The very first DAG you (as a Spark developer) will "run into" is when you apply transformations to your dataset as a RDD.
After you create a RDD (by loading dataset from an external storage or creating one from a local collection) you start with a single-node RDD lineage.
val nums = sc.parallelize(0 to 9)
res0: String = (8) ParallelCollectionRDD at parallelize at <console>:24 
Right after a transformation, like
map, you create another RDD with the initial one being its parent.
val even = nums.map(_ * 2)
res1: String =
(8) MapPartitionsRDD at map at <console>:26 
| ParallelCollectionRDD at parallelize at <console>:24 
And so on. By transforming an RDD using transformation operators you build a graph of transformations that is a RDD lineage that is simply a directed acyclic graph of RDD dependencies.
The other DAG you may be told about is when you execute an action on a RDD that will lead to a Spark job. That Spark job on the RDD will get eventually mapped to a set of stages (by
DAGScheduler) that again create a graph of stages that is a directed acyclic graph of stages.
There are no other DAGs in Spark.
I can't comment on Hadoop.