What Are The Most In-Demand AI Skills?
What Are The Most In-Demand AI Skills?

What Are The Most In-Demand AI Skills?

Thank you for reading my latest article?What Are The Most In-Demand AI Skills??Here at?LinkedIn?and at?Forbes?I regularly write about management and technology trends.

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It’s predicted that 97 million jobs involving artificial intelligence (AI) will be created between 2022 and 2025. AI has the potential to transform every industry; however, businesses are still struggling to find employees with the skills necessary to create, train and work alongside intelligent machines.

As companies have become aware of the efficiency gains that can be achieved through leveraging the power of machine learning, computer vision, and similar technologies, demand for skilled workers in the field is quickly outstripping supply.

Colleges and universities have responded to this by creating new courses and educational programs focusing on these skills. But anyone wanting to break into the industry may still be confused at the options available to them. So here’s a run-down of some of the most valuable skills you can learn today if you want to be prepared to work with the automated, intelligent machines of the future!

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Programming

Although no-code and low-code AI solutions are appearing that let us leverage AI solutions without getting our hands dirty, it’s likely that businesses that want to deploy their own bespoke AI solutions will require skilled coders for a long time yet. A basic understanding of at least one of the most popular programming languages for AI - Python, R, C++, and Java – is very useful for anyone working with machine learning algorithms. This may seem a little counter-intuitive – as the purpose of AI is to enable computers to “learn” without having to be specifically coded to carry out a job. Nevertheless, most people working in roles that involve AI today will recommend that some level of experience in coding is highly valuable for anyone wanting to prepare themselves for using AI.

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Data Science

Data is absolutely fundamental to the ability of machines to think and learn. Data is the input used to train AIs to make decisions and carry out tasks. Data scientists understand how to capture, manipulate and work with data in order to extract insights from it. These skills are essential to the field of AI because they encompass the advanced analytics that are necessary in machine learning algorithms. Data science has been a part of computer science educational curriculums for a long time, and today they are usually heavily focused on applying AI to solving business problems using available information.

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AIOps

This is a relatively new term that has emerged in recent years to cover the skills needed when it comes to working with the plethora of AI-related tools and services that have become available. AIOps involves administering and managing all of the connected systems that go into delivering modern AI infrastructure, in order to ensure continuous uptime and a good level of service to the end-user, which could be the business itself or its customers. It might involve coordinating the use of a number of AI-as-a-service elements that connect together to create the organization’s AI infrastructure. AIOps also refers to the process of administering or overseeing AI analytics of an organization’s IT and data operations. This could involve implementing machine learning processes to enable more efficient use of data within the organization or its IT infrastructure as a whole.

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Statistics and Probability

These are old-fashioned mathematical skills that are still considered essential for anyone who wants to understand how AI works, why it is useful, and where it can be most usefully deployed. Techniques such as linear regression, logistic regression, clustering, Bayesian modeling, and random forest analysis were all around long before AI became a buzzword in business and industry and perform the core task of making predictions based on identifying patterns and spotting outliers. This is why they are still at the heart of many of the most sophisticated AI algorithms. Understanding the principles behind how they work is key to understanding why computers are such powerful tools when it comes to automating decision-making in businesses and other organizations. A firm understanding of statistics and probability is hugely valuable when starting out in AI, as it helps us to understand how to articulate problems and propose solutions by selecting the most appropriate models and techniques.

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Communication and Visualization Skills

It’s great to be able to use computers to make decisions and attain a deeper understanding of complicated subjects than would ever be possible using purely human-scale analytics. However, if we don’t have the ability to communicate those findings to other humans – and explain why they are so valuable – then it’s all a waste of time. Many organizations have proven that it’s possible to bring about widescale, positive change – both internally and across societies as a whole – by utilizing AI and machine-driven decision-making. But communication skills are essential to generating the buy-in necessary to reap the benefits. This is the reason that “data communicators” and “data translators” are one of the most in-demand sets of skills when it comes to AI and machine learning in business right now. Strong visualization skills means the ability to take the insights uncovered by machine learning tools and convert them into compelling storytelling that communicates exactly what needs to be done, when, and by whom, in order to achieve growth and results.



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About Bernard Marr

Bernard Marr is a world-renowned futurist, influencer and thought leader in the field of business and technology. He is the author of 20 best-selling books, writes a regular column for Forbes and advises and coaches many of the world’s best-known organisations. He has over 2 million social media followers, over 1 million newsletter subscribers and was ranked by LinkedIn as one of the top 5 business influencers in the world and the No 1 influencer in the UK.

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Ty Whittington-Brown

Peer Educator | Public Relations | Analytical Research

1 年

what models are integrating r as a programming language within them? This sound pretty intuitive for its focus on statistical processing and implementation on working as well if not better than ibm spss in some aspect though while learning and experimenting with open-source models in llm and stable diffusion, I have only encountered c++, java, json, python and html besides using miniconda and conda for working within the environment and of course Nvidia's cuda processing integrations. is it being integrated and developed more within the private sector? thank you for reading and any thoughts you have on the matter.

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David Skinner

Data Analyst / Data Scientist / Data Wrangler/ Data Modelling/Statistician

2 年

In light of the increase in drag & drop platforms , great to see programming, data science, statistics & probability in the forefront of AI skills

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Abhijeet Gulati

Leading AI Innovator at Mitchell International | Pioneering GenAI Solutions | Speaker | AI Tech Council

2 年

Thanks for sharing. These are good set of skills. Including business acumen (from decisions/insights to value translation), and MLOps (Along with AIOps. I have started defining these under umbrella term of XOps, where X=Dev, ML, Model and AI in your SDLC/MLLC) to the list. Of course, some of the harder skills to acquire would be around EthicalAI (separation of biases in ML)

Kathleen T.

Executive Assistant | C-Suite Support | Streamlining Operations for SaaS Executive Office

2 年

AIOps! Glad to see this concept gaining traction. I have used MLOps in the past. Same thing with a different product or do you think they have fundamentally different processes? I would also love to learn more about the differences between traditional DevOps and AIOps. I think most people assume they are the same but I see key differences during development, management, and deployment.

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