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I'm building an application which contains two components - server written in Haskell, and client written in Qt (C++). I'm using thrift to communicate them, and I wonder why is it working so slow.

I made a performance test and here is the result on my machine

Results

C++ server and C++ client:

Sending 100 pings                    -    13.37 ms
Transfering 1000000 size vector      -   433.58 ms
Recieved: 3906.25 kB
Transfering 100000 items from server -  1090.19 ms
Transfering 100000 items to server   -   631.98 ms

Haskell server and C++ client:

Sending 100 pings                       3959.97 ms
Transfering 1000000 size vector      - 12481.40 ms
Recieved: 3906.25 kB
Transfering 100000 items from server - 26066.80 ms
Transfering 100000 items to server   -  1805.44 ms

Why is Haskell so slow in this test? How can I improve it performance?

Here are the files:

Files

performance.thrift

namespace hs test
namespace cpp test

struct Item {
    1: optional string    name
    2: optional list<i32> coordinates
}

struct ItemPack {
    1: optional list<Item>     items
    2: optional map<i32, Item> mappers
}


service ItemStore {
    void ping()
    ItemPack getItems(1:string name, 2: i32 count) 
    bool     setItems(1: ItemPack items)

    list<i32> getVector(1: i32 count)
}

Main.hs

{-# LANGUAGE ScopedTypeVariables #-}   
module Main where

import           Data.Int  
import           Data.Maybe (fromJust) 
import qualified Data.Vector as Vector
import qualified Data.HashMap.Strict  as HashMap
import           Network

-- Thrift libraries
import           Thrift.Server

-- Generated Thrift modules
import Performance_Types
import ItemStore_Iface
import ItemStore


i32toi :: Int32 -> Int
i32toi = fromIntegral

itoi32 :: Int -> Int32
itoi32 = fromIntegral

port :: PortNumber
port = 9090

data ItemHandler = ItemHandler

instance ItemStore_Iface ItemHandler where
    ping _                   = return () --putStrLn "ping"
    getItems _ mtname mtsize = do 
        let size = i32toi $ fromJust mtsize
            item i = Item mtname (Just $ Vector.fromList $ map itoi32 [i..100])
            items = map item [0..(size-1)]
            itemsv = Vector.fromList items 
            mappers = zip (map itoi32 [0..(size-1)]) items 
            mappersh = HashMap.fromList mappers
            itemPack = ItemPack (Just itemsv) (Just mappersh)
        putStrLn "getItems"
        return itemPack

    setItems _ _             = do putStrLn "setItems"
                                  return True

    getVector _ mtsize       = do putStrLn "getVector"
                                  let size = i32toi $ fromJust mtsize
                                  return $ Vector.generate size itoi32

main :: IO ()
main = do
    _ <- runBasicServer ItemHandler process port 
    putStrLn "Server stopped"

ItemStore_client.cpp

#include <iostream>
#include <chrono>
#include "gen-cpp/ItemStore.h"

#include <transport/TSocket.h>
#include <transport/TBufferTransports.h>
#include <protocol/TBinaryProtocol.h>

using namespace apache::thrift;
using namespace apache::thrift::protocol;
using namespace apache::thrift::transport;

using namespace test;
using namespace std;

#define TIME_INIT  std::chrono::_V2::steady_clock::time_point start, stop; \
                   std::chrono::duration<long long int, std::ratio<1ll, 1000000000ll> > duration;
#define TIME_START start = std::chrono::steady_clock::now(); 
#define TIME_END   duration = std::chrono::steady_clock::now() - start; \
                   std::cout << chrono::duration <double, std::milli> (duration).count() << " ms" << std::endl;

int main(int argc, char **argv) {

    boost::shared_ptr<TSocket> socket(new TSocket("localhost", 9090));
    boost::shared_ptr<TTransport> transport(new TBufferedTransport(socket));
    boost::shared_ptr<TProtocol> protocol(new TBinaryProtocol(transport));

    ItemStoreClient server(protocol);
    transport->open();

