Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them; it only takes a minute:

I want to create a system that delivers user interface response within 100ms, but which requires minutes of computation. Fortunately, I can divide it up into very small pieces, so that I could distribute this to a lot of servers, let's say 1500 servers. The query would be delivered to one of them, which then redistributes to 10-100 other servers, which then redistribute etc., and after doing the math, results propagate back again and are returned by a single server. In other words, something similar to Google Search.

The problem is, what technology should I use? Cloud computing sounds obvious, but the 1500 servers need to be prepared for their task by having task-specific data available. Can this be done using any of the existing cloud computing platforms? Or should I create 1500 different cloud computing applications and upload them all?

Edit: Dedicated physical servers does not make sense, because the average load will be very, very small. Therefore, it also does not make sense, that we run the servers ourselves - it needs to be some kind of shared servers at an external provider.

Edit2: I basically want to buy 30 CPU minutes in total, and I'm willing to spend up to $3000 on it, equivalent to $144,000 per CPU-day. The only criteria is, that those 30 CPU minutes are spread across 1500 responsive servers.

Edit3: I expect the solution to be something like "Use Google Apps, create 1500 apps and deploy them" or "Contact XYZ and write an script which their service can deploy, and you pay them based on the amount of CPU time you use" or something like that.

Edit4: A low-end webservice provider, offering at $1/month would actually solve the problem (!) - I could create 1500 accounts, and the latency is ok (I checked), and everything would be ok - except that I need the 1500 accounts to be on different servers, and I don't know any provider that has enough servers that is able to distribute my accounts on different servers. I am fully aware that the latency will differ from server to server, and that some may be unreliable - but that can be solved in software by retrying on different servers.

Edit5: I just tried it and benchmarked a low-end webservice provider at $1/month. They can do the node calculations and deliver results to my laptop in 15ms, if preloaded. Preloading can be done by making a request shortly before the actual performance is needed. If a node does not respond within 15ms, that node's part of the task can be distributed to a number of other servers, of which one will most likely respond within 15ms. Unfortunately, they don't have 1500 servers, and that's why I'm asking here.

share|improve this question
Does it have to be done in the cloud? Do you know which language this will be done in, or have you considered Erlang? Does each of the servers have to have different data, or just one application on 1500 servers? – James Black Nov 3 '09 at 6:43
@Lars: Youtube and Facebook run on PHP and they most probably have more than 1500 servers. Can you enlighten us on why you do not consider Python and PHP suitable ? – Malkocoglu Nov 3 '09 at 7:13
@Lars: How have you determined that 100ms is required? Even back in the mainframe days we only targeted subsecond for request/response cycles. Is there some sort of near realtime system consuming these responses? Is it just that you need the other 900ms for network latency, client-side formatting & rendering, etc.? Does the response need to be deterministic or is some level of jitter allowed? – Trevor Tippins Nov 3 '09 at 12:36
@Lars: I don't want to be snarky but you might want to examine what the actual requirements are. The truth may set you free! On a more +ve note it looks like GoGrid will let you borrow 200 servers w/ 6-CPU Xeons & 8 GB RAM for 8 hours at a cost of USD 12.16 each. So you could get 1200 CPUs on 200 servers for 8 hours for USD 2,432 + traffic costs. Might be worth exploring their services further. – Trevor Tippins Nov 3 '09 at 16:42
100ms? Your biggest problem is latency, not processing time. – peterchen Nov 3 '09 at 17:15

15 Answers 15

[in advance, apologies to the group for using part of the response space for meta-like matters]

From the OP, Lars D:
I do not consider [this] answer to be an answer to the question, because it does not bring me closer to a solution. I know what cloud computing is, and I know that the algorithm can be perfectly split into more than 300,000 servers if needed, although the extra costs wouldn't give much extra performance because of network latency.

I sincerely apologize for reading and responding to your question at a naive and generic level. I hope you can see how both the lack of specifity in the question itself, particularly in its original form, and also the somewhat unusual nature of the problem (1) would prompt me respond to the question in like fashion. This, and the fact that such questions on SO typically emanate from hypotheticals by folks who have put but little thought and research into the process, are my excuses for believing that I, a non-practionner [of massively distributed systems], could help your quest. The many similar responses (some of which had the benefits of the extra insight you provided) and also the many remarks and additional questions addressed to you show that I was not alone with this mindset.

(1) Unsual problem: An [apparently] mostly computational process (no mention of distributed/replicated storage structures), very highly paralellizable (1,500 servers), into fifty-millisecondish-sized tasks which collectively provide a sub-second response (? for human consumption?). And yet, a process that would only be required a few times [daily..?].

