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AutoTrail

AutoTrail is a highly modular, partial automation workflow engine providing excellent run time execution control.

User guides and examples

  • Please read the documentation of the TrailServer to understand how to run a trail server.
  • The layer2/trail.py/TrailClient documents how to use the various API calls.
  • Please go through the fully working examples provided in:
    • examples/interactive_trail.py -- for an interactive use of AutoTrail. The example trail used is defined in the file.
    • examples/runbook.py shows how a trail can behave like a runbook.
    • examples/separate_client_and_server/example_server.py and examples/separate_client_and_server/example_client.py show an example of running the trail server and client separately.
    • examples/elaborate_example.py shows a more elaborate example with lots of documentation.

How to run the example trail?

# Make sure the autotrail directory is in your PYTHONPATH
python examples/interactive_trail.py

How do I effectively use the framework?

  1. TrailServer -- Layer2 class to manage running the trail_manager. (Located at: autotrail/layer2/trail.py)
  2. TrailClient -- Layer2 class to make API calls using method calls. (This is the client class). (Located at: autotrail/layer2/trail.py)
  3. InteractiveTrail -- A helper class that adds interactivity (printing to STDOUT and STDERR) to the API methods provided by the TrailClient class. (Located at: autotrail/helpers.py)

How do I develop code for the framework?

  1. Step -- This is the container for functions to be executed. (Located at: autotrail/core/dag.py)
  2. extraction_wrapper -- This function helps preserve your functions to retain their signature, without having to comply to a specific signature. (Located at: autotrail/helpers.py)
  3. ShellCommand -- A pre-baked action function that can run shell commands and send the STDOUT and STDERR messages as messages to the user. (Located at: autotrail/helpers.py)
  4. Instruction -- A pre-baked action function that sends instructions to the user, which can be used to convert parts of the workflow into manual steps. (Located at: autotrail/helpers.py)
  5. make_simple_templating_function and make_context_attribute_based_templating_function -- These can reduce a lot of effort by easily extracting values from context object attributes. (Located at: autotrail/helpers.py)
  6. threadsafe_class -- A helper that makes a context class threadsafe so that parallel steps can write to the context object. (Located at: autotrail/helpers.py)
  7. write_trail_definition_as_dot -- A function that writes the trail DAG as a DOT file, which can then be converted to an SVG or other formats using the GNU dot program. (Located at: autotrail/helpers.py)
  8. monitor_trail -- A helper function to keep track of the trail status and invoke call-back functions when status changes per specification. (Located at: autotrail/helpers.py)
  9. create_conditional_step-- A helper function to easily create a conditional step (branching in the trail). (Located at: autotrail/helpers.py)

How is the code structured?

AutoTrail code is laid out in layers. They are as follows:

  • Core
    • Contains the core data structures and algorithms and can be found in the autotrail/core package.
    • This contains definitions of the most basic classes (data structures) and functions (algorithms) that perform the most fundamental operations.
    • These are used extensively by the higher layers.
  • Layer1
    • Contains the lowest level implementation of the workflow engine.
    • It provides the data structures and algorithms to run the server, the workflow and respond to API calls.
    • Using functions of this layer requires initialization of some resources by the user. The higher layers make certain assumptions and are easier to use.
    • Code for this layer can be found in the autotrail/layer1 package.
    • The layer1 client is used by the layer2 client to run a trail.
  • Layer2
    • Contains the more user-friendly classes for direct use.
    • This layer provides the TrailServer and TrailClient classes, which are used to run a trail (and its server) and make API calls to it.
    • These classes can be found in autotrail/layer2/trail.py.
    • All layer2 code can be found in the autotrail/layer2 package.
    • To see how the API calls are called, please read the documentation of the layer2/trail.py/TrailClient class.

What is the overall flow of logic?

  1. The user runs the server using the autotrail/layer2/trail.py/TrailServer class.
  2. The user then interacts with the server using the autotrail/layer2/trail.py/TrailClient class by passing it the socket file used in the TrailServer. (See the examples to know how this is done.)
  3. The user makes API calls by calling the public methods provided by the autotrail/layer2/trail.py/TrailClient class. Eg., Pause a trail by using TrailClient.pause(). For more details about the API calls, please read the documentation of the TrailClient class.
  4. When an API call is made by a user or script (by using a method of the TrailClient class), it sends the API call as a JSON encoded dictionary to the socket.
  5. The Layer1 server (layer1/trail.py/trail_manager) periodically calls core/socket_communication.py/serve_socket function, which looks for any requests, accepts them and calls the layer1/api.py/handle_api_call function, which then takes the necessary steps to complete the API request and prepares a response. To understand how API call handlers are defined, please read the documentation of the layer1/api.py/APICallDefinition namedtuple.
  6. This response is sent to the user by the serve_socket function and a "payload" value (the return value) of handle_api_call is returned back to trail_manager. If this value is False, then it signals the trail_manager to shutdown the server and exit.
  7. The response is a JSON encoded dictionary, which is received by the TrailClient and the result is extracted and returned based on the method documentation. Typically, exceptions are raised when errors are encountered.

How does the framework work?

Read the documentation of the following classes and functions (in the order given) to understand how things work:

  1. topological_while -- This algorithm is the main engine used by the framework. (Located at: autotrail/core/dag.py)
  2. trail_manager -- This is the layer1 server, the lowest level of trail operation. Pay specific attention to understanding the state_functions and ignorable_state_functions data structures, which are used to define the state transitions. (Located at: autotrail/layer1/trail.py)
  3. serve_socket -- The function that runs the Unix socket server for the API calls. (Located at: autotrail/core/socket_communication.py)
  4. handle_api_call -- The function that handles the API calls and takes actions on steps. Specifically, please read the documentation of APICallDefinition, the namedtuple that is used to draw up the entire specification of an API call. (Located at: autotrail/layer1/api.py)

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AutoTrail is a highly modular, partial automation workflow engine providing run time execution control

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