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GeoServer on steroids
All you wanted to know about how to make GeoServer faster
    but you never asked (or you did and no one answered)




          Ing. Andrea Aime, GeoSolutions
     Ing. Simone Giannecchini, GeoSolutions




                   FOSS4G 2011, Denver
                  12th-16th September 2011
GeoSolutions
   Founded in Italy in late 2006
   Expertise
    •   Image Processing, GeoSpatial Data Fusion
    •   Java, Java Enterprise, C++, Python
    •   JPEG2000, JPIP, Advanced 2D visualization
   Supporting/Developing FOSS4G projects
       GeoTools, GeoServer
       GeoBatch, GeoNetwork

   Clients
       Public Agencies
       Private Companies

   http://www.geo-solutions.it
                                FOSS4G 2011, Denver
                               12th-16th September 2011
Preparing raster inputs




     FOSS4G 2011, Denver
    12th-16th September 2011
Raster Data CheckList

   Objectives
        Fast extraction of a subset of the data
        Fast extraction of overviews
   Check-list
        Avoid having to open a large number of files per
         request
        Avoid parsing of complex structures
        Avoid on-the-fly reprojection (if possible)
   Get to know your bottlenecks
        CPU vs Disk Access Time vs Memory
   Experiment with
        Format, compression, different color models, tile size,
         overviews, configuration (in GeoServer of course)
                        FOSS4G 2011, Denver
                       12th-16th September 2011
Problematic Formats

   PNG/JPEG direct serving
       Bad formats (especially in Java)
       No tiling (or rarely supported)
       Chew a lot of memory and CPU for decompression
       Mitigate with external overviews
   NetCDF/grib1 and similar formats
       Complex formats (often with many subdatasets)
       Often contains un-calibrated data
       Must usually use multiple dimensions
             Use ImageMosaic
         Must usually massage the data before serving
             e.g. transpose X,Y,
                            FOSS4G 2011, Denver
                           12th-16th September 2011
Problematic Formats

   Ascii Grid, GTOPO30, IDRISI and similar formats are bad
         ASCII formats are bad
         No internal tiling, no compression, no internal
          overviews
   JPEG2000 (with Kakadu)
         Extensible and rich, not (always) fast
         Can be difficult to tune for performance (might
          require specific encoding options)
   ECW and MrSID
         Why bother it’s proprietary?


                         FOSS4G 2011, Denver
                        12th-16th September 2011
Choosing Formats and Layouts

   To remember: GeoTiff is a swiss knife
        But you don’t want to cut a tree with it!
        Tremendously flexible, good fir for most (not all) use
         cases
        BigTiff pushes the GeoTiff limits farther
   Single File VS Mosaic VS Pyramids
   Use single GeoTiff when
        Overviews and Tiling stay within 4GB
        No additional dimensions
   Consider BigTiff for very large file (> 4 GB)
        Support for tiling
        Support for Overviews
        Can be inefficient with very large files + small tiling
                        FOSS4G 2011, Denver
                       12th-16th September 2011
Choosing Formats and Layouts

   Use ImageMosaic when:
         A single file gets too big (inefficient seeks, too much metadata
          to read, etc..)
         Multiple Dimensions (time, elevation, others..)
         Avoid mosaics made of many very small files
         Single granules can be large
         Use Tiling + Overviews + Compression on granules
   Use ImagePyramid when:
         Tremendously large dataset
             Too many files / too large files
         Need to serve at all scales
             Especially low resolution


   For single granules (< 2Gb) GeoTiff is generally a good fit

                              FOSS4G 2011, Denver
                             12th-16th September 2011
Choosing Formats and Layouts

   Examples:

         Small dataset: single 2GB GeoTiff file

         Medium dataset: single 40GB BigTiff

         Large dataset: 400GB mosaic made of 10GB BigTiff
          files

         Extra large: 4TB of imagery, built as pyramid of
          mosaics of BigTiff/GeoTiff files to keep the file count
          low


                         FOSS4G 2011, Denver
                        12th-16th September 2011
GeoTiff preparation

   STEP 0: get to know your data
   gdalinfo utility is your friend           CheckList
                                              Missing CRS
                                                      Add a .prj file
                                                      Fix with gdal_translate
                                              Missing georeferencing
                                                      Add a World File
                                                      Fix with gdal_translate
                                              Bad Tiling
                                                      Fix with gdal_translate
                                              Missing Overviews
                                                      Use gdaladdo
                                              Compression
                                                      Use gdal_translate
                         FOSS4G 2011, Denver
                        12th-16th September 2011
GeoTiff preparation

   STEP 1: fix and optimize with gdal_translate
   Inner Tiling
         gdal_translate -co "TILED=YES" -co "BLOCKXSIZE=512" -co
          "BLOCKYSIZE=512" in.tif out.tif
         Check also GeoTiff driver creation options here
   CRS and GeoReferencing
         gdal_translate –a_srs “EPSG:32619” –a_ullr 285409.2 2014405.2
          287536.8 2011947.6 in.tif out.tif
   STEP 2: add overviews with gdal_addo
         Leverages on tiff support for multipage files and reduced
          resolution pages
         gdaladdo -r cubic output.tif 2 4 8 16 32 64 128
         Choose the resampling algorithm wisely
         Chose the tile size and compression wisely (use
          GDAL_TIFF_OVR_BLOCKSIZE)
         Consider external overviews

                           FOSS4G 2011, Denver
                          12th-16th September 2011
GeoTiff preparation




    FOSS4G 2011, Denver
   12th-16th September 2011
GeoTiff preparation

   Compression
         Consider when disk speed/space is an issue
         Control it with gdal_translate and creation options
   GeoTiff tiles can be compressed
         LZW/Deflate are good for lossless compression
         JPEG is good for visually lossless compression
   From experience
         Use LZW/Deflate on geophysical data (DEM,
          acquisitions)
         USE JPEG visually lossless with Photometric
          Interpretation to YCbCr for RGB
                         FOSS4G 2011, Denver
                        12th-16th September 2011
Time, Elevation and other
                      dimensions
   Use Cases:
         MetOc data (support for time, elevation)
         Data with additional indipendent dimensions
   WorkFlow
         Split in multiple GeoTiff files
         Optimize the files individually
         Use ImageMosaic
         Use a DBMS for indexing granules
         Use File Name based property collectors to turn properties into
          DB rows attributes
         Filter by time, elevation and other attributes via OGC and CQL
          filters
   Check back up slides for more info!
                            FOSS4G 2011, Denver
                           12th-16th September 2011
Time, Elevation and other
       dimensions
   Indexing multiple dimensions with DB support (video
    here)


