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   ESRI
DevSummit
  2012
ARCGIS SERVER 10.1
•   Performance (tuned services, 64 bits)
•   Embedded web server
•   All AGS admin services accessible over HTTP, allowing publishing
    and restarting a service through a REST API
•   New AGS Admin
     •  Estimate of cache size
     •  Easier SOE deploys (.SOE package)
     •  Easier to publish to ArcGIS Online (mainly if you have na Amazon
        AMI)
•   High-Quality printing
     • Simple – OOTB, Synchronous
     • Custom – Own templates, assynchronous
     • Advanced – Via ArcPy, layer insertion/removal
•   No distinction among MXD and MSD – All are fast-drawing
•   Service Definition (SD) – offline data and map package
ANALYSIS AND
GEOPROCESSING
•   Toolbox for Grouping Analysis (Clustering)
•   Geoprocessing package (easier to distribute)
•   Geoprocessing Service Publishing – allows defining all
    parameters upfront
•   Geoprocessing services takes care of workspaces and
    parameter types
PYTHON
•   Tightly integrated in ArcGIS
•   Python Add-Ins, for ArcGIS toolbars
•   Data Acces module (arcpy.da)
     •  Faster cursors (currently a bottleneck)
     •  Edit sessions support (topology, geometry networks,
        versioned datasets, objects with extensions)
     • NumPy array conversions
     • Support for versions, subtypes and domains
•   ConvertWebMapToMapDocument() - Takes JSON with map
    services and convert to MXD
•   Python Resource center (
    http://resourcesbeta.arcgis.com/en/communities/python/index.html
    )
IMAGE SERVICES
•   Publishing and Georeferencing rasters via API
•   Consuming and setting view options via API
•   Mosaicking and Cataloging via API
•   ImageServerLayer and QueryTask for WebAPI
    •   Silverlight Widget
ARCGIS ONLINE
•   Growing a lot 120 million hits in February, 2012
•   Support for different languages




RESOURCE CENTER
       http://resourcesbeta.arcgis.com
ARCGIS RUNTIME




•   C++, small, high performance
•   New supported platforms:
     •   ArcGIS Runtime for Windows 8: Metro Ready!
     •   ArcGIS Runtime for MacOS: developed with Cocoa
#TRENDS AND
#FACTS
•   Consolidation of ArcGIS Runtime Core
•   Mobility
•   Cloud
•   ArcGIS Online


Don’t rely on ArcGIS for Desktop when using large ammounts of
  memory in a process


Next version of ArcGIS Desktop will be based on Runtime
  Libraries (C++)!
                                              Scott Morehouse
IDEAS
•   Use the information acquired
•   Blogs, Wiki, Meetings, Dojos, Fun, Games, what more ?
•   How many ESRI devs do we have in Brazil ? Brazil Dev
    Summit (Maybe a room at EuEsri) ? Geoprocessing
    Meetups ?
•   Open source projects using GIS ?
•   Mobility competences development ? Who are
    interested ?
ESRI DevSummit - OpenSpace sobre participação da Imagem e Novidades
ESRI DevSummit - OpenSpace sobre participação da Imagem e Novidades
ESRI DevSummit - OpenSpace sobre participação da Imagem e Novidades
ESRI DevSummit - OpenSpace sobre participação da Imagem e Novidades

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ESRI DevSummit - OpenSpace sobre participação da Imagem e Novidades

  • 1. na ESRI DevSummit 2012
  • 2.
  • 3.
  • 4. ARCGIS SERVER 10.1 • Performance (tuned services, 64 bits) • Embedded web server • All AGS admin services accessible over HTTP, allowing publishing and restarting a service through a REST API • New AGS Admin • Estimate of cache size • Easier SOE deploys (.SOE package) • Easier to publish to ArcGIS Online (mainly if you have na Amazon AMI) • High-Quality printing • Simple – OOTB, Synchronous • Custom – Own templates, assynchronous • Advanced – Via ArcPy, layer insertion/removal • No distinction among MXD and MSD – All are fast-drawing • Service Definition (SD) – offline data and map package
  • 5. ANALYSIS AND GEOPROCESSING • Toolbox for Grouping Analysis (Clustering) • Geoprocessing package (easier to distribute) • Geoprocessing Service Publishing – allows defining all parameters upfront • Geoprocessing services takes care of workspaces and parameter types
  • 6. PYTHON • Tightly integrated in ArcGIS • Python Add-Ins, for ArcGIS toolbars • Data Acces module (arcpy.da) • Faster cursors (currently a bottleneck) • Edit sessions support (topology, geometry networks, versioned datasets, objects with extensions) • NumPy array conversions • Support for versions, subtypes and domains • ConvertWebMapToMapDocument() - Takes JSON with map services and convert to MXD • Python Resource center ( http://resourcesbeta.arcgis.com/en/communities/python/index.html )
  • 7. IMAGE SERVICES • Publishing and Georeferencing rasters via API • Consuming and setting view options via API • Mosaicking and Cataloging via API • ImageServerLayer and QueryTask for WebAPI • Silverlight Widget
  • 8. ARCGIS ONLINE • Growing a lot 120 million hits in February, 2012 • Support for different languages RESOURCE CENTER http://resourcesbeta.arcgis.com
  • 9. ARCGIS RUNTIME • C++, small, high performance • New supported platforms: • ArcGIS Runtime for Windows 8: Metro Ready! • ArcGIS Runtime for MacOS: developed with Cocoa
  • 10. #TRENDS AND #FACTS • Consolidation of ArcGIS Runtime Core • Mobility • Cloud • ArcGIS Online Don’t rely on ArcGIS for Desktop when using large ammounts of memory in a process Next version of ArcGIS Desktop will be based on Runtime Libraries (C++)! Scott Morehouse
  • 11. IDEAS • Use the information acquired • Blogs, Wiki, Meetings, Dojos, Fun, Games, what more ? • How many ESRI devs do we have in Brazil ? Brazil Dev Summit (Maybe a room at EuEsri) ? Geoprocessing Meetups ? • Open source projects using GIS ? • Mobility competences development ? Who are interested ?