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The Lightweight Charts Jupyter extension

Project description

QCharts

A Jupyter stock charting extension built on TradingView Lightweight Charts. Create interactive candlestick charts, technical indicators, and volume charts in Jupyter Notebook via a Python API.

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Features

  • 6 Chart Types — Candlestick, Line, Area, Bar, Baseline, Histogram
  • Multi-Pane Support — Stack multiple panels in a single chart (main chart + volume + MACD + KDJ, etc.)
  • Built-in Technical Indicatorsadd_ma() Moving Averages, add_macd() MACD, add_kdj() KDJ
  • Volume — Auto-colored by up/down, compressed at the bottom of the candlestick pane
  • Trade Markers — Annotate buy/sell signals on the chart via set_markers()
  • Interactive Legend — Real-time OHLC, price change %, and volume on crosshair hover
  • Responsive Sizing — Fixed dimensions or auto-fill container

Installation

pip install qcharts
# or with uv
uv add qcharts

Dependencies:

  • Python >= 3.12
  • anywidget >= 0.11.0
  • pandas >= 3.0.3
  • JupyterLab >= 4.5 (for widget display)

Quick Start

import pandas as pd
from qcharts import Chart

# Load stock data
df = pd.read_csv("stock.csv", parse_dates=["date"])

# Create chart and set data
chart = Chart(height=400)
chart.set_stock_data(df, "603629")
chart  # Display in Jupyter

Usage Guide

1. Basic Candlestick + Volume

set_stock_data() creates candlestick and volume in one step:

chart = Chart(height=400)
chart.set_stock_data(df, "603629")
chart

Or build step by step:

chart = Chart(height=400)
chart.add_candles(df)                  # Candlestick
chart.add_volume(df, pane_name="vol")  # Volume (separate pane)
chart

DataFrame requirements: Must contain date (or time), open, high, low, close columns; volume also requires a volume column.

2. Moving Averages

add_ma() auto-detects columns matching prefix + number:

df_ma = df[["date", "close"]].copy()
df_ma["ma5"] = df_ma["close"].rolling(5).mean()
df_ma["ma10"] = df_ma["close"].rolling(10).mean()
df_ma["ma20"] = df_ma["close"].rolling(20).mean()

chart.add_ma(df_ma, prefix="ma")

Custom colors:

chart.add_ma(df_ma, prefix="ma", colors=["#2962FF", "#FF6D00", "#7B1FA2"])

3. MACD Indicator

add_macd() creates MACD line, signal line, and histogram (with 4-color auto styling):

ema12 = df["close"].ewm(span=12, adjust=False).mean()
ema26 = df["close"].ewm(span=26, adjust=False).mean()

df_macd = df[["date"]].copy()
df_macd["macd"] = ema12 - ema26
df_macd["signal"] = df_macd["macd"].ewm(span=9, adjust=False).mean()
df_macd["hist"] = df_macd["macd"] - df_macd["signal"]

chart.add_macd(df_macd)

DataFrame requirements: Must contain date (or time), macd, signal, hist columns.

4. KDJ Indicator

chart.add_kdj(df_kdj)

DataFrame requirements: Must contain date (or time), k, d, j columns.

5. Trade Signal Markers

markers = [
    {"time": 1704067200, "position": "belowBar", "shape": "arrowUp",
     "color": "#26a69a", "text": "Buy"},
    {"time": 1704153600, "position": "aboveBar", "shape": "arrowDown",
     "color": "#ef5350", "text": "Sell"},
]

# Get candlestick series and set markers
candle = chart.series["default_candlestick"]
candle.set_markers(markers)

Supported position: aboveBar, belowBar, inBar. Supported shape: arrowUp, arrowDown, circle, square, etc.

6. Multi-Pane Management

All series go into the main pane by default. Technical indicators (MACD, KDJ) auto-create new panes. You can also manage panes manually:

chart.add_pane("volume", label="Volume", height=20)
chart.add_volume(df, pane_name="volume")

chart.add_pane("rsi", label="RSI", height=15)
chart.add_line("rsi", pane_name="rsi", color="#7B1FA2")

height is a proportional weight (not pixels), controlling the relative height of each pane.

7. Chart Sizing

# Fixed size
chart = Chart(width=800, height=500)

# Auto-fill container
chart = Chart(auto_size=True)

# Resize dynamically
chart.set_size(width=1000, height=600)

8. Custom Styling

All add_* methods accept Lightweight Charts style options. Parameters support both snake_case and camelCase:

chart.add_line("ma20", color="#FF6D00", line_width=2, line_style=2)
chart.add_candlestick("kline", up_color="#ef5350", down_color="#26a69a",
                       border_visible=True)

Data Format

All methods accept either a pandas.DataFrame or a pre-formatted list[dict].

DataFrame Format

Method Required Columns
set_stock_data / add_candles date (or time), open, high, low, close
add_volume date (or time), volume, close, open
add_ma date (or time), ma{N} columns (e.g. ma5, ma10)
add_macd date (or time), macd, signal, hist
add_kdj date (or time), k, d, j

date / time columns support datetime64[ns], datetime64[us], datetime64[ms] precision and are auto-converted to Unix timestamps (seconds).

list[dict] Format

# Candlestick data
[{"time": 1704067200, "open": 10.0, "high": 10.5, "low": 9.8, "close": 10.3}]

# Line/Area data
[{"time": 1704067200, "value": 10.3}]

# Histogram data (per-bar color supported)
[{"time": 1704067200, "value": 12345, "color": "#ef535080"}]

API Reference

Chart(width=0, height=300, auto_size=False)

Method Description
set_stock_data(df, code) One-step candlestick + volume, sets pane label
add_candles(data, pane_name=None) Add candlestick series
add_volume(data, pane_name=None) Add volume histogram
add_ma(df, pane_name=None, prefix='ma', colors=None) Add moving averages
add_macd(data, pane_name='macd') Add MACD (line + signal + histogram)
add_kdj(data, pane_name='kdj') Add KDJ (K/D/J lines)
add_line(name, pane_name=None, color='#2962FF', **kwargs) Add line series
add_area(name, pane_name=None, **kwargs) Add area series
add_bar(name, pane_name=None, **kwargs) Add bar series
add_baseline(name, pane_name=None, **kwargs) Add baseline series
add_histogram(name, pane_name=None, **kwargs) Add histogram series
add_candlestick(name, pane_name=None, **kwargs) Add candlestick series (custom name)
add_pane(name, label=None, height=30) Add a new pane
get_pane(name) Get a pane object
set_size(width=0, height=300) Resize the chart

Series Methods

Each add_* method returns a Series object with:

Method Description
set_data(data) Update series data
set_markers(markers) Set trade markers

Development

# Python environment
uv sync

# JS build
cd js
pnpm install
pnpm run build        # Build ESM bundle
pnpm run dev          # Watch mode

# Formatting
cd js
pnpm run format       # Prettier formatting

After modifying JS code, rebuild with pnpm run build and restart the Jupyter kernel to see changes.

License

MIT

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