    TIME_INIT

    long pings = 100;
    cout << "Sending " << pings << " pings" << endl;
    TIME_START
    for(auto i = 0 ; i< pings ; ++i)
        server.ping();
    TIME_END


    long vectorSize = 1000000;

    cout << "Transfering " << vectorSize << " size vector" << endl;
    std::vector<int> v;
    TIME_START
    server.getVector(v, vectorSize);
    TIME_END
    cout << "Recieved: " << v.size()*sizeof(int) / 1024.0 << " kB" << endl;


    long itemsSize = 100000;

    cout << "Transfering " << itemsSize << " items from server" << endl;
    ItemPack items;
    TIME_START
    server.getItems(items, "test", itemsSize);
    TIME_END


    cout << "Transfering " << itemsSize << " items to server" << endl;
    TIME_START
    server.setItems(items);
    TIME_END

    transport->close();

    return 0;
}

ItemStore_server.cpp

#include "gen-cpp/ItemStore.h"
#include <thrift/protocol/TBinaryProtocol.h>
#include <thrift/server/TSimpleServer.h>
#include <thrift/transport/TServerSocket.h>
#include <thrift/transport/TBufferTransports.h>

#include <map>
#include <vector>

using namespace ::apache::thrift;
using namespace ::apache::thrift::protocol;
using namespace ::apache::thrift::transport;
using namespace ::apache::thrift::server;


using namespace test;
using boost::shared_ptr;

class ItemStoreHandler : virtual public ItemStoreIf {
  public:
    ItemStoreHandler() {
    }

    void ping() {
        // printf("ping\n");
    }

    void getItems(ItemPack& _return, const std::string& name, const int32_t count) {

        std::vector <Item> items;
        std::map<int, Item> mappers;

        for(auto i = 0 ; i < count ; ++i){
            std::vector<int> coordinates;
            for(auto c = i ; c< 100 ; ++c)
                coordinates.push_back(c);

            Item item;
            item.__set_name(name);
            item.__set_coordinates(coordinates);

            items.push_back(item);
            mappers[i] = item;
        }

        _return.__set_items(items);
        _return.__set_mappers(mappers);
        printf("getItems\n");
    }

    bool setItems(const ItemPack& items) {
        printf("setItems\n");
        return true;
    }

    void getVector(std::vector<int32_t> & _return, const int32_t count) {
        for(auto i = 0 ; i < count ; ++i)
            _return.push_back(i);
        printf("getVector\n");
    }
};

int main(int argc, char **argv) {
    int port = 9090;
    shared_ptr<ItemStoreHandler> handler(new ItemStoreHandler());
    shared_ptr<TProcessor> processor(new ItemStoreProcessor(handler));
    shared_ptr<TServerTransport> serverTransport(new TServerSocket(port));
    shared_ptr<TTransportFactory> transportFactory(new TBufferedTransportFactory());
    shared_ptr<TProtocolFactory> protocolFactory(new TBinaryProtocolFactory());

    TSimpleServer server(processor, serverTransport, transportFactory, protocolFactory);
    server.serve();
    return 0;
}

makefile

GEN_SRC := gen-cpp/ItemStore.cpp gen-cpp/performance_constants.cpp gen-cpp/performance_types.cpp
GEN_OBJ := $(patsubst %.cpp,%.o, $(GEN_SRC))

THRIFT_DIR := /usr/local/include/thrift
BOOST_DIR := /usr/local/include

INC := -I$(THRIFT_DIR) -I$(BOOST_DIR)

.PHONY: all clean

all:   ItemStore_server ItemStore_client

%.o: %.cpp
    $(CXX) --std=c++11 -Wall -DHAVE_INTTYPES_H -DHAVE_NETINET_IN_H $(INC) -c $< -o $@

ItemStore_server: ItemStore_server.o $(GEN_OBJ) 
    $(CXX) $^ -o $@ -L/usr/local/lib -lthrift -DHAVE_INTTYPES_H -DHAVE_NETINET_IN_H

ItemStore_client: ItemStore_client.o $(GEN_OBJ)
    $(CXX) $^ -o $@ -L/usr/local/lib -lthrift -DHAVE_INTTYPES_H -DHAVE_NETINET_IN_H

clean:
    $(RM) *.o ItemStore_server ItemStore_client

Compile and run

I generate files (using thrift 0.9 available here) with:

