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Build and Test (Ubuntu) Build and Test (MacOS)

tv => task visualizer

vt-tv provides visualizations of the work-to-rank mappings, communications, and memory usage of an application.

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Overview

Specifically, the task visualizer takes in JSON files that describe work as a series of phases and subphases that contain 1) tasks for each rank, 2) communications, and 3) other user-defined fields (such as memory usage).

Using such input data, the task visualizer produces Exodus meshes to describe the ranks and objects over time, which can be visualized using Paraview. Additionally, the task visualizer can produce PNGs directly using a VTK workflow to render a visualization of ranks and tasks over phases (as seen below).

Example Output PNG

Getting Started

You need the following dependencies:

  1. A C++ compiler that supports C++17
  2. cmake >= 3.17
  3. VTK (build instructions here)

Begin by cloning vt-tv:

git clone https://github.com/DARMA-tasking/vt-tv.git

From now on, we will assume that the vt-tv source is located in ${VTTV_SOURCE_DIR}.

Installation and Usage

vt-tv can be installed as either a standalone C++ app or as a Python module. Instructions for both cases are included in the dropdowns below.

Standalone

1. Build

For the simplest build, run from ${VTTV_SOURCE_DIR}:

VTK_DIR=/path/to/vtk/build ./build.sh

To build and run tests, add the --tests-run flag:

VTK_DIR=/path/to/vtk/build ./build.sh --tests-run

More documentation for build.sh can be found within the script itself, including examples.

Alternatively, for an interactive build process, run:

./interactive_build.sh

From now on, we will assume that the vt-tv build is in ${VTTV_BUILD_DIR}.


2. Usage

vt-tv requires two inputs:

  1. One or more JSON data files
  2. A YAML configuration file (which contains the path to the JSON data files)

The basic call to vt-tv is:

${VTTV_BUILD_DIR}/apps/vt_standalone -c path/to/config

IMPORTANT: The path/to/config argument should be relative to ${VTTV_SOURCE_DIR} (see example below).

YAML Input

A YAML configuration exemplar can be found in ${VTTV_SOURCE_DIR}/config/conf.yaml. To use it, run

${VTTV_BUILD_DIR}/apps/vt_standalone -c config/conf.yaml

JSON Data Files

Sample JSON data files are provided in ${VTTV_SOURCE_DIR}/tests/unit/lb_test_data.

Information regarding the JSON format can be found in vt's documentation; the JSON schema validator is located in the vt repo.

Additionally, DARMA-tasking's Load Balancing Analysis Framework (LBAF) provides a Python script (lbsJSONDataFilesMaker.py) that may be used to generate JSON data files.

Python Module

Dependencies

In addition to the basic vt-tv dependencies listed above, you also need:

  1. A Python version between 3.8 - 3.11
  2. nanobind, which can be installed with:
pip install nanobind

1. Install

First, specify the location of your VTK build (see above) with:

export VTK_DIR=/path/to/vtk/build

Optional: To specify the number of parallel jobs to use during the build, you can set the VT_TV_CMAKE_JOBS environment variable:

export VT_TV_CMAKE_JOBS=8

Then install the binded vt-tv Python module with:

pip install ${VTTV_SOURCE_DIR}

Note: Behind the scenes, the usual cmake and make commands are run. Depending on your system, this can cause the install process to be lengthy as it will be compiling the entire vt-tv library.


2. Usage

Import the vt-tv module into your project using:

import vttv

The only function you need is vttv.tvFromJson, which has the following (C++) function signature:

void tvFromJson(
    const std::vector<std::string>& input_json_per_rank_list,
    const std::string& input_yaml_params_str,
    uint64_t num_ranks
)

The parameters are:

  • input_json_per_rank_list: A list of the input JSON data strings (one string per rank). In the C++ standalone app, this equates to the input JSON data files.
  • input_yaml_params_str: The visualization and output configuration data, formatted as a dictionary but exported as a string (see example below). This equates to the standalone app's input YAML configuration file.
  • num_ranks: The number of ranks to be visualized by vt-tv.

As an example, here is the (emptied) code used by the Load Balancing Analysis Framework to call vt-tv:

import vttv

# Populate with the JSON data from each rank
ranks_json_str = []

# Populate with the desired configuration parameters
vttv_params = {
    "x_ranks": ,
    "y_ranks": ,
    "z_ranks": ,
    "object_jitter": ,
    "rank_qoi": ,
    "object_qoi": ,
    "save_meshes": ,
    "force_continuous_object_qoi": ,
    "output_visualization_dir": ,
    "output_visualization_file_stem":
}

# Populate with number of ranks used in the current problem
num_ranks =

# Call vt-tv
vttv.tvFromJson(ranks_json_str, str(vttv_params), num_ranks)

Design Information

1. Quantities of Interest

vt-tv visualizes various Quantities of Interest (QOI) as requested by the user in the YAML configuration file:

visualization:
    # Other parameters...
    rank_qoi:
    object_qoi:

While vt-tv natively supports a variety of QOI, such as the load, id, or volume of ranks and objects1, we also support user-defined QOI, called attributes.

Rank Attributes

Rank attributes are defined in the metadata field of the JSON data files. For example:

{
    "metadata": {
        "rank": 0,
        "attributes": {
            "max_memory_usage": 8.0e+9
        }
    }
}

In this example, the user defines max_memory_usage as a rank attribute. This can then be specified as a rank_qoi in the YAML configuration file.

Object Attributes

Object attributes are defined in the tasks field of the JSON data files. For example:

{
    "phases": [
        {
            "id": 0,
            "tasks": [
                {
                    "entity": {
                        "home": 0,
                        "id": 0,
                        "migratable": true,
                        "type": "object"
                    },
                    "node": 0,
                    "resource": "cpu",
                    "time": 2.0,
                    "attributes": {
                        "home_rank": 0,
                        "shared_bytes": 10000.0,
                        "shared_id": 0
                    }
                },
            ]
        }
    ]
}

In this case, the user has defined home_rank, shared_bytes and shared_id as potential QOI.

In the YAML configuration file passed to vt-tv, they may specify any of these as their object_qoi.

2. General Structure

vt-tv is designed according to the following hierarchy:

graph TD;
    Info-->ObjectInfo;
    Info-->Rank;
    Rank-->PhaseWork;
    PhaseWork-->ObjectWork;
    ObjectWork-->ObjectCommunicator
Loading

Further information on each class, including methods and member variables, can be found in the documentation.

1. Navigating the Hierarchy

Users should interact mainly with the overarching Info class, which contains functions that drill down the hierarchy to get the desired information.

For example, an instance of Info holds getters to all object and rank QOI (including user_defined attributes):

auto rank_qoi = info.getRankQOIAtPhase(rank_id, phase_id, qoi_string);
auto obj_qoi = info.getObjectQOIAtPhase(obj_id, phase_id, qoi_string);

where the qoi_string is the name of the desired QOI, like "load" or "id". This string can also be a user-defined attribute, as described above.

2. ObjectInfo vs. ObjectWork

There are two classes that hold object data: ObjectInfo and ObjectWork.

ObjectInfo holds information about a given object across all ranks and phases. This includes:

  • the ID
  • the home rank (where the object originated)
  • whether the object is migratable or sentinel (stays on the same rank)

ObjectWork holds information about an object that may vary as it changes rank or phase, such as:

  • the attributes
  • the communications

Tip

As discussed above, users should utilize the getters present in Info rather than directly calling these classes.

Footnotes

  1. For a list of all natively-supported QOI for ranks and objects, see src/vt-tv/api/info.h.