What is the difference between machine learning and artificial intelligence?

What is the difference between machine learning and artificial intelligence?

My list

Author | Jaime RamosSince its creation, artificial intelligence (AI) has been informally related to the imitation by machines of the cognitive processes of the human brain. However, as a fundamental branch of computer science, it has a different and much more profound purpose.

Is machine learning the same as artificial intelligence?

That is how we discovered them in gigantic steps in recent decades. Which led to the emergence of new developments, solutions and disciplines, such as machine learning.

What is artificial intelligence?

Experts define artificial intelligence as the study and design of intelligent agents, i.e., entities that direct their own activity to achieve an objective in a specific context, using methods to obtain external information (sensors) and a decision-making system that brings it closer to the objective.Artificial intelligence brings together the optimization of mathematical models, artificial neural networks and the implementation of statistics through Big Data. AI fully draws upon information and computer sciences, systems engineering, mathematics, psychology, linguistics or philosophy.

What is machine learning?

When we talk about machine learning, we are referring to the discipline within artificial intelligence that aims to achieve objectives solely through machine learning. It is, essentially, the computer intelligence that teaches the machine how to learn.

Differences between machine learning and artificial intelligence

People working in an office with big dataBoth terms are often confused. This is normal, since it could be said that AI includes machine learning.Imitation is a crucial process in a baby, the flame that ignites learning and creativity. In the case of machines, their real learning does not come from imitation, but rather from orders and commands given by humans. That is, artificial intelligence started to feed off and develop with the fruits of the cognitive processes of human beings.The difference that machine learning provides is that, under its aura, the machine can separate itself from the human programming and use the data it holds and create its own models through algorithms.In other words, machine learning does not require an external standard to achieve the objective. If we take the metaphor of a one-year old baby’s brain, whose “objective is to eat”:

  • Artificial intelligence is like showing a baby what a spoon is used for.
  • Machine learning would provide that same baby with its own tools, like being able to pick up the plate and eat directly from it.

Examples of how smart cities use artificial intelligence and machine learning

connected cityThe evolution of these specialties has opened up a whole host of possibilities to automate, predict and improve the processes of smart cities. They are the cornerstone of the robotics industry, already being exploited in Japan.They also pose a major challenge for the public sector, which will need to update its administrations so that its mechanisms, which are very often obsolete, do not succumb. Some cities are already using it to alleviate traffic jams and foster sustainability.The most promising aspect of machines’ capacity to learn is not just  the potential to do away with urban, human and mundane problems. They will also be capable of providing original technological models by themselves to find their own solutions and developments. The complex implications of this are still an unknown that should not be underestimated.Images | Humanrobo (CC BY-SA 3.0), iStock/Melpomenem, iStock/gorodenkoff

Related content

Recommended profiles for you

AR
Alejandro Revuelta
Cibernos
Smart Solutions Director
LF
lahalle frederic
2Smart
Share holder and co-director
RC
Rosa cabrera
The fake new yorker
Assistant
PB
Pere Botella
UPC School - UPC Barcelona Tech
IT Academic Advisor/ Director of postgraduate activities
HM
Hugo Mujica
tahm architecture and urbanism
Architectural design, urban planning, sustainability and BIM
JD
Jorge Delgad
University of Jaén
Assistant Professor
TR
Teodoro Real
Valtec Soluciones Tecnológicas
Gerente de Proyectos
SB
Schmid Barbara
Signify GmbH
International Key account manager
SF
Sam Foot
Apptimise
Co-founder
SA
Saud Alshammari
Saudi customs
Project manager
UP
Ulisses Pinto
Enel X
Smart City Specialist
JV
Jan-Joost van Kan
Atos
Social Architect for global smart city proposition
PS
Patricia Santos
Digidelta Software
CMO
MV
Manish Verma
AI Digital Limited
Digital Transformation Director
LM
Luka Mali
UL FE
University Lecturer ♦ Sensedge ♦ IoT ♦ Deep Tech ♦ Head of MakerLab at University of Ljubljana
PP
Pamor Gunoto Pamor
Universitas Riau Kepulauan
Dean of Engineering
RS
Rovin Sharma
CYIENT
Sr. Account Manager
NM
Natalia Minayeva
Bamboo Agile
Strategic Partnership Executive
CL
Calvin Leow
Norman Asset Delivery
Project Assistant
AK
Aditya K Das
Non
R