Data Quality is Crucial to Business Success

Optimize Results With Data Insight and Data Quality Tools

Achieve Better Results, Ensure Quality Data, and Make Confident Decisions

By some estimates, bad data costs global organizations more than five trillion USD annually.

Data Quality, Data insight and Data Quality Management tools and techniques provide a comprehensive set of tools, data analysis and quality assurance features to allow users to identify errors, enhance data quality, and boost productivity. Users can uncover hidden insights and improve the overall quality of data with actionable recommendations to take prompt action.

At enterprise level, the quality of data can be a burden on IT, analysts and business users and acceptance of bad data can be inherent in business processes. Improving the overall quality of data increases confidence in decisions, reporting, strategies and the adoption of dependable analytical models across the organization.

The Smarten Augmented Analytics platform is built on a foundation of machine learning, natural language processing and automation within an advanced analytics solution suite. The enterprise can improve results and support its team with augmented analytics designed as self-serve solutions for business users. The team can gather and analyze information with assurance of sustained data quality and produce results that are clear and concise.

When an analytics solution is built upon this foundation, with advanced tools and techniques to support users, the enterprise can ensure user adoption and positive outcomes. Users do not have to learn complex systems or look to data scientists, IT experts or business analysts for answers.

Advanced data management features ensure data quality and provide crucial data insights with tools like Column Analysis, Feature Importance, Missing Value Analysis and Observations. Tools that support data insight include numerous data quality management techniques. These tools allow users to see and work with datasets in a way that is targeted and provides clear, actionable information for decisions and strategies.

Data Quality Index & Dataset Quality OverviewReveals the data quality index in percentage representing the quality level of data. It shows the quality of the dataset and number of columns with listing down the missing values, duplicates, and measure and dimension columns.

Observations Highlights all detected inconsistencies and anomalies within your dataset, along with the corresponding column names. By clicking on a column name, you can access detailed information about the observation for that particular column and view recommendations for fixing the issue.

Column AnalysisShows the details related to all the columns in the dataset. It categorizes the columns by their types and shows Sample values, Missing Values, Most frequent values, least frequent values, Unique values and Quality index of that column.

Column AssociationsShows the pairs associations between all columns which helps you to understand the relationship with each other. The degree of association can be determined by the index value, and higher the index indicating a stronger relationship between columns.

Feature ImportanceAutomatically identifies and displays the target variable along with its key predictors from your dataset. It also shows the influence of each predictor on the target. This helps you select the predictors that have the greatest impact, making it easier to create an effective predictive model.

Missing Value AnalysisShows the analysis of the missing values across all the columns of the dataset at a glance. The graph visually represents both non-missing (non-null) values and missing (null) values, allowing you to quickly identify which columns have incomplete data.

Column Metadata – Provides information on the dataset’s recency, such as the last update and publication dates. It will also talk about the details like Datatype, Column Type and respective Sample Value of the columns in dataset.

SettingsCustomize the data insights computing process for datasets to lower the load and processing time and focus on priority.

Benefits

Data insight takes data to the next level by providing comprehensive data analysis and quality assurance features that empower business analysts and users to quickly and easily identify errors, enhance data quality, and boost productivity. The business can harness the power of statistics and machine learning to uncover those crucial nuggets of information that drive effective decision, and to improve the overall quality of data.

DON’T WAIT!

Click HERE to download an evaluation copy of Smarten

Contact Us now to find out how your business users can benefit from Data Quality, Data Insight and Data Management tools and techniques and the Smarten Augmented Analytics solution suite.


×

Coming soon!