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id: manual-index title: Getting Started permalink: /docs/manual/index.html next: /docs/manual/FirstApp.html
This manual covers everything a GE developer needs to know. We assume you know nothing about GE before reading this manual. With the flexible data and message passing modeling capability, GE makes the development of a real-time large data serving system easy.
In this chapter, we will introduce what GE is, followed by our design philosophy. Then we help you setup a working environment for playing with GE.
This document is still in progress, and your comments are highly appreciated. Feel free to send us mails.
In what follows, assume we are developers who have big data sets (probably with rich and complex schema) and want to serve the data to our customers, allowing users to query the data in real time.
The data processing pipeline of a real-time data serving system is usually composed of three layers: data ingestion layer, computation layer, and query serving layer.
We have data outside the system, we need to put the data to the system before we can do anything useful with the system. This part is usually harder than it appears to be.
Before we can ingest data to the system, we need to first describe the schema of the data to the system so that the system can parse the data. There are many ways to model a data set, from easy to hard. Let us illustrate this using an example.
Leonhard Euler Born April 15, 1707
Leonhard Euler Age 76
Leonhard Euler Education University of Basel
Leonhard Euler Book Elements of Algebra
Leonhard Euler Son Johann Euler
Johann Euler Born Nov 27, 1734
Johann Euler Daughter Charlotte Euler
...
The data snippet shown above is in TSV (tab-separated values) format. Most naively, we can model the data as a plain text and use 'strings' to represent and store the data. This is super easy. But except for building full-text indexes and performing free text search, there is little we can do to support queries like "tell me the granddaughter's name of Leonhard Euler".
We can associate more semantics to the data by make it more structured. For example, we can define a Person struct to hold the data:
struct Person
{
string Name;
string Age;
string Son;
string Daughter;
...
}
With the structured data representation, we can write a program based on the semantics associated with the data fields to reason the granddaughter of a Person.
GE provides a declarative language called TSL to support such fine-grained data modeling. As a good data modeling practice, fine-grained data modeling is almost always strongly-typed: for every piece of data, if possible, we assign a strongly-typed schema with it. For example, for the "Age", we create an Age data field and associate it with an integer value. We can even specify the data field in a finer-grained way, i.e., specifying the integer value as an 8-bit unsigned value as illustrated in the following TSL script.
struct Person
{
int8 Age;
}
We can model all fields like 'Age' as strings
. Why bother making
things complex. The reason is that we care performance as well as
storage costs. Making Age an 8-bit integer not only makes it
occupies smaller space, but also makes the data processing easier and
faster.
After specifying the data schema using TSL, we can easily write a data loader to import data to GE as will be elaborated in the Data Import chapter later.
Having the data in the system, we can now design and implement our 'business logic' now. For example, after we have imported a social network to GE, we may want to allow the system users to search relations between any two social users.
Due to the great diversity of the application needs, it is almost impossible to use a fixed set of built-in functions to serve every data processing need. Instead of trying to provide an exhaustive set of built-in computation modules, GE tries to provide generic building blocks to allow us to easily build such modules. The most important building block provided by GE for distributed computation is declarative message passing. We can almost implement any distributed algorithm using the fine-grained event-driven message passing framework provided by GE. We will cover this part in the following chapters in detail.
For most of the time, GE functions as the backend of the system. The computation layer is responsible for processing data before serving it to users. Now let us look at how to serve backend services to the front-end applications.
GE provides two major methods for serving a service: REST APIs and GE protocols.
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REST APIs: They are standard, cross-platform, and easy-to-use. If we specify a RESTful service protocol named
MyService
, GE will automatically generate a REST service endpoint:http://example.com/MyService
. -
GE Protocols: They are the most efficient way to call a service implemented in the computation layer.
The following prerequisites are required to follow this manual and develop GE applications:
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Windows Server 2008 R2, Windows Server 2012, Windows 7/8/10, or above.
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Visual Studio 2015, 2013, or 2012.
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Windows PowerShell 3.0 (or above).