Computational Intelligence (2024)


Computational Intelligence:Computational intelligence is a branch of artificial intelligence that deals with creating algorithms and systems that can learn from data and make decisions based on what they have learned. This includes tasks such as machine learning, neural networks, and evolutionary computation.

Computational Intelligence is an emerging field of study that has been gaining momentum in recent years. It seeks to explore the potential for machines and computers to think, solve problems and accomplish tasks just as humans do. This article will investigate how this technology can be used to create solutions that are more effective than traditional algorithms and methods.

The concept of Computational Intelligence builds on many existing technologies such as artificial intelligence, machine learning, data mining and optimisation algorithms. By combining these disciplines together, it enables us to develop solutions that are not only faster but also much more accurate than before. Moreover, due to its versatility, it can be applied across a wide range of industries from finance to healthcare.

This article provides readers with an introduction into the world of Computational Intelligence. It outlines what it is, why it matters and the potential benefits it brings about when compared with other forms of computing technology. Furthermore, we will examine some common applications where computational intelligence has already proven useful today and discuss future possibilities for further development in the field.

What Do You Mean By Computational Intelligence?

Computational intelligence is a field of study that seeks to understand, explain and predict intelligent behaviour. It applies the principles of computer science, mathematics, engineering and statistics in order to create artificial systems that can solve complex problems. This discipline encompasses a wide range of methods including fuzzy logic, neural networks, learning theory, evolutionary computation, genetic algorithm and deep learning.

Soft computing techniques such as fuzzy logic allow for the development of systems with capabilities similar to those found in biological nervous systems by utilising heuristics instead of traditional algorithms. Artificial neural networks are modelled after the structure of human brains and used for pattern recognition or classification tasks. They have been widely used in various fields such as image processing, natural language processing and robotics. On the other hand, evolutionary computation focuses on exploring solutions through search-based optimisation algorithms over generations. Through mutation and selection operations these techniques are able to generate new solutions from existing ones.

In addition to these approaches there is also research into combining them together towards building an intelligent system or agent capable of making decisions autonomously without any external control or guidance. Deep learning has become increasingly popular due to its ability to model high level abstractions in data using multiple layers of nonlinear processes which allows it to learn more complex features than previous machine learning models could achieve. All this work ultimately serves the purpose of creating machines that can think like humans do yet operate faster and more accurately than ever before.

What Are The Goals Of Computational Intelligence?

Computational intelligence is a rapidly evolving field of computer science that seeks to develop algorithms and techniques to enable machines to solve complex problems. It involves the use of machine learning, neural networks, fuzzy systems, swarm intelligence and probabilistic methods in order to extract meaningful information from data.

The main goals of computational intelligence are to create models that can accurately represent and predict real-world phenomena, as well as produce solutions which are capable of autonomously adapting their behaviour according to changing environments. This requires the development of membership functions and artificial neural networks in order to understand data patterns and generate accurate predictions or decisions. The primary applications of computational intelligence include robotics, image processing, natural language processing, autonomous navigation, medical diagnosis and fault detection.

By utilising these approaches, it has become possible for machines to replicate human behaviour more effectively than ever before. As advances continue with computational intelligence research, we will see further applications emerge in areas such as gaming, optimisation problems and bio-metrics authentication. Moreover, this technology could be applied across various industries including healthcare and finance where automation is becoming increasingly important.

Why Is AI Better Than Computational Intelligence?

Artificial Intelligence (AI) is an area of computer science which focuses on the development of intelligent machines, and Computational Intelligence (CI) is a sub-field within AI that focuses on creating systems capable of performing complex tasks. CI has been used to develop various techniques including neural network models, fuzzy systems, binary logic algorithms, genetic algorithms and artificial immune systems to address problems in classification accuracy.

