The flow goes like this :
Step 1 :
A Hive client triggers a query(CLI or some external client using JDBC, ODBC or Thrift or webUI).
Step 2 :
Compiler receives the query and connects to the metastore.
Start of the compilation phase.
Converts the query into
parse tree representation. ANTLR is used to generate the
abstract syntax tree(AST).
The compiler builds a logical plan based on the information provided by the metastore on the input and output tables. The compiler also checks
type compatibilities and notifies about
compile-time semantic errors at this stage.
In this step transformation of AST into an intermediate representation takes place, called as
query block(QB) tree.
Logical plan generator
At this step compiler writes the logical plan from the semantic analyzer into a logical tree of operations.
This is the heaviest part of compilation phase as the entire series of
DAG optimizations take place in this phase. It involves following tasks :
Conversion of logical plan into physical plan by physical plan generator
Creation of final DAG workflow of MapReduce by physical plan generator
Execution engine gets the compiler outputs to execute them on the Hadoop platform. It involves following tasks :
A MapReduce task first serializes its part of the plan into a plan.xml
plan.xml file is then added to the job cache for the task and the
instances of ExecMapper and ExecReducer are spawned using Hadoop.
Each of these classes deserializes the plan.xml file and executes the
relevant part of the task.
The final results are stored in a temporary location and at the
completion of the entire query the results are moved to the table if
it was inserts or partitions. Otherwise returned to the calling
program at a temporary location.
Note : All the tasks are executed in the order of their dependencies.
Each is only executed if all of its prerequisites have been executed.
And to know about the metastore tables and their fields you can have a look at the MR diagram for metastore :