As we leave the worst of the pandemic behind, innovators and organizations are hopeful for 2022 to be a watershed year. With the past year recording a significant rise in digitalization, the data industry continues to dominate the market with innovative opportunities. In 2022, certain technologies are outweighing their hype against real-world value. Users are now more inclined towards businesses investing in data transparency, privacy, and DEI (Diversity, Equity, and Inclusion) initiatives. Keeping up with these changes requires knowledge of the data analytics trends of 2022.
This blog introduces you to upcoming data analytics-related trends and predictions.
Most Important Data Analytics Trends (2022 and beyond)
2021 pushed even the most reluctant on-prem organizations to rethink their operations and take a leap towards cloud-based infrastructure. Organizations are already aware of the benefits of data analytics – improved decision making, effective marketing, better customer service, and efficient operations. With this sudden change, businesses are expected to get ready for what is to come this new year.
Why should you consider upcoming data analytics trends?
Given the competitive advantage that data analytics brings, businesses must stay current with the top trends. The benefits of implementing data analytics trends also include understanding the influence of these trends on related technologies.
Hybrid and Multi-Cloud Environments
A McKinsey report says 70% of companies accepted to adopt a hybrid- or multi-cloud environment as a part of their distributed IT infrastructures in 2022. They believe that it will uplift their agility, reduce complexity, cut down operational costs and fortify their cybersecurity defenses.
With overflowing unstructured data in the world today, enterprises are unable to run their businesses with the same old batch-based data processing. In such a scenario, only the advanced environments can handle the issues of data silos efficiently. Hybrid multi-cloud solutions help organizations manage unstructured data by mapping them to the right governance and security regulations.
Structured Data Lakes
Till now, enterprises have only two data analytics approaches – taking data from business applications, getting any raw data, and importing it on a data lake without any pre-processing. Though the first approach is highly preferred when the data has a consistent schema, the second one benefits any type of data that can be funneled into a data lake.
The new trend revolves around the emergence of a data lake as it helps in creating data lakes with semi-structured data and a little semantic consistency. You would require some indexing and inferring to optimize data analytics by building a common structure.
Distributed Data Mesh
With data mesh, you can leverage resources and data management, data ingestion, and ownership. You also get the desired autonomy for your flexible data models. Though the data mesh approach does not offer a consistent and unified view of your data, prognosticators see it as a move to have oversight of the key data elements to tie different elements of your organization together. You can codify your business by linking customer and product identifiers, location codes, and various corporate metrics.
Data mesh makes a good future path for quick development, yet learning from past lessons will help to grow further.
Data governance is a set of principles that helps organizations to move forward. Sometimes, it aims at minimizing data replication and maximizing data reuse, thereby, enhancing data quality. It also delivers business-driven value.
At a high level, governance can be applied on the data side, architecture side, and even on the financial side. For great governance to drive favorable business outcomes, you would require elements that can offer cost-effective and yet balanced values derived from user analytics.
Some experts predict the convergence of data warehouses and data lakes to simplify the technology and vendor landscape in the near future. With frequently expanding modern data warehouses and data lakes, the significance of partnerships between several giants in the cloud ecosystem will become quite obvious.
Organizations investing in solid metadata strategy can regulate data processes in the coming years. As more platforms help businesses understand the origin of their data and how to leverage it for meeting a business need. Be it no-code/low-code environments or sophisticated structures, in 2022, companies would look for solutions that can empower them to organize their data and create the right data architecture.
Data Quality Issues
As the need for advanced AI/ML capabilities and the dependency on data rises, businesses continue to face data quality issues in their architectures. It gives birth to the need for data regularization and quality testing systems in the market. We need agencies that can notify you of data discrepancies and performs integrity checks throughout the ETL process. More companies are likely to use this challenge as an opportunity.
Even in data analytics, the issue of segregating junk data from insightful data remains as it is. It is believed that challenges related to data quality will continue to plague companies this year.
Last year, we have witnessed continuous growth in no-code digital solutions, in 2022, we can expect greater enterprise agility through automation with more no-code development. Organizations are supposed to switch from IT-centered workflows to self-service analytics to access data efficiently.
This data democratization will enable businesses to become key players in the data ecosystem.
Organizations always seek to leverage most of their datasets, thereby, staying aware of what’s about to come in the market, helping you remain a step ahead of your competitors. Hottest data analytics trends of 2022 help you build a futuristic data strategy.