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Welcome to MatGraphDB, a powerful Python package designed to interface with primary and graph databases for advanced material analysis.

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MatGraphDB

Introduction to MatGraphDB

Welcome to MatGraphDB, a powerful Python package designed to interface with primary and graph databases for advanced material analysis. MatGraphDB excels in managing vast datasets of materials data, performing complex computational tasks, and encoding material properties and relationships within a graph-based analytical model.

MatGraphDB is structured around several modular components that work together to streamline data management and analysis:

  • DataManager: Handles interactions with JSON databases and manages the extraction of information from completed calculation directories.
  • CalcManager: Manages Density Functional Theory (DFT) calculations, including setting up directories and launching calculations within MaterialsData.
  • GraphDBGenerator: Facilitates the creation of nodes and relationships for graph databases, storing this information in a specified directory and generating necessary CSV files for nodes and relationships.
  • Neo4jManager and Neo4jGDSManager: Manage connections to Neo4j databases, allowing for the creation, update, and removal of databases on the Neo4j server, as well as interaction with the Neo4j Graph Data Science library for advanced graph analytics.

The ultimate goal of MatGraphDB is to leverage the capabilities of graph databases, specifically Neo4j, to enable advanced analysis and discovery in the realm of material science. By integrating data management, DFT calculations, and graph database functionalities, MatGraphDB provides a cohesive workflow for researchers and analysts to explore and understand complex material data.

This documentation provides an overview of the package, detailing how the various components interact to facilitate efficient data management, computation, and analysis, ensuring that you can make the most out of your material science research with MatGraphDB.

Components and Their Interactions

System Architecture of MatGraphDB *Figure 1: MatGraphDB Package Overview - This diagram illustrates the main components and their interactions within the MatGraphDB package. It highlights the initialization of the DataManager, the execution of DFT calculations by CalcManager, the generation of the graph database using GraphDBGenerator, and the management of Neo4j databases through Neo4jManager and Neo4jGDSManager. The workflow demonstrates how data flows from JSON files to advanced graph analytics, facilitating comprehensive materials data analysis.

1. DataManager Initialization

The DataManager is the foundational component of the package. It is initialized with the directory_path, which points to the JSON database directory. The primary role of DataManager is to manage interactions with the JSON files and extract information from the completed calculation directories.

2. DFT Calculations with CalcManager

The CalcManager component manages DFT calculations through interactions with data_manager. This includes:

  • Performing DFT calculations (dft_calcs).
  • Managing calculations within MaterialsData.
  • Setting up directories and launching calculations.

3. Graph Database Generation

The GraphDBGenerator plays a crucial role in creating nodes and relationships for the graph database. It utilizes data_manager to handle these processes. To build the graph database, GraphDBGenerator uses the methods create_nodes() and create_relationships(). Once the database directory is set up, an additional method transforms the graph database into a GraphML file, compatible with various graph packages.

  • Creates and stores information in the graph_databases/{database_name}/neo4j_csv directory.
  • Generates node CSV files in the format {node_filename}.csv.
  • Generates relationship CSV files in the format {node_1_filename}-{node_2_filename}-{connection_names}.csv.

4. Managing Neo4j Database Connections

Neo4j database connections are managed by Neo4jManager and Neo4jGDSManager:

  • Neo4jManager: After the GraphDBGenerator creates the graph database directory, Neo4jManager can be initialized with this directory to manage databases on the Neo4j server. This includes creating, removing, updating, and listing databases, as well as importing all data from the directory.
  • Neo4jGDSManager: Once the database is imported, Neo4jGDSManager can be initialized. This component interacts with the Neo4j Graph Data Science library to perform various operations, such as:
    • Loading graphs into memory.
    • Removing graphs from memory.
    • Writing and exporting graphs.
    • Running algorithms on the graphs.

Summary

MatGraphDB seamlessly integrates materials data management with advanced graph database functionalities, leveraging DFT calculations and Neo4j database management to provide a robust tool for materials science research. The interactions between DataManager, CalcManager, GraphDBGenerator, Neo4jManager, and Neo4jGDSManager create a cohesive workflow, from data management and DFT calculations to graph database creation and sophisticated data analysis.

Getting Started

Installing the data

You can install the data here:

Setting up Conda environment

Navigate to the root directory MatGraphDB. Then do the following

Use if you are going to not use graph-tool library

Windows

conda env create -f env_win.yml

Linux

conda env create -f env_linux.yml

Use if you are going to not use graph-tool library

This allows you to use the graph-tool library. Currently, we only support the graph-tool library for linux.

