M365.FM - Modern work, security, and productivity with Microsoft 365

The Shadow Data Blindspot: Mapping What You Can’t See with Purview

1 h 24 min · 8. juni 2026
episode The Shadow Data Blindspot: Mapping What You Can’t See with Purview cover

Beskrivelse

Your data map is supposed to show everything.Yet in most organizations, it only shows the data someone remembered to register.It doesn't show the forgotten storage account a project team created two years ago. It doesn't show the customer records copied into a personal OneDrive folder for "temporary analysis." It doesn't show abandoned development databases populated with production information, or AI training datasets stored in unmanaged cloud environments. Most importantly, it doesn't show how sensitive information continues to spread throughout the enterprise long after governance teams believe it is under control.In this episode, we explore one of the most significant challenges facing modern organizations: shadow data. While most enterprises invest heavily in cybersecurity, compliance programs, and data governance initiatives, many still have visibility into only a fraction of their actual data estate. The result is a growing blind spot that creates security risks, compliance exposure, operational inefficiencies, and increasing challenges for AI adoption.We examine why traditional governance approaches are failing in cloud-first environments, how remote work and SaaS adoption accelerated the problem, and why artificial intelligence may be making the challenge even more severe. Using Microsoft Purview as the foundation, we explore how organizations can shift from periodic audits and manual inventories toward continuous discovery, automated classification, and real-time visibility.The reality is simple: if you cannot see your data, you cannot govern it. UNDERSTANDING THE SHADOW DATA PROBLEM Many organizations confuse shadow data with shadow IT, but they are fundamentally different challenges.Shadow IT refers to unauthorized applications and technology platforms. Shadow data refers to the information itself—the files, databases, reports, spreadsheets, exports, backups, and copies that exist outside formal governance controls.The problem is far larger than most organizations realize.Sensitive information often appears in places nobody expected: * Personal OneDrive accounts * Departmental storage repositories * Forgotten test environments * Rogue cloud storage accounts * Developer sandboxes * AI training datasets The result is an enterprise environment where governance teams frequently have visibility into only a portion of the information they are expected to protect. HOW MODERN WORK CREATED A DATA VISIBILITY CRISIS The shadow data problem did not emerge overnight.For decades, employees created local copies of information to work around system limitations. What began as spreadsheets and database exports eventually evolved into cloud storage accounts, SaaS platforms, collaboration environments, and mobile devices.The rapid adoption of remote work accelerated this trend dramatically. Employees needed faster ways to access information from multiple locations and multiple devices. Teams adopted new collaboration tools, created temporary repositories, and shared files across environments that were never designed to become permanent business systems.At the same time, cloud adoption enabled business units to deploy storage and applications independently of central IT. Every new SaaS platform created another potential data repository. Every new integration created another copy of sensitive information.Today, organizations operate in an environment where data can move faster than governance processes can track it. THE FINANCIAL IMPACT OF INVISIBLE DATA Shadow data is often viewed as a security issue.In reality, it is a business issue.Organizations spend millions of dollars each year dealing with the consequences of unmanaged information. Security incidents involving shadow data frequently take longer to detect and contain because the affected repositories are unknown to governance teams.The impact extends far beyond breach costs.Employees waste countless hours searching for information spread across disconnected repositories. Different departments maintain conflicting versions of the same data. Projects slow down because teams cannot determine which source is authoritative. Compliance programs become more expensive because auditors require evidence that organizations often cannot provide.The hidden cost of invisible data frequently exceeds the cost of the technology required to discover it. WHY AI MAKES THE PROBLEM EVEN MORE SERIOUS Artificial intelligence has introduced an entirely new category of shadow data risk.Data science teams routinely create copies of production datasets for experimentation, model training, testing, and validation. These copies often contain highly