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13th USENIX Security Symposium — Technical Paper 10/9/18, 2)16 PM
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Security ’04 Paper [Security ’04 Technical Program]
Tor: The Second-Generation Onion Router
Roger Dingledine, The Free Haven Project, [email protected]
Nick Mathewson, The Free Haven Project, [email protected]
Paul Syverson, Naval Research Lab, [email protected]
Abstract
We present Tor, a circuit-based low-latency anonymous communication service. This second-generation Onion
Routing system addresses limitations in the original design by adding perfect forward secrecy, congestion control,
directory servers, integrity checking, configurable exit policies, and a practical design for location-hidden services
via rendezvous points. Tor works on the real-world Internet, requires no special privileges or kernel modifications,
requires little synchronization or coordination between nodes, and provides a reasonable tradeoff between
anonymity, usability, and efficiency. We briefly describe our experiences with an international network of more than
30 nodes. We close with a list of open problems in anonymous communication.
1 Overview
Onion Routing is a distributed overlay network designed to anonymize TCP-based applications like web browsing,
secure shell, and instant messaging. Clients choose a path through the network and build a
circuit, in which each
node (or “onion router” or “OR”) in the path knows its predecessor and successor, but no other nodes in the circuit.
Traffic flows down the circuit in fixed-size
cells, which are unwrapped by a symmetric key at each node (like the
layers of an onion) and relayed downstream. The Onion Routing project published several design and analysis
papers [
27,41,48,49]. While a wide area Onion Routing network was deployed briefly, the only long-running public
implementation was a fragile proof-of-concept that ran on a single machine. Even this simple deployment processed
connections from over sixty thousand distinct IP addresses from all over the world at a rate of about fifty thousand
per day. But many critical design and deployment issues were never resolved, and the design has not been updated
in years. Here we describe Tor, a protocol for asynchronous, loosely federated onion routers that provides the
following improvements over the old Onion Routing design:

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Perfect forward secrecy: In the original Onion Routing design, a single hostile node could record traffic and later
compromise successive nodes in the circuit and force them to decrypt it. Rather than using a single multiply
encrypted data structure (an
onion) to lay each circuit, Tor now uses an incremental or telescoping path-building
design, where the initiator negotiates session keys with each successive hop in the circuit. Once these keys are
deleted, subsequently compromised nodes cannot decrypt old traffic. As a side benefit, onion replay detection is no
longer necessary, and the process of building circuits is more reliable, since the initiator knows when a hop fails and
can then try extending to a new node.
Separation of “protocol cleaning” from anonymity: Onion Routing originally required a separate “application
proxy” for each supported application protocol-most of which were never written, so many applications were never
supported. Tor uses the standard and near-ubiquitous SOCKS [
32] proxy interface, allowing us to support most
TCP-based programs without modification. Tor now relies on the filtering features of privacy-enhancing applicationlevel proxies such as Privoxy [
39], without trying to duplicate those features itself.
No mixing, padding, or traffic shaping (yet): Onion Routing originally called for batching and reordering cells as
they arrived, assumed padding between ORs, and in later designs added padding between onion proxies (users) and
ORs [
27,41]. Tradeoffs between padding protection and cost were discussed, and traffic shaping algorithms were
theorized [
49] to provide good security without expensive padding, but no concrete padding scheme was suggested.
Recent research [
1] and deployment experience [4] suggest that this level of resource use is not practical or
economical; and even full link padding is still vulnerable [
33]. Thus, until we have a proven and convenient design
for traffic shaping or low-latency mixing that improves anonymity against a realistic adversary, we leave these
strategies out.
Many TCP streams can share one circuit: Onion Routing originally built a separate circuit for each applicationlevel request, but this required multiple public key operations for every request, and also presented a threat to
anonymity from building so many circuits; see Section
9. Tor multiplexes multiple TCP streams along each circuit
to improve efficiency and anonymity.
Leaky-pipe circuit topology: Through in-band signaling within the circuit, Tor initiators can direct traffic to nodes
partway down the circuit. This novel approach allows traffic to exit the circuit from the middle-possibly frustrating
traffic shape and volume attacks based on observing the end of the circuit. (It also allows for long-range padding if
future research shows this to be worthwhile.)
Congestion control: Earlier anonymity designs do not address traffic bottlenecks. Unfortunately, typical approaches
to load balancing and flow control in overlay networks involve inter-node control communication and global views
of traffic. Tor’s decentralized congestion control uses end-to-end acks to maintain anonymity while allowing nodes
at the edges of the network to detect congestion or flooding and send less data until the congestion subsides.
Directory servers: The earlier Onion Routing design planned to flood state information through the network-an
approach that can be unreliable and complex. Tor takes a simplified view toward distributing this information.
Certain more trusted nodes act as
directory servers: they provide signed directories describing known routers and
their current state. Users periodically download them via HTTP.
Variable exit policies: Tor provides a consistent mechanism for each node to advertise a policy describing the hosts
and ports to which it will connect. These exit policies are critical in a volunteer-based distributed infrastructure,
because each operator is comfortable with allowing different types of traffic to exit from his node.
End-to-end integrity checking: The original Onion Routing design did no integrity checking on data. Any node on
the circuit could change the contents of data cells as they passed by-for example, to alter a connection request so it
would connect to a different webserver, or to `tag’ encrypted traffic and look for corresponding corrupted traffic at
the network edges [
15]. Tor hampers these attacks by verifying data integrity before it leaves the network.
Rendezvous points and hidden services: Tor provides an integrated mechanism for responder anonymity via
location-protected servers. Previous Onion Routing designs included long-lived “reply onions” that could be used to
build circuits to a hidden server, but these reply onions did not provide forward security, and became useless if any
node in the path went down or rotated its keys. In Tor, clients negotiate
rendezvous points to connect with hidden
servers; reply onions are no longer required.
Unlike Freedom [
8], Tor does not require OS kernel patches or network stack support. This prevents us from
anonymizing non-TCP protocols, but has greatly helped our portability and deployability.

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We have implemented all of the above features, including rendezvous points. Our source code is available under a
free license, and Tor is not covered by the patent that affected distribution and use of earlier versions of Onion
Routing. We have deployed a wide-area alpha network to test the design, to get more experience with usability and
users, and to provide a research platform for experimentation. As of this writing, the network stands at 32 nodes
spread over two continents.
We review previous work in Section
2, describe our goals and assumptions in Section 3, and then address the above
list of improvements in Sections
4, 5, and 6. We summarize in Section 7 how our design stands up to known attacks,
and talk about our early deployment experiences in Section
8. We conclude with a list of open problems in Section 9
and future work for the Onion Routing project in Section 10.
2 Related work
Modern anonymity systems date to Chaum’s Mix-Net design [10]. Chaum proposed hiding the correspondence
between sender and recipient by wrapping messages in layers of public-key cryptography, and relaying them
through a path composed of “mixes.” Each mix in turn decrypts, delays, and re-orders messages before relaying
them onward.
Subsequent relay-based anonymity designs have diverged in two main directions. Systems like
Babel [28],
Mixmaster [36], and Mixminion [15] have tried to maximize anonymity at the cost of introducing comparatively
large and variable latencies. Because of this decision, these
high-latency networks resist strong global adversaries,
but introduce too much lag for interactive tasks like web browsing, Internet chat, or SSH connections.
Tor belongs to the second category:
low-latency designs that try to anonymize interactive network traffic. These
systems handle a variety of bidirectional protocols. They also provide more convenient mail delivery than the highlatency anonymous email networks, because the remote mail server provides explicit and timely delivery
confirmation. But because these designs typically involve many packets that must be delivered quickly, it is difficult
for them to prevent an attacker who can eavesdrop both ends of the communication from correlating the timing and
volume of traffic entering the anonymity network with traffic leaving it [
45]. These protocols are similarly
vulnerable to an active adversary who introduces timing patterns into traffic entering the network and looks for
correlated patterns among exiting traffic. Although some work has been done to frustrate these attacks, most designs
protect primarily against traffic analysis rather than traffic confirmation (see Section
3.1).
The simplest low-latency designs are single-hop proxies such as the
Anonymizer [3]: a single trusted server strips
the data’s origin before relaying it. These designs are easy to analyze, but users must trust the anonymizing proxy.
Concentrating the traffic to this single point increases the anonymity set (the people a given user is hiding among),
but it is vulnerable if the adversary can observe all traffic entering and leaving the proxy.
