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Data Surge and Big Data Trends

by Michael Smith, 8 October 2024
Updated - October 9, 2024

How data has harnessed Cloud-based Platforms to Surge Growth

Digital data is growing at an explosive pace, thanks to larger, faster, and more affordable storage solutions. Businesses have harnessed cloud-based platforms to collect massive amounts of data since Google and Facebook began doing so in the early 2000s. And data generation can only grow even more enormously as the world’s population gains internet access. Global data is predicted to exceed 180 zettabytes by 2025, up from 64.2 zettabytes in 2020. This figure results from the daily creation of 402.74 million terabytes or 403 trillion megabytes of various sorts of data—generated, collected, and copied.

Data Stored Created and Consumed with Forecasts

Year Data Stored, Created, and Consumed

(In zettabytes)

2010 2
2011 5
2012 6.5
2013 9
2014 12.5
2015 15.5
2016 18
2017 26
2018 33
2019 41
2020 64.2
2021 79
2022 97
2023 120
2024 147
2025 181

Source: https://www.statista.com/statistics/871513/worldwide-data-created/

Rapid data growth has also forever changed the way companies manage data. Formerly just a byproduct of business operations, these diverse, high-volume, and growing datasets—called big data—are crucial for solving problems and decision-making.

Below is a timeline of data management tool milestones from the 1990s to the present listed by management consultant and AI readiness coach Achim Lelle.

Year Milestone Added Value Key Players
1990s Introduction of relational database management systems Structured data storage and efficient querying Oracle, IBM, Microsoft
Late 1990s Advent of data warehousing and online analytical processing Enabled complex analytical computations involving large datasets SAP, Oracle, IBM
Early 2000s Emergence of big data tech Ability to process and analyse vast quantities of unstructured data Apache Hadoop, NoSQL databases
Mid-2000s Rise of cloud computing Scalable, on-demand data storage and analytics AWS, Google Cloud, Microsoft Azure
2010s Advancements in AI and machine learning Enhanced predictive analytics and decision-making TensorFlow, PyTorch, Google AI
Adoption of data lakes Flexible storage for unstructured and structured data, supporting advanced analytics Various cloud providers, Hadoop ecosystems
Proliferation of BI tools Democratised data analysis capabilities Tableau, Power BI, Qlik
2010s to 2020s Integration of IoT and real-time analytics Real-time data collection and analysis from connected devices AWS IoT, Azure IoT
Late 2010s to 2020s Introduction of data meshes Decentralised data architecture focusing on domain-oriented data ownership and accessibility Thought leaders in data architecture and organisations adopting a decentralised approach

Source: https://www.linkedin.com/pulse/charting-data-landscape-tale-technological-triumphs-trials-lelle-2lxse

So where do we go from here? This article will discuss the trends shaping the data landscape.

6 Big Data Trends for 2024 and Beyond

Speed, scalability, governance, and cost-effectiveness contribute to relevant, actionable, and impactful data insights.

Factors Driving Data Landscape

Speed Scale Governance Cost-efficiency
Shorter insights-generation time with fewer resources More data resources, users, and uses (including self-serve) Governed usage, access, activities, and compliance Improved productivity and infrastructure optimisation

Source: https://www.atscale.com/blog/defining-the-modern-data-landscape/

Here are six ways in which these four factors will cause big data to evolve in the near and long term:

1.     IoT Integration with Big Data and IoT Network Growth

The Internet of Things (IoT) refers to the network of physical devices (computers, home appliances, and sophisticated monitoring machines at an establishment or location) connected via the internet. They can collect, receive, and send data through the software and sensors they contain.

A Statista forecast shows the number of IoT devices worldwide growing to 32.1 billion in 2030, more than double the 15.9 billion recorded in 2023.

Number of IOT Connected Devices Worldwide

Year Number of IoT Connected Devices Worldwide
2022 13.8 billion
2023 15.9 billion
2024 18 billion
2025 20.1 billion
2026 22.4 billion
2027 24.7 billion
2028 27.1 billion
2029 29.6 billion
2030 32.1 billion
2031 34.6 billion
2032 37.1 billion
2033 39.6 billion

Source: https://www.statista.com/statistics/1183457/iot-connected-devices-worldwide/

Big data tools can process vast raw information streams to extract real-time patterns and trends about machine performance, user behaviour, and environmental conditions. These insights can then help companies improve operational efficiency or services and predict trends. As a result:

According to IoT Analytics, IoT continues to be among the corporate investment priorities, ranking second or third behind AI. The top three technologies making up almost 80% of all 2023 IoT connections were Wi-Fi, Bluetooth, and cellular IoT (2G to 5G, NB-IoT, and LTE-M). Meanwhile, 51% of enterprises involved in IoT Analytics’ Summer 2024 report said they plan to raise their IoT budgets in 2024. The increase is up to 10%+ for the 22% of the companies with such plans.

