td-connector
v1.6.1
Published
A Node.js connector for TDengine.
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TDengine Node.js connector
This is the Node.js library that lets you connect to TDengine. It is built so that you can use as much of it as you want or as little of it as you want through providing an extensive API. If you want the raw data in the form of an array of arrays for the row data retrieved from a table, you can do that. If you want to wrap that data with objects that allow you easily manipulate and display data such as using a prettifier function, you can do that!
Installation
To get started, just type in the following to install the connector through npm
npm install td-connector
To interact with TDengine, we make use of the node-gyp library. To install, you will need to install the following depending on platform (the following instructions are quoted from node-gyp)
On Unix
python
(v2.7
recommended,v3.x.x
is not supported)make
- A proper C/C++ compiler toolchain, like GCC
On macOS
python
(v2.7
recommended,v3.x.x
is not supported) (already installed on macOS)Xcode
You also need to install the
Command Line Tools
via Xcode. You can find this under the menu
Xcode -> Preferences -> Locations
(or by running
xcode-select --install
in your Terminal)
- This step will install
gcc
and the related toolchain containingmake
- This step will install
On Windows
Option 1
Install all the required tools and configurations using Microsoft's windows-build-tools using npm install --global --production windows-build-tools
from an elevated PowerShell or CMD.exe (run as Administrator).
Option 2
Install tools and configuration manually:
- Install Visual C++ Build Environment: Visual Studio Build Tools (using "Visual C++ build tools" workload) or Visual Studio 2017 Community (using the "Desktop development with C++" workload)
- Install Python 2.7 (
v3.x.x
is not supported), and runnpm config set python python2.7
(or see below for further instructions on specifying the proper Python version and path.) - Launch cmd,
npm config set msvs_version 2017
If the above steps didn't work for you, please visit Microsoft's Node.js Guidelines for Windows for additional tips.
To target native ARM64 Node.js on Windows 10 on ARM, add the components "Visual C++ compilers and libraries for ARM64" and "Visual C++ ATL for ARM64".
Usage
The following is a short summary of the basic usage of the connector, the full api and documentation can be found here
Connection
To use the connector, first require the library td-connector
. Running the function taos.connect
with the connection options passed in as an object will return a TDengine connection object. The required connection option is host
, other options if not set, will be the default values as shown below.
A cursor also needs to be initialized in order to interact with TDengine from Node.js.
const taos = require('td-connector');
var conn = taos.connect({host:"127.0.0.1", user:"root", password:"taosdata", config:"/etc/taos",port:0})
var cursor = conn.cursor(); // Initializing a new cursor
Close a connection
conn.close();
Queries
We can now start executing simple queries through the cursor.query
function, which returns a TaosQuery object.
var query = cursor.query('show databases;')
We can get the results of the queries through the query.execute()
function, which returns a promise that resolves with a TaosResult object, which contains the raw data and additional functionalities such as pretty printing the results.
var promise = query.execute();
promise.then(function(result) {
result.pretty(); //logs the results to the console as if you were in the taos shell
});
You can also query by binding parameters to a query by filling in the question marks in a string as so. The query will automatically parse what was binded and convert it to the proper format for use with TDengine
var query = cursor.query('select * from meterinfo.meters where ts <= ? and areaid = ?;').bind(new Date(), 5);
query.execute().then(function(result) {
result.pretty();
})
The TaosQuery object can also be immediately executed upon creation by passing true as the second argument, returning a promise instead of a TaosQuery.
var promise = cursor.query('select * from meterinfo.meters where v1 = 30;', true)
promise.then(function(result) {
result.pretty();
})
If you want to execute queries without objects being wrapped around the data, use cursor.execute()
directly and cursor.fetchall()
to retrieve data if there is any.
cursor.execute('select count(*), avg(v1), min(v2) from meterinfo.meters where ts >= \"2019-07-20 00:00:00.000\";');
var data = cursor.fetchall();
console.log(cursor.fields); // Latest query's Field metadata is stored in cursor.fields
console.log(cursor.data); // Latest query's result data is stored in cursor.data, also returned by fetchall.
Async functionality
Async queries can be performed using the same functions such as cursor.execute
, TaosQuery.query
, but now with _a
appended to them.
Say you want to execute an two async query on two separate tables, using cursor.query
, you can do that and get a TaosQuery object, which upon executing with the execute_a
function, returns a promise that resolves with a TaosResult object.
var promise1 = cursor.query('select count(*), avg(v1), avg(v2) from meter1;').execute_a()
var promise2 = cursor.query('select count(*), avg(v1), avg(v2) from meter2;').execute_a();
promise1.then(function(result) {
result.pretty();
})
promise2.then(function(result) {
result.pretty();
})
Example
An example of using the NodeJS connector to create a table with weather data and create and execute queries can be found here (The preferred method for using the connector)
An example of using the NodeJS connector to achieve the same things but without all the object wrappers that wrap around the data returned to achieve higher functionality can be found here
Contributing to TDengine
Please follow the contribution guidelines to contribute to the project.