Compared with traditional machine learning approaches such as supervised learning and unsupervised learning using public datasets, CI offers many advantages. Firstly, it can handle more complicated data structures than traditional ML methods due to its ability to learn from multiple sources at once. Secondly, CI can provide better results for large amounts of data since it does not require all the features or parameters to be known before training. Thirdly, CI often performs well when dealing with noisy and incomplete data sets because it is able to use approximate reasoning techniques like fuzzy logic rather than relying solely upon precise mathematical formulas. Finally, CI allows developers to create custom applications tailored specifically for their needs without having to rely on previously existing solutions or platforms.

In comparison with AI alone, CI provides a higher level of understanding in terms of problem solving capabilities by allowing us to identify patterns in data that are hidden or difficult for humans or other automated methods to detect. This enables users to gain insights into big data that may have otherwise gone unnoticed had they relied purely on traditional ML tool-sets. Furthermore, this approach helps automate some processes which would otherwise take much longer and cost significantly more money if done manually; thus making it a popular choice among companies looking for ways to save time and resources while getting accurate results quickly.

Is Computational Thinking Ai?

Computational intelligence is the study of techniques used to imitate the behaviour of humans and machines. It includes topics such as artificial intelligence, neural networks, dendritic neuron models, chemical reaction optimisation, and gradient boosting machines. This research field has been growing in popularity due to its ability to provide solutions for complex problems that cannot easily be solved by traditional methods.

When considering whether computational thinking can be considered Artificial Intelligence (AI), there are a few aspects which must be taken into account. AI typically relies on sophisticated algorithms and data processing techniques to recognise patterns or detect trends in large datasets. For example, facial features detected with AI could include predictive features like age or gender; thermal features like body temperature; and deep features like emotional state or movement patterns. In contrast, computational intelligence focuses more on using advanced mathematics and mathematical modelling principles to solve real-world problems without relying on pre-existing data sets or labelled training examples.

In many ways, both AI and computational intelligence use similar approaches such as machine learning and pattern recognition yet differ in their implementation based on different objectives. While AI usually requires vast amounts of data to learn from before making predictions, Computational Intelligence often uses fewer data points but more intricate mathematical calculations to determine optimal outcomes instead of depending solely on supervised learning processes provided by existing databases. As a result, it appears that while AI may offer some advantages over Computational Intelligence when it comes to recognising specific patterns within large datasets, the latter approach offers a wider range of potential applications due to its flexibility when dealing with difficult problem solving scenarios where standard rules do not apply.

What Are The 4 Types Of Computational Thinking?

Computational thinking is an important part of computational intelligence, a field that focuses on the development and application of problem-solving techniques. It involves breaking complex problems down into smaller components and then using them to develop solutions. Computational thinking can be divided into four main types: degree of membership (DM), sensitivity analysis (SA), problem solving (PS) and natural selection (NS).

DM refers to the degree to which a system or entity belongs to a particular set or group. This type of computation helps in identifying and classifying objects, such as images or symbols, based on their properties. SA is used for optimisation purposes and involves finding the best solution from all possible ones by considering various factors such as costs, time and resources available. PS is concerned with developing strategies for solving difficult problems through trial-and-error methods. NS utilizes evolutionary algorithms to find solutions to complex problems based on principles derived from nature’s iterative process of improvement over time.

Matlab Part offers support for DM, SA, PS and NS approaches via its advanced tools like Simulink toolbox and Data Driven Nonlinear Error Correction Model (DDNECM). DDNECM allows users to build models that use data-driven nonlinear error correction technique to identify patterns in datasets quickly while providing an accurate representation of the underlying phenomena being studied. Matlab also provides useful visualisations that help researchers understand issues more easily when they are working with large datasets. Furthermore, it enables users to create intelligent systems capable of performing tasks without any human intervention. In this way, computational thinking plays an essential role in creating reliable systems that can effectively solve complex problems efficiently.

Conclusion

Computational intelligence is a field of study that has been gaining increasing attention in recent years. It involves the application of artificial intelligence and machine learning techniques to solve complex problems. The goals of computational intelligence are to design algorithms and systems that can accurately predict outcomes, recognise patterns, and make decisions based on data. AI is better than computational intelligence because it uses sophisticated algorithms and data-driven models for decision making and problem solving. However, computational thinking does not necessarily constitute AI as it only includes reasoning about potential solutions to given problems without incorporating any automated processes or data-driven approaches.