$ thrift --gen cpp performance.thrift
$ thrift --gen hs performance.thrift

Compile with

$ make
$ ghc Main.hs gen-hs/ItemStore_Client.hs gen-hs/ItemStore.hs gen-hs/ItemStore_Iface.hs gen-hs/Performance_Consts.hs gen-hs/Performance_Types.hs -Wall -O2

Run Haskell test:

$ ./Main& 
$ ./ItemStore_client

Run C++ test:

$ ./ItemStore_server&
$ ./ItemStore_client

Remember to kill server after each test

Update:

Edited getVector method to use Vector.generate instead of Vector.fromList, but still no effect

Update 2:

Due to suggestion of @MdxBhmt I tested the getItems function as follows:

getItems _ mtname mtsize = do let size = i32toi $! fromJust mtsize
                                  item i = Item mtname (Just $!  Vector.enumFromN (i::Int32) (100- (fromIntegral i)))
                                  itemsv = Vector.map item  $ Vector.enumFromN 0  (size-1)
                                  itemPack = ItemPack (Just itemsv) Nothing 
                              putStrLn "getItems"
                              return itemPack

which is strict and has improved Vector generation vs its alternative based on my original implementation:

getItems _ mtname mtsize = do let size = i32toi $ fromJust mtsize
                                  item i = Item mtname (Just $ Vector.fromList $ map itoi32 [i..100])
                                  items = map item [0..(size-1)]
                                  itemsv = Vector.fromList items 
                                  itemPack = ItemPack (Just itemsv) Nothing
                              putStrLn "getItems"
                              return itemPack

Notice that there is no HashMap sent. The first version gives time 12338.2 ms and the second is 11698.7 ms, no speedup :(

Update 3:

I reported an issue to Thrift Jira

share|improve this question
6  
Those macros D: –  Simple Oct 22 '13 at 8:49
4  
only 300x? back in the day i managed to do exponential slowdown . ;) –  NoSenseEtAl Oct 22 '13 at 12:28
4  
I think you may be losing a lot of performance by calling fromList to create the vectors when you could be using one of the Vector's package functions to create them like generate. Same think with the map possibly –  DiegoNolan Oct 22 '13 at 12:52
11  
As a meta-comment: I think all "why is my haskell slow" questions should be obliged to at least include results of profiling –  jberryman Oct 22 '13 at 21:18
7  
I wouldn't be surprised if the Haskell thrift support is slow. It's on the list of things I want to look into when I get time. –  Simon Marlow Oct 22 '13 at 21:34
show 14 more comments

5 Answers 5

Everyone is pointing out that is the culprit is the thrift library, but I'll focus on your code (and where I can help getting some speed)

Using a simplified version of your code, where you calculate itemsv:

testfunc mtsize =  itemsv
  where size = i32toi $ fromJust mtsize
        item i = Item (Just $ Vector.fromList $ map itoi32 [i..100])
        items = map item [0..(size-1)]
        itemsv = Vector.fromList items 

First, you have many intermediate data being created in item i. Due to lazyness, those small and fast to calculate vectors becomes delayed thunks of data, when we could had them right away.

Having 2 carefully placed $!, that represent strict evaluation :

 item i = Item (Just $! Vector.fromList $! map itoi32 [i..100])

Will give you a 25% decrease in runtime (for size 1e5 and 1e6).

But there is a more problematic pattern here: you generate a list to convert it as a vector, in place of building the vector directly.

Look those 2 last lines, you create a list -> map a function -> transform into a vector.

Well, vectors are very similar to list, you can do something similar! So you'll have to generate a vector -> vector.map over it and done. No more need to convert a list into a vector, and maping on vector is usually faster than a list!

