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https://github.com/dmidlo/histdata.com-tools
Multi-threaded/Multi-Process Downloader for Currency Exchange Rates from Histdata.com
https://github.com/dmidlo/histdata.com-tools
Last synced: 14 days ago
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Multi-threaded/Multi-Process Downloader for Currency Exchange Rates from Histdata.com
- Host: GitHub
- URL: https://github.com/dmidlo/histdata.com-tools
- Owner: dmidlo
- License: mit
- Created: 2022-03-23T12:05:31.000Z (over 2 years ago)
- Default Branch: main
- Last Pushed: 2024-02-08T00:13:17.000Z (9 months ago)
- Last Synced: 2024-08-31T18:39:03.275Z (2 months ago)
- Language: Python
- Size: 2.35 MB
- Stars: 11
- Watchers: 2
- Forks: 2
- Open Issues: 37
-
Metadata Files:
- Readme: README.md
- Changelog: CHANGELOG.md
- License: LICENSE
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README
# histdata.com-tools
A Multi-threaded/Multi-Process command-line utility and python ETL package that downloads currency exchange rates from Histdata.com. Imports to InfluxDB. Can be used in Jupyter Notebooks. Works on MacOS, Linux & Windows Systems.
**Requires Python3.10+****NEW:** Expanded API support!!!
[![Downloads](https://pepy.tech/badge/histdatacom)](https://pepy.tech/project/histdatacom) ![PyPI - License](https://img.shields.io/pypi/l/histdatacom) ![PyPI](https://img.shields.io/pypi/v/histdatacom) ![PyPI - Status](https://img.shields.io/pypi/status/histdatacom)
---
- [histdata.com-tools](#histdatacom-tools)
- [Disclaimer](#disclaimer)
- [Usage](#usage)
- [Show the Help and Options](#show-the-help-and-options)
- [Basic Use](#basic-use)
- [Available Formats](#available-formats)
- [CSV Dialect and Format Specifications](#csv-dialect-and-format-specifications)
- [Date Ranges](#date-ranges)
- ['Start' & 'Now' Keywords](#start-now-keywords)
- [Multiple Datasets](#multiple-datasets)
- [CPU Utilization](#cpu-utilization)
- [Import to InfluxDB](#import-to-influxdb)
- [influxdb.yaml](#influxdbyaml)
- [API - Other Scripts, Modules, & Jupyter Support](#api-other-scripts-modules-jupyter-support)
- [CLI Automation](#cli-automation)
- [Jupyter and External Scripts](#jupyter-and-external-scripts)
- [Full Script Example](#full-script-example)
- [Setup](#setup)
- [TLDR for all platforms](#tldr-for-all-platforms)
- [Vanilla Python Setup](#vanilla-python-setup)
- [Vanilla MacOS and Linux](#vanilla-macos-and-linux)
- [Vanilla Windows Powershell](#vanilla-windows-powershell)
- [Anaconda Setup](#anaconda-setup)
- [Anaconda MacOS and Linux](#anaconda-macos-and-linux)
- [Anaconda Windows using the Anaconda Prompt](#anaconda-windows-using-the-anaconda-prompt)
- [Data Table Installation Options](#datatable-installation-options)
- [Roadmap](#roadmap)---
## Disclaimer
**I am in no way affiliated with histdata.com or its maintainers. Please use this application in a way that respects the hard work and resources of histdata.com*
*If you choose to use this tool, it is **strongly** suggested that you head over to [http://www.histdata.com/download-by-ftp/](http://www.histdata.com/download-by-ftp/) and sign up to help support their traffic costs.*
*If you find this tool helpful and would like to support future development, I'm in need of caffeine, feel free to [buy me coffee!](https://www.buymeacoffee.com/dmidlo)*
---
## Usage
**Note #1**
The number one rule when using this tool is to be **MORE** specific with your input to limit the size of your request.**Note #2**
*histdatacom is a very powerful tool and has the capability to fetch the entire repository housed on histdata.com. This is **NEVER** necessary. If you are using this tool to fetch data for your favorite trading application, do not download data in all available formats.**It is likely the default behavior will be modified from its current state to discourage unnecessarily large requests.*
