Region
- Asia
Country
- Israel
Product
- Qlik
Tech Stack
- Business Intelligence
Implementation Scale
- Enterprise-wide Deployment
Impact Metrics
- Productivity Improvements
- Customer Satisfaction
Technology Category
- Analytics & Modeling - Real Time Analytics
Applicable Industries
- Retail
Applicable Functions
- Sales & Marketing
Use Cases
- Real-Time Location System (RTLS)
Services
- Data Science Services
About The Customer
StoreNext is Israel’s leading research and analysis firm in the consumer goods market. The company specializes in capturing and analyzing transactions from various stores to provide insights into market trends. StoreNext's clients are primarily businesses in the consumer goods industry who rely on the company's data and analysis to make informed decisions. The company was looking to improve its services by offering a next-generation self-service Business Intelligence (BI) solution and mobile capabilities.
The Challenge
StoreNext, a leading research and analysis firm in the consumer goods market in Israel, was looking to improve its value proposition. The company wanted to launch a next-generation self-service Business Intelligence (BI) solution that would allow its clients to analyze millions of transactions to better understand market trends. Additionally, StoreNext's clients had been requesting mobile capabilities, which the company was keen to provide. Another challenge was the company's reliance on external consultants for the development of the solution, which they wanted to reduce.
The Solution
StoreNext partnered with Qlik, a renowned data analytics platform, to develop a next-generation self-service Business Intelligence (BI) solution. This solution allows StoreNext's clients to analyze millions of transactions in real time, providing them with valuable insights into market trends. The solution was launched in under three months, demonstrating the efficiency of the partnership. Additionally, the solution includes mobile capabilities, fulfilling a long-standing request from StoreNext's clients. The partnership with Qlik also enabled StoreNext to continue developing the solution in-house, reducing their reliance on external consultants.
Operational Impact
Quantitative Benefit
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