The Prague Post - Neural networks, machine learning? Nobel-winning AI science explained

EUR -
AED 4.272346
AFN 77.220354
ALL 96.750211
AMD 445.212811
ANG 2.082349
AOA 1066.778096
ARS 1597.267307
AUD 1.777384
AWG 2.094003
AZN 1.986065
BAM 1.953743
BBD 2.343163
BDT 142.282025
BGN 1.95467
BHD 0.438581
BIF 3478.71201
BMD 1.163335
BND 1.507845
BOB 8.05669
BRL 6.252461
BSD 1.16339
BTN 102.591186
BWP 15.526985
BYN 3.96501
BYR 22801.368361
BZD 2.339887
CAD 1.629461
CDF 2570.970801
CHF 0.926765
CLF 0.027873
CLP 1093.511371
CNY 8.284749
CNH 8.273762
COP 4491.194833
CRC 583.098584
CUC 1.163335
CUP 30.828381
CVE 110.150442
CZK 24.321964
DJF 207.176316
DKK 7.469373
DOP 74.483177
DZD 151.256757
EGP 55.20165
ERN 17.450027
ETB 176.213951
FJD 2.6642
FKP 0.8709
GBP 0.873415
GEL 3.15849
GGP 0.8709
GHS 12.62298
GIP 0.8709
GMD 85.489193
GNF 10098.497467
GTQ 8.911732
GYD 243.398955
HKD 9.035793
HNL 30.613162
HRK 7.530973
HTG 152.372841
HUF 388.649262
IDR 19332.303032
ILS 3.786918
IMP 0.8709
INR 102.663219
IQD 1524.01501
IRR 48947.325073
ISK 142.938611
JEP 0.8709
JMD 186.446094
JOD 0.824806
JPY 178.060649
KES 150.244684
KGS 101.733548
KHR 4681.171776
KMF 493.254197
KPW 1047.001791
KRW 1667.600151
KWD 0.356737
KYD 0.9695
KZT 625.325031
LAK 25258.947581
LBP 104183.643585
LKR 353.765122
LRD 212.900412
LSL 20.025673
LTL 3.435026
LVL 0.70369
LYD 6.32642
MAD 10.729142
MDL 19.830547
MGA 5189.647328
MKD 61.592505
MMK 2442.475743
MNT 4178.372636
MOP 9.30752
MRU 46.54759
MUR 52.920058
MVR 17.80047
MWK 2017.31931
MXN 21.380145
MYR 4.897059
MZN 74.33249
NAD 20.025415
NGN 1697.689986
NIO 42.815472
NOK 11.624905
NPR 164.145698
NZD 2.021241
OMR 0.447307
PAB 1.1634
PEN 3.937805
PGK 4.900903
PHP 68.498305
PKR 329.478471
PLN 4.2339
PYG 8236.434031
QAR 4.252278
RON 5.081106
RSD 117.190937
RUB 92.194303
RWF 1689.842548
SAR 4.3626
SBD 9.567062
SCR 17.346481
SDG 699.744408
SEK 10.927265
SGD 1.50895
SHP 0.872803
SLE 26.942175
SLL 24394.555261
SOS 663.715435
SRD 46.414162
STD 24078.688229
STN 24.474756
SVC 10.179413
SYP 12862.678351
SZL 20.022349
THB 38.092225
TJS 10.761508
TMT 4.083306
TND 3.421242
TOP 2.724644
TRY 48.766037
TTD 7.896855
TWD 35.690542
TZS 2874.245137
UAH 48.974466
UGX 4044.793377
USD 1.163335
UYU 46.391752
UZS 14095.340712
VES 246.84036
VND 30601.530344
VUV 142.319141
WST 3.25863
XAF 655.281134
XAG 0.025199
XAU 0.000293
XCD 3.143971
XCG 2.096737
XDR 0.816042
XOF 655.275507
XPF 119.331742
YER 277.921589
ZAR 20.074302
ZMK 10471.409646
ZMW 25.565631
ZWL 374.593434
  • CMSC