More complex are distributed-trust, circuit-based anonymizing systems. In these designs, a user establishes one or
more medium-term bidirectional end-to-end circuits, and tunnels data in fixed-size cells. Establishing circuits is
computationally expensive and typically requires public-key cryptography, whereas relaying cells is comparatively
inexpensive and typically requires only symmetric encryption. Because a circuit crosses several servers, and each
server only knows the adjacent servers in the circuit, no single server can link a user to her communication partners.
The
Java Anon Proxy (also known as JAP or Web MIXes) uses fixed shared routes known as cascades. As with a
single-hop proxy, this approach aggregates users into larger anonymity sets, but again an attacker only needs to
observe both ends of the cascade to bridge all the system’s traffic. The Java Anon Proxy’s design calls for padding
between end users and the head of the cascade [
7]. However, it is not demonstrated whether the current
implementation’s padding policy improves anonymity.
PipeNet [5,12], another low-latency design proposed around the same time as Onion Routing, gave stronger
anonymity but allowed a single user to shut down the network by not sending. Systems like
ISDN mixes [38] were
designed for other environments with different assumptions.
In P2P designs like
Tarzan [24] and MorphMix [43], all participants both generate traffic and relay traffic for
others. These systems aim to conceal whether a given peer originated a request or just relayed it from another peer.
While Tarzan and MorphMix use layered encryption as above,
Crowds [42] simply assumes an adversary who
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cannot observe the initiator: it uses no public-key encryption, so any node on a circuit can read users’ traffic.
Hordes [34] is based on Crowds but also uses multicast responses to hide the initiator. Herbivore [25] and P5 [46]
go even further, requiring broadcast. These systems are designed primarily for communication among peers,
although Herbivore users can make external connections by requesting a peer to serve as a proxy.
Systems like
Freedom and the original Onion Routing build circuits all at once, using a layered “onion” of publickey encrypted messages, each layer of which provides session keys and the address of the next server in the circuit.
Tor as described herein, Tarzan, MorphMix,
Cebolla [9], and Rennhard’s Anonymity Network [44] build circuits in
stages, extending them one hop at a time. Section
4.2 describes how this approach enables perfect forward secrecy.
Circuit-based designs must choose which protocol layer to anonymize. They may intercept IP packets directly, and
relay them whole (stripping the source address) along the circuit [
8,24]. Like Tor, they may accept TCP streams and
relay the data in those streams, ignoring the breakdown of that data into TCP segments [
43,44]. Finally, like
Crowds, they may accept application-level protocols such as HTTP and relay the application requests themselves.
Making this protocol-layer decision requires a compromise between flexibility and anonymity. For example, a
system that understands HTTP can strip identifying information from requests, can take advantage of caching to
limit the number of requests that leave the network, and can batch or encode requests to minimize the number of
connections. On the other hand, an IP-level anonymizer can handle nearly any protocol, even ones unforeseen by its
designers (though these systems require kernel-level modifications to some operating systems, and so are more
complex and less portable). TCP-level anonymity networks like Tor present a middle approach: they are application
neutral (so long as the application supports, or can be tunneled across, TCP), but by treating application connections
as data streams rather than raw TCP packets, they avoid the inefficiencies of tunneling TCP over TCP.
Distributed-trust anonymizing systems need to prevent attackers from adding too many servers and thus
compromising user paths. Tor relies on a small set of well-known directory servers, run by independent parties, to
decide which nodes can join. Tarzan and MorphMix allow unknown users to run servers, and use a limited resource
(like IP addresses) to prevent an attacker from controlling too much of the network. Crowds suggests requiring
written, notarized requests from potential crowd members.
Anonymous communication is essential for censorship-resistant systems like Eternity [
2], Free Haven [19],
Publius [
53], and Tangler [52]. Tor’s rendezvous points enable connections between mutually anonymous entities;
they are a building block for location-hidden servers, which are needed by Eternity and Free Haven.
3 Design goals and assumptions
Goals
Like other low-latency anonymity designs, Tor seeks to frustrate attackers from linking communication partners, or
from linking multiple communications to or from a single user. Within this main goal, however, several
considerations have directed Tor’s evolution.
Deployability: The design must be deployed and used in the real world. Thus it must not be expensive to run (for
example, by requiring more bandwidth than volunteers are willing to provide); must not place a heavy liability
burden on operators (for example, by allowing attackers to implicate onion routers in illegal activities); and must not
be difficult or expensive to implement (for example, by requiring kernel patches, or separate proxies for every
protocol). We also cannot require non-anonymous parties (such as websites) to run our software. (Our rendezvous
point design does not meet this goal for non-anonymous users talking to hidden servers, however; see Section
5.)
Usability: A hard-to-use system has fewer users-and because anonymity systems hide users among users, a system
with fewer users provides less anonymity. Usability is thus not only a convenience: it is a security requirement [
1,5].
Tor should therefore not require modifying familiar applications; should not introduce prohibitive delays; and
should require as few configuration decisions as possible. Finally, Tor should be easily implementable on all
common platforms; we cannot require users to change their operating system to be anonymous. (Tor currently runs
on Win32, Linux, Solaris, BSD-style Unix, MacOS X, and probably others.)
Flexibility: The protocol must be flexible and well-specified, so Tor can serve as a test-bed for future research.
Many of the open problems in low-latency anonymity networks, such as generating dummy traffic or preventing

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Sybil attacks [22], may be solvable independently from the issues solved by Tor. Hopefully future systems will not
need to reinvent Tor’s design.
Simple design: The protocol’s design and security parameters must be well-understood. Additional features impose
implementation and complexity costs; adding unproven techniques to the design threatens deployability, readability,
and ease of security analysis. Tor aims to deploy a simple and stable system that integrates the best accepted
approaches to protecting anonymity.
Non-goals
In favoring simple, deployable designs, we have explicitly deferred several possible goals, either because they are
solved elsewhere, or because they are not yet solved.
Not peer-to-peer: Tarzan and MorphMix aim to scale to completely decentralized peer-to-peer environments with
thousands of short-lived servers, many of which may be controlled by an adversary. This approach is appealing, but
still has many open problems [
24,43].
Not secure against end-to-end attacks: Tor does not claim to completely solve end-to-end timing or intersection
attacks. Some approaches, such as having users run their own onion routers, may help; see Section
9 for more
discussion.
No protocol normalization: Tor does not provide protocol normalization like Privoxy or the Anonymizer. If
senders want anonymity from responders while using complex and variable protocols like HTTP, Tor must be
layered with a filtering proxy such as Privoxy to hide differences between clients, and expunge protocol features that
leak identity. Note that by this separation Tor can also provide services that are anonymous to the network yet
authenticated to the responder, like SSH. Similarly, Tor does not integrate tunneling for non-stream-based protocols
like UDP; this must be provided by an external service if appropriate.
Not steganographic: Tor does not try to conceal who is connected to the network.
3.1 Threat Model
A global passive adversary is the most commonly assumed threat when analyzing theoretical anonymity designs.
But like all practical low-latency systems, Tor does not protect against such a strong adversary. Instead, we assume
an adversary who can observe some fraction of network traffic; who can generate, modify, delete, or delay traffic;
who can operate onion routers of his own; and who can compromise some fraction of the onion routers.
In low-latency anonymity systems that use layered encryption, the adversary’s typical goal is to observe both the
initiator and the responder. By observing both ends, passive attackers can confirm a suspicion that Alice is talking to
Bob if the timing and volume patterns of the traffic on the connection are distinct enough; active attackers can
induce timing signatures on the traffic to force distinct patterns. Rather than focusing on these
traffic confirmation
attacks, we aim to prevent traffic analysis attacks, where the adversary uses traffic patterns to learn which points in
the network he should attack.
Our adversary might try to link an initiator Alice with her communication partners, or try to build a profile of Alice’s
behavior. He might mount passive attacks by observing the network edges and correlating traffic entering and
leaving the network-by relationships in packet timing, volume, or externally visible user-selected options. The
adversary can also mount active attacks by compromising routers or keys; by replaying traffic; by selectively
denying service to trustworthy routers to move users to compromised routers, or denying service to users to see if
traffic elsewhere in the network stops; or by introducing patterns into traffic that can later be detected. The adversary
might subvert the directory servers to give users differing views of network state. Additionally, he can try to
decrease the network’s reliability by attacking nodes or by performing antisocial activities from reliable nodes and
trying to get them taken down-making the network unreliable flushes users to other less anonymous systems, where
they may be easier to attack. We summarize in Section
7 how well the Tor design defends against each of these
attacks.
