1 Botnet Dr. 許 富 皓. 2 Botnet [Trend Micro] [Trend Micro]
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Transcript of 1 Botnet Dr. 許 富 皓. 2 Botnet [Trend Micro] [Trend Micro]
5
Definition of a Botnet
A botnet (zombie army or drone army) refers to a pool of compromised computers that are under the command of a single hacker, or a small group of hackers, known as a botmaster.
6
Definition of a Bot
A bot refers to a compromised end-host, or a computer, which is a member of a botnet.
7
The First Bot Generation Malware – PrettyPark [F-Secure]
The first bot generation malware, PrettyPark worm, appeared in 1999.
A critical difference between PrettyPark and previous worms is that it makes use of IRC as a means to allow a botmaster to remotely control a large pool of compromised hosts.
Its revolutionary idea of using IRC as a discrete and extensible method for Command and Control (C&C) was soon adopted by the black hat community.
8
How Fast Could Your Computer Be Comprised? Based on the observation of an unpatched version of
Windows 2000 or Windows XP located within a dial-in network of a German ISP. Normally it takes only a couple of minutes before it is
successfully compromised. On average, the expected lifespan of the honeypot is less than
ten minutes. After this small amount of time, the honeypot is often successfully
exploited by automated malware. The shortest compromise time was only a few seconds:
Once we plugged the network cable in, an SDBot compromised the machine via an exploit against TCP port 135 and installed itself on the machine.
9
Sizes of Botnets[Wikipedia]
Some botnets consist of only a few hundred bots. In contrast to this, several large botnets with up
to 50,000 hosts were also observed. Botnets with over several hundred thousands
hosts have been reported in the past. Kraken botnet
On April 13, 2008, there were 495,000 computers in the Kraken botnet[Damballa].
Storm botnet [Enright]
Conficker: 10,000,000 [F-Secure]
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A Hosts May be Infected by Several Botnets Simultaneously A home computer which got infected by 16
different bots has been found.
11
Taxonomy of Botnets
Attacking behavior C&C models Rally mechanisms Communication protocols Observable botnet activities Evasion Techniques
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Attacking Behavior [Paul Bächer et al.]
Distributed Denial-of-Service Attacks Spamming Sniffing Traffic Keylogging Spreading new malware Installing Advertisement Addons Google AdSense abuse Manipulating online polls/games Mass identity theft
13
Distributed Denial-of-Service Attacks (1)
Often botnets are used for Distributed Denial-of-Service (DDoS) attacks.
A DDoS attack is an attack on a computer system or network that causes a loss of service to users, typically the
loss of network connectivity and services
by consuming the bandwidth of the victim network or overloading the computational resources of the victim
system.
14
Distributed Denial-of-Service Attacks (2)
Further research showed that botnets are even used to run commercial DDoS attacks against competing corporations: Operation Cyberslam documents the story of Jay R.
Echouafni and Joshua Schichtel alias EMP. Echouafni was indicted on August 25, 2004 on
multiple charges of conspiracy and causing damage to protected computers.
He worked closely together with EMP who ran a botnet to send bulk mail and also carried out DDoS attacks against the spam blacklist servers.
In addition, they took Speedera - a global on-demand computing platform - offline when they ran a paid DDoS attack to take a competitor's website down.
15
Proxy Some bots offer the possibility to open a
SOCKS v4/v5 proxy on a compromised machine.SOCKS v4/v5 proxy : a generic proxy protocol
for TCP/IP-based networking applications (RFC 1928).
16
Spamming After having enabled the SOCKS proxy, this
machine can then be used for nefarious tasks such as spamming. With the help of a botnet and thousands of bots, an
attacker is able to send massive amounts of spam mails.
Often that spam you are receiving was sent from, or proxied through, an old Windows computer at home.
In addition, this can of course also be used to send phishing-mails since phishing is a special case of spam.
Some bots also implement a special function to harvest email-addresses.
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Botnets Guilty for 87% of 2009 Global Spam Mail [Yahan Wu ]
According to a report released by Symantec, Botnets send out more than 87 percent of all unsolicited mail, equating to around 151 billion emails a day.
18
Spam Capacity of Some Notorious Botnets
Name Est. Bot # Spam Capacity
Conficker 10,000,000+ 10 billion/day
Kraken 495,000 9 billion/day
Srizbi 450,000 60 billion/day
Bobax 185,000 9 billion/day
Rustock 150,000 30 billion/day
Cutwail 125,000 16 billion/day
Storm 85,000 (only 35,000 send email) 3 billion/day
Donbot 80,000 500 million/day
Grum 50,000 2 billion/day
Onewordsub 40,000 ?