**please submit feature requests and bug reports using this repository's [issue tracker](https://github.com/dmidlo/histdata.com-tools/issues).*
### Show the help and options
```txt
histdatacom -h
``````txt
histdatacom -h
usage: histdatacom [-h] [-A] [-U] [--by BY] [--version] [-V] [-D] [-X] [-p PAIR [PAIR ...]] [-f FORMAT [FORMAT ...]] [-t TIMEFRAME [TIMEFRAME ...]] [-s START_YEARMONTH] [-e END_YEARMONTH] [-I] [-d] [-b BATCH_SIZE] [-c CPU_UTILIZATION]
[--data-directory DATA_DIRECTORY]options:
-h, --help show this help message and exitMode:
-V, --validate_urls Check generated list of URLs as valid download locations
-D, --download_data_archives
download specified pairs/formats/timeframe and create data files
-X, --extract_csvs histdata.com delivers zip files. Use the -X flag to extract them.Config:
-p PAIR [PAIR ...], --pairs PAIR [PAIR ...]
space separated currency pairs. e.g. -p eurusd usdjpy ...
-f FORMAT [FORMAT ...], --formats FORMAT [FORMAT ...]
space separated formats. -f metatrader ascii ninjatrader metastock
-t TIMEFRAME [TIMEFRAME ...], --timeframes TIMEFRAME [TIMEFRAME ...]
space separated Timeframes. -t tick-data-quotes 1-minute-bar-quotes
-s START_YEARMONTH, --start_yearmonth START_YEARMONTH
set a start year and month for data. e.g. -s 2000-04 or -s 2015-00
-e END_YEARMONTH, --end_yearmonth END_YEARMONTH
set a start year and month for data. e.g. -e 2020-00 or -e 2022-04Influxdb:
-I, --import_to_influxdb
import data to influxdb instance. Use influxdb.yaml to configure.
-d, --delete_after_influx
delete data files after upload to influxdb
-b BATCH_SIZE, --batch_size BATCH_SIZE
(integer) influxdb write_api batch size. defaults to 5000System:
-c CPU_UTILIZATION, --cpu_utilization CPU_UTILIZATION
"low", "medium", "high". High uses all available CPUs OR integer percent 1-200
--data-directory DATA_DIRECTORY
Directory Used to save data. default is "./data/"Info:
-A, --available_remote_data
list data retrievable from histdata.com
-U, --update_remote_data
update list of data retrievable from histdata.com
--by BY With -A, -U, to sort --by [pair_asc, pair_dsc, start_asc, start_dsc]
--version return current version of histdatacom.
```---
### Basic Use
#### Download and extract the current month's available EURUSD data for metatrader 4/5into the default data directory ./data
```sh
histdatacom -p eurusd -f metatrader -s now
```#### include the `-D` flag to download but NOT extract to csv
```sh
histdatacom -D -p usdcad -f metastock -s now
```---
#### Available Formats
The formats available are:
||
|-----------|
|metatrader|
|metastock|
|ninjatrader|
|excel|
|ascii|histdata.com provides different resolutions of time
depending on the format.The following format/timeframe combinations are available:
|||
|------------------|:-----------:|
|1-minute-bar-quotes|all formats|
|tick-data-quotes |ascii|
|tick-last-quotes|ninjatrader|
|tick-bid-quotes|ninjatrader|
|tick-ask-quotes|ninjatrader|##### CSV Dialect and Format Specifications
- *For Detailed specifications for the CSVs that the histdata.com repo provides see [histdata.com_data_specs.md](https://github.com/dmidlo/histdata.com-tools/blob/main/histdata.com_data_specs.md)*
##### To download 1-minute-bar-quotes for both metastock and excel
```sh
histdatacom -p usdjpy -f metastock excel -s now
```---
#### Date Ranges
date ranges are for year and month and can be specified in the following ways:
| [ -._] |
|-------|
|2022-04|
|"2202 04"|
|2202.04|
|2202_04|##### to fetch a single year's data, leave out the month
- note: unless you're fetching data for the current year, tick data types will fetch 12 files for each month of the year, 1-minute-bar-quotes will fetch a single OHLC file with the whole year's data.