4 The Tor Design
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The Tor network is an overlay network; each onion router (OR) runs as a normal user-level process without any
special privileges. Each onion router maintains a TLS [
17] connection to every other onion router. Each user runs
local software called an onion proxy (OP) to fetch directories, establish circuits across the network, and handle
connections from user applications. These onion proxies accept TCP streams and multiplex them across the circuits.
The onion router on the other side of the circuit connects to the requested destinations and relays data.
Each onion router maintains a long-term identity key and a short-term onion key. The identity key is used to sign
TLS certificates, to sign the OR’s
router descriptor (a summary of its keys, address, bandwidth, exit policy, and so
on), and (by directory servers) to sign directories. The onion key is used to decrypt requests from users to set up a
circuit and negotiate ephemeral keys. The TLS protocol also establishes a short-term link key when communicating
between ORs. Short-term keys are rotated periodically and independently, to limit the impact of key compromise.
Section
4.1 presents the fixed-size cells that are the unit of communication in Tor. We describe in Section 4.2 how
circuits are built, extended, truncated, and destroyed. Section
4.3 describes how TCP streams are routed through the
network. We address integrity checking in Section
4.4, and resource limiting in Section 4.5. Finally, Section 4.6
talks about congestion control and fairness issues.
4.1 Cells
Onion routers communicate with one another, and with users’ OPs, via TLS connections with ephemeral keys. Using
TLS conceals the data on the connection with perfect forward secrecy, and prevents an attacker from modifying data
on the wire or impersonating an OR.
Traffic passes along these connections in fixed-size cells. Each cell is 512 bytes, and consists of a header and a
payload. The header includes a circuit identifier (circID) that specifies which circuit the cell refers to (many circuits
can be multiplexed over the single TLS connection), and a command to describe what to do with the cell’s payload.
(Circuit identifiers are connection-specific: each circuit has a different circID on each OP/OR or OR/OR connection
it traverses.) Based on their command, cells are either
control cells, which are always interpreted by the node that
receives them, or
relay cells, which carry end-to-end stream data. The control cell commands are: padding
(currently used for keepalive, but also usable for link padding); create or created (used to set up a new circuit); and
destroy (to tear down a circuit).
Relay cells have an additional header (the relay header) at the front of the payload, containing a streamID (stream
identifier: many streams can be multiplexed over a circuit); an end-to-end checksum for integrity checking; the
length of the relay payload; and a relay command. The entire contents of the relay header and the relay cell payload
are encrypted or decrypted together as the relay cell moves along the circuit, using the 128-bit AES cipher in
counter mode to generate a cipher stream. The relay commands are:
relay data (for data flowing down the stream),
relay begin (to open a stream), relay end (to close a stream cleanly), relay teardown (to close a broken stream), relay
connected
(to notify the OP that a relay begin has succeeded), relay extend and relay extended (to extend the circuit
by a hop, and to acknowledge),
relay truncate and relay truncated (to tear down only part of the circuit, and to
acknowledge),
relay sendme (used for congestion control), and relay drop (used to implement long-range dummies).
We give a visual overview of cell structure plus the details of relay cell structure, and then describe each of these
cell types and commands in more detail below.
4.2 Circuits and streams
Onion Routing originally built one circuit for each TCP stream. Because building a circuit can take several tenths of
a second (due to public-key cryptography and network latency), this design imposed high costs on applications like

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a second (due to public-key cryptography and network latency), this design imposed high costs on applications like
web browsing that open many TCP streams.
In Tor, each circuit can be shared by many TCP streams. To avoid delays, users construct circuits preemptively. To
limit linkability among their streams, users’ OPs build a new circuit periodically if the previous ones have been used,
and expire old used circuits that no longer have any open streams. OPs consider rotating to a new circuit once a
minute: thus even heavy users spend negligible time building circuits, but a limited number of requests can be linked
to each other through a given exit node. Also, because circuits are built in the background, OPs can recover from
failed circuit creation without harming user experience.
Figure 1: Alice builds a two-hop circuit and begins fetching a web page.
Constructing a circuit
A user’s OP constructs circuits incrementally, negotiating a symmetric key with each OR on the circuit, one hop at a
time. To begin creating a new circuit, the OP (call her Alice) sends a
create cell to the first node in her chosen path
(call him Bob). (She chooses a new circID C
AB not currently used on the connection from her to Bob.) The create
cell’s payload contains the first half of the Diffie-Hellman handshake (gx), encrypted to the onion key of the OR (call
him Bob). Bob responds with a
created cell containing gy along with a hash of the negotiated key K=gxy.
Once the circuit has been established, Alice and Bob can send one another relay cells encrypted with the negotiated
key.
1 More detail is given in the next section.
To extend the circuit further, Alice sends a
relay extend cell to Bob, specifying the address of the next OR (call her
Carol), and an encrypted g
x2 for her. Bob copies the half-handshake into a create cell, and passes it to Carol to
extend the circuit. (Bob chooses a new circID C
BC not currently used on the connection between him and Carol.
Alice never needs to know this circID; only Bob associates C
AB on his connection with Alice to CBC on his
connection with Carol.) When Carol responds with a
created cell, Bob wraps the payload into a relay extended cell
and passes it back to Alice. Now the circuit is extended to Carol, and Alice and Carol share a common key K
2 = gx2
y2
.
To extend the circuit to a third node or beyond, Alice proceeds as above, always telling the last node in the circuit to
extend one hop further.

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This circuit-level handshake protocol achieves unilateral entity authentication (Alice knows she’s handshaking with
the OR, but the OR doesn’t care who is opening the circuit-Alice uses no public key and remains anonymous) and
unilateral key authentication (Alice and the OR agree on a key, and Alice knows only the OR learns it). It also
achieves forward secrecy and key freshness. More formally, the protocol is as follows (where E
PKBob(·) is encryption
with Bob’s public key, H is a secure hash function, and
| is concatenation):
Alice -> Bob : E
PKBob(gx)
Bob -> Alice : g
y, H(K | “handshake”)
In the second step, Bob proves that it was he who received g
x, and who chose y. We use PK encryption in the first
step (rather than, say, using the first two steps of STS, which has a signature in the second step) because a single cell
is too small to hold both a public key and a signature. Preliminary analysis with the NRL protocol analyzer [
35]
shows this protocol to be secure (including perfect forward secrecy) under the traditional Dolev-Yao model.
Relay cells
Once Alice has established the circuit (so she shares keys with each OR on the circuit), she can send relay cells.
Upon receiving a relay cell, an OR looks up the corresponding circuit, and decrypts the relay header and payload
with the session key for that circuit. If the cell is headed away from Alice the OR then checks whether the decrypted
cell has a valid digest (as an optimization, the first two bytes of the integrity check are zero, so in most cases we can
avoid computing the hash). If valid, it accepts the relay cell and processes it as described below. Otherwise, the OR
looks up the circID and OR for the next step in the circuit, replaces the circID as appropriate, and sends the
decrypted relay cell to the next OR. (If the OR at the end of the circuit receives an unrecognized relay cell, an error
has occurred, and the circuit is torn down.)
OPs treat incoming relay cells similarly: they iteratively unwrap the relay header and payload with the session keys
shared with each OR on the circuit, from the closest to farthest. If at any stage the digest is valid, the cell must have
originated at the OR whose encryption has just been removed.
To construct a relay cell addressed to a given OR, Alice assigns the digest, and then iteratively encrypts the cell
payload (that is, the relay header and payload) with the symmetric key of each hop up to that OR. Because the digest
is encrypted to a different value at each step, only at the targeted OR will it have a meaningful value.
2 This leaky
pipe
circuit topology allows Alice’s streams to exit at different ORs on a single circuit. Alice may choose different
exit points because of their exit policies, or to keep the ORs from knowing that two streams originate from the same
person.
When an OR later replies to Alice with a relay cell, it encrypts the cell’s relay header and payload with the single
key it shares with Alice, and sends the cell back toward Alice along the circuit. Subsequent ORs add further layers
of encryption as they relay the cell back to Alice.
