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The world's easiest, most powerful edgar library

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edgardemo

Features

  • 📁 Access any SEC filing: You can access any SEC filing since 1994.
  • 💰 Company Financials: Comprehensive company financials from 10-K and 10-Q filings
  • 👤 Insider Transactions: Search for and get insider transactions
  • 📅 List filings for any date range: List filings for year, quarter e.g. or date range 2024-02-29:2024-03-15
  • 🌟 Best looking edgar library: Uses rich library to display SEC Edgar data in a beautiful way.
  • 🧠 Intuitive and easy to use: edgartools has a super simple API that is easy to use.
  • ��️ Works as a library or a CLI: You can use edgartools as a library in your code or as a CLI tool.
  • 🔄 Page through filings: Use filings.next() and filings.previous() to page through filings
  • 🏗️ Build Data Pipelines: Build data pipelines by finding, filtering, transforming and saving filings
  • Select a filing: You can select a filing from the list of filings.
  • 📄 View the filing as HTML or text: Find a filing then get the content as HTML or text.
  • 🔢 Chunk filing text: You can chunk the filing text into sections for vector embedding.
  • 🔍 Preview the filing: You can preview the filing in the terminal or a notebook.
  • 🔎 Search through a filing: You can search through a filing for a keyword.
  • 📊 Parse XBRL: Extract XBRL data into intuitive data structures.
  • 💾 Data Objects: Automatically downloads and parses filings into data objects.
  • 📥 Download any attachment: You can download any attachment from the filing.
  • 🕒 Automatic throttling: Automatically throttles requests to Edgar to avoid being blocked.
  • 📥 Bulk downloads: Faster batch processing through bulk downloads of filings and facts
  • 🔢 Get company by Ticker or Cik: Get a company by ticker Company("SNOW") or cik Company(1640147)
  • Get company filings: You can get all the company's historical filings using company.get_filings()
  • 📈 Get company facts: You can get company facts using company.get_facts()
  • 🔍 Lookup Ticker by CUSIP: You can lookup a ticker by CUSIP
  • 📑 Dataset of SEC entities: You can get a dataset of SEC companies and persons
  • 📈 Fund Reports: Search for and get 13F-HR fund reports
  • 🛠️ Works as a library or a CLI: You can use edgartools as a library in your code or as a CLI tool.

Getting started

Install using pip

pip install edgartools

Import and start using

from edgar import *

# Tell the SEC who you are
set_identity("Michael Mccallum [email protected]")

filings = get_filings()

Key Concepts

Getting financials

c = Company("AAPL")
filing = c.get_filings(form="10-Q").latest(1)
tenq = filing.obj()
financials = tenq.financials

Listing filings

filings = get_filings(form=['10-K', '10-Q'], year=2020)
filing = filings[0]

Finding things

filing = find("0001065280-23-000273")

For a deeper dive see Finding things with edgartools

How to use edgartools

Code
Set your EDGAR identity in Linux/Mac export EDGAR_IDENTITY="[email protected]"
Set your EDGAR identity in Windows set EDGAR_IDENTITY="[email protected]"
Set identity in Windows Powershell $env:EDGAR_IDENTITY="[email protected]"
Set identity in Python set_identity("[email protected]")
Importing the library from edgar import *

Working with filings 📁

🔍 Getting Filings

Code
📅 Get filings for the year to date filings = get_filings()
📊 Get only XBRL filings filings = get_filings(index="xbrl")
📆 Get filings for a specific year filings = get_filings(2020)
🗓️ Get filings for a specific quarter filings = get_filings(2020, 1)
📚 Get filings for multiple years filings = get_filings([2020, 2021])
📈 Get filings for a range of years filings = get_filings(year=range(2010, 2020))
📈 Get filings released just now filings = get_latest_filings()

📄 Filtering Filings

Code
📝 Filter by form type filings.filter(form="10-K")
📑 Filter by multiple forms filings.filter(form=["10-K", "10-Q"])
🔄 Include form amendments filings.filter(form="10-K", amendments=True)
🏢 Filter by CIK filings.filter(cik="0000320193")
🏙️ Filter by multiple CIKs filings.filter(cik=["0000320193", "1018724"])
🏷️ Filter by ticker filings.filter(ticker="AAPL")
🏷️🏷️ Filter by multiple tickers filings.filter(ticker=["AAPL", "MSFT"])
📅 Filter on a specific date filings.filter(date="2020-01-01")
📅↔️📅 Filter between dates filings.filter(date="2020-01-01:2020-03-01")
📅⬅️ Filter before a date filings.filter(date=":2020-03-01")
📅➡️ Filter after a date filings.filter(date="2020-03-01:")
🔀 Combine multiple filters filings.filter(form="10-K", date="2020-01-01:", ticker="AAPL")

