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Argos

Argos is a GUI for viewing and exploring scientific data, written in Python and Qt. It has a plug-in architecture that allows it to be extended to read new data formats. At the moment plug-ins are included to read HDF-5, NetCDF-4, WAV, numpy binary files and various image formats, but a plug-in could be written for any data that can be expressed as a Numpy array.

Installing Argos

Argos works with Python 2.7 or Python 3.4 and higher. If you don't have Python yet, consider to use the Anaconda Python distribution, as it comes with many of Argos' depencencies installed.

Argos requires at least PyQt5 and Numpy. It is strongly recommended to also install PyQtGraph (version 0.10.0 or higher), which is required to visualize the data as image plots or line plots. Without PyQtGraph the data can only be examined as tables or text.

Provided you use Python 3.5 or higher, you can install PyQt5 with pip. Otherwise you can download it at the Riverbank site.

%> pip install PyQt5
%> pip install numpy
%> pip install pyqtgraph
%> pip install argos

The following dependencies are optional. You only need to install them if you want to read the corresponding file formats. They can be installed with pip install <package> or downloaded from their respective website.

Python package File formats
h5py HDF-5
netCDF4 NetCDF (v3 and v4)
pillow BMP, JPEG, PNG, TIFF, GIF, etc.
scipy Matlab & IDL save-files. WAV
pandas Comma-separated files

Starting Argos

After installation, Argos can be started from the command-line with

    %> argos [FILE [FILE ...]]

where [FILE [FILE ...]] are zero or more files or directories you want to view.

Argos remembers some persistent settings such as window position and size. If, for some reason, you want Argos to reset to its initial state, you can use the --reset option.

    %> argos --reset

For a complete list of command line options, run argos with `-h'.

    %> argos -h

Trouble shooting

If you start argos and nothing happens, you probably didn't install PyQt or numpy. You can try to start argos as follows to get more information

    %> python -m argos.main

Using Argos

The Argos main window consists of a central panel that holds a visualization, and of smaller windows that surround the main pannel. The smaller windows can be moved around by dragging them at their title bar. They can be separated from the main window or can be docked at an at another position. Collectively they are called the dock windows. You can open and close them via the View main menu.

argos_screen_shot

The main panel is called the (data) Inspector. From the Inspector main menu you can select a different type: line plot, image plot, table, or text inspector. The current inspector type is shown in the Current inspector dock window (in the upper left corner in the screen shot). If you want to have more than one inspector open at the same time, you can select New Window from the File menu.

Selecting Data

The HDF-5 file that is used in the screenshot and in the examples below can be downloaded here (2.4 MB).

The Data Repository dock window gives the list of files and directories that are available for inspection. The repository has the form of a tree, or more precisely a list of trees (a forest). You can add files by selecting the Open Files from the File menu, and add directories with the Browse Directory option. Argos uses the file extension to determine which plug-in to use for opening the file. The icon color of the tree items indicates which plug-in was used. With the Open as menu option you can force Argos to open a file with the a certain plug-in. If a plug-in raises an error while opening a file, it will get a red triangle as icon (hover over the item to get a tool-tip with the error message).

Expanding the items in the tree will automatically open the underlying files. However, collapsing an item will not close the the tree item, as is indicated by the icon remaining the same. To close the underlying file, right-click the corresponding tree item and select Close Item from the context menu. This context menu also contains some other operations that work on that tree item, which hopefully are clear from their description.

Note that the data repository is shared between all Argos main windows. That is, opening a file will add a new item to the Data Repository tree of all open windows.

Slicing Data

Selecting an item in the repository will automatically place it in the Data Collector table. If the item contains data that can be converted to an array, combobox and spinbox widgets will appear in the table. These enable you to specify a slice of the array that the inspector will then visualize.

In the screen shot for instance, the ColumnAmountO3 HDF-5 dataset is selected and placed in the collector. This is a two-dimensional dataset, it contains a world wide distribution of ozone in the atmosphere. The first dimension corresponds to latitude, the second to longitude. These dimensions have no name since the dataset has no associated dimension scales. Therefore, Argos just calls them Dim0 and Dim1.

