Personal Information
Unternehmen/Arbeitsplatz
Japan Japan
Beruf
Financial algorithms, systematic trading, machine learning
Branche
Finance / Banking / Insurance
Webseite
quoine.com/
Info
Leading the team developing the cryptocurrency world's next generation algorithmic liquidity provision engine.
• Low latency market making algorithms
• Artificial intelligence in the service of liquidity provision
• Smart order routing for the cryptocurrency world
• Large-scale distributed financial data infrastructure
Tags
julialang
lstm
long-term short-term memory
recurrent neural networks
rnn
julia language
expression graphs
automatic differentiation
time series
sequence models
machine learning
financial systems
julia
data science
data analytics
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Personal Information
Unternehmen/Arbeitsplatz
Japan Japan
Beruf
Financial algorithms, systematic trading, machine learning
Branche
Finance / Banking / Insurance
Webseite
quoine.com/
Info
Leading the team developing the cryptocurrency world's next generation algorithmic liquidity provision engine.
• Low latency market making algorithms
• Artificial intelligence in the service of liquidity provision
• Smart order routing for the cryptocurrency world
• Large-scale distributed financial data infrastructure
Tags
julialang
lstm
long-term short-term memory
recurrent neural networks
rnn
julia language
expression graphs
automatic differentiation
time series
sequence models
machine learning
financial systems
julia
data science
data analytics
Mehr anzeigen