The four types of computational thinking are decomposition, pattern recognition, abstraction, and algorithm design. Decomposition breaks down large tasks into smaller sub-tasks while pattern recognition identifies patterns within an environment or dataset. Abstraction allows one to identify key features from a larger set of information while algorithm design creates rules to solve a particular problem. Each type requires its own unique approach but all have their place when it comes to tackling complex issues.

In conclusion, computational intelligence is an important tool for creating intelligent machines that can effectively utilise available resources in order to achieve desired objectives. Through its use of advanced technologies such as artificial intelligence and machine learning, it enables us to create more effective solutions for our day-to-day challenges by providing insight into how we might best approach them with greater accuracy, efficiency, and effectiveness.

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Computational Intelligence DefinitionExact match keyword: Computational Intelligence N-Gram Classification: Artificial Intelligence, Machine Learning, Deep Learning Substring Matches: Computed, Intelligence Long-tail variations: "Computational Intelligence Systems", "Artificial Neural Networks" Category: Technology, Science Search Intent: Information, Solutions Keyword Associations: artificial intelligence, machine learning, deep learning Semantic Relevance: Algorithms, Data Mining, Robotics Parent Category: Technology Subcategories: Artificial Intelligence, Machine Learning, Deep Learning Synonyms: Algorithms, Data Mining, Robotics Similar Searches: Artificial Intelligence Systems , Neural Networks , AI algorithms Geographic Relevance : Global Audience Demographics : Researchers , Academicians , Scientists , Tech Professionals Brand Mentions : IBM Watson , Google AI Platform Industry-specific data : Automated Decision Making Processes , Image Processing Tools Commonly used modifiers : "algorithms" , "systems" , "techniques" Topically relevant entities : Algorithms , Data Mining , Artificial Neural Networks (ANN) , Fuzzy Logic Systems (FLS) , Robotics.

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Computational Intelligence (1)

"Larry will be our digital expert that will enable our sales team and add that technological advantage that our competitors don't have."

Kerry Smith
CEO, PFD Foods
$1.6 billion in revenue
Computational Intelligence (2)

"Lion is one of Australasia’s largest food and beverage companies, supplying various alcohol products to wholesalers and retailers, and running multiple and frequent trade promotions throughout the year. The creation of promotional plans is a complicated task that requires considerable expertise and effort, and is an area where improved decision-making has the potential to positively impact the sales growth of various Lion products and product categories. Given Complexica’s world-class prediction and optimisation capabilities, award-winning software applications, and significant customer base in the food and alcohol industry, we have selected Complexica as our vendor of choice for trade promotion optimisation."

Mark Powell
National Sales Director, Lion
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"At Liquor Barons we have an entrepreneurial mindset and are proud of being proactive rather than reactive in our approach to delivering the best possible customer service, which includes our premier liquor loyalty program and consumer-driven marketing. Given Complexica’s expertise in the Liquor industry, and significant customer base on both the retail and supplier side, we chose Complexica's Promotional Campaign Manager for digitalizing our spreadsheet-based approach for promotion planning, range management, and supplier portal access, which in turn will lift the sophistication of our key marketing processes."

Richard Verney
Marketing Manager
Liquor Barons

Computational Intelligence (4)

"Dulux is a leading marketer and manufacturer of some of Australia’s most recognised paint brands. The Dulux Retail sales team manage a diverse portfolio of products and the execution of our sales and marketing activity within both large, medium and small format home improvement retail stores. We consistently challenge ourselves to innovate and grow and to create greater value for our customers and the end consumer. Given the rise and application of Artificial Intelligence in recent times, we have partnered with Complexica to help us identify the right insight at the right time to improve our focus, decision making, execution, and value creation."

Jay Bedford
National Retail Sales Manager
Dulux

Computational Intelligence (5)

"Following a successful proof-of-concept earlier this year, we have selected Complexica as our vendor of choice for standardizing and optimising our promotional planning activities. Complexica’s Promotional Campaign Manager will provide us with a cloud-based platform for automating and optimising promotional planning for more than 2,700 stores, leading to improved decision-making, promotional effectiveness, and financial outcomes for our retail stores."