```txt
histdatacom -p udxusd -f ascii -t tick-data-quotes -s 2011
```##### to fetch a single month's data, include a month, but do not use the `-e, --end_yearmonth` flag
- if you're requesting 1-minute-bar-quotes for any
year except the current year, you will receive the
the whole year's data
- this example leaves out the `-p --pair` flag, and will
fetch data for all 66 available instruments```txt
histdatacom -f metatrader -s 2012-07
```#### `Start` & `Now` Keywords
you may have noticed that two special year-month keywords exist
`start` and `now`- `start` may only be used with the `-s --start_yearmonth`
flag and the `-e --end_yearmonth` flag **must** be specified
to indicate a range of data```txt
histdatacom -p audusd -f metatrader -s start -e 2008-12
```- `now` used alone will return the current year-month
- when used with as `-s now` it will return the most current month's data```txt
histdatacom -p frxeur -f ninjatrader -s now
```in the above example, no `-t --timeframe` flag was specified. This will return all time resolutions available for the specified format(s)
`now` when used with the `-e --end_yearmonth` flag is intended to be the end of a range. Rather, if the flags were to be `-s 2019-04 -e now` the request would return data from April 2019-04 to the present.
```txt
histdatacom -p xagusd -f ascii -1-minute-bar-quotes -s 2019-04 -e now
```---
##### Multiple Datasets
##### multiple datasets can be requested in one command
this example with use the `-e --end_yearmonth` flag to request a range of data for multiple instruments.
- note: Large requests like these are to be avoided. remember to sign up with histdata.com to help them pay for network costs
```txt
histdatacom -p eurusd usdcad udxusd -f metatrader -s start -e 2017-04
```---
##### CPU Utilization
One can set a cap on CPU Utilization with `-c --cpu_utilization`
- available levels are, `"low"`,`"medium"`,`"high"`
- **OR**
- integer percent 1-200
eg. `-c 100` is equal to `-c high````sh
histdatacom -c medium -p udxusd -f metatrader -s 2015-04 -e 2016-04
```---
### Import to InfluxDB
To import data to an influxdb instance, use the `-I --import_to_influxdb` flag along with an `influxdb.yaml` file in the current working directory (where ever you are running the command from).
- ascii is the only format accepted for influxdb import.
- all histdata.com datetime data is in EST (Eastern Standard Time) with no adjustments for daylight savings.
- Influxdb does not adjust for timezone and all datetime data is recorded as UTC epoch timestamps (nano-seconds since midnight 00:00, January, 1st, 1970)
- this tool converts histdata.com ESTnoDST to UTC Epoch milli-second timestamps as part of the import-to-influx process```txt
histdatacom -I -p eurusd -f ascii -t tick-data-quotes -s start -e now
```#### influxdb.yaml
```yaml
# a sample influxdb.yaml file.
influxdb:
org: influx_org
bucket: data_bucket
url: influx_server_api_url
token: influx_user_token
```##### Download influxdb.yaml to your project's directory
```shell
curl "https://raw.githubusercontent.com/dmidlo/histdata.com-tools/main/influxdb.sample.yaml" --output influxdb.yaml
```---
### API - Other Scripts, Modules, & Jupyter Support
histdatacom also has an API to allow developers and to integrate the package into their own projects. It can be used in one of two ways; The first being a simple interface to automate CLI interaction. The second is as an interface to work with the data directly in a notebook environment like Jupyter Notebooks.
