As other commentors have mentioned, PyArrow is the easiest way to grab the schema of a Parquet file with Python. My answer goes into more detail about the schema that's returned by PyArrow and the metadata that's stored in Parquet files.
import pyarrow.parquet as pq
table = pq.read_table(path)
table.schema # returns the schema
Here's how to create a PyArrow schema (this is the object that's returned by
import pyarrow as pa
pa.field("id", pa.int64(), True),
pa.field("last_name", pa.string(), True),
pa.field("position", pa.string(), True)])
Each PyArrow Field has
metadata properties. See here for more details on how to write custom file / column metadata to Parquet files with PyArrow.
type property is for PyArrow DataType objects.
pa.string() are examples of PyArrow DataTypes.
Make sure you understand about column level metadata like min / max. That'll help you understand some of the cool features like predicate pushdown filtering that Parquet files allow for in big data systems.