Narwal
  • Home
  • Services
    • AI
      • Data Science & ML Engineering
      • Generative AI
      • Expert Agents
      • ML Operations
      • AI Advisory & Strategy
    • Data
      • Data Engineering
      • Data Modernization
      • Data Monetization
    • Quality Engineering
      • Test Advisory & Transformation Services
      • Quality Assurance
      • Testing of AI
      • Enterprise Apps Testing
      • Software Test Automation
  • Accelerators
    • AI Accelerators
      • Narwal Agentic AI Accelerator
      • Narwal Autonomous Agents & Multi-Agent Systems Accelerator
      • Narwal Human-in-the-Loop Exception Manager Accelerator 
      • Narwal Multi-Modal AI for Unified Intelligence Accelerator
    • QE Accelerators
      • Narwal Automation FrameworkX (NAX)
      • Narwal Intelligent Lifecycle Assurance NILA
      • Narwal TOSCA Value Maximizer(NTVM)
      • Narwal Data Integrity Solution(NADI)
      • Narwal Enterprise Applications Testing Methodology (NEAT)
      • Narwal Quality Value Chain (NQVC)
  • About Us
    • Team
    • Vision
    • Clients
    • Growth Advisory Board
    • Partners
    • Achievements
  • Careers
  • Insights
    • Success Story
    • Use Cases
    • Blogs
    • News
    • Newsletter
    • Tech Bytes
  • Contact us
LET'S TALK
  • Data Use Cases
  • Dec 08

Customize Business Intelligence Platforms

Customize Business Intelligence Platforms
Operational Excellence: Optimize enterprisewide processes and operations 

System: Business Intelligence Platform, Data Matching Process, Workload Management Tool

Actor: End Users, Data Analysts, Fraud Analysts, Project Managers

Scenario:

End users in an organization want to customize their business intelligence platforms to discover relevant data more efficiently and reduce user effort.

End users have access to a variety of data sources and want to customize their dashboards and reports to display the most relevant and actionable information for their specific needs.

They utilize the customization features of the business intelligence platform to personalize their data views, configure alerts for important metrics, and automate data refreshes.

By customizing the business intelligence platform, end users can optimize their data discovery process, minimize manual efforts, and focus on analyzing insights for informed decision-making.

Use Case

Use Case Name: Customize Business Intelligence Platforms for End Users to Discover Relevant Data and Reduce User Effort

Primary Actor: End Users

Goal: To customize business intelligence platforms to discover relevant data more efficiently and reduce user effort.

Pre-conditions: End users have access to a business intelligence platform with customization capabilities.

Post-conditions: End users have personalized data views, configured alerts, and automated data refreshes to enhance their data discovery process and reduce manual efforts.

Operational Excellence: Optimize enterprisewide processes and operations 

System: Business Intelligence Platform, Data Matching Process, Workload Management Tool

Actor: End Users, Data Analysts, Fraud Analysts, Project Managers

Scenario:

Data analysts and fraud analysts in an organization want to replace manual data-matching processes with algorithms that detect anomalies and fraud.

The current manual data-matching processes are time-consuming and prone to errors, limiting the efficiency and effectiveness of fraud detection.

Data analysts and fraud analysts work together to develop and implement algorithms that can automatically identify anomalies and potential fraud patterns based on predefined rules and statistical models.

By deploying automated data-matching algorithms, the organization can improve the accuracy and speed of fraud detection, enabling timely mitigation of risks.

Use Case

Use Case Name: Replace Manual Data-Matching Processes Using Algorithms that Detect Anomalies and Fraud

Primary Actor: Data Analysts, Fraud Analysts

Goal: To replace manual data-matching processes with algorithms that detect anomalies and fraud.

Pre-conditions: Manual data-matching processes for fraud detection are in place.

Post-conditions: Automated data-matching algorithms are deployed, improving the accuracy and speed of fraud detection processes.