                                        datastore.properties




                                        timeregex.properties

                                        stringregex.properties

                                          indexer.properties




              FOSS4G 2011, Denver
             12th-16th September 2011
Time, Elevation and other
       dimensions




       FOSS4G 2011, Denver
      12th-16th September 2011
Proper Mosaic Preparation

   ImageMosaic stitches single granules together with basic
    processing
         Filtered selection
         Overviews/Decimation on read
         Over/DownSampling in memory
         ColorMask (optional)
         Mosaic/Stitch
         ColorMask again (optional)
   Optimize files as if you were serving them individually
   Keep a balance between number and dimensions of
    granules

                           FOSS4G 2011, Denver
                          12th-16th September 2011
Proper Mosaic Configuration

   STEP 0: Configure Coverage Access (see slide 22)
   STEP 1: Configure Mosaic Parameters
                        ALLOW_MULTITHREADING
                                 Load data from different granules in
                                  parallel
                                 Needs USE_JAI_IMAGE_READ set to
                                  false (Immediate Mode)
                           Use a proper Tile Size
                                 In-memory processing, must not be too
                                  large
                                 Disk tiling should larger
                           If memory is scarce:
                                 USE_JAI_IMAGREAD to true
                                 USE_MULTITHREADING to false*
                           Otherwise
                                 USE_JAI_IMAGREAD to false
                                 ALLOW_MULTITHREADING to true

                       FOSS4G 2011, Denver
                      12th-16th September 2011
Proper Mosaic Configuration

   Optional (Advanced): Configure Mosaic Parameters
    Directly
                   Caching
                          Load the index in memory (using JTS SRTree)
                          Super fast granule lookup, good for shapefiles
                          Bad if you have additional dimension to filter on
                          Based on Soft References, controlled via Java switch
                           SoftRefLRUPolicyMSPerMB
                     ExpandToRGB
                          Expand colormapped imagery to RGB in
                           memory
                          Trade performance for quality
                                                SuggestedSPI
                                                Default ImageIO Decoder
                                                 class to use
                                                Don’t touch unless expert
                           FOSS4G 2011, Denver
                          12th-16th September 2011
Proper Pyramid Preparation

   Use gdal_retile for creating the pyramid
   Prepare the list of tiles to be retiled


   Create the pyramid with GDAL retile (grab a coffee!)


   Chunks should not be too small (here 2048x2048)
           Too many files is bad anyway
   Use internal Tiling for Larger chunks size
   If the input dataset is huge use the useDirForEachRow option
           Too many files in a dir is bad practice
   Make sure the number of level is consistent
           Too few  bad performance at high scale

                           FOSS4G 2011, Denver
                          12th-16th September 2011
Proper Pyramid Configuration

   STEP 0: Configure Coverage Access (see slide 22)
   STEP 1: Configure Pyramid Parameters
                         ALLOW_MULTITHREADING
                                 Load data from different granules in
                                  parallel
                                 Needs USE_JAI_IMAGE_READ set to
                                  false (Immediate Mode)
                           Use a proper Tile Size
                                 In-memory processing, must not be too
                                  large
                                 Disk tiling should larger

                           If memory is scarce:
                                 USE_JAI_IMAGREAD to true
                                 USE_MULTITHREADING to false*
                           Otherwise
ImagePyramid relies              USE_JAI_IMAGREAD to false
  on ImageMosaic                 ALLOW_MULTITHREADING to true

                       FOSS4G 2011, Denver
                      12th-16th September 2011
Proper Pyramid Configuration

   Optional (Advanced): Configure Mosaic Parameters
    Directly
                   Caching
                          Load the index in memory (using JTS SRTree)
                          Super fast granule lookup, good for shapefiles
                          Bad if you have additional dimension to filter on
                          Based on Soft References, controlled via Java switch
                           SoftRefLRUPolicyMSPerMB
                     ExpandToRGB
                          Expand colormapped imagery to RGB in
                           memory
                          Trade performance for quality
                                                SuggestedSPI
                                                Default ImageIO Decoder
                                                 class to use
                                                Don’t touch unless expert
                           FOSS4G 2011, Denver
                          12th-16th September 2011
Proper GDAL Formats Configuration

   Fix Missing/Improper CRS with PRJ or coverage config
   Fix Missing GeoReferencing with World File
   Make sure GDAL_DATA is properly configured
                          Use a proper Tile Size
                                 In-memory processing, must not be
                                  too large
                                 Fundamental for striped data! JNI
                                  overhead
                                 Disk tiling should larger
                           If memory is scarce:
                                 USE_JAI_IMAGREAD to true
                                 USE_MULTITHREADING to true*
                           Otherwise
                                 USE_JAI_IMAGREAD to false
                                 USE_MULTITHREADING is ignored

                      FOSS4G 2011, Denver
                     12th-16th September 2011
Proper JPEG2000 Kakadu
                 Configuration
   Fix Missing/Improper CRS with PRJ or coverage config
   Fix Missing GeoReferencing with World File
   Make sure Kakadu dll/so is properly loaded
                          Use a proper Tile Size
                                 In-memory processing
                                 Must not be too large
                                 Disk tiling should larger
                           If memory is scarce:
                                 USE_JAI_IMAGREAD to true
                                 USE_MULTITHREADING to true*
                           Otherwise
                                 USE_JAI_IMAGREAD to false
                                 USE_MULTITHREADING is ignored

                      FOSS4G 2011, Denver
                     12th-16th September 2011
Proper GeoServer
Coverage Options Configuration
            Make sure native JAI and Image is
             installed
            Enable ImageIO native acceleration
            Enable JAI Mosaicking native
             acceleration
            Give JAI enough memory
            Don’t raise JAI memory Threshold too
             high
            Rule of thumb: use 2 X #Core Tile
             Threads (check next slide)
            Enable Tile Recycling only on trunk
            Enable Tile Recycling if memory is not
             a problem
             FOSS4G 2011, Denver
            12th-16th September 2011
Proper GeoServer
Coverage Options Configuration
           Multithreaded Granule Loading
           Allows to fine tuning multithreading
            for ImageMosaic
           Orthogonal to JAI Tile Threads
           Rule of Thumb: use 2 X #Core Tile
            Threads
           Perform testing to fine tune
            depending on layer configuration as
            well as on typical requests
           ImageIO Cache threshold
                 decide when we switch to disk
                  cache (very large WCS requests)
          FOSS4G 2011, Denver
         12th-16th September 2011
Reprojection Performance
                   Vs Quality
   GeoServer 2.1.x reprojects raster data using a piecewise-
    linear algorithm
   The area is divided in rectangular blocks, each having its
    own affine transform
   The transformation between the full trigonometric
    expressions and the linear ones is driven by a tolerance,
    default value is 0.333
   Larger value will make reprojection faster, but lower the
    quality
   -Dorg.geotools.referencing.resampleTolerance=0.5



