I'm trying to extract the text included in this PDF file using Python.

I'm using the PyPDF2 module, and have the following script:

import PyPDF2
pdf_file = open('sample.pdf')
read_pdf = PyPDF2.PdfFileReader(pdf_file)
number_of_pages = read_pdf.getNumPages()
page = read_pdf.getPage(0)
page_content = page.extractText()
print page_content

When I run the code, I get the following output which is different from that included in the PDF document:


How can I extract the text as is in the PDF document?

  • 10
    I've never used that module, but does it make a difference if you open the file in binary mode: pdf_file = open('sample.pdf', 'rb')?
    – PM 2Ring
    Jan 17 '16 at 11:23
  • 2
    Thanks for your reply. I tried that with the binary mode, but nothing changed
    – Simplicity
    Jan 17 '16 at 11:42
  • 4
    Copy the text using a good PDF viewer - Adobe's canonical Acrobat Reader, if possible. Do you get the same result? The difference is not that the text is different, but the font is - the character codes map to other values. Not all PDFs contain the correct data to restore this.
    – Jongware
    Jan 17 '16 at 11:51
  • 3
    That PDF contains a character CMap table, so the restrictions and work-arounds discussed in this thread are is relevant - stackoverflow.com/questions/4203414/….
    – dwarring
    Jan 17 '16 at 21:34
  • 2
    The PDF indeed contains a correct CMAP so it is trivial to convert the ad hoc character mapping to plain text. However, it takes additional processing to retrieve the correct order of text. Mac OS X's Quartz PDF renderer is a nasty piece of work! In its original rendering order I get "m T’h iuss iisn ga tosam fopllloew DalFo dnogc wumithe ntht eI tutorial"... Only after sorting by x coordinates I get a far more likely correct result: "This is a sample PDF document I’m using to follow along with the tutorial".
    – Jongware
    Jan 25 '16 at 20:15

31 Answers 31


I was looking for a simple solution to use for python 3.x and windows. There doesn't seem to be support from textract, which is unfortunate, but if you are looking for a simple solution for windows/python 3 checkout the tika package, really straight forward for reading pdfs.

Tika-Python is a Python binding to the Apache Tika™ REST services allowing Tika to be called natively in the Python community.

from tika import parser # pip install tika

raw = parser.from_file('sample.pdf')

Note that Tika is written in Java so you will need a Java runtime installed

  • 24
    I tested pypdf2, tika and tried and failed to install textract and pdftotext. Pypdf2 returned 99 words while tika returned all 858 words from my test invoice. So I ended up going with tika.
    – Stian
    Jun 19 '18 at 9:11
  • 23
    I keep getting a "RuntimeError: Unable to start Tika server" error.
    – Nav
    Oct 16 '18 at 12:39
  • 4
    Answer I've been searching for my entire life, why does no one else recommend Tika? Thanks! Dec 14 '18 at 20:21
  • 4
    If you need to run this on all the PDF files in a directory (recursively), take this script
    – Hope
    Apr 19 '19 at 10:28
  • 3
    for who is having the "Unable to start Tika server" error, I solved installing the last version of Java as suggested here, which I did on Mac Os X with brew following this answer
    – glS
    Oct 8 '19 at 14:51

Use textract.

It supports many types of files including PDFs

import textract
text = textract.process("path/to/file.extension")
  • 1
    Works for PDFs, epubs, etc - processes PDFs that even PDFMiner fails on. Feb 7 '17 at 1:57
  • how to use it in aws lambda , I tried this but , import error occured fro textract
    – Arun Kumar
    Feb 27 '18 at 7:17
  • 6
    textract is a wrapper for Poppler:pdftotext (among others).
    – onewhaleid
    Apr 17 '18 at 0:21
  • 1
    @ArunKumar: To use anything in AWS Lambda that's not built-in, you have to include it and all extra dependencies, in your bundle. Jun 6 '18 at 15:58
  • 2
    textract seems to be dead (source). Use either pdfminer.six directly or pymupdf Aug 21 '20 at 7:13

Look at this code:

import PyPDF2
pdf_file = open('sample.pdf', 'rb')
read_pdf = PyPDF2.PdfFileReader(pdf_file)
number_of_pages = read_pdf.getNumPages()
page = read_pdf.getPage(0)
page_content = page.extractText()
print page_content.encode('utf-8')

The output is:


Using the same code to read a pdf from 201308FCR.pdf .The output is normal.