To tear down a circuit, Alice sends a
destroy control cell. Each OR in the circuit receives the destroy cell, closes all
streams on that circuit, and passes a new
destroy cell forward. But just as circuits are built incrementally, they can
also be torn down incrementally: Alice can send a
relay truncate cell to a single OR on a circuit. That OR then sends
a
destroy cell forward, and acknowledges with a relay truncated cell. Alice can then extend the circuit to different
nodes, without signaling to the intermediate nodes (or a limited observer) that she has changed her circuit. Similarly,
if a node on the circuit goes down, the adjacent node can send a
relay truncated cell back to Alice. Thus the “break a
node and see which circuits go down” attack [
4] is weakened.
4.3 Opening and closing streams
When Alice’s application wants a TCP connection to a given address and port, it asks the OP (via SOCKS) to make
the connection. The OP chooses the newest open circuit (or creates one if needed), and chooses a suitable OR on
that circuit to be the exit node (usually the last node, but maybe others due to exit policy conflicts; see Section
6.2.)
The OP then opens the stream by sending a
relay begin cell to the exit node, using a new random streamID. Once
the exit node connects to the remote host, it responds with a
relay connected cell. Upon receipt, the OP sends a
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SOCKS reply to notify the application of its success. The OP now accepts data from the application’s TCP stream,
packaging it into
relay data cells and sending those cells along the circuit to the chosen OR.
There’s a catch to using SOCKS, however-some applications pass the alphanumeric hostname to the Tor client,
while others resolve it into an IP address first and then pass the IP address to the Tor client. If the application does
DNS resolution first, Alice thereby reveals her destination to the remote DNS server, rather than sending the
hostname through the Tor network to be resolved at the far end. Common applications like Mozilla and SSH have
this flaw.
With Mozilla, the flaw is easy to address: the filtering HTTP proxy called Privoxy gives a hostname to the Tor
client, so Alice’s computer never does DNS resolution. But a portable general solution, such as is needed for SSH, is
an open problem. Modifying or replacing the local nameserver can be invasive, brittle, and unportable. Forcing the
resolver library to prefer TCP rather than UDP is hard, and also has portability problems. Dynamically intercepting
system calls to the resolver library seems a promising direction. We could also provide a tool similar to
dig to
perform a private lookup through the Tor network. Currently, we encourage the use of privacy-aware proxies like
Privoxy wherever possible.
Closing a Tor stream is analogous to closing a TCP stream: it uses a two-step handshake for normal operation, or a
one-step handshake for errors. If the stream closes abnormally, the adjacent node simply sends a
relay teardown cell.
If the stream closes normally, the node sends a
relay end cell down the circuit, and the other side responds with its
own
relay end cell. Because all relay cells use layered encryption, only the destination OR knows that a given relay
cell is a request to close a stream. This two-step handshake allows Tor to support TCP-based applications that use
half-closed connections.
4.4 Integrity checking on streams
Because the old Onion Routing design used a stream cipher without integrity checking, traffic was vulnerable to a
malleability attack: though the attacker could not decrypt cells, any changes to encrypted data would create
corresponding changes to the data leaving the network. This weakness allowed an adversary who could guess the
encrypted content to change a padding cell to a destroy cell; change the destination address in a
relay begin cell to
the adversary’s webserver; or change an FTP command from
dir to rm *. (Even an external adversary could do this,
because the link encryption similarly used a stream cipher.)
Because Tor uses TLS on its links, external adversaries cannot modify data. Addressing the insider malleability
attack, however, is more complex.
We could do integrity checking of the relay cells at each hop, either by including hashes or by using an
authenticating cipher mode like EAX [
6], but there are some problems. First, these approaches impose a messageexpansion overhead at each hop, and so we would have to either leak the path length or waste bytes by padding to a
maximum path length. Second, these solutions can only verify traffic coming from Alice: ORs would not be able to
produce suitable hashes for the intermediate hops, since the ORs on a circuit do not know the other ORs’ session
keys. Third, we have already accepted that our design is vulnerable to end-to-end timing attacks; so tagging attacks
performed within the circuit provide no additional information to the attacker.
Thus, we check integrity only at the edges of each stream. (Remember that in our leaky-pipe circuit topology, a
stream’s edge could be any hop in the circuit.) When Alice negotiates a key with a new hop, they each initialize a
SHA-1 digest with a derivative of that key, thus beginning with randomness that only the two of them know. Then
they each incrementally add to the SHA-1 digest the contents of all relay cells they create, and include with each
relay cell the first four bytes of the current digest. Each also keeps a SHA-1 digest of data received, to verify that the
received hashes are correct.
To be sure of removing or modifying a cell, the attacker must be able to deduce the current digest state (which
depends on all traffic between Alice and Bob, starting with their negotiated key). Attacks on SHA-1 where the
adversary can incrementally add to a hash to produce a new valid hash don’t work, because all hashes are end-to-end
encrypted across the circuit. The computational overhead of computing the digests is minimal compared to doing the
AES encryption performed at each hop of the circuit. We use only four bytes per cell to minimize overhead; the
chance that an adversary will correctly guess a valid hash is acceptably low, given that the OP or OR tear down the

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circuit if they receive a bad hash.
4.5 Rate limiting and fairness
Volunteers are more willing to run services that can limit their bandwidth usage. To accommodate them, Tor servers
use a token bucket approach [
50] to enforce a long-term average rate of incoming bytes, while still permitting shortterm bursts above the allowed bandwidth.
Because the Tor protocol outputs about the same number of bytes as it takes in, it is sufficient in practice to limit
only incoming bytes. With TCP streams, however, the correspondence is not one-to-one: relaying a single incoming
byte can require an entire 512-byte cell. (We can’t just wait for more bytes, because the local application may be
awaiting a reply.) Therefore, we treat this case as if the entire cell size had been read, regardless of the cell’s fullness.
Further, inspired by Rennhard et al’s design in [
44], a circuit’s edges can heuristically distinguish interactive streams
from bulk streams by comparing the frequency with which they supply cells. We can provide good latency for
interactive streams by giving them preferential service, while still giving good overall throughput to the bulk
streams. Such preferential treatment presents a possible end-to-end attack, but an adversary observing both ends of
the stream can already learn this information through timing attacks.
4.6 Congestion control
Even with bandwidth rate limiting, we still need to worry about congestion, either accidental or intentional. If
enough users choose the same OR-to-OR connection for their circuits, that connection can become saturated. For
example, an attacker could send a large file through the Tor network to a webserver he runs, and then refuse to read
any of the bytes at the webserver end of the circuit. Without some congestion control mechanism, these bottlenecks
can propagate back through the entire network. We don’t need to reimplement full TCP windows (with sequence
numbers, the ability to drop cells when we’re full and retransmit later, and so on), because TCP already guarantees
in-order delivery of each cell. We describe our response below.
Circuit-level throttling: To control a circuit’s bandwidth usage, each OR keeps track of two windows. The
packaging window tracks how many relay data cells the OR is allowed to package (from incoming TCP streams) for
transmission back to the OP, and the
delivery window tracks how many relay data cells it is willing to deliver to TCP
streams outside the network. Each window is initialized (say, to 1000 data cells). When a data cell is packaged or
delivered, the appropriate window is decremented. When an OR has received enough data cells (currently 100), it
sends a
relay sendme cell towards the OP, with streamID zero. When an OR receives a relay sendme cell with
streamID zero, it increments its packaging window. Either of these cells increments the corresponding window by
100. If the packaging window reaches 0, the OR stops reading from TCP connections for all streams on the
corresponding circuit, and sends no more relay data cells until receiving a
relay sendme cell.
The OP behaves identically, except that it must track a packaging window and a delivery window for every OR in
the circuit. If a packaging window reaches 0, it stops reading from streams destined for that OR.
Stream-level throttling: The stream-level congestion control mechanism is similar to the circuit-level mechanism.
ORs and OPs use
relay sendme cells to implement end-to-end flow control for individual streams across circuits.
Each stream begins with a packaging window (currently 500 cells), and increments the window by a fixed value (50)
upon receiving a
relay sendme cell. Rather than always returning a relay sendme cell as soon as enough cells have
arrived, the stream-level congestion control also has to check whether data has been successfully flushed onto the
TCP stream; it sends the
relay sendme cell only when the number of bytes pending to be flushed is under some
threshold (currently 10 cells’ worth).
These arbitrarily chosen parameters seem to give tolerable throughput and delay; see Section
8.
