The differences between data analytics, machine learning and AI

Published on January 29th, 2021 by FutureLearn

Discover how data analytics, machine learning and artificial intelligence are shaping the future and the differences between each discipline.

We are living in a time of rapid technological advancement. Computing power has been increasing exponentially, meaning that we can harness this processing power for ever more complex tasks. Three fields that have emerged alongside this rapid growth are data analytics, machine learning and AI. But what’s the difference between these three closely linked technologies? 

As well as taking a look at how these topics overlap, we’ll also explore what makes them unique. We’ll examine the main differences between each topic, as well as some of the careers they can lead to and the skills required for each one. 

What is data analytics?

Let’s begin by looking at what each term means, starting with a data analytics definition. At its heart, data analytics is the science of analysing data sets to find trends, answer questions, and draw conclusions. It’s a varied and complex field that often relies on specialist software, algorithms and automation. 

The principles of data analytics can be applied across just about any industry. Organisations of all kinds employ data analysts to help them make informed and data-driven decisions about different areas of their businesses. Usually, existing data from past events are analysed, meaning existing trends can be identified. 

There are several different types of data analytics, including descriptive analytics, diagnostic analytics, predictive analytics, and prescriptive analytics. 

Data science vs data analytics

These two terms are sometimes, incorrectly, used interchangeably. Data analytics focuses on the examination of data sets to identify and explain trends. Data science looks more at the processes for data modelling and production, creating algorithms and predictive models. 

There is some interchange between the two disciplines, however. The meaning of data science relates to a wider field that focuses on discovering large sets of data. Within that scope is data analytics, a more focused area that looks at the insights offered by examining existing information. 

What is artificial intelligence? 

Artificial intelligence (or AI) is a concept that’s been around for a while. However, it’s only in recent years that we’ve truly had the processing power to actually make it a reality. In its simplest terms, AI is the ability to give computers the ability to replicate human intelligence. 

By creating computers that are capable of learning, it’s possible to teach them from experience. Such artificial intelligence systems have three qualities; intentionality, intelligence, and adaptability. These qualities give them the ability to make decisions that traditionally require a human level of experience and expertise.  

What is machine learning?

We’ve already covered machine learning in more detail in a separate article. This field is a subset of artificial intelligence whereby computers are programmed to learn automatically. These computers can act in a similar way to humans, improving their learning as they encounter additional data. 

Much of the focus of machine learning is to create programs and software that can learn to make predictions and decisions without being directly programmed to do so. The technology can be used for all kinds of purposes, from powering search engines to diagnosing medical conditions.  

Machine learning vs deep learning 

Digging deeper into the topic of machine learning, we have the subset of deep learning. As the layers of machine learning algorithms build up, they form complex networks that mimic the structure of the human brain. These artificial neural networks can learn to make intelligent decisions without additional human input. 

You’ll often find that the most ‘human-like’ artificial intelligence systems are powered by deep learning. This is because they can process unstructured data (data without clear labels). In contrast, other types of machine learning focus mainly on structured data (that which is pre-labelled). 

Where do they overlap?

So, we have three distinct areas of expertise we’ve outlined there. Each has its own applications, subsets, and specialisations, making them very different fields. However, as you may have noticed already, there are certainly some areas where they overlap. 

Below, we’ve outlined just some of the ways in which machine learning, data analytics, and AI overlap. 

Other key fields 

Of course, many other areas relate closely to those of AI, ML, and data analytics. Across fields as diverse as statistics, mathematics, computer science and information science, there are overlaps in the techniques and technologies used. Some of the other, closely linked areas of specialisation include: 

What’s the difference between machine learning and AI? 

One of the questions that are often asked is where the difference between AI and machine learning is seen. Yet this doesn’t mean that there is a kind of AI vs machine learning dichotomy. In fact, it’s more of a case that machine learning is an application of artificial intelligence. 

Despite the two terms sometimes being used interchangeably, there are some differences worth noting. Most of these focus on the purpose, goals, and scope of each field: 

 Artificial intelligenceMachine learning
PurposeTechnology that allows computers or machines to emulate human behaviour.A type of artificial intelligence that allows computers or machines to automatically learn from data without being specifically programmed to.
GoalsTo create smart, human-like computer systems that can solve complex problems.To create computer systems that can continually learn from data, allowing them to perform a particular task and give an accurate output.
ScopeAI has a broad scope and can be applied to a wide variety of tasks.ML is narrower in scope and is usually applied to very specific tasks.

These differences mean that the applications for each field are slightly different. However, many advanced AI systems use some elements of machine or deep learning. 

The different jobs in machine learning, data analytics and AI

If you’re intrigued about these data-driven areas of interest, you might be considering a related career path. But what kinds of jobs are there in the different fields? We’ve picked out just a few examples for each: 

Data analytics jobs

Artificial intelligence jobs

Machine learning jobs

The difference in average salaries 

As you might expect given the highly technical nature of some of these roles, average salaries tend to be reasonably high. However, it’s worth knowing how the different specialities compare to each other in general. We’ve picked out some of the relevant data below. 

Data analytics salaries

Let’s use the role of data analyst as an example. We can see that the average salary in the UK is around £37,000 according to reed.co.uk, and £27,300 according to PayScale. In the US, indeed estimates this average to be roughly $75,000. 

Artificial intelligence salaries

According to IT Jobs Watch, the median annual salary for professionals with skills in AI was £60,000 in the six months up to January 2021. Glassdoor estimates that the average base pay in the US for the same skill set is around $114,000 per year. 

Machine learning salary

In the UK, the average machine learning engineer salary is around £50,000 per year, according to PayScaleIndeed’s estimate is similar, placing the figure at £56,000 per year. For the US, their base salary estimate is $150,000 per year. 

The different skills needed 

As we’ve seen, there are several similarities and differences across the fields of data analytics, machine learning and artificial intelligence. As you might expect, many of the skills needed to progress in each follow a similar pattern. We’ve picked out some of the hard and soft skills that jobs in these sectors often require. 

Common skills

When it comes to the types of skills that are useful across machine learning, data analytics and AI, there are several that come to mind. Some of these are industry-specific abilities, while others are transferrable skills that are universally useful: 

Data analytics skills

For jobs in data analytics specifically, some of the following skills can come in handy: 

Artificial intelligence skills

When it comes to the types of AI skills you’ll need, there are several important ones to have: 

Machine learning skills 

Where to get started 

If you’re interested in getting into machine learning, data analytics or artificial intelligence, there are several routes you can take. Usually, you’ll require a combination of education, experience and self-taught knowledge. 

You’ll want to start by focusing on some data, AI, and machine learning hard skills such as mathematics and computer programming. Subjects such as linear algebra, calculus, Python, SQL and Java are some particularly useful places to start. 

At FutureLearn, we have several online courses and opportunities that can help you start making progress in each of these fields. Here are some of the machine learning, data analytics, and AI courses that can set you on the right path: 

Final thoughts 

We’ve seen that there are similarities as well as differences between data analytics, machine learning, and AI. Although the fields are closely linked in many respects, each has its own particular applications, scope, and areas of specialisation. 

With endless career opportunities in these fields, we’re sure you’ll find something that fulfils your goals and matches your skills and interests. Now you’ve learnt the basics about AI, ML and analytics, it’s time to gain experience in these exciting and fast-developing technologies.

Collected at: https://www.futurelearn.com/info/blog/differences-data-analytics-machine-learning-ai

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