Trading Cup and Handles With MarketSmith Pattern Recognition

Written by aliakh | Published 2021/06/16
Tech Story Tags: trading | pattern-recognition | stock-market | algorithmic-trading | trading-strategies | automated-trading | investing | stock-trading

TLDR The Cup With Handle pattern, developed by William O’Neil, is a technical indicator for identifying the continuation of a trend after a period of consolidation. It consists of an initial uptrend that’s ideally not too mature, a U-shaped move (cup), followed by another sharp and minor shake out (handle) The price, after a rally, starts to consolidate with a smooth slope but then bounces back to the previous highs as it faces support at lower price levels. The profit target is usually 20–25% above the initial resistance (pivot point), and the stop-loss range is 5–8% below that line.via the TL;DR App

The Cup With Handle pattern, developed by William O’Neil, is a technical indicator for identifying the continuation of a trend after a period of consolidation [1]. It consists of an initial uptrend that’s ideally not too mature, a U-shaped move (cup), followed by another sharp and minor shake out (handle). The price, after a rally, starts to consolidate with a smooth slope but then bounces back to the previous highs as it faces support at lower price levels.
When previous highs are touched, investors who bought shares before consolidation and other less committed investors sell their shares, pushing the price down for one last time. Eventually, the price reverses from a second support level (above the previous one) and breaks out of the resistance. Traders use different rules to identify Cup With Handle patterns and gauge their strength, but the base usually lasts 6–65 weeks with depths ranging from 8% to 50%. When trading Cup With Handles, the profit target is usually 20–25% above the initial resistance (pivot point), and the stop-loss range is 5–8% below that line [2].
Pattern Recognition, part of the IBD MarketSmith’s premium trading toolkit, identifies seven different chart patterns in daily and weekly time periods: Cup and Cup With Handle, Saucer and Saucer With Handle, Double Bottom, Flat Base, Ascending Base, Consolidation, and IPO Base. This article will focus on using Pattern Recognition API to identify and trade Cup With Handle patterns. To find more information about other properties of Pattern Recognition, check its user manual.

Prerequisites

A basic understanding of Python is required to get the most out of the article. We’ll use pydantic to validate and serialize data, zipline-reloaded and pyfolio to backtest the strategy, pandas to load and access data, python-dotenv to read environment variables, yfinance to fetch benchmark price data, and requests to make API calls. A premium MarketSmith account is required to access Pattern Recognition. Symbols data and a list of Dow Jones Industrial Average (DJIA) constituents will be fetched from Financial Modeling Prep (FMP) v3 API. To retrieve the historical price data of the constituents, you need to ingest a zipline data bundle.
Please make sure to use the following versions:
  • python 3.6.12
  • pyfolio 0.8.0
  • pandas 0.22.0
  • matplotlib 3.0.3
  • numpy 1.19.5
Alternatively, you need to follow this answer and update a line at pyfolio source code to work with the latest stack.

Load and Store Data

DJIA Constituents
With a free FMP account, we can access the list of DJIA names from this endpoint. First of all, create src/price/endpoints.py to store the FMP endpoints.
# src/price/endpoints.py

DJIA_CONSTITUENTS = "https://financialmodelingprep.com/api/v3/dowjones_constituent"
NASDAQ100_CONSTITUENTS = "https://financialmodelingprep.com/api/v3/nasdaq_constituent"
Define
Constituent
model to serialize data received from FMP API.
# src/models/constituent.py

from typing import Union

from pydantic import BaseModel


class Constituent(BaseModel):
    """Represents a ticker received from FMP API when retrieving constituents of an index; see `price.load_tickers` method."""
    symbol: str
    name: str
    sector: str
    subSector: str
    headQuarter: Union[str, None]
    dateFirstAdded: str
    cik: Union[str, None]
    founded: Union[str, None]
Define
load_tickers
to fetch and store data.
# src/price/ticker.py

import os
import csv
from typing import List

import requests
from dotenv import load_dotenv
from pydantic import parse_obj_as

from src.price.endpoints import NASDAQ100_CONSTITUENTS, DJIA_CONSTITUENTS
from src.models import Constituent

load_dotenv()


def load_tickers(endpoint: str, api_key: str = os.environ["FMP_API_KEY"]) -> None:
    """Fetches and loads list of tickers to `data/ticker.csv` file. Uses FMP API to get the latest data and requires `FMP_API_KEY` env variable to be set. Fetches the data from the passed endpoint."""
    params = {"apikey": api_key}
    res = requests.get(endpoint, params=params)
    res = res.json()