IoT is predicted to be worth $153.2 billion by 2029—up from $64.8 billion in 2024—with an 18.8% CAGR.

2.     Industry-Specific, AI-Driven Insights in Real Time

While big data analysis tools address specific industry needs, all sectors benefit from improved decision-making, customer experience, operations, and budgeting.

Key Benefits of Big Data Analytics Across Business Areas

Business Area Benefits From Big Data Analysis
Decision-making Real-time data processing and predictive analytics (combines historical data with statistical algorithms to forecast behaviour, outcomes, and trends)
Customer experience Customer segmentation (based on demographics, psychographics, and purchasing behaviour) and personalisation (customised messaging—such as product recommendations and targeted ads—on preferred communication channels)
Operations and budget Supply chain management (inventory-level analysis, supplier performance, production schedules, and demand forecasting) and resource allocation

Source: https://blog.emb.global/big-data-analysis-tools/

Meanwhile, here are some specific ways big data and its analysis impact industries.

Industry Impact
Healthcare Electronic health records enable patient data analysis for clinical decision-making, health risk identification for early intervention or disease prevention, personalised care plans, population health management, medical research innovation
Manufacturing Sensors on machinery help identify bottlenecks and other anomalies to address or reduce defects. This prevents downtime and enhances product quality. Meanwhile, you can track inventory, delivery, and product demand for better customer satisfaction through supply chain monitoring.
Retail In-store sensors and cameras can collect data, which big data tools can analyse to determine popular product areas and foot traffic patterns. Retailers can also use historical sales data and market trends to optimise product pricing and inventory levels, predict future demand, and minimise overstocking.
Finance, banking, and securities Big data analytics can spot potentially fraudulent activities, improve credit risk assessment, and personalise investment strategies.
Logistics Transportation management systems use big data sources to optimise routing, supporting more efficient and safer cargo movement.
Telecom Analytics outcomes provide the basis for dynamically adjusting service pricing based on network conditions and demand dynamics. Findings also allow providers to predict customer needs, improving offers and customer retention.
Education When students can access learning management systems, faculty can track their progress. Meanwhile, schools can use big data sources to evaluate teachers’ performance.

Sources: https://bytehouse.cloud/blog/relationship-bigdata-and-iot,https://datafloq.com/read/the-future-of-big-data-trends-and-predictions-in-2023/, https://blog.emb.global/big-data-analysis-tools/, https://eyer.ai/blog/the-use-cases-for-anomaly-detection/, https://www.simplilearn.com/tutorials/big-data-tutorial/big-data-applications

3.     Diversified Data Storage Options

60.9 Percent of Organisations Face Challenges due to Data Silos

Data silos are a challenge faced by 60.9% of organisations. As an industry response, two models have emerged to break them down and improve storage and access—the centralised data fabric architecture and the decentralised data mesh. However, the two frameworks aren’t mutually exclusive. Many companies typically use a hybrid model to leverage each system’s strengths.

The data fabric approach integrates data from diverse sources—databases, cloud services, and data lakes—and makes it accessible from one place. A centralised platform simplifies compliance and security. However, data operations can be rigid and block any cultural disruption.

Meanwhile, a data mesh infrastructure treats data as a product owned and managed by individual business departments or “domains” that generate and consume it. The distributed nature of data ownership allows domains to build products tailored to their needs and make decisions with more agility. However, strong coordination is necessary to ensure interoperability and consistency.