Linux

conda env create -f env_graph_tool.yml

To activeate the enviornment use:

conda activate matgraphdb

Adjusting configs

Th configurations of the project are stored in the MatGraphDB/config.yml file. You can adjust the configurations to your needs. The most important configurations that need to be adjusted are DB_NAME, USER, PASSWORD, LOCATION, NEO4J_DESKTOP_DIR, and N_CORES.

  • DB_NAME: The name of the database that will be created. This will search for the database with the same name in the MatGraphDB/data/production directory.

  • USER: The username for the Neo4j database.

  • PASSWORD: The password for the Neo4j database.

  • LOCATION: This is the location of the Neo4j DBMS. This is usually "bolt://localhost:7687"

  • NEO4J_DESKTOP_DIR: This is the directory where the Neo4j Desktop is installed. This could be in various locations depending on your system.

    • Windows - C:/Users/{username}/.Neo4jDesktop
    • Linux - /home/neo4j : Might be different depending on your system
  • N_CORES: The number of cores to be used for parallel processing.

Neo4jDektop

To use neo4j, you will need to install the neo4j desktop application. You can download the application from the neo4j website. Create a project and then create a new database management system (DBMS) , name it MatGraphDB and select the Neo4j Community Edition as the DBMS.

You will also need to install the APOC library and Graph Data Science Library. You can do this by click on you DBMS name and the on the right clicking Plugins, then click on the libraries and install them.

You will also need to set an apoc environment variable. You can do this by running the following code:

with Neo4jGraphDatabase() as manager:
    settings={'apoc.export.file.enabled':'true'}
    manager.set_apoc_environment_variables(settings=settings)

After running this code, you will need to stop the dbms and restart it.

Usage

Interacting with the json database:

Checking properties

from matgraphdb import DatabaseManager

db=DatabaseManager()

success,failed=db.check_property(property_name="band_gap")

Adding material properties

from matgraphdb import DatabaseManager

db=DatabaseManager()
structure = Structure(
        Lattice.cubic(3.0),
        ["C", "C"],  # Elements
        [
            [0, 0, 0],          # Coordinates for the first Si atom
            [0.25, 0.25, 0.25],  # Coordinates for the second Si atom (basis of the diamond structure)
        ]
    )

# Add material by structure
db.create_material(structure=structure)

# Add material by composition
db.create_material(structure="BaTe")

Creating Graph Databases

To create graph databases, you can use the GraphGenerator class. This class takes in a from_scratch parameter, which determines whether to start from scratch or use an existing graph database. The default value is False. This class also takes in a skip_main_init parameter, which determines whether to skip the initial node and relationship creation. The default value is True.

When the object is created, it will create the main graph database based on the json files in the MatGraphDB/data/production/json_database directory. The main graph database will contain the initial material nodes and relationships. The file can be found at MatGraphDB/data/production/graph_database/main/neo4j_csv

from matgraphdb.graph.graph_generator import GraphGenerator

generator=GraphGenerator(skip_main_init=False)

Once the initial graph database is created, you can screen the existing materials using the screen_graph_database function.

generator.screen_graph_database('nelements-2-2',nelements=(2,2), from_scratch=True)
generator.screen_graph_database('nelements-3-3',nelements=(3,3), from_scratch=True)

generator.screen_graph_database('spg-145',space_groups=[145], from_scratch=True)
generator.screen_graph_database('spg-145-196',space_groups=[145,196], from_scratch=True)
generator.screen_graph_database('spg-no-145',space_groups=[145], from_scratch=True, include=False)
generator.screen_graph_database('spg-no-196',space_groups=[196], from_scratch=True, include=False)

generator.screen_graph_database('elements-no-Ti',elements=["Ti"], from_scratch=True, include=False)
generator.screen_graph_database('elements-no-Fe',elements=["Fe"], from_scratch=True, include=False)
generator.screen_graph_database('elements-no-Ti-Fe',elements=["Ti","Fe"], from_scratch=True, include=False)

Here, we are using the screen_graph_database function to create a 9 new graph databases. The nelements parameter specifies the number of elements to include in the graph database. The space_groups parameter specifies the space groups to include in the graph database. The elements parameter specifies the elements to include in the graph database. The from_scratch parameter determines whether to start from scratch or use an existing graph database. The include parameter determines whether to include the specified elements or space groups in the graph database.