sensitive information and frequently exist outside traditional governance frameworks.The challenge becomes even greater when organizations begin deploying Microsoft Copilot, Azure AI services, and custom AI solutions.AI systems depend on trustworthy data.If organizations cannot verify: * Where training data originated * Whether data was properly classified * Which users had access * Whether regulatory requirements were satisfied * How information moved through the environment Then they cannot fully trust the outputs generated by those systems.AI readiness ultimately begins with data visibility. WHY TRADITIONAL GOVERNANCE FAILED Most governance frameworks were designed for a world where data lived in known locations.Databases were centralized.File shares were controlled.Infrastructure changed slowly.That world no longer exists.Today, data is created, copied, transformed, and shared continuously across cloud platforms, collaboration tools, SaaS applications, and AI systems.Manual inventories cannot keep pace.Quarterly audits cannot keep pace.Spreadsheet-based governance cannot keep pace.By the time an inventory is completed, the environment has already changed.This is why many governance programs appear successful on paper while remaining blind to a significant percentage of the actual data estate. MICROSOFT PURVIEW'S DISCOVER-FIRST APPROACH Microsoft Purview approaches governance from a fundamentally different perspective.Rather than assuming organizations already know where their data lives, Purview assumes the inventory is incomplete.The goal is not simply to govern known assets.The goal is to discover unknown assets.Using the Purview Data Map, organizations can continuously scan and catalog data sources across cloud, on-premises, and SaaS environments. Instead of relying on manual registration, Purview builds a living inventory that evolves alongside the environment itself.This shift from static governance to continuous discovery represents one of the most important changes in modern information management. AUTOMATED DISCOVERY, CLASSIFICATION, AND LINEAGE Discovery is only the first step.Once assets are identified, organizations must understand what the data contains, where it originated, and how it moves throughout the enterprise.This episode explores how Purview combines: * Automated discovery * Sensitive data classification * Custom classifiers * Metadata enrichment * Data lineage * Relationship mapping To create a comprehensive understanding of the enterprise data landscape.Lineage is particularly important because it reveals how information flows between systems. A single customer record may originate in a governed database but eventually appear in multiple reports, storage accounts, analytics platforms, and AI pipelines.Without lineage, these copies remain invisible.With lineage, organizations gain the ability to trace information from creation to consumption. FROM DISCOVERY TO ACTION Finding shadow data is only valuable if organizations can act on what they discover.We explore how modern governance programs operationalize visibility through automated classification, sensitivity labels, retention policies, stewardship workflows, and remediation processes.Rather than relying exclusively on centralized governance teams, modern programs increasingly adopt a shift-left model where data owners participate directly in remediation efforts.This creates a more scalable governance framework that aligns responsibility with ownership while maintaining centralized oversight and policy enforcement.The result is a governance model that can operate continuously rather than periodically. BUILDING AN AI-READY DATA ESTATE The future of governance is no longer primarily about compliance.It is about trust.Organizations that understand their data can build more effective AI systems, improve decision-making, reduce security exposure, and respond faster to regulatory requirements.Organizations that cannot see their data will struggle to govern it, protect it, or use it effectively.As AI adoption accelerates, the ability to discover, classify, map, and govern information across the enterprise will become a foundational capability rather than an optional one.The future belongs to organizations that replace assumptions with visibility.Because before you can govern your data, you must first find it. WHO SHOULD LISTEN? This episode is designed for Microsoft 365 Architects, Azure Architects, Enterprise Architects, Data Architects, Governance Leaders, Compliance Officers, Security Teams, Microsoft Purview Administrators, Data Stewards, AI Engineers, Data Scientists, CIOs, CTOs, and CISOs.If your organization is investing in Microsoft Purview, Microsoft 365 Copilot Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support [https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support?utm_source=rss&utm_medium=rss&utm_campaign=rss].