So you can get rid of items and re-write the following itemsv:

  itemsv = Vector.map item  $ Vector.enumFromN 0  (size-1)

Reapplying the same logic to item i, we eliminate all lists.

testfunc3 mtsize = itemsv
   where 
      size = i32toi $! fromJust mtsize
      item i = Item (Just $!  Vector.enumFromN (i::Int32) (100- (fromIntegral i)))
      itemsv = Vector.map item  $ Vector.enumFromN 0  (size-1)

This has a 50% decrease over the initial runtime.

share|improve this answer
1  
Look at my updated question. Although I think that the main problem is Haskell implementation of thrift protocol. Look at the getVector and ping methods - they are simple, but much much slower than theirs C++ implementation. –  remdezx Oct 23 '13 at 9:51
4  
@CoreyOConnor is right. Since simple functions are so costly, yet so simple, you must be paying the price when actually sending the data. This explain also why you don't get a speedup when updating to vectors, because the price to pay scales on data size. There is little to do on your part of the code. Thrift needs some heavy care. –  MdxBhmt Oct 23 '13 at 13:48
add comment

You should take a look at Haskell profiling methods to find what resources your program uses/allocates and where.

The chapter on profiling in Real World Haskell is a good starting point.

share|improve this answer
add comment

This is fairly consistent with what user13251 says: The haskell implementation of thrift implies a large number of small reads.

EG: In Thirft.Protocol.Binary

readI32 p = do
    bs <- tReadAll (getTransport p) 4
    return $ Data.Binary.decode bs

Lets ignore the other odd bits and just focus on that for now. This says: "to read a 32bit int: read 4 bytes from the transport then decode this lazy bytestring."

The transport method reads exactly 4 bytes using the lazy bytestring hGet. The hGet will do the following: allocate a buffer of 4 bytes then use hGetBuf to fill this buffer. hGetBuf might be using an internal buffer, depends on how the Handle was initialized.

So there might be some buffering. Even so, this means Thrift for haskell is performing the read/decode cycle for each integer individually. Allocating a small memory buffer each time. Ouch!

I don't really see a way to fix this without the Thrift library being modified to perform larger bytestring reads.

Then there are the other oddities in the thrift implementation: Using a classes for a structure of methods. While they look similar and can act like a structure of methods and are even implemented as a structure of methods sometimes: They should not be treated as such. See the "Existential Typeclass" antipattern:

One odd part of the test implementation:

  • generating an array of Ints only to immediately change them to Int32s only to immediately pack into a Vector of Int32s. Generating the vector immediately would be sufficient and faster.

Though, I suspect, this is not the primary source of performance issues.

share|improve this answer
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I don't see any reference to buffering in the Haskell server. In C++, if you don't buffer, you incur one system call for every vector/list element. I suspect the same thing is happening in the Haskell server.

I don't see a buffered transport in Haskell directly. As an experiment, you may want to change both the client and server to use a framed transport. Haskell does have a framed transport, and it is buffered. Note that this will change the wire layout.

As a separate experiment, you may want to turn -off- buffering for C++ and see if the performance numbers are comparable.

share|improve this answer
    
How can I turn it off in C++? It's a compile flag or a implementation change? –  remdezx Nov 8 '13 at 14:26
    
Turning off buffering in C++ is an implementation change. If you use a BufferedTransport, a FramedTransport, or their associated factories, then you have buffering enabled. If you don't use either, then you are unbuffered. –  user13251 Nov 15 '13 at 17:09
add comment

The Haskell implementation of the basic thrift server you're using uses threading internally, but you didn't compile it to use multiple cores.

To do the test again using multiple cores, change your command line for compiling the Haskell program to include -rtsopts and -threaded, then run the final binary like ./Main -N4 &, where 4 is the number of cores to use.

share|improve this answer
    
Unfortunately on my 2 core machine there's no bigger difference :( –  remdezx Oct 22 '13 at 11:58
8  
I do not think it is relative to this question. If the slowdown on THE SAME machine between C++ and Haskell (both running single core) is so big, this is not a solution for this problem –  Wojciech Danilo Oct 22 '13 at 12:35
1  
I've many times seen slowdowns like this when -threaded is omitted, regardless of whether I run with multiple cores. I've taken to adding a runtime test for rtsSupportsBoundThreads to see if I was compiled with -threaded. Oddly, the slowdown is very platform dependent. I've seen it in Windows and in some versions of Ubuntu. Perhaps related to the scheduler. –  dmbarbour Oct 22 '13 at 23:02
4  
That isn't the point at all. The C++ server (if it uses threading..) uses operating system threads which would be available on all cores whereas the lightweight threads Haskell uses would be restricted to a single core if compiled without -threaded. –  kvanberendonck Oct 23 '13 at 1:23
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