The Morpheus library is designed to facilitate the development of high performance analytical software involving large datasets for both offline and real-time analysis on the Java Virtual Machine (JVM). The library is written in Java 8 with extensive use of lambdas, but is accessible to all JVM languages.
For detailed documentation with examples, see here
At its core, Morpheus provides a versatile two-dimensional memory efficient tabular data structure called a DataFrame
, similar to
that first popularised in R. While
dynamically typed scientific computing languages like R, Python & Matlab
are great for doing research, they are not well suited for large scale production systems as they become extremely difficult to maintain,
and dangerous to refactor. The Morpheus library attempts to retain the power and versatility of the DataFrame
concept, while providing a
much more type safe and self describing set of interfaces, which should make developing, maintaining & scaling code complexity much
easier.
Another advantage of the Morpheus library is that it is extremely good at scaling on multi-core processor
architectures given the powerful threading capabilities of the Java
Virtual Machine. Many operations on a Morpheus DataFrame
can seamlessly be run in parallel by simply calling parallel()
on the entity
you wish to operate on, much like with Java 8 Streams.
Internally, these parallel implementations are based on the Fork & Join framework, and near linear improvements in performance are observed
for certain types of operations as CPU cores are added.
A Morpheus DataFrame
is a column store structure where each column is represented by a Morpheus Array
of which there are many
implementations, including dense, sparse and memory mapped versions. Morpheus arrays
are optimized and wherever possible are backed by primitive native Java arrays (even for types such as LocalDate
, LocalDateTime
etc...)
as these are far more efficient from a storage, access and garbage collection perspective. Memory mapped Morpheus Arrays
, while still
experimental, allow very large DataFrames
to be created using off-heap storage that are backed by files.
While the complete feature set of the Morpheus DataFrame
is still evolving, there are already many powerful APIs to affect complex
transformations and analytical operations with ease. There are standard functions to compute summary statistics, perform various types
of Linear Regressions, apply Principal Component Analysis
(PCA) to mention just a few. The DataFrame
is indexed in both the row and column dimension, allowing data to be efficiently sorted,
sliced, grouped, and aggregated along either axis.
Morpheus also aims to provide a standard mechanism to load datasets from various data providers. The hope is that this API will be embraced by the community in order to grow the catalogue of supported data sources. Currently, providers are implemented to enable data to be loaded from Quandl, The Federal Reserve, The World Bank, Yahoo Finance and Google Finance.
Consider a dataset of motor vehicle characteristics accessible here.
The code below loads this CSV data into a Morpheus DataFrame
, filters the rows to only include those vehicles that have a power
to weight ratio > 0.1 (where weight is converted into kilograms), then adds a column to record the relative efficiency between highway
and city mileage (MPG), sorts the rows by this newly added column in descending order, and finally records this transformed result
to a CSV file.
DataFrame.read().csv(options -> {
options.setResource("http://zavtech.com/data/samples/cars93.csv");
options.setExcludeColumnIndexes(0);
}).rows().select(row -> {
double weightKG = row.getDouble("Weight") * 0.453592d;
double horsepower = row.getDouble("Horsepower");
return horsepower / weightKG > 0.1d;
}).cols().add("MPG(Highway/City)", Double.class, v -> {
double cityMpg = v.row().getDouble("MPG.city");
double highwayMpg = v.row().getDouble("MPG.highway");
return highwayMpg / cityMpg;
}).rows().sort(false, "MPG(Highway/City)").write().csv(options -> {
options.setFile("/Users/witdxav/cars93m.csv");
options.setTitle("DataFrame");
});
This example demonstrates the functional nature of the Morpheus API, where many method return types are in fact a DataFrame
and
therefore allow this form of method chaining. In this example, the methods csv()
, select()
, add()
, and sort()
all return
a frame. In some cases the same frame that the method operates on, or in other cases a filter or shallow copy of the frame being
operated on. The first 10 rows of the transformed dataset in this example looks as follows, with the newly added column appearing
on the far right of the frame.