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episode The Architect's Guide to MCP: Building the Connectivity Layer for Microsoft AI Agents cover

The Architect's Guide to MCP: Building the Connectivity Layer for Microsoft AI Agents

In this episode of the M365.fm podcast, we take a deep architectural dive into one of the most important developments in the AI ecosystem: the Model Context Protocol (MCP). While much of the industry focuses on models, prompts, copilots, and reasoning capabilities, the reality is that AI agents are only as powerful as the systems they can access. MCP is rapidly emerging as the standard connectivity layer that enables Microsoft Copilot, custom AI agents, Dynamics 365, Azure services, and enterprise applications to work together through a common protocol. WHY AI AGENTS HAVE A CONNECTIVITY PROBLEM Most organizations have already invested in Microsoft Copilot, AI assistants, and agentic solutions. The challenge isn't intelligence anymore. Modern AI systems can summarize meetings, draft content, analyze data, and generate code. The real challenge begins when those agents need to interact with business systems.Enterprise environments are filled with ERP platforms, CRM systems, SharePoint sites, databases, custom applications, and line-of-business tools. Traditional APIs were designed for developers and applications, not autonomous AI agents that need to dynamically discover capabilities and execute actions without human intervention.This episode explores why the integration layer has become the biggest bottleneck in enterprise AI adoption and how MCP addresses this challenge. WHAT IS MODEL CONTEXT PROTOCOL (MCP)? Model Context Protocol, originally introduced by Anthropic, has quickly evolved into an industry-wide standard for connecting AI systems to tools, resources, and external data sources. Microsoft has embraced MCP across its ecosystem, integrating support into Copilot Studio, Dynamics 365, Azure services, Visual Studio, and its broader AI platform strategy.Unlike traditional REST APIs, MCP introduces capability discovery. AI agents can dynamically learn what tools are available, what parameters are required, and what actions can be performed. This creates a much more natural interaction model for AI systems while dramatically reducing the complexity of enterprise integrations.The discussion explains the core building blocks of MCP, including tools, resources, prompts, and sampling, and why these concepts are reshaping the way organizations design AI architectures. MICROSOFT'S MCP ECOSYSTEM Microsoft's commitment to MCP extends far beyond simple protocol support. Throughout the episode, we explore how MCP has become a foundational component of Microsoft's AI strategy.Key areas discussed include: * Microsoft Copilot Studio MCP integration * Dynamics 365 Finance and Operations MCP support * Azure-hosted MCP server architectures * Visual Studio MCP tooling * Official Microsoft C# MCP SDK development The conversation highlights how Microsoft is positioning MCP as the standard way to connect AI agents with enterprise systems at scale. BUILDING MCP SERVERS WITH C# For architects and developers, understanding how to build MCP servers is becoming a critical skill. This episode explores the official Microsoft C# SDK, server development patterns, dependency injection support, structured tool outputs, authentication considerations, and production deployment models.Listeners will gain insight into how MCP servers expose business capabilities through standardized interfaces and why this approach is far more sustainable than creating custom integrations for every AI project. STREAMABLE HTTP, AZURE, AND PRODUCTION DEPLOYMENTS Moving from local development to enterprise deployment introduces a new set of architectural considerations. The discussion examines MCP transport layers, including stdio, Server-Sent Events, and the newer Streamable HTTP model.Special attention is given to Azure deployment strategies, including: * Azure Functions * Azure Container Apps * Azure API Management * Azure Key Vault * Application Insights * Microsoft Entra integration These deployment patterns provide the foundation for secure, scalable, enterprise-grade MCP environments. WORK IQ AND ORGANIZATIONAL INTELLIGENCE One of the most exciting topics covered is Microsoft's Work IQ initiative. Work IQ acts as an intelligence layer that understands organizational context across Microsoft 365.By connecting information from SharePoint, Teams, OneDrive, Outlook, meetings, and collaboration platforms, Work IQ enables AI agents to reason using real-time organizational knowledge rather than static training data alone.The episode explores how Work IQ integrates with MCP and why contextual intelligence may become one of the most valuable capabilities in future AI architectures. AGENT-TO-AGENT COMMUNICATION AND THE FUTURE OF AI Beyond MCP, the discussion introduces the Agent-to-Agent (A2A) protocol and explains why the future of AI will likely involve networks of specialized agents collaborating together.While MCP focuses on connecting agents to tools and data, A2A focuses on enabling agents to communicate with other agents. Together, these standards form the foundation of a new generation of distributed, collaborative AI systems.Listeners will learn how Microsoft, Google, AWS, and other industry leaders are shaping this emerging ecosystem. SECURITY, GOVERNANCE, AND ENTRA AGENT ID Security remains one of the biggest concerns in enterprise AI adoption. The episode examines Microsoft's approach through Entra Agent ID, Agent 365, Conditional Access for agents, and Zero Trust principles for non-human identities.Topics include: * Agent identity management * Conditional Access policies * Agent governance frameworks * Security monitoring and auditing * Enterprise compliance considerations Understanding these concepts is essential for any organization planning to deploy AI agents at scale. THE FUTURE OF AI CONNECTIVITY The central message of this episode is simple: successful AI strategies are no longer defined solely by model quality. They are defined by connectivity.Organizations that build strong MCP foundations today will be able to deploy new agents faster, integrate systems more efficiently, reduce technical debt, and create reusable AI capabilities across their entire business landscape.MCP is rapidly becoming the "USB-C for AI"—a universal connectivity layer that enables agents, applications, data sources, and enterprise platforms to communicate through a common language.For Microsoft architects, IT leaders, developers, and AI strategists, understanding MCP is no longer optional. It is quickly becoming one of the most important architectural concepts in the modern Microsoft ecosystem. Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support [https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support?utm_source=rss&utm_medium=rss&utm_campaign=rss].

