Hasty Briefsbeta

  • #Machine Learning
  • #Analog Computing
  • #Stochastic Computing
  • Stochastic computing is an old idea that originated in the 1960s, with early work by Brian Gaines and Wolfgang Poppelbaum.
  • It uses streams of random bits to perform computations, offering advantages like noise immunity and simpler hardware compared to analog computing.
  • Stochastic computing was competitive with supercomputers in the 1960s and was used in early neural networks and probabilistic models.
  • Modern applications could include energy-efficient deep learning, with potential benefits like 10,000x energy efficiency improvements.
  • Extropic, a startup, may be working on stochastic computing, but their communication is unclear.
  • Quantum computing companies like D-Wave may effectively be building stochastic machines, though their marketing focuses on quantum woo.
  • Stochastic computing faces challenges like bit generation and storage but remains a promising alternative for specialized tasks.