13 TCP Reno and Congestion Management¶
This chapter addresses how TCP manages congestion, both for the connection’s own benefit (to improve its throughput) and for the benefit of other connections as well (which may result in our connection reducing its own throughput). Early work on congestion culminated in 1990 with the flavor of TCP known as TCP Reno. The congestion-management mechanisms of TCP Reno remain the dominant approach on the Internet today, though alternative TCPs are an active area of research and we will consider a few of them in 15 Newer TCP Implementations.
The central TCP mechanism here is for a connection to adjust its window size. A smaller winsize means fewer packets are out in the Internet at any one time, and less traffic means less congestion. A larger winsize means better throughput, up to a point. All TCPs reduce winsize when congestion is apparent, and increase it when it is not. The trick is in figuring out when and by how much to make these winsize changes. Many of the improvements to TCP have come from mining more and more information from the stream of returning ACKs.
Recall Chiu and Jain’s definition from 1.7 Congestion that the “knee” of congestion occurs when the queue first starts to grow, and the “cliff” of congestion occurs when packets start being dropped. Congestion can be managed at either point, though dropped packets can be a significant waste of resources. Some newer TCP strategies attempt to take action at the congestion knee (starting with 15.4 TCP Vegas), but TCP Reno is a cliff-based strategy: packets must be lost before the sender reduces the window size.
In 19 Quality of Service we will consider some router-centric alternatives to TCP for Internet congestion management. However, for the most part these have not been widely adopted, and TCP is all that stands in the way of Internet congestive collapse.
The first question one might ask about TCP congestion management is just how did it get this job? A TCP sender is expected to monitor its transmission rate so as to cooperate with other senders to reduce overall congestion among the routers. While part of the goal of every TCP node is good, stable performance for its own connections, this emphasis on end-user cooperation introduces the prospect of “cheating”: a host might be tempted to maximize the throughput of its own connections at the expense of others. Putting TCP nodes in charge of congestion among the core routers is to some degree like putting the foxes in charge of the henhouse. More accurately, such an arrangement has the potential to lead to the Tragedy of the Commons. Multiple TCP senders share a common resource – the Internet backbone – and while the backbone is most efficient if every sender cooperates, each individual sender can improve its own situation by sending faster than allowed. Indeed, one of the arguments used by virtual-circuit routing adherents is that it provides support for the implementation of a wide range of congestion-management options under control of a central authority.
Nonetheless, TCP has been quite successful at distributed congestion management. In part this has been because system vendors do have an incentive to take the big-picture view, and in the past it has been quite difficult for individual users to replace their TCP stacks with rogue versions. Another factor contributing to TCP’s success here is that most bad TCP behavior requires cooperation at the server end, and most server managers have an incentive to behave cooperatively. Servers generally want to distribute bandwidth fairly among their multiple clients, and – theoretically at least – a server’s ISP could penalize misbehavior. So far, at least, the TCP approach has worked remarkably well.
13.1 Basics of TCP Congestion Management¶
TCP’s congestion management is window-based; that is, TCP adjusts its window size to adapt to congestion. The window size can be thought of as the number of packets out there in the network; more precisely, it represents the number of packets and ACKs either in transit or enqueued. An alternative approach often used for real-time systems is rate-based congestion management, which runs into an unfortunate difficulty if the sending rate momentarily happens to exceed the available rate.
In the very earliest days of TCP, the window size for a TCP connection came from the AdvertisedWindow value suggested by the receiver, essentially representing how many packet buffers it could allocate. This value is often quite large, to accommodate large bandwidth×delay products, and so is often reduced out of concern for congestion. When winsize is adjusted downwards for this reason, it is generally referred to as the Congestion Window, or
cwnd (a variable name first appearing in Berkeley Unix). Strictly speaking, winsize = min(
If TCP is sending over an idle network, the per-packet RTT will be RTTnoLoad, the travel time with no queuing delays. As we saw in 6.3.2 RTT Calculations, (RTT−RTTnoLoad) is the time each packet spends in the queue. The path bandwidth is winsize/RTT, and so the number of packets in queues is winsize × (RTT−RTTnoLoad) / RTT. Usually all the queued packets are at the router at the head of the bottleneck link. Note that the sender can calculate this number (assuming we can estimate RTTnoLoad; the most common approach is to assume that the smallest RTT measured corresponds to RTTnoLoad).
TCP’s self-clocking (ie that new transmissions are paced by returning ACKs) guarantees that, again assuming an otherwise idle network, the queue will build only at the bottleneck router. Self-clocking means that the rate of packet transmissions is equal to the available bandwidth of the bottleneck link. There are some spikes when a burst of packets is sent (eg when the sender increases its window size), but in the steady state self-clocking means that packets accumulate only at the bottleneck.
We will return to the case of the non-otherwise-idle network in the next chapter, in 14.2 Bottleneck Links with Competition.
The “optimum” window size for a TCP connection would be bandwidth × RTTnoLoad. With this window size, the sender has exactly filled the transit capacity along the path to its destination, and has used none of the queue capacity.
Actually, TCP Reno does not do this.
Instead, TCP Reno does the following:
- guesses at a reasonable initial window size, using a form of polling
- slowly increases the window size if no losses occur, on the theory that maximum available throughput may not yet have been reached
- rapidly decreases the window size otherwise, on the theory that if losses occur then drastic action is needed
In practice, this usually leaves TCP’s window size well above the theoretical “optimum”.
One interpretation of TCP’s approach is that there is a time-varying “ceiling” on the number of packets the network can accept. Each sender tries to stay near but just below this level. Occasionally a sender will overshoot and a packet will be dropped somewhere, but this just teaches the sender a little more about where the network ceiling is. More formally, this ceiling represents the largest
cwnd that does not lead to packet loss, ie the
cwnd that at that particular moment completely fills but does not overflow the bottleneck queue. We have reached the ceiling when the queue is full.
