2022 Tech Trends: Top Considerations for Investing in Data Analytics in the UK

Written by Paul Scholey, Vice President International Sales at Sisense

The prolonged effects of the pandemic, economic uncertainty and hybrid ways of working means the pressure is on organisations to be more agile, transformative and flexible than ever in order to adapt to rapid change.

In this article, we take a look at why investing in BI and data analytics is critical to building business resiliency now and beyond the pandemic.

The pandemic is accelerating digital transformation and the need for data-driven decision making and business intelligence tools across so many industry verticals, from healthcare, HR, logistics to finserv and retail. In fact, the United Kingdom business intelligence market is projected to reach a CAGR of 9.2 % during the forecast period 2021-2026.

But according to data from the OECD鈥檚 skills database, the United Kingdom faces significant shortages in advanced analytics and technology skills. The centerpiece of the government鈥檚 support for the sector is a GBP 1 billion package to support the development of analytics in business, which is anticipated to boost the studied market.

 

Easy To Use Data Analytics Tools That 鈥楥lose the Data Skills Gap鈥

For too long, business leaders have assumed that upskilling their workforce with data classes/certifications and investing in self-service tools would lead to a data-driven organisation. However self-service BI does not 鈥渃lose the skills gap鈥. Not everyone has the time or interest in becoming a data analyst or even data literate. Especially in today鈥檚 post-COVID landscape where teams are understaffed and people value their time differently in and outside of work.

In 2022, organisations will redefine what it means to build a 鈥渃ulture of analytics鈥. They will change the paradigm by bringing insights to workers in a more digestible way 鈥 turning to methods and solutions like embedded analytics that won鈥檛 require them to learn new skills or invest additional time. This is particularly important given new hybrid ways of working, where employees need easy access to real-time data, wherever and whenever they need it to be 鈥榙ata smart.鈥

 

Data Platforms That Combat 鈥楾ool Fatigue鈥

The rise of work-from-home and the digital acceleration brought on by the pandemic has also meant the rise in remote digital 鈥榗ollaborative tools and applications鈥, like Zoom, Slack, Teams, Google Chat, just to name a few.聽 The down side to these tools is that they create distractions and inefficiencies, with workers jumping around from software to software or being forced to use tools that don鈥檛 fit into their personal workflow. As a result, we鈥檙e now seeing a new generation of the workforce experiencing 鈥榯ool fatigue鈥.聽

It follows that investing in data/analytics solutions that add 鈥榶et another tool to the mix鈥 is no longer best practice. In fact, asking users to turn to yet another app for information is one way to guarantee that they ignore it.

Instead, invest in technological solutions that make it easy to 鈥榠nfuse analytics鈥 everywhere in the company.聽

We鈥檒l start to see more organisations in 2022 delivering insights to employees directly 鈥榠nfused鈥 within their workflows via embedded analytics (for example, directly within Slack, Teams, etc.). In this environment, workers can make data-driven decisions without thinking twice and without any disruptions.

 

 

Critical Mistakes To Avoid When Investing in BI/Data Analytics Solutions

Over the past two years, data analytics has played a critical role in the way we鈥檝e adapted and responded to the COVID-19 pandemic. In the UK, the government and public services opened up certain datasets to the private sector for the first time. We saw individual public services pool their datasets in other cases, allowing for more sophisticated data analysis.

For corporations, the proliferation of data analytics, technology, BI and AI means we鈥檙e entering an era where entire businesses can unlock decision making and generate unheard-of value across all industries and at all levels. This potential of unlocking the value of data analytics will remain untapped, however, if we don鈥檛 correct common mistakes we make when using data today.聽

  • Ignoring the power of 鈥榠nvisible analytics鈥: One of the biggest mistakes we can make is to look for data only after sourcing all our ideas and then 鈥榖lindly follow what the data tells us鈥. Rather, analytics should work seamlessly alongside our natural creativity and expertise, making it 鈥榠nvisible鈥 where one begins and the other ends.
  • Over-reliance on traditional, standalone dashboards: As mentioned earlier, this requires us to deviate from our existing workflows. By 鈥榠nfusing analytics鈥 we can receive insights from data, front and centre in the apps we鈥檙e using, then easily leverage that data quickly and more accurately where and when we normally make our key business decisions.
  • Using spreadsheets and visually unclear data: One positive outcome of the self-service generation of BI has been the push towards data visualisation. We need to be deriving insights from data that are easily 鈥榗onsumable,鈥 鈥榓ctionable鈥, and 鈥榰nderstandable,鈥 not manually labouring over time-consuming spreadsheets.
  • Shiny new data toys鈥: Avoid choosing flashy visuals for novelty鈥檚 sake. Sometimes, bar and time-series charts are exactly what we need. If available, work with your company鈥檚 in-house experts and analysts to design the right visualisations in the right workflows to ensure that analytics continues to drive meaningful business decisions.

