in Jun 23, 2026
The prevailing issue with anti-fraud AI models in banks is not rooted in technical deficiencies, but rather in the lack of clear accountability when these models produce erroneous results. Effective governance is often misconstrued as a regulatory impediment, when in reality, it is the crucial factor that distinguishes a model destined for production from one that remains in the conceptual phase, never to see the light of day. A well-defined governance structure ensures that the deployment of AI models is not only technically sound but also legally and ethically robust, thereby mitigating potential risks and repercussions.
#ArtificialIntelligence#AntiFraud#BankingSecurity#AIRegulation#FinancialTechnology#RiskManagement#Compliance#CyberSecurity#MachineLearning#DataAnalytics#FinancialInclusion#DigitalTransformation#رؤية2030#Emkan#Project_Managment#Program_Managment
View on LinkedIn ↗ in Jun 23, 2026
The push for transparency in AI decision-making has reached a critical juncture. For instance, in high-stakes applications such as healthcare and finance, the need for explainable AI is not just a desirable trait, but a necessity. Consider the case of a machine learning model denying a loan application - the applicant has a right to know the reasoning behind that decision. By prioritizing explainability, we can ensure that AI systems are not only effective but also fair and accountable.
#ExplainableAI#AItransparency#AccountableAI#TrustworthyAI#AIethics#AIgovernance#MachineLearning#DataScience#ArtificialIntelligence#DigitalTransformation#Innovation#رؤية2030#Emkan#Project_Managment#Program_Managment
View on LinkedIn ↗ in Jun 8, 2026
حوكمة التقنية تعتبر العمود الفقري لمشاريع التحول الرقمي، حيث بدونها قد تتراجع هذه المشاريع إلى الوراء وتفقد أهدافها. من هنا، يأتي دور القيادات في تأكيد أهمية حوكمة التقنية لضمان نجاح هذه المشاريع وتحقيق الأهداف المنشودة
#حوكمة_التقنية#التحول_الرقمي#القيادة#النجاح#المشاريع#التقنية#الأمان_الرقمي#السرية_الرقمية#البيانات_الكبيرة#التحليل_البيئي#الاستراتيجية_الرقمية#رؤية2030#Emkan#Project_Managment#Program_Managment
View on LinkedIn ↗ in May 6, 2026
Most factories don't need another AI pilot. They need AI that survives Monday morning.
After working with manufacturing leaders on digital transformation roadmaps, I've noticed a pattern: the AI use cases that actually scale are rarely the flashy ones.
Here's where AI is delivering measurable ROI on the shop floor today:
1. Predictive Maintenance — Vibration and thermal sensors feeding ML models can cut unplanned downtime by 30-50%. The catch? Your CMMS data must be clean before the algorithm touches it.
2. Computer Vision QC — Defect detection at line speed, replacing inconsistent manual inspection. We've seen scrap rates drop significantly within 90 days when deployed correctly.
3. Demand Forecasting — AI-driven S&OP reduces both stockouts and excess inventory. Especially powerful when integrated with supplier lead-time variability.
4. Energy Optimization — Reinforcement learning agents tuning HVAC, compressors, and furnaces. Often a 10-15% energy reduction with zero CAPEX beyond the model.
5. Generative AI for SOPs — Operators querying maintenance manuals in natural language (and in their native language) instead of flipping through 400-page PDFs.
The real lesson from PMO experience: AI in manufacturing fails not because of the model, but because of weak data governance, unclear ownership, and lack of OT/IT alignment.
The technology is ready. The operating model usually isn't.
Which AI use case has delivered the strongest ROI in your operations — and what made it stick beyond the pilot phase?
View on LinkedIn ↗ in May 6, 2026
Most IT service providers are still selling tickets, SLAs, and headcount.
The smart ones are quietly replacing all three with AI agents.
Here's what I'm seeing on the ground in enterprise delivery:
1. Service Desk Triage — AI agents now resolve up to 60% of L1 tickets without human routing. The provider's value shifts from volume to orchestration quality.
