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Smart-Views: A blockchain enabled OLAP Data Warehouse

This repository hosts the application server of Smart-Views. It is the implementation / application part of my thesis as an undergraduate Computer Science student of Athens University of Economics and Business (aueb.gr) under the supervision of Professor Yannis Kotidis. The paper of this work is published In Proceedings of the 23rd International Conference on Big Data Analytics and Knowledge Discovery (DaWaK 2021) under th title "Smart-Views: Decentralized OLAP View Management Using Blockchains" and it is available here.

The directory structure of the project is shown below.

The project is coded in Node.JS and uses the Ethereum Blockchain using the Web3.JS library.

├── README.md
├── config.json
├── contracts
│   ├── ABCD.sol
│   └── Cars.sol
├── controllers
│   ├── cacheController.js
│   ├── computationsController.js
│   ├── contractController.js
│   └── viewMaterializationController.js
├── helpers
│   ├── contractDeployer.js
│   ├── contractGenerator.js
│   ├── costFunctions.js
│   ├── helper.js
│   └── transformations.js
├── index.js
├── package-lock.json
├── package.json
├── run.sh
├── schematics
│   ├── architecture.png
│   ├── deployment.png
│   ├── flow.png
│   └── structure.png
├── templates
│   ├── ABCD.json
│   └── cars.json
├── test
│   └── tests.js
├── test_scripts
│   ├── exp1.js
│   └── testDataGenerator.js
└── views
    ├── dashboard.ejs
    ├── form.ejs
    └── index.ejs

Run instructions

After you clone the repo type npm install in the directory project and wait until all dependencies are installed. Then update the config.json file with the correct values for the fields redisPort, redisIP, blockchainIP and sql which are the most important ones in order to start the server. The config file should look like this:

{
  "recordsSlice": 1000,
  "cacheEvictionPolicy": "FIFO",
  "maxCacheSize": 20,
  "cacheSlice": 400,
  "autoCacheSlice": "auto",
  "maxGbSize": 100,
  "redisPort": 6379,
  "redisIP": "127.0.0.1",
  "blockchainIP": "http://localhost:8545",
  "sql":  {
    "host": "localhost",
    "user": "sqlUser",
    "password": "yourPassword",
    "database": "yourDatabaseName"},
  "cacheEnabled": true
}

Attention: mySQL database must be created by you and it must be empty. It is mandatory as the server uses SQL to do all the calculations for the Group Bys and the merging.

Before running the server

Before you run the server you must do 3 things:

  1. Start mySQL server if not running
  2. Start the eththereum blockchain simulator (ganache-cli)
    • In order to do that, open a terminal window and type the command: ganache-cli -e 8000000000000 -l 80000000000000. -e and -l parameters are set to those values in oder to be sure tht the emulator has sufficient funds for the transactions we will perform. Of course, in order to perform this action ganache-cli must be already installed. If you have not yet istalled ganache-cli you can do so by typing npm install ganache-cli -g.
  3. Start redis-server. You can do this by simply typing redis-server in a terminal window. Again, be sure to have redis-server installed before you perform this action.

Now you can type node index.js in the project root directory and if everything is fine, the server will start immediately. If everything is set up correctly you should see the following lines in the terminal:

Smart-Views listening on http://localhost:3000/dashboard
Redis connected
mySQL connected

Alternatively you can simply run the run.sh script which starts Redis server, the Ethereum blockchain simulator (ganache-cli) and the application server at one. The run.sh script assumes mySQL server is already running, however you can simply add the command that starts mySQL server in th first line and automate that too.

The project structure

The structure of the whole project is presented in the diagram.

It works as described below:

  • Blockchain stores the raw data or what we call in data warehouses the "fact table". In our implementation we use Ethereum blockchain.

  • View cache is an in-memory data store (often key-value based) that holds recently computed results of the smart views. In our implementation we use Redis cache

  • SQL Database is used to execute the calculations and update the smart views. In our implementation we use mySQL server.

