3 Ways to Transition Your Company Into A Data-Driven Culture

3 Ways to Transition Your Company Into A Data-Driven Culture

No alt text provided for this image

3 Ways to Transition Your Company Into A Data-Driven Culture

www.mgireservationsandbookings.co.uk



One of the major stumbling blocks to AI adoption among organizations is the lack of a data-driven culture. Here are three ways organizations can become more data-driven to leverage AI better.

Despite automation and digitization taking hold across industries, most companies lack a data-driven culture. A data-driven culture is much more than looking at trends on a BI platform and running scenarios — it's a culture that helps companies reorient themselves toward their customers and uses data to justify every decision.

Companies cannot install data-driven cultures overnight, but now is the best time to begin. As AI usage increases, so too does the number of data volumes that exist, which has led big data analytics to become more essential than ever. As such, organizations must move away from a "gut feel" approach toward decision-making in favor of a data-oriented decision structure.

1. Prioritize important business functions

AI adoption is shining a spotlight on data quality. Companies have collected customer data for a long time, with few paying attention to accuracy and integrity. AI algorithms trained on poor-quality datasets result in less-than-optimal business outcomes.

An investigative piece by The Markup in 2021 detailed instances of mortgage underwriting algorithms rejecting minority loan applicants far more often due to historical biases in training data. Shoddily gathered and unverified data creates such outcomes and perpetuates negative brand perception, something financial companies need less of.

Examining data collection sources is the first step towards uncovering potential landmines, such as the example above. Companies must review the data they're gathering and also the data they're discarding. Often, teams discard data irrelevant to their processes, but those datasets might come in handy in other workflows.

More importantly, data classified as "noise" often contain valuable clues that offer AI algorithms context. Not all noise is useful, however. Data-driven companies have a broad view of which variables play an important role throughout their organization and classify data accordingly.

Data gathering and analysis is thus a centralized function. While individual units might have data scientists embedded in them, a central data team must define schemas and governance practices. Without this centralized view, organizations will lack vision, leading to flawed outcomes that damage their businesses.

If an organization is taking its first steps to disentangle its data, the best place to begin is in the most important business functions. Often, infrastructure will need an overhaul as well. Linking technology investments to high-level business goals will secure buy-in and push companies along the data-driven path faster.

Ultimately, technology such as AI is a tool, not a solution. It is only as good as the input it receives.

2. Execute pilot projects with demonstrable outcomes

Despite the massive attention AI and ML algorithms have received in recent years, only a surprisingly small number of companies trust them. A 2021 survey by New Vantage Partners highlighted that only 12.1% of firms surveyed implemented AI in widespread production. The rest were either disillusioned by AI (thanks to faulty outcomes) or were wary of expanding its use.

Transformational change takes a long time in business. However, technology has warped our understanding of what "long" is. As innovation has grown rapidly over the previous decade, companies cannot afford to sit on the sidelines and ignore the potential that AI and a data-driven posture have for their businesses.

Securing buy-in from executives is a crucial hurdle to overcome. While most executives cannot claim ignorance of AI's potential, securing their approval hinges on convincing them of demonstrable business results. The key in these situations is to demonstrate quantifiable numbers that justify investments.

Most AI pilot projects focus on avoiding disaster first and achieving goals second. For instance, an image recognition engine must avoid misclassifying people and products in situations that could lead to negative brand publicity. The business goal, in this instance, is neglected.

?As a result, AI initiatives are viewed by top executives as exercises in damage avoidance. To successfully transition to a data-driven environment, AI pilots must be tied to ROI metrics. Furthermore, these initiatives must demonstrate stable returns over time. Only then can companies steadily scale their efforts and justify investments.

3. Democratize data

One of the easiest ways to achieve a data-driven mindset is to democratize data throughout the organization. Centralized data science teams have their place. However, this centralization doesn't mean organizations should silo data analysis to a few teams.

?Embedded analytics is the way forward. Embedding analytics into every enterprise app allows companies to draw insights from every employee, boosting ROI. While some of these insights might lead teams down the wrong routes due to poor data analysis skills on the employee's part, the long-term benefits are immense.


AI and the global energy transition


The Fourth Industrial Revolution – artificial intelligence in particular – has the potential to solve some of the current conundrums of the green transition.