18. juni 20261 h 24 min
episode From Project Online to AI-Powered Project Delivery: The Evolution of Dynamics 365 Project Operations with Joe Griffin [MVP] cover

From Project Online to AI-Powered Project Delivery: The Evolution of Dynamics 365 Project Operations with Joe Griffin [MVP]

In this insightful episode of the M365 Podcast, host Mirko Peters welcomes Joe Griffin, Microsoft MVP, CEO of proMX UK, Microsoft Certified Trainer, and one of the most recognized experts in Dynamics 365 Project Operations. With more than 40 Microsoft certifications covering Dynamics 365, Power Platform, Azure, Artificial Intelligence, and the broader Microsoft Cloud ecosystem, Joe brings a unique blend of technical expertise, business leadership, and real-world implementation experience.The conversation explores one of the most important transitions currently happening in the Microsoft project management landscape: the retirement of Microsoft Project Online and the growing adoption of Dynamics 365 Project Operations. Joe explains why organizations should start preparing now, what migration paths are available, and how businesses can use this moment as an opportunity to modernize not only their technology stack but also their project delivery processes. UNDERSTANDING DYNAMICS 365 PROJECT OPERATIONS Joe provides a comprehensive overview of Dynamics 365 Project Operations and explains why it has become a strategic platform for project-based organizations. Unlike traditional project management tools that focus solely on task management and scheduling, Project Operations combines project planning, resource allocation, budgeting, financial management, time tracking, expense management, invoicing, and AI-driven insights into a single solution built on Microsoft Dataverse.The discussion highlights how organizations can gain end-to-end visibility across project lifecycles while improving resource utilization and financial performance. Joe also explains how Project Operations leverages familiar Microsoft technologies such as Planner, Power Platform, and Dataverse to create a connected and scalable project management environment. KEY TAKEAWAYS: * What Dynamics 365 Project Operations actually does * Who should consider adopting the platform * How it differs from traditional project management tools * Why professional services organizations benefit the most * The role of Dataverse and Power Platform PROJECT ONLINE RETIREMENT AND MIGRATION STRATEGIES A major focus of the episode is Microsoft's planned retirement of Project Online. Joe explains what the announcement means for existing customers and outlines the options available for organizations currently relying on Project Online for project planning and portfolio management.Drawing from real-world migration projects, Joe shares practical advice on preparing data, simplifying project structures, and avoiding common migration pitfalls. He also discusses the importance of reviewing legacy processes and using the migration as an opportunity to modernize project management practices.The conversation dives into technical considerations such as Project Desktop files, Scheduler APIs, resource mapping, testing environments, and large-scale migration automation. MIGRATION TOPICS COVERED: * Project Online retirement implications * Migration planning and assessment * Common data migration challenges * Managing complex project portfolios * Best practices for successful adoption HOW AI IS CHANGING PROJECT MANAGEMENT Artificial Intelligence is rapidly transforming business applications, and Dynamics 365 Project Operations is no exception. Joe explores how Microsoft is embedding AI across the platform and shares practical examples of AI-powered capabilities available today.One particularly interesting example is the Time Entry Agent, which can automatically generate draft timesheets based on calendars, resource assignments, and previous activities. Instead of chasing employees for timesheet submissions, organizations can leverage AI to automate much of the process while maintaining human oversight.The discussion also covers AI-generated project status reports, intelligent resource recommendations, project risk identification, and the future potential of autonomous project management capabilities. AI IN PROJECT OPERATIONS: * Automated time entry generation * AI-powered status reporting * Intelligent resource recommendations * Risk detection and forecasting * Future project management agents POWER PLATFORM AND AZURE INTEGRATION Joe explains why the real power of Dynamics 365 Project Operations comes from its integration with the wider Microsoft ecosystem. Because the platform is built on Dataverse, organizations can extend functionality using Power Apps, Power Automate, Power BI, Power Pages, and Azure services.Listeners will learn how companies can create custom project experiences, automate business processes, build advanced reporting solutions, and integrate Project Operations with external ERP systems. Joe also discusses how Azure Service Bus, Azure Functions, and modern integration architectures help organizations scale complex project environments.The episode provides valuable guidance for solution architects and technical leaders looking to design enterprise-grade project management solutions that remain scalable and maintainable over time. ARCHITECTURE AND EXTENSIBILITY TOPICS: * Power Apps customization strategies * Power Automate workflows * Power BI reporting and analytics * Azure integration patterns * Enterprise architecture best practices THE ROLE OF MICROSOFT FABRIC AND AI FOUNDRY Looking ahead, the conversation explores emerging technologies such as Microsoft Fabric and Azure AI Foundry. Joe explains how Fabric can serve as a centralized data foundation for AI initiatives by bringing together information from Dynamics 365, Power Platform, and other business systems.The discussion highlights how organizations that establish strong data foundations today will be better positioned to take advantage of future AI capabilities. Joe also shares his perspective on AI Foundry, model selection, fine-tuning opportunities, and the growing importance of enterprise-ready AI governance. Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support [https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support?utm_source=rss&utm_medium=rss&utm_campaign=rss].