                        FOSS4G 2011, Denver
                       12th-16th September 2011
Preparing vector inputs




     FOSS4G 2011, Denver
    12th-16th September 2011
Vector data checklikst

   What do we want from vector data:
         Binary data
         No complex parsing of data structures
         Fast extraction of a geographic subset
         Fast filtering on the most commonly used attributes




                         FOSS4G 2011, Denver
                        12th-16th September 2011
Choosing a format

   Slow formats              Good formats, local and
                               indexable
         WFS
                                     Shapefile
         GML
                                     Directory of shapefiles
         DXF
                                     SDE
                                     Spatial databases: PostGIS,
                                      Oracle Spatial, DB2,
                                      MySQL*, SQL server*




                      FOSS4G 2011, Denver
                     12th-16th September 2011
Shapefiles vs DBMS

   Speed comparison vs spatial extent depicted:
         Shapefile very fast when rendering the full dataset
         Database faster when extracting a small subset of a
          very large data set
   Shapefile
         no attribute indexing, avoid if filtering on attribute is
          important (filtering == reading less data, not applying
          symbols)
   Database
         Rich support for complex native filters
         Use connection pooling (preferably via JNDI)
         Validate connections (with proper pooling)


                         FOSS4G 2011, Denver
                        12th-16th September 2011
Shapefile preparation

   Remove .qix file if present, let GeoServer 2.1.x rebuild it
    (more efficient)
   If there are large DBF attributes that are not in use, get rid
    of them using ogr2ogr, e.g.:

      ogr2ogr -select FULLNAME,MTFCC arealm.shp
                                     tl_2010_08013_arealm.shp
   If on Linux, enable memory mapping, faster, more scalable
    (but will kill Windows):




                         FOSS4G 2011, Denver
                        12th-16th September 2011
Shapefile filtering

   Stuck with shapefiles and have scale dependent rules like
    the following?
         Show highways first
         Show all streets when zoomed in
   Use ogr2ogr to build two shapefiles, one with just the
    highways, one with everything, and build two layers, e.g.:

    ogr2ogr -sql "SELECT * FROM
    tl_2010_08013_roads WHERE MTFCC in ('S1100',
    'S1200')" primaryRoads.shp
    tl_2010_08013_roads.shp



                        FOSS4G 2011, Denver
                       12th-16th September 2011
PostGIS specific hints

   PostgreSQL out of the box configured for very small
    hardware:
    http://wiki.postgresql.org/wiki/Performance_Optimization
   Make sure to run ANALYZE after data imports (updates
    optimizer stats)
   As usual, avoid large joins in SQL views, consider
    materialized views
   If the dataset is massive, CLUSTER on the spatial index:
         http://postgis.refractions.net/documentation/manual-
          1.3/ch05.html
   Careful with prepared statements (bad performance)


                        FOSS4G 2011, Denver
                       12th-16th September 2011
Optimize styling




  FOSS4G 2011, Denver
 12th-16th September 2011
Use scale dependencies

   Never show too much data
         the map should be readable, not a graphic blob. Rule of thumb:
          1000 features max in the display




                           FOSS4G 2011, Denver
                          12th-16th September 2011
Labeling

   Labeling conflict resolution is expensive, limit to the most
    inner zooms
   Halo is important for readability, but adds significant
    overhead
   Careful with maxDisplacement, makes for various label
    location attempts




                        FOSS4G 2011, Denver
                       12th-16th September 2011
FeatureTypeStyle

   GeoServer uses SLD FeatureTypeStyle objects as Z layers
    for painting
   Each one allocates its own rendering surface (which can
    use a lot of memory), use as few as possible




                       FOSS4G 2011, Denver
                      12th-16th September 2011
Use translucency sparingly

   Translucent display is expensive, use it sparingly




                        FOSS4G 2011, Denver
                       12th-16th September 2011
Scale dependent rules

   Too often forgotten or little used, yet very important:
          Hide layers when too zoomed in (raster/vector
           example)
          Progressively show details
          Add more expensive rendering when there are less
           features
   Key to any high performance / good looking map




                         FOSS4G 2011, Denver
                        12th-16th September 2011
Example




 FOSS4G 2011, Denver
12th-16th September 2011
Hide as you zoom in

   Add a MinScaleDenominator to the rule
   This will make the layer disappear at 1:75000
    (towards 1:1)




                  FOSS4G 2011, Denver
                 12th-16th September 2011
Alternative rendering

   Simple rendering at low scale (up to 1:2000)
   More complex rendering when zoomed in (1:1999
    and above)




                  FOSS4G 2011, Denver
                 12th-16th September 2011
Alternative rendering




     FOSS4G 2011, Denver
    12th-16th September 2011
Point symbols




• 600 loc for 6
  different points types
• Painful…

                        FOSS4G 2011, Denver
                       12th-16th September 2011
Prepare data

   alter table pointlm add column image varchar;

   update pointlm set image = 'shop_supermarket.p.16.png' where MTFCC =
    'C3081' and (FULLNAME like '%Shopping%' or FULLNAME like '%Mall%');
   update pointlm set image = 'peak.png' where MTFCC = 'C3022'

   update pointlm set image = 'amenity_prison.p.20.png' where MTFCC =
    'K1236';
   update pointlm set image = 'museum.p.16.png' where MTFCC = 'K2165';

   update pointlm set image = 'airport.p.16.png' where MTFCC = 'K2451';

   update pointlm set image = 'school.png' where MTFCC = 'K2543';
   update pointlm set image = 'christian3.p.14.png' where MTFCC =
    'K2582';

   update pointlm set image = 'gate2.png' where MTFCC = 'K3066';




                           FOSS4G 2011, Denver
                          12th-16th September 2011
Dynamic symbolizers




    FOSS4G 2011, Denver
   12th-16th September 2011
Output tuning




 FOSS4G 2011, Denver
12th-16th September 2011
WMS output formats
     JPEG                      PNG 8bit            PNG 24bit




            23.8KB                      66KB              169.4KB




              27KB                      27KB                64KB
Compression artifacts        Color reduction       Large size

                         FOSS4G 2011, Denver
                        12th-16th September 2011
WFS output formats

