Did you run into latency problems doing arbitrage this way? Or do you rely on API's?
You bypass the API completely and fill orders "manually".
You are thinking too US-centric here. There are jurisdictions where this is allowed. Also don't stare yourself blind on the numbers. Do you unfairly deny 5 minorities or erroneously deny 10 genpop? This is reality for…
The identifying characteristics are signal for the minority, but noisy for genpop. Deployment/engineering constraints call for a single model. Realistic scenario.
Eat your own dogfood. Let them douse their babies in asbestos, drink fracking water, or force them to watch Scientology advertisements.
The ads are a red herring (and uncomfortably visible for both parties). The real activity was on Facebook groups, viralizing anti-immigration and far-left news, controling the narritive on 4chan pol and /r/the_donald,…
Statistical learning with connectionist architectures is driving current AI at scale. To me, this paradigm is also the most promising: learn from data bottom-up, not from experts top-down.
Faster and more complex computers does not make you faster at manual programming. Computer vision had this before the DL boom: engineers painfully crafting feature extractors. It went nowhere. Bayesian models…
Symbolic AI is machine programming. Connectionist AI is machine learning. Machine programming simply does not scale. It is also not biologically plausible: it is not as if God put symbols into our brain, these formed,…
I give Musk a little bit more credit than brutely calling someone a pedo without any proof. If you are as rich as Musk, there must be someone you can pay to dig up dirt on your opponents. Now there may be more trouble…
Csv and a permitive license like CC0. Provide good meta data to make provenance easier. Mark up your dataset with schema.org.
Gone to sleep for the final time. Ash to ... And dust to dust.
Dennett aims to solve this using heterophenemenology: https://en.m.wikipedia.org/wiki/Heterophenomenology In this framework, utterances can be studied without taking their truth value at face value.
If you spend one year on applying deep learning, you can train a net on a 100 different data sets. That's where the intuition comes from. You'll debug a lot. People with zero experience with deep learning have ended in…
Articles like these should come with a disclosure: "the authors own bitcoin and augur" or something to that effect.
Did you run into latency problems doing arbitrage this way? Or do you rely on API's?
You bypass the API completely and fill orders "manually".
You are thinking too US-centric here. There are jurisdictions where this is allowed. Also don't stare yourself blind on the numbers. Do you unfairly deny 5 minorities or erroneously deny 10 genpop? This is reality for…
The identifying characteristics are signal for the minority, but noisy for genpop. Deployment/engineering constraints call for a single model. Realistic scenario.
Eat your own dogfood. Let them douse their babies in asbestos, drink fracking water, or force them to watch Scientology advertisements.
The ads are a red herring (and uncomfortably visible for both parties). The real activity was on Facebook groups, viralizing anti-immigration and far-left news, controling the narritive on 4chan pol and /r/the_donald,…
Statistical learning with connectionist architectures is driving current AI at scale. To me, this paradigm is also the most promising: learn from data bottom-up, not from experts top-down.
Faster and more complex computers does not make you faster at manual programming. Computer vision had this before the DL boom: engineers painfully crafting feature extractors. It went nowhere. Bayesian models…
Symbolic AI is machine programming. Connectionist AI is machine learning. Machine programming simply does not scale. It is also not biologically plausible: it is not as if God put symbols into our brain, these formed,…
I give Musk a little bit more credit than brutely calling someone a pedo without any proof. If you are as rich as Musk, there must be someone you can pay to dig up dirt on your opponents. Now there may be more trouble…
Csv and a permitive license like CC0. Provide good meta data to make provenance easier. Mark up your dataset with schema.org.
Gone to sleep for the final time. Ash to ... And dust to dust.
Dennett aims to solve this using heterophenemenology: https://en.m.wikipedia.org/wiki/Heterophenomenology In this framework, utterances can be studied without taking their truth value at face value.
If you spend one year on applying deep learning, you can train a net on a 100 different data sets. That's where the intuition comes from. You'll debug a lot. People with zero experience with deep learning have ended in…
Articles like these should come with a disclosure: "the authors own bitcoin and augur" or something to that effect.