    # parse and validate data
    tickers = parse_obj_as(List[Constituent], res)

    # write data to file
    tickers = [constituent.dict() for constituent in tickers]
    keys = tickers[0].keys()
    with open("data/tickers.csv", 'w', newline='') as output_file:
        dict_writer = csv.DictWriter(output_file, keys)
        dict_writer.writeheader()
        dict_writer.writerows(tickers)


if __name__ == "__main__":
    load_tickers(DJIA_CONSTITUENTS)
We first load the
FMP_API_KEY
environment variable, pass it to the endpoint defined in
constants.py 
and convert the response to a dictionary by calling the 
.json()
method. We then use Pydantic’s
parse_obj_as
utility method to serialize response into a list of
Constituent
instances. In the end, the data is converted back to a list of dictionaries to be stored in data/tickers.csv .
Make sure to store the
FMP_API_KEY
key in the .env file and set it to the key you received from the FMP dashboard. Now we can dispatch
load_tickers
from the command line. If it runs properly, we’ll have a CSV file similar to the image below.
Cup With Handle Data
We should now load the history of Cup With Handle patterns for all symbols in data/tickers.csv . Let’s first define the MarketSmith endpoints we’re going to call.
# src/ms/endpoints.py

GET_LOGIN = "https://login.investors.com/accounts.login"

HANDLE_LOGIN = "https://myibd.investors.com/register/raas/loginhandler.aspx"

SEARCH_INSTRUMENTS = "https://marketsmith.investors.com/mstool/api/chart/search-instruments"

GET_PATTERNS = "https://marketsmith.investors.com/WONServices/MSPatternRec/MSPatternRec.svc/json/getPatterns"

GET_USER_INFO = "https://marketsmith.investors.com/mstool/api/tool/user-info"
AuthSession
class passes environment variables to IBD API to generate an authenticated session.
# src/ms/auth.py

import os
import json

from requests import Session
from dotenv import load_dotenv

from src.ms.endpoints import HANDLE_LOGIN, GET_LOGIN

load_dotenv()


class AuthSession:
    def __init__(self,
                 username: str = os.environ["USERNAME"],
                 password: str = os.environ["PASSWORD"],
                 api_key: str = os.environ["API_KEY"],
                 include: str = "profile,data,"
                 ):
        """Generates a session authenticated into MarketSmith"""
        session = Session()

        payload = {
            "loginID": username,
            "password": password,
            "ApiKey": api_key,
            "include": include,
            "includeUserInfo": "true"
        }

        # make auth payload accessible to class consumers
        self.payload = payload

        # make a request to GET_LOGIN endpoint to get login info
        login = session.post(GET_LOGIN, data=payload).json()
        login["action"] = "login"

        # pass the login info to HANDLE_LOGIN endpoint to get .ASPXAUTH cookies
        res = session.post(HANDLE_LOGIN, json=login)

        self.session = session
It first sends the user credentials to
GET_LOGIN
endpoint to receive the user object, which then will be passed (along with an extra action key) to
HANDLE_LOGIN
 . The response includes the necessary Set-Cookie headers to authenticate the session for future requests. Don’t forget to define
USERNAME
 ,
PASSWORD
 , and
API_KEY
values (according to your MarketSmith account credentials) in .env .
Before fetching patterns, we need to load
Instrument
and
User
objects. Let’s start with the latter. Define the
User
model to serialize the object we’ll receive from the MarketSmith backend.
# src/models/user.py

