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Showing content with the highest reputation on 08/17/2015 in all areas

  1. Hi am2, I hope that this information will help you and be useful.... http://www.yale.edu/ceo/Documentation/Landsat%208%20image%20processing.pdf http://www.exelisvis.com/docs/AVHRRSeaSurfaceTemperature.html http://wvvw.gulfofmaine.org/kb/uploads/14137/ThomasEtAl02.pdf http://pubag.nal.usda.gov/pubag/downloadPDF.xhtml?id=38199&content=PDF
    2 points
  2. CartoDB One-Click Mapping has landed. CartoDB already let you jump from dataset to shareable, web-based data visualizations in a matter of seconds. With One-Click Mapping, that jump is even shorter. From now on, our brand new functionality will analyze your uploaded datasets and make suggestions of columns to visualize, offering you a selection of ready-made maps from the moment you click over to the dashboard. The platform will now give you a variety of sample maps to choose from, tailored to fit your visualization needs. You’ll be able to scroll through the options to see which visualization will tell the best story about your data without having to do all the investigation yourself. And, of course, the map you choose will remain fully editable, allowing you to make all the fine tweaks your heart desires. Building One-Click Mapping has been extremely fun for us because we have not seen anything like this before. Even more fun has been seeing it in action and looking at the time we save you by writing code to analyze your datasets! One-Click Mapping helps with the initial design of your maps by identifying the columns in your datasets that are best suited for mapping, based on some basic rules of thumb for data visualization. For example, datasets that contain a timestamp column weigh in favor of visualizing with spatio-temporal Torque maps. If we see that another column has very few nulls and several unique values, we’ll suggest a category map. And with just one click, you have access to these pre-styled maps! For numerical data, our analysis looks at the shape of the histogram to identify the quantification method (which calculates the width of bins for a histogram) that should apply. If the data is highly clustered the algorithm will favor a choropleth map over a bubble map. For choropleths, if the data peaks in the center or on the edges, we apply a divergent color ramp like you see for election maps. Data that falls to the right, left, or is flat gets a sequential color ramp. source : http://cartodb.pr.co/106791-cartodb-launches-one-click-mapping-the-mapping-revolution
    1 point
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