Skip to content

See how Crowd Analytics platform built on Azure can provides occupancy insights in workspace and other location for safety while having technical fun with AI-driven platform on Kubernetes, with detailed walk through guide.

License

Notifications You must be signed in to change notification settings

mohamedsaif/IntelligentExperiences.OnContainers

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Intelligent Experiences On Containers

Hands-on workshop to create a container-based backend platform that exposes async AI services

architecture

Service Build Release
Cognitive Orchestrator Build Status cognitive orchestrator
Cam-Frame Analyzer Build Status camframe analyzer
Crowd Analyzer Build Status crowd analyzer
Core Lib Build Status CoreLib package in Mo.Packages feed in Azure Artifacts
Cognitive Services Helper Build Status CognitiveServiceHelpers package in Mo.Packages feed in Azure Artifacts

Overview

Follow this detailed walk through guide to see how a Crowd Analytics platform, built on Azure, can provide occupancy insights in a workspace, or some other location, while having technical fun with an AI-driven platform on Kubernetes.

Almost all enterprises already operate networked CCTV cameras in their buildings and stores. This Crowd Analytics Platform extends the capabilities of these cameras to include additional useful intelligence, to improve customer experience and safety, through AI.

NOTE: It is important to mention before diving into the platform that leveraging and designing AI powered solutions should always adhere to responsible and ethical principles that reflect trust and timeless values. I personally like Microsoft's principles about fairness, inclusiveness, reliability, safety, transparency, privacy, security and accountability. Read more

Crowd Analytics

Crowd analytics (also known as footfall analytics) is about gaining a better understanding of the demographics (age, gender,...) of who is visiting your location, when they are visting, and how many are visting.

This workshop walks through a guided deployment of a connected, secure and reliable Crowd Analytics platform, leveraging cloud native technologies.

Crowd analytics scenarios can be used in:

  1. Retail shops in many industries (like telecom shops, consumer goods retailers, malls…)
  2. Public and Private Parks
  3. Events
  4. Building safety and evacuation readiness
  5. And many other scenarios

Advanced cloud technologies can provide key business metrics that allow stakeholders to make informative decisions on how to improve experience and/or performance.

Open Source and Azure Technologies

azure-tech

Azure already provides a sophisticated platform to develop and operate such a system, and the Crowd Analytics platform makes use of a number of Azure's services.

Kubernetes has become the defacto cloud native technology to develop and operate sophisticated containerized systems anywhere, and Azure Kubernetes Service (AKS) takes care of a lot of the cluster management tasks, allowing you to focus more on the solution you want to build.

Key technologies used in the workshop include:

  • Azure Kubernetes Service (AKS)
  • Azure Container Registry (ACR)
  • Azure Service Bus
  • Azure IoT Hub
  • Azure Cognitive Services
  • Azure Storage
  • Azure DevOps
  • Power BI
  • and many more

I'm really excited to share with you the great journey I took to build this system.

Workshop Agenda

  1. Dev Environment Setup
    • Visual Studio Code
    • Azure CLI
    • Other tools
  2. Solution Whiteboarding & Architecture
    • Walkthrough the system objectives
    • Review Azure architecture
  3. Creating Azure Prerequisites
    • Resource Group
    • Storage Account
    • Cosmos DB
    • Service Bus
    • Cognitive Service
    • Container Registry
    • Virtual Network
    • Log Analytics
    • App Insights for each app
  4. AKS Cluster
    • Essential kubernetes cluster provisioning
    • Kubernetes cluster preparations
  5. Creating IoT Hub and IoT Edge Device
    • IoT Hub Provisioning
    • Message Routing to Service Bus
    • Device Options
    • Workshop Device Setup
  6. Services Deployment & Testing
    • Connecting to Azure
    • Source Code
    • Continuos Integration
    • Continuos Delivery
    • Testing
  7. Data Visualization
    • Power BI Desktop
    • Connecting to Cosmos Db
    • Query edit and data prep
    • Design the report
    • Publish the report
  8. BONUS Track: Crowd Analytics APIs
    • Overview
    • Deployment
    • API Testing
  9. BONUS Tracks (coming soon)
    • Advanced AKS Provisioning
      • AKS Preview Features
      • Azure AD Integration
      • Helm initialization
      • Node pools (with Windows Pool)
      • Virtual Nodes
      • Application Gateway Ingress Controller
      • Azure Firewall and Egress Lockdown
    • API Management
    • Azure AD Integration
    • Realtime Communication
      • Cosmos DB Change Feed
      • SignalR client communication
    • IoT Edge Deployment
      • IoT Edge on Kubernetes
      • Custom Modules
      • IoT Edge on Raspberry Pi with USB Camera

Suggested 1-Day Workshop Agenda

Topic Duration
Registration and Setup 15 mins
Why Intelligent Experiences? 20 mins
Intelligent Retail - Crowd Analytics Overview 25 mins
Break
Solution White-boarding 30 mins
Lab - Azure Services Provisioning 60 mins
Lab - AKS Provisioning 60 mins
Lunch
Lab - IoT Hub Provisioning 30 mins
Lab - DevOps & Services Deployment 90 mins
Break
Lab - Dashboard & Data Visualization 30 mins
Q and A + Next Steps 30 mins
Bonus Workshop Material (Take home tasks)
Bonus 1 - Advanced AKS Provisioning -
Bonus 2 - IoT Edge Development -

About the project

I tried to make sure I covered all aspects and best practices while building this project, but all included architecture, code, documentation, and any other artefacts represent my personal opinion only. Think of it as one suggested way in which this platform could be built.

Keep in mind that this is a work-in-progress, and I will continue to contribute to it when I can.

All constructive feedback is welcomed 🙏

Support

You can always create issue, suggest an update through PR or direct message me on Twitter.

Contributors

Cognitive-Samples-IntelligentKiosk

Part of this workshop source code is based on Cognitive-Samples-IntelligentKiosk. Visit the GitHub repo to know more about all of the great capabilities of Azure Cognitive Services.

HTML5 UserMedia

Using a webcam through HTML5/JS code based partially on the great demo from DaveVoyles

Author

Photo
Mohamed Saif
GitHub
Twitter
Blog

License

All Intelligent Experiences On Containers documentation and samples are licensed with the MIT License. For more details, see LICENSE

Developer Code of Conduct

The image, voice, video or text understanding capabilities of the Intelligent Kiosk Sample uses Microsoft Cognitive Services. Microsoft will receive the images, audio, video, and other data that you upload (via this app) for service improvement purposes. To report abuse of the Microsoft Cognitive Services to Microsoft, please visit the Microsoft Cognitive Services website at https://www.microsoft.com/cognitive-services, and use the “Report Abuse” link at the bottom of the page to contact Microsoft. For more information about Microsoft privacy policies please see their privacy statement here: https://go.microsoft.com/fwlink/?LinkId=521839.

Developers using Cognitive Services, including this sample, are expected to follow the “Developer Code of Conduct for Microsoft Cognitive Services”, found at http://go.microsoft.com/fwlink/?LinkId=698895

About

See how Crowd Analytics platform built on Azure can provides occupancy insights in workspace and other location for safety while having technical fun with AI-driven platform on Kubernetes, with detailed walk through guide.

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published