In a nutshell

? AI could help solve issues in implementing green technologies

? Governments are rushing to invest in AI energy applications

? Unforeseen challenges could emerge along the way

Over the last two centuries, the world’s major energy transitions were driven primarily by technological breakthroughs. The steam engine allowed coal to fuel the Industrial Revolution and displaced traditional biomass in the world energy mix. Then the internal combustion engine opened the door for oil to dominate the transport sector and the global energy mix for decades – a position it still holds to date.

Today, one major development is still unfolding; its final impact is difficult to predict or even comprehend at this stage. Referred to as the Fourth Industrial Revolution,?digital transformation is evolving at a rapid pace. Although its roots can be traced back to more than 50 years ago, recent advances in computing power and algorithms as well as the increased availability of data have fueled the boom in digital technology. It is not fuel specific; on the contrary, it affects the way we produce and consume energy in all its forms.?

The Fourth Industrial Revolution leverages a wide range of digital technologies, including the Internet of Things (IoT), mobility/cloud technologies and machine learning. Artificial intelligence (AI) especially is capturing notable attention nowadays and attracting significant investment. Interestingly, there is no universally adopted definition of what AI is.?

The European Union defines AI systems as “software (and possibly also hardware) systems designed by humans that, given a complex goal, act in the physical or digital dimension by perceiving their environment through data acquisition, interpreting the collected structured or unstructured data, reasoning on the knowledge, or processing the information, derived from this data and deciding the best action(s) to take to achieve the given goal.”?

The global market for AI is projected to grow from $387 billion in 2022 to $1.4 trillion by 2029.

If AI is indeed far superior to humans when it comes to carrying out complex tasks at speed, then its potential in supporting and accelerating the transition to a greener future while enhancing energy security cannot be overlooked. However, just like any new technology – particularly one that is still not fully understood – there are concerning challenges ahead. “The world has not had that many technologies that are both promising and dangerous the way AI is,” Bill Gates, the cofounder of Microsoft, once warned.?

The race

Foreseeing its benefits, governments around the world are racing to become leaders in the digital technology space, particularly AI. The German Energy Agency describes the current situation as a system rivalry, with the United States and China as established AI nations, while Europe is trying to counter these two heavyweights with an ethics-based approach to AI.

For the last 10 years, the U.S. has seen the largest venture capital investment in AI. In 2022, it is estimated that such investments would exceed those made in China, the EU, the United Kingdom, Israel, India, Canada, Singapore, Korea and Japan combined. But China is aiming to become the primary center for AI innovation by 2030, with an AI industry worth 1 trillion yuan (130 billion euros) and related industries worth 10 trillion yuan (1.3 trillion euros). In its New Generation Artificial Intelligence Development Plan (AIDP) published in 2017, the Chinese government describes AI as a major strategy to enhance national competitiveness and protect national security; it is also a new engine of economic development.?

?The 4th Industrial Revolution refers to several digital technologies that have the potential to disrupt current industrial processes.

Meanwhile the EU is trying to carve out its own niche, announcing it would create global leadership in trustworthy AI. In its 2021 review of the Coordinated Plan on AI, the EU identified seven sectoral action areas where it can build strategic leadership – namely: environment, health, robotics, public sector, home affairs, transport and agriculture.?

The race, however, is not limited to the usual suspects. In 2021, 44 countries created their own national AI strategic plan. For instance, in 2017, the United Arab Emirates unveiled its national strategy for AI, where it stated its intention to “build an AI economy, not wait for one,” with the goal of becoming one of the leading nations in AI by 2031. Three years later, its neighbor Saudi Arabia launched the National Strategy for Data and AI, aiming to position the kingdom as a global AI hub and ranking among the top 15 countries in AI. The OECD AI Policy Observatory lists more than 700 AI policy initiatives from 60 countries, territories and the EU, with the U.S. leading with 68 policy initiatives, followed by the EU (60) and the UK (55).?

No wonder the market for AI is growing rapidly. According to Fortune Business Insights, the global market for AI is projected to grow from $387 billion in 2022 to $1.4 trillion by 2029, at a compound annual growth rate of 20.1 percent in the forecast period.?

Facts & figures

AI in the spotlight

? An AI Index analysis of legislative records on AI in 25 countries shows that the number of bills containing “artificial intelligence” that were passed into law grew from just 1 in 2016 to 18 in 2021. Spain, the UK, and the U.S. passed the highest number of AI-related bills in 2021 with each adopting three.