📊 Viewing and Manipulating Filings

Code
⏭️ Show the next page of filings filings.next()
⏮️ Show the previous page of filings filings.prev()
🔝 Get the first n filings filings.head(20)
🔚 Get the last n filings filings.tail(20)
🕒 Get the latest n filings by date filings.latest(20)
🎲 Get a random sample of filings filings.sample(20)
🐼 Get filings as a pandas dataframe filings.to_pandas()

Working with a filing 📄

🔍 Accessing and viewing a Filing

Code
📌 Get a single filing filing = filings[3]
🔢 Get a filing by accession number filing = get_by_accession_number("0000320193-20-34576")
🏠 Get the filing homepage filing.homepage
🌐 Open a filing in the browser filing.open()
🏠 Open homepage in the browser filing.homepage.open()
💻 View the filing in the terminal filing.view()

📊 Extracting Filing Content

Code
🌐 Get the HTML of the filing filing.html()
📊 Get the XBRL of the filing filing.xbrl()
📝 Get the filing as markdown filing.markdown()
📄 Get the full submission text filing.full_text_submission()
🔢 Get and parse filing data object filing.obj()
📑 Get filing header filing.header

🔎 Searching inside a Filing

Code
🔍 Search within the filing filing.search("query")
🔍 Search with regex filing.search("pattern", regex=True)
📊 Get filing sections filing.sections()

📎 Working with Attachments

Code
📁 Get all filing attachments filing.attachments
📄 Get a single attachment attachment = filing.attachments[0]
🌐 Open attachment in browser attachment.open()
⬇️ Download an attachment content = attachment.download()

Working with a company

Code
Get a company by ticker company = Company("AAPL")
Get a company by CIK company = Company("0000320193")
Get company facts company.get_facts()
Get company facts as a pandas dataframe company.get_facts().to_pandas()
Get company filings company.get_filings()
Get company filings by form company.get_filings(form="10-K")
Get a company filing by accession_number company.get_filing(accession_number="0000320193-21-000139")
Get the company's financials company.financials
Get the company's balance sheet company.financials.get_balance_sheet
Get the company's income statement company.financials.get_income_statement
Get the company's cash flow statement company.financials.get_cash_flow_statement

Installation

pip install edgartools

Usage

Set your Edgar user identity

Before you can access the SEC Edgar API you need to set the identity that you will use to access Edgar. This is usually your name and email, or a company name and email but you can also just use an email.

Sample Company Name AdminContact@<sample company domain>.com

The user identity is sent in the User-Agent string and the Edgar API will refuse to respond to your request without it.

EdgarTools will look for an environment variable called EDGAR_IDENTITY and use that in each request. So, you need to set this environment variable before using it.

Setting EDGAR_IDENTITY in Linux/Mac

export EDGAR_IDENTITY="[email protected]"

Setting EDGAR_IDENTITY in Windows Powershell

 $Env:EDGAR_IDENTITY="[email protected]"

Alternatively, you can call set_identity which does the same thing.

from edgar import set_identity
set_identity("[email protected]")

For more detail see https://www.sec.gov/os/accessing-edgar-data

Usage

Importing edgar

from edgar import *

Use the Filing API when you are not working with a specific company, but want to get a list of filings.

For details on how to use the Filing API see Using the Filing API

You can use the company ticker or CIK to get a company.

c = Company("AAPL") # or Company("0000320193") or Company(320193)

AAPL

With the Company API you can find a company by ticker or CIK, and get the company's filings, facts and financials.

Company("AAPL")
        .get_filings(form="10-Q")
        .latest(1)
        .obj()

expe

See Using the Company API

Viewing and downloading attachments

Every filing has a list of attachments. You can view the attachments using filing.attachments

# View the attachments
filing.attachments

Filing attachments

You can access each attachment using the bracket operator [] and the index of the attachment.

# Get the first attachment
attachment = filing.attachments[0]

Filing attachment

You can download the attachment using attachment.download(). This will download the attachment to string or bytes in memory.

Data Objects

Now the reason you may want to download attachments is to get information contained in data files. For example, 13F-HR filings have attached infotable.xml files containing data from the holding report for that filing.

Fortunately, the library handles this for you. If you call filing.obj() it will automatically download and parse the data files into a data object, for several different form types. Currently, the following forms are supported:

Form Data Object Description
10-K TenK Annual report
10-Q TenQ Quarterly report
8-K EightK Current report
MA-I MunicipalAdvisorForm Municipal advisor initial filing
Form 144 Form144 Notice of proposed sale of securities
C, C-U, C-AR, C-TR FormC Form C Crowdfunding Offering
D FormD Form D Offering
3,4,5 Ownership Ownership reports
13F-HR ThirteenF 13F Holdings Report
NPORT-P FundReport Fund Report
EFFECT Effect Notice of Effectiveness
And other filing with XBRL XBRLData or XBRLInstance Container for XBRL data

For example, to get the data object for a 13F-HR filing you can do the following:

filings = get_filings(form="13F-HR")
filing = filings[0]
thirteenf = filing.obj()

Filing attachments

If you call obj() on a filing that does not have a data file, then it will return None.

