Skip to main content

Read SAS (sas7bdat), Stata (dta), and SPSS (sav) files with polars

Project description

polars_readstat

Polars IO plugin to read SAS (sas7bdat), Stata (dta), and SPSS (sav) files

Basic usage

import polars as pl
from polars_readstat import scan_readstat
df_stata = scan_readstat("/path/file.dta")
df_sas = scan_readstat("/path/file.sas7bdat")
df_spss = scan_readstat("/path/file.sav")


# Then do any normal thing you'd do in polars
df_stata = (df_stata.head(1000)
                    .filter(pl.col("a") > 0.5)
                    .select(["b","c"]))
...
df_stata = df_stata.collect()


# For sas7bdat files, there are two "engines"
#   1. readstat:  generally, but not always slower, but less likely to have errors
#                 the default
#   2. cpp:       faster, but more likely to fail loading a file
#                 If it's going to throw an error, it usually does so quickly
df = scan_readstat("/path/file.sas7bdat",
                   engine="readstat")

df = scan_readstat("/path/file.sas7bdat",
                   engine="cpp")


# If you want to get the metadata, use the ScanReadstat python class:

from polars_readstat import ScanReadstat
reader = ScanReadstat(path=path)  # You can pass engine for sas7bdat files, as above

# Python dictionary with metadata information, including value labels
metadata = reader.metadata  

# Polars schema
schema = reader.schema  

# LazyFrame
df = reader.df  

# You can also use memory mapping to speed up reads with the readstat engine
#   Some caveats, 
#     1)it can use a LOT of ram)
#     2) It doesn't really speed up reads for sas files (and I haven't tested SPSS)
df = scan_readstat("/path/file.dta",
                   use_mmap=True) # default is False 
                   
# Then do any normal thing you'd do in polars

# That's it

:key: Dependencies

This plugin calls rust bindings to load files in chunks, it is only possible due to the following excellent projects:

This takes a modified version of the readstat-rs bindings to readstat's C functions. My modifications:

  • Swapped out the now unmaintained arrow2 crate for Polars
  • Removed the CLI and write capabilities
  • Added read support for Stata (dta) and SPSS (sav) files
  • Removed some intermediate steps that resulted in processing full vectors of data repeatedly before creating polars dataframe
  • Modified the parsing of SAS and Stata data formats (particularly dates and datetimes) to provide a better (?... hopefully) mapping to polars data types
  • Modified readstat to read from a shared memory map to improve multithreaded performance (speeds up Stata file reads in my test, but not SAS)

Because of concerns about the performance of readstat reading large SAS files, I have also started integrating a different engine from the cpp-sas7bdat library. To do so, I have modified it as follows:

  • Added an Arrow sink to read the sas7bdat file to Arrow arrays using the c++ Arrow library
  • Updated the package build to use UV instead of pip for loading conan to manage the C++ packages
  • Added rust ffi bindings to the C++ code to zero-copy pass the Arrow array to rust and polars

Other notable features

  • Multithreaded using the number of pl.thread_pool_size
  • Currently comparable to pandas and pyreadstat or faster (see benchmarks below)

Pending tasks:

  • Write support for Stata (dta) and SPSS (sav) files. Readstat itself cannot write SAS (sas7bdat) files that SAS can read, and I'm not fool enough to try to figure that out. Also, any workflow that involves SAS should be one-way (SAS->something else) so you should only read SAS files, never write them.
  • Unit tests on the data sets used by pyreadstat to confirm that my output matches theirs

Benchmark

This was run on my computer, with the following specs (and reading the data from an external SSD):
CPU: AMD Ryzen 7 8845HS w/ Radeon 780M Graphics
Cores: 16
RAM: 14Gi
OS: Linux Mint 22
Last Run: August 31, 2025 Version: 0.7 (with mmap in readstat)

This is not intended to be a scientific benchmark, just a test of loading realistic files. The Stata and SAS files used are different. One is tall and narrow (lots of rows, few columns) and the other is shorter and wider (fewer rows, many more columns).

For each file, I compared 4 different scenarios: 1) load the full file, 2) load a subset of columns, 3) filter to a subet of rows, 4) load a subset of columns and filter to a subset of rows.

All reported times are in seconds using python's time.time() (I know...).