---
#### CLI Automation
##### First import the required modules
```python
import histdatacom
from histdatacom.options import Options
```##### Create and Initialize a new options object to pass parameters to histdatacom
```python
options = Options()
```##### Configure for CLI automation
To automate the CLI, simply include one of the boolean behavior flags: `options.validate_urls`, `options.download_data_archives`, `options.extract_csvs`, and `options.import_to_influxdb`
- Each behavior flag implies the use of the preceding flags.
- histdatacom is an ETL pipeline (extract, transform, load) and each step depends on the preceding steps in the pipeline.
- For the `CLI`, the order of operations are:
- validate urls
- download zip files from histdata.com
- extract the csv from the zip archive
- transform the ESTnoDST datetime to UTC Epoch `AND` upload to InfluxDB.```python
# options.validate_urls = True
# options.download_data_archives = True # implies validate
options.extract_csvs = True # implies validate and download
# options.import_to_influxdb = True # implies validate, download, and extract
options.formats = {"ascii"}
options.timeframes = {"tick-data-quotes"}
options.pairs = {"eurusd"}
options.start_yearmonth = "2021-04"
options.end_yearmonth = "now"
options.cpu_utilization = 100
```- when a behavior flag is included, `histdatacom` assumes it is being used for `CLI` automation **exclusively** and does **not** provide a return value.
at present, calling from another script or module is limited to using the `__name__=="__main__"` idiom.
```python
if __name__=="__main__":
histdatacom(options)
```***Jupyter may be used normally***
```python
histdatacom(options) # (Jupyter)
```---
#### Jupyter and External Scripts
As opposed to the `CLI` interface, one may wish to load data from histdata.com and work with it interactively (e.g. in a Jupyter notebook), or as part of a larger pipeline. To that end, histdatacom provides an option to specify a return type.
- return types can be:
- A `datatable` Frame
- a `pandas` dataframe
- in Apache `arrow` in-memory format- *to use `pandas` or `arrow` formats you must install the required packages*
- `pip install pandas`
- `pip install pyarrow`- ***All datetime is returned as milliseconds since January 1, 1970 (midnight UTC/GMT)***
##### Import the required modules
```python
import histdatacom
from histdatacom.options import Options
```##### Initialize a new options object to pass parameters to histdatacom
```python
options = Options()
```##### Jupyter & External Script Options
```python
options.api_return_type = "pandas" # "datatable", "pandas", or "arrow"
options.formats = {"ascii"} # Must be {"ascii"}
options.timeframes = {"tick-data-quotes"} # can be tick-data-quotes or 1-minute-bar-quotes
options.pairs = {"eurusd"}
options.start_yearmonth = "2021-04"
options.end_yearmonth = "now"
options.cpu_utilization = "high"
```- This example uses just one pair/instrument/symbol `eurusd` and just one timeframe `tick-data-quotes`. When the api is called with this 'one-one` specificity, the api will directly return the requested data.
- Regardless of the specified start_yearmonth and end_yearmonth, the resultant data will be sorted and merged into a single dataset.##### Pass the options to histdatacom and assign the return to a variable
```python
data = histdatacom(options) # (Jupyter)print(data)
print(type(data))
``````text
datetime bid ask vol
0 1617253200478 1.17243 1.17244 0
1 1617253206261 1.17246 1.17248 0
2 1617253206362 1.17247 1.17249 0
3 1617253206946 1.17247 1.17250 0
4 1617253207121 1.17249 1.17250 0
... ... ... ... ...
18648493 1650664783081 1.07968 1.08042 0
18648494 1650664783182 1.07968 1.08039 0
18648495 1650664790108 1.07964 1.08032 0
18648496 1650664790958 1.07947 1.08032 0
18648497 1650664794462 1.07947 1.08032 0[18648498 rows x 4 columns]
```
- When specifying more than one pair/symbol/instrument or timeframe, the api will return an ***list of dictionaries*** with references to the timeframe, pair, records used to create the data, and the merged data itself.