Mega-D 35,000 10 billion/day
Nucrypt 20,000 5 billion/day
Wopla 20,000 600 million/day
Spamthru 12,000 350 million/day
Crime Art 10,000 250 million/day
SilverNet Unknown Unknown
19
Sniffing Traffic
Bots can also use a packet sniffer to watch for interesting clear-text data passing by a compromised machine.
The sniffers are mostly used to retrieve sensitive information like usernames and passwords.
If a machine is compromised more than once and also a member of more than one botnet, the packet sniffing allows to gather the key information of the other botnet. Thus it is possible to "steal" another botnet.
20
Keylogging If the compromised machine uses encrypted
communication channels (e.g. HTTPS or POP3S), then just sniffing the network packets on the victim's computer is useless since the appropriate key to decrypt the packets is missing.
With the help of a keylogger it is very easy for an attacker to retrieve sensitive information. An implemented filtering mechanism further helps in stealing
secret data. e.g. "I am only interested in key sequences near the keyword
'paypal.com" And if you imagine that this keylogger runs on thousands of
compromised machines in parallel you can imagine how quickly PayPal accounts are harvested.
21
Spreading New Malware
In most cases, botnets are used to spread new bots.
This is very easy since all bots implement mechanisms to download and execute a file via HTTP or FTP.
Spreading an email virus using a botnet is a very nice idea, too. A botnet with 10,000 hosts which acts as the
start base for the mail virus allows very fast spreading and thus causes more harm.
22
Installing Advertisement Addons
Botnets can also be used to gain financial advantages.
This works by setting up a fake website with some advertisements: The operator of this website negotiates a deal with
some hosting companies that pay for clicks on ads. With the help of a botnet, these clicks can be
"automated" so that instantly a few thousand bots click on the pop-ups.
This process can be further enhanced if the bot hijacks the start-page of a compromised machine so that the "clicks" are executed each time the victim uses the browser.
23
Google AdSense Abuse
A similar abuse is also possible with Google's AdSense program: AdSense offers companies the possibility to display
Google advertisements on their own website and earn money this way.
The company earns money due to clicks on these ads, for example per 10,000 clicks in one month.
An attacker can abuse this program by leveraging his botnet to click on these advertisements in an automated fashion and thus artificially increments the click counter.
This kind of usage for botnets is relatively uncommon, but not a bad idea from an attacker's perspective.
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Loss Caused by Click Fraud [
Catherine Holahan]
On average, consultants estimate that between 14% and 15% of clicks are fraudulent.
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Ampersands (&'s) in URLs [Liam Quinn ]
Always use & in place of & when writing URLs in HTML:
E.g.: <a href="foo.cgi?
chapter=1&section=2&copy=3&lang=en">...</a>
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Click Fraud (2) – Connect to the Google Server Directly Attackers could launch the same attacks by
opening a HTTP connection to a Google server
and sending the URL in the previous slide to the
above server directly.
39
Manipulating online Polls/Games
Since every bot has a distinct IP address, every vote will have the same credibility as a vote cast by a real person.
Online games can be manipulated in a similar way. Currently we are aware of bots being used
that way, and there is a chance that this will get more important in the future.
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Mass Identity Theft Often the combination of different functionality described
above can be used for large scale identity theft, one of the fastest growing crimes on the Internet.
Bogus emails ("phishing mails") that pretend to be legitimate (such as fake PayPal or banking emails) ask their intended victims to go online and submit their private information. These fake emails are generated and sent by bots via their
spamming mechanism. These same bots can also host multiple fake websites pretending
to be ebay, PayPal, or a bank, and harvest personal information. Just as quickly as one of these fake sites is shut down, another one
can pop up. In addition, keylogging and sniffing of traffic can also be
used for identity theft.
41
What Is IRC, and How Does It Work? [David
Caraballo et al.]
IRC (Internet Relay Chat) provides a way of communicating in real time with people from all over the world.
It consists of various separate networks (or "nets") of IRC servers, machines that allow users to connect to IRC.
The largest nets are EFnet (the original IRC net, often having more than 32,000 people at
once), Undernet, IRCnet, DALnet, and NewNet.
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IRC Client
Generally, the user (such as you) runs a program (called a "client") to connect to a server on one of the IRC nets.
The server relays information to and from other servers on the same net.
Recommended clients: UNIX/shell: ircII Windows: mIRC Macintosh clients
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IRC Bot [wikepedia]
An IRC bot is a set of scripts or an independent program that connects to Internet Relay Chat as a client, and so appears to other IRC users as another user.