from pydantic import BaseModel


class User(BaseModel):
    """Represents a MarketSmith `User` object"""
    CSUserID: int
    DisplayName: str
    EmailAddress: str
    IsSpecialAccount: bool
    RemainingTrialDays: int
    SessionID: str
    UserDataInitializationFailed: bool
    UserEntitlements: str
    UserID: int
    UserType: int
get_user
method receives an authenticated session and returns the authenticated user information.
# src/ms/user.py

from pydantic import validate_arguments

from src.ms.auth import AuthSession
from src.ms.endpoints import GET_USER_INFO
from src.models import User


@validate_arguments(config=dict(arbitrary_types_allowed=True))
def get_user(session: AuthSession) -> User:
    """Gets information of the authenticated user in a session"""
    response = session.session.get(GET_USER_INFO)
    user = User(**response.json())
    return user
validate_arguments
decorator parses and validates arguments before the function is called.
arbitrary_types_allowed
parses arguments with an instance that don’t extend pydantic
BaseModel
class (in this case, an
AuthSession
instance).
It’s time to load instrument data from MarketSmith. MS API passes dates with this format:
/Date(1536303600000–0700)/
–the first number is the date in milliseconds since the epoch, and the second number is the timezone difference with GMT.
convert_msdate_to_date
method converts MS API date strings to the built-in
datetime.date
object.
# src/ms/utils.py

def convert_msdate_to_date(ms_date: str) -> date:
    """Converts date string passed by MarketSmith API to `date` object
    Parameters
    ----------
    ms_date : `str`
        e.g., "/Date(1536303600000-0700)/"
    Returns
    -------
    `date`
    Raises
    -------
    `ValueError`
        Invalid input type
    """
    try:
        str_btwn_paranthesis = ms_date[ms_date.find("(")+1:ms_date.find(")")]

        if(str_btwn_paranthesis[0] == "-"):
            millis = int(str_btwn_paranthesis.split("-")[1]) * -1
        else:
            millis = int(str_btwn_paranthesis.split("-")[0])

        date_obj = date.fromtimestamp(millis/1000)
        return date_obj

    except TypeError:
        raise ValueError(
            "Invalid date received from MS. Must be like /Date(1536303600000-0700)/")
Nice. Now, use the method in the
Instrument
class to convert the dates during validation.
# src/models/instrument.py

from datetime import date

from pydantic import BaseModel, validator


class Instrument(BaseModel):
    """Represents a financial `Instrument` object passed by MarketSmith API"""
    mSID: int
    type: int
    instrumentID: int
    symbol: str
    name: str
    earliestTradingDate: date
    latestTradingDate: date
    hasComponents: bool
    hasOptions: bool
    isActive: bool

    @validator("earliestTradingDate", "latestTradingDate", pre=True, always=True)
    def validate_date(cls, v):
        from src.ms.utils import convert_msdate_to_date
        return convert_msdate_to_date(v)
And fetch the instruments.
# src/ms/instrument.py

import logging

from pydantic import validate_arguments

from src.ms import AuthSession
from src.ms.endpoints import SEARCH_INSTRUMENTS
from src.models import Instrument


@validate_arguments(config=dict(arbitrary_types_allowed=True))
def get_instrument(session: AuthSession, symbol: str) -> Instrument:
    """Given a symbol (ticker), gets the corresponding `Instrument` from MarketSmith API
    Parameters
    ----------
    session : `AuthSession`
        authenticated session
    symbol : `str`
        ticker of Instrument
    Raises
    ----------
    `AssertionError`
        if the length of search results for the ticker is more than one
    Returns
    -------
    `Instrument`
    """
    # search in instruments
    search_results = session.session.post(
        SEARCH_INSTRUMENTS, json=symbol)
    search_results = search_results.json()["content"]

    # in search results, find the exact match
    instrument = list(filter(
        lambda result: result['symbol'] == symbol, search_results))

