
ABUSE.MOM — 规矩点,否则你将被曝光
| 签名 | 描述 | 分数 | 严重性 |
|---|---|---|---|
| UA changed for same IP | 多个User-Agent——机器人轮换技术 | +25 | |
| Danger strong hits: 2 | 高风险路径:Webshell、RCE、漏洞利用 | +50 | |
| Danger medium hits: 1 | 中等风险:管理面板、配置文件 | +10 | |
| 404 ratio 40-60% | 大多数请求返回404——目录枚举 | +15 |
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.
IP 38.246.32.67显示可疑的UA行为。阻止空User-Agent请求。为敏感端点实施基于JavaScript的机器人检测。
IP 38.246.32.67正在枚举目录。在10次以上404错误后配置fail2ban apache-404 jail。禁用目录列表。
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 |
|---|---|---|---|
| 22 | SSH | Low | Secure Shell — common brute force target for remote access |
| 443 | HTTPS | Low | HTTPS web server — encrypted web traffic |
| 500 | Unknown | Low | Service on port 500 |
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。
38.246.32.67 has been assigned a threat score of 100/100 (Critical). 这将其归入严重威胁类别。强烈建议在所有网络边界立即进行封锁。
The following attack categories were identified:
威胁情报分析将38.246.32.67与来自Frankfurt am Main, Germany,运营在Limestone Networks, Inc.的网络中的恶意活动相关联。该地址自首次检测以来一直处于观察状态。 在其1天的观察窗口期间,我们记录了来自此IP的2次敌对请求——平均每天约2次。 该地址被归类为住宅,意味着它可能属于终端用户ISP连接。来自住宅IP的恶意活动通常表明设备已被入侵或属于僵尸网络。 识别出两种攻击模式(User-Agent Anomaly和Path Enumeration),表明这是一个针对多个漏洞的半自动化攻击活动。 评分100/100将此地址置于最高严重性级别。应封锁并调查任何历史连接。
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.
Examining HTTP headers beyond User-Agent reveals attack tools and automated scripts. Missing standard headers, unusual ordering, non-standard values, and inconsistencies with claimed client identity all serve as reliable detection signals.
Advanced techniques enable threat detection while minimizing privacy impact. Encrypted DNS, differential privacy in analytics, and federated learning for threat models allow effective security monitoring without unnecessary surveillance of legitimate user behavior.