Skip to main content

Automatically processes data files in directories, converts array-like strings to NumPy arrays, detects and fixes data type issues, and saves results as optimized Parquet files and MORE!

Project description

deepcsv

Downloads Version Python License Stars

"You think you saved a list. You open it tomorrow — and it's a string."

deepcsv was built to solve exactly this problem.


The Problem

Your CSV files are lying to you.

  • You save a list — you open it tomorrow and it's a string
  • Your column has numbers — it secretly has 3 different data types
  • You have 200 CSV files across 40 folders — and you process them one by one
  • You load a file and spend 20 minutes just picking the right reader
  • You have nulls scattered everywhere with no clean way to handle them

This is the silent killer of every data pipeline.


The Solution ✅

deepcsv handles all of this in one import.

  • Walks through every folder and subfolder automatically
  • Detects columns storing lists as strings and converts them to real NumPy arrays
  • Catches mixed-type columns and fixes them automatically
  • Saves everything in any format you choose — not just Parquet
  • Reads any file format with one function — no more picking the right reader
  • Cleans nulls with full control over columns, rows, indexes, values, and types

⚙️ Installation

pip install deepcsv

🗺️ Functions Overview

Function What it does
process_file() Converts string lists → NumPy arrays, fixes mixed types
process_all_files() Batch processes entire folder trees
read_any() Reads any file format automatically
clean_values() Cleans nulls, values, types with full control
auto_fix() Detects and fixes mixed data types automatically

📖 Functions

process_file(data_input, file_format=None, to_list=False)

Reads a file or DataFrame, converts array-like strings to NumPy arrays, fixes mixed-type columns, and optionally saves the result.

import deepcsv

# Process only
df = deepcsv.process_file('path/to/file.csv')

# Process and save as parquet
df = deepcsv.process_file('path/to/file.csv', file_format='parquet')

# Process and convert to real Python lists
df = deepcsv.process_file('path/to/file.csv', to_list=True)

Supported save formats: .csv .tsv .txt .xlsx .json .parquet .pkl .feather .html .xml


process_all_files(directory_path, output_dir="All CSV Files is Converted Here", file_format="parquet")

Walks through all folders and subfolders, applies process_file on every supported file, and saves results.

import deepcsv

# Default — saves as parquet
deepcsv.process_all_files('path/to/folder')

# Custom output folder
deepcsv.process_all_files('path/to/folder', output_dir='Converted Files')

# Save as CSV
deepcsv.process_all_files('path/to/folder', file_format='csv')

Supported input formats: .csv .txt .tsv .xls .xlsx .json .parquet .pkl .feather .db .sqlite


read_any(file_path)

Reads any supported file format and returns a pandas DataFrame — one function for everything.

from deepcsv import read_any

df = read_any('data/users.csv')
df = read_any('reports/sales.xlsx')
df = read_any('warehouse/orders.parquet')
df = read_any('local.db')

Supported formats: .csv .txt .tsv .xls .xlsx .json .parquet .pkl .feather .db .sqlite


clean_values(data_input, ...)

Cleans a DataFrame by removing nulls, specific values, specific types, or rows by index.

from deepcsv import clean_values

# Drop fully-null columns
df = clean_values('data.csv', cols=['age', 'salary'])

# Drop rows that have nulls in specific cols
df = clean_values('data.csv', cols=['age', 'salary'], ax_0=True)

# Drop rows by index
df = clean_values(df, index=[0, 5, 12])

# Remove rows where a specific value exists
df = clean_values(df, cols=['status'], finding_value='N/A')

# Remove rows where value meets a condition
df = clean_values(df, cols=['score'], finding_value='N/A', condition=['>=', 500])

# Remove rows by Python type
df = clean_values(df, cols=['age'], finding_type=str)

# Apply on all columns except some
df = clean_values('data.csv', all_cols_except=['id', 'name'])
Parameter Type Default Description
data_input str | DataFrame required File path or DataFrame
cols list None Columns to apply on
ax_0 bool False True: drop rows with nulls — False: drop fully-null cols
index list None Row indexes to drop
condition list None [operator, value] — ex: ['>=', 500]
all_cols_except list None Apply on all columns except these
finding_value any None Find and remove rows containing this value
finding_type type None Find and remove rows matching this Python type

Supported operators: >= <= > < == !=


auto_fix(data_input)

Automatically detects columns with mixed data types and fixes them by converting all values to the most dominant type. Logs every change made.

from deepcsv import auto_fix

df = auto_fix('data.csv')
df = auto_fix(my_dataframe)

📋 Function Signatures

process_file(data_input: Union[str, pd.DataFrame], file_format: str = None, to_list: bool = False) -> pd.DataFrame
process_all_files(directory_path: str, output_dir: str = "All CSV Files is Converted Here", file_format: str = "parquet") -> None
read_any(file_path: str) -> pd.DataFrame
clean_values(data_input, cols=None, ax_0=False, index=None, condition=None, all_cols_except=None, finding_value=None, finding_type=None) -> pd.DataFrame
auto_fix(data_input: Union[str, pd.DataFrame]) -> pd.DataFrame

✨ Key Features

  • String list → real NumPy array conversion (fast, no manual parsing)
  • Mixed-type column detection and auto-fix with logging
  • Save in any format — CSV, Excel, JSON, Parquet, Feather, and more
  • One universal file reader supporting 10+ formats
  • Flexible null cleaning by column, row, index, value, or type
  • Conditional filtering with 6 operators
  • Recursive directory traversal
  • Warning messages for full transparency

📝 Notes

  • Requires pyarrow for Parquet and Feather support
  • Only saves files in process_all_files if the DataFrame contains converted array columns

📦 Requirements

  • Python >= 3.7
  • pandas
  • pyarrow

📦 PyPI · 💻 GitHub

By: Abdullah Bakr

Changelog


Changes

  • Updated README File

Project details


Download files

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

Source Distribution

deepcsv-0.6.5.tar.gz (131.3 kB view details)

Uploaded Source

Built Distribution

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

deepcsv-0.6.5-py3-none-any.whl (144.8 kB view details)

Uploaded Python 3

File details

Details for the file deepcsv-0.6.5.tar.gz.

File metadata

  • Download URL: deepcsv-0.6.5.tar.gz
  • Upload date:
  • Size: 131.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.14.3

File hashes

Hashes for deepcsv-0.6.5.tar.gz
Algorithm Hash digest
SHA256 120b96029b848ea836dc1fefe14bd120795ada3d7ca6905eab21739a60863af5
MD5 a1220353f2612cf8b980362e9426310b
BLAKE2b-256 e24868ec24a73384712e1ac70512fbe03c521ddc342faec2049d425dc9c953c4

See more details on using hashes here.

File details

Details for the file deepcsv-0.6.5-py3-none-any.whl.

File metadata

  • Download URL: deepcsv-0.6.5-py3-none-any.whl
  • Upload date:
  • Size: 144.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.14.3

File hashes

Hashes for deepcsv-0.6.5-py3-none-any.whl
Algorithm Hash digest
SHA256 6a735ad6955b1e72c8d411c0cdc945fbd9b4e0aa987c7657764dc88732ffa60e
MD5 62b10de7e33e24d514400b28faef58b0
BLAKE2b-256 4b850dbd2d827a1405153c027f9f39c3e476a437ed6ce19af4177f58bc3a39e8

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