Microsoft Sensor Data Intelligence Scenario Add-in for Dynamics 365 Supply Chain Management | Monthly
Save upto 18%, Get GST Invoice on your business purchase. Prices are Exclusive of GST
For a customized quote or a monthly subscription plan, please reach out to us through the WhatsApp sales support available on this page, and we will respond back promptly.
Secure and trusted checkout with:

Q: What is the Microsoft Sensor Data Intelligence Scenario Add-in for Dynamics 365 Supply Chain Management?
A: It is an innovative add-in designed to help businesses harness the full potential of sensor data to optimize their supply chain operations and make informed decisions. By integrating sensor data with Dynamics 365 Supply Chain Management, you can gain real-time insights into your operations, improve efficiency, and reduce costs.
Q: How does this add-in integrate with Dynamics 365 Supply Chain Management?
A: The add-in seamlessly integrates with Dynamics 365 Supply Chain Management, providing a unified view of your operations. This integration allows for real-time data ingestion and processing from various sensor sources, including IoT devices and machines.
Q: What are the key features of the Microsoft Sensor Data Intelligence Scenario Add-in?
A: Key features include real-time data ingestion and processing from sensor sources, advanced analytics and machine learning capabilities, configurable dashboards and reports, a scalable and secure architecture, and seamless integration with Dynamics 365 Supply Chain Management.
Q: What are the key benefits of using this add-in for supply chain operations?
A: Benefits include improved supply chain visibility and transparency, enhanced operational efficiency and productivity, reduced costs and waste, increased customer satisfaction, and a competitive advantage through quick response to changing market conditions and customer needs.
Q: What use cases does the Microsoft Sensor Data Intelligence Scenario Add-in address?
A: Use cases include predictive maintenance, quality control, inventory management, supply chain optimization, and condition-based monitoring. These applications help reduce downtime, increase equipment effectiveness, optimize stock levels, streamline supply chains, and monitor asset conditions.
Q: How does the add-in handle data integrity and security?
A: The add-in features a scalable and secure architecture to support large volumes of sensor data and ensure data integrity. This ensures the confidentiality and protection of sensitive information while providing real-time insights and data-driven decision-making capabilities.
Q: How can sensor data improve inventory management?
A: By using sensor data to track inventory levels and movement, businesses can optimize stock levels, reduce stockouts, and make informed decisions on inventory management strategies.
Q: How does predictive maintenance using sensor data reduce downtime and improve overall equipment effectiveness?
A: Predictive maintenance allows businesses to schedule maintenance based on sensor data predicting equipment failures, reducing downtime and increasing overall equipment effectiveness.
Q: How does data-driven decision making improve operational efficiency and productivity?
A: Data-driven decision making enables businesses to make informed decisions based on real-time insights gained from sensor data. This leads to enhanced operational efficiency and productivity by identifying bottlenecks and areas for improvement in supply chain operations.
Q: How does the Microsoft Sensor Data Intelligence Scenario Add-in help with B2B and B2C SEO?
A: By utilizing high-paying keywords and an SEO keywords list in the website meta description and product descriptions, the add-in can help improve search engine rankings for both B2B and B2C audiences, increasing online visibility and generating leads.
VPN:
CFQ7TTC0HD4F
Specifications
General Information | |
---|---|
Brand | Microsoft |
License Information | |
---|---|
License Category | Business |
License Type | New |
License Tenure | Monthly |
Payment Terms | Prepaid |
Tags | |
---|---|
Tags |