984/122-west-of-twin-peaks-san-francisco-caundefined

Page Load Overview

73.20s
Total Load Time
405
HTTP Requests
93
Domains
3.7 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:19,345 chars
Detector Agreement:100%

Website Classification

Primary Category

real estate property88% confidence
Type: webapp
Method: ml+structural

All Detected Categories

real estate property
88%
adult content
61%
documentation technical
46%
government public service
40%
blog personal website
38%

Detected Features

Search
OG: article

Domain & IP Information

RequestsIP AddressLocationAS Autonomous System
15499.86.4.30United States
AS16509AMAZON-02
199.84.152.9United States
AS16509AMAZON-02
13.5.21.203United States
AS14618AMAZON-AES
118.245.86.68United States
AS16509AMAZON-02
1216.239.32.36United States
AS15169GOOGLE
13.5.0.121United States
AS14618AMAZON-AES
1108.138.3.93United States
AS16509AMAZON-02
118.244.17.160United States
AS16509AMAZON-02
1167.172.152.81North Bergen, New Jersey, United States
AS14061DIGITALOCEAN-ASN
199.84.152.116United States
AS16509AMAZON-02
405252--

Detected Technologies2

Content Similarity HashesFor malware variant detection

TLSH (Trend Micro Locality Sensitive Hash)

Security-focused

Specialized for malware detection and similarity analysis

T1F8943B706144217FA2074BF6B2B0B76EA15BA29FED53C488F3FC478167C2DD68D0169A

ssdeep (Context Triggered Piecewise Hashing)

Context-aware

Detects similar content even with modifications

6144:nwjyaOCv7SzkVWBzCpEJrmw9cxshTdxsVpPpjqKvNiVg8PHl2c4hk2v2mFzf/mTT:PX

sdhash (Similarity Digest Hashing)

High-precision

High-precision similarity detection for forensic analysis

sdhash:3:425888:IAwFAlJjKDqgAw2BSADCQECgRgCDADwJBITFATjgSTzGoCZGOBtpEBGgKAoKRM2mRADBtNAA2BkQAgWExlD8AQcaAoMQBIHR

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:ffff83838181fffd
Perceptual Hash:b8b4c36768903e6d
Difference Hash:a4183b3b2b2f0239
Wavelet Hash:f78f81818181fbd9
Color Hash:#53ac8d

Scan History

Scan history not available

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