Senior Software Engineer

Understanding Recruitment
London
1 year ago
Applications closed

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Senior Golang Engineer (Streaming, Low-Latency)


Up to 180K (USD) + Shares


Remote (EMEA/NAMER)


We are partnered a start-up that has been ranked at No1 AI Phone Agents. Their voice agents enable businesses to processthousands of concurrent callsthrough speech recognition and natural language processing. They combinevoice synthesis,real-time contextual handlingandreal-time transcriptionto handle tasks from customer service to scheduling. The client is looking to hire several Senior Golang Engineers into their team. Their HQ is based in Europe, but this position isavailable remotely anywhere in Europe or the US.


What will you be doing?


You will be leveraging Golang’s concurrency features such as goroutines to build and scale their flagship AI offering. You will be working on building extremelyreal-time low-latency systems. You will also be designing and implementing their cloud infrastructure.


Experience Needed:


Strong Golang production experience. If you are looking to transition or learn Go, this position is not for you. This has to be your main language.

Startup Experience.Not mandatory, but beneficial. You will be joining a team that likes to ship fast and move quickly in everything they do.

Systems.You will have experience building low latency systems. Optimizing real-time streaming products. Big focus onperformance.


If you are an experienced Senior Golang Engineer looking for your next challenge, please get in touch.

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