5 Rendezvous Points and hidden services
Rendezvous points are a building block for location-hidden services (also known as responder anonymity) in the Tor
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network. Location-hidden services allow Bob to offer a TCP service, such as a webserver, without revealing his IP
address. This type of anonymity protects against distributed DoS attacks: attackers are forced to attack the onion
routing network because they do not know Bob’s IP address.
Our design for location-hidden servers has the following goals.
Access-control: Bob needs a way to filter incoming
requests, so an attacker cannot flood Bob simply by making many connections to him.
Robustness: Bob should be
able to maintain a long-term pseudonymous identity even in the presence of router failure. Bob’s service must not be
tied to a single OR, and Bob must be able to migrate his service across ORs.
Smear-resistance: A social attacker
should not be able to “frame” a rendezvous router by offering an illegal or disreputable location-hidden service and
making observers believe the router created that service.
Application-transparency: Although we require users to
run special software to access location-hidden servers, we must not require them to modify their applications.
We provide location-hiding for Bob by allowing him to advertise several onion routers (his
introduction points) as
contact points. He may do this on any robust efficient key-value lookup system with authenticated updates, such as a
distributed hash table (DHT) like CFS [
11].3 Alice, the client, chooses an OR as her rendezvous point. She connects
to one of Bob’s introduction points, informs him of her rendezvous point, and then waits for him to connect to the
rendezvous point. This extra level of indirection helps Bob’s introduction points avoid problems associated with
serving unpopular files directly (for example, if Bob serves material that the introduction point’s community finds
objectionable, or if Bob’s service tends to get attacked by network vandals). The extra level of indirection also
allows Bob to respond to some requests and ignore others.
5.1 Rendezvous points in Tor
The following steps are performed on behalf of Alice and Bob by their local OPs; application integration is
described more fully below.
Bob generates a long-term public key pair to identify his service.
Bob chooses some introduction points, and advertises them on the lookup service, signing the advertisement
with his public key. He can add more later.
Bob builds a circuit to each of his introduction points, and tells them to wait for requests.
Alice learns about Bob’s service out of band (perhaps Bob told her, or she found it on a website). She
retrieves the details of Bob’s service from the lookup service. If Alice wants to access Bob’s service
anonymously, she must connect to the lookup service via Tor.
Alice chooses an OR as the rendezvous point (RP) for her connection to Bob’s service. She builds a circuit
to the RP, and gives it a randomly chosen “rendezvous cookie” to recognize Bob.
Alice opens an anonymous stream to one of Bob’s introduction points, and gives it a message (encrypted
with Bob’s public key) telling it about herself, her RP and rendezvous cookie, and the start of a DH
handshake. The introduction point sends the message to Bob.
If Bob wants to talk to Alice, he builds a circuit to Alice’s RP and sends the rendezvous cookie, the second
half of the DH handshake, and a hash of the session key they now share. By the same argument as in
Section
4.2, Alice knows she shares the key only with Bob.
The RP connects Alice’s circuit to Bob’s. Note that RP can’t recognize Alice, Bob, or the data they transmit.
Alice sends a
relay begin cell along the circuit. It arrives at Bob’s OP, which connects to Bob’s webserver.
An anonymous stream has been established, and Alice and Bob communicate as normal.
When establishing an introduction point, Bob provides the onion router with the public key identifying his service.
Bob signs his messages, so others cannot usurp his introduction point in the future. He uses the same public key to
establish the other introduction points for his service, and periodically refreshes his entry in the lookup service.
The message that Alice gives the introduction point includes a hash of Bob’s public key and an optional initial
authorization token (the introduction point can do prescreening, for example to block replays). Her message to Bob
may include an end-to-end authorization token so Bob can choose whether to respond. The authorization tokens can
be used to provide selective access: important users can get uninterrupted access. During normal situations, Bob’s

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service might simply be offered directly from mirrors, while Bob gives out tokens to high-priority users. If the
mirrors are knocked down, those users can switch to accessing Bob’s service via the Tor rendezvous system.
Bob’s introduction points are themselves subject to DoS-he must open many introduction points or risk such an
attack. He can provide selected users with a current list or future schedule of unadvertised introduction points; this is
most practical if there is a stable and large group of introduction points available. Bob could also give secret public
keys for consulting the lookup service. All of these approaches limit exposure even when some selected users
collude in the DoS.
5.2 Integration with user applications
Bob configures his onion proxy to know the local IP address and port of his service, a strategy for authorizing
clients, and his public key. The onion proxy anonymously publishes a signed statement of Bob’s public key, an
expiration time, and the current introduction points for his service onto the lookup service, indexed by the hash of
his public key. Bob’s webserver is unmodified, and doesn’t even know that it’s hidden behind the Tor network.
Alice’s applications also work unchanged-her client interface remains a SOCKS proxy. We encode all of the
necessary information into the fully qualified domain name (FQDN) Alice uses when establishing her connection.
Location-hidden services use a virtual top level domain called
.onion: thus hostnames take the form x.y.onion
where x is the authorization cookie and y encodes the hash of the public key. Alice’s onion proxy examines
addresses; if they’re destined for a hidden server, it decodes the key and starts the rendezvous as described above.
5.3 Previous rendezvous work
Rendezvous points in low-latency anonymity systems were first described for use in ISDN telephony [30,38]. Later
low-latency designs used rendezvous points for hiding location of mobile phones and low-power location
trackers [
23,40]. Rendezvous for anonymizing low-latency Internet connections was suggested in early Onion
Routing work [
27], but the first published design was by Ian Goldberg [26]. His design differs from ours in three
ways. First, Goldberg suggests that Alice should manually hunt down a current location of the service via Gnutella;
our approach makes lookup transparent to the user, as well as faster and more robust. Second, in Tor the client and
server negotiate session keys with Diffie-Hellman, so plaintext is not exposed even at the rendezvous point. Third,
our design minimizes the exposure from running the service, to encourage volunteers to offer introduction and
rendezvous services. Tor’s introduction points do not output any bytes to the clients; the rendezvous points don’t
know the client or the server, and can’t read the data being transmitted. The indirection scheme is also designed to
include authentication/authorization-if Alice doesn’t include the right cookie with her request for service, Bob need
not even acknowledge his existence.
6 Other design decisions
6.1 Denial of service
Providing Tor as a public service creates many opportunities for denial-of-service attacks against the network. While
flow control and rate limiting (discussed in Section
4.6) prevent users from consuming more bandwidth than routers
are willing to provide, opportunities remain for users to consume more network resources than their fair share, or to
render the network unusable for others.
First of all, there are several CPU-consuming denial-of-service attacks wherein an attacker can force an OR to
perform expensive cryptographic operations. For example, an attacker can fake the start of a TLS handshake,
forcing the OR to carry out its (comparatively expensive) half of the handshake at no real computational cost to the
attacker.
We have not yet implemented any defenses for these attacks, but several approaches are possible. First, ORs can

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require clients to solve a puzzle [16] while beginning new TLS handshakes or accepting create cells. So long as
these tokens are easy to verify and computationally expensive to produce, this approach limits the attack multiplier.
Additionally, ORs can limit the rate at which they accept
create cells and TLS connections, so that the
computational work of processing them does not drown out the symmetric cryptography operations that keep cells
flowing. This rate limiting could, however, allow an attacker to slow down other users when they build new circuits.
Adversaries can also attack the Tor network’s hosts and network links. Disrupting a single circuit or link breaks all
streams passing along that part of the circuit. Users similarly lose service when a router crashes or its operator
restarts it. The current Tor design treats such attacks as intermittent network failures, and depends on users and
applications to respond or recover as appropriate. A future design could use an end-to-end TCP-like
acknowledgment protocol, so no streams are lost unless the entry or exit point is disrupted. This solution would
require more buffering at the network edges, however, and the performance and anonymity implications from this
extra complexity still require investigation.
6.2 Exit policies and abuse
Exit abuse is a serious barrier to wide-scale Tor deployment. Anonymity presents would-be vandals and abusers
with an opportunity to hide the origins of their activities. Attackers can harm the Tor network by implicating exit
servers for their abuse. Also, applications that commonly use IP-based authentication (such as institutional mail or
webservers) can be fooled by the fact that anonymous connections appear to originate at the exit OR.
We stress that Tor does not enable any new class of abuse. Spammers and other attackers already have access to
thousands of misconfigured systems worldwide, and the Tor network is far from the easiest way to launch attacks.