Index | Manufacturer | Model | Type | Min.Price | Price | Max.Price | MPG.city | MPG.highway | AirBags | DriveTrain | Cylinders | EngineSize | Horsepower | RPM | Rev.per.mile | Man.trans.avail | Fuel.tank.capacity | Passengers | Length | Wheelbase | Width | Turn.circle | Rear.seat.room | Luggage.room | Weight | Origin | Make | MPG(Highway/City) | ------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------ 9 | Cadillac | DeVille | Large | 33.0000 | 34.7000 | 36.3000 | 16 | 25 | Driver only | Front | 8 | 4.9000 | 200 | 4100 | 1510 | No | 18.0000 | 6 | 206 | 114 | 73 | 43 | 35 | 18 | 3620 | USA | Cadillac DeVille | 1.5625 | 10 | Cadillac | Seville | Midsize | 37.5000 | 40.1000 | 42.7000 | 16 | 25 | Driver & Passenger | Front | 8 | 4.6000 | 295 | 6000 | 1985 | No | 20.0000 | 5 | 204 | 111 | 74 | 44 | 31 | 14 | 3935 | USA | Cadillac Seville | 1.5625 | 70 | Oldsmobile | Eighty-Eight | Large | 19.5000 | 20.7000 | 21.9000 | 19 | 28 | Driver only | Front | 6 | 3.8000 | 170 | 4800 | 1570 | No | 18.0000 | 6 | 201 | 111 | 74 | 42 | 31.5 | 17 | 3470 | USA | Oldsmobile Eighty-Eight | 1.47368421 | 74 | Pontiac | Firebird | Sporty | 14.0000 | 17.7000 | 21.4000 | 19 | 28 | Driver & Passenger | Rear | 6 | 3.4000 | 160 | 4600 | 1805 | Yes | 15.5000 | 4 | 196 | 101 | 75 | 43 | 25 | 13 | 3240 | USA | Pontiac Firebird | 1.47368421 | 6 | Buick | LeSabre | Large | 19.9000 | 20.8000 | 21.7000 | 19 | 28 | Driver only | Front | 6 | 3.8000 | 170 | 4800 | 1570 | No | 18.0000 | 6 | 200 | 111 | 74 | 42 | 30.5 | 17 | 3470 | USA | Buick LeSabre | 1.47368421 | 13 | Chevrolet | Camaro | Sporty | 13.4000 | 15.1000 | 16.8000 | 19 | 28 | Driver & Passenger | Rear | 6 | 3.4000 | 160 | 4600 | 1805 | Yes | 15.5000 | 4 | 193 | 101 | 74 | 43 | 25 | 13 | 3240 | USA | Chevrolet Camaro | 1.47368421 | 76 | Pontiac | Bonneville | Large | 19.4000 | 24.4000 | 29.4000 | 19 | 28 | Driver & Passenger | Front | 6 | 3.8000 | 170 | 4800 | 1565 | No | 18.0000 | 6 | 177 | 111 | 74 | 43 | 30.5 | 18 | 3495 | USA | Pontiac Bonneville | 1.47368421 | 56 | Mazda | RX-7 | Sporty | 32.5000 | 32.5000 | 32.5000 | 17 | 25 | Driver only | Rear | rotary | 1.3000 | 255 | 6500 | 2325 | Yes | 20.0000 | 2 | 169 | 96 | 69 | 37 | NA | NA | 2895 | non-USA | Mazda RX-7 | 1.47058824 | 18 | Chevrolet | Corvette | Sporty | 34.6000 | 38.0000 | 41.5000 | 17 | 25 | Driver only | Rear | 8 | 5.7000 | 300 | 5000 | 1450 | Yes | 20.0000 | 2 | 179 | 96 | 74 | 43 | NA | NA | 3380 | USA | Chevrolet Corvette | 1.47058824 | 51 | Lincoln | Town_Car | Large | 34.4000 | 36.1000 | 37.8000 | 18 | 26 | Driver & Passenger | Rear | 8 | 4.6000 | 210 | 4600 | 1840 | No | 20.0000 | 6 | 219 | 117 | 77 | 45 | 31.5 | 22 | 4055 | USA | Lincoln Town_Car | 1.44444444 |
The Morpheus API includes a regression interface in order to fit data to a linear model using either OLS, WLS or GLS. The code below uses the same car dataset introduced in the previous example, and regresses Horsepower on EngineSize. The code example prints the model results to standard out, which is shown below, and then creates a scatter chart with the regression line clearly displayed.