    # there shouldn't be less or more than 1 exact match
    try:
        assert len(instrument) == 1
    except AssertionError:
        logging.error(
            f"Only 1 exact match should be found. Found {len(instrument)}")
        raise

    instrument = Instrument(**instrument[0])
    return instrument
get_instrument
searches for a symbol in the MarketSmith database and then looks for an exact match in search results. If the number of exact matches for the symbol is not one, it raises
AssertionError
 . In the end, it serializes the received dictionary into an
Instrument
instance.
We’re getting to the meat of the matter. Let’s load, parse, and store Cup With Handle patterns. First, define a model to serialize the data.
# src/models/pattern.py

from typing import Literal, List, Optional
from datetime import date

from pydantic import BaseModel, validator


class CupWithHandle(BaseModel):
    """Represents a cup with handle pattern object passed by MarketSmith API"""
    baseID: int
    baseStartDate: date
    baseEndDate: date
    baseNumber: int
    baseStage: str
    baseStatus: int
    pivotPriceDate: date
    baseLength: int
    periodicity: int
    versionID: str
    leftSideHighDate: date
    patternType: int
    firstBottomDate: date
    handleLowDate: date
    handleStartDate: date
    cupEndDate: date
    UpBars: int
    BlueBars: int
    StallBars: int
    UpVolumeTotal: int
    DownBars: int
    RedBars: int
    SupportBars: int
    DownVolumeTotal: int
    BaseDepth: float
    AvgVolumeRatePctOnPivot: float
    VolumePctChangeOnPivot: float
    PricePctChangeOnPivot: float
    HandleDepth: float
    HandleLength: int
    CupLength: int

    @validator("baseStartDate", "baseEndDate", "pivotPriceDate", "leftSideHighDate", "firstBottomDate", "handleLowDate", "handleStartDate", "cupEndDate", pre=True, always=True)
    def validate_date(cls, v):
        from src.ms.utils import convert_msdate_to_date
        return convert_msdate_to_date(v)
Next, we need a few methods to handle the extraction and storage of patterns.
# src/ms/pattern.py

import json
from typing import Literal, List
import csv

from pydantic import validate_arguments, BaseModel

from src.ms import AuthSession, get_instrument, get_user
from src.models import Instrument, User, CupWithHandle
from src.ms.endpoints import GET_PATTERNS


@validate_arguments(config=dict(arbitrary_types_allowed=True))
def get_patterns(instrument: Instrument, user: User, session: AuthSession, start: int, end: int) -> dict:
    """Gets all patterns for an instrument in a given period
    Parameters
    ----------
    instrument : `Instrument`
        Instrument object of the target name
    user : `User`
        Authenticated user
    session : `AuthSession`
        Authenticated session
    start : `int`
        Start in millis
    end : `int`
        End in millis
    Returns
    -------
    `dict`
    """
    start_date = f"/Date({start})/"
    end_date = f"/Date({end})/"
    payload = {
        "userID": user.UserID,
        "symbol": instrument.symbol,
        "instrumentID": instrument.instrumentID,
        "instrumentType": instrument.type,
        "dateInfo": {
            "startDate": start_date,
            "endDate": end_date,
            "frequency": 1,
            "tickCount": 0
        }
    }
    res = session.session.post(GET_PATTERNS, json=payload)
    res = res.json()
    return res


def flattern_pattern_properties(patterns: List[dict]) -> List[dict]:
    """Each received Pattern instance from MS includes a `properties` field, which is a list of dictionaries w/ the `Key` and `Value` fields and containts extra properties of the pattern. This method flattens Pattern instance by adding removing `properties` field and adding its keys as separate fields of instance.
    Parameters
    ----------
    patterns : `List[dict]`
        list of patterns fetched from MS
    Returns
    -------
    `List[dict]`
        flattened patterns
    """
    # add properties field as separate keys
    pattern_properties = [pattern.pop("properties", None)
                          for pattern in patterns]
    for index, props in enumerate(pattern_properties):
        for prop in props:
            patterns[index][prop["Key"]] = prop["Value"]

    return patterns


def filter_cup_with_handles(patterns) -> List[CupWithHandle]:
    """Given the response object of `GET_PATTERNS` endpoint, filters cup with handle patterns from it
    Parameters
    ----------
    patterns : `object`
        response of `GET_PATTERNS` endpoint
    Returns
    -------
    List[CupWithHandle]
        list of cup with handles patterns
    """
    # cups w/ or w/o a handle
    cups: List[CupWithHandle] = patterns.get("cupWithHandles", None)
    if(cups == None):
        return