In Chiu and Jain’s terminology, the far side of the ceiling is the “cliff”, at which point packets are lost. TCP tries to stay above the “knee”, which is the point when the queue first begins to be persistently utilized, thus keeping the queue at least partially occupied; whenever it sends too much and falls off the “cliff”, it retreats.
The ceiling concept is often useful, but not necessarily as precise as it might sound. If we have reached the ceiling by gradually expanding the sliding-windows window size, then winsize will be as large as possible. But if the sender suddenly releases a burst of packets, the queue may fill and we will have reached a “temporary ceiling” without fully utilizing the transit capacity. Another source of ceiling ambiguity is that the bottleneck link may be shared with other connections, in which case the ceiling represents our connection’s particular share, which may fluctuate greatly with time. Finally, at the point when the ceiling is reached, the queue is full and so there are a considerable number of packets waiting in the queue; it is not possible for a sender to pull back instantaneously.
It is time to acknowledge the existence of different versions of TCP, each incorporating different congestion-management algorithms. The two we will start with are TCP Tahoe (1988) and TCP Reno (1990); the names Tahoe and Reno were originally the codenames of the Berkeley Unix distributions that included these respective TCP implementations. The ideas behind TCP Tahoe came from a 1988 paper by Jacobson and Karels [JK88]; TCP Reno then refined this a couple years later. TCP Reno is still in widespread use over twenty years later, and is still the undisputed TCP reference implementation, although some modest improvements (NewReno, SACK) have crept in.
A common theme to the development of improved implementations of TCP is for one end of the connection (usually the sender) to extract greater and greater amounts of information from the packet flow. For example, TCP Tahoe introduced the idea that duplicate ACKs likely mean a lost packet; TCP Reno introduced the idea that returning duplicate ACKs are associated with packets that have successfully been transmitted but follow a loss. TCP Vegas (15.4 TCP Vegas) introduced the fine-grained measurement of RTT, to detect when RTT > RTTnoLoad.
It is often helpful to think of a TCP sender as having breaks between successive windowfuls; that is, the sender sends
cwnd packets, is briefly idle, and then sends another
cwnd packets. The successive windowfuls of packets are often called flights. The existence of any separation between flights is, however, not guaranteed.
13.1.1 The Somewhat-Steady State¶
We will begin with the state in which TCP has established a reasonable guess for
cwnd, comfortably below the Advertised Window Size, and which largely appears to be working. TCP then engages in some fine-tuning. This TCP “steady state” – steady here in the sense of regular oscillation – is usually referred to as the congestion avoidance phase, though all phases of the process are ultimately directed towards avoidance of congestion. The central strategy is that when a packet is lost,
cwnd should decrease rapidly, but otherwise should increase “slowly”. This leads to slow oscillation of
cwnd, which over time allows the average
cwnd to adapt to long-term changes in the network capacity.
As TCP finishes each windowful of packets, it notes whether a loss occurred. The
cwnd-adjustment rule introduced by TCP Tahoe and [JK88] is the following:
- if there were no losses in the previous windowful,
- if packets were lost,
We are informally measuring
cwnd in units of full packets; strictly speaking,
cwnd is measured in bytes and is incremented by the maximum TCP segment size.
This strategy here is known as Additive Increase, Multiplicative Decrease, or AIMD;
cwnd+1 is the additive increase and
cwnd/2 is the multiplicative decrease. Typically, setting
cwnd/2 is a medium-term goal; in fact, TCP Tahoe briefly sets
cwnd=1 in the immediate aftermath of an actual timeout.
With no losses, TCP will send successive windowfuls of, say, 20, 21, 22, 23, 24, .... This amounts to conservative “probing” of the network and, in particular, of the queue at the bottleneck router. TCP tries larger
cwnd values because the absence of loss means the current
cwnd is below the “network ceiling”; that is, the queue at the bottleneck router is not yet overfull.
If a loss occurs (including multiple losses in a single windowful), TCP’s response is to cut the window size in half. (As we will see, TCP Tahoe actually handles this in a somewhat roundabout way.) Informally, the idea is that the sender needs to respond aggressively to congestion. More precisely, lost packets mean the queue of the bottleneck router has filled, and the sender needs to dial back to a level that will allow the queue to clear. If we assume that the transit capacity is roughly equal to the queue capacity (say each is equal to N), then we overflow the queue and drop packets when
cwnd = 2N, and so
cwnd/2 leaves us with
cwnd = N, which just fills the transit capacity and leaves the queue empty.
(When the sender sets
cwnd=N, the actual number of packets in transit takes at least one RTT to fall from 2N to N.)
Of course, assuming any relationship between transit capacity and queue capacity is highly speculative. On a 5,000 km fiber-optic link with a bandwidth of 1 Gbps, the round-trip transit capacity would be about 6 MB. That is much larger than the likely size of any router queue. A more contemporary model of a typical long-haul high-bandwidth TCP path might be that the queue size is a small fraction of the bandwidth×delay product; we return to this in 13.7 TCP and Bottleneck Link Utilization.
Note that if TCP experiences a packet loss, and there is an actual timeout, then the sliding-window pipe has drained. No packets are in flight. No self-clocking can govern new transmissions. Sliding windows therefore needs to restart from scratch.
The congestion-avoidance algorithm leads to the classic “TCP sawtooth” graph, where the peaks are at the points where the slowly rising
cwnd crossed above the “network ceiling”. We emphasize that the TCP sawtooth is specific to TCP Reno and related TCP implementations that share Reno’s additive-increase/multiplicative-decrease mechanism.
