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I'm currently working on my first real outing using Javascript to build an interactive map of our customer data .

So Far I've got the basics working but the performance starts to drop when I start going above around 500 poi's with markers or 10,000 with circle markers.... if anyone could offer some advise on how to optimize what I've already got or maybe am i best to move to a proper DB like mongo for the json data or do the work server side with Node Js maybe?

Any advice would be much appreciated :)

    var apiKey  = 'BC9A493B41014CAABB98F0471D759707',
          styleID = '108219';
    //    styleID = '997';


   // var map = L.map('map').setView([54.550, -4.433], 7);

      var southWest   = new L.LatLng(61.029031, 4.746094),
            northEast   = new L.LatLng(48.786962 ,-13.183594),
            bounds      = new L.LatLngBounds(southWest, northEast);

        var mapcenter      = new L.LatLng(53.457393,-2.900391);
        var map         = new L.Map('map',
                                {
                                    center: mapcenter,
                                    zoom: 7,
                                    // maxBounds: bounds,
                                    zoomControl: false
                                });

        var cloudmadeUrl = generateTileURL(apiKey, styleID),
            attribution = 'Map data © OpenStreetMap contributors.',
            tileLayer = new L.TileLayer(
                                cloudmadeUrl,
                                {
                                    maxZoom: 18,
                                    attribution: attribution,
                                });

            tileLayer.addTo(map);

        var zoomControl     = new L.Control.Zoom({ position: 'topleft'} );
            zoomControl.addTo(map);
        var scaleControl    = new L.Control.Scale({ position: 'bottomleft' });
            scaleControl.addTo(map);




      geojsonLayer = L.geoJson(geojson, {
          pointToLayer: function(feature, latlng) {
            return new L.CircleMarker(latlng, {fillColor: feature.properties.MarkerColour, fillOpacity: 0.5, stroke: false, radius: 6});
          // return new L.Marker(latlng, {icon: L.AwesomeMarkers.icon({icon: feature.properties.MarkerIcon, color: feature.properties.MarkerColour, iconColor: 'white'}) });
          },
        onEachFeature: function (feature, layer) {
            layer.bindPopup( '<strong><b>Customer Data</b></strong><br />' + '<b>Result : </b>' + feature.properties.Result + '<br />' + '<b>Postcode : </b>' + feature.properties.Postcode + '<br />' );
          }
      });

            console.log('starting: ' + window.performance.now());

      map.addLayer(geojsonLayer);

            console.log('ending: ' + window.performance.now());




    function generateTileURL(apiKey, styleID) {
        return 'http://{s}.tile.cloudmade.com/' + apiKey + '/' + styleID + '/256/{z}/{x}/{y}.png';
    }

and some sample data :

{
    "type": "Feature",
    "geometry": {
        "type": "Point",
         "coordinates": [
            -0.213467,
            51.494815
         ]
    },
    "properties": {
        "DateTime": "1372719435.39",
        "Result": "Cable Serviceable",
        "MarkerIcon": "ok-sign",
        "MarkerColour": "green",
        "Postcode": "W14 8UD"    
    }
},
{
    "type": "Feature",
    "geometry": {
        "type": "Point",
        "coordinates": [
            -0.389445,
            51.512121
        ]
    },
    "properties": {
        "DateTime": "1372719402.083",
        "Result": "Refer for National Serviceability",
        "MarkerIcon": "minus-sign",
        "MarkerColour": "red",
        "Postcode": "UB1 1NJ",

    }
 },
 {
    "type": "Feature",
    "geometry": {
        "type": "Point",
        "coordinates": [
            -0.411291,
            51.508012
        ]
    },
        "properties": {
        "DateTime": "1372719375.725",
        "Result": "Cable Serviceable",
        "MarkerIcon": "ok-sign",
        "MarkerColour": "green",
        "Postcode": "UB3 3JJ" 
     }
},
{
    "type": "Feature",
    "geometry": {
        "type": "Point",
        "coordinates": [
            -2.11054,
            53.500752
        ]
     },
    "properties": {
        "DateTime": "1372719299.088",
         "Result": "Cable Serviceable",
         "MarkerIcon": "ok-sign",
         "MarkerColour": "green",
         "Postcode": "OL7 9LR",

     }
 }
share|improve this question
    
Your bottleneck is not the database to show that data. Is it a real szenario to show 500pois in one view or 10,000 circle markers. Or does your question mean the search in database inside a defined bound containing 10000 circle markers? – Bernhard Sep 29 '13 at 11:27
    
The current demo versions are dealing in low values of around 500 - 2500... the final version will need to be capable of showing 10,000+ and more data points at a time... I believe the issue with this is due to it doing the rendering on the browser side in real time? Just wondering if there is a different way I could be tackling the scaling issue really – Guitaraholic Sep 29 '13 at 11:36

There are a couple of Leaflet plugins that help deal with rendering large amounts of points in the client's browser.

The simplest way is to use a plugin that clusters the markers such as Marker Clusterer. Clusterer helps the rendering on the client side greatly as it means the client computer doesn't have to draw 10,000 points, it just draws 10-40.

You could also do a Heatmap - there are two plugins for that, both based on HTML5 Canvas:

share|improve this answer
2  
We are using the markercluster plugin, but still the points need to be created. It can still take about 10 seconds on an ipad to get the points rendered. – jelle Oct 26 '14 at 10:08
    
I think your best bet then is server side. You would do the clustering on the server and then send the cluster points as single points to the device for display. That way you can rely on the power of the server to do the analysis, instead of a tablet or phone processor. – Josh Nov 3 '14 at 4:03

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