Английская Википедия:Demis Hassabis

Материал из Онлайн справочника
Перейти к навигацииПерейти к поиску

Шаблон:Short description Шаблон:Use dmy dates Шаблон:Use British English Шаблон:Infobox scientist Demis Hassabis Шаблон:Post-nominals[1][2] (born 27 July 1976) is a British computer scientist, artificial intelligence researcher and entrepreneur. In his early career he was a video game AI programmer and designer, and an expert board games player.[3][4][5] He is the chief executive officer and co-founder of DeepMind[6] and Isomorphic Labs,[7][8][9] and a UK Government AI Advisor.[10] He is a Fellow of the Royal Society, and has won many prestigious awards for his work on AlphaFold including the Breakthrough Prize, the Canada Gairdner International Award, and the Lasker Award. In 2017 he was appointed a CBE and listed in the Time 100 most influential people list.

Early life and education

Hassabis was born to a Greek Cypriot father and a Chinese Singaporean mother and grew up in North London.[3][11] A child prodigy in chess from the age of 4,[12][13] Hassabis reached master standard at the age of 13 with an Elo rating of 2300 and captained many of the England junior chess teams.[14] He represented the University of Cambridge in the Oxford–Cambridge varsity chess matches of 1995,[15] 1996[16] and 1997,[17] winning a half blue.

Between 1988 and 1990, Hassabis was educated at Queen Elizabeth's School, Barnet, a boys' grammar school in Barnet. He was subsequently home-schooled by his parents, during which time he bought his first computer, a ZX Spectrum 48K funded from chess winnings, and taught himself how to program from books.[13] He went on to be educated at Christ's College, Finchley,[3] a state-funded comprehensive school in East Finchley, North London. He completed his A-levels and scholarship level exams two years early at the ages of 15 and 16 respectively.

Bullfrog

Asked by Cambridge University to take a gap year due to his young age,[13] Hassabis began his computer games career at Bullfrog Productions, first level designing on Syndicate, and then at 17 co-designing and lead programming on the 1994 game Theme Park, with the game's designer Peter Molyneux.[18] Theme Park, a simulation video game, sold several million copies[14] and inspired a whole genre of simulation sandbox games. He earned enough from his gap year to pay his own way through university.[13]

University of Cambridge

Hassabis then left Bullfrog to study at Queens' College, Cambridge, where he completed the Computer Science Tripos and graduated in 1997 with a Double First.[14]

Career and research

Lionhead

After graduating from Cambridge, Hassabis worked at Lionhead Studios.[19] Games designer Peter Molyneux, with whom Hassabis had worked at Bullfrog Productions, had recently founded the company. At Lionhead, Hassabis worked as lead AI programmer on the 2001 "god" game Black & White.[14]

Elixir Studios

Hassabis left Lionhead in 1998 to found Elixir Studios, a London-based independent games developer, signing publishing deals with Eidos Interactive, Vivendi Universal and Microsoft.[20] In addition to managing the company, Hassabis served as executive designer of the BAFTA-nominated games Republic: The Revolution and Evil Genius.[14]

The release of Elixir's first game, Republic: The Revolution, a highly ambitious and unusual political simulation game,[21] was delayed due to its huge scope, which involved an AI simulation of the workings of an entire fictional country. The final game was reduced from its original vision and greeted with lukewarm reviews, receiving a Metacritic score of 62/100.[22] Evil Genius, a tongue-in-cheek Bond villain simulator, fared much better with a score of 75/100.[23] In April 2005 the intellectual property and technology rights were sold to various publishers and the studio was closed.[24][25]

Neuroscience research at University College London

Файл:PhotonQ-Demis Hassabis on Artificial Playful Intelligence (15366514658) (2).jpg
Demis Hassabis (left) with Blaise Agüera y Arcas (right) in 2014, at the Wired conference in London

Following Elixir Studios, Hassabis returned to academia to obtain his PhD in cognitive neuroscience from University College London (UCL) in 2009 supervised by Eleanor Maguire.[26] He sought to find inspiration in the human brain for new AI algorithms.[27]

He continued his neuroscience and artificial intelligence research as a visiting scientist jointly at Massachusetts Institute of Technology (MIT), in the lab of Tomaso Poggio, and Harvard University,[3] before earning a Henry Wellcome postdoctoral research fellowship to the Gatsby Computational Neuroscience Unit at UCL in 2009 working with Peter Dayan.[28]

Working in the field of imagination, memory and amnesia, he co-authored several influential papers published in Nature, Science, Neuron and PNAS. His very first academic work, published in PNAS,[29] was a landmark paper that showed systematically for the first time that patients with damage to their hippocampus, known to cause amnesia, were also unable to imagine themselves in new experiences. The finding established a link between the constructive process of imagination and the reconstructive process of episodic memory recall. Based on this work and a follow-up functional magnetic resonance imaging (fMRI) study,[30] Hassabis developed a new theoretical account of the episodic memory system identifying scene construction, the generation and online maintenance of a complex and coherent scene, as a key process underlying both memory recall and imagination.[31] This work received widespread coverage in the mainstream media[32] and was listed in the top 10 scientific breakthroughs of the year by the journal Science.[33] He later generalised these ideas to advance the notion of a 'simulation engine of the mind' whose role it was to imagine events and scenarios to aid with better planning.[34][35]