```python
options.api_return_type = "pandas"
options.formats = {"ascii"}
options.timeframes = {"1-minute-bar-quotes"}
options.pairs = {"eurusd","usdcad"}
options.start_yearmonth = "2021-01"
options.end_yearmonth = "now"
options.cpu_utilization = "75"
``````python
data = histdatacom(options) # (Jupyter)print(data)
print(type(data))
``````txt
[
{
'timeframe': 'M1',
'pair': 'EURUSD',
'records': [, ...],
'data':
datetime open high low close vol
0 1609711200000 1.22396 1.22396 1.22373 1.22395 0
1 1609711260000 1.22387 1.22420 1.22385 1.22395 0
2 1609711320000 1.22396 1.22398 1.22382 1.22382 0
3 1609711380000 1.22383 1.22396 1.22376 1.22378 0
4 1609711440000 1.22378 1.22385 1.22296 1.22347 0
... ... ... ... ... ... ...
484172 1650664440000 1.07976 1.08014 1.07976 1.08014 0
484173 1650664500000 1.08013 1.08021 1.07997 1.08000 0
484174 1650664560000 1.08000 1.08000 1.07956 1.07968 0
484175 1650664620000 1.07980 1.07980 1.07958 1.07968 0
484176 1650664680000 1.07980 1.07986 1.07963 1.07963 0[484177 rows x 6 columns]
},
{
'timeframe': 'M1',
'pair': 'USDCAD',
'records': [, ...],
'data':
datetime open high low close vol
0 1609711200000 1.27136 1.27201 1.27136 1.27201 0
1 1609711260000 1.27207 1.27241 1.27207 1.27220 0
2 1609711320000 1.27211 1.27219 1.27211 1.27219 0
3 1609711380000 1.27212 1.27261 1.27212 1.27261 0
4 1609711440000 1.27268 1.27268 1.27261 1.27261 0
... ... ... ... ... ... ...
483946 1650664440000 1.27121 1.27132 1.27114 1.27131 0
483947 1650664500000 1.27129 1.27137 1.27102 1.27106 0
483948 1650664560000 1.27107 1.27114 1.27098 1.27101 0
483949 1650664620000 1.27105 1.27105 1.27091 1.27091 0
483950 1650664680000 1.27091 1.27097 1.27073 1.27097 0[483951 rows x 6 columns]
}
]```
```python
print(data[0]['timeframe'], data[0]['pair'])
print(data[0]['data'])
print(type(data[0]['data']))
``````txt
M1 EURUSD
datetime open high low close vol
0 20210103 170000 1.22396 1.22396 1.22373 1.22395 0
1 20210103 170100 1.22387 1.22420 1.22385 1.22395 0
2 20210103 170200 1.22396 1.22398 1.22382 1.22382 0
3 20210103 170300 1.22383 1.22396 1.22376 1.22378 0
4 20210103 170400 1.22378 1.22385 1.22296 1.22347 0
... ... ... ... ... ... ...
484172 20220422 165400 1.07976 1.08014 1.07976 1.08014 0
484173 20220422 165500 1.08013 1.08021 1.07997 1.08000 0
484174 20220422 165600 1.08000 1.08000 1.07956 1.07968 0
484175 20220422 165700 1.07980 1.07980 1.07958 1.07968 0
484176 20220422 165800 1.07980 1.07986 1.07963 1.07963 0[484177 rows x 6 columns]
```
at present, calling from another script or module is limited to using the `__name__=="__main__"` idiom.