Writing GraphML

To write a graphml file from the graph, you can use the write_graphml function. This function takes a graph database name as input and writes the graph to a file in the specified format.

generator.write_graphml(graph_dirname='nelements-2-2')

Interacting with the Graph Databse in Neo4j

List Database Schema

from matgraphdb import Neo4jGraphDatabase

with Neo4jGraphDatabase() as session:
    schema_list=session.list_schema()

Execute Cypher Statement

with Neo4jGraphDatabase() as session:
    result = matgraphdb.query(query, parameters)

Filter properties

with Neo4jGraphDatabase() as session:
    results=session.read_material(
                            material_ids=['mp-1000','mp-1001'], 
                            elements=['Te','Ba'])
    results=session.read_material(
                                material_ids=['mp-1000','mp-1001'],
                                elements=['Te','Ba'], 
                                crystal_systems=['cubic'])

    results=session.read_material(
                            material_ids=['mp-1000','mp-1001'],
                            elements=['Te','Ba'],
                            crystal_systems=['hexagonal'])
                            
    results=session.read_material(
                            material_ids=['mp-1000','mp-1001'],
                            elements=['Te','Ba'],
                            hall_symbols=['Fm-3m'])

    results=session.read_material(
                            material_ids=['mp-1000','mp-1001'],
                            elements=['Te','Ba'],
                            band_gap=[(1.0,'>')])

success,failed=db.check_property(property_name="band_gap")

Interacting with the Neo4j Graph Datascience Library

Initializing the Neo4jGDSManager

from matgraphdb import Neo4jGraphDatabase,Neo4jGDSManager

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)

Listing the graphs that are loaded into the gds system for a given database

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    database_name=
    results=manager.list_graphs(database_name='main')
    print(results)

Check if graph is in memory

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    results=manager.is_graph_in_memory(database_name='main', graph_name='materials_chemenvElements')
    print(results)

Loading a graph into the gds system

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)

    database_name='main'
    graph_name='materials_chemenvElements'
    node_projections=['ChemenvElement','Material']
    relationship_projections={
                "GEOMETRIC_ELECTRIC_CONNECTS": {
                "orientation": 'UNDIRECTED',
                "properties": 'weight'
                },
                "COMPOSED_OF": {
                    "orientation": 'UNDIRECTED',
                    "properties": 'weight'
                }
            }
    manager.load_graph_into_memory(database_name=database_name,
                                       graph_name=graph_name,
                                       node_projections=node_projections,
                                       relationship_projections=relationship_projections)
    print(manager.get_graph_info(database_name=database_name,graph_name=graph_name))

Dropping a graph from memory

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    database_name='main'
    graph_name='materials_chemenvElements'
    reuslts=manager.drop_graph(database_name,graph_name)

Using graph algorithms Make sure the graph is loaded into memory before running the algorithms.

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    database_name='main'
    graph_name='materials_chemenvElements'
    results=manager.run_fastRP_algorithm(database_name=database_name,
                                  graph_name=graph_name,
                                  algorithm_name='pageRank',
                                  algorithm_mode='stream',
                                  embedding_dimension=128,
                                  concurrency=4,
                                  random_seed=42)
    print(results)

Write to graph database

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    database_name='main'
    graph_name='materials_chemenvElements'
    results=manager.run_fastRP_algorithm(database_name=database_name,
                                  graph_name=graph_name,
                                  algorithm_name='pageRank',
                                  algorithm_mode='write',
                                  embedding_dimension=128,
                                  concurrency=4,
                                  random_seed=42,
                                  write_property='fastrp-embedding')
    print(results)

or

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    database_name='main'
    graph_name='materials_chemenvElements'
    results=manager.run_fastRP_algorithm(database_name=database_name,
                                  graph_name=graph_name,
                                  algorithm_name='pageRank',
                                  algorithm_mode='mutate',
                                  embedding_dimension=128,
                                  concurrency=4,
                                  random_seed=42,
                                  mutate_property='fastrp-embedding')
    print(results)

    manager.write_graph(database_name=database_name,
                        graph_name=graph_name,
                        node_properties=['fastrp-embedding'],
                        node_labels=['Materials'],
                        concurrency=4)

    

Export graph to csv

with Neo4jGraphDatabase() as session:
    manager=Neo4jGDSManager(session)
    database_name='main'
    graph_name='materials_chemenvElements'
    results=manager.export_graph_csv(database_name=database_name,
                                  graph_name=graph_name,
                                  export_name='materials-chemenvElements.csv',
                                  concurrency=4,
                                  default_relationship_type='COMPOSED_OF',
                                  additional_node_properties=['ChemenvElement','Material'])
    print(results)

Authors

Logan Lang, Aldo Romero, Eduardo Hernandez,

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