During periods of no loss, TCP’s
cwnd increases linearly; when a loss occurs, TCP sets
cwnd/2. This diagram is an idealization as when a loss occurs it takes the sender some time to discover it, perhaps as much as the TimeOut interval.
The fluctuation shown here in the red ceiling curve is somewhat arbitrary. If there are only one or two other competing senders, the ceiling variation may be quite dramatic, but with many concurrent senders the variations may be smoothed out.
18.104.22.168 A first look at fairness¶
The transit capacity of the path is more-or-less unvarying, as is the physical capacity of the queue at the bottleneck router. However, these capacities are also shared with other connections, which may come and go with time. This is why the ceiling does vary in real terms. If two other connections share a path with total capacity 60 packets, the “fairest” allocation might be for each connection to get about 20 packets as its share. If one of those other connections terminates, the two remaining ones might each rise to 30 packets. And if instead a fourth connection joins the mix, then after equilibrium is reached each connection might hope for a fair share of 15 packets.
Will this kind of “fair” allocation actually happen? Or might we end up with one connection getting 90% of the bandwidth while two others each get 5%?
Chiu and Jain [CJ89] showed that the additive-increase/multiplicative-decrease algorithm does indeed converge to roughly equal bandwidth sharing when two connections have a common bottleneck link, provided also that
- both connections have the same RTT
- during any given RTT, either both connections experience a packet loss, or neither connection does
To see this, let
cwnd2 be the connections’ congestion-window sizes, and consider the quantity
cwnd2. For any RTT in which there is no loss,
cwnd2 both increment by 1, and so
cwnd2 stays the same. If there is a loss, then both are cut in half and so
cwnd2 is also cut in half. Thus, over time, the original value of
cwnd2 is repeatedly cut in half (during each RTT in which losses occur) until it dwindles to inconsequentiality, at which point
Graphical and tabular versions of this same argument are in the next chapter, in 14.3 TCP Fairness with Synchronized Losses.
The second bulleted hypothesis above we may call the synchronized-loss hypothesis. While it is very reasonable to suppose that the two connections will experience the same number of losses as a long-term average, it is a much stronger statement to suppose that all loss events are shared by both connections. This behavior may not occur in real life and has been the subject of some debate; see [GV02]. We return to this point in 16.3 Two TCP Senders Competing. Fortunately, equal-RTT fairness still holds if each connection is equally likely to experience a packet loss: both connections will have the same loss rate, and so, as we shall see in 14.5 TCP Reno loss rate versus cwnd, will have the same
cwnd. However, convergence to fairness may take rather much longer. In 14.3 TCP Fairness with Synchronized Losses we also look at some alternative hypotheses for the unequal-RTT case.
13.2 Slow Start¶
How do we make that initial guess as to the network capacity? What value of
cwnd should we begin with? And even if we have a good target for
cwnd, how do we avoid flooding the network sending an initial burst of packets?
The answer is known as slow start. If you are trying to guess a number in a fixed range, you are likely to use binary search. Not knowing the range for the “network ceiling”, a good strategy is to guess
cwnd=2) at first and keep doubling until you have gone too far. Then revert to the previous guess, which is known to have worked. At this point you are guaranteed to be within 50% of the true capacity.
The actual slow-start mechanism is to increment
cwnd by 1 for each ACK received. This seems linear, but that is misleading: after we send a windowful of packets (
cwnd many), we have received
cwnd ACKs and so have incremented
cwnd-many times, and so have set
cwnd to (
cwnd) = 2×
cwnd. In other words,
cwnd×2 after each windowful is the same as
cwnd+=1 after each packet.
Assuming packets travel together in windowfuls, all this means
cwnd doubles each RTT during slow start; this is possibly the only place in the computer science literature where exponential growth is described as “slow”. It is indeed slower, however, than the alternative of sending an entire windowful at once.
Here is a diagram of slow start in action. This diagram makes the implicit assumption that the no-load RTT is large enough to hold well more than the 8 packets of the maximum window size shown.
For a different case, with a much smaller RTT, see 13.2.3 Slow-Start Multiple Drop Example.
Eventually the bottleneck queue gets full, and drops a packet. Let us suppose this is after N RTTs, so
cwnd=2N. Then during the previous RTT,
cwnd=2N-1 worked successfully, so we go back to that previous value by setting
13.2.1 Per-ACK Responses¶
During slow start, incrementing
cwnd by one per ACK received is equivalent to doubling
cwnd after each windowful. We can find a similar equivalence for the congestion-avoidance phase, above.
During congestion avoidance,
cwnd is incremented by 1 after each windowful. To formulate this as a per-ACK increase, we spread this increment of 1 over the entire windowful, which of course has size
cwnd. This amounts to the following upon each ACK received:
This is a slight approximation, because
cwnd keeps changing, but it works well in practice. Because TCP actually measures
cwnd in bytes, floating-point arithmetic is normally not required; see exercise 13.0. An exact equivalent to the per-windowful incrementing strategy is
cwnd + 1/
cwnd0 is the value of
cwnd at the start of that particular windowful. Another, simpler, approach is to use
cwnd += 1/
cwnd, and to keep the fractional part recorded, but to use floor(
cwnd) (the integer part of
cwnd) when actually sending packets.
Most actual implementations keep track of
cwnd in bytes, in which case using integer arithmetic is sufficient until
cwnd becomes quite large.
If delayed ACKs are implemented (12.14 TCP Delayed ACKs), then in bulk transfers one arriving ACK actually acknowledges two packets. RFC 3465 permits a TCP receiver to increment
cwnd by 2/
cwnd in that situation, which is the response consistent with incrementing
cwnd by 1 upon receipt of enough ACKs to acknowledge an entire windowful.
