Project Management

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Technology offers an incredible opportunity to improve project performance. This blog shares the latest research and how organizations are implementing AI into their project methodology. Come with an open mind, increase your knowledge, share your concerns, and become a project manager with new skills to offer an organization.

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AI, Artificial Intelligence, Ethics, Machine learning, Natural language processing, procurement, Scope Management

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AI Optimizers: The Hidden Ethics Risk in Project Software

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Artificial intelligence is increasingly being added to project management software. Schedule compression engines, resource-leveling algorithms, portfolio ranking systems, and forecasting models now operate in the background of many project platforms. While these AI optimizers promise efficiency and consistency, they introduce a growing ethical challenge. When optimization logic is embedded inside software, bias becomes harder to detect, question, or govern.

Across the project management software landscape, vendors increasingly use AI-based algorithms to determine prioritization, forecasts, resource allocation, risks, and workflow optimization. AI-enabled software is promoted under the banner of productivity. In practice, it has become challenging to identify any mainstream project management software application that does not claim to leverage AI in some aspect of planning, coordination, or decision support. None of this implies wrongdoing, but it does raise the important governance question: whose values are embedded in these optimizers?
Bias in project AI rarely appears as overt discrimination. Instead, it emerges structurally. Algorithms may favor projects that resemble past successes, penalize innovative or unconventional initiatives, or prioritize cost efficiency at the expense of safety, resilience, or social impact. Because these assumptions are encoded inside mathematical models and training data, they remain invisible to users. The result is an illusion of objectivity, as decisions appear neutral because they are based on a statistical process.

Three ethical risks are especially relevant for project managers:
  • Hidden value trade-offs, where AI decides priorities such as schedule, cost, or utilization without explicit disclosure or explanation.
  • Reinforcement of historical bias, as AI learns from datasets shaped by optimism bias, political influence, or chronic underestimation.
  • Erosion of professional judgment, when managers defer to system recommendations that are difficult to challenge or explain.
The core issue is not the use of AI, but the loss of transparency. Optimization systems that cannot demonstrate why one solution was preferred over another shift decision authority away from human judgment without acknowledging it. Ethical project management requires more than accurate algorithms. It requires explainability, identification of alternatives, and accountability.

As AI becomes standard inside project software, ethics will depend on whether project managers can still see, question, and justify the decisions being made. This efficiency, in the form of productivity, may obscure the responsibility for ethical practices.
Posted on: January 05, 2026 12:51 PM | Permalink | Comments (1)

Debunking 3 AI Myths for Project Managers

Categories: AI

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With the growing interest in how AI is changing our world, some articles have emerged that are not based entirely on reality. It is fascinating how stories circulate and become exaggerated through social media. The truth is, we cannot predict the future, but we can understand the current facts.

Myth 1. You need a lot of data to make AI work. This most likely applies to the field of medicine, where errors can be costly. In project management, I conducted an academic literature review and identified 8 project management studies that used machine learning to establish statistical correlations. The range for the number of projects was 22 to 692, and the range of features (project characteristics) was from 4 to 44.

Myth 2. AI requires a lot of energy to function. This is probably based on recent headlines about the race to build data centers needed to make large language models (LLMs) more accurate and effective across a broader range of topics. There is more to AI than LLMs. I run a Python-coded machine learning clustering algorithm on my laptop. I use the neural network function in IBM SPSS software on my desktop computer with 108 project datasets containing 17 variables. This myth might be more accurate if stated as “some” AI-based apps might need a lot of energy. As for the future, many creative people are working to improve the performance of both hardware and software.

Myth 3. AI is contributing to climate change. This might be true if the major data center providers were running on fossil fuels. AWS invested in solar and wind energy projects and, in 2023, reached the goal of matching 100% of the electricity used in its global operations with renewable energy (AWS, 2025). Google claims they are the champion of clean energy. They achieved 100% renewable energy matching in 2017 and target 100% carbon-free emissions by 2030 for their data centers (Corio, 2022). Microsoft Azure, which hosts OpenAI, has LEED-certified data centers and plans to be carbon-neutral by 2030 (Microsoft, 2025).
AI is changing how organizations function and how project management works. Reliable information should always guide our progress.

