Deploy WAF on any Edge with F5 Distributed Cloud (SaaS Console, Automation)
F5 XC WAAP/WAF presents a clear advantage over classical WAAP/WAFs in that it can be deployed on a variety of environments without loss of functionality. In this first article of a series, we present an overview of the main deployment options for XC WAAP while follow-on articles will dive deeper into the details of the deployment procedures.5.3KViews9likes0CommentsOWASP Automated Threats - Credential Stuffing (OAT-008)
Introduction: In this OWASP Automated Threat Article we'll be highlighting OAT-008 Credentials Stuffing with some basic threat information as well as a recorded demo to dive into the concepts deeper. In our demo we'll show how Credential Stuffing works with Automation Tools to validate lists of stolen credentials leading to manual Account Takeover and Fraud. We'll wrap it up by highlightingF5 Bot Defenseto show how we solve this problem for our customers. Credential Stuffing Description: Lists of authentication credentials stolen from elsewhere are tested against the application’s authentication mechanisms to identify whether users have re-used the same login credentials. The stolen usernames (often email addresses) and password pairs could have been sourced directly from another application by the attacker, purchased in a criminal marketplace, or obtained from publicly available breach data dumps. Unlike OAT-007 Credential Cracking, Credential Stuffing does not involve any bruteforcing or guessing of values; instead credentials used in other applications are being tested for validity Likelihood & Severity Credential stuffing is one of the most common techniques used to take-over user accounts. Credential stuffing is dangerous to both consumers and enterprises because of the ripple effects of these breaches. Anatomy of Attack The attacker acquires usernames and passwords from a website breach, phishing attack, password dump site. The attacker uses automated tools to test the stolen credentials against many websites (for instance, social media sites, online marketplaces, or web apps). If the login is successful, the attacker knows they have a set of valid credentials. Now the attacker knows they have access to an account. Potential next steps include: Draining stolen accounts of stored value or making purchases. Accessing sensitive information such as credit card numbers, private messages, pictures, or documents. Using the account to send phishing messages or spam. Selling known-valid credentials to one or more of the compromised sites for other attackers to use. OWASP Automated Threat (OAT) Identity Number OAT-008 Threat Event Name Credential Stuffing Summary Defining Characteristics Mass log in attempts used to verify the validity of stolen username/password pairs. OAT-008 Attack Demographics: Sectors Targeted Parties Affected Data Commonly Misused Other Names and Examples Possible Symptoms Entertainment Many Users Authentication Credentials Account Checker Attack Sequential login attempts with different credentials from the same HTTP client (based on IP, User Agent, device, fingerprint, patterns in HTTP headers, etc.) Financial Application Owner Account Checking High number of failed login attempts Government Account Takeover Increased customer complaints of account hijacking through help center or social media outlets Retail Login Stuffing Social Networking Password List Attack Password re-use Use of Stolen Credentials Credential Stuffing Demo: In this demo we will be showing how attackers leverage automation tools with increasing sophistication to execute credential stuffing against the sign in page of a web application. We'll then have a look at the same attack with F5 Distributed Cloud Bot Defense protecting the application. In Conclusion: A common truism in the security industry says that there are two types of companies—those that have been breached, and those that just don’t know it yet. As of 2022, we should be updating that to something like “There are two types of companies—those that acknowledge the threat of credential stuffing and those that will be its victims.” Credential stuffing will be a threat so long as we require users to log in to accounts online. The most comprehensive way to prevent credential stuffing is to use an anti-automation platform. OWASP Links OWASP Automated Threats to Web Applications Home Page OWASP Automated Threats Identification Chart OWASP Automated Threats to Web Applications Handbook F5 Related Content Deploy Bot Defense on any Edge with F5 Distributed Cloud (SaaS Console, Automation) F5 Bot Defense Solutions F5 Labs "I Was a Human CATPCHA Solver" The OWASP Automated Threats Project OWASP Automated Threats - CAPTCHA Defeat (OAT-009) How Attacks Evolve From Bots to Fraud Part: 1 How Attacks Evolve From Bots to Fraud Part: 2 F5 Distributed Cloud Bot Defense F5 Labs 2021 Credential Stuffing Report3.8KViews5likes0CommentsBots, Fraud, and the OWASP Automated Threats Project (Overview)