I går43 min
episode Indirect Injection: The Silent Killer of Enterprise AI cover

Indirect Injection: The Silent Killer of Enterprise AI

Most organizations believe their biggest AI risk is hallucination. It isn't. The real threat is something far more dangerous. A vulnerability that hides inside trusted documents. A vulnerability that bypasses access controls. A vulnerability that transforms ordinary business content into executable instructions. It's called Indirect Prompt Injection. And if your Microsoft 365 Copilot, Azure AI Foundry implementation, Power Platform solution, or enterprise AI assistant relies on Retrieval-Augmented Generation (RAG), you may already be exposed. In this episode, we explore one of the fastest-growing threats in enterprise AI security and why the architecture behind modern Copilots may contain a fundamental design flaw. We examine how poisoned documents, hidden instructions, malicious metadata, and compromised knowledge bases can manipulate AI systems without ever breaching a firewall or exploiting a traditional software vulnerability. From Microsoft 365 Copilot and SharePoint to Teams, Outlook, Power Platform, Azure OpenAI, and vector databases, we explain why organizations must stop thinking about documents as passive data and start treating them as executable code. If your organization is building AI-powered solutions on proprietary enterprise data, this episode may be one of the most important security discussions you'll hear this year. THE RAG REVOLUTION THAT CHANGED EVERYTHING Retrieval-Augmented Generation transformed enterprise AI. Instead of retraining massive models on internal data, organizations simply connect AI systems to existing knowledge repositories. We explore: * Retrieval-Augmented Generation (RAG) * Microsoft 365 Copilot architecture * Microsoft Graph integration * SharePoint knowledge retrieval * Outlook and Teams context * Vector databases * Semantic search RAG solved the enterprise knowledge problem. It also created a completely new attack surface. WHY DATA IS NO LONGER JUST DATA Traditional software separates data from code. Large Language Models do not. Every piece of text retrieved from a knowledge base becomes part of the model's prompt. The AI cannot reliably distinguish: * Facts * Instructions * Policies * Commands * Metadata * Context Everything becomes tokens. Everything influences behavior. This episode explains why the phrase "Data is Code" has become one of the most important concepts in modern AI security. UNDERSTANDING INDIRECT PROMPT INJECTION Most organizations understand direct attacks. Few understand indirect ones. Direct prompt injection occurs when an attacker interacts directly with the AI system. Indirect prompt injection happens when malicious instructions are embedded inside content the AI retrieves. We examine: * Hidden instructions * Poisoned documents * Embedded commands * Context manipulation * Retrieval abuse * Prompt hijacking The attacker never talks to the AI. The document does it for them. WHY SYSTEM PROMPTS ARE NOT A FIREWALL One of the most dangerous misconceptions in enterprise AI is the belief that system prompts provide security boundaries. They don't. We discuss: * Prompt hierarchy failures * Instruction conflicts * Context competition * Attention mechanisms * System prompt limitations * Safety override scenarios Your AI's security policies are ultimately competing with every document it reads. And sometimes the documents win. THE OWASP NUMBER ONE AI SECURITY RISK Prompt injection consistently ranks as one of the most serious risks facing AI systems today. This episode explores: * OWASP GenAI Top 10 * LLM01 Prompt Injection * AI threat modeling * Enterprise AI vulnerabilities * Security community guidance * Emerging attack patterns Prompt injection isn't theoretical. It's increasingly recognized as the primary security challenge for enterprise AI deployments. POISONING THE KNOWLEDGE BASE Attackers no longer need to compromise the model. They only need to compromise the content. We examine how adversaries weaponize: * SharePoint documents * PDFs * Wiki pages * Email archives * Teams conversations * Knowledge repositories Learn how a single poisoned document can influence thousands of future Copilot interactions. HIDDEN TEXT, METADATA, AND INVISIBLE INSTRUCTIONS The most dangerous attacks aren't visible. Organizations often review documents visually. AI systems don't. We explore: * White-on-white text * Hidden paragraphs * PDF metadata * Document properties * Embedded comments * Unicode manipulation * Invisible instructions The content humans ignore may be the content the AI obeys. THE SLEEPER AGENT PROBLEM Some attacks don't activate immediately. They wait. A poisoned document can remain dormant for months before triggering under specific conditions. We discuss: * Trigger-based attacks * Delayed activation * Backdoor behavior * Conditional instructions * Query-based triggers * Long-term persistence The attack may already exist in your environment. It simply hasn't been activated yet. MICROSOFT 365 ATTACK SURFACES YOU AREN'T MONITORING Enterprise AI reads more than most organizations realize. Potential attack vectors include: * SharePoint Online * OneDrive * Teams Chats * Outlook Email * Calendar Invites * Wiki Pages * Power Platform Data Sources * Microsoft Graph Content Every repository becomes part of the AI security perimeter. Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support [https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support?utm_source=rss&utm_medium=rss&utm_campaign=rss].