13.2.2 Threshold Slow Start¶
Sometimes TCP uses slow start even when it knows the working network capacity. After a packet loss and timeout, TCP knows that a new
cwndold/2 should work. If
cwnd had been 100, TCP halves it to 50. The problem, however, is that after timeout there are no returning ACKs to self-clock the continuing transmission, and we do not want to dump 50 packets on the network all at once. So in restarting the flow TCP uses what might be called threshold slow start: it uses slow-start, but stops when
cwnd reaches the target. Specifically, on packet loss we set the variable
cwnd/2; this is our new target for
cwnd. We set
cwnd itself to 1, and switch to the slow-start mode (
cwnd += 1 for each ACK). However, as soon as
ssthresh, we switch to the congestion-avoidance mode (
cwnd += 1/
cwnd for each ACK). Note that the transition from threshold slow start to congestion avoidance is completely natural, and easy to implement.
TCP will use threshold slow-start whenever it is restarting from a pipe drain; that is, every time slow-start is needed after its very first use. (If a connection has simply been idle, non-threshold slow start is typically used when traffic starts up again.)
Threshold slow-start can be seen as an attempt at combining rapid window expansion with self-clocking.
By comparison, we might refer to the initial, non-threshold slow start as unbounded slow start. Note that unbounded slow start serves a fundamentally different purpose – initial probing to determine the network ceiling to within 50% – than threshold slow start.
Here is the TCP sawtooth diagram above, modified to show timeouts and slow start. The first two packet losses are displayed as “coarse timeouts”; the rest are displayed as if Fast Retransmit, below, were used.
RFC 2581 allows slow start to begin with
13.2.3 Slow-Start Multiple Drop Example¶
Slow start has the potential to cause multiple dropped packets at the bottleneck link; packet losses continue for quite some time because the TCP sender is slow to discover them. The network topology is as follows, where the A–R link is infinitely fast and the R–B link has a bandwidth in the R→→B direction of 1 packet/ms.
Assume that R has a queue capacity of 100, not including the packet it is currently forwarding to B, and that ACKs travel instantly from B back to A. In this and later examples we will continue to use the Data[N]/ACK[N] terminology of 6.2 Sliding Windows, beginning with N=1; TCP numbering is not done quite this way but the distinction is inconsequential.
When A uses slow-start here, the successive windowfuls will almost immediately begin to overlap. A will send one packet at T=0; it will be delivered at T=1. The ACK will travel instantly to A, at which point A will send two packets. From this point on, ACKs will arrive regularly at A at a rate of one per second. Here is a brief chart:
|Time||A receives||A sends||R sends||R’s queue|
|N||ACK[N]||2N,2N+1||N+1||N+2 .. 2N+1|
At T=N, R’s queue contains N packets. At T=100, R’s queue is full. Data, sent at T=100, will be delivered and acknowledged at T=200, giving it an RTT of 100. At T=101, R receives Data and Data and drops the latter one. Unfortunately, A’s timeout interval must of course be greater than the RTT, and so A will not detect the loss until, at an absolute minimum, T=200. At that point, A has sent packets up through Data, and the 100 packets Data, Data, ..., Data have all been lost. In other words, at the point when A first receives the news of one lost packet, in fact at least 100 packets have already been lost.
Fortunately, unbounded slow start generally occurs only once per connection.
13.2.4 Summary of TCP so far¶
So far we have the following features:
- Unbounded slow start at the beginning
- Congestion avoidance with AIMD once some semblance of a steady state is reached
- Threshold slow start after each loss
- Each threshold slow start transitioning naturally to congestion avoidance
Here is a table expressing the slow-start and congestion-avoidance phases in terms of manipulating
|per window||per window||per ACK|
The problem TCP often faces, in both slow-start and congestion-avoidance phases, is that when a packet is lost the sender will not detect this until much later (at least until the bottleneck router’s current queue has been sent); by then, it may be too late to avoid further losses.
13.3 TCP Tahoe and Fast Retransmit¶
TCP Tahoe has one more important feature. Recall that TCP ACKs are cumulative; if packets 1 and 2 have been received and now Data arrives, but not yet Data, all the receiver can (and must!) do is to send back another ACK. Thus, from the sender’s perspective, if we send packets 1,2,3,4,5,6 and get back ACK, ACK, ACK, ACK, ACK, we can infer two things:
- Data got lost, which is why we are stuck on ACK
- Data 4,5 and 6 probably did make it through, and triggered the three duplicate ACKs (the three ACKs following the first ACK).
The Fast Retransmit strategy is to resend Data[N] when we have received three dupACKs for Data[N-1]; that is, four ACK[N-1]’s in all. Because this represents a packet loss, we also set
cwnd=1, and begin the threshold-slow-start phase. The effect of this is typically to reduce the delay associated with the lost packet from that of a full timeout, typically 2×RTT, to just a little over a single RTT. The lost packet is now discovered before the TCP pipeline has drained. However, at the end of the next RTT, when the ACK of the retransmitted packet will return, the TCP pipeline will have drained, hence the need for slow start.
TCP Tahoe included all the features discussed so far: the
cwnd/2 responses, slow start and Fast Retransmit.
Fast Retransmit waits for the third dupACK to allow for the possibility of moderate packet reordering. Suppose packets 1 through 6 are sent, but they arrive in the order 1,3,4,2,6,5, perhaps due to a router along the way with an architecture that is strongly parallelized. Then the ACKs that would be sent back would be as follows:
Waiting for the third dupACK is in most cases a successful compromise between responsiveness to lost packets and reasonable evidence that the data packet in question is actually lost.
However, a router that does more substantial delivery reordering would wreck havoc on connections using Fast Retransmit. In particular, consider the router R in the diagram below; when sending packets to B it might in principle wish to alternate on a packet-by-packet basis between the path via R1 and the path via R2. This would be a mistake; if the R1 and R2 paths had different propagation delays then this strategy would introduce major packet reordering. R should send all the packets belonging to any one TCP connection via a single path.