It differs from a regular client in that instead of providing interactive access to IRC for a human user, it performs automated functions.
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IRC Channels
Once connected to an IRC server on an IRC network, you will usually join one or more "channels" and converse with others there.
On IRC, channels are where people meet and chat. You may know them as "chat rooms". Channel names usually begin with a #, as in #irchelp. Conversations may be
public (where everyone in a channel can see what you type) or private (messages between only two people, who may or may
not be on the same channel).
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Command and Control (C&C) System
C&C works as follows. A botmaster sets up a C&C server, typically
an IRC server. After a bot virus infects a host, it will connect
back to the C&C server and wait on the botmaster’s command.
In a typical IRC botnet, the bot will join a certain IRC channel to listen to messages from its master.
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Categories of C&C C&C systems can be roughly categorized
into three different models the centralized model, the peer-to-peer (P2P) model the random model
P.S.: But there is possibility that future botnets may
use new command and control systems that are completely different from any of them, noting the quickly evolving nature of botnets.
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Centralized C&C Model In the centralized model, a botmaster selects a single
high bandwidth host to be the contacting point (C&C server) of all the bots. The C&C server, usually a compromised computer as well,
would run certain network services such as IRC, HTTP and etc. When a new computer is infected by a bot, it will join the botnet
by initiating a connection to the C&C server. Once joined to the appropriate C&C server channel, the bot
would then wait on the C&C server for commands from the botmaster.
Botnets may have mechanisms to protect their communications. For example, IRC channels may be protected by passwords only
known to bots and their masters to prevent eavesdropping.
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Popularity of the Centralized C&C Model The centralized model is the predominant
C&C model used by early botnets. Many well known bots, such as AgoBot, SDBot and RBot, fall into the category of the centralized C&C model.
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Why the Centralized C&C Model (1) ?
Due to the rich variety of software tools (e.g., IRC bot scripts on IRC servers and IRC bots), the centralized C&C model is rather simple to implement and customize.
Notice that a botmaster can easily control thousands of bots using the centralized model.
Botmasters are profit driven; hence, they are more interested in the centralized C&C model which allows them to control as many bots as possible and maximize their profit.
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Why the Centralized C&C Model (2) ?
Messaging latencies in the centralized model is small.
Therefore, it is easy for botmasters to coordinate botnets and launch attacks.
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Drawback of the Centralized C&C Model The C&C server is the crucial place where
most of the conversation happens. Therefore, the C&C server is the weakest link in a botnet.
If we can manage to discover and destroy the C&C server, the entire botnet will be gone.
53
Motivation for a P2P-Based C&C Model
Some botnet authors have started to build alternative botnet communication systems, which are more resilient to failures in the network.
An interesting C&C paradigm exploits the idea of P2P communication. For instance, certain variants of Phatbot have used P2P
communication as a means to control botnets. References of P2P:
[Kazaa] [Mac_P2P] [P2P network] [CS_NCTU] [DHT_ACT] [DHT_Duke] [DHT_wiki]
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P2P Applications [ACT]
Napster Gnutella
LimeWire
Morpheus
FastTrack
Kazaa
iMesh&Grokster
eDonkey
DC++
OverNet
BitTorrent eXeem
eDonkey2000
1999 20012000 2002 …
55
Futures of the P2P-Based C&C Model Compared with the centralized C&C model, the
P2P based C&C model is much harder to discover and destroy.
Since the communication system doesn’t heavily depend on a few selected servers, destroying a single, or even a number of bots, won’t necessarily lead to the destruction of an entire botnet.
Because of this, the P2P based C&C model has been used increasingly in botnets.
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Constraints of the P2P C&C Model (1)
Existing P2P systems only support conversations of small user groups, usually in the range of 10-50 users.
The group size supported by P2P systems is too small compared to the size of centralized C&C botnets, in which a botnet of 1000 compromised hosts is still on the small side.
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Constraints of the P2P C&C Model (2)
Existing P2P systems don’t guarantee message delivery and propagation latency.
Therefore, if using P2P communication, a botnet would be harder to coordinate than those which use centralized C&C models.
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Trend of the P2P C&C Model
The above two constraints have limited the wider adoption of P2P based communication in botnets.
As the knowledge on implementing P2P based botnets accumulates, new P2P-based botnets, which overcome the above limitations, may appear.
As such, more and more botnets will move to use P2P based communication since it is more robust than centralized C&C communication.
