What tech stack to avoid when starting out in quant development?
The question is about Quantitative .
Don't start with large distributed systems such as Spark, streaming tools, microservices, or Kubernetes until you know you need them for data volume or speed. Also avoid using research notebooks without testing or reproducibility.
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