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A lightweight Python library for python utilities for holidays, dates, options and other tools

Project description

ohlcutils

ohlcutils is a Python library designed for financial data analysis, focusing on OHLC (Open-High-Low-Close) data. It provides a comprehensive set of tools for calculating indicators, resampling data, and performing advanced market data transformations.


Features

  • Indicators: A wide range of technical indicators, including moving averages, beta calculations, trend analysis, and support/resistance levels.
  • Data Resampling: Flexible utilities for changing timeframes and aligning data.
  • Support and Resistance: Tools for identifying key levels in market data.
  • Beta and Ratio Adjustments: Functions for adjusting OHLC data based on benchmarks or beta values.
  • Supertrend and VWAP: Built-in implementations of popular trading indicators.
  • Charting: Interactive candlestick charts with support for multiple indicators and custom layouts using Plotly.

Installation

Clone the repository and install the required dependencies:

git clone https://github.com/your-repo/ohlcutils.git
cd ohlcutils
pip install -r requirements.txt

Modules Overview

Below is a list of available functions in each module. For detailed usage, use the help(function_name) command in Python.

indicators Module

  • align_dataframes_on_common_dates(dataframes)
  • calculate_beta(md, md_benchmark, columns={"close": "asettle"}, window=252)
  • calculate_ratio_bars(md, md_benchmark, columns={"open": "aopen", "high": "ahigh", "low": "alow", "close": "asettle"})
  • calculate_beta_adjusted_bars(md, md_benchmark, beta_days=252, columns={"open": "aopen", "high": "ahigh", "low": "alow", "close": "asettle"})
  • get_heikin_ashi(md, len2_ha=10)
  • degree_slope(md, window, columns=["asettle"], prefix="deg", method="simple")
  • average_band(md, size=100, ema=9, columns={"high": "ahigh", "low": "alow", "close": "asettle"})
  • trend(md, bars=1, columns={"high": "ahigh", "low": "alow"})
  • range_filter(md, per=100, mult=3, columns={"close": "asettle"})
  • t3ma(md, len=5, volume_factor=0.7, columns={"close": "asettle"})
  • bextrender(md, short_period=5, long_period=20, rsi_period=15, t3_ma_len=5, t3_ma_volume_factor=0.7, columns={"close": "asettle"})
  • vwap(md, periods=21, columns={"close": "asettle", "volume": "avolume"})
  • calc_rolling(x, periods, indicator, column_name="rolling")
  • hilega_milega(md, rsi_days=9, ma_days=21, ema_days=3, columns={"close": "asettle"})
  • supertrend(md, atr_period=14, multiplier=3.0, columns={"high": "ahigh", "low": "alow", "close": "asettle"})
  • calc_sr(md, columns={"high": "ahigh", "low": "alow"})
  • srt(md, days=124, columns={"close": "asettle"})

data Module

  • get_linked_symbols(short_symbol, complete=False)
  • get_split_info(short_symbol)
  • load_symbol(symbol, **kwargs)
  • change_timeframe(md, dest_bar_size, bar_start_time_in_min="15min", exchange="NSE", label="left", fill="ffill", ...)

charting Module

  • plot(df_list, candle_stick_columns, indicator_columns=None, ta_indicators=None, title="", max_x_labels=10, separate_y_axes=None)
    • Description: Plots an interactive candlestick chart using Plotly.
    • Features:
      • Supports multiple DataFrames and overlays.
      • Customizable indicators using pandas-ta.
      • Separate y-axes for specific indicators.
      • Simplified x-axis labels for better readability.

Example Usage

Calculate Beta

from ohlcutils.indicators import calculate_beta
import pandas as pd

# Load market data
md = pd.read_csv("market_data.csv", parse_dates=["date"], index_col="date")
md_benchmark = pd.read_csv("benchmark_data.csv", parse_dates=["date"], index_col="date")

# Calculate rolling beta
beta = calculate_beta(md, md_benchmark, columns={"close": "asettle"}, window=252)
print(beta)

Resample Data

from ohlcutils.data import change_timeframe

# Resample market data to 1-hour bars
resampled_data = change_timeframe(md, dest_bar_size="1H", exchange="NSE", label="left", fill="ffill")
print(resampled_data)

Plot Candlestick Chart

from ohlcutils.charting import plot
import pandas as pd

# Load market data
md = pd.read_csv("market_data.csv", parse_dates=["date"], index_col="date")

# Plot candlestick chart with indicators
plot(
    [md],
    candle_stick_columns={"open": "open", "high": "high", "low": "low", "close": "close", "volume": "volume"},
    ta_indicators=[
        {"name": "ema", "kwargs": {"length": 20}, "column_name": "ema_20", "target_column": "close"}
    ],
    title="Market Data Chart",
    separate_y_axes=["ema_20"],
)

License

This project is licensed under the MIT License. See the LICENSE file for details.

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