59
Timeline of Peer-to-Peer Protocols and Bots [Grizzard et al.]
Date Name Type Distinguishing Description
12/1993 EggDrop Non-Malicious Bot Recognized as early popular non-malicious IRC bot
04/1998 GTbot
Variants Malicious Bot IRC bot based on mIRC executables and scripts
05/1999 Napster Peer-to-Peer First widely used hybrid central and peer-to-peer
service
11/1999 Direct
Connect Peer-to-Peer Variation of Napster hybrid model
03/2000 Gnutella Peer-to-Peer First decentralized peer-to-peer protocol
09/2000 eDonkey Peer-to-Peer Used checksum directory lookup for file resources
03/2001 Fast Track Peer-to-Peer Use of supernodes within the peer-to-peer
architecture
05/2001 WinMX Peer-to-Peer Proprietary protocol similar to FastTrack
06/2001 Ares Peer-to-Peer Has ability to penetrate NATs with UDP punching
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Timeline of Peer-to-Peer Protocols and BotsDate Name Type Distinguishing Description
07/2001 BitTorrent Peer-to-Peer Uses bandwidth currency to foster quick downloads
04/2002 SDbot
Variants Malicious Bot Provided own IRC client for better efficiency
10/2002 Agobot
Variants Malicious Bot Incredibly robust, flexible, and modular design
04/2003 Spybot
Variants Malicious Bot Extensive feature set based on Agobot
05/2003 WASTE Peer-to-Peer Small VPN-style network with RSA public keys
09/2003 Sinit Malicious Bot Peer-to-peer bot using random scanning to find peers
11/2003 Kademlia Peer-to-Peer Uses distributed hash tables for decentralized
architecture
03/2004 Phatbot Malicious Bot Peer-to-peer bot based on WASTE
03/2006 SpamThru Malicious Bot Peer-to-peer bot using custom protocol for backup
04/2006 Nugache Malicious Bot Peer-to-peer bot connecting to predefined peers
01/2007 Peacomm Malicious Bot Peer-to-peer bot based on Kademlia
61
Random C&C Model In the proposed random C&C model, a bot will not
actively contact other bots or the botmaster. Rather, a bot would listen to incoming connections
from its botmaster. To launch attacks, a botmaster would scan the
Internet to discover its bots. When a bot is found, the botmaster will issue
command to the bot. Although this C&C model has not been used in real
world botnets, it is potentially interesting to certain future types of botnets that want high survivability.
62
Constraints of Random C&C Model
While such a C&C model is easy to implement and highly resilient to discovery and destruction, the model intrinsically has scalability problem, and is difficult to be used for large scale, coordinated attacks.
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Rallying Mechanisms
Rallying mechanisms are critical for botnets to discover new bots
andrally them under their botmasters.
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Hard-coded IP Address
A common method used to rally new bots works like this: A bot includes hard-coded C&C server IP
addresses in its binary. When the bot initially infects a computer, the
computer will connect back to the C&C server using the hard-coded server IP address that is contained in the binary code.
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Drawbacks of Hard-coded IP Address
The problem with using hard-coded IP addresses is that the C&C server can be easily detected
and the communication channel easily blocked.
If a C&C server is "disconnected" in this fashion, a botnet may be completely deactivated.
Because of this, hard-coded server IP addresses are not as much used now by recent variants of bots.
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Dynamic DNS Domain Name
The bots today often include hard-coded domain names, assigned by dynamical DNS providers.
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Benefit of Dynamic DNS Domain Name (1) The benefit to use dynamic DNS is that, if a
C&C server is shutdown by authorities, the botmaster can easily resume his/her control by creating a new C&C server somewhere else and updating the IP address in the corresponding dynamic DNS entry. When connections to the old C&C server fail, the bots
will perform DNS queries and be redirected to the new C&C server.
This DNS redirection behavior is often known as herding.
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Benefit of Dynamic DNS Domain Name (2) Using dynamic DNS names, a botmaster
can retain the control on its botnet when existing C&C server fails to function.
Sometimes, a botmaster will also update the dynamic DNS entry periodically to shift the locations of the command and control server, making the detection harder.
70
Distributed DNS Service
Some of the newer botnet breeds run their own distributed DNS service at locations that are out of the reach of law enforcement or other authorities.
Bots include the addresses of these DNS servers and contact these servers to resolve the IP addresses of C&C servers.
Many times, these DNS services are chosen to run at high port numbers in order to evade the detection by security devices at gateways.
The botnets using distributed DNS service to rally their bots are the hardest to detect and destroy, compared with other types of botnets discussed.