? The number of AI patents filed in 2021 is more than 30 times higher than in 2015, showing a compound annual growth rate of 77%.

? A study by PricewaterhouseCoopers and Microsoft estimates the potential contribution to the global economy by 2030 from AI to be $15.7 trillion. AI can help deliver a global reduction in emissions of up to 4 percent by 2030 compared to business as usual.

? In September Saudi Aramco launched the “Global AI Corridor,” a $250 million project “designed to develop and commercialize complex AI solutions, train Saudi talent, support Saudi start-ups, and together with a global partner build a local AI ecosystem.”

? TotalEnergies partnered with Google Cloud to develop AI solutions to explore and assess oil and gas fields faster and more effectively.

AI and energy

In energy, the applications of digital technologies and AI are diverse and cover the whole value chain – from supply to consumption and for all fuels. Many believe this innovation will improve the sustainability of the global energy industry and accelerate the deployment of green energy.?

The United Nations’ Intergovernmental Panel on Climate Change (IPCC) argues in a 2022 report that digital technologies can help mitigate climate change and help achieve several sustainable development goals (SDGs). The report states that AI can improve energy management and efficiency, as well as promote the adoption of many low-emission technologies, including decentralized renewable energy. Similarly, the EU foresees the deployment of AI for a wide range of applications to achieve the goals of the European Green Deal.?

Facts & figures

Evolution of the world’s energy mix

With its powerful predictive and forecasting capabilities – whether for maintenance, demand or weather – AI can lead to greater reliability of energy supply and grid stability. (Because of the intermittent nature of renewable energy, which often causes a mismatch between demand and supply, grid stability is crucial for the green energy transition.) It can also support the adoption of electric vehicles through various channels – from reducing cost through optimal battery-material design and manufacturing to estimating optimal locations for charging stations.?

AI is also beneficial for conventional oil and gas. It is being leveraged not only in production to reduce operational risks and costs, but also to minimize the environmental footprint of the industry through more efficient and safer operations, as well as better monitoring of greenhouse gas emissions.

A report by consulting firm Ernst & Young showed that more than 92 percent of oil and gas companies are either currently investing in AI or plan to do so in the next two years. Meanwhile 50 percent of oil and gas executives say they have already begun using AI to help solve challenges at their organizations.

Challenges

There is no shortage of studies on the benefits of adopting AI in the energy industry. However, its wide deployment gives rise to several challenges – some known, and some that will emerge as the technology is more broadly adopted.?

One of the biggest concerns is cyber risk. Cyberattacks are happening probably more frequently than has been reported. The attack on the Colonial Pipeline in the U.S. last year caused supply shortages across the East Coast. Given the scale of the damage that even a short-lived outage can cause, energy infrastructure is particularly attractive for hackers.?

Global cooperation and collaboration across a wide range of stakeholders will be key for the deployment of AI.

Also, technology typically moves faster than regulations, which can slow implementation or result in regulatory gaps. The problem is particularly pronounced in less developed economies with limited administrative capacity but can also be observed in more advanced economies. The absence of comprehensive regulations can hold back both investment and utilization.?

For more on the topic:

Then there is the issue of public mistrust, especially as AI builds on data sharing. For instance, a review of the European legal framework for AI, particularly with respect to?fundamental rights, data ownership and intellectual property, reveals tensions between protecting the rights of individuals and firms and encouraging innovation with trying to maximize transparency and openness.?

There is also the unintended consequence of increasing energy use. A recent study by the EU warns of AI potentially hindering the attainment of climate change goals. Given the increasing relevance of AI technologies and their heavy use of data, their contribution to the energy consumption of information and communication technologies (ICT) is likely to rise significantly. Currently, around 5-9 percent of the world’s total electricity use is caused by ICT, which may rise to 20 percent in 2030, the study found.?

The list of challenges is non-exhaustive. While this may delay the adoption of AI in the energy sector, its contribution to improving the way the world produces and consumes energy cannot be downplayed. The genie is already out of the bottle.?

Global cooperation and collaboration across a wide range of stakeholders – from policymakers to energy companies and digital technology providers, as well as open dialogue including the public – will be key for the beneficial deployment of AI.

要查看或添加评论,请登录

Akintayo Joda的更多文章

社区洞察

其他会员也浏览了