shell bypass 403

GrazzMean-Shell Shell

: /proc/19/ [ dr-xr-xr-x ]
Uname: Linux wputd 5.4.0-200-generic #220-Ubuntu SMP Fri Sep 27 13:19:16 UTC 2024 x86_64
Software: Apache/2.4.41 (Ubuntu)
PHP version: 7.4.3-4ubuntu2.24 [ PHP INFO ] PHP os: Linux
Server Ip: 158.69.144.88
Your Ip: 3.145.10.9
User: www-data (33) | Group: www-data (33)
Safe Mode: OFF
Disable Function:
pcntl_alarm,pcntl_fork,pcntl_waitpid,pcntl_wait,pcntl_wifexited,pcntl_wifstopped,pcntl_wifsignaled,pcntl_wifcontinued,pcntl_wexitstatus,pcntl_wtermsig,pcntl_wstopsig,pcntl_signal,pcntl_signal_get_handler,pcntl_signal_dispatch,pcntl_get_last_error,pcntl_strerror,pcntl_sigprocmask,pcntl_sigwaitinfo,pcntl_sigtimedwait,pcntl_exec,pcntl_getpriority,pcntl_setpriority,pcntl_async_signals,pcntl_unshare,

name : mountinfo
25 30 0:23 / /sys rw,nosuid,nodev,noexec,relatime shared:7 - sysfs sysfs rw
26 30 0:5 / /proc rw,nosuid,nodev,noexec,relatime shared:15 - proc proc rw
27 30 0:6 / /dev rw,nosuid,noexec,relatime shared:2 - devtmpfs udev rw,size=898756k,nr_inodes=224689,mode=755
28 27 0:24 / /dev/pts rw,nosuid,noexec,relatime shared:3 - devpts devpts rw,gid=5,mode=620,ptmxmode=000
29 30 0:25 / /run rw,nosuid,nodev,noexec,relatime shared:5 - tmpfs tmpfs rw,size=189108k,mode=755
30 1 253:0 / / rw,relatime shared:1 - ext4 /dev/mapper/ubuntu--vg-ubuntu--lv rw
31 25 0:7 / /sys/kernel/security rw,nosuid,nodev,noexec,relatime shared:8 - securityfs securityfs rw
32 27 0:26 / /dev/shm rw,nosuid,nodev shared:4 - tmpfs tmpfs rw
33 29 0:27 / /run/lock rw,nosuid,nodev,noexec,relatime shared:6 - tmpfs tmpfs rw,size=5120k
34 25 0:28 / /sys/fs/cgroup ro,nosuid,nodev,noexec shared:9 - tmpfs tmpfs ro,mode=755
35 34 0:29 / /sys/fs/cgroup/unified rw,nosuid,nodev,noexec,relatime shared:10 - cgroup2 cgroup2 rw,nsdelegate
36 34 0:30 / /sys/fs/cgroup/systemd rw,nosuid,nodev,noexec,relatime shared:11 - cgroup cgroup rw,xattr,name=systemd
37 25 0:31 / /sys/fs/pstore rw,nosuid,nodev,noexec,relatime shared:12 - pstore pstore rw
38 25 0:32 / /sys/firmware/efi/efivars rw,nosuid,nodev,noexec,relatime shared:13 - efivarfs efivarfs rw
39 25 0:33 / /sys/fs/bpf rw,nosuid,nodev,noexec,relatime shared:14 - bpf none rw,mode=700
40 34 0:34 / /sys/fs/cgroup/rdma rw,nosuid,nodev,noexec,relatime shared:16 - cgroup cgroup rw,rdma
41 34 0:35 / /sys/fs/cgroup/memory rw,nosuid,nodev,noexec,relatime shared:17 - cgroup cgroup rw,memory
42 34 0:36 / /sys/fs/cgroup/cpu,cpuacct rw,nosuid,nodev,noexec,relatime shared:18 - cgroup cgroup rw,cpu,cpuacct
43 34 0:37 / /sys/fs/cgroup/cpuset rw,nosuid,nodev,noexec,relatime shared:19 - cgroup cgroup rw,cpuset