```python
if __name__=="__main__":
histdatacom(options)
```***Jupyter may be used normally***
```python
histdatacom(options) # (Jupyter)
```##### Full Script Example
```python
import histdatacom
from histdatacom.options import Options
from histdatacom.fx_enums import Pairsdef import_pair_to_influx(pair, start, end):
data_options = Options()data_options.import_to_influxdb = True # implies validate, download, and extract
data_options.delete_after_influx = True
data_options.batch_size = "2000"
data_options.cpu_utilization = "high"data_options.pairs = {f"{pair}"}# histdata_and_oanda_intersect_symbs
data_options.start_yearmonth = f"{start}"
data_options.end_yearmonth = f"{end}"
data_options.formats = {"ascii"} # Must be {"ascii"}
data_options.timeframes = {"tick-data-quotes"} # can be tick-data-quotes or 1-minute-bar-quotes
histdatacom(data_options)def get_available_range_data(pairs):
range_options = Options()
range_options.pairs = pairs
range_options.available_remote_data = True
range_options.by = "start_dsc"
range_data = histdatacom(range_options) # (Jupyter)
return range_datadef print_one_datatable_frame(pair, start=None, end=None):
options = Options()
options.api_return_type = "datatable"
options.pairs = {f"{pair}"}
options.start_yearmonth = "201501"
options.formats = {"ascii"}
options.timeframes = {"tick-data-quotes"}
return histdatacom(options)def main():
histdata_symbs = Pairs.list_keys()
# Oanda Symbols:
oanda_symbs = {"audcad","audchf","audhkd","audjpy","audsgd","audusd","cadhkd","cadjpy","cadsgd",
"chfhkd","chfjpy","euraud","eurcad","eurchf","eurgbp","eurhkd","eurjpy","eursgd","eurusd","gbpaud",
"gbpcad","gbpchf","gbphkd","gbpjpy","gbpsgd","gbpusd","hkdjpy","sgdchf","sgdhkd","sgdjpy","usdcad",
"usdchf","usdhkd","usdjpy","usdsgd","audnzd","cadchf","chfzar","eurczk","eurdkk","eurhuf","eurnok",
"eurnzd","eurpln","eursek","eurtry","eurzar","gbpnzd","gbppln","gbpzar","nzdcad","nzdchf","nzdhkd",
"nzdjpy","nzdsgd","nzdusd","tryjpy","usdcnh","usdczk","usddkk","usdhuf","usdmxn","usdnok","usdpln",
"usdsar","usdsek","usdthb","usdtry","usdzar","zarjpy"}histdata_and_oanda_intersect_symbs = histdata_symbs & oanda_symbs
pairs_data = get_available_range_data(histdata_and_oanda_intersect_symbs)
for pair in pairs_data:
start = pairs_data[pair]['start']
end = pairs_data[pair]['end']
import_pair_to_influx(pair, start, end)if __name__ == '__main__':
main()
```---
## Setup
### TLDR for all platforms
---
#### Install the latest version of datatable
- **this is a temporary fix until the datatable team updates PyPi. [See this issue](https://github.com/h2oai/datatable/issues/3268) for more details*
check out the section: [Data Table Installation Options](#datatable-installation-options) to either:
- [install a build wheel from Datatable's Appveyor CI/CD pipeline](#install-from-appveyor), or;
- [build from source](#build-from-source)---
#### Install histdatacom
```sh
pip install histdatacom
```to install latest development version
```sh
pip install git+https://github.com/dmidlo/histdata.com-tools.git
```---
#### Vanilla MacOS and Linux
##### Create a new project directory and change to it
```bash
mkdir myproject && cd myproject && pwd
```##### Create a Python Virtual Environment and activate it
```bash
python -m venv venv && source venv/bin/activate
```##### Confirm Python Path and Version
```bash
which python && python --version
```##### Build the latest version of datatable
follow the instructions from [Install the latest version of datatable](#install-the-latest-version-of-datatable)
##### Install the histdata.com-tools package from PyPi
```bash
pip install histdatacom
```##### Run `histdatacom` to view help message and Options
```bash
histdatacom -h
```---
#### Vanilla Windows Powershell
##### Launch a Powershell Terminal
- Run as Administrator (right-click on shortcut and click Run as Admin...)
##### Make sure python3.10 is in your system's executable path
```powershell
python --version
```- should be already set if you clicked the checkbox when installing python 3.10
- If not, you can run the following.