72
Communication Protocols
Bots communicate with each other and their botmasters following certain well-defined network protocols.
In most cases, botnets don’t create new network protocols for their communication. Instead, they use existing communication protocols that are implemented by publicly available software tools. e.g., the IRC protocol itself, and already publicly
available software implementations for IRC servers and clients.
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The Importance of Understanding the Botnet Comm. Protocols First, their communication characteristics provide
an understanding of the botnets’ origins
and the possible software tools being used.
Secondly, understanding the communication protocols help security researchers to decode the conversations which happen among bots and their masters.
76
Evasion Techniques – for AV and IDS
A variety of techniques are used by botnets to evade AV and signature based IDS systems, e.g., sophisticated executable packersrootkits, etc
These evasion techniques improve the survivability of botnets and the success rate of compromising new hosts.
77
Evasion Techniques – Communication (1) Additionally, botnets have also added (and continue to
add) new mechanisms to hide traces of their communication, e.g. fast-flux.
Some botnets are moving away from IRC, since monitoring of IRC traffic is increasingly done in an effort to detecting botnets.
Instead, botnets are starting to use modified IRC protocols or other protocols altogether (e.g., HTTP, VoIP)
for their communication channels.
78
Evasion Techniques – Communication (2) Encryption schemes are also being used to
prevent the content from being revealed. Certain state-of-the-art botnets even use
covert channel communications such as TCP and ICMP tunneling, and even IPv6 tunneling.
There have been technical using SKYPE and IM to support communication.
80
Other Observable Activities
In order to detect the presence of botnets, we need to discover abnormal behaviors exhibited by botnets.
The botnet observable behaviors can be categorized into three types: network based behaviorhost-based behaviorglobal correlated behavior.
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Network-based Behaviors1. Observable Communication
Botmasters need to communicate with their bots and launch attacks.
2. Observable Attacking Traffic When performing these functions, botnets will
generate certain observable network traffic patterns that we can use to detect
individual bots and their C&C servers.
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Observable Communication (1)
Since botnets often use IRC and HTTP to communicate with their bots, observable IRC & HTTP traffic with abnormal patterns can be used to indicate the presence of bots and the C&C servers. For example,
inbound/outbound IRC traffic to an interior enterprise network where IRC service is not allowed
and IRC conversations that follow certain syntax conventions that
humans don’t readily understand.
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Observable Communication (2)
Many botnets use dynamic DNS domain names to locate their C&C servers. Thus, abnormal DNS queries may also used to detect botnets.
In some instances, hosts are found to query for improper domain names (e.g., cheese.dns4biz.org, butter.dns4biz.org) which can indicate a high probability that these hosts are compromised. The next logical step in this methodology would be to attempt to
glean the IP addresses of their C&C servers in observable traffic streams.
If further detective work reveals that the IP address associated to a particular domain name keeps changing periodically, it can provide an even stronger indication the presence of a botnet.
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Observable Communication (3)
Moreover, botnets may exhibit additional network abnormalities that allow us to discover them. One example would be a case in which bots are usually idle
most of the time in a connection, and would response faster than a human being at the keyboard surfing the web.
Yet another example would be a case of some sort of communication traffic originated by botnets is more "bursty" than normal traffic.
So, botnets can potentially be discovered by monitoring network traffic flow.
85
Observable Attacking Traffic
The traffic generated by botnets allows us to discover their presence. For example,
When launching DDoS TCP SYN flood attacks, botnets can send out a large number of invalid TCP SYN packets with fake source IP addresses.
Therefore, if a network monitoring device finds a large number of outbound TCP SYN packets that have invalid source IP address (i.e., IP addresses that should not come from the internal network), it would indicate that some internal hosts may be compromised, and actively participating in a DDoS attack.
Similarly, if an internal host is found to send out phishing e-mails, there is an indication that the host is infected by bots as well.
86
Host Based Behavior
Bots compromise computers and hide their presence just like many older computer viruses.
Therefore, they exhibit certain observable behaviors as viruses do at compromised hosts. When executing, bots will make sequences of
system/library calls, e.g. modifying system registries and system files creating network connections disabling antivirus programs
The sequences of system/library calls made by bots are often different from legitimate programs and applications.
87
Global Correlated Behaviors Perhaps botnet behavior observed in a global
snapshot is the most interesting one from the viewpoint of detection efficiency.
Those global behavioral characteristics are often tied to the fundamental structures and mechanisms of botnets.
Consequently, they are unlikely to change from botnet to botnet unless the structures and mechanisms of botnets themselves are redesigned and re-implemented.