Introduction Many of us have heard of OWASP in the context of the OWASP Top 10. In this article series we will take a look at another very important threat classification list called the OWASP Automated Threats (OAT) Project and provide a foundational overview. The terms Malicious Bot and Automated Threat can be used interchangeably throughout. In future articles we'll dive deeper into individual key threats called OATs and demonstrate how these attacks work and how to defend against them. Why should we care about the OWASP Automated Threats Project? Web security is no longer constrained to inadvertent vulnerabilities and attackers are abusing inherent functionality to conduct Automated and Manual Fraud. Existing technologies are not capable of detecting advancedautomated abuse, fraud teams can’t keep up with new fraud mechanisms,while web users are increasingly adverse to encountering Authentication Friction created by legacy or traditional bot defenses like CAPTCHAs. From its original release in 2015, the OWASP Automated Threat Handbook has now become a de facto industry standard in classifying Bots and better understanding all aspects of Malicious Web Automation. What OATs Are Not - Not another vulnerability list - Not an OWASP Top N List - Not threat modelling - Not attack trees - Not non web - Not non application What Are OATs (aka Malicous Bots)? In order to quantify these threats, it is necessary to be able to name them. OAT stands for OWASP Automated Threat and there are currently 21 attack vectors defined. Currently OAT codes 001 to 021 are used. Within each OAT the Threat definition contains a description, the sectors targeted, parties affected, the data commonly misused, and external cross mappings to other lists like CAPEC Category, possible symptoms, suggested countermeasures, etc... Here is the Full List of OATs ordered by ascending name: Identifier OAT Name Summary Defining Characteristics OAT-020 Account Aggregation Use by an intermediary application that collects together multiple accounts and interacts on their behalf OAT-019 Account Creation Create multiple accounts for subsequent misuse OAT-003 Ad Fraud False clicks and fraudulent display of web-placed advertisements OAT-009 CAPTCHA Defeat Solve anti-automation tests OAT-010 Card Cracking Identify missing start/expiry dates and security codes for stolen payment card data by trying different values OAT-001 Carding Multiple payment authorisation attempts used to verify the validity of bulk stolen payment card data OAT-012 Cashing Out Buy goods or obtain cash utilising validated stolen payment card or other user account data OAT-007 Credential Cracking Identify valid login credentials by trying different values for usernames and/or passwords OAT-008 Credential Stuffing Mass log in attempts used to verify the validity of stolen username/password pairs OAT-021 Denial of Inventory Deplete goods or services stock without ever completing the purchase or committing to the transaction OAT-015 Denial of Service Target resources of the application and database servers, or individual user accounts, to achieve denial of service (DoS) OAT-006 Expediting Perform actions to hasten progress of usually slow, tedious or time-consuming actions OAT-004 Fingerprinting Elicit information about the supporting software and framework types and versions OAT-018 Footprinting Probe and explore application to identify its constituents and properties OAT-005 Scalping Obtain limited-availability and/or preferred goods/services by unfair methods OAT-011 Scraping Collect application content and/or other data for use elsewhere OAT-016 Skewing Repeated link clicks, page requests or form submissions intended to alter some metric OAT-013 Sniping Last minute bid or offer for goods or services OAT-017 Spamming Malicious or questionable information addition that appears in public or private content, databases or user messages OAT-002 Token Cracking Mass enumeration of coupon numbers, voucher codes, discount tokens, etc OAT-014 Vulnerability Scanning Crawl and fuzz application to identify weaknesses and possible vulnerabilities Automated Threats Breakdown By Industry Within each OAT definition there is a section for the Sectors Targeted for that particular attack vector. For example, a Carding Attack would be seen on ecommerce and retail type of sites with payment card processing. Here they would be able to validate a list of stolen credit card numbers to identify the working ones from non working. Example: OAT-001 Carding Attack example highlighting "Sectors Targeted" for this type of attack. This exists for each attack definition. OWASP Defined Countermeasures Countermeasure Classes: The technology and vendor agnostic countermeasure classes attempt to group together the types of design, development and operational controls identified from research that are being used to partially or fully mitigate the likelihood and/or impact of automated threats to web applications. In all applications, builder-defender collaboration is key in controlling and mitigating automated threats – the best protected applications do not rely solely upon standalone external operational protections, but also have integrated protection built into the design. Similarly to other types of application security threat, it is important to build consideration of automated threats into multiple phases of a secure software development lifecycle (S-SDLC). 