    35
    30
    25
    20
    15
    10
     5
     0




                           Dimension MB

   HTTP GZip compression is transparent in GeoServer,
    make sure proxies keep it (or pay 10x price)

                      FOSS4G 2011, Denver
                     12th-16th September 2011
Tile caching




 FOSS4G 2011, Denver
12th-16th September 2011
Tile caching with GeoWebCache

   Tile oriented maps, fixed zoom levels and fixed grid
   Useful for stable layers, backgrounds
   Protocols: WMTS, TMS, WMS-C, Google Maps/Earth, VE
   Speedup compared to dynamic WMS: 10 to 100 times,
    assuming tiles are already cached (whole layer pre-
    seeded)
   Suitable for:
          Mostly static layer
          No (or few) dynamic parameters (CQL filters, SLD
           params, SQL query params, time/elevation, format
           options)

                          FOSS4G 2011, Denver
                         12th-16th September 2011
Embedded GWC advantage

   No double encoding when using meta-tiling, faster seeding




                       FOSS4G 2011, Denver
                      12th-16th September 2011
Space considerations

    Seeding Colorado, assuming 8 cores, one layer, 0.1 sec
     756x756 metatile, 15KB for each tile
    Do yours: http://tinyurl.com/3apkpss
    Not enough disk space? Set a disk quota
    Zoom                                        Time to seed Time to seed
             Tile count         Size (MB)
    level                                         (hours)       (days)
        13          58,377                  1               0           0
        14         232,870                  4               0           0
        15         929,475                 14               0           0
        16       3,713,893                 57               1           0
        17      14,855,572                227               6           0
        18      59,396,070                906              23           1
        19     237,584,280              3,625              92           4
        20     950,273,037             14,500             367          15
                           FOSS4G 2011, Denver
                          12th-16th September 2011
Resource control




  FOSS4G 2011, Denver
 12th-16th September 2011
WMS request limits

   Max memory per request: avoid large requests, allows to
    size the server memory (max concurrent request * max
    memory)
   Max time per request: avoid requests taking too much time
    (e.g., using a custom style provided with dynamic SLD in
    the request)
   Max errors: best effort renderer, but handling errors takes
    time




                        FOSS4G 2011, Denver
                       12th-16th September 2011
WFS request limits

   Max feature returned, configured as a global limit
   Return feature bbox: reduce amount of generated GML




   Per layer max feature count




                        FOSS4G 2011, Denver
                       12th-16th September 2011
WCS request limits




    FOSS4G 2011, Denver
   12th-16th September 2011
Control flow

   Control how many requests are executed in parallel, queue
    others:
         Increase throughput
         Control memory usage
         Enforce fairness




   More info here

                        FOSS4G 2011, Denver
                       12th-16th September 2011
Control flow



                                               17%




$GEOSERVER_DATA_DIR/controlflow.properties
   # don't allow more than 16 GetMap requests in parallel
   ows.wms.getmap=16
                   FOSS4G 2011, Denver
                  12th-16th September 2011
Auditing

   Log each and every request
   Log contents driven by customizable template
   Summarize and analyze requests with offline tools
   More info here




                       FOSS4G 2011, Denver
                      12th-16th September 2011
JVM and deploy configuration




        FOSS4G 2011, Denver
       12th-16th September 2011
Premise

   The options discussed here are not going to help visibly if
    you did not prepare the data and the styles
   They are finishing touches that can get performance up
    once the major data bottlenecks have been dealt with
   Check “Running in production” instructions here




                        FOSS4G 2011, Denver
                       12th-16th September 2011
JVM settings

   --server: enables the server JIT compiler
   --Xms2048m -Xmx2048m: sets the JVM use two gigabytes
    of memory
   --XX:+UseParallelOldGC -XX:+UserParallelGC: enables
    multi-threaded garbage collections, useful if you have
    more than two cores
   --XX:NewRatio=2: informs the JVM there will be a high
    number of short lived objects
   --XX:+AggressiveOpt: enable experimental optimizations
    that will be defaults in future versions of the JVM



                        FOSS4G 2011, Denver
                       12th-16th September 2011
Native JAI and JDK

   Install native JAI and use a recent Sun JDK!
   Benchmark over a small data set (the effect is not as
    visible on larger ones)




                        FOSS4G 2011, Denver
                       12th-16th September 2011
Setup a local cluster

   Java2D locks when drawing antialiased vectors
         Limits scalability severely
   Use Apache mod_proxy_balance and setup a GeoServer
    each 2/4 cores

                            mod_proxy_balance




               GeoServer                        GeoServer


                                GeoServer


                            FOSS4G 2011, Denver
                           12th-16th September 2011
Clustering advantage

   FOSS4G 2010 vector benchmarks (roads/buildings/isolines
    and so on, over the entire Spain)
   GeoServer was benchmarked without local clustering




                                                66%




                      FOSS4G 2011, Denver
                     12th-16th September 2011
Benchmarking




 FOSS4G 2011, Denver
12th-16th September 2011
Using JMeter

   Good benchmarking tool
   Allows to setup multiple thread groups, different
    parallelelism and request count, to ramp up the load
   Can use CSV files to generate semi-randomized requests
   Reports results in a simple table



    http://jakarta.apache.org/jmeter/




                        FOSS4G 2011, Denver
                       12th-16th September 2011
Using JMeter

                   Thread group: how many
                    threads
                   Loop: how many
                    requests
                   HTTP sampler: the
                    request
                   CSV: read request
                    params from CSV

                   Summary table



 FOSS4G 2011, Denver
12th-16th September 2011
Generating the CSV

   Simple randomized generation tool built during WMS
    shootouts, wms_request.py
   Generate csv with the bbox and width/height to be used in
    JMeter scripts:

     ./wms_request.py -count 1200
      -region -180 -90 180 90
      -minres 0.002 -maxres 0.1
      -minsize 256 256 -maxsize 1024 1024
   Get it here along with a corresponding JMeter script:

     http://demo1.geo-solutions.it/share/jmeter_2011.zip


                      FOSS4G 2011, Denver
                     12th-16th September 2011
Checking results

   Results table
   Run the benchmarks 2-3 times, let the results stabilize
   Save the results, check other optimizations, compare the
    results




                       FOSS4G 2011, Denver
                      12th-16th September 2011
Real world deploy




