
ABUSE.MOM — 规矩点,否则你将被曝光
| 签名 | 描述 | 分数 | 严重性 |
|---|---|---|---|
| Danger strong hits: 22 | 高风险路径:Webshell、RCE、漏洞利用 | +100 | |
| Danger medium hits: 2 | 中等风险:管理面板、配置文件 | +20 | |
| Burst: 13 req / 2s | 请求频率异常——自动扫描 | +35 | |
| Burst: 24 req / 10s | 请求频率异常——自动扫描 | +35 |
从服务器访问日志重建的HTTP请求。出于安全考虑,目标域名已隐藏。
* Typical request patterns for detected signatures. Actual target domains are redacted.
在nginx中实施limit_req_zone。部署具有DDoS防护的CDN。配置SYN cookies和连接跟踪以限制104.207.34.126。
来自Shodan的网络侦察数据。开放端口可能表示正在运行的服务、错误配置或潜在的攻击面。
| Port | Service | Risk | Description |
|---|---|---|---|
| 179 | Unknown | Low | Service on port 179 |
| 1080 | Unknown | Low | Service on port 1080 |
| 3128 | Unknown | Low | Service on port 3128 |
| 3129 | Unknown | Low | Service on port 3129 |
| 6060 | Unknown | Low | Service on port 6060 |
| 8081 | Unknown | Low | Service on port 8081 |
数据来源:Shodan InternetDB。独立于abuse.mom进行扫描。
该IP已通过全球邮件服务器和防火墙使用的主要DNS黑名单进行检查。
已检查:Spamhaus、SpamCop、Barracuda、SORBS、CBL、UCEProtect。
104.207.34.126 has been assigned a threat score of 190/100 (Critical). 如此高的分数标志着一个关键威胁行为者。该地址在多个检测向量上表现出持续的、激进的恶意行为。
The following attack categories were identified:
104.207.34.126注册在Ashburn, United States,运营在3xK Tech GmbH的网络中。该IP在触发多个行为检测签名后首次出现在我们的威胁源中。 我们的传感器在1天内捕获了来自此地址的1次恶意请求,反映出每天约1次的持续攻击节奏。 从住宅网络运营,此IP可能代表一个被入侵的家庭网关或已被招募到更大攻击基础设施中的IoT设备。 来自此IP的基于速率的攻击旨在通过大量请求洪水压垮服务器资源。 我们的记录显示来自United States的46个恶意IP,使其成为全球威胁活动的值得注意的贡献者。 威胁评分190/100,此IP属于我们数据库中最危险的地址之一。强烈建议立即完全封锁。
This IP is classified as residential, suggesting it may belong to a compromised home device, IoT botnet member, or an infected personal computer. Residential IPs involved in attacks often indicate malware infection without the owner's knowledge.
Modern attacks increasingly target APIs rather than traditional web interfaces. Attackers enumerate endpoints, test for broken authentication, and exploit excessive data exposure. API attacks are harder to detect as they mimic legitimate programmatic access patterns.
WAFs inspect HTTP traffic to block common attacks but require careful tuning. Overly aggressive rules cause false positives while permissive configurations miss attacks. Modern WAFs combine signature matching with behavioral analysis and machine learning.