Its documentation explains why:

def extractText(self):
    Locate all text drawing commands, in the order they are provided in the
    content stream, and extract the text.  This works well for some PDF
    files, but poorly for others, depending on the generator used.  This will
    be refined in the future.  Do not rely on the order of text coming out of
    this function, as it will change if this function is made more
    :return: a unicode string object.
  • @VineeshTP: Are you getting anything for page_content? If yes, then see if it helps by using a different encoding other than (utf-8)
    – Quinn
    Jul 14 '19 at 22:17
  • Best library I found for reading the pdf using python is 'tika'
    – Vineesh TP
    Jul 15 '19 at 6:38
  • 201308FCR.pdf not found. Apr 5 '20 at 0:33
  • 5
    PyPDF2 / PyPDF3 / PyPDF4 are all dead. Use pymupdf Aug 21 '20 at 7:15

I recommend to use pymupdf or pdfminer.six.

Those packages are not maintained:

  • PyPDF2, PyPDF3, PyPDF4
  • pdfminer (without .six)

How to read pure text with pymupdf

There are different options which will give different results, but the most basic one is:

import fitz  # this is pymupdf

with fitz.open("my.pdf") as doc:
    text = ""
    for page in doc:
        text += page.getText()


Other PDF libraries

  • pikepdf does not support text extraction (source)
  • 1
    Definably the easiest way to read a PDF, thanks!
    – martin36
    Mar 20 at 17:05
  • However, there seems to be a problem with the order of the text from the PDF. Intuitively the text would read from top to bottom and left to right, but here it seem to show up in another order
    – martin36
    Mar 20 at 19:45
  • A very nice software! May 28 at 7:08
  • 3
    For convenience the pip install is pip install PyMuPDF. Jun 4 at 7:12
  • 1
    @Raf If you have an example PDF, please go ahead and create an issue: github.com/pymupdf/PyMuPDF/issues - the developer behin it is pretty active Sep 21 at 10:01

After trying textract (which seemed to have too many dependencies) and pypdf2 (which could not extract text from the pdfs I tested with) and tika (which was too slow) I ended up using pdftotext from xpdf (as already suggested in another answer) and just called the binary from python directly (you may need to adapt the path to pdftotext):

import os, subprocess
SCRIPT_DIR = os.path.dirname(os.path.abspath(__file__))
args = ["/usr/local/bin/pdftotext",
res = subprocess.run(args, stdout=subprocess.PIPE, stderr=subprocess.PIPE)
output = res.stdout.decode('utf-8')

There is pdftotext which does basically the same but this assumes pdftotext in /usr/local/bin whereas I am using this in AWS lambda and wanted to use it from the current directory.

Btw: For using this on lambda you need to put the binary and the dependency to libstdc++.so into your lambda function. I personally needed to compile xpdf. As instructions for this would blow up this answer I put them on my personal blog.

  • 5
    Oh my god, it works!! Finally, a solution that extracts the text in the correct order! I want to hug you for this answer! (Or if you don't like hugs, here's a virtual coffee/beer/...)
    – DonQuiKong
    Nov 27 '18 at 10:20
  • 7
    glad it helped! Upvoting gives the same sensation as hugging, so I'm fine!
    – hansaplast
    Nov 28 '18 at 6:47
  • simple ... gr8 out of box thinking! Aug 13 '19 at 5:03

I've try many Python PDF converters, and I like to update this review. Tika is one of the best. But PyMuPDF is a good news from @ehsaneha user.

I did a code to compare them in: https://github.com/erfelipe/PDFtextExtraction I hope to help you.