 

Who Is Getting It Right?

One example of a thriving business investing in data analytics to accelerate digital transformation and business growth is Huws Gray, an independent builder merchant with over 100 stores across the UK. They recently leveraged Sisense, the leading AI-driven analytics cloud platform, to inject analytics across their organisation to support rapid expansion plans for 2022.

Before leveraging Sisense, Huws Gray was managing large volumes of data and could only analyse it manually via spreadsheets. This was time consuming and unscalable. The overload of data also created inconsistency in reporting, with staff running reports from the point-of-sale systems and finding the results would vary constantly.

In 2020, Huws Gray turned to the AI-driven platform offered by Sisense, which has enabled Huws Gray to visualise the data they have with clear dashboards that are easy to understand. Sisense鈥檚 platform has also unlocked deeper financial insights for the company, by keeping accurate track of inflation and the cost of products.

Since implementing Sisense, Huws Gray enjoyed:

  • Time savings of up to 90%.
  • Confidence in the accuracy of the data increase in basic terms by about 75%.
  • Consistency increase by 100%.
  • Risk of data leakage and security tighten by over 75%.
  • Trend identification 50% more quickly.

鈥淭he Sisense dashboards also give Huws Gray employees a quick visual guide, and speeds up the process for staff to access the information they need”, Mike Owen Jnr, IT Director at Huws Gray said. “As we continue our expansion strategy in 2022, we鈥檙e confident Sisense鈥檚 robust, scalable platform can support us as we continue to scale.鈥

 

Building Resiliency With 鈥楧ecision Intelligence鈥

According to : in the UK, we鈥檒l see a new era of 鈥榙ecision intelligence,鈥 which is a proactive, practical approach to improve organisational decision-making.

The key to effective 鈥榙ecision intelligence鈥 is that it models each decision as a set of processes, using intelligence and analytics to inform, learn from, and refine decisions. Decision intelligence can support and enhance human decision making and, potentially, automate it through the use of augmented analytics, simulations, and AI, Gartner notes.

Driving greater 鈥榙ecision intelligence鈥 is the evolution of analytics beyond descriptive analytics (what happened) and predictive analytics (what will happen) to prescriptive guidance (what to do about it).聽

By investing in the right data analytics tools that open up 鈥榩rescriptive guidance鈥, customer service reps could be notified to reach out to potentially angry customers before they even call in. Sales leaders would react immediately to dips in revenue pipeline coverage due to upstream activities, without waiting until the end of the quarter. Retail managers could optimise inventory before items sell out by combining more than just sales data.

All this will mean prescriptive analytics will finally evolve from telling us just where the numbers are going, to helping us make smarter, proactive business decisions, paving the way for an exciting era of decision intelligence.

 

About Sisense: Sisense goes beyond traditional business intelligence by providing organisations with the ability to infuse analytics everywhere, embedded in both customer and employee applications and workflows. Sisense customers are breaking through the barriers of analytics adoption by going beyond the dashboard with Sisense Fusion – the highly customisable, AI-driven analytics cloud platform, that infuses intelligence at the right place and the right time, every time. More than 2,000 global companies rely on Sisense to innovate, disrupt markets and drive meaningful change in the world. Ranked as the No. 1 Business Intelligence company in terms of customer success, Sisense has also been named one of the Forbes鈥 Cloud 100, The World鈥檚 Best Cloud Companies, six years in a row. Visit us at www.sisense.com and connect with us on LinkedIn, Twitter, and Facebook.听听

About Author: As Vice President of International Sales, Paul Scholey is responsible for growing the Sisense business in EMEA and APAC. He brings over 25 years鈥 of experience in the software industry, having previously worked in and led teams in consulting, pre-sales, and sales. Paul has a track record of growing early stage and midsize software companies, with specialisation in building sales teams focused on accountability and value-based selling. Most recently, he was SVP of International at BlueJeans by Verizon. Prior to that, Paul held a variety of leadership positions at Oracle, Teradata, Pentaho and Business Objects.