Working with XBRL filings

Some filings are in XBRL (eXtensible Business Markup Language) format. These are mainly the newer filings, as the SEC has started requiring this for newer filings.

If a filing is in XBRL format then it opens up a lot more ways to get structured data about that specific filing and also about the company referred to in that filing.

The Filing class has an xbrl function that will download, parse and structure the filing's XBRL document if one exists. If it does not exist, then filing.xbrl() will return None.

The function filing.xbrl() returns an XBRLData instance if the XBRL files contain presentation information or XBRLInstance if it a simple instance document with just the facts. For more details see Parsing XBRL

filing_xbrl = filing.xbrl()

Filing homapage

Financials

Some filings, notably 10-K and 10-Q filings contain financial statements in XBRL format. You can get the financials from the XBRL data using the Financials class.

The Company object has a financials property that will return the financials for the company.

from edgar.financials import Financials

company = Company("AAPL")
financials = company.financials

You can also get the financials through the Tenk and TenQ data objects.

Here is an example that gets the latest Apple financials

tenk = Company("AAPL").get_filings(form="10-K").latest(1).obj()

financials = tenk.financials

financials.get_balance_sheet()                     # or financials.balance_sheet
financials.get_income_statement()                  # or financials.income
financials.get_cash_flow_statement()               # or financials.cashflow
financials.get_statement_of_changes_in_equity()    # or financials.equity
financials.get_statement_of_comprehensive_income() # or financials.comprehensive_income

Balance Sheet

Get the financial data as a pandas dataframe

Each of the financial statements - BalanceSheet, IncomeStatement and CashFlowStatement - have a get_dataframe() method that will return the data as a pandas dataframe.

balance_sheet_df = financials.get_balance_sheet().get_dataframe()

TenK (10-K) Data Object

For 10-K filngs the 10-K Data Object allows you to access almost any data related to the filing - both text and financial data.

c = Company("ORCL")
filing = c.get_filings(form="10-K").latest()
tenk = filing.obj()

You can also get it directly using the property latest_tenk on the Company object.

c = Company("ORCL")
c.latest_tenk

10K Data Object

Getting 10-K Items

You can get the text of individual sections of the 10-K filing using tge bracket [] operator.

tenk['Item 1']

There are also a few convenience methods to get the most common sections.

# Get Item 1 - Business
tenk.business

# Get Item 1A - Risk Factors
tenk.risk_factors

# Get Item 7 - Management's Discussion and Analysis
tenk.management_discussion

# Get Item 10 - Directors, Officers and Corporate Governance
tenk.directors_officers_and_governance

Downloading Edgar Data

The library is designed to make real time calls to EDGAR to get the latest data. However, you may want to download data for offline use or to build a dataset.

Download Bulk Company Data

You can download all the company filings and facts from Edgar using the download_edgar_data function. Note that this will store json files for each company of their facts and submissions, but it will not include the actual HTML or other attachments. It will however dramatically speed up loading companies by cik or ticker.

The submissions and facts bulk data files are each over 1.GB in size, and take around a few minutes each. The data is stored by default in the ~/.edgar directory. You can change this by setting the EDGAR_LOCAL_DATA_DIR environment variable.

def download_edgar_data(submissions: bool = True, facts: bool = True, reference: bool = True):
    """
    Download all the company data from Edgar
    :param submissions: Download all the company submissions
    :param facts: Download all the company facts
    :param reference: Download reference data
    """
download_edgar_data()

Using Bulk Data

If you want edgartools to use the bulk data files you can call use_local_storage() before you start making calls using the library. Alternatively, set EDGAR_USE_LOCAL_DATA to True in your environment.

Downsides of using bulk data

  • The filings downloaded for each company is limited to the last 1000
  • You will need to download the latest data every so often to keep it up to date.

Downloading Attachments

You can download attachments from a filing using the download method on the attachments. This will download all the attached files to a folder of your choice.

class Attachments:
    
    def download(self, path: Union[str, Path], archive: bool = False):
        """
        Download all the attachments to a specified path.
        If the path is a directory, the file is saved with its original name in that directory.
        If the path is a file, the file is saved with the given path name.
        If archive is True, the attachments are saved in a zip file.
        path: str or Path - The path to save the attachments
        archive: bool (default False) - If True, save the attachments in a zip file
        """ 
        ...
        
# Usage
filing.attachments.download(path)

Contributing

Contributions are welcome! We would love to hear your thoughts on how this library could be better at working with SEC Edgar.

Reporting Issues

We use GitHub issues to track public bugs. Report a bug by opening a new issue; it's that easy!

Making code changes

  • Fork the repo and create your branch from master.
  • If you've added code that should be tested, add tests.
  • If you've changed APIs, update the documentation.
  • Ensure the test suite passes.
  • Make sure your code lints.
  • Issue that pull request!

License

edgartools is distributed under the terms of the MIT license.

Contact

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