stock VS vectorbt

Compare stock vs vectorbt and see what are their differences.

stock

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stock vectorbt
5 5
973 3,746
- -
7.6 6.2
10 days ago 16 days ago
Python Python
Apache License 2.0 GNU General Public License v3.0 or later
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.

stock

Posts with mentions or reviews of stock. We have used some of these posts to build our list of alternatives and similar projects.

vectorbt

Posts with mentions or reviews of vectorbt. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2022-06-14.
  • Is there any python libraries to backtest buy and sell signals with dates?
    2 projects | /r/algotrading | 14 Jun 2022
    For exactly this I use this https://github.com/polakowo/vectorbt it’s really a powerful tool and you can tons of things with it. Recently the developer decided to maintain it but not adding new features, which from now on will be released on the pro version. However, the free version is still very valuable, incredibly fast and suitable for basic to intermediate tasks.
  • Why Building a Trading Algorithm is More Than Just the Algorithm - 3 Things
    4 projects | dev.to | 19 Feb 2022
    It’s super easy to get up and running with code. With the rise of data science as a field, datasets are far and wide. Accessible from just about any venue. Take a look at Kaggle, QuiverQuant, Yahoo Finance, or even directly from the brokerages and exchanges. Developers can easily download data directly as a .csv or .json and quickly get up and running by utilizing frameworks like backtesting.py or vectorbt. “Great, it seems like I can get up and running and I’ll have an awesome money making trading algorithm in no time”.... unfortunately, wrong. Why is this wrong? Well, simulation is NOT the real world. The real world is not a CSV file—the real world is a stream of events. Cause and effect. The real world works in a fashion where new data comes in, you make a decision, and then you figure it out, not “I have all of this data, let me run this all through time and figure it out”. Indeed, the data sources that you get in real-time are almost completely different from the data sources you use in simulation. Rather than .csv you use WebSockets; rather than QuiverQuant you use APIs; rather than backtesting frameworks you use more robust, event driven packages. Without it, you’re stuck duplicating code, rewriting it into an event-based system, and ultimately using that to go into production, and who knows if your code is going to change along the way.
  • Vectorbt – Find your trading edge
    1 project | news.ycombinator.com | 12 Feb 2022
  • Repost with explanation - OOS Testing cluster
    1 project | /r/algotrading | 1 Jan 2022
    I second the idea of looking through software optimization, but there is no need to jump right to C. I would look at something like vectorbt. You get the speed of C running under the hood while staying in Python for your back testing code
  • Looking for active python backtesting framework
    3 projects | /r/algotrading | 9 Feb 2021
    However, it's not the fastest framework. If you need speed, and are good with the data science tool chain in python and the concept of flattening loops into vectorized operations, check out vector-bt. I haven't gotten a chance to play with it yet, but I'm definitely going to as soon as I find some spare time. It seems like a great option with a nicely modernized approach.

What are some alternatives?

When comparing stock and vectorbt you can also consider the following projects:

alpaca-ts - A TypeScript Node.js library for the https://alpaca.markets REST API and WebSocket streams.

backtrader - Python Backtesting library for trading strategies

pybroker - Algorithmic Trading in Python with Machine Learning

backtesting.py - :mag_right: :chart_with_upwards_trend: :snake: :moneybag: Backtest trading strategies in Python.

qf-lib - Modular Python library that provides an advanced event driven backtester and a set of high quality tools for quantitative finance. Integrated with various data vendors and brokers, supports Crypto, Stocks and Futures.

fast-trade - low code backtesting library utilizing pandas and technical analysis indicators

Quantropy - Financial pipeline for the data-driven investor to research, develop and deploy robust strategies. Big Data ingestion, risk factor modeling, stock screening, portfolio optimization, and broker API.

jesse - An advanced crypto trading bot written in Python

Estimator - Statistics and performance metrics in trading, CAGR, Sharpe, MAE, MFE, and others.

zipline - Zipline, a Pythonic Algorithmic Trading Library

StockSharp - Algorithmic trading and quantitative trading open source platform to develop trading robots (stock markets, forex, crypto, bitcoins, and options).

OctoBot - Open source crypto trading bot