DeepMind

Hassabis is the CEO and co-founder of DeepMind, a machine learning AI startup, founded in London in 2010 with Shane Legg and Mustafa Suleyman. Hassabis met Legg when both were postdocs at the Gatsby Computational Neuroscience Unit, and he and Suleyman had been friends through family.[36] Hassabis also recruited his university friend and Elixir partner David Silver.[37]

DeepMind's mission is to "solve intelligence" and then use intelligence "to solve everything else".[38] More concretely, DeepMind aims to combine insights from systems neuroscience with new developments in machine learning and computing hardware to unlock increasingly powerful general-purpose learning algorithms that will work towards the creation of an artificial general intelligence (AGI). The company has focused on training learning algorithms to master games, and in December 2013 it announced that it had made a pioneering breakthrough by training an algorithm called a Deep Q-Network (DQN) to play Atari games at a superhuman level by only using the raw pixels on the screen as inputs.[39]

DeepMind's early investors included several high-profile tech entrepreneurs.[40][41] In 2014, Google purchased DeepMind for £400 million. Although most of the company has remained an independent entity based in London,[42] DeepMind Health has since been directly incorporated into Google Health.[43]

Since the Google acquisition, the company has notched up a number of significant achievements, perhaps the most notable being the creation of AlphaGo, a program that defeated world champion Lee Sedol at the complex game of Go. Go had been considered a holy grail of AI, for its high number of possible board positions and resistance to existing programming techniques.[44][45] However, AlphaGo beat European champion Fan Hui 5–0 in October 2015 before winning 4–1 against former world champion Lee Sedol in March 2016.[46][47] Additional DeepMind accomplishments include creating a Neural Turing Machine,[48] reducing the energy used by the cooling systems in Google's data centers by 40%,[49] advancing research on AI safety,[50][51] and the creation of a partnership with the National Health Service (NHS) of the United Kingdom and Moorfields Eye Hospital to improve medical service and identify the onset of degenerative eye conditions.[52]

More recently, DeepMind turned its artificial intelligence to protein folding, a 50-year grand challenge in science, to predict the 3D structure of a protein from its 1D amino acid sequence. This is an important problem in biology, as proteins are essential to life, almost every biological function depends on them, and the function of a protein is thought to be related to its structure. In December 2018, DeepMind's tool AlphaFold won the 13th Critical Assessment of Techniques for Protein Structure Prediction (CASP) by successfully predicting the most accurate structure for 25 out of 43 proteins. "This is a lighthouse project, our first major investment in terms of people and resources into a fundamental, very important, real-world scientific problem", Hassabis said to The Guardian.[53] In November 2020, DeepMind again announced world-beating results in the CASP14 edition of the competition, with a median global distance test (GDT) score of 87.0 across protein targets in the challenging free-modeling category, much higher than the same 2018 results with a median GDT < 60, and an overall error of less than the width of an atom, making it competitive with experimental methods.[54][55]

DeepMind has also been responsible for technical advancements in machine learning, having produced a number of award-winning papers. In particular, the company has made significant advances in deep learning and reinforcement learning, and pioneered the field of deep reinforcement learning which combines these two methods.[56] Hassabis has predicted that Artificial Intelligence will be "one of the most beneficial technologies of mankind ever" but that significant ethical issues remain.[57]

In 2023, Hassabis signed the statement that "Mitigating the risk of extinction from AI should be a global priority alongside other societal-scale risks such as pandemics and nuclear war".[58] He considers however that a pause on AI progress would be very hard to enforce worldwide, and that the potential benefits (e.g. for health and against climate change) make it worth continuing. He said that there is an urgent need for research on evaluation tests that measure how capable and controllable new AI models are.[59]

Personal life

Hassabis resides in North London with his family.[60][61][62] He is also a lifelong fan of Liverpool FC.[13]

Awards and honours

Entrepreneurial and scientific

Research

Hassabis's research work has been listed in the Top 10 Scientific Breakthroughs of the Year by Science Magazine on four separate occasions:

  • 2021 Breakthrough of the Year (Winner) - for AlphaFold v2[96]
  • 2020 Breakthrough of the Year (Top 10) - for AlphaFold v1[97]
  • 2016 Breakthrough of the Year (Top 10) - for AlphaGo[98]
  • 2007 Breakthrough of the Year (Top 10) - for neuroscience research on imagination[99]

DeepMind

Games

Hassabis is a five-times winner of the all-round world board games championship (the Pentamind), and an expert player of many games including:[20]

References

Шаблон:Reflist

External links

Шаблон:Commons category

Шаблон:FRS 2018 Шаблон:Princess of Asturias Award for Technical and Scientific Research Шаблон:Differentiable computing Шаблон:Bullfrog Productions Шаблон:Lionhead Studios Шаблон:Authority control