Operational Excellence: Optimize enterprisewide processes and operations 

System: Business Intelligence Platform, Data Matching Process, Workload Management Tool

Actor: End Users, Data Analysts, Fraud Analysts, Project Managers

Scenario:

Project managers in an organization want to deploy an automated workload management tool to improve task allocation and project management.

The current task allocation and project management processes are manual and decentralized, leading to inefficiencies and coordination challenges.

Project managers research and select a suitable workload management tool that can automate task allocation, facilitate resource management, and enable better collaboration among team members.

By deploying the automated workload management tool, project managers can streamline task allocation, optimize resource utilization, and improve overall project management efficiency.

Use Case

Use Case Name: Deploy an Automated Workload Management Tool to Improve Task Allocation and Project Management

Primary Actor: Project Managers

Goal: To deploy an automated workload management tool to improve task allocation and project management.

Pre-conditions: Manual and decentralized task allocation and project management processes are in place.

Post-conditions: An automated workload management tool is deployed, enhancing task allocation, resource management, and overall project management efficiency.

Related Posts

Unlocking Confidence in Unstructured Data: Addressing Top Challenges in the Data Lake Ecosystem 
Data Blog

Unlocking Confidence in Unstructured Data: Addressing Top Challenges in the Data Lake Ecosystem 

Unlocking Confidence in Unstructured Data: Addressing Top Challenges in the Data Lake Ecosystem As organizations expand their digital transformation efforts, they increasingly rely on data lakes for unstructured data storage and analysis. Unstructured data—text files,…

narwal@
  • Oct 03
Smarter SAP Testing Starts with NEAT – Narwal’s Enterprise Applications Testing Methodology 
Data Blog

Smarter SAP Testing Starts with NEAT – Narwal’s Enterprise Applications Testing Methodology 

Smarter SAP Testing Starts with NEAT – Narwal’s Enterprise Applications Testing Methodology  SAP systems are the digital backbone of many enterprises, but testing them remains complex, time-consuming, and often manual. With constant configuration changes, integrations,…

narwal@
  • Aug 07

Post a Comment

Categories

  • Blog
  • Use Cases
  • Success Story

Latest Post

Unlocking Confidence in Unstructured Data: Addressing Top Challenges in the Data Lake Ecosystem 

Unlocking Confidence in Unstructured Data: Addressing Top Challenges in the Data Lake Ecosystem 

  • October 3, 2025
From Quality Gaps to Enterprise Excellence: Building Scalable QE for a Global Consumer Goods Leader

From Quality Gaps to Enterprise Excellence: Building Scalable QE for a Global Consumer Goods Leader

  • September 23, 2025
Transforming ServiceNow QA in Agile Delivery for a Leading Healthcare Technology Provider

Transforming ServiceNow QA in Agile Delivery for a Leading Healthcare Technology Provider

  • September 23, 2025
From Manual Checks to Trusted Data: Transforming Enterprise Data Integrity for a Leading Insurance Provider 

From Manual Checks to Trusted Data: Transforming Enterprise Data Integrity for a Leading Insurance Provider 

  • September 13, 2025
google-site-verification: google57baff8b2caac9d7.html
Narwal IT services company in cincinnati

“We’re an Al, Data, and Quality Engineering company “

  • contact@narwal.ai
Linkedin Twitter Youtube

Quick Links

  • Home
  • Our Services
  • About us
  • Career
  • Insights
  • Contact

Services

  • AI
  • Data
  • Quality Engineering

Headquarters

8845 Governors Hill Dr, Suite 201

Cincinnati, OH 45249

Our Branches

Cincinnati | Jacksonville | Indianapolis | London | Hyderabad | Bangalore | Pune

Narwal | © 2024 All rights reserved

  • Privacy Policy
  • Terms & Conditions

AI/ML

  • ML
  • Generative AI
  • Intelligent Automation

Automation

  • Transformation Services
  • Intelligent Automation
  • Technology Assurance
  • Business Assurance

Data

  • Data Engineering and Management
  • Data Science
  • Reporting and Analytics

Cloud

  • Cloud Migration
  • Cloud Modernization
  • Cloud Management