Tika-Python is a Python binding to the Apache Tika™ REST services allowing Tika to be called natively in the Python community.

from tika import parser

raw = parser.from_file("///Users/Documents/Textos/Texto1.pdf")
raw = str(raw)

safe_text = raw.encode('utf-8', errors='ignore')

safe_text = str(safe_text).replace("\n", "").replace("\\", "")
print('--- safe text ---' )
print( safe_text )
  • 5
    special thanks for .encode('utf-8', errors='ignore')
    – Evgeny
    Mar 24 '19 at 7:50
  • AttributeError: module 'os' has no attribute 'setsid'
    – keramat
    Feb 22 '20 at 6:50
  • this worked for me, when opening the file in 'rb' mode with open('../path/to/pdf','rb') as pdf: raw = str(parser.from_file(pdf)) text = raw.encode('utf-8', errors='ignore')
    – gl3yn
    Mar 31 at 16:42

You may want to use time proved xPDF and derived tools to extract text instead as pyPDF2 seems to have various issues with the text extraction still.

The long answer is that there are lot of variations how a text is encoded inside PDF and that it may require to decoded PDF string itself, then may need to map with CMAP, then may need to analyze distance between words and letters etc.

In case the PDF is damaged (i.e. displaying the correct text but when copying it gives garbage) and you really need to extract text, then you may want to consider converting PDF into image (using ImageMagik) and then use Tesseract to get text from image using OCR.

  • -1 because the OP is asking for reading pdfs in Python, and although there is an xpdf wrapper for python it is poorly maintained.
    – cduguet
    Dec 1 '19 at 8:20

PyPDF2 in some cases ignores the white spaces and makes the result text a mess, but I use PyMuPDF and I'm really satisfied you can use this link for more info

  • pymupdf is the best solution I observed, does not require additional C++ libraries like pdftotext or java like tika
    – Kay
    Oct 4 '19 at 13:56
  • pymypdf is really the best solution, no additional server or libraries, and it works with file where PyPDF2 PypDF3 PyPDF4 retrive empty string of text. many thanks! Feb 26 '20 at 13:45
  • to install pymupdf, run pip install pymupdf==1.16.16. Using this specific version because today the newest version (17) is not working. I opted for pymupdf because it extracts text wrapping fields in new line char \n. So I'm extracting the text from pdf to a string with pymupdf and then I'm using my_extracted_text.splitlines() to get the text splitted in lines, into a list.
    – erickfis
    Apr 9 '20 at 13:53
  • PyMuPDF was really surprising. Thanks.
    – erfelipe
    May 4 '20 at 20:08
  • Page doesn't exist Sep 22 '20 at 17:28

In 2020 the solutions above were not working for the particular pdf I was working with. Below is what did the trick. I am on Windows 10 and Python 3.8

Test pdf file: https://drive.google.com/file/d/1aUfQAlvq5hA9kz2c9CyJADiY3KpY3-Vn/view?usp=sharing

#pip install pdfminer.six
import io

from pdfminer.pdfinterp import PDFResourceManager, PDFPageInterpreter
from pdfminer.converter import TextConverter
from pdfminer.layout import LAParams
from pdfminer.pdfpage import PDFPage

def convert_pdf_to_txt(path):
    '''Convert pdf content from a file path to text

    :path the file path
    rsrcmgr = PDFResourceManager()
    codec = 'utf-8'
    laparams = LAParams()

    with io.StringIO() as retstr:
        with TextConverter(rsrcmgr, retstr, codec=codec,
                           laparams=laparams) as device:
            with open(path, 'rb') as fp:
                interpreter = PDFPageInterpreter(rsrcmgr, device)
                password = ""
                maxpages = 0
                caching = True
                pagenos = set()

                for page in PDFPage.get_pages(fp,

                return retstr.getvalue()

if __name__ == "__main__":
  • Excellent answer. There's an anaconda install as well. I was installed and had extracted text in < 5 minutes. [note: tika also worked, but pdfminer.six was much faster)
    – CreekGeek
    Sep 21 '20 at 1:33
  • You are a lifesaver!
    – Sandeep
    Oct 21 '20 at 12:30