  FOSS4G 2011, Denver
 12th-16th September 2011
Deploy configuration




     FOSS4G 2011, Denver
    12th-16th September 2011
Raster data

   Whole Italy at 50cm per pixel
   Over 4TB, updated fully every 3 years (old data still
    available for historical access)
   Custom pyramid
         100 m per pixel: one image
         20m per pixel: mosaic of 20 tiles
         4m per pixel: mosaic of few hundred tiles
         0.5m per pixel: 9000 tiles
   Each tile is 10000x10000, with overviews



                        FOSS4G 2011, Denver
                       12th-16th September 2011
Vector data

   Cadastral data for the whole Italy, with full history
    (interval of validity for each parcel)
   100 million polygons
   A query extracts a subset relative to a certain time
    interval and area the user is allowed to see
   No data from this table is ever shown below 1:50000 (SLD
    scale dependencies)
   Physical table level partitioning (Oracle style) of the table
    based on geographic area to parallelize and cluster data
    loading, plus spatial indexing and indexes on commonly
    filtered upon attributes


                        FOSS4G 2011, Denver
                       12th-16th September 2011
The End




        Questions?
   andrea.aime@geo-solutions.it
simone.giannecchini@geo-solutions.it
            FOSS4G 2011, Denver
           12th-16th September 2011