//Load the data
DataFrame<Integer,String> data = DataFrame.read().csv(options -> {
options.setResource("http://zavtech.com/data/samples/cars93.csv");
options.setExcludeColumnIndexes(0);
});
//Run OLS regression and plot
String regressand = "Horsepower";
String regressor = "EngineSize";
data.regress().ols(regressand, regressor, true, model -> {
System.out.println(model);
DataFrame<Integer,String> xy = data.cols().select(regressand, regressor);
Chart.create().withScatterPlot(xy, false, regressor, chart -> {
chart.title().withText(regressand + " regressed on " + regressor);
chart.subtitle().withText("Single Variable Linear Regression");
chart.plot().style(regressand).withColor(Color.RED).withPointsVisible(true);
chart.plot().trend(regressand).withColor(Color.BLACK);
chart.plot().axes().domain().label().withText(regressor);
chart.plot().axes().domain().format().withPattern("0.00;-0.00");
chart.plot().axes().range(0).label().withText(regressand);
chart.plot().axes().range(0).format().withPattern("0;-0");
chart.show();
});
return Optional.empty();
});
============================================================================================== Linear Regression Results ============================================================================================== Model: OLS R-Squared: 0.5360 Observations: 93 R-Squared(adjusted): 0.5309 DF Model: 1 F-Statistic: 105.1204 DF Residuals: 91 F-Statistic(Prob): 1.11E-16 Standard Error: 35.8717 Runtime(millis) 52 Durbin-Watson: 1.9591 ============================================================================================== Index | PARAMETER | STD_ERROR | T_STAT | P_VALUE | CI_LOWER | CI_UPPER | ---------------------------------------------------------------------------------------------- Intercept | 45.2195 | 10.3119 | 4.3852 | 3.107E-5 | 24.736 | 65.7029 | EngineSize | 36.9633 | 3.6052 | 10.2528 | 7.573E-17 | 29.802 | 44.1245 | ==============================================================================================
It is possible to access all UK residential real-estate transaction records from 1995 through to current day via the UK Government Open Data initiative. The data is presented in CSV format, and contains numerous columns, including such information as the transaction date, price paid, fully qualified address (including postal code), property type, lease type and so on.
Let us begin by writing a function to load these CSV files from Amazon S3 buckets, and since they are stored one file per year, we provide a parameterized function accordingly. Given the requirements of our analysis, there is no need to load all the columns in the file, so below we only choose to read columns at index 1, 2, 4, and 11. In addition, since the files do not include a header, we re-name columns to something more meaningful to make subsequent access a little clearer.
/**
* Loads UK house price from the Land Registry stored in an Amazon S3 bucket
* Note the data does not have a header, so columns will be named Column-0, Column-1 etc...
* @param year the year for which to load prices
* @return the resulting DataFrame, with some columns renamed
*/
private DataFrame<Integer,String> loadHousePrices(Year year) {
String resource = "http://prod.publicdata.landregistry.gov.uk.s3-website-eu-west-1.amazonaws.com/pp-%s.csv";
return DataFrame.read().csv(options -> {
options.setResource(String.format(resource, year.getValue()));
options.setHeader(false);
options.setCharset(StandardCharsets.UTF_8);
options.setIncludeColumnIndexes(1, 2, 4, 11);
options.getFormats().setParser("TransactDate", Parser.ofLocalDate("yyyy-MM-dd HH:mm"));
options.setColumnNameMapping((colName, colOrdinal) -> {
switch (colOrdinal) {
case 0: return "PricePaid";
case 1: return "TransactDate";
case 2: return "PropertyType";
case 3: return "City";
default: return colName;
}
});
});
}
Below we use this data in order to compute the median nominal price (not inflation adjusted) of an apartment for each year between
1995 through 2014 for a subset of the largest cities in the UK. There are about 20 million records in the unfiltered dataset between
1993 and 2014, and while it takes a fairly long time to load and parse (approximately 3.5GB of data), Morpheus executes the analytical
portion of the code in about 5 seconds (not including load time) on a standard Apple Macbook Pro purchased in late 2013. Note how we use
parallel processing to load and process the data by calling results.rows().keys().parallel()
.