2. Project Status Reporting — Agents pull from Jira, Azure DevOps, and Teams to draft weekly PMO reports in minutes. Project managers move from reporters to decision-makers.
3. Vendor & Contract Intelligence — Agents read SOWs, flag scope drift, and benchmark rates. Procurement cycles compress from weeks to days.
4. Demand Intake — Instead of static forms, conversational agents qualify business requests, estimate effort, and route to the right delivery pod automatically.
The uncomfortable truth for service providers: the billable-hour model is being disrupted from inside the delivery function.
Clients are starting to ask a different question. Not "how many engineers will you assign?" but "how many agents are in your delivery stack, and what's your human-to-agent ratio?"
The providers who win the next 24 months won't be the cheapest or the largest. They'll be the ones who productize AI agents into their service catalog with clear governance, measurable outcomes, and transparent economics.
The rest will compete on price until the margin disappears.
Question for fellow delivery and PMO leaders: Are you treating AI agents as a tool your team uses, or as a service line your organization sells?
#AIStrategy #DigitalTransformation #PMO #ITGovernance #AIAgents
View on LinkedIn ↗ in May 6, 2026
Most PMs are still using AI to summarize meeting notes. That's the floor, not the ceiling.
After deploying GenAI across delivery teams at EMKAN, I've seen where it actually moves the needle, and where it quietly fails. The difference isn't the model. It's how you wire it into your delivery process, your governance, and your decision rhythm.
Here are 5 high-leverage ways project managers should be using OpenAI right now, beyond the obvious productivity hacks.
Swipe through.
Slide 1: Risk Detection Before the Status Report
Feed historical project data into GPT to surface delay patterns 2-3 sprints before they hit the RAG dashboard.
Slide 2: Stakeholder Communication at Scale
Generate tailored updates for executives, sponsors, and tech teams from a single source of truth, in the right tone for each.
Slide 3: Requirements Disambiguation
Use GPT to challenge vague user stories and expose hidden assumptions before they become change requests.
Slide 4: Resource & Capacity Forecasting
Combine timesheet data with GPT analysis to predict bottlenecks and reallocate before burnout hits the team.
Slide 5: Lessons Learned That Actually Get Used
Turn closed-project archives into a queryable knowledge base, so the next PM inherits insight, not PDFs.
The PMs who win the next 24 months won't be the ones who adopt AI. They'll be the ones who redesign delivery around it.
Which of these are you already doing? Which one feels furthest away?
#ProjectManagement #AIStrategy #DigitalTransformation #PMO #GenAI
View on LinkedIn ↗ in May 6, 2026
Most enterprises are still treating AI agents like chatbots with extra steps. That's a strategic mistake.
AI agents aren't a feature — they're an operating model shift. After leading delivery across multiple transformation programs, I've seen the gap between organizations that deploy agents and those that actually scale them.
The difference isn't the model. It's the governance, the delivery muscle, and the willingness to redesign workflows around autonomy — not around the org chart.
Here's what executives need to understand before scaling AI agents in 2025.
Slide 1: The Real Definition of an AI Agent
Not a chatbot. An autonomous system that perceives, decides, and acts toward a goal — with measurable accountability.
Slide 2: Why Most Agent Pilots Die at Stage 2
78% of pilots fail not on accuracy, but on integration, ownership, and unclear escalation paths to humans.
Slide 3: The Governance Layer Nobody Talks About
Agents need identity, permissions, audit trails, and kill switches — treat them as digital employees, not features.
Slide 4: PMO's New Mandate in the Agent Era
Delivery shifts from managing tasks to orchestrating human-agent workflows, SLAs, and outcome-based KPIs.
Slide 5: The 90-Day Enterprise Readiness Checklist
Data contracts, role redesign, agent registry, risk thresholds, and a single accountable owner — before you scale.
If your AI strategy doesn't address governance and delivery in the same breath as the model, you're building on sand.
What's the biggest blocker you're seeing in agent adoption?
#AIAgents #DigitalTransformation #PMO #ITGovernance #AIStrategy
View on LinkedIn ↗