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GeoServer on Steroids

  • 1. GeoServer on steroids All you wanted to know about how to make GeoServer faster but you never asked (or you did and no one answered) Ing. Andrea Aime, GeoSolutions Ing. Simone Giannecchini, GeoSolutions FOSS4G 2011, Denver 12th-16th September 2011
  • 2. GeoSolutions  Founded in Italy in late 2006  Expertise • Image Processing, GeoSpatial Data Fusion • Java, Java Enterprise, C++, Python • JPEG2000, JPIP, Advanced 2D visualization  Supporting/Developing FOSS4G projects  GeoTools, GeoServer  GeoBatch, GeoNetwork  Clients  Public Agencies  Private Companies  http://www.geo-solutions.it FOSS4G 2011, Denver 12th-16th September 2011
  • 3. Preparing raster inputs FOSS4G 2011, Denver 12th-16th September 2011
  • 4. Raster Data CheckList  Objectives  Fast extraction of a subset of the data  Fast extraction of overviews  Check-list  Avoid having to open a large number of files per request  Avoid parsing of complex structures  Avoid on-the-fly reprojection (if possible)  Get to know your bottlenecks  CPU vs Disk Access Time vs Memory  Experiment with  Format, compression, different color models, tile size, overviews, configuration (in GeoServer of course) FOSS4G 2011, Denver 12th-16th September 2011
  • 5. Problematic Formats  PNG/JPEG direct serving  Bad formats (especially in Java)  No tiling (or rarely supported)  Chew a lot of memory and CPU for decompression  Mitigate with external overviews  NetCDF/grib1 and similar formats  Complex formats (often with many subdatasets)  Often contains un-calibrated data  Must usually use multiple dimensions  Use ImageMosaic  Must usually massage the data before serving  e.g. transpose X,Y, FOSS4G 2011, Denver 12th-16th September 2011
  • 6. Problematic Formats  Ascii Grid, GTOPO30, IDRISI and similar formats are bad  ASCII formats are bad  No internal tiling, no compression, no internal overviews  JPEG2000 (with Kakadu)  Extensible and rich, not (always) fast  Can be difficult to tune for performance (might require specific encoding options)  ECW and MrSID  Why bother it’s proprietary? FOSS4G 2011, Denver 12th-16th September 2011
  • 7. Choosing Formats and Layouts  To remember: GeoTiff is a swiss knife  But you don’t want to cut a tree with it!  Tremendously flexible, good fir for most (not all) use cases  BigTiff pushes the GeoTiff limits farther  Single File VS Mosaic VS Pyramids  Use single GeoTiff when  Overviews and Tiling stay within 4GB  No additional dimensions  Consider BigTiff for very large file (> 4 GB)  Support for tiling  Support for Overviews  Can be inefficient with very large files + small tiling FOSS4G 2011, Denver 12th-16th September 2011
  • 8. Choosing Formats and Layouts  Use ImageMosaic when:  A single file gets too big (inefficient seeks, too much metadata to read, etc..)  Multiple Dimensions (time, elevation, others..)  Avoid mosaics made of many very small files  Single granules can be large  Use Tiling + Overviews + Compression on granules  Use ImagePyramid when:  Tremendously large dataset  Too many files / too large files  Need to serve at all scales  Especially low resolution  For single granules (< 2Gb) GeoTiff is generally a good fit FOSS4G 2011, Denver 12th-16th September 2011
  • 9. Choosing Formats and Layouts  Examples:  Small dataset: single 2GB GeoTiff file  Medium dataset: single 40GB BigTiff  Large dataset: 400GB mosaic made of 10GB BigTiff files  Extra large: 4TB of imagery, built as pyramid of mosaics of BigTiff/GeoTiff files to keep the file count low FOSS4G 2011, Denver 12th-16th September 2011
  • 10. GeoTiff preparation  STEP 0: get to know your data  gdalinfo utility is your friend  CheckList  Missing CRS  Add a .prj file  Fix with gdal_translate  Missing georeferencing  Add a World File  Fix with gdal_translate  Bad Tiling  Fix with gdal_translate  Missing Overviews  Use gdaladdo  Compression  Use gdal_translate FOSS4G 2011, Denver 12th-16th September 2011
  • 11. GeoTiff preparation  STEP 1: fix and optimize with gdal_translate  Inner Tiling  gdal_translate -co "TILED=YES" -co "BLOCKXSIZE=512" -co "BLOCKYSIZE=512" in.tif out.tif  Check also GeoTiff driver creation options here  CRS and GeoReferencing  gdal_translate –a_srs “EPSG:32619” –a_ullr 285409.2 2014405.2 287536.8 2011947.6 in.tif out.tif  STEP 2: add overviews with gdal_addo  Leverages on tiff support for multipage files and reduced resolution pages  gdaladdo -r cubic output.tif 2 4 8 16 32 64 128  Choose the resampling algorithm wisely  Chose the tile size and compression wisely (use GDAL_TIFF_OVR_BLOCKSIZE)  Consider external overviews FOSS4G 2011, Denver 12th-16th September 2011
  • 12. GeoTiff preparation FOSS4G 2011, Denver 12th-16th September 2011
  • 13. GeoTiff preparation  Compression  Consider when disk speed/space is an issue  Control it with gdal_translate and creation options  GeoTiff tiles can be compressed  LZW/Deflate are good for lossless compression  JPEG is good for visually lossless compression  From experience  Use LZW/Deflate on geophysical data (DEM, acquisitions)  USE JPEG visually lossless with Photometric Interpretation to YCbCr for RGB FOSS4G 2011, Denver 12th-16th September 2011
  • 14. Time, Elevation and other dimensions  Use Cases:  MetOc data (support for time, elevation)  Data with additional indipendent dimensions  WorkFlow  Split in multiple GeoTiff files  Optimize the files individually  Use ImageMosaic  Use a DBMS for indexing granules  Use File Name based property collectors to turn properties into DB rows attributes  Filter by time, elevation and other attributes via OGC and CQL filters  Check back up slides for more info! FOSS4G 2011, Denver 12th-16th September 2011
  • 15. Time, Elevation and other dimensions  Indexing multiple dimensions with DB support (video here) datastore.properties timeregex.properties stringregex.properties indexer.properties FOSS4G 2011, Denver 12th-16th September 2011
  • 16. Time, Elevation and other dimensions FOSS4G 2011, Denver 12th-16th September 2011
  • 17. Proper Mosaic Preparation  ImageMosaic stitches single granules together with basic processing  Filtered selection  Overviews/Decimation on read  Over/DownSampling in memory  ColorMask (optional)  Mosaic/Stitch  ColorMask again (optional)  Optimize files as if you were serving them individually  Keep a balance between number and dimensions of granules FOSS4G 2011, Denver 12th-16th September 2011
  • 18. Proper Mosaic Configuration  STEP 0: Configure Coverage Access (see slide 22)  STEP 1: Configure Mosaic Parameters  ALLOW_MULTITHREADING  Load data from different granules in parallel  Needs USE_JAI_IMAGE_READ set to false (Immediate Mode)  Use a proper Tile Size  In-memory processing, must not be too large  Disk tiling should larger  If memory is scarce:  USE_JAI_IMAGREAD to true  USE_MULTITHREADING to false*  Otherwise  USE_JAI_IMAGREAD to false  ALLOW_MULTITHREADING to true FOSS4G 2011, Denver 12th-16th September 2011
  • 19. Proper Mosaic Configuration  Optional (Advanced): Configure Mosaic Parameters Directly  Caching  Load the index in memory (using JTS SRTree)  Super fast granule lookup, good for shapefiles  Bad if you have additional dimension to filter on  Based on Soft References, controlled via Java switch SoftRefLRUPolicyMSPerMB  ExpandToRGB  Expand colormapped imagery to RGB in memory  Trade performance for quality  SuggestedSPI  Default ImageIO Decoder class to use  Don’t touch unless expert FOSS4G 2011, Denver 12th-16th September 2011
  • 20. Proper Pyramid Preparation  Use gdal_retile for creating the pyramid  Prepare the list of tiles to be retiled  Create the pyramid with GDAL retile (grab a coffee!)  Chunks should not be too small (here 2048x2048)  Too many files is bad anyway  Use internal Tiling for Larger chunks size  If the input dataset is huge use the useDirForEachRow option  Too many files in a dir is bad practice  Make sure the number of level is consistent  Too few  bad performance at high scale FOSS4G 2011, Denver 12th-16th September 2011