In the real world, routers generally go to considerable lengths to accommodate Fast Retransmit; in particular, use of multiple paths for a single TCP connection is almost universally frowned upon. Some actual data on packet reordering can be found in [VP97]; the author suggests that a switch to retransmission on the second dupACK would be risky.
13.4 TCP Reno and Fast Recovery¶
Fast Retransmit requires a sender to set
cwnd=1 because the pipe has drained and there are no arriving ACKs to pace transmission. Fast Recovery is a technique that often allows the sender to avoid draining the pipe, and to move from
cwnd/2 in the space of a single RTT. TCP Reno is TCP Tahoe with the addition of Fast Recovery.
The idea is to use the arriving dupACKs to pace retransmission. We set
cwnd/2, and then to figure out how many dupACKs we have to wait for. Initially, at least, we will assume that only one packet is lost. Let
cwnd = N, and suppose we have sent packets 0 through N and packet 1 is lost (we send Data[N] only after ACK has arrived at the sender). We will then get N-1 dupACKs representing packets 2 through N.
During the recovery process, we will ignore
cwnd and instead use the concept of Estimated FlightSize, or EFS, which is the sender’s best guess at the number of outstanding packets. Under normal circumstances, EFS is the same as
cwnd, at least between packet departures and arrivals.
At the point of the third dupACK, the sender calculates as follows:
EFS had been
cwnd = N. However, one of the packets has been lost, making it
N−1. Three dupACKs have arrived, representing three later packets no
longer in flight, so EFS is now N−4. Fast Retransmit had the sender retransmit
the packet that was inferred as lost, so EFS increments by 1, to N−3. The sender expects at this point to receive N−4 more dupACKs, plus one new ACK for the retransmission of the packet that was lost. This last ACK will be for the entire original windowful.
The new target for
cwnd is N/2. So, we wait for N/2 − 3 more dupACKs to
arrive, at which point EFS is N−3−(N/2−3) = N/2. After this point the sender will resume sending new packets; it will send one new packet for each of the N/2 subsequently arriving dupACKs.
After the last of the dupACKs will come the ACK corresponding to the retransmission of the lost packet; it will actually be a cumulative ACK for all the later received packets as well. At this point the sender declares
cwnd = N/2, and resumes with sliding windows. As EFS was already N/2, and there are no lost packets outstanding, the sender has exactly one full windowful outstanding for the new value of
cwnd. That is, we are right where we are supposed to be.
Here is a detailed diagram illustrating Fast Recovery. We have
cwnd=10 initially, and Data is lost.
Data elicits the initial ACK, and the nine packets Data through Data each elicit a dupACK. We denote the dupACK elicited by Data[N] by dupACK/N; these are shown along the upper right. Unless SACK TCP (below) is used, the sender will have no way to determine N or to tell these dupACKs apart. When dupACK/13 (the third dupACK) arrives at the sender, the sender uses Fast Recovery to infer that Data was lost and retransmits it. At this point EFS = 7: the sender has sent the original batch of 10 data packets, plus Data, and received one ACK and three dupACKs, for a total of 10+1-1-3 = 7. The sender has also inferred that Data is lost (EFS −= 1) but then retransmitted it (EFS += 1). Six more dupACK’s are on the way.
EFS is decremented for each subsequent dupACK arrival; after we get two more dupACK’s, EFS is 5. The next dupACK (dupACK/16) reduces EFS to 4 and so allows us transmit Data (which promptly bumps EFS back up to 5). We have
We emphasize again that the TCP sender does not see the numbers 16 through 19 in the receive column above; it determines when to begin transmission by counting dupACK arrivals.
The next thing to arrive at the sender side is the ACK elicited by the retransmitted Data; at the point Data arrives at the receiver, Data through Data have already arrived and so the cumulative-ACK response is ACK. The sender responds to ACK with Data, and the transition to
cwnd=5 is now complete.
During sliding windows without losses, a sender will send
cwnd packets per RTT. If a “coarse” timeout occurs, typically it is not discovered until after at least one complete RTT of link idleness; there are additional underutilized RTTs during the slow-start phase. It is worth examining the Fast Recovery sequence shown in the illustration from the perspective of underutilized bandwidth. The diagram shows three round-trip times, as seen from the sender side. During the first RTT, the ten packets Data-Data are sent. The second RTT begins with the sending of Data and continues through sending Data, along with the retransmitted Data. The third RTT begins with sending Data, and includes through Data. In terms of recovery efficiency, the RTTs send 9, 5 and 5 packets respectively (we have counted Data twice); this is remarkably close to the ideal of reducing
cwnd to 5 instantaneously.
The reason we cannot use
cwnd directly in the formulation of Fast Recovery is that, until the lost Data is acknowledged, the window is frozen at Data-Data. The original RFC 2001 description of Fast Recovery described retransmission in terms of
cwnd inflation and deflation. Inflation would begin at the point the sender resumed transmitting new packets, at which point
cwnd would be incremented for each dupACK; in the diagram above,
cwnd would finish at 15. When the ACK elicited by the lost packet finally arrived, the recovery phase would end and
cwnd would immediately deflate to 5. For a diagram illustrating
cwnd inflation and deflation, see 17.2.1 Running the Script.
13.5 TCP NewReno¶
TCP NewReno, described in [JH96] and RFC 2582, introduced a modest tweak to Fast Recovery which greatly improves handling of the case when two or more packets are lost in a windowful. If two data packets are lost and the first is retransmitted, the receiver will acknowledge data up to just before the second packet, and then continue sending dupACKs of this until the second lost packet is also retransmitted. These ACKs of data up to just before the second packet are sometimes called partial ACKs, because retransmission of the first lost packet did not result in an ACK of all the outstanding data. NewReno uses these partial ACKs as evidence to retransmit later lost packets, and also to keep pacing the Fast Recovery process.