The below code is a solution to the question in Python 3. Before running the code, make sure you have installed the PyPDF2 library in your environment. If not installed, open the command prompt and run the following command:

pip3 install PyPDF2

Solution Code:

import PyPDF2
pdfFileObject = open('sample.pdf', 'rb')
pdfReader = PyPDF2.PdfFileReader(pdfFileObject)
count = pdfReader.numPages
for i in range(count):
    page = pdfReader.getPage(i)
  • 2
    How would u save all the content in one text file and use it for further analysis Aug 24 '18 at 7:45
  • 1
    PyPDF2 / PyPDF3 / PyPDF4 are all dead. Use pymupdf Aug 21 '20 at 7:16

pdftotext is the best and simplest one! pdftotext also reserves the structure as well.

I tried PyPDF2, PDFMiner and a few others but none of them gave a satisfactory result.

  • Message as follows when installing pdf2text,Collecting PDFMiner (from pdf2text), so I don't understand this answer now.
    – zhy
    Sep 24 '19 at 6:01
  • 2
    pdf2text and pdftotext are different. You can use the link from the answer.
    – Dharam
    Nov 5 '19 at 6:04
  • OK. That's a little bit confusing.
    – zhy
    Nov 6 '19 at 3:33

Multi - page pdf can be extracted as text at single stretch instead of giving individual page number as argument using below code

import PyPDF2
import collections
pdf_file = open('samples.pdf', 'rb')
read_pdf = PyPDF2.PdfFileReader(pdf_file)
number_of_pages = read_pdf.getNumPages()
c = collections.Counter(range(number_of_pages))
for i in c:
   page = read_pdf.getPage(i)
   page_content = page.extractText()
   print page_content.encode('utf-8')
  • Only problem here the content of new page overwrites the last one Aug 24 '18 at 7:44
  • 1
    PyPDF2 / PyPDF3 / PyPDF4 are all dead. Use pymupdf Aug 21 '20 at 7:16

I've got a better work around than OCR and to maintain the page alignment while extracting the text from a PDF. Should be of help:

from pdfminer.pdfinterp import PDFResourceManager, PDFPageInterpreter
from pdfminer.converter import TextConverter
from pdfminer.layout import LAParams
from pdfminer.pdfpage import PDFPage
from io import StringIO

def convert_pdf_to_txt(path):
    rsrcmgr = PDFResourceManager()
    retstr = StringIO()
    codec = 'utf-8'
    laparams = LAParams()
    device = TextConverter(rsrcmgr, retstr, codec=codec, laparams=laparams)
    fp = open(path, 'rb')
    interpreter = PDFPageInterpreter(rsrcmgr, device)
    password = ""
    maxpages = 0
    caching = True

    for page in PDFPage.get_pages(fp, pagenos, maxpages=maxpages, password=password,caching=caching, check_extractable=True):

    text = retstr.getvalue()

    return text

text= convert_pdf_to_txt('test.pdf')

You can use PDFtoText https://github.com/jalan/pdftotext

PDF to text keeps text format indentation, doesn't matter if you have tables.


I found a solution here PDFLayoutTextStripper

It's good because it can keep the layout of the original PDF.

It's written in Java but I have added a Gateway to support Python.

Sample code:

from py4j.java_gateway import JavaGateway

gw = JavaGateway()
result = gw.entry_point.strip('samples/bus.pdf')

# result is a dict of {
#   'success': 'true' or 'false',
#   'payload': pdf file content if 'success' is 'true'
#   'error': error message if 'success' is 'false'
# }

print result['payload']

Sample output from PDFLayoutTextStripper: enter image description here

You can see more details here Stripper with Python


If wanting to extract text from a table, I've found tabula to be easily implemented, accurate, and fast:

to get a pandas dataframe:

import tabula

df = tabula.read_pdf('your.pdf')


By default, it ignores page content outside of the table. So far, I've only tested on a single-page, single-table file, but there are kwargs to accommodate multiple pages and/or multiple tables.

install via:

pip install tabula-py
# or
conda install -c conda-forge tabula-py 

In terms of straight-up text extraction see: https://stackoverflow.com/a/63190886/9249533

