There are several similar-yet-different concepts in Spark-land surrounding how work gets farmed out to different nodes and executed concurrently. Specifically, there is:

- The Spark Driver node (
`sparkDriverCount`

) - The number of worker nodes available to a Spark cluster (
`numWorkerNodes`

) - The number of Spark executors (
`numExecutors`

) - The DataFrame being operated on by all workers/executors, concurrently (
`dataFrame`

) - The number of rows in the
`dataFrame`

(`numDFRows`

) - The number of partitions on the
`dataFrame`

(`numPartitions`

) - And finally, the number of CPU cores available on each worker nodes (
`numCpuCoresPerWorker`

)

I *believe* that all Spark clusters have *one-and-only-one* Spark Driver, and then 0+ worker nodes. If I'm wrong about that, please begin by correcting me! Assuming I'm more or less correct about that, let's lock in a few variables here. Let's say we have a Spark cluster with 1 Driver and 4 Worker nodes, and each Worker Node has 4 CPU cores on it (so a total of 16 CPU cores). So the "given" here is:

```
sparkDriverCount = 1
numWorkerNodes = 4
numCpuCores = numWorkerNodes * numCpuCoresPerWorker = 4 * 4 = 16
```

Given that as the setup, I'm wondering how to determine a few things. Specifically:

- What is the relationship between
`numWorkerNodes`

and`numExecutors`

? Is there some known/generally-accepted ratio of workers to executors? Is there a way to determine`numExecutors`

given`numWorkerNodes`

(or any other inputs)? - Is there a known/generally-accepted/optimal ratio of
`numDFRows`

to`numPartitions`

? How does one calculate the 'optimal' number of partitions based on the size of the`dataFrame`

? - I've heard from other engineers that a general 'rule of thumb' is:
`numPartitions = numWorkerNodes * numCpuCoresPerWorker`

, any truth to that? In other words, it prescribes that one should have 1 partition per CPU core.