Rod Pritchard
Interim CEO, Metcash - Australian Liquor Marketers
$3.4 billion in revenue
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"After evaluating a number of software applications and vendors available on the market, we have decided to partner with Complexica for sales force optimisation and automation. We have found Complexica’s applications to be best suited for our extensive SKU range and large set of customers, being capable of generating recommendations and insights without burdening our sales staff with endless data analysis and interpretation.

Aemel Nordin
Managing Director, Polyaire
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"DuluxGroup is pleased to expand its relationship with Complexica, a valued strategic partner and supplier to our business. Complexica’s software will enable DuluxGroup to reduce the amount of time required to generate usable insights, increase our campaign automation capability, personalise our communications based on core metrics, and close the loop on sales results to optimise ongoing digital marketing activity."

James Jones
Group Head of CRM, DuluxGroup
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"Instead of hiring hundreds of data scientists to churn through endless sets of data to provide PFD with customer-specific insights and personalised recommendations, Larry, the Digital Analyst® will serve up the answers we need, when we need them, on a fully automated basis without the time and manual processes typically associated with complex analytical tasks.”

Richard Cohen
CIO, PFD Foods
$1.6 billion in revenue
Computational Intelligence (9)

"As a global innovator in the wine industry, Pernod Ricard Winemakers is always seeking ways to gain efficiencies and best practices across our operational sites. Given the rise of Artificial Intelligence and big data analytics in recent times, we have engaged Complexica to explore how we can achieve a best-in-class wine supply chain using their cloud-based software applications. The engagement is focused on Australia & New Zealand, with a view to expand globally."

Brett McKinnon
Global Operations Director, Pernod Ricard Winemakers
Computational Intelligence (10)

"70% - 80% of what we do is about promotional activity, promotional pricing -- essentially what we take to the marketplace. This is one of the most comprehensive, most complex, one of the most difficult aspect of our business to get right. With Complexica, we will be best in class - there will not be anybody in the market that can perform this task more effectively or more efficiently than we can."

Doug Misener
CEO, Liquor Marketing Group
1,400+ retail stores
Computational Intelligence (11)

"The key thing that makes such a difference in working with Complexica is their focus on delivering the business benefits and outcomes of the project."

Doug Misener
CEO, Liquor Marketing Group
1,400+ retail stores
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"Australia needs smart technology and people, and it has been a great experience for me to observe Complexica co-founders Zbigniew and Matt Michalewicz assemble great teams of people using their mathematical, logic, programming, and business skills to create world-beating products. They are leaders in taking our bright graduates and forging them into the businesses of the future."

Lewis Owens
Chairman of the Board,SA Water
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"Having known the team behind Complexica for some years ago now, I am struck by their ability to make the complex simple - to use data and all its possibilities for useful purpose. They bring real intelligence to AI and have an commercial approach to its application."

Andrew McEvoy
Managing Director,Fairfax Media -Digital
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"I have worked with the team at Complexica for a number of years and have found them professional, innovative and have appreciated their partnership approach to delivering solutions to complex problems."

Kelvin McGrath
CIO,Asciano
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“Working with Complexica to deliver Project Automate has been a true partnership from the initial stages of analysis of LMG’s existing processes and data handling, through scoping and development phase and onto delivery and process change adoption. The Complexica team have delivered considerable value at each stage and will continue to be a valued partner to LMG."

Gavin Saunders
CFO,Liquor Marketing Group
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“Complexica’s Order Management System and Larry, the Digital Analyst will provide more than 300 Bunzl account managers with real-time analytics and insights, to empower decision making and enhanced support. This will create more time for our teams to enable them to see more customers each day and provide the Bunzl personalised experience.”

Kim Hetherington
CEO,Bunzl Australasia
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"The team behind Complexica develops software products that are at the cutting edge of science and technology, always focused on the opportunities to deliver a decisive competitive edge to business. It has always been a great experience collaborating with Matthew, Zbigniew and Co."