  • tabula is impressive. Of all the solutions I tested from this page, this is the only one that was able to maintain the order of rows and fields. There are still a few adjustments needed for complex tables, but since the output seems reproductible from one table to the other and is stored in a pandas.DataFrame it is easy to correct. Feb 1 at 16:15
  • Also check Camelot. Feb 1 at 17:25

Here is the simplest code for extracting text


# importing required modules
import PyPDF2

# creating a pdf file object
pdfFileObj = open('filename.pdf', 'rb')

# creating a pdf reader object
pdfReader = PyPDF2.PdfFileReader(pdfFileObj)

# printing number of pages in pdf file

# creating a page object
pageObj = pdfReader.getPage(5)

# extracting text from page

# closing the pdf file object

Use pdfminer.six. Here is the the doc : https://pdfminersix.readthedocs.io/en/latest/index.html

To convert pdf to text :

    def pdf_to_text():
        from pdfminer.high_level import extract_text

        text = extract_text('test.pdf')
  • Order is not proper.
    – Vikas Viki
    Jun 19 at 9:15

As of 2021 I would like to recommend pdfreader due to the fact that PyPDF2/3 seems to be troublesome now and tika is actually written in java and needs a jre in the background. pdfreader is pythonic, currently well maintained and has extensive documentation here.

Installation as usual: pip install pdfreader

Short example of usage:

from pdfreader import PDFDocument, SimplePDFViewer

# get raw document
fd = open(file_name, "rb")
doc = PDFDocument(fd)

# there is an iterator for pages
page_one = next(doc.pages())
all_pages = [p for p in doc.pages()]

# and even a viewer
fd = open(file_name, "rb")
viewer = SimplePDFViewer(fd)
  • On a note, installing pdfreader on Windows requires Microsoft C++ Build Tools installed on your system, whilst the answer below recommending pymupdf installed directly using pip without any extra requirement.
    – Raf
    Sep 21 at 6:14

For extracting Text from PDF use below code

import PyPDF2
pdfFileObj = open('mypdf.pdf', 'rb')

pdfReader = PyPDF2.PdfFileReader(pdfFileObj)


pageObj = pdfReader.getPage(0)

a = pageObj.extractText()


A more robust way, supposing there are multiple PDF's or just one !

import os
from PyPDF2 import PdfFileWriter, PdfFileReader
from io import BytesIO

mydir = # specify path to your directory where PDF or PDF's are

for arch in os.listdir(mydir): 
    buffer = io.BytesIO()
    archpath = os.path.join(mydir, arch)
    with open(archpath) as f:
            pdfFileObj = open(archpath, 'rb')
            pdfReader = PyPDF2.PdfFileReader(pdfFileObj)
            pageObj = pdfReader.getPage(0) 
            ley = pageObj.extractText()
            file1 = open("myfile.txt","w")
  • All PyPDF derivates are dead as of 2021. Consider this answer outdated. Sep 27 at 16:47

You can simply do this using pytessaract and OpenCV. Refer the following code. You can get more details from this article.

import os
from PIL import Image
from pdf2image import convert_from_path
import pytesseract

filePath = ‘021-DO-YOU-WONDER-ABOUT-RAIN-SNOW-SLEET-AND-HAIL-Free-Childrens-Book-By-Monkey-Pen.pdf’
doc = convert_from_path(filePath)

path, fileName = os.path.split(filePath)
fileBaseName, fileExtension = os.path.splitext(fileName)

for page_number, page_data in enumerate(doc):
txt = pytesseract.image_to_string(page_data).encode(“utf-8”)
print(“Page # {} — {}”.format(str(page_number),txt))

I am adding code to accomplish this: It is working fine for me:

# This works in python 3
# required python packages
# tabula-py==1.0.0
# PyPDF2==1.26.0
# Pillow==4.0.0
# pdfminer.six==20170720

import os
import shutil
import warnings
from io import StringIO

import requests
import tabula
from PIL import Image
from PyPDF2 import PdfFileWriter, PdfFileReader
from pdfminer.converter import TextConverter
from pdfminer.layout import LAParams
from pdfminer.pdfinterp import PDFResourceManager, PDFPageInterpreter
from pdfminer.pdfpage import PDFPage


def download_file(url):
    local_filename = url.split('/')[-1]
    local_filename = local_filename.replace("%20", "_")
    r = requests.get(url, stream=True)
    with open(local_filename, 'wb') as f:
        shutil.copyfileobj(r.raw, f)

    return local_filename

class PDFExtractor():
    def __init__(self, url):
        self.url = url

    # Downloading File in local
    def break_pdf(self, filename, start_page=-1, end_page=-1):
        pdf_reader = PdfFileReader(open(filename, "rb"))
        # Reading each pdf one by one
        total_pages = pdf_reader.numPages
        if start_page == -1:
            start_page = 0
        elif start_page < 1 or start_page > total_pages:
            return "Start Page Selection Is Wrong"
            start_page = start_page - 1

        if end_page == -1:
            end_page = total_pages
        elif end_page < 1 or end_page > total_pages - 1:
            return "End Page Selection Is Wrong"
            end_page = end_page

        for i in range(start_page, end_page):
            output = PdfFileWriter()
            with open(str(i + 1) + "_" + filename, "wb") as outputStream:

    def extract_text_algo_1(self, file):
        pdf_reader = PdfFileReader(open(file, 'rb'))
        # creating a page object
        pageObj = pdf_reader.getPage(0)

        # extracting extract_text from page
        text = pageObj.extractText()
        text = text.replace("\n", "").replace("\t", "")
        return text

    def extract_text_algo_2(self, file):
        pdfResourceManager = PDFResourceManager()
        retstr = StringIO()
        la_params = LAParams()
        device = TextConverter(pdfResourceManager, retstr, codec='utf-8', laparams=la_params)
        fp = open(file, 'rb')
        interpreter = PDFPageInterpreter(pdfResourceManager, device)
        password = ""
        max_pages = 0
        caching = True
        page_num = set()

        for page in PDFPage.get_pages(fp, page_num, maxpages=max_pages, password=password, caching=caching,

        text = retstr.getvalue()
        text = text.replace("\t", "").replace("\n", "")

        return text

    def extract_text(self, file):
        text1 = self.extract_text_algo_1(file)
        text2 = self.extract_text_algo_2(file)

        if len(text2) > len(str(text1)):
            return text2
            return text1

    def extarct_table(self, file):

        # Read pdf into DataFrame
            df = tabula.read_pdf(file, output_format="csv")
            print("Error Reading Table")

        print("\nPrinting Table Content: \n", df)
        print("\nDone Printing Table Content\n")

    def tiff_header_for_CCITT(self, width, height, img_size, CCITT_group=4):
        tiff_header_struct = '<' + '2s' + 'h' + 'l' + 'h' + 'hhll' * 8 + 'h'
        return struct.pack(tiff_header_struct,
                           b'II',  # Byte order indication: Little indian
                           42,  # Version number (always 42)
                           8,  # Offset to first IFD
                           8,  # Number of tags in IFD
                           256, 4, 1, width,  # ImageWidth, LONG, 1, width
                           257, 4, 1, height,  # ImageLength, LONG, 1, lenght
                           258, 3, 1, 1,  # BitsPerSample, SHORT, 1, 1
                           259, 3, 1, CCITT_group,  # Compression, SHORT, 1, 4 = CCITT Group 4 fax encoding
                           262, 3, 1, 0,  # Threshholding, SHORT, 1, 0 = WhiteIsZero
                           273, 4, 1, struct.calcsize(tiff_header_struct),  # StripOffsets, LONG, 1, len of header
                           278, 4, 1, height,  # RowsPerStrip, LONG, 1, lenght
                           279, 4, 1, img_size,  # StripByteCounts, LONG, 1, size of extract_image
                           0  # last IFD

    def extract_image(self, filename):
        number = 1
        pdf_reader = PdfFileReader(open(filename, 'rb'))

        for i in range(0, pdf_reader.numPages):

            page = pdf_reader.getPage(i)

                xObject = page['/Resources']['/XObject'].getObject()
                print("No XObject Found")

            for obj in xObject:


                    if xObject[obj]['/Subtype'] == '/Image':
                        size = (xObject[obj]['/Width'], xObject[obj]['/Height'])
                        data = xObject[obj]._data
                        if xObject[obj]['/ColorSpace'] == '/DeviceRGB':
                            mode = "RGB"
                            mode = "P"

