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tardis-dev
Advanced tools
Convenient access to tick-level historical and real-time cryptocurrency market data via Node.js
Node.js tardis-dev
library provides convenient access to tick-level real-time and historical cryptocurrency market data both in exchange native and normalized formats. Instead of callbacks it relies on async iteration (for await ...of) enabling composability features like seamless switching between real-time data streaming and historical data replay or computing derived data locally.
const { replayNormalized, normalizeTrades, normalizeBookChanges } = require('tardis-dev')
const messages = replayNormalized(
{
exchange: 'bitmex',
symbols: ['XBTUSD', 'ETHUSD'],
from: '2019-05-01',
to: '2019-05-02'
},
normalizeTrades,
normalizeBookChanges
)
for await (const message of messages) {
console.log(message)
}
historical tick-level market data replay backed by tardis.dev HTTP API — includes full order book depth snapshots plus incremental updates, tick-by-tick trades, historical open interest, funding, index, mark prices, liquidations and more
consolidated real-time data streaming API connecting directly to exchanges' public WebSocket APIs
async iterables
providing unified way of consuming data messagescombine
helper function — synchronized historical market data replay and consolidated real-time data streaming from multiple exchangescompute
helper function and computables
, e.g., volume based bars, top 20 levels order book snapshots taken every 10 ms etc.OrderBook
objectRequires Node.js v12+ installed.
npm install tardis-dev --save
Example showing how to quickly display real-time spread and best bid/ask info across multiple exchanges at once. It can be easily adapted to do the same for historical data (replayNormalized
instead of streamNormalized
).
const tardis = require('tardis-dev')
const { streamNormalized, normalizeBookChanges, combine, compute, computeBookSnapshots } = tardis
const exchangesToStream = [
{ exchange: 'bitmex', symbols: ['XBTUSD'] },
{ exchange: 'deribit', symbols: ['BTC-PERPETUAL'] },
{ exchange: 'cryptofacilities', symbols: ['PI_XBTUSD'] }
]
// for each specified exchange call streamNormalized for it
// so we have multiple real-time streams for all specified exchanges
const realTimeStreams = exchangesToStream.map((e) => {
return streamNormalized(e, normalizeBookChanges)
})
// combine all real-time message streams into one
const messages = combine(...realTimeStreams)
// create book snapshots with depth1 that are produced
// every time best bid/ask info is changed
// effectively computing real-time quotes
const realTimeQuoteComputable = computeBookSnapshots({
depth: 1,
interval: 0,
name: 'realtime_quote'
})
// compute real-time quotes for combines real-time messages
const messagesWithQuotes = compute(messages, realTimeQuoteComputable)
const spreads = {}
// print spreads info every 100ms
setInterval(() => {
console.clear()
console.log(spreads)
}, 100)
// update spreads info real-time
for await (const message of messagesWithQuotes) {
if (message.type === 'book_snapshot') {
spreads[message.exchange] = {
spread: message.asks[0].price - message.bids[0].price,
bestBid: message.bids[0],
bestAsk: message.asks[0]
}
}
}
Example showing simple pattern of providing async iterable
of market data messages to the function that can process them no matter if it's is real-time or historical market data. That effectively enables having the same 'data pipeline' for backtesting and live trading.
const tardis = require('tardis-dev')
const { replayNormalized, streamNormalized, normalizeTrades, compute, computeTradeBars } = tardis
const historicalMessages = replayNormalized(
{
exchange: 'bitmex',
symbols: ['XBTUSD'],
from: '2019-08-01',
to: '2019-08-02'
},
normalizeTrades
)
const realTimeMessages = streamNormalized(
{
exchange: 'bitmex',
symbols: ['XBTUSD']
},
normalizeTrades
)
async function produceVolumeBasedTradeBars(messages) {
const withVolumeTradeBars = compute(
messages,
computeTradeBars({
kind: 'volume',
interval: 100 * 1000 // aggregate by 100k contracts volume
})
)
for await (const message of withVolumeTradeBars) {
if (message.type === 'trade_bar') {
console.log(message.name, message)
}
}
}
await produceVolumeBasedTradeBars(historicalMessages)
// or for real time data
// await produceVolumeBasedTradeBars(realTimeMessages)
const { stream } = require('tardis-dev')
const messages = stream({
exchange: 'bitmex',
filters: [
{ channel: 'trade', symbols: ['XBTUSD'] },
{ channel: 'orderBookL2', symbols: ['XBTUSD'] }
]
})
for await (const message of messages) {
console.log(message)
}
const { replay } = require('tardis-dev')
const messages = replay({
exchange: 'bitmex',
filters: [
{ channel: 'trade', symbols: ['XBTUSD'] },
{ channel: 'orderBookL2', symbols: ['XBTUSD'] }
],
from: '2019-05-01',
to: '2019-05-02'
})
for await (const message of messages) {
console.log(message)
}
FAQs
Convenient access to tick-level historical and real-time cryptocurrency market data via Node.js
The npm package tardis-dev receives a total of 258 weekly downloads. As such, tardis-dev popularity was classified as not popular.
We found that tardis-dev demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 0 open source maintainers collaborating on the project.
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