As a result, these globally observable behaviors are the most valuable to detect families of botnets.
88
Global Correlated Behaviors – DNS Traffic (1) Many botnets use dynamic DNS entry to track
their C&C servers. As a new C&C server is built, the related DNS
entry will be updated to the IP address of the new C&C server. Therefore, bots will find the location of the new C&C server.
Botmasters may herd their botnets to different C&C servers’ locations periodically to prevent detections.
89
Global Correlated Behaviors – DNS Traffic (2) When a botmaster updates its dynamic DNS
entry for C&C server: there would be an observable global behavior on the
Internet specifically,
bots are disconnected from the old C&C server bots will query their DNS server for the new IP address of the
domain name, resulting in an increase of DNS queries to this DNS entry globally.
90
Global Correlated Behaviors – DNS Traffic (3) Therefore, if a network monitor discovers that a
dynamic DNS entry is updated, which follows significant amount of DNS queries to this entry, then there is a high probability that this dynamic DNS domain name is being used by botnet C&C servers.
Such a feature is unlikely to change whether a botnet is using IRC for communication or using HTTP for communication, unless the communication structure is changed.
92
Domain Name System
A lookup mechanism for translating hostnames into IP addresses and vice-versa.
DNS provides the naming standard for IP-based networks.
A globally distributed, loosely coherent, scalable, reliable, dynamic database.
Comprised of three components: A “name space” (domain) Servers (name servers) making that name space available. Resolvers (clients) which query the servers about the name
space
93
Domain
Domains are “namespaces” Everything below .com is in the com domain. Everything below ripe.net is in the ripe.net
domain and in the net domain.
95
Zone
The tree sub-divides into zones beginning at the root zone.
A DNS zone is a subset of the hierarchical domain name structure of the DNS.
Every DNS zone must be assigned a set of authoritative name servers that are installed in NS records in the parent zone.A single name server can host several zones.
97
Delegated Subzone
Administrative responsibility over any zone may be divided, thereby creating additional zones.
Authority for a portion of the old space is said to be delegated, usually in form of sub-domains, to another nameserver and administrative entity .
The old zone ceases to be authoritative for the new zone.
98
Comparison of a DNS Zone and DNS Domain [Microsoft] – (1)
Domain name servers store information about part of the domain name space called a zone.
The name servers are authoritative for a particular zone.
A single name server can be authoritative for many zones.
99
Comparison of a DNS Zone and DNS Domain [Microsoft] – (2)
Understanding the difference between a zone and a domain is sometimes confusing.
A zone is simply a portion of a domain.
100
Comparison of a DNS Zone and DNS Domain [Microsoft] – (3)
For example, the domain Microsoft.com may contain
all of the data for Microsoft.com Marketing.microsoft.com
and Development.microsoft.com.
101
Comparison of a DNS Zone and DNS Domain [Microsoft] – (4)
However, the zone Microsoft.com contains only information for Microsoft.com
and references to the authoritative name servers for the
subdomains.
The zone Microsoft.com can contain the data for subdomains of Microsoft.com if they have not
been delegated to another server. For example,
Marketing.microsoft.com may manage its own delegated zone.
Development.microsoft.com may be managed by the parent, Microsoft.com.
Comparison of a DNS Zone and DNS Domain [Microsoft] – (5)
102
Microsoft.com
Development.Microsoft.comMarketing.Microsoft.com
Microsoft.com domain
Microsoft.com zone
Marketing.Microsoft.com domain and zone
103
Comparison of a DNS Zone and DNS Domain [Microsoft] – (6)
If there are no subdomains, then the zone and domain are essentially the same.
In this case the zone contains all data for the domain.
104
Domain Name Formulation (1)
A domain name consists of one or more parts, technically called labels, that are conventionally concatenated, and delimited by dots, such as example.com.
105
Domain Name Formulation (2)
The right-most label conveys the top-level domain.
For example, the domain name www.example.com belongs to the top-level domain com.
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Domain Name Formulation (3)
The hierarchy of domains descends from right to left; each label to the left specifies a subdivision, or subdomain of the domain to the right.
For example: the label example specifies a subdomain of the com domain, and www is a sub domain of example.com.
This tree of subdivisions may consist of 127 levels.
107
Domain Name Formulation (4)
A hostname is a domain name that has at least one IP address associated.
For example, the domain names www.example.com and example.com are also hostnames, whereas the com domain is not.
