When I read other people's python code, like, spark.read.option("mergeSchema", "true"), it seems that the coder has already known what the parameters to use. But for a starter, is there a place to look up those available parameters? I look up the apche documents and it shows parameter undocumented.


  • 14
    Yes. I did. But in all the examples listed, it is like that he/she has already now what the parameters to use, for example, df = spark.read.load("examples/src/main/resources/people.csv", format="csv", sep=":", inferSchema="true", header="true"). But for a starter, how can I know what are the potential key-value pairs that are good to pass.
    – Tim.X
    Sep 25, 2018 at 3:46
  • 1
    spark.apache.org/docs/latest/sql-data-sources.html Here's an index for the file formats, if you open a specific file format the options for them should be there if you scroll down to Data Source Options. To note is they don't have excel support so good luck. T_T
    – MarMar
    May 23 at 23:08
  • Additionally, here's the read api details. Going to the one of interest will show you how to call it. spark.read.csv vs spark.read.format('excel'). spark.apache.org/docs/latest/api/python/reference/pyspark.sql/…
    – MarMar
    May 23 at 23:13

5 Answers 5


Annoyingly, the documentation for the option method is in the docs for the json method. The docs on that method say the options are as follows (key -- value -- description):

  • primitivesAsString -- true/false (default false) -- infers all primitive values as a string type

  • prefersDecimal -- true/false (default false) -- infers all floating-point values as a decimal type. If the values do not fit in decimal, then it infers them as doubles.

  • allowComments -- true/false (default false) -- ignores Java/C++ style comment in JSON records

  • allowUnquotedFieldNames -- true/false (default false) -- allows unquoted JSON field names

  • allowSingleQuotes -- true/false (default true) -- allows single quotes in addition to double quotes

  • allowNumericLeadingZeros -- true/false (default false) -- allows leading zeros in numbers (e.g. 00012)

  • allowBackslashEscapingAnyCharacter -- true/false (default false) -- allows accepting quoting of all character using backslash quoting mechanism

  • allowUnquotedControlChars -- true/false (default false) -- allows JSON Strings to contain unquoted control characters (ASCII characters with value less than 32, including tab and line feed characters) or not.

  • mode -- PERMISSIVE/DROPMALFORMED/FAILFAST (default PERMISSIVE) -- allows a mode for dealing with corrupt records during parsing.

    • PERMISSIVE : when it meets a corrupted record, puts the malformed string into a field configured by columnNameOfCorruptRecord, and sets other fields to null. To keep corrupt records, an user can set a string type field named columnNameOfCorruptRecord in an user-defined schema. If a schema does not have the field, it drops corrupt records during parsing. When inferring a schema, it implicitly adds a columnNameOfCorruptRecord field in an output schema.
    • DROPMALFORMED : ignores the whole corrupted records.
    • FAILFAST : throws an exception when it meets corrupted records.
  • 4
    Thanks for this! I wouldn't have thought to look at .json(). I was hoping for some constants...
    – drobert
    Oct 6, 2021 at 14:42
  • 2
    I do not think this is an exhaustive list. For example you can also have .option("header",True) Dec 14, 2022 at 15:40

For built-in formats all options are enumerated in the official documentation. Each format has its own set of option, so you have to refer to the one you use.

However merging schema is performed not via options, but using session properties

 spark.conf.set("spark.sql.parquet.mergeSchema", "true")
  • 8
    Thanks for your answer. My question is, for example, def option(key: String, value: Double): DataFrameReader Permalink Adds an input option for the underlying data source. Since 2.0.0 How Can I find all available key-value pairs.
    – Tim.X
    Sep 25, 2018 at 1:51
  • What about CSV options?
    – Jérémy
    Oct 26, 2021 at 15:14

You can get from here


change the highlighted part to get the version you are looking for.

  • 5
    You should more clearly explain the answer from the link in case the link changes or goes dead.
    – user11563547
    Sep 12, 2019 at 23:46
  • The link above refers to the SPARK API which will have the latest information always.
    – H R
    Sep 14, 2019 at 19:38
  • @H R I'm sure the link is helpful, and you can explain that to a moderator, because I wasn't about to getting flagged for screwing up a review of a link only answer again.
    – user11563547
    Sep 14, 2019 at 20:23
  • 3
    That documentation is dense and not helpful. Can we just get an explanation? Stack overflow doesn't exist because all documentation is perfect and no one has questions.
    – Noah Gary
    Apr 22, 2020 at 15:27
  • 4
    the documentation about option(String key, String value) says : key - (undocumented). Not very helpful.
    – Jérémy
    Oct 26, 2021 at 15:12

You can find them here. Look for "Data Source Option" section.


There are support documents for each file type.

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    – Community Bot
    Jun 7, 2022 at 0:56
  • This points to the rest. spark.apache.org/docs/latest/sql-data-sources.html To Note: They don't have excel support.
    – MarMar
    May 23 at 23:07

More options you will find in the Spark API Documentation of the method csv of class org.apache.spark.sql.DataFrameReader. As shown above, the options depend on the input format to be read.

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