                        image_name = filename.split(".")[0] + str(number)


                        if xObject[obj]['/Filter'] == '/FlateDecode':
                            data = xObject[obj].getData()
                            img = Image.frombytes(mode, size, data)
                            img.save(image_name + "_Flate.png")
                            # save_to_s3(imagename + "_Flate.png")

                            number += 1
                        elif xObject[obj]['/Filter'] == '/DCTDecode':
                            img = open(image_name + "_DCT.jpg", "wb")
                            # save_to_s3(imagename + "_DCT.jpg")
                            number += 1
                        elif xObject[obj]['/Filter'] == '/JPXDecode':
                            img = open(image_name + "_JPX.jp2", "wb")
                            # save_to_s3(imagename + "_JPX.jp2")
                            number += 1
                        elif xObject[obj]['/Filter'] == '/CCITTFaxDecode':
                            if xObject[obj]['/DecodeParms']['/K'] == -1:
                                CCITT_group = 4
                                CCITT_group = 3
                            width = xObject[obj]['/Width']
                            height = xObject[obj]['/Height']
                            data = xObject[obj]._data  # sorry, getData() does not work for CCITTFaxDecode
                            img_size = len(data)
                            tiff_header = self.tiff_header_for_CCITT(width, height, img_size, CCITT_group)
                            img_name = image_name + '_CCITT.tiff'
                            with open(img_name, 'wb') as img_file:
                                img_file.write(tiff_header + data)

                            # save_to_s3(img_name)
                            number += 1

        return number

    def read_pages(self, start_page=-1, end_page=-1):

        # Downloading file locally
        downloaded_file = download_file(self.url)

        # breaking PDF into number of pages in diff pdf files
        self.break_pdf(downloaded_file, start_page, end_page)

        # creating a pdf reader object
        pdf_reader = PdfFileReader(open(downloaded_file, 'rb'))

        # Reading each pdf one by one
        total_pages = pdf_reader.numPages

        if start_page == -1:
            start_page = 0
        elif start_page < 1 or start_page > total_pages:
            return "Start Page Selection Is Wrong"
            start_page = start_page - 1

        if end_page == -1:
            end_page = total_pages
        elif end_page < 1 or end_page > total_pages - 1:
            return "End Page Selection Is Wrong"
            end_page = end_page

        for i in range(start_page, end_page):
            # creating a page based filename
            file = str(i + 1) + "_" + downloaded_file

            print("\nStarting to Read Page: ", i + 1, "\n -----------===-------------")

            file_text = self.extract_text(file)

            print("Stopped Reading Page: ", i + 1, "\n -----------===-------------")


# I have tested on these 3 pdf files
# url = "http://s3.amazonaws.com/NLP_Project/Original_Documents/Healthcare-January-2017.pdf"
url = "http://s3.amazonaws.com/NLP_Project/Original_Documents/Sample_Test.pdf"
# url = "http://s3.amazonaws.com/NLP_Project/Original_Documents/Sazerac_FS_2017_06_30%20Annual.pdf"
# creating the instance of class
pdf_extractor = PDFExtractor(url)

# Getting desired data out
pdf_extractor.read_pages(15, 23)

You can download tika-app-xxx.jar(latest) from Here.

Then put this .jar file in the same folder of your python script file.

then insert the following code in the script:

import os
import os.path


def extract_pdf(source_pdf:str,target_txt:str):
    os.system('java -jar '+tika_dir+' -t {} > {}'.format(source_pdf,target_txt))

The advantage of this method:

fewer dependency. Single .jar file is easier to manage that a python package.

multi-format support. The position source_pdf can be the directory of any kind of document. (.doc, .html, .odt, etc.)

up-to-date. tika-app.jar always release earlier than the relevant version of tika python package.

stable. It is far more stable and well-maintained (Powered by Apache) than PyPDF.


