A friend of mine was asked this problem in an interview. I would like to discuss this problem here

What can be the efficient implementation for this problem ?

A simple idea which comes to me is normal memqueue , using Memcache machines to scale several requests, with a consumer job running which will write things from memcache to DB. and later on for the second part we can just run a sql query to find list of matching subscribers .


Events get published to this system. Each event can be thought of as containing a fixed number (N) of string columns called C1, C2, … CN. Each event can thus be passed around as an array of Strings (C1 being the 0th element in the array, C2 the 1st and so on).

There are M subscribers – S1, … SM

Each subscriber registers a predicate that specifies what subset of the events it’s interested in. Each predicate can contain:

Equality clause on columns, for example: (C1 == “US”)
Conjunctions of such clauses, example: 
    (C1 == “IN”) && (C2 == “home.php”) 
    (C1 == “IN”) && (C2 == “search.php”) && (C3 == “nytimes.com”)

(In the above examples, C1 stands for the country code of an event and C2 stands for the web page of the site and C3 the referrer code.)

ie. – each predicate is a conjunction of some number of equality conditions. Note that the predicate does not necessarily have an equality clause for ALL columns (ie. – a predicate may not care about the value of some or all columns). (In the examples above: #a does not care about the columns C3, … CN).

We have to design and code a Dispatcher that can match incoming events to registered subscribers. The incoming event rate is in millions per second. The number of subscribers is in thousands. So this dispatcher has to be very efficient. In plain words:

When the system boots, all the subscribers register their predicates to the dispatcher
After this events start coming to the dispatcher
For each event, the dispatcher has to emit the id of the matching subscribers.

In terms of an interface specification, the following can be roughly spelt out (in Java):

Class Dispatcher {

    public Dispatcher(int N /* number of columns in each event – fixed up front */);

    public void registerSubscriber( String subscriberId /* assume no conflicts */,
                                    String predicate /* predicate for this subscriberid */);

    public List<String> findMatchingIds(String[] event /* assume each event has N Strings */);


Ie.: the dispatcher is constructed, then a bunch of registerSubscriber calls are made. After this we continuously invoke the method findMatchingIds() and the goal of this exercise is to make this function as efficient as possible.

  • String predicate /* predicate for this subscriberid */ -- Shouldn't this rather be String[] predicate?
    – JimmyB
    Dec 24, 2012 at 21:41
  • No you will have to parse it yourself
    – Peter
    Dec 25, 2012 at 8:03
  • Hi, really interesting question. and form what I read in [Manning mahout in action] your problem fits the Recommender Engine. and I quote: > Recommender engines are the most immediately recognizable machine learning technique in use today it's similar to what amazon when they recommends a book for you. If you like I can post you what was his solution for such a problem. Jan 3, 2013 at 17:25
  • @Peter. actually I found this link and it's useful for you. Jan 6, 2013 at 1:25
  • @Peter : Did you try researching more about this problem? Would appreciate if you could comment on my answer, if it was what you were looking for.
    – Arvind
    Jan 7, 2013 at 16:05

4 Answers 4


As Hanno Binder implied, the problem is clearly set up to allow pre-processing the subscriptions to obtain an efficient lookup structure. Hanno says the lookup should be a map

(N, K) -> set of subscribers who specified K in field N     
(N, "") -> set of subscribers who omitted a predicate for field N

When an event arrives, just look up all the applicable sets and find their intersection. A lookup failure returns the empty set. I'm only recapping Hanno's fine answer to point out that a hash table is O(1) and perhaps faster in this application than a tree. On the other hand, intersecting trees can be faster, O(S + log N) where S is the intersection size. So it depends on the nature of the sets.


Here is my alternative lookup structure, again created only once during preprocessing. Begin by compiling a map

(N, K) -> unique token T (small integer)

There is also a distinguished token 0 that stands for "don't care."

Now every predicate can be thought of as a regular expression-like pattern with N tokens, either representing a specific event string key or "don't care."

We can now build a decision tree in advance. You can also think of this tree is a Deterministic Finite Automaton (DFA) for recognizing the patterns. Edges are labeled with tokens, including "don't care". A don't care edge is taken if no other edge matches. Accepting states contain the respective subscriber set.

Processing an event starts with converting the keys to a token pattern. If this fails due to a missing map entry, there are no subscribers. Otherwise feed the pattern to the DFA. If the DFA consumes the pattern without crashing, the final state contains the subscriber set. Return this.

For the example, we would have the map:

(1, "IN") -> 1
(2, "home.php") -> 2
(2, "search.php") -> 3
(3, "nytimes.com") -> 4

For N=4, the DFA would look like this:

o --1--> o --2--> o --0--> o --0--> o
            -3--> o --4--> o --0--> o

Note that since there are no subscribers who don't care about e.g. C1, the starting state doesn't have a don't care transition. Any event without "IN" in C1 will cause a crash, and the null set will be properly returned.

With only thousands of subscribers, the size of this DFA ought to be reasonable.

Processing time here is of course O(N) and could be very fast in practice. For real speed, the preprocessing could generate and compile a nest of C switch statements. In this fashion you might actually get millions of events per second with a small number of processors.

You might even be able to coax a standard tool like the flex scanner generator to do most of the work for you.