108
Structure of the Domain Space – Top Level Domains Immediately below the root is the Top
Level Domains. These consist of
country specific Top Level Domain (ccTLDs),
and generic Top Level Domains (gTLDs).
CCNSO and GNSO decides the contents of ccTLDs and gTLDs respectively.
109
Structure of the Domain Space – Second Level Domains Below these domains, you have the second
level domain names. These domain names are usually "delegated" by the
administrators of the relevant TLD which means that someone else is responsible for administering that part of the name space.
e.g. the administrators of .ie delegated the domain linux.ie to the Irish Linux Users Group, which means that ILUG are now responsible for administering the domain in any way they see fit without reference to the administrators of .ie.
Once a domain is delegated, the administrators of the domain are responsible for making changes within that domain.
113
DNS Servers and Their Layout
The DNS consists of a hierarchical set of DNS servers.
Each zone (domain) or subzone (subdomain) has one or more authoritative DNS servers that publish information about that zone (domain), and the name servers of any zones (domains) "beneath" it.
The hierarchy of authoritative DNS servers matches the hierarchy of zones (domains).
At the top of the hierarchy stand the root servers: the servers to query when looking up (resolving) a top-level domain name.
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DNS Name Server
A DNS name server is a server that stores the DNS records for a zone (domain name)
such as address (A) records name server (NS) records
and mail exchanger (MX) records
and responds with answers to queries against its database.
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DNS Server Categories
Server Type DefinitionRoot Any server that acts as a central lookup for other server to depend on, and does not rely on other servers for Name Server zone informationAuthoritative Any server that hosts zones (domains) and returns zone information publicly Resolver A server that performs domain queries for end users but does not host zones (domains) or zone information
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Root Name Servers
The top of the hierarchy is served by the root name servers, the servers to query when looking up (resolving) a top-level domain name (TLD).
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Anycast
Anycast is a network addressing and routing methodology in which datagrams from a single sender are routed to the topologically nearest node in a group of potential receivers all identified by the same destination address.
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Names of Root Name Servers While only 13 names are used for the root nameservers,
there are many more physical servers. The 13 names are in the form letter.root-servers.net, where letter ranges from A to M.
Each operator uses redundant computer equipment to provide reliable service even if failure of hardware or software occur.
C, F, I, J, K, L and M servers now exist in multiple locations on different continents, using anycast address announcements to provide decentralized service.
As a result most of the physical root servers are now outside the United States,
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Map of all 123 DNS root server instances (including local Anycast instances) at the end of 2006.
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Authoritative Name Server
The Domain Name System distributes the responsibility of assigning domain names and mapping those names to IP addresses by designating authoritative name servers for each zone (domain).
Authoritative name servers are assigned to be responsible for their particular zones (domains), and in turn can assign other authoritative name servers for their sub-zones (sub-domains). This mechanism has made the DNS distributed and fault tolerant
and has helped avoid the need for a single central register to be continually consulted and updated.
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Responses of Authoritative Name Servers An authoritative name server only returns
answers to queries about domain names that have been specifically configured by the administrator of the server.
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Master and Slave Server
An authoritative name server can either be a master server or a slave server.
A master server is a server that stores the original (master) copies of all zone records.
A slave server uses an automatic updating mechanism of the DNS protocol in communication with its master to maintain an identical copy of the master records.
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Name Server Delegation
Name servers in delegations are identified by name, rather than by IP address.
This means that a resolving name server must issue another DNS request to find out the IP address of the server to which it has been referred.
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Circular Dependencies and Glue Records If the name given in the delegation is a subdomain of the
domain for which the delegation is being provided, there is a circular dependency.
In this case the nameserver providing the delegation must also provide one or more IP addresses for the authoritative nameserver mentioned in the delegation.
This information is called glue. The delegating name server provides this glue in the
form of records in the additional section of the DNS response, and provides the delegation in the answer section of the response.
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Example Consider the domain example.org. Assume that the authoritative
name server for example.org is ns1.example.org. A computer trying to resolve www.example.org will first have to
resolve ns1.example.org. Since ns1 is also under example.org, resolving
ns1.example.org requires resolving example.org—a circular dependency.
To break the dependency, the nameserver for the org top level domain includes glue along with the delegation for example.org.
The glue records are A and/or AAAA records that provide IP addresses for ns1.example.org. The resolver uses one or more of these IP addresses to satisfy the circular dependency, which allows it to communicate with ns1.example.org and finish resolving the DNS query.
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Record Caching
Because of the large volume of requests generated in the DNS for the public Internet, the designers wished to provide a mechanism to reduce the load on individual DNS servers.
