I have a file stored in HDFS as part-m-00000.gz.parquet

I've tried to run hdfs dfs -text dir/part-m-00000.gz.parquet but it's compressed, so I ran gunzip part-m-00000.gz.parquet but it doesn't uncompress the file since it doesn't recognise the .parquet extension.

How do I get the schema / column names for this file?

  • The Apache Arrow project supports a variety of languages and makes it easy to get the Parquet schema with a variety of different languages. See my answer for more details.
    – Powers
    Sep 21, 2020 at 1:20

8 Answers 8


You won't be able "open" the file using a hdfs dfs -text because its not a text file. Parquet files are written to disk very differently compared to text files.

And for the same matter, the Parquet project provides parquet-tools to do tasks like which you are trying to do. Open and see the schema, data, metadata etc.

Check out the parquet-tool project (which is put simply, a jar file.) parquet-tools

Also Cloudera which support and contributes heavily to Parquet, also has a nice page with examples on usage of parquet-tools. A example from that page for your use case is

parquet-tools schema part-m-00000.parquet

Checkout the Cloudera page. Using the Parquet File Format with Impala, Hive, Pig, HBase, and MapReduce


If your Parquet files are located in HDFS or S3 like me, you can try something like the following:


parquet-tools schema hdfs://<YOUR_NAME_NODE_IP>:8020/<YOUR_FILE_PATH>/<YOUR_FILE>.parquet


parquet-tools schema s3://<YOUR_BUCKET_PATH>/<YOUR_FILE>.parquet

Hope it helps.


If you use Docker you can also run parquet-tools in a container:

docker run -ti -v C:\file.parquet:/tmp/file.parquet nathanhowell/parquet-tools schema /tmp/file.parquet
  • best way to run them
    – scravy
    Jul 3, 2021 at 7:02

parquet-cli is a light weight alternative to parquet-tools.

pip install parquet-cli          //installs via pip
parq filename.parquet            //view meta data
parq filename.parquet --schema   //view the schema
parq filename.parquet --head 10  //view top n rows

This tool will provide basic info about the parquet file.

  • like them a lot better than the parquet-tools
    – scravy
    Jul 3, 2021 at 8:07
  • parquet-tools threw an error about a missing footer, but parquet-cli worked for me.
    – matmat
    Jan 17 at 22:53

Maybe it's capable to use a desktop application to view Parquet and also other binary format data like ORC and AVRO. It's pure Java application so that can be run at Linux, Mac and also Windows. Please check Bigdata File Viewer for details.

It supports complex data type like array, map, etc.

enter image description here


If you are using R, the following wrapper function on functions existed in arrow library will work for you:

read_parquet_schema <- function (file, col_select = NULL, as_data_frame = TRUE, props = ParquetArrowReaderProperties$create(), 
  reader <- ParquetFileReader$create(file, props = props, ...)
  schema <- reader$GetSchema()
  names <- names(schema)


[1] "Sepal.Length" "Sepal.Width"  "Petal.Length" "Petal.Width"  "Species"    

Since it is not a text file, you cannot do a "-text" on it. You can read it easily through Hive even if you do not have the parquet-tools installed, if you can load that file to a Hive table.

  • Thank you. I wish - my current environment doesn't have hive, so I just have pig & hdfs for MR.
    – Super_John
    Nov 24, 2015 at 6:33
  • 3
    unless you know parquet column structure you will not be able to make HIVE table on top of it. Aug 14, 2017 at 18:27

Apache Arrow makes it easy to get the Parquet metadata with a lot of different languages including C, C++, Rust, Go, Java, JavaScript, etc.

Here's how to get the schema with PyArrow (the Python Apache Arrow API):

import pyarrow.parquet as pq

table = pq.read_table(path)
table.schema # pa.schema([pa.field("movie", "string", False), pa.field("release_year", "int64", True)])

See here for more details about how to read metadata information from Parquet files with PyArrow.

You can also grab the schema of a Parquet file with Spark.

val df = spark.read.parquet('some_dir/')
df.schema // returns a StructType

StructType objects look like this:


From the StructType object, you can infer the column name, data type, and nullable property that's in the Parquet metadata. The Spark approach isn't as clean as the Arrow approach.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.