The inspector in the screen shot is a 2D Image Plot. This is a two-dimensional inspector so there will appear two comboboxes in the table: the first specifies which dimension will be mapped onto the Y-axis (Dim0 in the example) and the second determines the data dimension that is mapped to the X-axis.

collector_2d

Now imagine that your inspector is a 1D Line Plot inspector. As the name implies this has only one independent variable (the X-axis). The data is two-dimensional so only a sub-slice of the dataset can be visualized. The collector will now contain a combobox for specifying which data dimension will be layed along the X-axis, and a spinbox for selecting the index of the other dimension. Below you see the case that the line plot will draw row 360, or in Numpy notation: ColumnAmountO3[360, :]. By default Argos will put the first array dimension(s) in the spinbox(es), and select the fasted changing array dimension(s) in the combobox(es).

collector_1d

Inspecting Data

The Application Settings dock window, located to the right of the inspector, contains settings for configuring the current inspector. If you click on a config value, an appropriate widget will appear for editing, together with a reset button that will reset the config value to its default when clicked. The settings are hierarchical so that related settings can be grouped together in a brance. Branches also have a reset button, so for instance by clicking on the reset button of the y-axis config value branch, all settings pertaining to the Y-axis are reset. The reset button in the dark gray bar at the top, the one that says 2D image plot in the screen shot, will reset all config values of that inspector.

A few of the config settings are explained below. It is not a complete list, many of the settings will be clear from their name. I also urge you to experiment yourself by just trying new values. You can always go back by resetting the configuration of the complete inspector with the reset button in the dark grey row at the top. Note that some branches are collapsed by default to hide the infrequently used configuration options. For instance the auto-range item can be expanded for further tweaking of the auto-range method.

1D Line Plot Inspector

The 1D Line Plot inspector contains a line plot widget. You can use the left mouse button to pan, and the mouse wheel to zoom in and out. If you drag while your mouse cursor in above the X or Y axis, panning will be only in that direction. Similarly zooming with the mouse wheel will will only zoom on that axis. The right mouse button will bring up a context menu with choices to reset one, or both, axes to their default range (i.e. setting the axis auto-range on).

If the axis auto-range mode is on the axis range is calculated from the plot data. By default this is delegated to PyQtGraph, but by setting the y-axis/range/autorange/method option, you can let the auto-range method discard a percentage of the outliers.

If the axis auto-range mode is off, you can set the axis range manually in the range/min and range/max options. The range will remain fixed if you select a new slice with the spinbox. Autorange will be turned off as soon as you zoom or pan the data. You can turn it on again in the ...-axis/range/autorange option, the inspector context menu, or by clicking the small button labeled 'A' in the lower left corner of the figure.

The plot title can be modified with the title config option via an editable combobox widget. You can enter any title you want but be aware that the title may be incorrect as soon as you pick a new variable from the repository. Therefore a few properties can be written in between braces. These will then be updated dynamically whenever a new repo item is picked. For example, {name} will be substituted with the name of the selected item.

  • {name} : name of the selected item from the repository.
  • {path} : full path of the items leading up to the selected item. Might be long!
  • {base-name}: name of the file that contains the item.
  • {dir-name} : directory of the file that contains the item. Might be long!
  • {file-name}: full file name (dir-name + '/' + base-name). Might be long!
  • {slices} : information about the selected array slice in Numpy notation. E.g. [360, :]
  • {unit} : the unit of the item in parenthesis, or the empty string if no unit is available.
  • {raw-unit} : the unit of the item as-is, that is, without parenthesis.

Furthermore, PyQtGraph uses HTML for the plot title so you can make fancy titles such as <small>{name} <span style="color:#FF0066">{slices}</span></small>. This also means that you must escape the <, > and & characters by using &lt;, &gt;, &amp; instead!

The x-axis/label and x-axis/label settings can be edited in the same way as the title.