14 Countermeasure Classes: Value Authentication Requirements Rate Testing Monitoring Capacity Instrumentation Obfuscation Contract Fingerprinting Response Reputation Sharing Countermeasure Controls Countermeasures are controls that attempt to mitigate the identified automated threats in three ways: Prevent - Controls to reduce the susceptibility to automated threats Detect - Controls to identify whether a user is an automated process rather than a human, and/or to identify if an automated attack is occurring, or occurred in the past Recover - Controls to assist response to incidents caused by automated threats, including to mitigate the impact of the attack, and to to assist return of the application to its normal state. Cross References Other Threat Mappings Each OAT Threat is cross referenced with other external threat lists to provide and understanding of how this OAT Handbook can be integrated with other works. Example, OAT Threat below shows the cross referenced CAPEC, CWE, and WASC Threat ID's You can find links to each of the external classification models below: Mitre CAPEC - best full and/or partial match CAPEC category IDs and/or attack pattern IDs WASC Threat Classification - best match to threat IDs Mitre Common Weakness Enumeration - closely related base, class & variant weakness IDs Matching pages defining terms classified as Attacks on the OWASP wiki Youtube Conclusion In conclusion, the OWASP Automated Threat Handbook has now become a de facto industry standard in classifying and better understanding all aspects of malicious web automation. We can use this handbook to build secure software development lifecycles around our web properties and implement the appropriate countermeasure to prevent unwanted automation against them. OWASP Links OWASP Automated Threats to Web Applications Home Page OWASP Automated Threats Identification Chart OWASP Automated Threats to Web Applications Handbook F5 Related Content Deploy Bot Defense on any Edge with F5 Distributed Cloud (SaaS Console, Automation) How Attacks Evolve From Bots to Fraud Part: 1 How Attacks Evolve From Bots to Fraud Part: 2 F5 Distributed Cloud Bot Defense F5 Labs 2021 Credential Stuffing Report3.8KViews2likes0CommentsF5 Distributed Cloud Bot Defense (Overview and Demo)
What is Distributed Cloud Bot Defense? Distributed Cloud Bot Defense protects your web properties from automated attacks by identifying and mitigating malicious bots. Bot Defense uses JavaScript and API calls to collect telemetry and mitigate malicious users within the context of the Distributed Cloud global network. Bot Defense can easily be integrated into existing applications in a number of ways. For applications already routing traffic through Distributed Cloud Mesh Service, Bot Defense is natively integrated into your Distributed Cloud Mesh HTTP load balancers. This integration allows you to configure the Bot Defense service through the HTTP load balancer's configuration in the Distributed Cloud Console. For other applications, connectors are available for several common insertion points that likely already exist in modern application architectures. Once Bot Defense is enabled and configured, you can view and filter traffic and transaction statistics on the Bot Defense dashboard in Distributed Cloud Console to see which users are malicious and how they’re being mitigated. F5 Distributed Cloud Bot Defense is an advanced add-on security feature included in the first launch of the F5 Web Application and API Protection (WAAP) service with seamless integration to protectyour web apps and APIs from a wide variety of attacks in real-time. High Level Distributed Cloud Security Architecture Bot Defense Demo: In this technical demonstration video we will walk through F5 Distributed Cloud Bot Defense, showing you how quick and easy it is to configure, the insights and visibility you have while demonstrating a couple of real attacks with Selenium and Python browser automation. "Nature is a mutable cloud, which is always and never the same." - Ralph Waldo Emerson We might not wax that philosophically around here, but our heads are in the cloud nonetheless! Join the F5 Distributed Cloud user group today and learn more with your peers and other F5 experts. Hope you enjoyed this Distributed Cloud Bot Defense Overview and Demo. If there are any comments or questions please feel free to reach us in the comments section. Thanks! Related Resources: Deploy Bot Defense on any Edge with F5 Distributed Cloud (SaaS Console, Automation) F5 Distributed Cloud WAAP Distributed Cloud Services Overview Enable and Configure Bot Defense - F5 Distributed Cloud Service7KViews2likes0CommentsHow Attacks Evolve from Bots to Fraud - Part 1
Bot Basics A bot is a software program that performs automated, repetitive, pre-defined tasks. Bots typically imitate or replace human user behavior because they operate much faster than human users. Good Bots make the Internet work - From search engine crawlers that bring the world to your fingertips to chatbots that engage and enhance the user experience. How Do Bots Facilitate Fraud? Bots can also be used to scale automated attacks which can result in account takeover (ATO) and fraud. Motivated cyber criminals leverage a sophisticated arsenal of bots, automation, and evasion techniques. They also perform ongoing reconnaissance to identify security countermeasures and constantly retool their attacks to evade detection. Automated Bot Attack Vector Examples... Credential Stuffing Automated Account Creation Content Scraping High Value Data Credit Application Fraud Gift Card Cracking Application DDoS Aggregator Threats Fake Account Creation Inventory Hoarding Bypass Auth reCAPTCHA The list goes on... Business Impact of