But because the onion routers can be mistaken for the originators of the abuse, and the volunteers who run them may
not want to deal with the hassle of explaining anonymity networks to irate administrators, we must block or limit
abuse through the Tor network.
To mitigate abuse issues, each onion router’s
exit policy describes to which external addresses and ports the router
will connect. On one end of the spectrum are
open exit nodes that will connect anywhere. On the other end are
middleman nodes that only relay traffic to other Tor nodes, and private exit nodes that only connect to a local host or
network. A private exit can allow a client to connect to a given host or network more securely-an external adversary
cannot eavesdrop traffic between the private exit and the final destination, and so is less sure of Alice’s destination
and activities. Most onion routers in the current network function as
restricted exits that permit connections to the
world at large, but prevent access to certain abuse-prone addresses and services such as SMTP. The OR might also
be able to authenticate clients to prevent exit abuse without harming anonymity [
48].
Many administrators use port restrictions to support only a limited set of services, such as HTTP, SSH, or AIM. This
is not a complete solution, of course, since abuse opportunities for these protocols are still well known.
We have not yet encountered any abuse in the deployed network, but if we do we should consider using proxies to
clean traffic for certain protocols as it leaves the network. For example, much abusive HTTP behavior (such as
exploiting buffer overflows or well-known script vulnerabilities) can be detected in a straightforward manner.
Similarly, one could run automatic spam filtering software (such as SpamAssassin) on email exiting the OR
network.
ORs may also rewrite exiting traffic to append headers or other information indicating that the traffic has passed
through an anonymity service. This approach is commonly used by email-only anonymity systems. ORs can also
run on servers with hostnames like
anonymous to further alert abuse targets to the nature of the anonymous traffic.
A mixture of open and restricted exit nodes allows the most flexibility for volunteers running servers. But while
having many middleman nodes provides a large and robust network, having only a few exit nodes reduces the
number of points an adversary needs to monitor for traffic analysis, and places a greater burden on the exit nodes.
This tension can be seen in the Java Anon Proxy cascade model, wherein only one node in each cascade needs to
handle abuse complaints-but an adversary only needs to observe the entry and exit of a cascade to perform traffic
analysis on all that cascade’s users. The hydra model (many entries, few exits) presents a different compromise: only
a few exit nodes are needed, but an adversary needs to work harder to watch all the clients; see Section
10.
Finally, we note that exit abuse must not be dismissed as a peripheral issue: when a system’s public image suffers, it

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can reduce the number and diversity of that system’s users, and thereby reduce the anonymity of the system itself.
Like usability, public perception is a security parameter. Sadly, preventing abuse of open exit nodes is an unsolved
problem, and will probably remain an arms race for the foreseeable future. The abuse problems faced by Princeton’s
CoDeeN project [
37] give us a glimpse of likely issues.
6.3 Directory Servers
First-generation Onion Routing designs [8,41] used in-band network status updates: each router flooded a signed
statement to its neighbors, which propagated it onward. But anonymizing networks have different security goals
than typical link-state routing protocols. For example, delays (accidental or intentional) that can cause different parts
of the network to have different views of link-state and topology are not only inconvenient: they give attackers an
opportunity to exploit differences in client knowledge. We also worry about attacks to deceive a client about the
router membership list, topology, or current network state. Such
partitioning attacks on client knowledge help an
adversary to efficiently deploy resources against a target [
15].
Tor uses a small group of redundant, well-known onion routers to track changes in network topology and node state,
including keys and exit policies. Each such
directory server acts as an HTTP server, so clients can fetch current
network state and router lists, and so other ORs can upload state information. Onion routers periodically publish
signed statements of their state to each directory server. The directory servers combine this information with their
own views of network liveness, and generate a signed description (a
directory) of the entire network state. Client
software is pre-loaded with a list of the directory servers and their keys, to bootstrap each client’s view of the
network.
When a directory server receives a signed statement for an OR, it checks whether the OR’s identity key is
recognized. Directory servers do not advertise unrecognized ORs-if they did, an adversary could take over the
network by creating many servers [
22]. Instead, new nodes must be approved by the directory server administrator
before they are included. Mechanisms for automated node approval are an area of active research, and are discussed
more in Section
9.
Of course, a variety of attacks remain. An adversary who controls a directory server can track clients by providing
them different information-perhaps by listing only nodes under its control, or by informing only certain clients about
a given node. Even an external adversary can exploit differences in client knowledge: clients who use a node listed
on one directory server but not the others are vulnerable.
Thus these directory servers must be synchronized and redundant, so that they can agree on a common directory.
Clients should only trust this directory if it is signed by a threshold of the directory servers.
The directory servers in Tor are modeled after those in Mixminion [
15], but our situation is easier. First, we make
the simplifying assumption that all participants agree on the set of directory servers. Second, while Mixminion
needs to predict node behavior, Tor only needs a threshold consensus of the current state of the network. Third, we
assume that we can fall back to the human administrators to discover and resolve problems when a consensus
directory cannot be reached. Since there are relatively few directory servers (currently 3, but we expect as many as 9
as the network scales), we can afford operations like broadcast to simplify the consensus-building protocol.
To avoid attacks where a router connects to all the directory servers but refuses to relay traffic from other routers,
the directory servers must also build circuits and use them to anonymously test router reliability [
18]. Unfortunately,
this defense is not yet designed or implemented.
Using directory servers is simpler and more flexible than flooding. Flooding is expensive, and complicates the
analysis when we start experimenting with non-clique network topologies. Signed directories can be cached by other
onion routers, so directory servers are not a performance bottleneck when we have many users, and do not aid traffic
analysis by forcing clients to announce their existence to any central point.
7 Attacks and Defenses
Below we summarize a variety of attacks, and discuss how well our design withstands them.
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Passive attacks
Observing user traffic patterns. Observing a user’s connection will not reveal her destination or data, but it will
reveal traffic patterns (both sent and received). Profiling via user connection patterns requires further processing,
because multiple application streams may be operating simultaneously or in series over a single circuit.
Observing user content. While content at the user end is encrypted, connections to responders may not be (indeed,
the responding website itself may be hostile). While filtering content is not a primary goal of Onion Routing, Tor
can directly use Privoxy and related filtering services to anonymize application data streams.
Option distinguishability. We allow clients to choose configuration options. For example, clients concerned about
request linkability should rotate circuits more often than those concerned about traceability. Allowing choice may
attract users with different needs; but clients who are in the minority may lose more anonymity by appearing distinct
than they gain by optimizing their behavior [
1].
End-to-end timing correlation. Tor only minimally hides such correlations. An attacker watching patterns of traffic
at the initiator and the responder will be able to confirm the correspondence with high probability. The greatest
protection currently available against such confirmation is to hide the connection between the onion proxy and the
first Tor node, by running the OP on the Tor node or behind a firewall. This approach requires an observer to
separate traffic originating at the onion router from traffic passing through it: a global observer can do this, but it
might be beyond a limited observer’s capabilities.
End-to-end size correlation. Simple packet counting will also be effective in confirming endpoints of a stream.
However, even without padding, we may have some limited protection: the leaky pipe topology means different
numbers of packets may enter one end of a circuit than exit at the other.
Website fingerprinting. All the effective passive attacks above are traffic confirmation attacks, which puts them
outside our design goals. There is also a passive traffic analysis attack that is potentially effective. Rather than
searching exit connections for timing and volume correlations, the adversary may build up a database of
“fingerprints” containing file sizes and access patterns for targeted websites. He can later confirm a user’s connection
to a given site simply by consulting the database. This attack has been shown to be effective against SafeWeb [
29].
It may be less effective against Tor, since streams are multiplexed within the same circuit, and fingerprinting will be
limited to the granularity of cells (currently 512 bytes). Additional defenses could include larger cell sizes, padding
schemes to group websites into large sets, and link padding or long-range dummies.
4
Active attacks
Compromise keys. An attacker who learns the TLS session key can see control cells and encrypted relay cells on
every circuit on that connection; learning a circuit session key lets him unwrap one layer of the encryption. An
attacker who learns an OR’s TLS private key can impersonate that OR for the TLS key’s lifetime, but he must also
learn the onion key to decrypt
create cells (and because of perfect forward secrecy, he cannot hijack already
established circuits without also compromising their session keys). Periodic key rotation limits the window of
opportunity for these attacks. On the other hand, an attacker who learns a node’s identity key can replace that node
indefinitely by sending new forged descriptors to the directory servers.