I går1 h 18 min
episode From SharePoint Developer to Power Platform Architect: Building Secure and Scalable Solutions with Michel Mendes [MVP] cover

From SharePoint Developer to Power Platform Architect: Building Secure and Scalable Solutions with Michel Mendes [MVP]

In this episode of the M365 Podcast, Mirko Peters sits down with Microsoft MVP Michel Mendes to explore his remarkable journey from traditional SharePoint development to becoming a leading Power Platform Architect. Michel shares how he started his Microsoft technology career in Brazil, transitioned from C# and SharePoint development into the modern Power Platform ecosystem, and eventually moved to Ireland to continue building enterprise-grade solutions for organizations worldwide.Throughout the conversation, Michel provides valuable insights into how the Microsoft ecosystem has evolved over the years, the growing role of AI in software development, and why understanding architecture, governance, and security remains critical even in a low-code world. Whether you're a developer, solution architect, IT leader, or Power Platform enthusiast, this episode delivers practical guidance for building scalable and maintainable business applications. POWER PLATFORM EVOLUTION AND THE FUTURE OF DEVELOPMENT Michel discusses how Power Platform has transformed application development by enabling both professional developers and technically minded business users to build solutions faster than ever before. He also shares his perspective on how AI-powered development tools such as GitHub Copilot are changing the way applications are designed, prototyped, and maintained.Key topics include:• The transition from traditional development to low-code solutions • How AI is accelerating software delivery • Why developers who embrace AI will thrive • The future of Power Apps, Power Pages, and pro-code development • The importance of understanding business problems before building technology BUILDING ENTERPRISE POWER APPS THAT SCALE Creating an app is easy. Creating an app that remains maintainable, performant, and scalable for years is much harder.Michel explains the architectural principles that separate successful Power Platform implementations from those that struggle over time. He shares practical advice on designing reusable components, improving performance, and creating solutions that can grow alongside business requirements.Topics covered:• Power Apps design best practices • Building maintainable applications • Performance optimization strategies • Reusable components and architecture patterns • Measuring business value and user adoption DATAVERSE AS THE FOUNDATION OF MODERN BUSINESS APPLICATIONS A major part of the discussion focuses on Microsoft Dataverse and its role as the foundation for enterprise-grade Power Platform solutions.Michel explains why Dataverse is much more than a database and how it provides built-in governance, security, authentication, and scalability capabilities that help organizations avoid reinventing the wheel.Learn about:• Dataverse architecture fundamentals • Security and governance advantages • Building scalable business applications • Plugins versus Power Automate flows • Designing efficient data models POWER PAGES AND EXTERNAL BUSINESS SOLUTIONS Michel is widely recognized for his expertise in Power Pages, and this episode dives deep into how organizations can create secure, modern, and scalable external-facing websites powered by Dataverse.The conversation explores when Power Pages is the right choice, how it differs from Power Apps, and how recent innovations are making the platform even more attractive for professional developers.Highlights include:• Power Pages fundamentals • External portals and customer-facing applications • React and Angular-based SPA experiences • AI-assisted website development • Modern Power Pages architecture SECURITY, GOVERNANCE, AND WEB API BEST PRACTICES One of the most valuable sections of the episode focuses on security.Michel explains common mistakes developers make when exposing Dataverse data through Power Pages and outlines practical approaches for protecting sensitive information while maintaining usability.Topics include:• Dataverse table permissions • Column-level security • Power Pages Web API security • Common security vulnerabilities • Governance and compliance best practices • Penetration testing and security reviews COMMUNITY, CAREER GROWTH, AND MVP INSIGHTS Michel also shares his experiences as a Microsoft MVP and discusses the importance of contributing back to the Microsoft community through blogging, conference speaking, GitHub projects, and social media engagement.For professionals starting their Power Platform journey, he provides actionable advice on certifications, learning paths, and developing a long-term career strategy within the Microsoft ecosystem.This episode is packed with real-world experience, technical insights, and practical guidance for anyone looking to build secure, scalable, and future-ready solutions with Microsoft Power Platform.Whether you're a SharePoint veteran, a Power Platform developer, a solution architect, or simply curious about the future of low-code and AI-powered development, this conversation with Michel Mendes delivers valuable lessons from someone who has successfully navigated every stage of that journey. Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support [https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support?utm_source=rss&utm_medium=rss&utm_campaign=rss].