Bad Bots Infrastructure Costs - Infrastructure needs to scale to deal with unwanted and/or undetected bot traffic Competitive Intelligence - Web scrapers collect important data to help competitors adjust their pricing strategies Wrong Business Decisions - Bot traffic distorts web site analytics which could lead to making wrong business decisions Sneaker Bots - Bots are buying limited editions of certain products before regular buyers and then sell on black market Account Take-over - Credential stuffing leveraging stolen accounts purchased on the Darkweb providing access Fraudulent Transactions - Fraudulent transactions with large financial consequences as a result of account take-over in the finance sector The Industrialized (organized) Attack Lifecycle Figure 1. It begins with unwanted automation and ends with account takeover and application fraud What are Credential Spills? Credential Spill - A cyber incident in which a combination of username and/or email and password pairs becomes compromised. Date of Announcement - The first time a credential spill becomes public knowledge. This announcement could occur in one of two ways: A breached organization alerts its users and/or the general public A security researcher or reporter discovers a credential spill and breaks the news Date of Discovery - When an organization first learned of its credential spill. Organizations are not always willing to share this information. Stolen Credentials - Criminal Usage by Stage Stage 1: Slow and Quiet Sophisticated threat actors operating in stealth mode - 150 to - 30 days before the public announcement Each credential used (on average) 20 times per day Figure 2. Slow and quiet stage. Attackers use credentials in stealth mode from 150 to 30 days before the public announcement Stage 2: Ramp Up Creds become available on Darknet around ~30 days before public announcement Use of creds ramp up to 70 times per day Figure 3. The ramp-up stage. Attackers ramp up use of compromised credentials 30 days before the public announcement. Stage 3: The Blitz Credentials become public knowledge Script Kiddies + N00bs The first week is absolute chaos - each account attacked > 130 times per day Figure 4. The blitz stage. Script kiddies and other amateurs race to use credentials after the public announcement. Stage 4: Drop-Off / New Equilibrium Creds *should* be worthless at this point... Consumer reuse and lack of change allows for attacker "repackaging" and long tail value Figure 5. The drop-off stage. Credentials no longer have premium value Network Traffic Automation The simplest level of user simulation contains tools that make no attempt toemulate human behavior orhigher levelbrowser activity. They simply craftHTTP requests along specified parameters and pass them along to the target.These are the simplest, cheapest, and fastest tools.Sentry MBAis perhaps thestandard tool of this type. Figure 6. Sentry MBA, a standard user simulation tool Browser and Native App Automation Most of the websites that we interact with every day—online banking, ecommerce, and travel sites—consist of large web applications built on hundreds of thousands of lines of JavaScript. These webpages are not simple documents, so simulating convincing transactions at the network level is extremely complex. At this point, it makes more sense for an attacker to automate activity at the browser level. Until 2017, PhantomJS was the most popular automated browser in the market. When Google released Chrome 59 that year, however, it pushed forward the state of browser automation by exposing a programmatically controllable “headless” mode (that is, absent a graphical user interface) for the world's most popular browser, Chrome. This gave attackers the ability to quickly debug and troubleshoot their programs using the normal Chrome interface while scaling their attacks. Furthermore, just weeks after this announcement, Google developers released Puppeteer, a cross-platform Node.js library that offers intuitive APIs to drive Chrome-like and Firefox browsers. Puppeteer has since become the go-to solution for browser automation, as you can see from its growing popularity in web searches. Figure 7. Google trends graph showing interest in PhantomJS versus Puppeteer between 2010 and 2016. (Source: Google Trends) Simulating Human Behavior The next level of sophistication above simulating a browser is simulating human behavior. It's easy to detect rapid, abrupt mouse movements and repeated clicks at the same page coordinates (such as a Submit button), but it is much harder to detect behavior that includes natural motion and bounded randomness. While Puppeteer and the Chrome DevTools Protocol can generate trusted browser events, such as clicks or mouse movements, they have no embedded functionality to simulate human behavior. Even if perfect human behavior was as simple as including a plug-in, Puppeteer is still a developer-oriented tool that requires coding skill. Enter Browser Automation Studio, or BAS. BAS is a free, Windows-only automation environment that allows users to drag and drop their way to a fully automated browser, no coding needed. Figure 8. Browser Automation Studio User Interface Scaling Up Real Human Behavior As attackers grow in capability, they succeed in creating automated attacks that look more like human behavior. In some contexts, it actually makes more sense to just