April 23, 2024 19:34 (IST)
Follow us:
facebook-white sharing button
twitter-white sharing button
instagram-white sharing button
youtube-white sharing button
Rajnath Singh visits Siachen, carries out assessment of security situation | Government employee shot dead in targeted attack in Kashmir's Rajouri | 'Congress will take away your homes, jewels': PM Modi ups his attack amid row | Centre orders sampling test of spices from Everest, MDH after ban in Hong Kong, Singapore | 'Illegal, I challenge it': Mamata Banerjee on Calcutta HC cancelling 24,000 jobs in SSC scam probe
Data Visualization - Impact on Data

Data Visualization - Impact on Data

India Blooms News Service | | 02 Aug 2017, 11:16 am
Big Data analytics is driving everything currently, from online shopping and traffic management to the corporate boardroom and medical science. With data analytics, services keep getting better and more personalized and organizations keep getting insights that they use as launchpads for growth.

It was big data analytics that gave rise to machine learning and artificial intelligences, concepts that have come out of sci-fi and into the real world. Innovators realized that if a machine can crunch data, it can learn the data as well and develop near human intelligence.

Big data analytics is advancing and data visualization is advancing with it, opening new avenues for stakeholders and decision makers to interact with data and derive actionable insights out of it.

Every product launch, every new service or business launch and even research, is powered by big data analytics, so it is imperative that the final output of this analysis gets presented in a visually cognitive format, helping decision makers to take note of important trends and insights.

Industry KPIs-driven custom dashboards are key when it comes to data visualization. Data visualization has moved beyond static pie charts and maps and has adopted a more interactive approach. End users are now able to interact with the data, adjusting data points across the board to arrive at the insights they are looking for. It is more apparent in predictive analytics, where end users interact with data projecting future trends and patterns.

Apart from the obvious, data visualization has impacted data management in a much subtler way:

  1. More focus on data quality - Data visualization has made data discovery easy. Now imagine that a stakeholder, using the insight derived from analysis and visualization of a certain data, takes a business-critical decision. It later turns out that the data was of poor quality and a potentially damaging decision was taken. Data visualization assumes that the data is of high quality, so the onus is on analysts to verify the data before churning it through the analytics engine.
  2. Easy identification of data errors - Data visualization has enabled analysts to zero-in on data errors quickly. Imagine going through tens and thousands of rows of data just to find a single error. With visualization, all the errors are put out in the open and analysts can correct the error before making the final report that will be consumed by the end user.
  3. Data ownership - Data visualization is not a walk in the park. Neither is identifying patterns, trends, and insights from the data. Expert analysts and resources are needed both to make sense of the data and maintain it, in terms of quality and security. Organizations that assign dedicated process ownership of data, whether to an internal team or an external resource like Thinklayer, a leader in data visualization, that has worked some of the biggest names across all business verticals, to provide data visualization support by creating dashboards to fit their business requirements.

Support Our Journalism

We cannot do without you.. your contribution supports unbiased journalism

IBNS is not driven by any ism- not wokeism, not racism, not skewed secularism, not hyper right-wing or left liberal ideals, nor by any hardline religious beliefs or hyper nationalism. We want to serve you good old objective news, as they are. We do not judge or preach. We let people decide for themselves. We only try to present factual and well-sourced news.

Support objective journalism for a small contribution.