    0.0350

    24.315

    +0.14%

  • CMSD

    -0.0200

    24.63

    -0.08%

  • GSK

    0.5100

    43.75

    +1.17%

  • BP

    0.1250

    34.665

    +0.36%

  • SCS

    -0.0800

    16.7

    -0.48%

  • BCC

    -0.5150

    72.575

    -0.71%

  • AZN

    0.5250

    83.815

    +0.63%

  • BTI

    0.2250

    52.295

    +0.43%

  • NGG

    0.0700

    77.02

    +0.09%

  • RIO

    0.4900

    71.03

    +0.69%

  • RYCEF

    0.1800

    14.95

    +1.2%

  • RBGPF

    -3.0900

    76

    -4.07%

  • BCE

    -0.2400

    23.57

    -1.02%

  • RELX

    0.1110

    46.681

    +0.24%

  • VOD

    0.0990

    11.829

    +0.84%

  • JRI

    0.0250

    14.095

    +0.18%

Neural networks, machine learning? Nobel-winning AI science explained
Neural networks, machine learning? Nobel-winning AI science explained / Photo: Jonathan NACKSTRAND - AFP

Neural networks, machine learning? Nobel-winning AI science explained

The Nobel Prize in Physics was awarded to two scientists on Tuesday for discoveries that laid the groundwork for the artificial intelligence used by hugely popular tools such as ChatGPT.

Text size:

British-Canadian Geoffrey Hinton, known as a "godfather of AI," and US physicist John Hopfield were given the prize for "discoveries and inventions that enable machine learning with artificial neural networks," the Nobel jury said.

But what are those, and what does this all mean? Here are some answers.

- What are neural networks and machine learning? -

Mark van der Wilk, an expert in machine learning at the University of Oxford, told AFP that an artificial neural network is a mathematical construct "loosely inspired" by the human brain.

Our brains have a network of cells called neurons, which respond to outside stimuli -- such as things our eyes have seen or ears have heard -- by sending signals to each other.

When we learn things, some connections between neurons get stronger, while others get weaker.

Unlike traditional computing, which works more like reading a recipe, artificial neural networks roughly mimic this process.

The biological neurons are replaced with simple calculations sometimes called "nodes" -- and the incoming stimuli they learn from is replaced by training data.

The idea is that this could allow the network to learn over time -- hence the term machine learning.

- What did Hopfield discover? -

But before machines would be able to learn, another human trait was necessary: memory.

Ever struggle to remember a word? Consider the goose. You might cycle through similar words -- goon, good, ghoul -- before striking upon goose.

"If you are given a pattern that's not exactly the thing that you need to remember, you need to fill in the blanks," van der Wilk said.

"That's how you remember a particular memory."

This was the idea behind the "Hopfield network" -- also called "associative memory" -- which the physicist developed back in the early 1980s.

Hopfield's contribution meant that when an artificial neural network is given something that is slightly wrong, it can cycle through previously stored patterns to find the closest match.

This proved a major step forward for AI.

- What about Hinton? -

In 1985, Hinton revealed his own contribution to the field -- or at least one of them -- called the Boltzmann machine.

Named after 19th century physicist Ludwig Boltzmann, the concept introduced an element of randomness.

This randomness was ultimately why today's AI-powered image generators can produce endless variations to the same prompt.

Hinton also showed that the more layers a network has, "the more complex its behaviour can be".

This in turn made it easier to "efficiently learn a desired behaviour," French machine learning researcher Francis Bach told AFP.

- What is it used for? -

Despite these ideas being in place, many scientists lost interest in the field in the 1990s.

Machine learning required enormously powerful computers capable of handling vast amounts of information. It takes millions of images of dogs for these algorithms to be able to tell a dog from a cat.

So it was not until the 2010s that a wave of breakthroughs "revolutionised everything related to image processing and natural language processing," Bach said.

From reading medical scans to directing self-driving cars, forecasting the weather to creating deepfakes, the uses of AI are now too numerous to count.

- But is it really physics? -

Hinton had already won the Turing award, which is considered the Nobel for computer science.

But several experts said his was a well-deserved Nobel win in the field of physics, which started science down the road that would lead to AI.

French researcher Damien Querlioz pointed out that these algorithms were originally "inspired by physics, by transposing the concept of energy onto the field of computing".

Van der Wilk said the first Nobel "for the methodological development of AI" acknowledged the contribution of the physics community, as well as the winners.

 

"There is no magic happening here," van der Wilk emphasised.

"Ultimately, everything in AI is multiplications and additions."

Y.Blaha--TPP