
ABUSE.MOM — 规矩点,否则你将被曝光
| 签名 | 描述 | 分数 | 严重性 |
|---|---|---|---|
| Danger medium hits: 4 | 中等风险:管理面板、配置文件 | +40 | |
| Burst: 58 req / 2s | 请求频率异常——自动扫描 | +35 | |
| Burst: 59 req / 10s | 请求频率异常——自动扫描 | +35 | |
| Foreign referer seen | 来自无关外部域名的Referer | +10 | |
| Burst: 43 req / 2s | 请求频率异常——自动扫描 | +35 | |
| Burst: 58 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161.115.233.33。
来自同一/24子网的其他被封锁IP——表明该网络范围存在系统性滥用。
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 |
| 6060 | Unknown | Low | Service on port 6060 |
| 12345 | Unknown | Low | Service on port 12345 |
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。
161.115.233.33 has been assigned a threat score of 120/100 (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:
地址161.115.233.33来源于Los Angeles, United States,运营在Server Mania Inc的网络中。它是通过对受监控端点的入站网络流量进行自动分析而被识别的。 在24天的时间内,此IP产生了2次恶意请求,平均每天约0.1次请求。 此地址属于数据中心或云托管提供商。托管IP经常被专门租用廉价VPS实例来进行攻击的威胁行为者利用。 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。 United States目前在我们的数据库中占183个被封锁IP,使其成为恶意流量的重要来源。 评分120/100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 belongs to a hosting or data center provider. Malicious traffic from hosting infrastructure often originates from compromised VPS instances, rented servers used for scanning campaigns, or abused free-tier cloud accounts. Hosting providers typically respond to abuse reports within 24-72 hours.
Insecure file upload functionality allows attackers to upload web shells, malware, or scripts that execute on the server. Proper validation must check file content, not just extensions, and uploaded files should be stored outside the web root.
Machine learning models analyze vast amounts of network traffic to identify attack patterns invisible to rule-based systems. Supervised models classify known attack types while unsupervised models detect anomalies that may indicate novel threats.