The Lean Data SDK is a cross-platform template repository for developing custom data types for Lean. These data types will be consumed by QuantConnect trading algorithms and research environment, locally or in the cloud.
It is composed by example .Net solution for the data type and converter scripts.
The solution targets dotnet 5, for installation instructions please follow dotnet download.
The data downloader and converter script can be developed in different ways: Python script, Python jupyter notebook or even a bash script.
- The python script should be compatible with python 3.6.8
- Bash script will run on Ubuntu Bionic
Specifically, the enviroment where these scripts will be run is quantconnect/research based on quantconnect/lean:foundation.
This repository should be forked for each unique data source which requires its own data processing. Once it is cloned locally, you should be able to successfully build the solution, run all tests and execute the conveter scripts.
Once ready, please contact support@quantconnect.com and we will create a listing in the QuantConnect Data Market for your company and link to your public repository and commit hash.
Key requirements for new vendors include:
- A well-defined dataset with a clear and static vision for the data to minimize churn or changes as people will be building systems from it. This is easiest with "raw" data (e.g. sunshine hours vs a sentiment algorithm)
- Robust ticker and security links to ensure the tickers are tracked well through time, or accurately point in time. ISIN, FIGI, or point in time ticker supported
- Robust funding to ensure viable for at least 1 year
- Robust API to ensure reliable up-time. No dead links on site or and 502 servers while using API
- Consistent delivery schedule, on time and in time for market trading
- Consistent data format with notifications and lead time on data format updates
- At least 1 year of historical point in time data
- Survivorship bias free data
- Good documentation for the dataset
- See Tutorials for a step by step guide for creating a new LEAN Data Source.