    # cups w/ handle
    cup_with_handles = [cup
                        for cup in cups
                        if cup["patternType"] == 1]
    cup_with_handles = flattern_pattern_properties(cup_with_handles)
    cup_with_handles = [CupWithHandle(**cup) for cup in cup_with_handles]

    return cup_with_handles


def store_patterns(patterns: List[BaseModel], ticker: str) -> None:
    """Stores a given list of patterns to `data/patterns.csv`
    Parameters
    ----------
    patterns : `List[BaseModel]`
        list of pydantic models (records) of the patterns to be stored
    ticker : `str`
        ticker that the data belongs to
    """
    filepath = "data/patterns.csv"

    # convert to dict
    patterns = [{**pattern.dict(), "symbol": ticker}for pattern in patterns]
    keys = patterns[0].keys()

    # check if is empty
    with open(filepath, "r") as patterns_file:
        csv_dict = [row for row in csv.DictReader(patterns_file)]
        is_empty = len(csv_dict) == 0

    with open(filepath, 'a') as patterns_file:
        dict_writer = csv.DictWriter(patterns_file, keys)
        is_empty and dict_writer.writeheader()
        dict_writer.writerows(patterns)
get_patterns
makes a request to the patterns endpoints and receives all chart patterns for an instrument during a certain period. Note that if you want to get patterns for the weekly chart, set
frequency
value in the payload to 2. 
MarketSmith passes
properties
attribute with the instrument object that includes the instrument’s custom properties as a list. Since we only care about Cup With Handle patterns, and they share the same properties, we use
flattern_pattern_properties
to flatten the object by removing
properties
key and adding the elements of its list value to our initial instrument object.
filter_cup_with_handles
receives a list of pattern objects and returns Cup With Handle patterns amongst them. One “gotcha” with this method is that MS passes all cup patterns under
cupWithHandles
key, but only those with a
patternType
of 1 are Cup With Handles.
Finally,
store_patterns
receives a list of pattern instances and appends them to a local CSV file. Now, call the method with the required arguments.
To wrap things up, let's write some controller functions to orchestrate all the previously defined methods. But first, define a utility function to serialize CSV records.
# src/ms/utils.py

# ...

def convert_csv_to_records(filepath: str, klass: BaseModel) -> List[BaseModel]:
    """Converts a CSV file to a list of models
    Parameters
    ----------
    filepath : `str`
        filepath of CSV file
    klass : `BaseModel`
        pydantic model to use for serializing the CSV records
    Returns
    -------
    `List[BaseModel]`
        serialized CSV records
    """
    with open(filepath) as f:
        records = [
            klass(**{k: v for k, v in row.items()})
            for row in csv.DictReader(f, skipinitialspace=True)]
        return records
convert_csv_to_records
reads rows of a CSV file and serializes them with a pydantic model. We’ll later use it to read and parse the data in the tickers.csv file.
# src/ms/controller.py

from datetime import datetime
import logging
from typing import List

import src.ms as ms
from src.ms.utils import convert_csv_to_records
from src.models import Constituent
from src.ms.pattern import filter_cup_with_handles

logging.basicConfig(level=logging.INFO)