The editable comboboxes will remember entered values. If you want to remove an item from a combobox, highlight it in and then press delete. You can also press CTRL-delete while you are editing to remove the current item.

The pen branch holds config items that determine how the plot curve is drawn. Make sure you have at least one of the line and symbol checkmarks checked, or the curve will be invisible. Anti-aliasing is turned on by default. This can be slow, especially in combination with a line width other than 1.0, so if you have large plots you might want to turn it off.

2D Image Plot Inspector

The axes configuration items of the 2D image plot work in the same manner as for the 1D line plot. Next to that, the image plot has a color range that determines the minumum and maxiumum values of the color scale. The color range too can be in auto-range mode, or can be set manually. On the left side of the plot, you can see the color range visualized as the blue rectangle between the color bar and the values. You can drag the rectangle to shift the range and make the image lighter or darker. You can also drag ene of the edges of the rectangle and thus change the contrast of the rendered image.

Inside the blue rectange you see a side-ways histogram, which gives an indication of how many pixels have a certain value. This may assist you in choosing the best color range. By dragging the numbers of the color scale you can pan the histogram. Using your mouse wheel while the cursor is above the histogram will zoom in or out. The precise values of the histogram range can be seen in the histogram range item in the config tree. Just like the other range-settings this has an auto-range mode that can be turned on or off.

By checking the cross hair config option you can bring up two line plots to the side of the figure (see the screen shot above). A horizontal and vertical line are drawn at the cursor position and the plots will contain a cross-section of the values along those lines.

Table Inspector

This inspector is useful for examining the exact values of your data. You can change the size of the table cells via the row height and column width settings. By checking the auto row heights and/or the auto column widths check boxes, you can configure the table inspector to calculate the cell sizes dynamically from their contents. Note that this can be slow for large tables. So, as an optimization, if the table has more than 1000 elements only the currently selected cell is used to calculate the height and width, and this is applied to all other cells. If a table has more than 10000 rows or columns, auto resizing is disabled.

If your selected repository item is a structured array, i.e. an array having fields, all fields are displayed in a separate column by default. If you uncheck the separate fields checkbox, all fields of are combined in a single cell as follows: (field1, field2, ...).

You can change how the data in the cells is formatted with the config options under the format specifier branch. Which setting is used depends on your data type: the integers format setting is used if the data in the cell is an integer, other numbers is used for floating point, rational, or complex numbers, and any data that is not a string or a number is formatted with the other types format code. For instance, setting the other numbers to .2e will display all floating point data in scientific notation with three digits behind the decimal point.

The format codes must be a format_spec from the new-style Python formatting. Take a look at the Format Specification Mini-Language from the Python documentation to see what's possible. You can think of them as new-style formatting codes, but without the braces and the colon. If you want to use a complete format string, i.e. with the braces and the colon, you must put your format string between quotes. For example, using 'hello {:.2e}' will prepend "hello" to the data values.

Text Inspector

The Text inspector contains a read-only text editor widget that shows the contents of a single array element. If your data consists of a large strings, especially strings of multiple lines, examining it in a text editor works better than using a table and resizing the cell sizes. Also the word wrap settings has more options here. To see this for yourself, download the example file from the screenshot here (2.4 MB), and look at the HDFEOS INFORMATION/StructMetadata.0 dataset in both the table inspector and the text inspector.

Viewing Metadata

Below the repository window are three dock windows that are layed out on top of each other, and which can be brought to front by clicking their respective tab. They are for displaying meta data of the item that is currently selected in the data repository (not the one in the data collector).

The Dimensions dock window lists the dimension names and sizes of arrays. The Attributes window lists the HDF or NetCDF attributes of a group or dataset/variable. Other file formats may contain similar meta data, which is then also displayed here.

The Properties window contains a list of properties, such as the shape and element-type, of the selected item. In contrast to the Attributes this list is fixed, all repo items always have the same list of properties (although their contents may be empty). These properties, by the way, can be added as columns in the data repository. By default only the name property is shown; right-click on the repository tree header to add extra columns.

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Argos Panoptes HDF/NCDF/scientific data viewer.

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