//Create a data frame to capture the median prices of Apartments in the UK'a largest cities
DataFrame<Year,String> results = DataFrame.ofDoubles(
Range.of(1995, 2015).map(Year::of),
Array.of("LONDON", "BIRMINGHAM", "SHEFFIELD", "LEEDS", "LIVERPOOL", "MANCHESTER")
);
//Process yearly data in parallel to leverage all CPU cores
results.rows().keys().parallel().forEach(year -> {
System.out.printf("Loading UK house prices for %s...\n", year);
DataFrame<Integer,String> prices = loadHousePrices(year);
prices.rows().select(row -> {
//Filter rows to include only apartments in the relevant cities
final String propType = row.getValue("PropertyType");
final String city = row.getValue("City");
final String cityUpperCase = city != null ? city.toUpperCase() : null;
return propType != null && propType.equals("F") && results.cols().contains(cityUpperCase);
}).rows().groupBy("City").forEach(0, (groupKey, group) -> {
//Group row filtered frame so we can compute median prices in selected cities
final String city = groupKey.item(0);
final double priceStat = group.colAt("PricePaid").stats().median();
results.data().setDouble(year, city, priceStat);
});
});
//Map row keys to LocalDates, and map values to be percentage changes from start date
final DataFrame<LocalDate,String> plotFrame = results.mapToDoubles(v -> {
final double firstValue = v.col().getDouble(0);
final double currentValue = v.getDouble();
return (currentValue / firstValue - 1d) * 100d;
}).rows().mapKeys(row -> {
final Year year = row.key();
return LocalDate.of(year.getValue(), 12, 31);
});
//Create a plot, and display it
Chart.create().withLinePlot(plotFrame, chart -> {
chart.title().withText("Median Nominal House Price Changes");
chart.title().withFont(new Font("Arial", Font.BOLD, 14));
chart.subtitle().withText("Date Range: 1995 - 2014");
chart.plot().axes().domain().label().withText("Year");
chart.plot().axes().range(0).label().withText("Percent Change from 1995");
chart.plot().axes().range(0).format().withPattern("0.##'%';-0.##'%'");
chart.plot().style("LONDON").withColor(Color.BLACK);
chart.legend().on().bottom();
chart.show();
});
The percent change in nominal median prices for apartments in the subset of chosen cities is shown in the plot below. It shows that London did not suffer any nominal house price decline as a result of the Global Financial Crisis (GFC), however not all cities in the UK proved as resilient. What is slightly surprising is that some of the less affluent northern cities saw a higher rate of appreciation in the 2003 to 2006 period compared to London. One thing to note is that while London did not see any nominal price reduction, there was certainly a fairly severe correction in terms of EUR and USD since Pound Sterling depreciated heavily against these currencies during the GFC.
Visualizing data in Morpheus DataFrames
is made easy via a simple chart abstraction API with adapters supporting both
JFreeChart as well as Google Charts (with others
to follow by popular demand). This design makes it possible to generate interactive Java Swing
charts as well as HTML5 browser based charts via the same programmatic interface. For more details on how to use this API,
see the section on visualization here, and the code here.
Morpheus is published to Maven Central so it can be easily added as a dependency in your build tool of choice. The codebase is currently divided into 5 repositories to allow each module to be evolved independently. The core module, which is aptly named morpheus-core, is the foundational library on which all other modules depend. The various Maven artifacts are as follows:
Morpheus Core
The foundational library that contains Morpheus Arrays, DataFrames and other key interfaces & implementations.
<dependency>
<groupId>com.zavtech</groupId>
<artifactId>morpheus-core</artifactId>
<version>${VERSION}</version>
</dependency>
Morpheus Visualization
The visualization components to display DataFrames
in charts and tables.
<dependency>
<groupId>com.zavtech</groupId>
<artifactId>morpheus-viz</artifactId>
<version>${VERSION}</version>
</dependency>
Morpheus Quandl
The adapter to load data from Quandl
<dependency>
<groupId>com.zavtech</groupId>
<artifactId>morpheus-quandl</artifactId>
<version>${VERSION}</version>
</dependency>
Morpheus Google
The adapter to load data from Google Finance
<dependency>
<groupId>com.zavtech</groupId>
<artifactId>morpheus-google</artifactId>
<version>${VERSION}</version>
</dependency>
Morpheus Yahoo
The adapter to load data from Yahoo Finance
<dependency>
<groupId>com.zavtech</groupId>
<artifactId>morpheus-yahoo</artifactId>
<version>${VERSION}</version>
</dependency>
A Questions & Answers forum has been setup using Google Groups and is accessible here
Morpheus Javadocs can be accessed online here.
A Continuous Integration build server can be accessed here, which builds code after each merge.
Morpheus is released under the Apache Software Foundation License Version 2.