  • 21. Proper Pyramid Configuration  STEP 0: Configure Coverage Access (see slide 22)  STEP 1: Configure Pyramid Parameters  ALLOW_MULTITHREADING  Load data from different granules in parallel  Needs USE_JAI_IMAGE_READ set to false (Immediate Mode)  Use a proper Tile Size  In-memory processing, must not be too large  Disk tiling should larger   If memory is scarce:  USE_JAI_IMAGREAD to true  USE_MULTITHREADING to false*  Otherwise ImagePyramid relies  USE_JAI_IMAGREAD to false on ImageMosaic  ALLOW_MULTITHREADING to true FOSS4G 2011, Denver 12th-16th September 2011
  • 22. Proper Pyramid Configuration  Optional (Advanced): Configure Mosaic Parameters Directly  Caching  Load the index in memory (using JTS SRTree)  Super fast granule lookup, good for shapefiles  Bad if you have additional dimension to filter on  Based on Soft References, controlled via Java switch SoftRefLRUPolicyMSPerMB  ExpandToRGB  Expand colormapped imagery to RGB in memory  Trade performance for quality  SuggestedSPI  Default ImageIO Decoder class to use  Don’t touch unless expert FOSS4G 2011, Denver 12th-16th September 2011
  • 23. Proper GDAL Formats Configuration  Fix Missing/Improper CRS with PRJ or coverage config  Fix Missing GeoReferencing with World File  Make sure GDAL_DATA is properly configured  Use a proper Tile Size  In-memory processing, must not be too large  Fundamental for striped data! JNI overhead  Disk tiling should larger  If memory is scarce:  USE_JAI_IMAGREAD to true  USE_MULTITHREADING to true*  Otherwise  USE_JAI_IMAGREAD to false  USE_MULTITHREADING is ignored FOSS4G 2011, Denver 12th-16th September 2011
  • 24. Proper JPEG2000 Kakadu Configuration  Fix Missing/Improper CRS with PRJ or coverage config  Fix Missing GeoReferencing with World File  Make sure Kakadu dll/so is properly loaded  Use a proper Tile Size  In-memory processing  Must not be too large  Disk tiling should larger  If memory is scarce:  USE_JAI_IMAGREAD to true  USE_MULTITHREADING to true*  Otherwise  USE_JAI_IMAGREAD to false  USE_MULTITHREADING is ignored FOSS4G 2011, Denver 12th-16th September 2011
  • 25. Proper GeoServer Coverage Options Configuration  Make sure native JAI and Image is installed  Enable ImageIO native acceleration  Enable JAI Mosaicking native acceleration  Give JAI enough memory  Don’t raise JAI memory Threshold too high  Rule of thumb: use 2 X #Core Tile Threads (check next slide)  Enable Tile Recycling only on trunk  Enable Tile Recycling if memory is not a problem FOSS4G 2011, Denver 12th-16th September 2011
  • 26. Proper GeoServer Coverage Options Configuration  Multithreaded Granule Loading  Allows to fine tuning multithreading for ImageMosaic  Orthogonal to JAI Tile Threads  Rule of Thumb: use 2 X #Core Tile Threads  Perform testing to fine tune depending on layer configuration as well as on typical requests  ImageIO Cache threshold  decide when we switch to disk cache (very large WCS requests) FOSS4G 2011, Denver 12th-16th September 2011
  • 27. Reprojection Performance Vs Quality  GeoServer 2.1.x reprojects raster data using a piecewise- linear algorithm  The area is divided in rectangular blocks, each having its own affine transform  The transformation between the full trigonometric expressions and the linear ones is driven by a tolerance, default value is 0.333  Larger value will make reprojection faster, but lower the quality  -Dorg.geotools.referencing.resampleTolerance=0.5 FOSS4G 2011, Denver 12th-16th September 2011
  • 28. Preparing vector inputs FOSS4G 2011, Denver 12th-16th September 2011
  • 29. Vector data checklikst  What do we want from vector data:  Binary data  No complex parsing of data structures  Fast extraction of a geographic subset  Fast filtering on the most commonly used attributes FOSS4G 2011, Denver 12th-16th September 2011
  • 30. Choosing a format  Slow formats  Good formats, local and indexable  WFS  Shapefile  GML  Directory of shapefiles  DXF  SDE  Spatial databases: PostGIS, Oracle Spatial, DB2, MySQL*, SQL server* FOSS4G 2011, Denver 12th-16th September 2011
  • 31. Shapefiles vs DBMS  Speed comparison vs spatial extent depicted:  Shapefile very fast when rendering the full dataset  Database faster when extracting a small subset of a very large data set  Shapefile  no attribute indexing, avoid if filtering on attribute is important (filtering == reading less data, not applying symbols)  Database  Rich support for complex native filters  Use connection pooling (preferably via JNDI)  Validate connections (with proper pooling) FOSS4G 2011, Denver 12th-16th September 2011
  • 32. Shapefile preparation  Remove .qix file if present, let GeoServer 2.1.x rebuild it (more efficient)  If there are large DBF attributes that are not in use, get rid of them using ogr2ogr, e.g.: ogr2ogr -select FULLNAME,MTFCC arealm.shp tl_2010_08013_arealm.shp  If on Linux, enable memory mapping, faster, more scalable (but will kill Windows): FOSS4G 2011, Denver 12th-16th September 2011
  • 33. Shapefile filtering  Stuck with shapefiles and have scale dependent rules like the following?  Show highways first  Show all streets when zoomed in  Use ogr2ogr to build two shapefiles, one with just the highways, one with everything, and build two layers, e.g.: ogr2ogr -sql "SELECT * FROM tl_2010_08013_roads WHERE MTFCC in ('S1100', 'S1200')" primaryRoads.shp tl_2010_08013_roads.shp FOSS4G 2011, Denver 12th-16th September 2011
  • 34. PostGIS specific hints  PostgreSQL out of the box configured for very small hardware: http://wiki.postgresql.org/wiki/Performance_Optimization  Make sure to run ANALYZE after data imports (updates optimizer stats)  As usual, avoid large joins in SQL views, consider materialized views  If the dataset is massive, CLUSTER on the spatial index:  http://postgis.refractions.net/documentation/manual- 1.3/ch05.html  Careful with prepared statements (bad performance) FOSS4G 2011, Denver 12th-16th September 2011
  • 35. Optimize styling FOSS4G 2011, Denver 12th-16th September 2011
  • 36. Use scale dependencies  Never show too much data  the map should be readable, not a graphic blob. Rule of thumb: 1000 features max in the display FOSS4G 2011, Denver 12th-16th September 2011
  • 37. Labeling  Labeling conflict resolution is expensive, limit to the most inner zooms  Halo is important for readability, but adds significant overhead  Careful with maxDisplacement, makes for various label location attempts FOSS4G 2011, Denver 12th-16th September 2011
  • 38. FeatureTypeStyle  GeoServer uses SLD FeatureTypeStyle objects as Z layers for painting  Each one allocates its own rendering surface (which can use a lot of memory), use as few as possible FOSS4G 2011, Denver 12th-16th September 2011
  • 39. Use translucency sparingly  Translucent display is expensive, use it sparingly FOSS4G 2011, Denver 12th-16th September 2011
  • 40. Scale dependent rules  Too often forgotten or little used, yet very important:  Hide layers when too zoomed in (raster/vector example)  Progressively show details  Add more expensive rendering when there are less features  Key to any high performance / good looking map FOSS4G 2011, Denver 12th-16th September 2011
  • 41. Example FOSS4G 2011, Denver 12th-16th September 2011
  • 42. Hide as you zoom in  Add a MinScaleDenominator to the rule  This will make the layer disappear at 1:75000 (towards 1:1) FOSS4G 2011, Denver 12th-16th September 2011
  • 43. Alternative rendering  Simple rendering at low scale (up to 1:2000)  More complex rendering when zoomed in (1:1999 and above) FOSS4G 2011, Denver 12th-16th September 2011
  • 44. Alternative rendering FOSS4G 2011, Denver 12th-16th September 2011