use actual humans. "Microwork" is a booming industry in which anyone can farm out small tasks in return for pennies. These services describe their jobs as ideal for labeling data destined for machine learning systems and, in theory, that would be a perfect use. In reality, the tasks the human workers perform are helping bypass antibot defenses on social networks, retailers, and any site with a login or sign-up form. Figure 9. Data labeling “microwork” using humans to help bypass antibot defenses In Conclusion Depending on the attacker sophistication level and motivation there are a variety of tools ranging from basic automation to leveraging real humans to attempt to bypass bot defenses and perform account takeover actions. No matter the skill level, most attackers (at least, most cybercriminals) will start off with the cheapest, that is, least sophisticated, attacks in order to maximize rate of return. Able attackers will only increase sophistication (and thereby cost) if their target has implemented countermeasures that detect their original attack, and if the rewards still outweigh that increased cost. Related Content: Deploy Bot Defense on any Edge with F5 Distributed Cloud (SaaS Console, Automation) How Attacks Evolve From Bots to Fraud - Part 2 F5 Labs 2021 Credential Stuffing Report3KViews3likes0CommentsHow To Run Ollama On F5 AppStack With An NVIDIA GPU In AWS
If you're just getting started with AI, you'll want to watch this one, as Michael Coleman shows Aubrey King, from DevCentral, how to run Ollama on F5 AppStack on an AWS instance with an NVIDIA Tesla T4 GPU. You'll get to see the install, what it looks like when a WAF finds a suspicious conversation and even a quick peek at how Mistral handles a challenge differently than Gemma.102Views2likes0CommentsBeyond REST: Protecting GraphQL
GraphQL GraphQL is a query language for APIs developed by Facebook, that provides an efficient and flexible alternative to traditional RESTful APIs. It allows clients to request only the data they need, avoiding over-fetching or under-fetching of information. GraphQL enables developers to specify the structure of the response they want, making it easier to aggregate data from multiple sources in a single request. This adaptability is particularly advantageous in scenarios where mobile or web applications require diverse sets of data. As a result, GraphQL has become an attractive alternative for many developers and organizations looking to capitalizeon this flexibility and possible performance improvements. Introspection Introspection is a feature that allows clients to query the schema of a GraphQL API at runtime. It allows for the dynamic exploration of types, fields, and their associated information, giving clients the ability to create documentation, validate queries, and understand the structure and capabilities of the GraphQL server. Security Considerations While GraphQL offers numerous advantages in terms of flexibility and efficiency, it also introduces unique security considerations that warrant attention. One notable concern is the potential for unintentional data exposure due toitsintrospective nature. Additionally, GraphQL's ability to execute multiple queries in a single request creates the risk of resource exhaustion through complex or nested queries, leading to denial-of-service (DoS) vulnerabilities. Furthermore, the dynamic nature of GraphQL schemasmakesit crucial to implement proper input validation to prevent malicious queries or injections. Understanding and addressing these security risks is paramount for ensuring the robustness of GraphQL-based systems, and it underscores the importance of incorporating effective security measures into the development, deployment, and runtime processes. Protecting GraphQL with F5 Distributed Cloud GraphQL Discovery: GraphQL discovery plays a pivotal role in the comprehensive API discovery process within the F5 Distributed Cloud WebApp and API Protection service. This ensures that developers, security architects, and administrators gain visibility into and information about the available GraphQL endpoints. GraphQL Inspection: Inspection is a fundamental component of protecting GraphQL, offering granular control over security parameters. By setting limits on the maximum total length, maximum structure depth of a GraphQL query, and imposing restrictions on the maximum number of queries in a single batched request, the service can mitigate the risk of DOS attacks and ensures optimal system performanceby preventing excessively complex or resource-intensive requests. Disabling introspection queries further enhances security by limiting the exposure of sensitive API details, reducing the attack surface and reinforcing overall GraphQL security. Conclusion Since its development in 2012, adoption of GraphQL has witnessed a steady growthyear-over-year. The efficiency and power of the API has made it a popular choice with many development teams. With an ever-increasing threat surface and a high potential for attack, organizations must prioritize safeguarding their users by investing in robust security. As part of a Defensein-Depthsecurity strategy, the F5 Distributed Cloud WebApp and API Protection service can help ensure your GraphQL APIs are protected from abuse. F5 Distributed Cloud GraphQL Inspection and Protection Demo Additional Resources Deploy F5 Distributed Cloud API Discovery and Security: F5 Distributed Cloud WAAP Terraform Examples GitHub Repo Deploy F5 Hybrid Architectures API Discovery and Security: F5 Distributed Cloud Hybrid Security Architectures GitHub Repo F5 Distributed Cloud Documentation: F5 Distributed Cloud Terraform Provider Documentation F5 Distributed Cloud Services API Documentation322Views1like0CommentsMitigation of OWASP API Security Risk: Unrestricted Access to Sensitive Business Flows using F5 XC