  • A nitpick in your answer: DFA is Deterministic Finite Automaton,not Discrete Finite Automaton
    – Arvind
    Jan 6, 2013 at 18:11

A solution that comes to my mind would be:

For each Cn we have a mapping from values to sets of subscribers for those subscribers who subscribed for a value of Cn. Additionally, for each Cn we have a set of subscribers who don't care for the value of Cn ('ANY').

When receiving an event, we look up all the subscribers with matching subscriptions for Cn and receive a set with 0 or more subscribers. To this set we add those subscribers from the 'ANY' set for this Cn.

We do this for every n <= N, yielding n sets of subscribers. The intersection of all n sets is the set of subscribers matching this event.

The mapping from Cn to subscribers can efficiently be stored as a tree, which gives a complexity O(k) = log(k) to look up the subscribers for a single Cn, given that there are subscriptions to k different values.

Thus, for n values we have a complexity of O(n,k) = n * log(k).

Intersecting n sets can also be done in O(n,m) = n * log(m), so that we end up with a logarithmic complexity in total, which shouldn't be too bad.



My initial thoughts. I feel it would be easier if the subscriber predicates for e.g.

(C1 == “IN”) && (C2 == “search.php”) && (C3 == “nytimes.com”)

that come to the Dispatcher

public void registerSubscriber

method needs to be flattened so that it is much performance friendly for comparison. Something like below (wild guess)


Then a map needs to be maintained in the memory with event string and subscriber ids

In the


method - the String array of events also need to be flattened with the similar rules so that a look up can be done for the matching subscriber id

This way the Dispatchers can be scaled horizontally serving many events in parallel


I think this is more of a design question- I don't think the interviewer would have been looking for working code . The general problem is called Content based Publish Subscribe , and if you search for papers in the same area, you would get a lot of results : For instance- this paper also

Here are few things the system would need

1) A data-store for the subscriptions which needs to store: a)Store the list of subscribers b)Store the list of subscriptions

2) A means for authenticating the requests for subscriptions and the nodes themselves a) Server-Subscribers communicate over ssl. In the case of the server handling thousands of SSL connections - It's a CPU intensive task, especially if lots of connections are set up in bursts.
b) If all the subscriber nodes are in the same trusted network, need not have ssl.

3) Whether we want a Push or Pull based model:

a)Server can maintain a latest timestamp seen per node, per filter matched. When an event matches a filter, send a notification to the subscriber. Let the client then send a request. The server then initiate sending matching events.

b)Server matches and sends filter to clients at one shot.

Difference between (a) and (b) is that, in (a) you have more state maintained on the client side. Easier to extend a subscriber-specific logic later on. In (b) the client is dumb. It does not have any means to say if it does not want to receive events for whatever reason. (say, network clog).

4) How are the events maintained in memory at the server-side?

 a)The logical model here is table with columns of strings (C1..CN), and each new row added is a new event.
b)We could have A hash-table per column storing a tupple of  (timestamp, pointer to event structure). And each event is given a unique id. With different data-structures,we can come up with different schemes. 
 c) Events here are considered as infinite stream. If  we have a 32-bit eventId, we have chances of integer-overflow.
 d) If we have a timer function on  the server, matching and dispatching events,what is the actual resolution of the system timer? Does that have any implication? 
     e) Memory allocation is a very expensive operation.  If your filter-matching logic is going to do frequent allocations/ freeing, it will adversely affect performance.  How can we manage the memory-pool for this particular operation? Would we different size-buckets of  page-aligned memory? 

5) What should happen if the subscriber node loses connectivity or goes down? (a)Is it acceptable for the client to lose events during the period, or should the server buffer everything? (b)If the subscriber goes down,till what historical time in the past can it request matching events.

6) More details of the messaging layer between (Server,Subscriber) (a) Is the communication between the server and subscribers synchronous or asynchronous?
(b)Do we need a binary-protocol or text-based protocol between the client/server? (There are trade-off's in both)

7) Should we need any rate-limiting logic in server side? What should we do if we starve some of the clients while serving data to few others?

8) How would the change of subscriptions be managed? If some client wishes to change it's subsciption then, should it be updated in-memory first before updating the permanent data-store? Or vice-versa? What would happen if the server goes down, before the data-store is written-to? How would we ensure consistency of the data-store- the subscriptions/server list?

9)This was assuming that we have a single server- What if we need a cluster of servers that the subscribers can connect to? (Whole bunch of issues here: ) a)How can network-partitioning be handled? ( example: of say 5 nodes,3 nodes are reachable from each other, and other 2 nodes can only reach other?) b) How are events/workload distributed among the members of the cluster?

10) Is absolute correctness of information sent to the subscriber a requirement,ie, can the client receive additional information,that what it's subscription rules indicate? This can determine choice of data-structure- example using a probabilistic data structure like a Bloom filter on the server side, while doing the filtering

11)How is time-ordering of events maintained on the server side? (Time-order sorted linked list? timestamps?)

12)Will the predicate-logic parser for the subscriptions need unicode support?

In conclusion,Content-based pub-sub is a pretty vast area- and it is a distributed system which involves interaction of databases,networking,algorithms,node behavior(systems go down,disk goes bad,system runs out of memory because of a memory leak etc) - We have to look all these aspects. And most importantly, we have to look at the available time for actual implementation, and then determine how we want to go about solving this problem.

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