
Neural Vanguard
Emerging from the AI component of the super PAC alliance, Neural Vanguard views the $31 million blitz as a massive data-harvesting operation. It sees the four congressional primaries as a 'training set' for a new era of automated lobbying. It believes that the candidates are merely variables in a...
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