We have already covered different OWASP API risks in our previous articles (check reference section for more details). OWASP continuously analysed API threats in the last few years and has identified new types of risks which are not part of API Security Top 10 - 2019 edition. So, they added these new ones in the 2nd edition of OWASP API Security Top 10 2023 list and this article will cover the nuances of the newly added risk: Unrestricted Access to Sensitive Business Flows. Introduction: API owners should be very cautious of all the API endpoint’s exposed to users and they should identify each endpoint’s business justification. When developing an API Endpoint, we shall understand API use case and its intended scope of user action. Some business flows need to be monitored, restricted or blocked depending on the sensitivity of endpoint data. If any sensitive business flow is not protected, attackers can exploit them and cause some serious damage to the business. Using wide variety of automated tools available in market, hackers can automate the manual processthereby adversely impacting the genuine business workflows. That’s all the theory I have !!. Let’s plunge into a demo application use case and discover how F5 Distributed Cloud Platform (XC) can detect and guard our API application endpoints against this vulnerability. Use case: As part of testing, I was exploring the options available in one of the demo application “F5AIR” which is used for booking some dummy flight tickets and as a promotion this application is also offering 200$ as account balance after every user signup. In the 3rd tab we observed that this balance can be used to create gift cards which can be redeemed by users. After doing thorough research we have identified there are no restrictions on this workflow and it can be exploited using automated tools. Automated tools can be used to create multiple users, generate gift cards from each user and then redeem them into a single valid account to further book flight tickets without paying anything. Because of this risk, businesses can incur losses and so this is marked as a sensitive business flow. Artificial Intelligence is a truly disruptive technology spreading like wildfire and so for the purpose of today’s demo, I am using AXIOM.AI browser extension to automate the above manual workflow steps. It just took me around 30 minutes to understand how it works and was able to automate the above exploited manual steps. After 10 user creations and redeeming their gift cards valid main user will have around 2000$ which can be used to book flight tickets. Note: To showcase how AI tools can be leveraged to exploit modern applications we are using axiom ai tool and intended only for educational purposes. Mitigation Steps: A straightforward one-point solution may not be appropriate for different types of these vulnerabilities. Secops team should dig deeper into their incoming application traffic, differentiate genuine & malicious security data and then identify the API endpoints which are sensitive to their business flows. Once they have analyzed the traffic then they can apply below solutions as per their requirements Configure API Discovery to detect different API vulnerabilities like sensitive Data, API Attributes like Login page, Zombie API, security Posture, etc. You can find more details in this article Configure rate limiting on the sensitive business end points to keep a limit on number of requests - check here for more details on rate limiting Configure API Protection rules for these business API’s to restrict access to applications – check here for more details on API rules Configure Bot Defense to prevent bot attacks – check here for more details on bot protection As an example, let’s consider the above demonstrated AI tool example, to block any botsfrom accessing demo application we can apply bot defense configurations in root folder location “/” as shown below after which bot AI exploit requests can be mitigated. Note: Above config is for this article’s use case, but users must understand the API endpoint’s which should be protected and apply configs appropriately. We can also try other automation tools like postman which may also be blocked as below In F5 XC console if we navigate to this load balancer security events and bot defense dashboards, we can see these requests are blocked. Conclusion: In this article we explored some insights on this newly added OWASP API Security Top 10 risk, then we shed some light on how AI tools have opened floodgates to a new approach of application threats. Finally, we also revealed the final puzzle of how F5 XC Bot defense can become our elixir in identifying and protecting against this OWASP API risk along with novel AI threats. For more information or to get started check links below: OWASP API Security Top 10 2023 OWASP API Security Top 10 - 2019 F5 Distributed Cloud WAAP357Views2likes0Comments