A jre-headless is necessary.

  • totally not pythonic solution. If you recommend this, you should build a python package and have people import that. Don't recommend using command line executions of java code in python. Dec 11 '18 at 4:30
  • @MichaelTamillow, if writing a code which is going to be uploaded into pypi, I admit that it is not a good idea. However, if it is just a python script with shebang for temporary usage, it is not bad, doesn't it?
    – pah8J
    Jan 15 '19 at 8:06
  • Well, the question isn't titled with "python" - so I think stating "here's how to do it in Java" is more acceptable than this. Technically, you can do whatever you want in Python. That's why it is both awesome and terrible. Temporary usage is a bad habit. Jan 21 '19 at 19:27

If you try it in Anaconda on Windows, PyPDF2 might not handle some of the PDFs with non-standard structure or unicode characters. I recommend using the following code if you need to open and read a lot of pdf files - the text of all pdf files in folder with relative path .//pdfs// will be stored in list pdf_text_list.

from tika import parser
import glob

def read_pdf(filename):
    text = parser.from_file(filename)

all_files = glob.glob(".\\pdfs\\*.pdf")
for i,file in enumerate(all_files):


Camelot seems a fairly powerful solution to extract tables from PDFs in Python.

At first sight it seems to achieve almost as accurate extraction as the tabula-py package suggested by CreekGeek, which is already waaaaay above any other posted solution as of today in terms of reliability, but it is supposedly much more configurable. Furthermore it has its own accuracy indicator (results.parsing_report), and great debugging features.

Both Camelot and Tabula provide the results as Pandas’ DataFrames, so it is easy to adjust tables afterwards.

pip install camelot-py

(Not to be confused with the camelot package.)

import camelot

df_list = []
results = camelot.read_pdf("file.pdf", ...)
for table in results:

It can also output results as CSV, JSON, HTML or Excel.

Camelot comes at the expense of a number of dependencies.

NB : Since my input is pretty complex with many different tables I ended up using both Camelot and Tabula, depending on the table, to achieve the best results.


Try out borb, a pure python PDF library

import typing  
from borb.pdf.document import Document  
from borb.pdf.pdf import PDF  
from borb.toolkit.text.simple_text_extraction import SimpleTextExtraction  

def main():

    # variable to hold Document instance
    doc: typing.Optional[Document] = None  

    # this implementation of EventListener handles text-rendering instructions
    l: SimpleTextExtraction = SimpleTextExtraction()  

    # open the document, passing along the array of listeners
    with open("input.pdf", "rb") as in_file_handle:  
        doc = PDF.loads(in_file_handle, [l])  
    # were we able to read the document?
    assert doc is not None  

    # print the text on page 0

if __name__ == "__main__":


It includes creating a new sheet for each PDF page being set dynamically based on number of pages in the document.

import PyPDF2 as p2
import xlsxwriter

pdfFileName = "sample.pdf"
pdfFile = open(pdfFileName, 'rb')
pdfread = p2.PdfFileReader(pdfFile)
number_of_pages = pdfread.getNumPages()
workbook = xlsxwriter.Workbook('pdftoexcel.xlsx')

for page_number in range(number_of_pages):
    pageinfo = pdfread.getPage(page_number)
    rawInfo = pageinfo.extractText().split('\n')

    row = 0
    column = 0
    worksheet = workbook.add_worksheet(f'Sheet{page_number}')

    for line in rawInfo:
        worksheet.write(row, column, line)
        row += 1

pdfplumber is one of the better libraries to read and extract data from pdf. It also provides ways to read table data and after struggling with a lot of such libraries, pdfplumber worked best for me.

Mind you, it works best for machine-written pdf and not scanned pdf.

import pdfplumber
with pdfplumber.open(r'D:\examplepdf.pdf') as pdf:
first_page = pdf.pages[0]

PyPDF2 does work, but results may vary. I am seeing quite inconsistent findings from its result extraction.

for i in range(0,reader.getNumPages()):

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