My architecture:

  • 1 EventHub with 8 Partitions & 2 TPUs
  • 1 Streaming Analytics Job
  • 6 Windows based on the same input (from 1mn to 6mn)

Sample Data:

{side: 'BUY', ticker: 'MSFT', qty: 1, price: 123, tradeTimestamp: 10000000000}
{side: 'SELL', ticker: 'MSFT', qty: 1, price: 124, tradeTimestamp:1000000000}

The EventHub PartitionKey is ticker

I would like to emit every second, the following data:

(Total quantity bought / Total quantity sold) in the last minute, last 2mn, last 3mn and more

What I tried:

WITH TradesWindow AS (
    SELECT
        windowEnd = System.Timestamp,
        ticker,
        side,
        totalQty = SUM(qty)
    FROM [Trades-Stream] TIMESTAMP BY tradeTimestamp PARTITION BY PartitionId
    GROUP BY ticker, side, PartitionId, HoppingWindow(second, 60, 1)
),
TradesRatio1MN AS (
    SELECT 
        ticker = b.ticker,
        buySellRatio = b.totalQty / s.totalQty
    FROM TradesWindow b /* SHOULD I PARTITION HERE TOO ? */
    JOIN TradesWindow s /* SHOULD I PARTITION HERE TOO ? */
    ON s.ticker = b.ticker AND s.side = 'SELL'
    AND DATEDIFF(second, b, s) BETWEEN 0 AND 1
    WHERE b.side = 'BUY'
)

 /* .... More windows.... */

/* FINAL OUTPUT: Joining all the windows */
SELECT
   buySellRatio1MN = bs1.buySellRatio,
   buySellRatio2MN = bs2.buySellRatio
   /* more windows */
INTO [output]
FROM buySellRatio1MN bs1 /* SHOULD I PARTITION HERE TOO ? */
JOIN buySellRatio2MN bs2 /* SHOULD I PARTITION HERE TOO ? */
ON bs2.ticker = bs1.ticker
AND DATEDIFF(second, bs1, bs2) BETWEEN 0 AND 1

Issues:

  • This requires 6 EventHub Consumer groups (each one can only have 5 readers), why ? I don't have 5x6 SELECT statements on the input, why then ?
  • The output doesn't seem consistent (I don't know if my JOINs are correct).
  • Sometimes the job doesn't output at all (maybe some partitioning problem ? see the comments in the code about partitioning)

Briefly, is there a better way to achieve this ? I couldn't find anything in the doc and examples about having multiple windows and joining them then joining the results of the previous joins from only 1 input.

For the first question, this depend of the internal implementation of the scale out logic. See details here.

For the output of the join, I don't see the whole query but if you join a query with a 1 minute window with a query with a 2 minute window with a 1s time "buffer" you will only an output every 2 minutes. UNION operator will be better for this.

From your sample and your goal, I think there is a much easier way to write this query using UDA (User Defined Aggregate).

For this I will define a UDA function called "ratio" first:

function main() {
this.init = function () {
    this.sumSell = 0.0;
    this.sumBuy  = 0.0;
}

this.accumulate = function (value, timestamp) {
    if (value.side=="BUY") {this.sumBuy+=value.qty};
    if (value.side=="SELL") {this.sumSell+=value.qty};
   }

this.computeResult = function () {
    if(this.sumSell== 0) {
        result = 0;
    }
    else {
        result =  this.sumBuy/this.sumSell;
    }
    return result;

}
}

Then I can simply use this SQL query for a 60 seconds window:

SELECT
  windowEnd = System.Timestamp,
  ticker,
  uda.ratio(iothub) as ratio
FROM iothub PARTITION BY PartitionId
GROUP BY ticker, PartitionId, SlidingWindow(second, 60)

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.