Trading System Architect - Machine Learning / CryptoCurrency
- Equity
- Remote
About this job
Remote details
Technologies
Job description
Job Description
- Design and implementation of a semi-automated/automated trading system utilizing the signals produced by our models.
- Design of custom indicators or ‘features’ to generate more relevant input data for models
Skills & requirements
Person Specification should be experienced or knowledgeable in
- Algorithmic trading
- Machine learning
- Natural Language processing
- Market analytics
- Hedge fund operation
- System Architecture
- Feature/custom indicator design
- Agile software development (CI, TDD, Scrum)
- Python
About the company
Introduction
We are SheffieldCrypto, we specialise in developing cutting edge predictive models. These ‘smart models’ utilize machine learning and deep neural networks, they are constantly learning and evolving given new market conditions. Currently we are applying them to various digital currency markets, the results have been very promising. We require a financial expert, specifically an expert in trading systems, to design and implement a system to utilise the signals produced by our models.
Model Information and Performance
On one simulation we tested our TA (technical analysis) algorithm with around 30 coins with shared initial parameters over a 3 month period, however many of these coins had little data (small market cap/volume), the results were as followed:
Start capital: $5,000
TA trader: $12,706
Buy and Hold: $-731.79
Random $-1,145
Buy and hold and random are included as comparisons ie how a portfolio would have performed if one was to 'buy and hold' the commodity
Another model being developed is based on NLP (natural language processing). This relies on input from social media or ‘text data’, such bitcointalk threads, reddit, twitter etc. The semantical content is analysed and the algo finds patterns between that and price movements. We are currently working on combining the output from both algos into a deep neural network.
Feature/custom indicator design
Currently the TA algo utilises the output from TA-lib (a library of 150 technical indicators). The design of custom input parameters (or features as they’re known in machine learning) will allow the models to make better predictions by feeding it more relevant market data. However the priority at the moment is the design of a trading system.
Final words
We have 2 PhD’s on our team developing these models. The models collectively have had 6 years of development (3 years/ PhD) and we are now ready to implement them into a trading scenario.
If you feel you are suitable for the position please apply via the application form
http://sheffieldcrypto.com/recruitment
Yours sincerly
Dave - marketing and networking