Iterated compromise. A roving adversary who can compromise ORs (by system intrusion, legal coercion, or
extralegal coercion) could march down the circuit compromising the nodes until he reaches the end. Unless the
adversary can complete this attack within the lifetime of the circuit, however, the ORs will have discarded the
necessary information before the attack can be completed. (Thanks to the perfect forward secrecy of session keys,
the attacker cannot force nodes to decrypt recorded traffic once the circuits have been closed.) Additionally, building
circuits that cross jurisdictions can make legal coercion harder-this phenomenon is commonly called “jurisdictional
arbitrage.” The Java Anon Proxy project recently experienced the need for this approach, when a German court
forced them to add a backdoor to their nodes [
51].
Run a recipient. An adversary running a webserver trivially learns the timing patterns of users connecting to it, and
can introduce arbitrary patterns in its responses. End-to-end attacks become easier: if the adversary can induce users
to connect to his webserver (perhaps by advertising content targeted to those users), he now holds one end of their
connection. There is also a danger that application protocols and associated programs can be induced to reveal
information about the initiator. Tor depends on Privoxy and similar protocol cleaners to solve this latter problem.

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Run an onion proxy. It is expected that end users will nearly always run their own local onion proxy. However, in
some settings, it may be necessary for the proxy to run remotely-typically, in institutions that want to monitor the
activity of those connecting to the proxy. Compromising an onion proxy compromises all future connections
through it.
DoS non-observed nodes. An observer who can only watch some of the Tor network can increase the value of this
traffic by attacking non-observed nodes to shut them down, reduce their reliability, or persuade users that they are
not trustworthy. The best defense here is robustness.
Run a hostile OR. In addition to being a local observer, an isolated hostile node can create circuits through itself, or
alter traffic patterns to affect traffic at other nodes. Nonetheless, a hostile node must be immediately adjacent to both
endpoints to compromise the anonymity of a circuit. If an adversary can run multiple ORs, and can persuade the
directory servers that those ORs are trustworthy and independent, then occasionally some user will choose one of
those ORs for the start and another as the end of a circuit. If an adversary controls m > 1 of N nodes, he can
correlate at most ([m/N])
2 of the traffic-although an adversary could still attract a disproportionately large amount of
traffic by running an OR with a permissive exit policy, or by degrading the reliability of other routers.
Introduce timing into messages. This is simply a stronger version of passive timing attacks already discussed earlier.
Tagging attacks. A hostile node could “tag” a cell by altering it. If the stream were, for example, an unencrypted
request to a Web site, the garbled content coming out at the appropriate time would confirm the association.
However, integrity checks on cells prevent this attack.
Replace contents of unauthenticated protocols. When relaying an unauthenticated protocol like HTTP, a hostile exit
node can impersonate the target server. Clients should prefer protocols with end-to-end authentication.
Replay attacks. Some anonymity protocols are vulnerable to replay attacks. Tor is not; replaying one side of a
handshake will result in a different negotiated session key, and so the rest of the recorded session can’t be used.
Smear attacks. An attacker could use the Tor network for socially disapproved acts, to bring the network into
disrepute and get its operators to shut it down. Exit policies reduce the possibilities for abuse, but ultimately the
network requires volunteers who can tolerate some political heat.
Distribute hostile code. An attacker could trick users into running subverted Tor software that did not, in fact,
anonymize their connections-or worse, could trick ORs into running weakened software that provided users with
less anonymity. We address this problem (but do not solve it completely) by signing all Tor releases with an official
public key, and including an entry in the directory that lists which versions are currently believed to be secure. To
prevent an attacker from subverting the official release itself (through threats, bribery, or insider attacks), we provide
all releases in source code form, encourage source audits, and frequently warn our users never to trust any software
(even from us) that comes without source.
Directory attacks
Destroy directory servers. If a few directory servers disappear, the others still decide on a valid directory. So long as
any directory servers remain in operation, they will still broadcast their views of the network and generate a
consensus directory. (If more than half are destroyed, this directory will not, however, have enough signatures for
clients to use it automatically; human intervention will be necessary for clients to decide whether to trust the
resulting directory.)
Subvert a directory server. By taking over a directory server, an attacker can partially influence the final directory.
Since ORs are included or excluded by majority vote, the corrupt directory can at worst cast a tie-breaking vote to
decide whether to include marginal ORs. It remains to be seen how often such marginal cases occur in practice.
Subvert a majority of directory servers. An adversary who controls more than half the directory servers can include
as many compromised ORs in the final directory as he wishes. We must ensure that directory server operators are
independent and attack-resistant.
Encourage directory server dissent. The directory agreement protocol assumes that directory server operators agree
on the set of directory servers. An adversary who can persuade some of the directory server operators to distrust one
another could split the quorum into mutually hostile camps, thus partitioning users based on which directory they
use. Tor does not address this attack.
Trick the directory servers into listing a hostile OR. Our threat model explicitly assumes directory server operators
will be able to filter out most hostile ORs.

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Convince the directories that a malfunctioning OR is working. In the current Tor implementation, directory servers
assume that an OR is running correctly if they can start a TLS connection to it. A hostile OR could easily subvert
this test by accepting TLS connections from ORs but ignoring all cells. Directory servers must actively test ORs by
building circuits and streams as appropriate. The tradeoffs of a similar approach are discussed in [
18].
Attacks against rendezvous points
Make many introduction requests. An attacker could try to deny Bob service by flooding his introduction points with
requests. Because the introduction points can block requests that lack authorization tokens, however, Bob can
restrict the volume of requests he receives, or require a certain amount of computation for every request he receives.
Attack an introduction point. An attacker could disrupt a location-hidden service by disabling its introduction points.
But because a service’s identity is attached to its public key, the service can simply re-advertise itself at a different
introduction point. Advertisements can also be done secretly so that only high-priority clients know the address of
Bob’s introduction points or so that different clients know of different introduction points. This forces the attacker to
disable all possible introduction points.
Compromise an introduction point. An attacker who controls Bob’s introduction point can flood Bob with
introduction requests, or prevent valid introduction requests from reaching him. Bob can notice a flood, and close
the circuit. To notice blocking of valid requests, however, he should periodically test the introduction point by
sending rendezvous requests and making sure he receives them.
Compromise a rendezvous point. A rendezvous point is no more sensitive than any other OR on a circuit, since all
data passing through the rendezvous is encrypted with a session key shared by Alice and Bob.
8 Early experiences: Tor in the Wild
As of mid-May 2004, the Tor network consists of 32 nodes (24 in the US, 8 in Europe), and more are joining each
week as the code matures. (For comparison, the current remailer network has about 40 nodes.) Each node has at
least a 768Kb/768Kb connection, and many have 10Mb. The number of users varies (and of course, it’s hard to tell
for sure), but we sometimes have several hundred users-administrators at several companies have begun sending
their entire departments’ web traffic through Tor, to block other divisions of their company from reading their traffic.
Tor users have reported using the network for web browsing, FTP, IRC, AIM, Kazaa, SSH, and recipientanonymous email via rendezvous points. One user has anonymously set up a Wiki as a hidden service, where other
users anonymously publish the addresses of their hidden services.
Each Tor node currently processes roughly 800,000 relay cells (a bit under half a gigabyte) per week. On average,
about 80% of each 498-byte payload is full for cells going back to the client, whereas about 40% is full for cells
coming from the client. (The difference arises because most of the network’s traffic is web browsing.) Interactive
traffic like SSH brings down the average a lot-once we have more experience, and assuming we can resolve the
anonymity issues, we may partition traffic into two relay cell sizes: one to handle bulk traffic and one for interactive
traffic.
Based in part on our restrictive default exit policy (we reject SMTP requests) and our low profile, we have had no
abuse issues since the network was deployed in October 2003. Our slow growth rate gives us time to add features,
resolve bugs, and get a feel for what users actually want from an anonymity system. Even though having more users
would bolster our anonymity sets, we are not eager to attract the Kazaa or warez communities-we feel that we must
build a reputation for privacy, human rights, research, and other socially laudable activities.
