DiscoverCryptoknights: Top podcast on Bitcoin, Ethereum, Blockchain, Crypto, CryptoCurrenciesEpisode 187 – Fetch: The world’s first adaptive, self-organising ‘smart ledger’ using machine learning and AI
Episode 187 – Fetch: The world’s first adaptive, self-organising ‘smart ledger’ using machine learning and AI

Episode 187 – Fetch: The world’s first adaptive, self-organising ‘smart ledger’ using machine learning and AI

Update: 2018-10-31
Share

Description

About The Guest:
Toby Simpson
CTO and Co-founder at Fetch.AI
Producer of the successful a-life Creatures series of games and early developer at Deepmind. His thirty years’ experience in software, ten as a CTO, are now focussed on crypto-economics.

Company Description:
Fetch brings the world closer together and delivers power to the individual. We’ve built the world’s first truly smart ledger, allowing data to act autonomously. Using machine learning and AI technology, we enable data to cooperate, solving problems instantly and presenting answers directly to you.

The world’s first adaptive, self-organising ‘smart ledger’. Fetch is a next-generation protocol, invented by world-leading AI experts, that enables a digital world where Autonomous Economic Agents can perform proactive economic activity. With unrivalled performance and scalability, Fetch is the missing critical infrastructure for tomorrow’s digital economy.

Link:
https://fetch.ai/
https://twitter.com/fetch_ai?lang=en
https://www.linkedin.com/company/fetch-ai/
https://medium.com/fetch-ai
https://www.youtube.com/c/FetchAI
https://t.me/fetch_ai
https://github.com/fetchai
Comments 
In Channel
loading
00:00
00:00
x

0.5x

0.8x

1.0x

1.25x

1.5x

2.0x

3.0x

Sleep Timer

Off

End of Episode

5 Minutes

10 Minutes

15 Minutes

30 Minutes

45 Minutes

60 Minutes

120 Minutes

Episode 187 – Fetch: The world’s first adaptive, self-organising ‘smart ledger’ using machine learning and AI

Episode 187 – Fetch: The world’s first adaptive, self-organising ‘smart ledger’ using machine learning and AI

Cryptoknights