  • Application server orchestrates the whole process of defining, storing, reusing and up- dating the smart views and fully controls the flow of data between the other components.

The application server tries to materialize each smart view incrementally by using older cached versions of the same or other views. In that way it avoids fetching many facts from the blockchain (which is the most time-intensive resource).

The application server structure

The server structure is shown in the diagram below. The server communicates with the Ethereum blockchain via the "Blockchain controller". The blockchain controller contains the functions that call the methods of a deployed smart contract and it then passes the responses to the API level.

Templates, smart contracts generation and deployment

Templates are a key concept in the implementation of Smart views. Templates are .json files describing each smart view. These files hold the metadata such as:

  • the name of the structure / smart view
  • the properties / columns of the fact table
  • the necessary SQL queries for the computations
  • the views that we want to define in the fact table and how frequently they have been materialized in the past

We could say that templates are the Data Description Language (DDL) equivalent of our system.

An example of a smart view template is shown below.

{
  "name": "CARS",
  "struct_Name": "Cars",
  "template": {
    "properties": [
      { "key": "pk" },
      { "key": "Brand" },
      { "key": "Model" },
      { "key": "Year" },
      { "key": "Category" },
      { "key": "Cylinders" },
      { "key": "HorsePower" },
      { "key": "Navigation" },
      { "key": "Price" }
    ],
    "create_table": "CREATE TEMPORARY TABLE CARS(\n\tpk int not null\n\t\tprimary key,\n\tbrand varchar(25),\n\tmodel varchar(25),\n\tyear int,\n\tcategory varchar(25),\n\tcylinders int,\n\tHorsePower int, \n\tNavigation varchar(25),Price numeric(8,2));\n\n",
    "table_name": "CARS"
  },
  "views": [
    {
      "name": "brand|category(COUNT)",
      "fields": [
        "brand",
        "category"
      ],
      "operation": "COUNT",
      "aggregationField": "pk",
      "SQLTable": "CREATE TEMPORARY TABLE tempTbl(brand varchar(25), cateogry varchar(25), COUNTpk int)",
      "frequency": 200
    },
    {
      "name": "brand|category|cylinders(COUNT)",
      "fields": [
        "brand",
        "category",
        "cylinders"
      ],
      "operation": "COUNT",
      "aggregationField": "pk",
      "SQLTable": "CREATE TEMPORARY TABLE tempTbl(brand varchar(25), cateogry varchar(25), cylinders int, COUNTpk int)",
      "frequency": 26
    },
    {
      "name": "brand(COUNT)",
      "fields": [
        "brand"
      ],
      "operation": "COUNT",
      "aggregationField": "pk",
      "SQLTable": "CREATE TEMPORARY TABLE tempTbl(brand varchar(25), COUNTpk int)",
      "frequency": 19
    }
  ]
}

Once the deploy method of the API is called for a template, the application server automatically generates a Solidity smart contract (saved under "contracts" directory). If the template has the correct format and the smart contract generation do not throw an error, the application server continues by deploying the generated smart contract to the Ethereum blockchain. The whole process is described in the diagram below.

Smart-View materialization process

The flowchart below presents the materialization process that takes place when the user requests a Smart-View.

Cached results evaluation process

When a Smart-View is requested, the application server fetches the metadata stored for each previous cached result from the Blockchain which acts as our permanent storage. Then, it filters out the cached results that are not useful for the materialization of the view requested. These cached results are the ones that contain more and / or other fields than the fields of the requested view.

As a general rule, the cached results that can be used for the materialization of a requested view are the ones that their fields are a superset of the fields of the requested view and they also have the same aggregate function.

i.e Let's assume we have the previous stored results in cache of the views {Brand, Category, Cylinders} and {Year, Model, Brand} for the COUNT aggregate function. If the next view requested by the user is the {Brand, Category} view for the COUNT aggregate function, then the {Year, Model, Brand} cached result will be eliminated as it does not contain each and every field of the requested view. Application server will use the previous cached result for the view {Brand, Category, Cylinders} in order to materialize the view incrementally as it can reduce it to the requested view by summing the aggregate function values of the previous cached result.