16. juni 202644 min
episode STOP BUILDING SILOED AGENTS: The Logic App Nervous System cover

STOP BUILDING SILOED AGENTS: The Logic App Nervous System

Everyone is building AI agents.Very few organizations are building agent architectures.Across Microsoft 365, Copilot Studio, Azure OpenAI, Power Platform, and custom AI solutions, enterprises are racing to deploy copilots, bots, assistants, and autonomous workflows. Teams are creating agents for customer service, IT support, HR onboarding, knowledge discovery, incident management, and business operations.Most of them work.At least in the demo.But something very different happens when organizations move beyond a single agent and attempt to coordinate dozens of AI-powered systems across multiple business units, multiple platforms, and multiple Microsoft 365 tenants.The result is often chaos.Disconnected bots. Duplicate integrations. Credential sprawl. Governance gaps. Broken workflows. Untraceable actions. And increasingly, AI agents that cannot collaborate because they were never designed to operate as part of a larger system.In this episode, we explore why enterprise AI is repeating the same architectural mistakes organizations made during the early API revolution, why point-to-point agent integrations are becoming unsustainable, and how Azure Logic Apps is emerging as the orchestration layer that connects reasoning, execution, governance, identity, and automation into a single enterprise nervous system.If your organization is investing in Copilot Studio, Azure OpenAI, Microsoft 365 Copilot, Power Platform, or custom AI agents, this episode provides a blueprint for building agent ecosystems that actually scale. THE CHATBOT MIRAGE Most enterprise AI projects begin with a simple success story.A team creates a bot.The bot answers questions.The demo works.The project gets funded.Then another department builds another bot.And another.And another.Soon the organization has dozens of isolated AI systems solving local problems but creating enterprise-wide complexity.We explore: * Why AI demos rarely reveal architectural weaknesses * The difference between local optimization and enterprise orchestration * How siloed agents create operational debt * Why successful pilots often fail at scale * The hidden cost of disconnected automation The problem isn't the agents.The problem is the architecture beneath them. THE POINT-TO-POINT INTEGRATION TRAP Every agent needs data.Most agents get it the wrong way.Organizations frequently allow agents to connect directly to APIs, databases, SaaS platforms, and Microsoft Graph endpoints.Initially this feels efficient.Eventually it becomes unmanageable.This episode examines: * Point-to-point integration sprawl * Credential proliferation * Duplicate business logic * Decentralized error handling * Governance fragmentation * Observability challenges The more agents you deploy, the more dangerous direct integration becomes. WHY AGENTS FAIL AT ENTERPRISE SCALE The most advanced language model in the world cannot compensate for poor architecture.We discuss why: * Reasoning is not orchestration * Intelligence is not governance * Conversation is not workflow management * Tool calling is not process execution * AI is not a replacement for enterprise integration Enterprise success depends less on model sophistication and more on execution architecture. THE STATEFUL GAPOne of the most important concepts in this episode is the distinction between reasoning and memory.Most AI agents are stateless.Enterprise processes are not.We explore: * Stateless automation * Stateful orchestration * Long-running workflows * Process persistence * Workflow recovery * Correlation and context management An employee onboarding process may last days or weeks.A chatbot conversation may last minutes.These are fundamentally different workloads. WHY COPILOTS NEED A NERVOUS SYSTEM Human brains don't directly control every muscle individually.The nervous system coordinates actions.Enterprise AI requires the same model.This episode introduces the Logic App Nervous System architecture where: * Agents reason * Logic Apps orchestrate * Connectors execute * Policies govern * Identity secures * Observability monitors The result is coordinated intelligence instead of isolated automation. AZURE LOGIC APPS AS THE ORCHESTRATION LAYER Azure