Enough looking back!
In practical terms, you may consider some of the following to help improve this SO question (or move it to other/alternate questions), and hence foster the help from experts in the domain.

  • re-posting as a distinct (more specific) question. In fact, probably several questions: eg. on the [likely] poor latency and/or overhead of mapreduce processes, on the current prices (for specific TOS and volume details), on the rack-awareness of distributed processes at various vendors etc.
  • Change the title
  • Add details about the process you have at hand (see many questions in the notes of both the question and of many of the responses)
  • in some of the questions, add tags specific to a give vendor or technique (EC2, Azure...) as this my bring in the possibly not quite unbuyist but helpful all the same, commentary from agents at these companies
  • Show that you understand that your quest is somewhat of a tall order
  • Explicitly state that you wish responses from effective practionners of the underlying technologies (maybe also include folks that are "getting their feet wet" with these technologies as well, since with the exception of the physics/high-energy folks and such, who BTW traditionnaly worked with clusters rather than clouds, many of the technologies and practices are relatively new)

Also, I'll be pleased to take the hint from you (with the implicit non-veto from other folks on this page), to delete my response, if you find that doing so will help foster better responses.

-- original response--

Warning: Not all processes or mathematical calculations can readily be split in individual pieces that can then be run in parallel...

Maybe you can check Wikipedia's entry from Cloud Computing, understanding that cloud computing is however not the only architecture which allows parallel computing.

If your process/calculation can efficitively be chunked in parallelizable pieces, maybe you can look into Hadoop, or other implementations of MapReduce, for an general understanding about these parallel processes. Also, (and I believe utilizing the same or similar algorithms), there also exist commercially available frameworks such as EC2 from amazon.

Beware however that the above systems are not particularly well suited for very quick response time. They fare better with hour long (and then some) data/number crunching and similar jobs, rather than minute long calculations such as the one you wish to parallelize so it provides results in 1/10 second.

The above frameworks are generic, in a sense that they could run processes of most any nature (again, the ones that can at least in part be chunked), but there also exist various offerings for specific applications such as searching or DNA matching etc. The search applications in particular can have very short response times (cf Google for example) and BTW this is in part tied to fact that such jobs can very easily and quickly be chunked for parallel processing.

share|improve this answer
+1 for hadoop, although it's worth pointing out that that's just one implementation of map/reduce – Rob Fonseca-Ensor Nov 3 '09 at 6:50
-1 for Hadoop. Initial Job deployment takes a minute. Don't expect a Hadoop Cluster to give results within a range of 100ms. That's not goingt to happen. – mhaller Nov 3 '09 at 7:07
@mhaller, you are right, although hadoop is oft' used for the off-line matrix crunching and other tasks such as clustering and sorting, which support fast applications, these apps are themselves not running on hadoop. I'll alter my response accordingly. My only excuse for such an imprecise response is the vague and frankly, probably naive, nature of the OP's question. – mjv Nov 3 '09 at 7:17
This algorithm works very well in chuncks, basically because it's about 350,000 completely independent calculations that need to be done. Which provider lets me use 1500 servers without paying a lot of money? – Lars D Nov 3 '09 at 7:23
Have you considered throwing hardware at the problem in the form of a GPU or three? – Tuure Laurinolli Nov 3 '09 at 7:29

Sorry, but you are expecting too much.

The problem is that you are expecting to pay for processing power only. Yet your primary constraint is latency, and you expect that to come for free. That doesn't work out. You need to figure out what your latency budgets are.

The mere aggregating of data from multiple compute servers will take several milliseconds per level. There will be a gaussian distribution here, so with 1500 servers the slowest server will respond after 3σ. Since there's going to be a need for a hierarchy, the second level with 40 servers , where again you'll be waiting for the slowest server.

Internet roundtrips also add up quickly; that too should take 20 to 30 ms of your latency budget.

Another consideration is that these hypothethical servers will spend much of their time idle. That means they're powered on, drawing electricity yet not generating revenue. Any party with that many idle servers would turn them off, or at the very least in sleep mode just to conserve electricity.

share|improve this answer
That's all assuming the servers are all set up with the applications running, the needed pages all in memory, ready to receive the requests, having just finished serving the previous request. – Stephen Denne Nov 3 '09 at 9:53
I just added an edit to my question, please read it. – Lars D Nov 3 '09 at 13:18
Doesn't really help. No commercial service has 1500 idle servers. – MSalters Nov 3 '09 at 13:47
@MSalters: They don't need to. – Lars D Nov 3 '09 at 15:59
They'd better be all idle. You don't have the latency budget to deal with retries. Hence, every server that's assigned a workpackage needs to pick it up immediately. Even if 95% of those servers are idle, you still end up waiting for 75 servers. – MSalters Nov 4 '09 at 10:15

MapReduce is not the solution! Map Reduce is used in Google, Yahoo and Microsoft for creating the indexes out of the huge data (the whole Web!) they have on their disk. This task is enormous and Map Reduce was built to make it happens in hours instead of years, but starting a Master controller of Map Reduce is already 2 seconds, so for your 100ms this is not an option.