Comparison of Data Fabric Data Mesh and Hybrid Characteristics

Data Fabric Hybrid Data Mesh
  • Centralises data across various sources for seamless integration
  • Uses AI and machine learning to automate data management and analytics
  • Automates processes to ensure consistent data quality and governance
  • Streamlined data access, management, and sharing
  • Focus on scalability
  • Gives teams direct access to data, reducing reliance on central teams
  • Data is treated like a product with a focus on quality and security
  • Domain teams manage their respective data products

Inspired by: https://dualitytech.com/blog/data-mesh-vs-data-fabric/, https://www.precisely.com/blog/datagovernance/unraveling-the-threads-data-fabric-vs-data-mesh-for-modern-enterprises, https://shelf.io/blog/data-mesh-and-data-fabric/

Edge computing has been described as a mesh network of “micro-data centres” that processes and stores data locally or within a network before sending bundled relevant data to the cloud. This setup is ideal when data is physically close to the users who generate and use it. Internet-enabled or IoT devices are edge computing tools, which can lower network latency or duration between data generation and processing. Healthcare and retail are prime candidates for this type of computing because real-time data processing is crucial to their operations.

4.     Quantum Computing

Quantum Computing can solve Previously Unsolvable Problems

Regular computing uses a binary system, wherein each bit is either a zero or a one. Meanwhile, quantum computing uses quantum bits or “qubits,” which can be both numbers simultaneously. The qubits’ ability to exist in multiple states simultaneously allows them to analyse or perform highly complex calculations involving large datasets at unprecedented speeds.

Such capability has applications in medicinal drug development, simulating the interaction of molecules. Because quantum computing can crack regular codes, it can help efforts to strengthen encryption for improved data security. Moreover, quantum-enhanced machine learning (ML) systems can develop models from analytics to more accurately predict stock market trends, disease outbreaks, and weather patterns. Google, IBM, and Cambridge have begun quantum computing projects to power ML models for real-world applications.

According to QuEra Computing, the majority of its 900+ poll respondents believe the top two drivers of quantum computing’s ROI are its ability to solve previously unsolvable problems and do it faster than classical computing. However, responses were varied based on segments.

Source of Quantum Computing ROI Company member who uses/is a potential user of quantum computing Member of a quantum computing business Academe Analyst or member of the press Enthusiast
Solve previously unsolvable problems 82 99 227 13 72
Solve problems faster than classical computing 70 79 178 9 68
Optimise existing operations 59 63 113 7 47
Develop new intellectual property 35 80 103 6 22
Innovation and product development 58 94 133 4 59
Novel academic publications 19 56 247 5 19
Energy savings relative to classical computing 36 46 81 7 39
Other 5 4 12 0 4

Source: https://cdn.prod.website-files.com/643b94c382e84463a9e52264/66add72e0b8354a8451d9305_QuEra%20July%202024%20Survey%20Report.pdf

5.     Data Visualisation

Data Visualisation Tools Democratise Analytics

Data visualisation has become a key facet of data democratisation or the granting of data analytics access to non-IT/technical staff. Tools that turn data into charts and other visuals make the information easier to understand as they immediately highlight what matters.

Moreover, AI-enabled tools let users ask questions using natural language (e.g., “What are my three top-selling products in the last quarter?”) for more customised results. As a result, marketing people and others without deep technical knowledge can make informed decisions and identify opportunities.

When presenting data to stakeholders, developing stories around statistics becomes more convenient and appealing through customisable charts, pre-designed templates, or interactive maps. Software can now display these figures in 3D using VR or AR for a more immersive experience.

Also, interactive dashboards with streaming or real-time visualisations may soon become the norm. These tools allow you to explore data in more detail and enable you to perform other functions while viewing graphs. For instance, you can sell a particular stock when it hits a price threshold.

Top Data Visualisation Trends

Top Data Visualisation Trends:
Real-time visualisation
Interactive dashboards
Automated storytelling
VR/AR integration

Sources: https://www.ingentis.com/blog/trends-data-visualization/, https://www.kellton.com/kellton-tech-blog/top-emerging-data-visualization-trends

6.     Data Stewardship

Stronger data governance overshadows AI when it comes to long-term business viability moves. Around a third of survey respondents in Immuta’s 2024 State of Data Security Report said that security controls top their organisational initiatives. Data architecture modernisation (22%) and AI integration (20%) came in second and third. Amid the excitement about how AI can improve operations, including data privacy, 56% of data professionals fear that AI prompts used by employees can inadvertently expose sensitive company information.

Moreover, companies continue to come under attack by cyber threats. In 2024, 60% of large companies, 48% of mid-sized firms, and 12% of small businesses experienced cyberattack-related data loss.

