108.61.86.44 Threat Intelligence and Host Information

General

IP Address
108.61.86.44
IPv4 Address
Location
🇺🇸 Brooklyn, United States
US
Network
AS20473
AS-CHOOPA
Threat Score
27/100
Low Risk
portscanscannersvultr
Attack Intelligence
Open Ports Detected
22
Geographic Location
Country
United States
City
Brooklyn
Region
New York
Coordinates
40.6368, -74.0005
Network Information
ASN
AS20473
Organization
AS-CHOOPA
Network
AS20473 AS-CHOOPA
WHOIS Information
NetRange
108.61.86.0 - 108.61.87.255
CIDR
108.61.86.0/23
NetName
NET-108-61-86-0-23
NetHandle
NET-108-61-86-0-1
Parent
CONSTANT (NET-108-61-0-0-1)
NetType
Reassigned
OriginAS
Organization
Vultr Holdings, LLC (VHL-78)
RegDate
2015-03-16
Updated
2024-04-04
Comment
http://www.constant.com/
Ref
https://rdap.arin.net/registry/entity/VHL-78
OrgName
Vultr Holdings, LLC
OrgId
VHL-78
Address
101 Possumtown Road
City
Piscataway
StateProv
NJ
PostalCode
08854
Country
US
OrgTechHandle
VULTR-ARIN
OrgTechName
Vultr Abuse
OrgTechPhone
+1-973-849-0500
OrgTechEmail
abuse@vultr.com
OrgTechRef
https://rdap.arin.net/registry/entity/VULTR-ARIN

  • Country: United States
  • Network:
  • Noticed: 1 times
  • Protocols Attacked: SSH

CVEs Detected

CVE-2007-2243 CVE-2007-2768 CVE-2008-3844 CVE-2016-10009 CVE-2016-20012 CVE-2019-16905 CVE-2020-14145 CVE-2020-15778 CVE-2021-36368 CVE-2021-41617 CVE-2023-38408 CVE-2023-48795 CVE-2023-51385 CVE-2023-51767 CVE-2025-26465 CVE-2025-32728 CVE-2026-35414

Similar IP Addresses Detected

108.61.142.191 108.61.150.88 108.61.187.78 108.61.188.55 108.61.196.77 108.61.203.11 108.61.224.41 108.61.75.47 108.61.81.127 108.61.85.168

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Disclaimer
This page contains threat intelligence information for the IPv4 address 108.61.86.44 and was generated either as a result of observed malicious activity or as an information gathering exercise to assist with enrichment of security events and context. All information is gathered passively through aggregation of public sources, or observations through activity upon honeynets. The host score is calculated through a series of statistically weighted values and machine learning which takes into account metadata such as host information, frequency, volume and global distribution of malicious activity, association with other known malicious hosts or networks, proxying or anonymising behaviour such as with tor exit nodes, residential proxies or VPN services, and many other attributes. These values are historical and indicative only - and should not be taken to be an accurate representation of the users, businesses or networks in which they reside.