def extract_patterns(ticker: str, filter_method: callable, start: int, end: int, session=ms.AuthSession()) -> list:
    """Extracts a set of patterns, given a filter method, from MarketSmith API
    Parameters
    ----------
    ticker : `str`
        symbol of Instrument to get the data for
    filter_method : callable
        method that filters target patterns from `GET_PATTERNS` endpoint response
    start : `int`
        start date in millis
    end : `int`
        end date in millis
    session : `AuthSession`, optional
        authenticated session, by default ms.AuthSession()
    Returns
    -------
    `list`
        List of filtered patterns
    """
    user = ms.get_user(session)
    instrument = ms.get_instrument(session, ticker)
    patterns = ms.get_patterns(instrument, user, session, start, end)
    filtered_patterns = filter_method(patterns)
    return filtered_patterns


def extract_n_store_cup_with_handles(start: int, end: int, tickers: List[Constituent]) -> None:
    """Loads tickers from `data/tickers.csv`, calls `extract_patterns` for each ticker to load Cup With Handle patterns, and then stores them in `data/patterns.csv
    Parameters
    ----------
    start : `int`
        start date in millis
    end : `int`
        end date in millis
    """
    for ix, ticker in enumerate(tickers):
        logging.info(f"Fetching data for {ticker.symbol}")
        logging.info(f"{ix}/{len(tickers)}")
        patterns = extract_patterns(
            ticker=ticker.symbol, filter_method=filter_cup_with_handles, start=start, end=end)
        ms.store_patterns(patterns=patterns, ticker=ticker.symbol)

        logging.info("––––––––––––––")
extract_patterns
receives a ticker, a filter method for a pattern type, start and end dates, and an authenticated session. It then orchestrates other methods to fetch and serialize filtered patterns.
extract_n_store_cup_with_handles
accepts the start and end dates in milliseconds since the epoch with a list of
Constituent
objects, retrieves Cup with Handle patterns for them, and stores those patterns in data/patterns.csv file. Now, call the method with the required arguments.
# src/ms/controller.py

tickers: List[Constituent] = convert_csv_to_records(
        "data/tickers.csv", Constituent)

dt_to_milli = lambda dt: datetime.timestamp(dt) * 1000
start = dt_to_milli(datetime(2018, 1, 1))
end = dt_to_milli(datetime(2020, 1, 1))

extract_n_store_cup_with_handles(start, end, tickers)
Awesome! We’re done with the data collection part. Let’s define a trading algorithm based on these patterns and evaluate the results.

Strategy

Create a Jupyter Notebook to develop, backtest, and analyze the strategy. First, import the requirements.
from datetime import datetime

import pandas as pd
import zipline as zp
import yfinance as yf
import pyfolio as pf
The algorithm, at each tick, loops through patterns, and if all of the following conditions are met, orders the asset:
  • The current date has passed the
    handleLowDate
    property of the object, but not by more than 30 days;
  • The current price has broken out of the pivot price level (the second high of the cup) by more than 1%;
  • The 50-day simple moving average (SMA) is above the 200-day SMA.
The algorithm subsequently closes a position in any of these situations:
  • The trade generated 15% profit or more;
  • The trade led to a loss of 5% or more;
  • Twenty-one days or more have been passed since the opening of the position.
We use SPY (S&P 500 Trust ETF) returns as the benchmark, run the algorithm from 2016 to 2018, and use ten million dollars of capital. Let’s store all these parameters in a cell to facilitate tweaking or optimizing them.
WATCHLIST_WINDOW_DAYS = 30
ABOVE_PIVOT_PCT = 1.01
TAKE_PROFIT_PCT = 1.15
STOP_LOSS_PCT = .95
PATIENCE_WINDOW_DAYS = 21
START = datetime(2016, 1, 1)
END = datetime(2018, 1, 1)
BENCHMARK = "SPY"
SHORT_MA_LEN = 50
LONG_MA_LEN = 200
CAPITAL_BASE = 10000000
Before defining the logic, we need a utility function that adds timezone information to date columns of a dataframe, which allows us to compare dates in the patterns.csv file to zipline built-in dates.
def convert_date_cols(df: pd.DataFrame) -> pd.DataFrame:
    """Given a dataframe, adds UTC timezone to all columns that have date in their names."""
    for col in df.columns:
        if("date" in col.lower()):
            df[col] = pd.to_datetime(df[col]).dt.tz_localize("UTC")
    return df
Zipline requires two functions:
initialize
and
handle_data
. The former sets up the backtesting context by receiving an argument and adding global variables to it. The latter gets called at each ticker and accepts two arguments–
context
(the global variables) and
data
that includes the information specific to the current tick–and makes trades based on the current market conditions. By hiding future price data, zipline ensures that there’s no look-ahead bias in the logic.
def initialize(context):
    # avoid out of bounds error by dropping firstBottomDate col
    patterns = pd.read_csv("data/patterns.csv").drop(["firstBottomDate"], axis=1)
    patterns = convert_date_cols(patterns)
    context.patterns = patterns

