Metadata-Version: 2.1
Name: finta
Version: 0.4.4
Summary: Common financial technical indicators implemented in Pandas.
Home-page: https://github.com/peerchemist/finta
Author: Peerchemist
Author-email: peerchemist@protonmail.ch
License: LGPLv3+
Keywords: technical analysis,ta,pandas,finance,numpy,analysis
Platform: UNKNOWN
Description-Content-Type: text/markdown
Requires-Dist: numpy
Requires-Dist: pandas

# FinTA (Financial Technical Analysis)

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Common financial technical indicators implemented in Pandas.

*This is work in progress, bugs are expected and results of some indicators
may not be accurate.*

## Supported indicators:

Finta supports 76 trading indicators:

```
* Simple Moving Average 'SMA'
* Simple Moving Median 'SMM'
* Smoothed Simple Moving Average 'SSMA'
* Exponential Moving Average 'EMA'
* Double Exponential Moving Average 'DEMA'
* Triple Exponential Moving Average 'TEMA'
* Triangular Moving Average 'TRIMA'
* Triple Exponential Moving Average Oscillator 'TRIX'
* Volume Adjusted Moving Average 'VAMA'
* Kaufman Efficiency Indicator 'ER'
* Kaufman's Adaptive Moving Average 'KAMA'
* Zero Lag Exponential Moving Average 'ZLEMA'
* Weighted Moving Average 'WMA'
* Hull Moving Average 'HMA'
* Elastic Volume Moving Average 'EVWMA'
* Volume Weighted Average Price 'VWAP'
* Smoothed Moving Average 'SMMA'
* Moving Average Convergence Divergence 'MACD'
* Percentage Price Oscillator 'PPO'
* Volume-Weighted MACD 'VW_MACD'
* Elastic-Volume weighted MACD 'EV_MACD'
* Market Momentum 'MOM'
* Rate-of-Change 'ROC'
* Relative Strenght Index 'RSI'
* Inverse Fisher Transform RSI 'IFT_RSI'
* True Range 'TR'
* Average True Range 'ATR'
* Stop-and-Reverse 'SAR'
* Bollinger Bands 'BBANDS'
* Bollinger Bands Width 'BBWIDTH'
* Percent B 'PERCENT_B'
* Keltner Channels 'KC'
* Donchian Channel 'DO'
* Directional Movement Indicator 'DMI'
* Average Directional Index 'ADX'
* Pivot Points 'PIVOT'
* Fibonacci Pivot Points 'PIVOT_FIB'
* Stochastic Oscillator %K 'STOCH'
* Stochastic oscillator %D 'STOCHD'
* Stochastic RSI 'STOCHRSI'
* Williams %R 'WILLIAMS'
* Ultimate Oscillator 'UO'
* Awesome Oscillator 'AO'
* Mass Index 'MI'
* Vortex Indicator 'VORTEX'
* Know Sure Thing 'KST'
* True Strength Index 'TSI'
* Typical Price 'TP'
* Accumulation-Distribution Line 'ADL'
* Chaikin Oscillator 'CHAIKIN'
* Money Flow Index 'MFI'
* On Balance Volume 'OBV'
* Weighter OBV 'WOBV'
* Volume Zone Oscillator 'VZO'
* Price Zone Oscillator 'PZO'
* Elder's Force Index 'EFI'
* Cummulative Force Index 'CFI'
* Bull power and Bear Power 'EBBP'
* Ease of Movement 'EMV'
* Commodity Channel Index 'CCI'
* Coppock Curve 'COPP'
* Buy and Sell Pressure 'BASP'
* Normalized BASP 'BASPN'
* Chande Momentum Oscillator 'CMO'
* Chandelier Exit 'CHANDELIER'
* Qstick 'QSTICK'
* Twiggs Money Index 'TMF'
* Wave Trend Oscillator 'WTO'
* Fisher Transform 'FISH'
* Ichimoku Cloud 'ICHIMOKU'
* Adaptive Price Zone 'APZ'
* Vector Size Indicator 'VR'
* Squeeze Momentum Indicator 'SQZMI'
* Volume Price Trend 'VPT'
* Finite Volume Element 'FVE'
* Volume Flow Indicator 'VFI'
* Moving Standard deviation 'MSD'
* Schaff Trend Cycle 'STC'
```

## Dependencies:

-   python (3.4+)
-   pandas (0.21.1+)

TA class is very well documented and there should be no trouble
exploring it and using with your data. Each class method expects proper `ohlc` DataFrame as input.

## Install:

`pip install finta`

or latest development version:

`pip install git+git://github.com/peerchemist/finta.git`

## Import

`from finta import TA`

Prepare data to use with finta:

finta expects properly formated `ohlc` DataFrame, with column names in `lowercase`:
["open", "high", "low", "close"] and ["volume"] for indicators that expect `ohlcv` input.

### to resample by time period (you can choose different time period)
`ohlc = resample(df, "24h")`

### You can also load a ohlc DataFrame from .cvs file

`data_file = ("data/bittrex:btc-usdt.csv")`

`ohlc = pd.read_csv(data_file, index_col="date", parse_dates=True)`

____________________________________________________________________________

## Examples:

### will return Pandas Series object with the Simple moving average for 42 periods
`TA.SMA(ohlc, 42)`

### will return Pandas Series object with "Awesome oscillator" values
`TA.AO(ohlc)`

### expects ["volume"] column as input
`TA.OBV(ohlc)`

### will return Series with Bollinger Bands columns [BB_UPPER, BB_LOWER]
`TA.BBANDS(ohlc)`

### will return Series with calculated BBANDS values but will use KAMA instead of MA for calculation, other types of Moving Averages are allowed as well.
`TA.BBANDS(ohlc, TA.KAMA(ohlc, 20))`


For more examples see examples directory.

------------------------------------------------------------------------

I welcome pull requests with new indicators or fixes for existing ones.
Please submit only indicators that belong in public domain and are
royalty free.

## Contributing

1. Fork it (https://github.com/peerchemist/finta/fork)
2. Study how it's implemented.
3. Create your feature branch (`git checkout -b my-new-feature`).
4. Run [black](https://github.com/ambv/black) code formatter on the finta.py to ensure uniform code style.
5. Commit your changes (`git commit -am 'Add some feature'`).
6. Push to the branch (`git push origin my-new-feature`).
7. Create a new Pull Request.

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