Compared to Pandas and Pyreadstat (using read_file_multiprocessing for parallel processing in Pyreadstat)

  • SAS

    • Subset: False, Filter: False
      • polars (readstat): 5.27
      • polars (cpp): 1.31
      • pandas: 2.07
      • pyreadstat: 10.75
    • Subset: True, Filter: False
      • polars (readstat): 0.69
      • polars (cpp): 0.09
      • pandas: 2.06
      • pyreadstat: 0.46
    • Subset: False, Filter: True
      • polars (readstat): 7.62
      • polars (cpp): 1.56
      • pandas: 3.03
      • pyreadstat: 11.93
    • Subset: True, Filter: True
      • polars (readstat): 0.79
      • polars (cpp): 0.09
      • pandas: 2.09
      • pyreadstat: 0.50
  • Stata

    • Subset: False, Filter: False
      • polars (readstat): 1.80
      • pandas: 1.14
      • pyreadstat: 7.46
    • Subset: True, Filter: False
      • polars (readstat): 0.27
      • pandas: 1.18
      • pyreadstat: 2.18
    • Subset: False, Filter: True
      • polars (readstat): 1.31
      • pandas: 0.99
      • pyreadstat: 7.66
    • Subset: True, Filter: True
      • polars (readstat): 0.29
      • pandas: 0.96
      • pyreadstat: 2.24

File details:

  • Stata (dta)
    • 2000 5% sample decennial census file from ipums
    • Schema: Schema({'index': Int32, 'YEAR': Int32, 'SAMPLE': Int32, 'SERIAL': Int32, 'HHWT': Float64, 'CLUSTER': Float64, 'STRATA': Int32, 'GQ': Int32, 'PERNUM': Int32, 'PERWT': Float64, 'RELATE': Int32, 'RELATED': Int32, 'SEX': Int32, 'AGE': Int32, 'MARST': Int32, 'BIRTHYR': Int32})
    • Rows: 10,000,000 (limited to 10 million to fit in laptop memory)
  • SAS (sas7bdat)
    • American Community Survey 5-year file for Illinois, available here as the sas_pil.zip file.
    • Schema: Schema({'RT': String, 'SERIALNO': String, 'DIVISION': String, 'SPORDER': Float64, 'PUMA': String, 'REGION': String, 'STATE': String, 'ADJINC': String, 'PWGTP': Float64, 'AGEP': Float64, 'CIT': String, 'CITWP': Float64, 'COW': String, 'DDRS': String, 'DEAR': String, 'DEYE': String, 'DOUT': String, 'DPHY': String, 'DRAT': String, 'DRATX': String, 'DREM': String, 'ENG': String, 'FER': String, 'GCL': String, 'GCM': String, 'GCR': String, 'HINS1': String, 'HINS2': String, 'HINS3': String, 'HINS4': String, 'HINS5': String, 'HINS6': String, 'HINS7': String, 'INTP': Float64, 'JWMNP': Float64, 'JWRIP': Float64, 'JWTRNS': String, 'LANX': String, 'MAR': String, 'MARHD': String, 'MARHM': String, 'MARHT': String, 'MARHW': String, 'MARHYP': Float64, 'MIG': String, 'MIL': String, 'MLPA': String, 'MLPB': String, 'MLPCD': String, 'MLPE': String, 'MLPFG': String, 'MLPH': String, 'MLPIK': String, 'MLPJ': String, 'NWAB': String, 'NWAV': String, 'NWLA': String, 'NWLK': String, 'NWRE': String, 'OIP': Float64, 'PAP': Float64, 'RELSHIPP': String, 'RETP': Float64, 'SCH': String, 'SCHG': String, 'SCHL': String, 'SEMP': Float64, 'SEX': String, 'SSIP': Float64, 'SSP': Float64, 'WAGP': Float64, 'WKHP': Float64, 'WKL': String, 'WKWN': Float64, 'WRK': String, 'YOEP': Float64, 'ANC': String, 'ANC1P': String, 'ANC2P': String, 'DECADE': String, 'DIS': String, 'DRIVESP': String, 'ESP': String, 'ESR': String, 'FOD1P': String, 'FOD2P': String, 'HICOV': String, 'HISP': String, 'INDP': String, 'JWAP': String, 'JWDP': String, 'LANP': String, 'MIGPUMA': String, 'MIGSP': String, 'MSP': String, 'NAICSP': String, 'NATIVITY': String, 'NOP': String, 'OC': String, 'OCCP': String, 'PAOC': String, 'PERNP': Float64, 'PINCP': Float64, 'POBP': String, 'POVPIP': Float64, 'POWPUMA': String, 'POWSP': String, 'PRIVCOV': String, 'PUBCOV': String, 'QTRBIR': String, 'RAC1P': String, 'RAC2P19': String, 'RAC2P23': String, 'RAC3P': String, 'RACAIAN': String, 'RACASN': String, 'RACBLK': String, 'RACNH': String, 'RACNUM': String, 'RACPI': String, 'RACSOR': String, 'RACWHT': String, 'RC': String, 'SCIENGP': String, 'SCIENGRLP': String, 'SFN': String, 'SFR': String, 'SOCP': String, 'VPS': String, 'WAOB': String, 'FAGEP': String, 'FANCP': String, 'FCITP': String, 'FCITWP': String, 'FCOWP': String, 'FDDRSP': String, 'FDEARP': String, 'FDEYEP': String, 'FDISP': String, 'FDOUTP': String, 'FDPHYP': String, 'FDRATP': String, 'FDRATXP': String, 'FDREMP': String, 'FENGP': String, 'FESRP': String, 'FFERP': String, 'FFODP': String, 'FGCLP': String, 'FGCMP': String, 'FGCRP': String, 'FHICOVP': String, 'FHINS1P': String, 'FHINS2P': String, 'FHINS3C': String, 'FHINS3P': String, 'FHINS4C': String, 'FHINS4P': String, 'FHINS5C': String, 'FHINS5P': String, 'FHINS6P': String, 'FHINS7P': String, 'FHISP': String, 'FINDP': String, 'FINTP': String, 'FJWDP': String, 'FJWMNP': String, 'FJWRIP': String, 'FJWTRNSP': String, 'FLANP': String, 'FLANXP': String, 'FMARP': String, 'FMARHDP': String, 'FMARHMP': String, 'FMARHTP': String, 'FMARHWP': String, 'FMARHYP': String, 'FMIGP': String, 'FMIGSP': String, 'FMILPP': String, 'FMILSP': String, 'FOCCP': String, 'FOIP': String, 'FPAP': String, 'FPERNP': String, 'FPINCP': String, 'FPOBP': String, 'FPOWSP': String, 'FPRIVCOVP': String, 'FPUBCOVP': String, 'FRACP': String, 'FRELSHIPP': String, 'FRETP': String, 'FSCHGP': String, 'FSCHLP': String, 'FSCHP': String, 'FSEMP': String, 'FSEXP': String, 'FSSIP': String, 'FSSP': String, 'FWAGP': String, 'FWKHP': String, 'FWKLP': String, 'FWKWNP': String, 'FWRKP': String, 'FYOEP': String, 'PWGTP1': Float64, 'PWGTP2': Float64, 'PWGTP3': Float64, 'PWGTP4': Float64, 'PWGTP5': Float64, 'PWGTP6': Float64, 'PWGTP7': Float64, 'PWGTP8': Float64, 'PWGTP9': Float64, 'PWGTP10': Float64, 'PWGTP11': Float64, 'PWGTP12': Float64, 'PWGTP13': Float64, 'PWGTP14': Float64, 'PWGTP15': Float64, 'PWGTP16': Float64, 'PWGTP17': Float64, 'PWGTP18': Float64, 'PWGTP19': Float64, 'PWGTP20': Float64, 'PWGTP21': Float64, 'PWGTP22': Float64, 'PWGTP23': Float64, 'PWGTP24': Float64, 'PWGTP25': Float64, 'PWGTP26': Float64, 'PWGTP27': Float64, 'PWGTP28': Float64, 'PWGTP29': Float64, 'PWGTP30': Float64, 'PWGTP31': Float64, 'PWGTP32': Float64, 'PWGTP33': Float64, 'PWGTP34': Float64, 'PWGTP35': Float64, 'PWGTP36': Float64, 'PWGTP37': Float64, 'PWGTP38': Float64, 'PWGTP39': Float64, 'PWGTP40': Float64, 'PWGTP41': Float64, 'PWGTP42': Float64, 'PWGTP43': Float64, 'PWGTP44': Float64, 'PWGTP45': Float64, 'PWGTP46': Float64, 'PWGTP47': Float64, 'PWGTP48': Float64, 'PWGTP49': Float64, 'PWGTP50': Float64, 'PWGTP51': Float64, 'PWGTP52': Float64, 'PWGTP53': Float64, 'PWGTP54': Float64, 'PWGTP55': Float64, 'PWGTP56': Float64, 'PWGTP57': Float64, 'PWGTP58': Float64, 'PWGTP59': Float64, 'PWGTP60': Float64, 'PWGTP61': Float64, 'PWGTP62': Float64, 'PWGTP63': Float64, 'PWGTP64': Float64, 'PWGTP65': Float64, 'PWGTP66': Float64, 'PWGTP67': Float64, 'PWGTP68': Float64, 'PWGTP69': Float64, 'PWGTP70': Float64, 'PWGTP71': Float64, 'PWGTP72': Float64, 'PWGTP73': Float64, 'PWGTP74': Float64, 'PWGTP75': Float64, 'PWGTP76': Float64, 'PWGTP77': Float64, 'PWGTP78': Float64, 'PWGTP79': Float64, 'PWGTP80': Float64})
    • Rows: 623,757