In the diagram below, packets 1 and 4 are lost in a window 0..11 of size 12. Initially the sender will get dupACK’s; the first 11 ACKs (dashed lines from right to left) are ACK and 10 dupACK’s. When packet 1 is successfully retransmitted on receipt of the third dupACK, the receiver’s response will be ACK (the heavy dashed line). This is the first partial ACK (a full ACK would have been ACK). On receipt of any partial ACK during the Fast Recovery process, TCP NewReno assumes that the immediately following data packet was lost and retransmits it immediately; the sender does not wait for three dupACKs because if the following data packet had not been lost, no instances of the partial ACK would ever have been generated, even if packet reordering had occurred.
The TCP NewReno sender response here is, in effect, to treat each partial ACK as a dupACK, except that the sender also retransmits the data packet that – based upon receipt of the partial ACK – it is able to infer is lost. NewReno continues pacing Fast Recovery by whatever ACKs arrive, whether they are the original dupACKs or later partial ACKs or dupACKs.
When the receiver’s first ACK arrives at the sender, NewReno infers that Data was lost and resends it; this is the second heavy data line. No dupACK’s need arrive; as mentioned above, the sender can infer from the single ACK that Data is lost. The sender also responds as if another dupACK had arrived, and sends Data.
The arrival of ACK signals a reduction in the EFS by 2: one for the inference that Data was lost, and one as if another dupACK had arrived; the two transmissions in response (of Data and Data) bring EFS back to where it was. At the point when Data is sent the actual (not estimated) flightsize is 5, not 6, because there is one less dupACK due to the loss of Data. However, once NewReno resends Data and then sends Data, the actual flightsize is back up to 6.
There are four more dupACK’s that arrive. NewReno keeps sending new data on receipt of each of these; these are Data through Data.
The receiver’s response to the retransmitted Data is to send ACK; this is the cumulative of all the data received up to that moment. At the point this ACK arrives back at the sender, it had just sent Data in response to the fourth dupACK; its response to ACK is to send the next data packet, Data. The sender is now back to normal sliding windows, with a
cwnd of 6. Similarly, the Data immediately following the retransmitted Data elicits an ACK (this is the first Data[N] to elicit an exactly matching ACK[N] since the losses began), and the corresponding response to the ACK is to continue with Data.
As with the previous Fast Recovery example, we consider the number of packets sent per RTT; the diagram shows four RTTs as seen from the sender side.
|RTT||First packet||Packets sent||count|
Again, after the loss is detected we segue to the new
cwnd of 6 with only a single missed packet (in the second RTT). NewReno is, however, only able to send one retransmitted packet per RTT.
Note that TCP Newreno, like TCPs Tahoe and Reno, is a sender-side innovation; the receiver does not have to do anything special. The next TCP flavor, SACK TCP, requires receiver-side modification.
13.6 SACK TCP¶
SACK TCP is TCP with Selective ACKs, so the sender does not just guess from dupACKs what has gotten through. The receiver can send an ACK that says:
- All packets up through 1000 have been received
- All packets up through 1050 have been received except for 1001, 1022, and 1035.
Note that SACK TCP involves protocol modification at both ends of the connection. Most TCP implementations now support SACK TCP.
Specifically, SACK TCP includes the following information in its acknowledgments; the additional data in the ACKs is included as a TCP Option.
- The latest cumulative ACK
- The three most recent blocks of consecutive packets received.
Thus, if we have lost 1001, 1022, 1035, and now 1051, and the highest received is 1060, the ACK might say:
- All packets up through 1000 have been received
- 1060-1052 have been received
- 1050-1036 have been received
- 1034-1023 have been received
If the sender has been paying close attention to the previous SACKs received, it likely already knows that 1002 through 1021 have been received.
In practice, selective ACKs provide at best a modest performance improvement in most situations; TCP NewReno does rather well, in moderate-loss environments. The paper [FF96] compares Tahoe, Reno, NewReno and SACK TCP, in situations involving from one to four packet losses in a single RTT. While Classic Reno performed poorly with two packet losses in a single RTT and extremely poorly with three losses, the three-loss NewReno and SACK TCP scenarios played out remarkably similarly. Only when connections experienced four losses in a single RTT did SACK TCP’s performance start to pull slightly ahead of that of NewReno.
13.8 Single Packet Losses¶
Again assuming no competition on the bottleneck link, the TCP Reno additive-increase policy has a simple consequence: at the end of each tooth, only a single packet will be lost.
To see this, let A be the sender, R be the bottleneck router, and B be the receiver:
Let T be the bandwidth delay at R, so that packets leaving R are spaced at least time T apart. A will therefore transmit packets T time units apart, except for those times when
cwnd has just been incremented and A sends a pair of packets back-to-back. Let us call the second packet of such a back-to-back pair the “extra” packet. To simplify the argument slightly, we will assume that the two packets of a pair arrive at R essentially simultaneously.
Only an extra packet can result in an increase in queue utilization; every other packet arrives after an interval T from the previous packet, giving R enough time to remove a packet from its queue.
A consequence of this is that
cwnd will reach the sum of the transit capacity and the queue capacity without R dropping a packet. (This is not necessarily the case if a
cwnd this large were sent as a single burst.)
Let C be this combined capacity, and assume
cwnd has reached C. When A executes its next
cwnd += 1 additive increase, it will as usual send a pair of back-to-back packets. The second of this pair – the extra – is doomed; it will be dropped when it reaches the bottleneck router.