During the evaluation process of the optimal cached result for the fastest materialization of the view different policies may apply:
(Note: this policy is set in the calculationCostFunction field of our config.json file.)

  1. A Cost Function

Let   be the moment where a previous cached result has been calculated for a view  . Then   are the records written in blockchain after the time   .

Let     to be the size of the latest cached result of view   and   the size of the deltas respectively. The merge operation of the cached result and the deltas are actually an aggregate SQL statement over these data. Aggregations are typically computed in linear complexity by the SQL backend.

Thus we can estimate the cost of the merge as

.

The cost of deltas retrieval from the blockchain (which is the most time intensive resource) is estimated as

In total, the cost of using smart view in order to materialize view is estimated as

This can be written as

or

Constants and denote the relative costs of post- aggregating cached results with delta records and retrieving data from the blockchain, respectively.

In most implementations we expect   .

Thus, for the purpose of ranking the views Vi and selecting the top candidate for materializing view V the cost formula can be simplified as:

Where   is the cost of materializing view V using the latest cached result of a view Vi (always assuming that ) for some constant .

In that way application server sorts all the cached results based on that function and picks the best one (the one with the less cost).

Optimizing the cost function

As we mentioned above, the cost function we use to rank and select a previous cached result in order to materialize a view requested, contains the factor   . We run the following experiment with 4 different values of in order to estimate the optimal value.

The experiment

The experiment is the repeated insertion of 100 records in our system followed by the materialization request for a view. We preformed 100 iterations for every value of .

The sequence of the views requested was the same for all the iterations and it was randomly generated, the records were randomly generated too.

The experiment was performed using the ABCDE template wchich contains 5 integer fields (A,B,C,D and E).

You can see the records used in test_data/benchamarks and the sequence of the views requested in test_scripts/EXPViewSequence.txt file.

We performed the experiment for     and we got the following results concerning the materialization time. The results are the mean values of all iterations we performed for each value of . All values are measured in seconds.

10 50 100 150 200 250 300 350 400 450 500
Total Time (s) 15.05 3.29 2.93 3.01 3.02 2.90 2.94 2.96 2.92 3.02 2.90
Blockchain Time (s) 14.94 3.18 2.83 2.91 2.92 2.80 2.83 2.85 2.82 2.92 2.80
SQL Processing Time (s) 0.04 0.04 0.03 0.04 0.04 0.04 0.04 0.04 0.04 0.04 0.04
Application server processing Time (s) 0.01 0.01 0.01 0.01 0.01 0.01 0.01 0.01 0.01 0.01 0.01

The following plot may describe better the behavior of the cost function for the different values of .

It seems that we have a clear "loser". 10 seems to be very small value for and it does not lead the function to sort the cached results in a way that the optimal one will be selected. However, values larger than 100 do not seem to offer any better result in terms of materialization time.

Total time vs presents the following asymptotic behavior:

The Code

The back-end code is separated in 4 main categories.

  1. Helper functions (in "helpers" directory)
  2. Controllers (in "controllers" directory) that represent the level between the API an the other services that the project uses (Ethereum blockchain, mySQL server and Redis cache). Controllers contain one more file, the "viewMaterializationController.js". It represents a level of abstraction between the service controllers and the API. It is responsible for the business logic and the implementation of each materialization logic. It contains the functions the the API finally calls when a view is requested by the user.
  3. Smart contracts, which are the Solidity contracts running over Ethereum blockchain (in "contracts" directory) and they are auto generated by the application server as we mentioned above.
  4. The API (in "index.js" file) that we use to call smart contract and view materialization methods.

The front-end code is much simpler and it is located under "views" directory. It contains the .ejs templates for the pages we use to call the API functions in a more user-friendly way.

Tests

Test have been written for most of the functionality of the project and they are located in tests.js file. You can run them by executing npm test. Tests are written with Supertest.js, Mocha.js and Chai.js libraries.

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