  • 45. Point symbols • 600 loc for 6 different points types • Painful… FOSS4G 2011, Denver 12th-16th September 2011
  • 46. Prepare data  alter table pointlm add column image varchar;  update pointlm set image = 'shop_supermarket.p.16.png' where MTFCC = 'C3081' and (FULLNAME like '%Shopping%' or FULLNAME like '%Mall%');  update pointlm set image = 'peak.png' where MTFCC = 'C3022'  update pointlm set image = 'amenity_prison.p.20.png' where MTFCC = 'K1236';  update pointlm set image = 'museum.p.16.png' where MTFCC = 'K2165';  update pointlm set image = 'airport.p.16.png' where MTFCC = 'K2451';  update pointlm set image = 'school.png' where MTFCC = 'K2543';  update pointlm set image = 'christian3.p.14.png' where MTFCC = 'K2582';  update pointlm set image = 'gate2.png' where MTFCC = 'K3066'; FOSS4G 2011, Denver 12th-16th September 2011
  • 47. Dynamic symbolizers FOSS4G 2011, Denver 12th-16th September 2011
  • 48. Output tuning FOSS4G 2011, Denver 12th-16th September 2011
  • 49. WMS output formats JPEG PNG 8bit PNG 24bit 23.8KB 66KB 169.4KB 27KB 27KB 64KB Compression artifacts Color reduction Large size FOSS4G 2011, Denver 12th-16th September 2011
  • 50. WFS output formats 35 30 25 20 15 10 5 0 Dimension MB  HTTP GZip compression is transparent in GeoServer, make sure proxies keep it (or pay 10x price) FOSS4G 2011, Denver 12th-16th September 2011
  • 51. Tile caching FOSS4G 2011, Denver 12th-16th September 2011
  • 52. Tile caching with GeoWebCache  Tile oriented maps, fixed zoom levels and fixed grid  Useful for stable layers, backgrounds  Protocols: WMTS, TMS, WMS-C, Google Maps/Earth, VE  Speedup compared to dynamic WMS: 10 to 100 times, assuming tiles are already cached (whole layer pre- seeded)  Suitable for:  Mostly static layer  No (or few) dynamic parameters (CQL filters, SLD params, SQL query params, time/elevation, format options) FOSS4G 2011, Denver 12th-16th September 2011
  • 53. Embedded GWC advantage  No double encoding when using meta-tiling, faster seeding FOSS4G 2011, Denver 12th-16th September 2011
  • 54. Space considerations  Seeding Colorado, assuming 8 cores, one layer, 0.1 sec 756x756 metatile, 15KB for each tile  Do yours: http://tinyurl.com/3apkpss  Not enough disk space? Set a disk quota Zoom Time to seed Time to seed Tile count Size (MB) level (hours) (days) 13 58,377 1 0 0 14 232,870 4 0 0 15 929,475 14 0 0 16 3,713,893 57 1 0 17 14,855,572 227 6 0 18 59,396,070 906 23 1 19 237,584,280 3,625 92 4 20 950,273,037 14,500 367 15 FOSS4G 2011, Denver 12th-16th September 2011
  • 55. Resource control FOSS4G 2011, Denver 12th-16th September 2011
  • 56. WMS request limits  Max memory per request: avoid large requests, allows to size the server memory (max concurrent request * max memory)  Max time per request: avoid requests taking too much time (e.g., using a custom style provided with dynamic SLD in the request)  Max errors: best effort renderer, but handling errors takes time FOSS4G 2011, Denver 12th-16th September 2011
  • 57. WFS request limits  Max feature returned, configured as a global limit  Return feature bbox: reduce amount of generated GML  Per layer max feature count FOSS4G 2011, Denver 12th-16th September 2011
  • 58. WCS request limits FOSS4G 2011, Denver 12th-16th September 2011
  • 59. Control flow  Control how many requests are executed in parallel, queue others:  Increase throughput  Control memory usage  Enforce fairness  More info here FOSS4G 2011, Denver 12th-16th September 2011
  • 60. Control flow 17% $GEOSERVER_DATA_DIR/controlflow.properties # don't allow more than 16 GetMap requests in parallel ows.wms.getmap=16 FOSS4G 2011, Denver 12th-16th September 2011
  • 61. Auditing  Log each and every request  Log contents driven by customizable template  Summarize and analyze requests with offline tools  More info here FOSS4G 2011, Denver 12th-16th September 2011
  • 62. JVM and deploy configuration FOSS4G 2011, Denver 12th-16th September 2011
  • 63. Premise  The options discussed here are not going to help visibly if you did not prepare the data and the styles  They are finishing touches that can get performance up once the major data bottlenecks have been dealt with  Check “Running in production” instructions here FOSS4G 2011, Denver 12th-16th September 2011
  • 64. JVM settings  --server: enables the server JIT compiler  --Xms2048m -Xmx2048m: sets the JVM use two gigabytes of memory  --XX:+UseParallelOldGC -XX:+UserParallelGC: enables multi-threaded garbage collections, useful if you have more than two cores  --XX:NewRatio=2: informs the JVM there will be a high number of short lived objects  --XX:+AggressiveOpt: enable experimental optimizations that will be defaults in future versions of the JVM FOSS4G 2011, Denver 12th-16th September 2011
  • 65. Native JAI and JDK  Install native JAI and use a recent Sun JDK!  Benchmark over a small data set (the effect is not as visible on larger ones) FOSS4G 2011, Denver 12th-16th September 2011
  • 66. Setup a local cluster  Java2D locks when drawing antialiased vectors  Limits scalability severely  Use Apache mod_proxy_balance and setup a GeoServer each 2/4 cores mod_proxy_balance GeoServer GeoServer GeoServer FOSS4G 2011, Denver 12th-16th September 2011
  • 67. Clustering advantage  FOSS4G 2010 vector benchmarks (roads/buildings/isolines and so on, over the entire Spain)  GeoServer was benchmarked without local clustering 66% FOSS4G 2011, Denver 12th-16th September 2011
  • 68. Benchmarking FOSS4G 2011, Denver 12th-16th September 2011
  • 69. Using JMeter  Good benchmarking tool  Allows to setup multiple thread groups, different parallelelism and request count, to ramp up the load  Can use CSV files to generate semi-randomized requests  Reports results in a simple table http://jakarta.apache.org/jmeter/ FOSS4G 2011, Denver 12th-16th September 2011
  • 70. Using JMeter  Thread group: how many threads  Loop: how many requests  HTTP sampler: the request  CSV: read request params from CSV  Summary table FOSS4G 2011, Denver 12th-16th September 2011
  • 71. Generating the CSV  Simple randomized generation tool built during WMS shootouts, wms_request.py  Generate csv with the bbox and width/height to be used in JMeter scripts: ./wms_request.py -count 1200 -region -180 -90 180 90 -minres 0.002 -maxres 0.1 -minsize 256 256 -maxsize 1024 1024  Get it here along with a corresponding JMeter script: http://demo1.geo-solutions.it/share/jmeter_2011.zip FOSS4G 2011, Denver 12th-16th September 2011
  • 72. Checking results  Results table  Run the benchmarks 2-3 times, let the results stabilize  Save the results, check other optimizations, compare the results FOSS4G 2011, Denver 12th-16th September 2011
  • 73. Real world deploy FOSS4G 2011, Denver 12th-16th September 2011
  • 74. Deploy configuration FOSS4G 2011, Denver 12th-16th September 2011
  • 75. Raster data  Whole Italy at 50cm per pixel  Over 4TB, updated fully every 3 years (old data still available for historical access)  Custom pyramid  100 m per pixel: one image  20m per pixel: mosaic of 20 tiles  4m per pixel: mosaic of few hundred tiles  0.5m per pixel: 9000 tiles  Each tile is 10000x10000, with overviews FOSS4G 2011, Denver 12th-16th September 2011
  • 76. Vector data  Cadastral data for the whole Italy, with full history (interval of validity for each parcel)  100 million polygons  A query extracts a subset relative to a certain time interval and area the user is allowed to see  No data from this table is ever shown below 1:50000 (SLD scale dependencies)  Physical table level partitioning (Oracle style) of the table based on geographic area to parallelize and cluster data loading, plus spatial indexing and indexes on commonly filtered upon attributes FOSS4G 2011, Denver 12th-16th September 2011
  • 77. The End Questions? andrea.aime@geo-solutions.it simone.giannecchini@geo-solutions.it FOSS4G 2011, Denver 12th-16th September 2011