Zoomix Accelerator™--Automating Enterprise Data Excellence
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Zoomix Accelerator™
Automating Enterprise Data Excellence
Zoomix Accelerator automatically delivers correct, complete,
synchronized enterprise data, within the business workflow.
The Data Excellence Challenge
The challenge of synchronizing and perfecting product, part, customer, supplier and financial data is daunting. Yet, the resulting business efficiencies, greater competitiveness and increased profit margins are so great that no enterprise can long afford to ignore this challenge.
Manual efforts, whether in house or outsourced, have proven expensive and insufficient to cope with the large volumes of complex data typical in large corporations. The other traditional alternative, data quality tools, require massive undertakings to formulate the rules, dictionaries and scripts that will allow software to automatically classify, de-duplicate and standardize any enterprise's particular data. Since no set of manually defined rules can address every conceivable situation, these programs lack the required accuracy. Furthermore, they demand never-ending manual and costly rule and script development efforts.
A Faster, Smarter Approach
Zoomix Accelerator™ is a scalable, high-performance, automated data processing server that solves data inconsistencies in-line with business processes. Conflicts among data entities appearing in different systems are resolved in real time, thus providing tremendous business value without expensive and marginally successful 'off-line' data correction projects. Instead of being forced to try cleanse and correct data before it can be considered fit for business needs, Zoomix Accelerator is unique in that it solves data problems 'out-of-the-box,' without the need for prior data preparation work.
Zoomix Accelerator offers enterprises a fast and highly-automated track to achieving enterprise data excellence and its resulting business benefits. The product combines advanced semantic and linguistic analysis with machine learning to automatically and accurately classify, match and standardize complex corporate data, including highly-variable product data and financial data. Patent-pending Self-Learning Technology allows the software to learn, understand, and correct any type of complex master data on the fly.
The technology, easily integrated into existing applications and workflows, begins delivering business benefits immediately while obviating the need for large-scale pre-deployment projects. No manual rules development is required, and the software continues to learn and improve its accuracy in the background, by "observing" decisions made by business users as they go about their routine work.
Zoomix Accelerator smoothly integrates with existing applications and business processes, and dramatically reduces the human effort required for successful enterprise-wide data manipulation.
The Unique Advantages of Zoomix Accelerator
- Fast, accurate, automated, self-learning system – An initial usable master data set is created within days, instead of months or years, by virtue of the system's Self-Learning Technology, which rapidly learns how to automatically aggregate, combine, standardize and classify data from multiple sources. For years to come, crucial data correction will then be addressed automatically, with continuously improving accuracy.
- No scripting or rule development required – Zoomix Accelerator never requires the development of scripts or the manual definition or maintenance of data processing rules. The system automatically interprets data to learn the optimal matching, normalization and classification required for any data domain.
- Processes all types of complex corporate data – Zoomix Accelerator works equally well with product data, customer data, supplier data, financial data, etc. – in any language or combination of languages. Furthermore, the system contains embedded technologies (such as automatic attribute extraction) to process both structured and semi-structured data. The ability to work with semi-structured data, commonly found in important records such as product descriptions and invoice line items, enables the enterprise to achieve the highest levels of automated data excellence.
- Rapid integration into existing applications and business workflows – The system's integration with daily user workflow provides objective, on-the-fly data correction. Erroneous, duplicated and incorrectly categorized data are repaired immediately, without disrupting routine business functions. This scalable, low-latency, in-line business process integration yields an entirely new dimension to enterprise data management capabilities by actually improving employee performance during common business tasks such as inventory management, spend analysis, customer service, procurement and business reporting.
Zoomix Accelerator™ System Architecture
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