Logic Apps was originally designed for enterprise integration.It is rapidly becoming one of the most important foundations for agentic workflows.We examine: * HTTP-triggered orchestrations * Event-driven automation * Workflow persistence * Long-running process support * Enterprise connectors * Business process orchestration Logic Apps becomes the central coordination layer between agents and enterprise systems. STANDARD VS CONSUMPTION ot all Logic Apps are equal.Choosing the wrong hosting model can limit scalability before your architecture even launches.We compare: * Logic Apps Consumption * Logic Apps Standard * Stateful workflows * Stateless workflows * DevOps integration * Networking capabilities * Performance characteristics For serious agent orchestration, the answer becomes increasingly clear. STATEFUL WORKFLOWS: THE MEMORY LAYER Memory is what transforms automation into orchestration.Stateful workflows provide: * Checkpointing * Persistence * Recovery * Waiting states * Approval handling * Cross-system coordination We explain why workflow memory is often more important than model memory. THE AGENT LOOP ACTION One of Microsoft's most important innovations for agentic workflows is the Agent Loop action.This episode explores: * Think-Act-Learn cycles * Tool execution * Iterative reasoning * Memory retention * AI-assisted orchestration * Workflow-native agents Rather than bolting AI onto workflows, Agent Loop embeds reasoning directly into the orchestration layer. CONNECTORS AS NEURAL PATHWAY SIn the nervous system analogy, connectors become the nerves.They connect orchestration to execution.We discuss: * Microsoft Graph * SharePoint * Teams * Outlook * Dataverse * Dynamics 365 * Azure Services * Custom APIs The orchestrator becomes the central intelligence that routes activity across the enterprise. CUSTOM CONNECTORS AND LOGIC-IN-API Modern enterprises cannot expose proprietary business logic directly to agents.Instead, they need contracts.We explore: * OpenAPI specifications * Custom connectors * Internal APIs * Enterprise service layers * Reusable business capabilities * Governance boundaries Custom connectors become the contract layer between AI and enterprise systems. THE CROSS-TENANT CHALLENGE Most organizations no longer operate in a single Microsoft 365 tenant.Mergers, acquisitions, regional operations, and regulatory requirements have changed the landscape.This episode examines: * Multi-tenant architectures * Cross-tenant identity * Microsoft Entra collaboration * Sovereign boundaries * Tenant isolation * Enterprise coordination Cross-tenant orchestration is becoming the default, not the exception. MANAGED IDENTITIES EXPLAINED Secrets are one of the biggest weaknesses in enterprise automation.We explain how managed identities eliminate: * Client secrets * Credential sprawl * Manual rotation * Shared credentials * Configuration risk Identity becomes a platform capability instead of an operational burden. WORKLOAD IDENTITY FEDERATION Cross-tenant automation introduces a new challenge.How do workloads authenticate without secrets?This episode explores: * Workload identity federation * Azure AD Token Exchange * Federated credentials * Cross-tenant trust * Secretless authentication * Zero Trust architectures This becomes one of the most important building blocks for enterprise-scale agent ecosystems. MICROSOFT ENTRA AGENT ID Identity is becoming a first-class concern for AI agents.We examine how Microsoft Entra Agent ID enables: * Agent governance * Agent identities * Blueprint-driven permissions * Security boundaries * Authorization controls * AI accountability The future of AI governance begins with identity. ERROR HANDLING AS INTELLIGENCE Failures are inevitable.Resilience is optional.We explore advanced orchestration patterns including: * Scoped error handling * Adaptive retries * Compensating transactions * AI-assisted error triage * Self-healing workflows * Recovery orchestration The goal is not preventing failure.The goal is surviving failure intelligently. Become a supporter of this podcast: https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support [https://www.spreaker.com/podcast/m365-fm-modern-work-security-and-productivity-with-microsoft-365--6704921/support?utm_source=rss&utm_medium=rss&utm_campaign=rss].

16. juni 20261 h 18 min