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distributions

If you're not sure about the file name format, learn more about wheel file names.

polars_readstat-0.7.2-cp39-abi3-win_amd64.whl (7.9 MB view details)

Uploaded CPython 3.9+Windows x86-64

polars_readstat-0.7.2-cp39-abi3-manylinux_2_28_x86_64.whl (8.7 MB view details)

Uploaded CPython 3.9+manylinux: glibc 2.28+ x86-64

polars_readstat-0.7.2-cp39-abi3-macosx_11_0_arm64.whl (6.1 MB view details)

Uploaded CPython 3.9+macOS 11.0+ ARM64

polars_readstat-0.7.2-cp39-abi3-macosx_10_15_x86_64.whl (6.6 MB view details)

Uploaded CPython 3.9+macOS 10.15+ x86-64

File details

Details for the file polars_readstat-0.7.2-cp39-abi3-win_amd64.whl.

File metadata

File hashes

Hashes for polars_readstat-0.7.2-cp39-abi3-win_amd64.whl
Algorithm Hash digest
SHA256 94b8c10601601be01bdf7db51ad6a9abc7fc593a4304033e8d69e47853fdfd7d
MD5 dbd11a6881512c6d37d89f4f4f559336
BLAKE2b-256 202ccf06640e416cf778343b082b4732cb36a0d5ab570d2b7bdfdd8ff3e20d6f

See more details on using hashes here.

File details

Details for the file polars_readstat-0.7.2-cp39-abi3-manylinux_2_28_x86_64.whl.

File metadata

File hashes

Hashes for polars_readstat-0.7.2-cp39-abi3-manylinux_2_28_x86_64.whl
Algorithm Hash digest
SHA256 b5e9ee94baef14792e6aeebc82736dee49fc62da637494521a50c93aa0530b50
MD5 3b56b9cf12f2df8dcd76583c7dfd1b58
BLAKE2b-256 4b2649392b05120ae98cce0b1a8826a4bb8cea55b74ecb340e13d1612f8fea8e

See more details on using hashes here.

File details

Details for the file polars_readstat-0.7.2-cp39-abi3-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for polars_readstat-0.7.2-cp39-abi3-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 5dda0c37c6fb2e6c1b8f4c9463e00cdc5924528d832aa0bd9edc94432b3b80e5
MD5 c61897d1b092d4d6278bddb563998d3e
BLAKE2b-256 e1779d8ab9ff7ade8379e1783c5d1bd1531cbf128e7c28d4ee551f418d0bf4d0

See more details on using hashes here.

File details

Details for the file polars_readstat-0.7.2-cp39-abi3-macosx_10_15_x86_64.whl.

File metadata

File hashes

Hashes for polars_readstat-0.7.2-cp39-abi3-macosx_10_15_x86_64.whl
Algorithm Hash digest
SHA256 3d7b9f6c1521519db07ba43a0783609d6f764b9b0c0ccb375524fbb8921dea49
MD5 f3b7149b70c900a6d7a24bce6a7a6c72
BLAKE2b-256 315be3c7bc7f690721a85f9835da9069218ba11e142754ed86a6ec589fa4f84d

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page