Mike Lomman
GMDemand Chain,Roy Hill Iron Ore
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"The innovations that the Complexica team are capable of continue to amaze me. They look at problems from the client side and use a unique approach to collaborating with and deeply understanding their customers challenges. This uniquely differentiates what they bring to market and how they deliver value to customers."

John Ansley
CIO,Toll Group
Computational Intelligence (19)

"Rather than building out an internal analytics team to investigate and analyse countless data sets, we have partnered with Complexica to provide our sales reps with the answers they need, when they need them, on a fully automated basis. We are excited about the benefits that Larry, the Digital Analyst will deliver to our business.”

Peter Caughey
CEO,Coventry Group
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“Complexica’s Order Management System and Larry, the Digital Analyst will provide more than 300 Bunzl account managers with real-time analytics and insights, to empower decision making and enhanced support. This will create more time for our teams to enable them to see more customers each day and provide the Bunzl personalised experience.”

Kim Hetherington
CEO,Bunzl Australasia
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"After an evaluation process and successful proof-of-concept in 2016, we have chosen to partner with Complexica to upgrade the technological capability of our in-field sales force. The next-generation Customer Opportunity Profiler provided by Complexica will serve as a key tool for sales staff to optimise their daily activities, personalise conversations and interactions with customers, and analyse data to generate actionable insights."

Stephen Mooney
Group Sales Capability Manager,DuluxGroup
$1.7 billion in revenue
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"After evaluating a number of software systems available in the marketplace, we have ultimately selected Complexica as our vendor of choice for sales force automation and CRM. Given the large SKU range we carry and very long tail of customers we serve, Complexica’s applications are best suited to deal with this inherent complexity without burdening our staff with endless data entry."

Nick Carr
CEO,Haircaire Australia
Australia's largest distributor of haircare products
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“Asahi Beverages is Australia’s largest brewer, supplying a leading portfolio to wholesalers and retailers, including some of Australia’s most iconic brands. Last year Asahi Beverages acquired Carlton & United Breweries, which is its Australian alcohol business division. To harness the strength of our expanded portfolio, we partner with our customers to run multiple and frequent trade promotions throughout the year, delivering long-term growth for both our business and theirs. Given the inherent complexity in optimising promotional plans and our continued focus on revenue and growth management, we have selected Complexica as our vendor of choice after a successful Proof-of-Concept of its world-class optimisation capabilities.”

Kellie Barnes
Group Chief Information Officer
Asahi Beverages
Computational Intelligence (24)

"Dulux is a leading marketer and manufacturer of some of Australia’s most recognised paint brands. The Dulux Retail sales team manage a diverse portfolio of products and the execution of our sales and marketing activity within both large, medium and small format home improvement retail stores. We consistently challenge ourselves to innovate and grow and to create greater value for our customers and the end consumer. Given the rise and application of Artificial Intelligence in recent times, we have partnered with Complexica to help us identify the right insight at the right time to improve our focus, decision making, execution, and value creation."

Jay Bedford
National Retail Sales Manager,DuluxGroup
Computational Intelligence (25)

"At Liquor Barons we have an entrepreneurial mindset and are proud of being proactive rather than reactive in our approach to delivering the best possible customer service, which includes our premier liquor loyalty program and consumer-driven marketing. Given Complexica’s expertise in the Liquor industry, and significant customer base on both the retail and supplier side, we chose Complexica's Promotional Campaign Manager for digitalizing our spreadsheet-based approach for promotion planning, range management, and supplier portal access, which in turn will lift the sophistication of our key marketing processes."

Richard Verney
Marketing Manager,Liquor Barons
Computational Intelligence (26)

Computational Intelligence (2024)

FAQs

What is computational intelligence in simple words? ›

Computational Intelligence:Computational intelligence is a branch of artificial intelligence that deals with creating algorithms and systems that can learn from data and make decisions based on what they have learned.