- you will need to relaunch powershell as admin.```powershell
[Environment]::SetEnvironmentVariable("Path", "$env:Path;C:\Program Files\Python310")
```##### Change the Execution Policy to Unrestricted
```powershell
Set-ExecutionPolicy Unrestricted -Force
```##### Create a new directory and change to it
```powershell
New-Item -Path ".\" -Name "myproject" -ItemType "directory"; Set-Location .\myproject\
```##### Create a Virtual Environment and activate it
```powershell
python -m venv venv; .\venv\Scripts\Activate.ps1
```##### Confirm Path and Version
```powershell
Get-Command python | select Source; python --version
```##### Build the latest version of datatable
follow the instructions from [Install the latest version of datatable](#install-the-latest-version-of-datatable)
##### Install histdata.com-tools package from PyPi
```powershell
pip install histdatacom
```##### Run `histdatacom` to view help message
```powershell
histdatacom -h
```---
#### Anaconda Setup
---
##### Anaconda MacOS and Linux
###### Create a Project Directory and Change to it
```shell
mkdir myproject && cd myproject && pwd
```###### Create a `Python 3.10` Anaconda environment with `conda` and activate it
```shell
conda create -n py310 python=3.10 && conda activate py310
```###### Check Python Path and Version
```shell
which python && python --version
```###### Build the latest version of datatable
follow the instructions from [Install the latest version of datatable](#install-the-latest-version-of-datatable)
###### Install histdatacom package from PyPi
```shell
pip install histdatacom
```###### Run histdatacom package to view help message
```shell
histdatacom -h
```---
##### Anaconda Windows using the Anaconda Prompt
###### Create a Directory and Change to it
```shell
mkdir myproject && cd myproject && echo %cd%
```###### Create a `Python 3.10` Anaconda environment with `conda` and activate it
```shell
conda create -n py310 python=3.10 && conda activate py310
```###### Check Python Path and Version
```shell
where python && python --version
```###### Build the latest version of datatable
follow the instructions from [Install the latest version of datatable](#install-the-latest-version-of-datatable)
###### Install histdatacom package from PyPi
```shell
pip install histdatacom
```###### Run histdatacom package to view help message
```shell
histdatacom -h
```---
### Datatable Installation Options
---
#### Install from Appveyor
Build wheels are pre-compiled versions of datatable, and would easily be the preferred route of installation while we wait for the datatable team to provide an official Python 3.10 package on PyPi. The only drawback is documenting the procedure as the wheel's URL expires monthly thus this documentation could go out of date rather quickly...
##### Activate Python Environment if you're using one
refer to the **Create a Python Virtual Environment and activate it** steps outlined for your platform
- [Vanilla MacOS and Linux](#vanilla-macos-and-linux)
- [Vanilla Windows Powershell](#vanilla-windows-powershell)
- [Anaconda MacOS and Linux](#anaconda-macos-and-linux)
- [Anaconda Windows using the Anaconda Prompt](#anaconda-windows-using-the-anaconda-prompt)##### Get the Build Wheel's URL for your platform
To find the latest build wheels for datatable, go to dataable's [Appveyor CI/CD Instance](https://ci.appveyor.com/project/h2oops/datatable):
- Select the Platform you're installing for:
- ![image](https://user-images.githubusercontent.com/1161295/175226383-5211e4f9-9718-4f0b-9c00-713067f62f02.png)
- Select `"Artifacts"` and right/option-click on the filename that contains `cp310`. e.g. `dist\datatable-1.1.0a2157-cp310-cp310-win_amd64.whl`
- Select `"Copy Link Address"` from your browser's context menu to copy the wheel's URL
- ![image](https://user-images.githubusercontent.com/1161295/175226442-ffcf8370-31bb-426c-a8e9-09ab29db91e0.png)##### Install datatable using pip with the wheel's URL from Appveyor
e.g. `pip install {https://APPVEYOR DATATABLE BUILD WHEEL URL.whl}`
---
#### Build from Source
- You will need a C++ compiler installed to build datatable from source
---
##### MacOS XCode Command Line Tools
- For **MacOS**, run `xcode-select --install` from your terminal and confirm the prompts for download and installation of the xcode command-line tools.