    tickers = pd.read_csv("data/tickers.csv")
    tickers = convert_date_cols(tickers)
    context.stocks = [zp.api.symbol(ticker) for ticker in tickers.symbol]

    context.position_dates = {}
Note that
zipline.api.symbol
method receives a ticker and returns the corresponding
Equity
object.
def handle_data(context, data):
    current_dt = zp.api.get_datetime()

    prices = data.history(context.stocks, "price", bar_count=200, frequency="1d")
    
    # look for new trades
    for ix, pattern in context.patterns.iterrows():
        # skip if asset is already in portfolio
        open_positions = set(context.portfolio.positions.keys())
        symbol = zp.api.symbol(pattern["symbol"])
        is_open = symbol in open_positions
        if(is_open): continue

        # check date window from handleLowDate to N days after
        is_in_window = (pattern["handleLowDate"] <= current_dt) and (pattern["handleLowDate"] >= (current_dt - pd.DateOffset(WATCHLIST_WINDOW_DAYS)))
        if (not is_in_window): continue
        
        # get symbol and price history
        price_history = prices[symbol]

        # check price above pivot
        pivot_price_date = pattern["pivotPriceDate"]
        try:
            pivot_price = price_history[pivot_price_date]
        except KeyError:
            pivot_price = None
        
        current_price = data.current(symbol, "price")
        if(current_price / pivot_price < ABOVE_PIVOT_PCT): continue

        # check short MA above long MA
        short_ma = price_history.tail(SHORT_MA_LEN).mean()
        long_ma = price_history.tail(LONG_MA_LEN).mean()
        if(long_ma > short_ma): continue

        # add new position and update previous ones
        open_positions.add(symbol)
        target_pct = 1 / len(open_positions)
        for position in open_positions:
            zp.api.order_target_percent(position, target_pct)
        context.position_dates[symbol] = current_dt
    
