Utilities and information for the signals.numer.ai tournament

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Deep Learningdsignals
Overview

dsignals

Utilities and information for the signals.numer.ai tournament

using eodhistoricaldata.com

eodhistoricaldata.com provides excellent historical price coverage for the signals universe. There are two main challenges with it:

  1. Ticker mapping from bloomberg to eod tickers
  2. Lack of coverage for Japan, Czech Republic and New Zealand

Building the ticker map

To build the mapping from bloomberg_ticker to eodhd, use:

python build_eodhd_map.py

This will retrieve:

  • live_universe (a small 40 KB file just listing the ~5,340 tickers in current round)
  • historical_targets (a large 150 MB file, and extract ~13,370 unique historical tickers)
  • the bloomberg to yahoo map courtesy of Liam @ numerai

And follow the conversion logic in the python code and manual overrides in db/eod-overrides.csv to build eodhd-map.csv in the following format:

bloomberg_ticker yahoo data_provider signals_ticker
MONY LN MONY.L eodhd MONY.LSE
ANIM3 BZ ANIM3.SA eodhd ANIM3.SA
CAO US eodhd CAO.US
7013 JP 7013.T yahoo 7013.T

Download quotes from the correct data_provider

First find EODHD_TOKEN = "put_your_token_here" in the download_quotes.py file and insert your eodhd api token. Then running:

python download_quotes.py

will download each quote from the appropriate source (eodhd or yahoo) saving each ticker to a separate pickle file under ./data/ticker_bin. As of October 2021, this results in 10,900+ ticker histories.

How you can help

  • Some amount of experimentation is needed with Korean tickers (KO vs KQ extension) to get better fills for ~50 tickers.
  • Bloomberg Singapore ticker prefixes are very different than the yahoo or eodhd tickers. We are extracting the live universe prefixes from numerai yahoo map, but historical Singapore tickers would need to be manually mapped if anyone is up for the challenge.
  • The rest of the tickers seem to work well -- all feedback and advice is appreciated.
Owner
Degerhan Usluel
Degerhan Usluel
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