To this end, the DNS resolution process allows for caching of records for a period of time after an answer.
This entails the local recording and subsequent consultation of the copy instead of initiating a new request upstream.
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TTL
The time for which a resolver caches a DNS response is determined by a value called the time to live (TTL) associated with every record.
The TTL is set by the administrator of the DNS server handing out the authoritative response.
The period of validity may vary from just seconds to days or even weeks.
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Resource Record
A Resource Record (RR) is the basic data element in the domain name system.
Each record has a type (A, MX, etc.) an expiration time limit a class and some type-specific data.
Resource records of the same type define a resource record set.
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TYPE Field
TYPE is the record type. It indicates the format of the data and it gives a hint of its
intended use. For example
the A record is used to translate from a domain name to an IPv4 address
the NS record lists which name servers can answer lookups on a DNS zone
the MX record specifies the mail server used to handle mail for a domain specified in an e-mail address.
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Zone File [wikipedia]
A Domain Name System (DNS) zone file is a text file that describes a DNS zone.
A zone file is a sequence of entries for resource records.
Each line is a text description that defines a single resource record (RR).
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Fast-flux Service Networks
Fast-flux service networks are a network of compromised computer systems with public DNS records that are constantly changing, in some cases every few minutes.
These constantly changing architectures make it much more difficult to track down criminal activities and shut down their operations.
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Goal of Fast-Flux
The goal of fast-flux is for a fully qualified domain name (such as www.example.com) to have multiple (hundreds or even thousands) IP addresses assigned to it.
These IP addresses are swapped in and out of flux with extreme frequency, using a combination of round-robin IP addresses and a very short Time-To-Live (TTL) for any given particular
DNS Resource Record (RR).
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Build a Fast-Flux Service Network (1)
Fast flux users often register domain names for their illegal activities at an accredited registrar or reseller.
In one form of attack, the fast flux customer registers a domain name (for a flux service network) to host
illegal web sites (boguswebsitesexample.tld) and a (second or several) domain name(s) for a flux
service network to provide name resolution service (nameserverservicenetwork.tld).
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The fast flux service network operator uses automated techniques to rapidly change name server information in the registration records maintained by the registrar for these domains.
In particular, the fast flux service network operator changes the IP addresses of the domain's name servers to point
to different hosts in the domain nameserverservicenetwork.tld and
sets the times to live (TTLs) in the address records for these name servers to a very small value (1-3 minutes is common).
Build a Fast-Flux Service Network (2)
In charge of providing IP info. for hosts in domain boguswebsitesexample.tld
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Build a Fast-Flux Service Network (3)
Resource records associated with a name server domain used in fast flux hosting might appear in a TLD zone file as:
$TTL 180boguswebsitesexample.tld. NS NS1.nameserverservicenetwork.tldboguswebsitesexample.tld. NS NS2.nameserverservicenetwork.tld…NS1.nameserverservicenetwork.tld. A 10.0.0.1NS2.nameserverservicenetwork.tld. A 10.0.0.2
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Build a Fast-Flux Service Network (4) Note that the time-to-live (TTL) for the resource records
is set very low (in the example, 180 seconds). When the TTL expires, the fast flux service network operator's automation assures that a new set of A records for name servers replaces the existing set:
$TTL 180boguswebsitesexample.tld. NS NS1.nameserverservicenetwork.tldboguswebsitesexample.tld. NS NS2.nameserverservicenetwork.tld…NS1.nameserverservicenetwork.tld. A 192.168.0.123NS2.nameserverservicenetwork.tld. A 10.10.10.233
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Build a Fast-Flux Service Network (5) Records associated with the illegal web site
might appear in a zone file hosted on a DNS bot in the nameserverservicenetwork.tld network as:
boguswebsitesexample.tld. 180 IN A 192.168.0.1
boguswebsitesexample.tld. 180 IN A 172.16.0.99
boguswebsitesexample.tld. 180 IN A 10.0.10.200
boguswebsitesexample.tld. 180 IN A 192.168.140.11
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Build a Fast-Flux Service Network (6) Note again that the time-to-live (TTL) for each A
resource record is set very low (in the example, 180 seconds).
When the TTL expires, the resource records would be automatically modified to point to other bots that host this illegal web site. Only minutes later, the zone file might read:
boguswebsitesexample.tld. 180 IN A 192.168.168.14boguswebsitesexample.tld. 180 IN A 172.17.0.199boguswebsitesexample.tld. 180 IN A 10.10.10.2boguswebsitesexample.tld. 180 IN A 192.168.0.111