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Data Visualization Consulting Services

Data visualization consulting helps reveal critical data to business users via intuitive visuals. Saxon Global consultants enable data visualization for customers to spot trends, track business goal achievements, compare the performance of various categories, products, brands, etc.


Why Saxon Global

Data analytics and data management services since 1989.

Data warehousing and BI expertise since 2005.

Big data services since 2013.

Microsoft Power BI services since 2016.

Partnerships with Microsoft, Amazon, Oracle, and other tech leaders.

ISO 9001 and ISO 27001 are certified to assure the quality of the data visualization services and the security of the customers’ data.

Expertise in 30+ industries, including manufacturing, retail and wholesale, professional services, healthcare, financial services, telecommunications, energy, and others.



Data Visualization Use Cases We Cover


Saxon Global team can help you turn data from diverse sources into immersive visuals, which enables monitoring goals and results, identifying opportunities, predicting demand, and more. These are some of the use cases we cover:

Financials

Marketing and sales

Manufacturing

Supply chain

Assets

HR

Data Visualization Techniques We Use

Symbol map

Line chart

Bar chart

Pie chart

Heat map

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