Now, from Hadoop you may get advantages out of the distributed file system. It may allow you to distribute the tasks close to where the data is physically, but that's it. BTW: Setting up and managing an Hadoop Distributed File System means controlling your 1500 servers!

Frankly in your budget I don't see any "cloud" service that will allow you to rent 1500 servers. The only viable solution, is renting time on a Grid Computing solution like Sun and IBM are offering, but they want you to commit to hours of CPU from what I know.

BTW: On Amazon EC2 you have a new server up in a couple of minutes that you need to keep for an hour minimum!

Hope you'll find a solution!

share|improve this answer

I don't get why you would want to do that, only because "Our user interfaces generally aim to do all actions in less than 100ms, and that criteria should also apply to this".

First, 'aim to' != 'have to', its a guideline, why would u introduce these massive process just because of that. Consider 1500 ms x 100 = 150 secs = 2.5 mins. Reducing the 2.5 mins to a few seconds its a much more healthy goal. There is a place for 'we are processing your request' along with an animation.

So my answer to this is - post a modified version of the question with reasonable goals: a few secs, 30-50 servers. I don't have the answer for that one, but the question as posted here feels wrong. Could even be 6-8 multi-processor servers.

share|improve this answer
It's about cost savings. If I can do this for 1500 x $2 = $3000, I save a lot of R&D money. A very good developer in my country costs $2500 per week. – Lars D Nov 7 '09 at 7:10
Damn, I am moving to Denmark in the cargo bay of next oil tanker :-) – Malkocoglu Nov 9 '09 at 9:51

Google does it by having a gigantic farm of small Linux servers, networked together. They use a flavor of Linux that they have custom modified for their search algorithms. Costs are software development and cheap PC's.

share|improve this answer
I just added a comment to my question, to inform that the average load will be very, very small. It does not make sense to run these servers only for this purpose, that would be far too expensive. – Lars D Nov 3 '09 at 6:47
Google have their gigantic server farm in order to cope with high load - each individual request to google in itself requires very little computation. – Justin Nov 3 '09 at 16:45

It would seem that you are indeed expecting at least 1000-fold speedup from distributing your job to a number of computers. That may be ok. Your latency requirement seems tricky, though.

Have you considered the latencies inherent in distributing the job? Essentially the computers would have to be fairly close together in order to not run into speed of light issues. Also, the data center in which the machines would be would again have to be fairly close to your client so that you can get your request to them and back in less than 100 ms. On the same continent, at least.

Also note that any extra latency requires you to have many more nodes in the system. Losing 50% of available computing time to latency or anything else that doesn't parallelize requires you to double the computing capacity of the parallel portions just to keep up.

I doubt a cloud computing system would be the best fit for a problem like this. My impression at least is that the proponents of cloud computing would prefer to not even tell you where your machines are. Certainly I haven't seen any latency terms in the SLAs that are available.

share|improve this answer
Yes - if I set 10ms for sending 1kbyte from one server to another and start processing it, then the answer should be back within 100ms. The actual server count depends on the latency, of course, but if my question for 1500 is answered by someone, then the same solution can be used for 500 servers or 2500 servers. If there are no servers on my continent, I would probably not be able to achieve 100ms in total, but that would probably be ok. One problem is, that if just one server fails, the result is wrong - that's why I'm thinking about clouds. – Lars D Nov 3 '09 at 7:31

You have conflicting requirements. You're requirement for 100ms latency is directly at odds with your desire to only run your program sporadically.

One of the characteristics of the Google-search type approach you mentioned in your question is that the latency of the cluster is dependent on the slowest node. So you could have 1499 machines respond in under 100ms, but if one machine took longer, say 1s - whether due to a retry, or because it needed to page you application in, or bad connectivity - your whole cluster would take 1s to produce an answer. It's inescapable with this approach.

The only way to achieve the kinds of latencies you're seeking would be to have all of the machines in your cluster keep your program loaded in RAM - along with all the data it needs - all of the time. Having to load your program from disk, or even having to page it in from disk, is going to take well over 100ms. As soon as one of your servers has to hit the disk, it is game over for your 100ms latency requirement.