What are the three pillars of computational intelligence? ›

Computational Intelligence (CI) is the theory, design, application and development of biologically and linguistically motivated computational paradigms. Traditionally the three main pillars of CI have been Neural Networks, Fuzzy Systems and Evolutionary Computation.

Is computational intelligence the same as machine learning? ›

Computational Intelligence: Synergies of Fuzzy Logic, Neural Networks and Evolutionary Computing. John Wiley & Sons. ISBN 978-1-118-53481-6. Then the difference is that machine learning is a foundational element of computational intelligence.

What is the principle of computational intelligence? ›

Therefore, CI employs a combination of five primary complementary techniques: fuzzy logic, which enables the computer to comprehend natural language; artificial neural networks, which enable the system to learn experiential data by operating in a manner analogous to that of a biological system; evolutionary computing, ...

What is NLP in computational intelligence? ›

Natural language processing (NLP) is a method computer programs can use to interpret human language. NLP is one type of artificial intelligence (AI). Modern NLP models are mostly built via machine learning, and also draw on the field of linguistics — the study of the meaning of language.

What is computational thinking in short answer? ›

Computational thinking (CT) refers to the thought processes involved in formulating problems so their solutions can be represented as computational steps and algorithms. In education, CT is a set of problem-solving methods that involve expressing problems and their solutions in ways that a computer could also execute.

What are the five paradigms of computational intelligence? ›

The prominent paradigms used include AI systems, artificial neural networks, multimedia, fuzzy logic, evolutionary computing techniques, artificial life, computer vision, adaptive intelligence, and chaos engineering.

What are the characteristics of computational intelligence? ›

The essence of computational intelligence lies in its core attributes, encompassing adaptability, fault tolerance, and resilience in the face of uncertainty. These characteristics enable computational intelligence systems to assimilate data, discern patterns, and iteratively enhance their decision-making prowess.

What are computational intelligent techniques? ›

According to Engelbrecht (2007), algorithmic approaches that have been classified to form the Computational Intelligence approach to AI - namely Fuzzy systems, Neural Nets, Evolutionary Computation, Swarm Intelligence, and Artificial ImmuneSystems- are called "intelligent algorithms".

Is AI computational thinking? ›

AI is about providing computers with the ability to think like humans, while computational thinking is about improving the problem- solving capability of humans by leveraging the way a computer “thinks” when it solves problems. Humans have developed increasingly powerful tools.

What are the applications of computational intelligence? ›

With computational intelligence techniques, machines can understand, interpret, and generate human language in written or spoken forms. Applications include sentiment analysis, machine translation, and chatbots.

Is deep learning computational intelligence? ›

Deep learning is a subset of machine learning that uses multi-layered neural networks, called deep neural networks, to simulate the complex decision-making power of the human brain. Some form of deep learning powers most of the artificial intelligence (AI) in our lives today.

Is intelligence just computation? ›

Intelligence is hypothesized as a multi-paradigmatic computation relying on specific computational principles. These principles distinguish intelligence from other, non-intelligent computations.

What is learning theory in computational intelligence? ›

Computational learning theory provides a formal framework in which it is possible to precisely formulate and address questions regarding the performance of different learning algorithms. Thus, careful comparisons of both the predictive power and the computational efficiency of competing learning algorithms can be made.

What are the 5 principles of computational thinking? ›

More guides on this topic
  • Decomposition.
  • Pattern recognition.
  • Abstraction.
  • Algorithms.
  • Evaluating solutions.

What is a simple example of computational thinking? ›

Younger students may recognize computational thinking in how they organize their toys or share with a friend or family member. Older students may recognize this process in how they plan or execute a bike route, organize their schedule, complete homework, set goals or solve real-life problems.

What is the approach of computational intelligence? ›

Generally, computational intelligence is a set of nature-inspired computational methodologies and approaches to address complex real-world problems to which mathematical or traditional modelling can be useless for a few reasons: the processes might be too complex for mathematical reasoning, it might contain some ...

What is the computational theory of intelligence? ›

The computational theory of mind holds that the mind is a computational system that is realized (i.e. physically implemented) by neural activity in the brain.

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