As for performance, profiling shows that Tor spends almost all its CPU time in AES, which is fast. Current latency
is attributable to two factors. First, network latency is critical: we are intentionally bouncing traffic around the world
several times. Second, our end-to-end congestion control algorithm focuses on protecting volunteer servers from
accidental DoS rather than on optimizing performance. To quantify these effects, we did some informal tests using a
network of 4 nodes on the same machine (a heavily loaded 1GHz Athlon). We downloaded a 60 megabyte file from
debian.org every 30 minutes for 54 hours (108 sample points). It arrived in about 300 seconds on average,
compared to 210s for a direct download. We ran a similar test on the production Tor network, fetching the front page
of
cnn.com (55 kilobytes): while a direct download consistently took about 0.3s, the performance through Tor
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varied. Some downloads were as fast as 0.4s, with a median at 2.8s, and 90% finishing within 5.3s. It seems that as
the network expands, the chance of building a slow circuit (one that includes a slow or heavily loaded node or link)
is increasing. On the other hand, as our users remain satisfied with this increased latency, we can address our
performance incrementally as we proceed with development.
Although Tor’s clique topology and full-visibility directories present scaling problems, we still expect the network to
support a few hundred nodes and maybe 10,000 users before we’re forced to become more distributed. With luck,
the experience we gain running the current topology will help us choose among alternatives when the time comes.
9 Open Questions in Low-latency Anonymity
In addition to the non-goals in Section 3, many questions must be solved before we can be confident of Tor’s
security.
Many of these open issues are questions of balance. For example, how often should users rotate to fresh circuits?
Frequent rotation is inefficient, expensive, and may lead to intersection attacks and predecessor attacks [
54], but
infrequent rotation makes the user’s traffic linkable. Besides opening fresh circuits, clients can also exit from the
middle of the circuit, or truncate and re-extend the circuit. More analysis is needed to determine the proper tradeoff.
How should we choose path lengths? If Alice always uses two hops, then both ORs can be certain that by colluding
they will learn about Alice and Bob. In our current approach, Alice always chooses at least three nodes unrelated to
herself and her destination. Should Alice choose a random path length (e.g. from a geometric distribution) to foil an
attacker who uses timing to learn that he is the fifth hop and thus concludes that both Alice and the responder are
running ORs?
Throughout this paper, we have assumed that end-to-end traffic confirmation will immediately and automatically
defeat a low-latency anonymity system. Even high-latency anonymity systems can be vulnerable to end-to-end
traffic confirmation, if the traffic volumes are high enough, and if users’ habits are sufficiently distinct [
14,31]. Can
anything be done to make low-latency systems resist these attacks as well as high-latency systems? Tor already
makes some effort to conceal the starts and ends of streams by wrapping long-range control commands in identicallooking relay cells. Link padding could frustrate passive observers who count packets; long-range padding could
work against observers who own the first hop in a circuit. But more research remains to find an efficient and
practical approach. Volunteers prefer not to run constant-bandwidth padding; but no convincing traffic shaping
approach has been specified. Recent work on long-range padding [
33] shows promise. One could also try to reduce
correlation in packet timing by batching and re-ordering packets, but it is unclear whether this could improve
anonymity without introducing so much latency as to render the network unusable.
A cascade topology may better defend against traffic confirmation by aggregating users, and making padding and
mixing more affordable. Does the hydra topology (many input nodes, few output nodes) work better against some
adversaries? Are we going to get a hydra anyway because most nodes will be middleman nodes?
Common wisdom suggests that Alice should run her own OR for best anonymity, because traffic coming from her
node could plausibly have come from elsewhere. How much mixing does this approach need? Is it immediately
beneficial because of real-world adversaries that can’t observe Alice’s router, but can run routers of their own?
To scale to many users, and to prevent an attacker from observing the whole network, it may be necessary to support
far more servers than Tor currently anticipates. This introduces several issues. First, if approval by a central set of
directory servers is no longer feasible, what mechanism should be used to prevent adversaries from signing up many
colluding servers? Second, if clients can no longer have a complete picture of the network, how can they perform
discovery while preventing attackers from manipulating or exploiting gaps in their knowledge? Third, if there are
too many servers for every server to constantly communicate with every other, which non-clique topology should
the network use? (Restricted-route topologies promise comparable anonymity with better scalability [
13], but
whatever topology we choose, we need some way to keep attackers from manipulating their position within it [
21].)
Fourth, if no central authority is tracking server reliability, how do we stop unreliable servers from making the
network unusable? Fifth, do clients receive so much anonymity from running their own ORs that we should expect
them all to do so [
1], or do we need another incentive structure to motivate them? Tarzan and MorphMix present
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possible solutions.
When a Tor node goes down, all its circuits (and thus streams) must break. Will users abandon the system because
of this brittleness? How well does the method in Section
6.1 allow streams to survive node failure? If affected users
rebuild circuits immediately, how much anonymity is lost? It seems the problem is even worse in a peer-to-peer
environment-such systems don’t yet provide an incentive for peers to stay connected when they’re done retrieving
content, so we would expect a higher churn rate.
10 Future Directions
Tor brings together many innovations into a unified deployable system. The next immediate steps include:
Scalability: Tor’s emphasis on deployability and design simplicity has led us to adopt a clique topology, semicentralized directories, and a full-network-visibility model for client knowledge. These properties will not scale past
a few hundred servers. Section
9 describes some promising approaches, but more deployment experience will be
helpful in learning the relative importance of these bottlenecks.
Bandwidth classes: This paper assumes that all ORs have good bandwidth and latency. We should instead adopt the
MorphMix model, where nodes advertise their bandwidth level (DSL, T1, T3), and Alice avoids bottlenecks by
choosing nodes that match or exceed her bandwidth. In this way DSL users can usefully join the Tor network.
Incentives: Volunteers who run nodes are rewarded with publicity and possibly better anonymity [1]. More nodes
means increased scalability, and more users can mean more anonymity. We need to continue examining the
incentive structures for participating in Tor. Further, we need to explore more approaches to limiting abuse, and
understand why most people don’t bother using privacy systems.
Cover traffic: Currently Tor omits cover traffic-its costs in performance and bandwidth are clear but its security
benefits are not well understood. We must pursue more research on link-level cover traffic and long-range cover
traffic to determine whether some simple padding method offers provable protection against our chosen adversary.
Caching at exit nodes: Perhaps each exit node should run a caching web proxy [47], to improve anonymity for
cached pages (Alice’s request never leaves the Tor network), to improve speed, and to reduce bandwidth cost. On the
other hand, forward security is weakened because caches constitute a record of retrieved files. We must find the right
balance between usability and security.
Better directory distribution: Clients currently download a description of the entire network every 15 minutes. As
the state grows larger and clients more numerous, we may need a solution in which clients receive incremental
updates to directory state. More generally, we must find more scalable yet practical ways to distribute up-to-date
snapshots of network status without introducing new attacks.
Further specification review: Our public byte-level specification [20] needs external review. We hope that as Tor is
deployed, more people will examine its specification.
Multisystem interoperability: We are currently working with the designer of MorphMix to unify the specification
and implementation of the common elements of our two systems. So far, this seems to be relatively straightforward.
Interoperability will allow testing and direct comparison of the two designs for trust and scalability.
Wider-scale deployment: The original goal of Tor was to gain experience in deploying an anonymizing overlay
network, and learn from having actual users. We are now at a point in design and development where we can start
deploying a wider network. Once we have many actual users, we will doubtlessly be better able to evaluate some of
our design decisions, including our robustness/latency tradeoffs, our performance tradeoffs (including cell size), our
abuse-prevention mechanisms, and our overall usability.
Acknowledgments
We thank Peter Palfrader, Geoff Goodell, Adam Shostack, Joseph Sokol-Margolis, John Bashinski, and Zack Brown
for editing and comments; Matej Pfajfar, Andrei Serjantov, Marc Rennhard for design discussions; Bram Cohen for
congestion control discussions; Adam Back for suggesting telescoping circuits; and Cathy Meadows for formal

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analysis of the extend protocol. This work has been supported by ONR and DARPA.
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Footnotes:
1Actually, the negotiated key is used to derive two symmetric keys: one for each direction.
2 With 48 bits of digest per cell, the probability of an accidental collision is far lower than the chance of hardware
failure.
3 Rather than rely on an external infrastructure, the Onion Routing network can run the lookup service itself. Our
current implementation provides a simple lookup system on the directory servers.
4Note that this fingerprinting attack should not be confused with the much more complicated latency attacks of [5],
which require a fingerprint of the latencies of all circuits through the network, combined with those from the
network edges to the target user and the responder website.
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