Thinking through how Sigma's infrastructure must work, we guessed that it had to take all the normalized information about your transactions and denormalize it into SQL rows that can get dumped into some big analytic database. From their site, that process took 48 hours.
-
-
Prikaži ovu nit
-
Using
@rustlang we built a version of that system that could run in real time while maintaining high transaction throughput. The video is the visualization of the throughput of that system and a little SQL runner to show it hitting Redshift.Prikaži ovu nit -
We did some back of the napkin math for what lyft's transaction rate would be, which is one of Stripe's biggest public customers. Our estimate was that it's in the 10-20 txn/s range, but might burst to 10x that at times.
Prikaži ovu nit -
We also looked into Visa's global transaction rate, which was around 1200-1600 txn/s. The demo you're seeing in the video is us handling 10x Visa's rate on a laptop. On a mid-tier AWS instance, we got up to 10x the transaction volume of the world :)
Prikaži ovu nit -
The visualization was my favorite part, it was based on liquid motion timers, which I really loved as a kid.pic.twitter.com/qC1dQD7FgO
Prikaži ovu nit
Kraj razgovora
Novi razgovor -
-
-
Hvala. Twitter će to iskoristiti za poboljšanje vaše vremenske crte. PoništiPoništi
-
-
-
Super cool
Hvala. Twitter će to iskoristiti za poboljšanje vaše vremenske crte. PoništiPoništi
-
-
-
Hvala. Twitter će to iskoristiti za poboljšanje vaše vremenske crte. PoništiPoništi
-
Čini se da učitavanje traje već neko vrijeme.
Twitter je možda preopterećen ili ima kratkotrajnih poteškoća u radu. Pokušajte ponovno ili potražite dodatne informacije u odjeljku Status Twittera.