At this point there are C =
cwnd − 1 packets outstanding, all spaced at time intervals of T. Sliding windows will continue normally until the ACK of the packet just before the lost packet arrives back at A. After this point, A will receive only dupACKs. A has received C =
cwnd−1 ACKs since the last increment to
cwnd, but must receive C+1 =
cwnd ACKs in order to increment
cwnd again. This will not happen, as no more new ACKs will arrive until the lost packet is transmitted.
cwnd is reduced and the next sawtooth begins; the only packet that is lost is the “extra” packet of the previous flight.
See 16.2.3 Single Losses for experimental confirmation, and exercise 14.0.
13.9 TCP Assumptions and Scalability¶
In the TCP design portrayed above, several embedded assumptions have been made. Perhaps the most important is that every loss is treated as evidence of congestion. As we shall see in the next chapter, this fails for high-bandwidth TCP (when rare random losses become significant); it also fails for TCP over wireless (either Wi-Fi or other), where lost packets are much more common than over Ethernet. See 14.9 The High-Bandwidth TCP Problem and 14.10 The Lossy-Link TCP Problem.
cwnd-increment strategy – to increment
cwnd by 1 for each RTT – has some assumptions of scale. This mechanism works well for cross-continent RTT’s on the order of 100 ms, and for
cwnd in the low hundreds. But if
cwnd = 2000, then it takes 100 RTTs – perhaps 20 seconds – for
cwnd to grow 10%; linear increase becomes proportionally quite slow. Also, if the RTT is very long, the
cwnd increase is slow. The absolute set-by-the-speed-of-light minimum RTT for geosynchronous-satellite Internet is 480 ms, and typical satellite-Internet RTTs are close to 1000 ms. Such long RTTs also lead to slow
cwnd growth; furthermore, as we shall see below, such long RTTs mean that these TCP connections compete poorly with other connections. See 14.11 The Satellite-Link TCP Problem.
Another implicit assumption is that if we have a lot of data to transfer, we will send all of it in one single connection rather than divide it among multiple connections. The web http protocol violates this routinely, though. With multiple short connections,
cwnd may never properly converge to the steady state for any of them; TCP Reno does not support carrying over what has been learned about
cwnd from one connection to the next. A related issue occurs when a connection alternates between relatively idle periods and full-on data transfer; most TCPs set
cwnd=1 and return to slow start when sending resumes after an idle period.
Finally, TCP’s Fast Retransmit assumes that routers do not significantly reorder packets.
13.10 TCP Parameters¶
In TCP Reno’s Additive Increase, Multiplicative Decrease strategy, the increase increment is 1.0 and the decrease factor is 1/2. It is natural to ask if these values have some especial significance, or what are the consequences if they are changed.
Neither of these values plays much of a role in determining the average value of
cwnd, at least in the short term; this is largely dictated by the path capacity, including the queue size of the bottleneck router. It seems clear that the exact value of the increase increment has no bearing on congestion; the per-RTT increase is too small to have a major effect here. The decrease factor of 1/2 may play a role in responding promptly to incipient congestion, in that it reduces
cwnd sharply at the first sign of lost packets. However, as we shall see in 15.4 TCP Vegas, TCP Vegas in its “normal” mode manages quite successfully with an Additive Decrease strategy, decrementing
cwnd by 1 at the point it detects approaching congestion (to be sure, it detects this well before packet loss), and, by some measures, responds better to congestion than TCP Reno. In other words, not only is the exact value of the AIMD decrease factor not critical for congestion management, but multiplicative decrease itself is not mandatory.
There are two informal justifications in [JK88] for a decrease factor of 1/2. The first is in slow start: if at the Nth RTT it is found that
cwnd = 2N is too big, the sender falls back to
cwnd/2 = 2N-1, which is known to have worked without losses the previous RTT. However, a change here in the decrease policy might best be addressed with a concomitant change to slow start; alternatively, the reduction factor of 1/2 might be left still to apply to “unbounded” slow start, while a new factor of β might apply to threshold slow start.
The second justification for the reduction factor of 1/2 applies directly to the congestion avoidance phase; written in 1988, it is quite remarkable to the modern reader:
If the connection is steady-state running and a packet is dropped, it’s probably because a new connection started up and took some of your bandwidth.... [I]t’s probable that there are now exactly two conversations sharing the bandwidth. I.e., you should reduce your window by half because the bandwidth available to you has been reduced by half. [JK88], §D
Today, busy routers may have thousands of simultaneous connections. To be sure, Jacobson and Karels go on to state, “if there are more than two connections sharing the bandwidth, halving your window is conservative – and being conservative at high traffic intensities is probably wise”. This advice remains apt today.
But while they do not play a large role in setting
cwnd or in avoiding “congestive collapse”, it turns out that these increase-increment and decrease-factor values of 1 and 1/2 respectively play a great role in fairness: making sure competing connections get the bandwidth allocation they “should” get. We will return to this in 14.3 TCP Fairness with Synchronized Losses, and also 14.7 AIMD Revisited.
TCP Reno’s core congestion algorithm is based on algorithms in Jacobson and Karel’s 1988 paper [JK88], now twenty-five years old, although NewReno and SACK have been almost universally added to the standard “Reno” implementation.
There are also broad changes in TCP usage patterns. Twenty years ago, the vast majority of all TCP traffic represented downloads from “major” servers. Today, over half of all Internet TCP traffic is peer-to-peer rather than server-to-client. The rise in online video streaming creates new demands for excellent TCP real-time performance.
In the next chapter we will examine the dynamic behavior of TCP Reno, focusing in particular on fairness between competing connections, and on other problems faced by TCP Reno senders. Then, in 15 Newer TCP Implementations, we will survey some attempts to address these problems.