  1. 1,0 1,1 Шаблон:Cite web
  2. 2,0 2,1 Шаблон:Cite web
  3. 3,0 3,1 3,2 3,3 Шаблон:Cite news
  4. Шаблон:Fide
  5. Шаблон:Cite news
  6. Шаблон:Cite web
  7. Шаблон:Cite web
  8. Шаблон:Cite web
  9. Шаблон:Cite news
  10. 10,0 10,1 Шаблон:Cite web
  11. Шаблон:Cite web
  12. Шаблон:Cite web
  13. 13,0 13,1 13,2 13,3 13,4 Шаблон:Cite web
  14. 14,0 14,1 14,2 14,3 14,4 Шаблон:Cite news
  15. 1995 Varsity Chess Match, Oxford v Cambridge - http://www.saund.co.uk/britbase/pgn/199503vars-viewer.html Шаблон:Webarchive - BritBase
  16. 1996 Varsity Chess Match, Oxford v Cambridge - http://www.saund.co.uk/britbase/pgn/199603vars-viewer.html Шаблон:Webarchive - BritBase
  17. 1997 Varsity Chess Match, Oxford v Cambridge - http://www.saund.co.uk/britbase/pgn/199703vars-viewer.html Шаблон:Webarchive - BritBase
  18. Шаблон:Cite magazine
  19. Шаблон:Cite web
  20. 20,0 20,1 Шаблон:Cite web
  21. Шаблон:Cite news
  22. Шаблон:Cite web
  23. Шаблон:Cite web
  24. Шаблон:Cite web
  25. Шаблон:Cite web
  26. Шаблон:Cite thesis Шаблон:Free access
  27. Шаблон:Cite journal
  28. Шаблон:Cite web
  29. Шаблон:Cite journal
  30. Шаблон:Cite journal
  31. Шаблон:Cite journal
  32. Шаблон:Cite news
  33. Шаблон:Cite journal
  34. Шаблон:Cite journal
  35. Шаблон:Cite journal
  36. Шаблон:Cite magazine
  37. Шаблон:Cite magazine
  38. Шаблон:Cite magazine
  39. Шаблон:Cite magazine
  40. Шаблон:Cite web
  41. Шаблон:Cite news
  42. Шаблон:Cite news
  43. Шаблон:Cite news
  44. Шаблон:Cite news
  45. Шаблон:Cite news
  46. Шаблон:Cite magazine
  47. Шаблон:Cite news
  48. Шаблон:Cite magazine
  49. Шаблон:Cite web
  50. Шаблон:Cite news
  51. Шаблон:Cite magazine
  52. Шаблон:Cite news
  53. Шаблон:Cite news
  54. Шаблон:Cite web
  55. Шаблон:Cite news
  56. Шаблон:Cite web
  57. Шаблон:Cite news
  58. Шаблон:Cite web
  59. Шаблон:Cite magazine
  60. Шаблон:Cite news
  61. Шаблон:Cite news
  62. Шаблон:Cite news
  63. Albert Lasker Award for Basic Medical Research 2023
  64. Canada Gairdner International Award 2023
  65. Шаблон:Cite web
  66. Шаблон:Cite web
  67. BBVA Foundation Frontiers of Knowledge Award 2022
  68. Шаблон:Cite web
  69. Wiley Prize 2022
  70. Шаблон:Cite web
  71. Шаблон:Cite web
  72. Шаблон:Cite web
  73. Шаблон:Cite web
  74. Шаблон:Cite web
  75. Шаблон:Cite web
  76. Шаблон:Cite web
  77. Шаблон:Cite news
  78. Шаблон:Cite magazine
  79. Шаблон:Cite web
  80. Шаблон:Cite web
  81. Шаблон:Cite web
  82. Шаблон:Cite web
  83. Шаблон:Cite web
  84. Шаблон:Cite news
  85. Шаблон:Cite web
  86. 86,0 86,1 Шаблон:Cite magazine
  87. Шаблон:Cite journal
  88. Шаблон:Cite journal
  89. Шаблон:Cite web
  90. Шаблон:Cite news
  91. Шаблон:Cite web
  92. Шаблон:Cite news
  93. Шаблон:Cite web
  94. Шаблон:Cite magazine
  95. Шаблон:Cite web
  96. Шаблон:Cite web
  97. Шаблон:Cite web
  98. Шаблон:Cite web
  99. Шаблон:Cite journal
  100. Шаблон:Cite web
  101. Шаблон:Cite journal
  102. Шаблон:Cite journal
  103. Шаблон:Cite journal
  104. Шаблон:Cite journal
  105. Шаблон:Cite journal
  106. Шаблон:Cite journal
  107. Шаблон:Cite web
  108. Шаблон:Cite news
  109. Шаблон:Cite web
  110. Шаблон:Cite news
  111. Шаблон:Cite web
  112. Шаблон:Cite web
  113. Шаблон:Cite web