    # look for closing positions
    open_positions = context.portfolio.positions
    for position in open_positions.values():
        current_price = position.last_sale_price
        buy_price = position.cost_basis
        should_take_profit = (current_price / buy_price) > TAKE_PROFIT_PCT
        should_stop_loss = (current_price / buy_price) < STOP_LOSS_PCT
        does_exceed_patience = (current_dt - pd.DateOffset(PATIENCE_WINDOW_DAYS)) >= context.position_dates[position.asset]
        should_close_position = should_take_profit or does_exceed_patience or should_stop_loss
        if(should_close_position): zp.api.order_target_percent(position.asset, 0)
First,
data.history
loads the price data of the stocks list for the past 200 trading days. Then the method loops through patterns and finds the instances that satisfy all the requirements and are not already in the portfolio. When opening a new position, the capital is re-allocated equally amongst all positions, using
zp.api.order_target_percent
. The code stores the current date in
context.position_dates
dictionary for future reference. Finally, it loops over open positions and, if any sell requirements are satisfied, sells the asset.
Almost done. Define a method to fetch benchmark price data from yfinance and process it to the acceptable pyfolio format (a pandas Series with date index).
def get_benchmark_returns() -> pd.Series:
    bench = yf.Ticker(BENCHMARK)
    bench_hist = bench_hist.history(start=START, end=END, auto_adjust=True).tz_localize("UTC")
    returns = pd.Series(bench_hist["Close"].pct_change().values, index=bench_hist.index).dropna()
    returns.index.names = ["date"]
    return returns
Note that returns are calculated by calling the
pct_change
method on the
Close
column of the price history dataframe. Now we need to handle the analysis of the algorithm.
def analyze(perf: pd.DataFrame, bench: pd.Series) -> None:
    returns, positions, transactions = pf.utils.extract_rets_pos_txn_from_zipline(perf)
    pf.create_full_tear_sheet(returns=returns, benchmark_rets=bench)
analyze receives two arguments:
perf
 , the return value of zipline
run_algorithm
function, and
bench
 , the benchmark returns retrieved from the previously defined method.
pf.utils.extract_rets_pos_txn_from_zipline
extracts daily returns, positions history, and the list of all transactions made by the algorithm from the performance dataframe. We pass benchmark and backtest returns to
pf.create_full_tear_sheet
to generate a comprehensive strategy analysis.
In the end, let’s call
zp.run_algorithm
and inspect the results. Make sure to convert start and end dates to a localized pandas
Timestamp
object.
# format start end
to_localized_ts = lambda dt: pd.Timestamp(dt).tz_localize("UTC")
start, end = to_localized_ts(START), to_localized_ts(END)

# get returns
benchmark = get_benchmark_returns()

# run strat
results = zp.run_algorithm(
    start=start,
    end=end,
    initialize=initialize,
    handle_data=handle_data,
    benchmark_returns=benchmark,
    capital_base=CAPITAL_BASE,
    bundle='quandl',
    data_frequency='daily')

# analyze results
analyze(results, benchmark)

# store results to CSV
results.to_csv("results.csv")

Results

It’s time to receive our just deserts. After running the analyze method, pyfolio generates a tear sheet that includes several tables and charts to present a detailed analysis of the results.
Start date	2016-01-04
End date	2017-12-29
Total months	23

Backtest
---------
Annual return	9.7%
Cumulative returns	20.2%
Annual volatility	7.5%
Sharpe ratio	1.27
Calmar ratio	1.96
Stability	0.91
Max drawdown	-4.9%
Omega ratio	1.62
Sortino ratio	2.4
Skew	3.63
Kurtosis	45.14
Tail ratio	1.6
Daily value at risk	-0.9%
Alpha	0.08
Beta	0.1
With 0.08 alpha and 0.1 beta, the strategy seems too passive, which could be improved by increasing the number of watchlist stocks. But the risk-return measures of the strategy look solid — notably, Sharpe, Sortino, and Calmar ratios display acceptable returns given the low exposure. You can find the full tear sheet of the strategy results below.

Improvements

The strategy could be enhanced in many ways; let’s discuss some of them.
  • % of up bars: By taking the ratio of green bars to red bars during the pattern formation, particularly in the latter half of the cup, we can gauge the strength of the bullish pattern and the potential breakout.
  • % of up volume: Similarly, showing above-average volume during up days (skyscrapers of accumulation) may confirm that institutions are interested in the asset. [3]
  • Volume on breakout: Another solution could be to buy the name when the volume is above average on the breakout day.
  • The volatility of the cup: The cup shouldn’t be volatile and V-shaped [4]; using the Average True Range or standard deviation of the price action, we can gauge the smoothness of the price movement while forming the cup pattern.
  • Prior uptrend strength: By making sure that the pattern follows a strong and established uptrend, using the height and length of the prior rally, we can ensure that a strong move backs the base.
References:
[1] D. Saito-Chung, When To Buy The Best Growth Stocks: How To Analyze A Stock’s Cup With Handle (2020), Investor’s Business Daily
[2] Cup With Handle, StockCharts ChartSchool
You can find the source code here.

Written by aliakh | Quant Dev @ Agron Capital | Student @ UniBocconi
Published by HackerNoon on 2021/06/16