Exercises are given fractional (floating point) numbers, to allow for interpolation of new exercises. Exercise 12.5 is distinct, for example, from exercises 12.0 and 13.0. Exercises marked with a ♢ have solutions or hints at :ref:`reno_solutions`.
1.0. Consider the following network, with each link other than the first having a bandwidth delay of 1 packet/second. Assume ACKs travel instantly from B to R (and thus to A). Assume there are no propagation delays, so the RTTnoLoad is 4; the bandwidth×RTT product is then 4 packets. If A uses sliding windows with a window size of 6, the queue at R1 will eventually have size 2.
Suppose A uses threshold slow start (13.2.2 Threshold Slow Start) with
ssthresh = 6, and with
cwnd initially 1. Complete the table below until two rows after
cwnd = 6; for these final two rows,
cwnd has reached
ssthresh and so A will send only one new packet for each ACK received. How big will the queue at R1 grow?
|T||A sends||R1 queues||R1 sends||B receives/ACKs||
Note that if, instead of using slow start, A simply sends the initial windowful of 6 packets all at once, then the queue at R1 will initially hold 6-1 = 5 packets.
2.0. Consider the following network from 13.2.3 Slow-Start Multiple Drop Example, with links labeled with bandwidths in packets/ms. Assume ACKs travel instantly from B to R (and thus to A).
A begins sending to B using unbounded slow start, beginning with Data at T=0. Write out a table of packet transmissions and deliveries assuming R’s queue size is 5 (not counting the packet currently being forwarded). Stop with the arrival at A of the first dupACK triggered by the arrival at B of the packet that followed the first packet that was dropped by R. No retransmissions will occur by then.
3.0. Consider the network from exercise 2.0 above. A again begins sending to B using unbounded slow start, but this time R’s queue size is 2, not counting the packet currently being forwarded. Make a table showing all packet transmissions by A, all packet drops by R, and other columns as are useful. Assume no retransmission mechanism is used at all (no timeouts, no fast retransmit), and that A sends new data only when it receives new ACKs (dupACKs, in other words, do not trigger new data transmissions). With these assumptions, new data transmissions will eventually cease; continue the table until all transmitted data packets are received by B.
4.0. Suppose a connection starts with
cwnd=1 and increments
cwnd by 1 each RTT with no loss, and sets
cwnd/2, rounding down, on each RTT with at least one loss. Lost packets are not retransmitted, and propagation delays dominate so each windowful is sent more or less together. Packets 5, 13, 14, 23 and 30 are lost. What is the window size each RTT, up until the first 40 packets are sent? What packets are sent each RTT? Hint: in the first RTT, Data is sent. There is no loss, so in the second RTT
cwnd = 2 and Data and Data are sent.
5.0. Suppose TCP Reno is used to transfer a large file over a path with bandwidth high enough that, during slow start,
cwnd can be treated as doubling each RTT as in 13.2 Slow Start. Assume the receiver places no limits on window size.
cwnd=10, for a window size of 8. Assume as before that the lost packet is Data. There will be seven dupACK’s, which it may be convenient to tag as dupACK/11 through dupACK/17. Be sure to indicate clearly when sending resumes.
7.0. Suppose the window size is 100, and Data is lost. There will be 99 dupACK’s sent, which we may denote as dupACK/1002 through dupACK/1100. TCP Reno is used.
Hint: express EFS in terms of dupACK/N, for N≥1004. The third dupACK is dupACK/1004; what is EFS at that point after retransmission of Data?
8.0. Suppose the window size is 40, and Data is lost. Packet 1000 will be ACKed normally. Packets 1001-1040 will be sent, and 1002-1040 will each trigger a duplicate ACK.
When the retransmitted Data arrives at the receiver, ACK will be sent back.
9.0. Suppose slow-start is modified so that, on each arriving ACK, three new packets are sent rather than two;
cwnd will now triple after each RTT.
cwndnow be incremented?
cwndis reached where a packet loss occurs. What window size can the sender be reasonably sure does work, based on earlier experience?
10.0. Suppose in the example of 13.5 TCP NewReno, Data had not been lost.
11.0. Suppose in the example of 13.5 TCP NewReno, Data and Data had been lost, but not Data.
12.0. Suppose two TCP connections have the same RTT and share a bottleneck link, on which there is no other traffic. The size of the bottleneck queue is negligible when compared to the bandwidth × RTTnoLoad product. Loss events occur at regular intervals, and are completely synchronized. Show that the two connections together will use 75% of the total bottleneck-link capacity, as in 13.7 TCP and Bottleneck Link Utilization (there done for a single connection).
See also Exercise 18.0 of the next chapter.
12.5. In 13.7 TCP and Bottleneck Link Utilization we showed that, if the bottleneck router queue capacity was 50% of a TCP Reno connection’s transit capacity, and there was no other traffic, then the bottleneck-link utilization would be 95.8%.
cwndmax to 4/3 the transit capacity (the value of
cwndjust before the packet loss; the exact value of
cwndmax is higher by 1).
13.0. In 13.2.1 Per-ACK Responses we stated that the per-ACK response of a TCP sender was to increment
cwnd as follows:
SMSSdenote the sender’s maximum segment size, and let
cwnddenote the congestion window as measured in bytes. Hint: solve this last equation for
cwndand plug the result in above.
cwndif delayed ACKs are used (12.14 TCP Delayed ACKs) and we still want
cwndto be incremented by 1 for each windowful? Assume we are back to measuring
14.0. In 13.8 Single Packet Losses we simplified the argument slightly by assuming that when A sent a pair of packets, they arrived at R “essentially simultaneously”.
Give a scenario in which it is not the “extra” packet (the second of the pair) that is lost, but the packet that follows it. Hint: see 22.214.171.124 Single-sender phase effects.