Percentages of Data Loss caused by Software Hardware and Cyber Attacks

Causes of Data Loss 2020 2021 2022 2023 2024
Software failure 25% 26% 34% 42% 40%
Hardware failure 25% 21% 26% 26% 29%
Cyber-attack or internal security breach 23% 26% 38% 52% 46%

Source: https://datahealthcheck.databarracks.com/2024/

At the same time, data governance is necessary to build trust. 73% of UK participants in a survey believe companies collect too much personal or financial data. The same percentage wants stronger protection of customer data once obtained. Britons also demand more transparency and regulation amid fears about unrestricted use of AI with their data.

Trust can make consumers more willing to share data, deepening data pools. However, they’re calling for disclosure over who their data is shared with and vetting of data security providers (77%).

Data use reporting has also become necessary to comply with regulatory frameworks (such as the General Data Protection Regulation in Europe and the California Consumer Privacy Act in the US) and support policy-making (such as the collaboration between the UK’s AI Council and various industries for the national AI strategy). Starting in 2024, the EU requires large and listed companies to report on the environmental and social impact of their activities as part of its sustainability directive.

6 Steps for Adapting to Emerging Trends

6-Steps for Adapting to Emerging Trends

Step 1 Step 2 Step 3 Step 4 Step 5 Step 6
Assess your current tech stack and big data sources. Define your data management goals. Review and update your data security measures. Create a data strategy roadmap. Budget for new investments. Schedule quality checks, results monitoring, and maintenance.

Sources: https://www.trinetix.com/insights/building-a-resilient-data-management-strategy-key-steps-and-best-practices, https://www.dataversity.net/data-strategy-trends-in-2024/, https://jake-jorgovan.com/blog/emerging-trends-in-big-data-analytics-what-businesses-need-to-know-for-the-future, https://www.avenga.com/magazine/trends-and-future-forecasts-in-big-data/, https://intelliarts.com/blog/building-big-data-strategy/

With executives under pressure to swiftly adapt to marketplace trends and show tangible impacts of their data planning, having a data strategy is vital to staying competitive and reaping the benefits of big data technology.

Here are six steps to help you achieve such a strategy:

1.     Review your existing tech stack and big data sources.

Sit down with your IT team and assess and document your existing systems and capacities. Identify your big data sources—internal and external ones, as well as web and app-based analytics. Your future big data service provider or development team will need this documentation to assess your current situation.

2.     Set your business objectives.

Know exactly what you want to achieve with your data. In defining your data processing needs, consider:

3.     Assess and update your data security measures.

Revisit your data governance policies to ensure they comply with industry standards and relevant regulations: access controls, data encryption, proactive monitoring and detection, and backup and recovery. Proper documentation and audit trails should be SOP. At the same time, data protection protocols must promote honesty and accountability in data storage, collection, and use.

Nearly a third of firms worldwide have a chief data officer (CDO), whose top three roles include data governance. In the UK, 57% of businesses with revenues exceeding $50 billion have CDOs.

CDO'S Primary Responsibilities Worldwide

CDO’s Primary Responsibilities Worldwide Percentage
Data strategy 48.1%
Analytics 16%
Data governance 14.1%
Data management 12.3%
Business use cases 4.8%
Other 4.7%

Source: https://www.statista.com/statistics/1362060/cdo-primary-responsibility-worldwide/

4.     Create a data strategy roadmap.

This roadmap describes how your organisation will access, manage, and store data. It should provide a situational analysis upon which your business plots its data goals. Then it should discuss your tactical plans, timeline for implementing these measures, and monitoring/evaluation process.

5.     Budget for new investments.

Investments should cover both technology and people. Equip your workforce with the skills to be data literate and proficient with the tools to manage and interpret data.

Once you’ve determined the level of support you’ll require from a service provider—whether it’s a data centre or data analytics agency—search, evaluate, and select based on their:

6.     Schedule quality checks/results monitoring.

Conduct regular reviews to check how you’re getting value from your big data solutions. Evaluate the system or software based on performance efficiency, reliability, usability, and security.

Big Data Leadership Starts with a Forward-Looking Strategy

As technologies handling big data will continue to evolve, businesses should anticipate disruptions and keep pace with innovations to meet stakeholder demands. Staying informed of trends—like the points discussed above—can prepare you and your team to navigate the future with a data-driven mindset.

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