44 34 0:38 / /sys/fs/cgroup/perf_event rw,nosuid,nodev,noexec,relatime shared:20 - cgroup cgroup rw,perf_event
45 34 0:39 / /sys/fs/cgroup/pids rw,nosuid,nodev,noexec,relatime shared:21 - cgroup cgroup rw,pids
46 34 0:40 / /sys/fs/cgroup/blkio rw,nosuid,nodev,noexec,relatime shared:22 - cgroup cgroup rw,blkio
47 34 0:41 / /sys/fs/cgroup/hugetlb rw,nosuid,nodev,noexec,relatime shared:23 - cgroup cgroup rw,hugetlb
48 34 0:42 / /sys/fs/cgroup/net_cls,net_prio rw,nosuid,nodev,noexec,relatime shared:24 - cgroup cgroup rw,net_cls,net_prio
49 34 0:43 / /sys/fs/cgroup/freezer rw,nosuid,nodev,noexec,relatime shared:25 - cgroup cgroup rw,freezer
50 34 0:44 / /sys/fs/cgroup/devices rw,nosuid,nodev,noexec,relatime shared:26 - cgroup cgroup rw,devices
51 26 0:45 / /proc/sys/fs/binfmt_misc rw,relatime shared:27 - autofs systemd-1 rw,fd=28,pgrp=1,timeout=0,minproto=5,maxproto=5,direct,pipe_ino=35502
52 27 0:21 / /dev/mqueue rw,nosuid,nodev,noexec,relatime shared:28 - mqueue mqueue rw
53 27 0:46 / /dev/hugepages rw,relatime shared:29 - hugetlbfs hugetlbfs rw,pagesize=2M
54 25 0:8 / /sys/kernel/debug rw,nosuid,nodev,noexec,relatime shared:30 - debugfs debugfs rw
55 25 0:12 / /sys/kernel/tracing rw,nosuid,nodev,noexec,relatime shared:31 - tracefs tracefs rw
56 25 0:47 / /sys/fs/fuse/connections rw,nosuid,nodev,noexec,relatime shared:32 - fusectl fusectl rw
57 25 0:22 / /sys/kernel/config rw,nosuid,nodev,noexec,relatime shared:33 - configfs configfs rw
265 51 0:48 / /proc/sys/fs/binfmt_misc rw,nosuid,nodev,noexec,relatime shared:69 - binfmt_misc binfmt_misc rw
127 30 7:0 / /snap/core20/2434 ro,nodev,relatime shared:71 - squashfs /dev/loop0 ro
130 30 7:1 / /snap/core20/2379 ro,nodev,relatime shared:73 - squashfs /dev/loop1 ro
136 30 7:2 / /snap/lxd/24061 ro,nodev,relatime shared:77 - squashfs /dev/loop2 ro
139 30 7:3 / /snap/lxd/29619 ro,nodev,relatime shared:79 - squashfs /dev/loop3 ro
142 30 7:5 / /snap/snapd/23258 ro,nodev,relatime shared:81 - squashfs /dev/loop5 ro
145 30 8:2 / /boot rw,relatime shared:83 - ext4 /dev/sda2 rw
148 145 8:1 / /boot/efi rw,relatime shared:85 - vfat /dev/sda1 rw,fmask=0022,dmask=0022,codepage=437,iocharset=iso8859-1,shortname=mixed,errors=remount-ro
842 29 0:25 /snapd/ns /run/snapd/ns rw,nosuid,nodev,noexec,relatime - tmpfs tmpfs rw,size=189108k,mode=755
865 842 0:4 mnt:[4026532258] /run/snapd/ns/lxd.mnt rw - nsfs nsfs rw
629 30 7:6 / /snap/snapd/23545 ro,nodev,relatime shared:419 - squashfs /dev/loop6 ro
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