In a shared server environment, which is what we're talking about here given your cost constraints, it is a near certainty that at least one of your 1500 servers is going to need to hit the disk in order to activate your app.

So you are either going to have to pay enough to convince someone to keep you program active and in memory at all times, or you're going to have to loosen your latency requirements.

share|improve this answer
You are assuming that the program takes 100ms to run on the servers. That is not the case - on a heavy loaded share webhost at $1 per month, one hosted app can produce the result and deliver via my internet connection in 15-20ms. After 10-15ms without response on a node, a retry can be made on a number of other servers. In case that the servers need a preload, that can be done before running it, I'll add that to the original question. – Lars D Nov 6 '09 at 7:06
sdtom is just saying that a program (that runs 1 second/day) and its related data is not kept in memory whole-time by the OS. Just open some program like IE, minimize it, do not touch it for a while, do other stuff, then activate IE window. This will take some time and you will see some disk activity. This means the OS has reclaimed the memory (code+data) that it has given to IE after certain amount of inactivity... – Malkocoglu Nov 6 '09 at 13:02
I added an edit which explains, how this is actually possible on a low-end hosting provider, which just happens to have too few servers. – Lars D Nov 7 '09 at 8:59

Two trains of thought:

a) if those restraints are really, absolutely, truly founded in common sense, and doable in the way you propose in the nth edit, it seems the presupplied data is not huge. So how about trading storage for precomputation to time. How big would the table(s) be? Terabytes are cheap!

b) This sounds a lot like a employer / customer request that is not well founded in common sense. (from my experience)

Let´s assume the 15 minutes of computation time on one core. I guess thats what you say. For a reasonable amount of money, you can buy a system with 16 proper, 32 hyperthreading cores and 48 GB RAM.

This should bring us in the 30 second range. Add a dozen Terabytes of storage, and some precomputation. Maybe a 10x increase is reachable there. 3 secs. Are 3 secs too slow? If yes, why?

share|improve this answer
I'm trying to reduce programming costs and shorten time-to-market by spending more computing power on the problem. If the concept shows to be successful, we can spend more programmer time on making it more energy efficient ;-) Basically, I don't get the resources for implementing it properly, until I can demonstrate that it works. – Lars D Nov 7 '09 at 7:20

Sounds like you need to utilise an algorithm like MapReduce: Simplified Data Processing on Large Clusters


share|improve this answer

Check out Parallel computing and related articles in this WikiPedia-article - "Concurrent programming languages, libraries, APIs, and parallel programming models have been created for programming parallel computers." ...

share|improve this answer

You'll find a lot about such questions on

share|improve this answer

Although Cloud Computing is the cool new kid in town, your scenario sounds more like you need a cluster, i.e. how can I use parallelism to solve a problem in a shorter time. My solution would be:

  1. Understand that if you got a problem that can be solved in n time steps on one cpu, does not guarantee that it can be solved in n/m on m cpus. Actually n/m is the theoretical lower limit. Parallelism is usually forcing you to communicate more and therefore you'll hardly ever achieve this limit.
  2. Parallelize your sequential algorithm, make sure it is still correct and you don't get any race conditions
  3. Find a provider, see what he can offer you in terms of programming languages / APIs (no experience with that)
share|improve this answer

What you're asking for doesn't exist, for the simple reason that doing this would require having 1500 instances of your application (likely with substantial in-memory data) idle on 1500 machines - consuming resources on all of them. None of the existing cloud computing offerings bill on such a basis. Platforms like App Engine and Azure don't give you direct control over how your application is distributed, while platforms like Amazon's EC2 charge by the instance-hour, at a rate that would cost you over $2000 a day.

share|improve this answer
Some cheap providers allows you to host C++ native code programs, that are activated by a webserver. Having that on 1500 servers would solve my problem. – Lars D Nov 4 '09 at 18:18

Sorry, I put this as a comment, but I wanted to offer an answer:

You say

"the algorithm works very well in chuncks, basically because it's about 350,000 completely independent calculations that need to be done."

From my understanding "completely independent" means the calculations act on the same initially available parameters and none has to wait for another one to return the result to be used as input. If that is true, then you can make a controller and 1500 web services. Each web service could be hosted on a separate server. The controller sends out the requests to the web services with the initial parameters and gets back the results and parses them.

share|improve this answer
XML over HTTP crawls. Would introduce latencies. Would advise use of native or custom protocols. – Cat Man Do Nov 4 '09 at 22:31
up vote 0 down vote accepted

I moved the question to

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.