---
##### Windows MSVC C++ Compiler
- For **Windows**, you need to download and install the [Visual Studio Community Edition](https://visualstudio.microsoft.com/vs/community/) and choose the option `Desktop Development with C++`, then select install.
---
###### Launch the Visual Studio command line environment (for Windows only)
- Open either a `powershell`, `cmd`, or `Anaconda Prompt` terminal
- the setup scripts for the VS CLI environments are located in the `.\Common7\Tools\` directory of your Visual Studio installation directory
- e.g. `"C:\Program Files\Microsoft Visual Studio\2022\Community\Common7\Tools\"`
- Run the VS CLI environment setup script
- for **Powershell**:
- `PS> "C:\Program Files\Microsoft Visual Studio\2022\Community\Common7\Tools\Launch-VsDevShell.ps1"`
- for **CMD** and **Anaconda Prompt**:
- `> "C:\Program Files\Microsoft Visual Studio\2022\Community\Common7\Tools\LaunchDevCmd.bat"`---
###### Tell the datatable setup where to find the MSVC C++ compiler
- for **Powershell**:
- `PS> $env:DT_MSVC_PATH="$env:VSINSTALLDIR"+"VC\Tools\MSVC\"`
- for **CMD** and **Anaconda Prompt**:
- `set DT_MSVC_PATH=%VSINSTALLDIR%VC\Tools\MSVC\`---
###### Return to Your Project's Directory
The Visual Studio command line environment setup scripts change your directory, you'll need to find your way back to your project's directory. I like to use the variable `%USERPROFILE%` to save myself some typing:
*e.g.* `> cd %USERPROFILE%\Documents\projects\myproject`
---
##### Activate Python Environment if you're using one
refer to the **Create a Python Virtual Environment and activate it** steps outlined for your platform
- [Vanilla MacOS and Linux](#vanilla-macos-and-linux)
- [Vanilla Windows Powershell](#vanilla-windows-powershell)
- [Anaconda MacOS and Linux](#anaconda-macos-and-linux)
- [Anaconda Windows using the Anaconda Prompt](#anaconda-windows-using-the-anaconda-prompt)---
##### Install datatable
```shell
pip install git+https://github.com/h2oai/datatable
```---
## Roadmap
- [~~Add Support for Anaconda~~](https://github.com/dmidlo/histdata.com-tools/issues/28)
- [Implement MyPy static typing checking](https://github.com/dmidlo/histdata.com-tools/issues/16)
- [Implement UnitTesting with PyTest](https://github.com/dmidlo/histdata.com-tools/issues/9)
- [Create Binary Distributions](https://github.com/dmidlo/histdata.com-tools/issues/10)
- See about packaging for different operating systems
- deb/rpm packaging
- NuGet/Chocolatey
- MacPorts/Homebrew
- [docker image](https://github.com/dmidlo/histdata.com-tools/issues/11)
- [Create Down-sampling to Standard Candlestick Timeframes](https://github.com/dmidlo/histdata.com-tools/issues/18)
- [Fix terminate on ctrl-c multiprocessing KeyboardInterupt](https://github.com/dmidlo/histdata.com-tools/issues/15)
- [Look at replacing beautifulsoup with html parser](https://github.com/dmidlo/histdata.com-tools/issues/19)
- [Refactor to make use of globals more readable](https://github.com/dmidlo/histdata.com-tools/issues/14)
- [add -v -vv and -vvv flags](https://github.com/dmidlo/histdata.com-tools/issues/13)
- [Change Record statuses to Enum](https://github.com/dmidlo/histdata.com-tools/issues/20)
- [Add -S —set-status flag](https://github.com/dmidlo/histdata.com-tools/issues/21)
- [Create a central place for exceptions](https://github.com/dmidlo/histdata.com-tools/issues/22)
- Add the ability to import an order book to influxdb
- Add a --reset-cache flag to reset all or specified year-month range