References
Amazon Web Services. (2025). AWS Cloud – Sustainability: Our progress. Retrieved November 8, 2025, from https://sustainability.aboutamazon.com/products-services/aws-cloud sustainability.aboutamazon.com
Microsoft Corporation. (n.d.). Powering sustainable transformation. Microsoft Data Centers. Retrieved November 8, 2025, from https://datacenters.microsoft.com/globe/powering-sustainable-transformation/
Peterson Corio, A. (2022, June 23). Five years of 100% renewable energy – and a look ahead to a 24/7 carbon-free future. Google Cloud Blog. https://cloud.google.com/blog/topics/sustainability/5-years-of-100-percent-renewable-energy
Posted on: November 17, 2025 10:00 AM | Permalink | Comments (2)

Why do AI Projects Fail?

Categories: AI

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There is a widely circulated claim that a Gartner report stated 85% of AI projects fail. In fact, the original Gartner press release was a forecast that from 2018 through to 2022, 85% of AI projects would deliver erroneous outcomes due to bias in the data, misaligned algorithms, or project team implementation.

Setting aside the misinterpretation, organizations that succeed in deploying AI tend to do four things differently:
· Redesign processes instead of automating bad workflows
· Provide training that explains what makes AI successful
· Establish governance to realize benefits and avoid pitfalls
· Lead change intentionally through structured change management

In my view, the most significant factor is that AI projects fail because organizations don’t incorporate AI into their project processes. It is inconsistent to expect successful AI deployment without integrating AI into the very processes that manage its implementation. AI projects do not fail because of the technology, but because organizations don’t embed AI into their project management methodology. For AI projects to succeed, organizations need to redesign project processes, provide targeted training, and reinforce governance and change management to sustain adoption.

Reference
Gartner. (2018, February 13). Gartner says nearly half of CIOs are planning to deploy artificial intelligence. Gartner Newsroom. https://www.gartner.com/en/newsroom/press-releases/2018-02-13-gartner-says-nearly-half-of-cios-are-planning-to-deploy-artificial-intelligence
Posted on: November 07, 2025 10:43 AM | Permalink | Comments (6)

Ethical AI in Project Management: Building a Framework for Gen AI Use

Categories: AI

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As generative AI (Gen AI) becomes increasingly embedded in project management processes, organizations must develop a clear and responsible framework for its use. Gen AI, such as ChatGPT, can create schedules, draft procurement strategies, assess risks, and even suggest team configurations. However, employees require guidelines to reduce risks that may undermine both project and organizational integrity. Adhering to ethical considerations when interacting with Gen AI requires a framework that aligns with the organization's ethical policies, reflecting its values, regulatory requirements, and fairness.  Here are three components to a good framework.

  1. Governance. Governance is the foundation of an ethical Gen AI framework. It ensures that organizational use aligns with internal values, external regulations, and changing technology landscapes. Without strong governance, ethical breaches may occur without accountability or oversight.

Organization Responsibility:        

  • Develop formal policies on AI usage
  • Monitor evolving legal and ethical standards
  • Establish audits and regular reviews
  • Communicate responsibly and clearly
  1. Training. Employees engaging with Gen AI must be equipped to use it responsibly. This includes understanding how prompts influence outcomes and ensuring proper validation and attribution of AI-generated content. Potential issues include unclear or manipulative prompts, failure to fact-check AI-generated output, ignoring attribution norms, and making poor decisions based on unverified content. Employees require training on ethical challenges to ensure they are accountable for their interactions with Gen AI.

Training Objectives:    

  • Use transparent and honest prompts. Avoid prompts that intentionally mislead the system to generate biased or overly persuasive content
  • Verify and validate outputs. Don’t assume Gen AI responses are accurate. Always ask for the sources and cross-check facts, numbers, and claims with trusted sources
  • Respect attribution. If Gen AI uses or summarizes identifiable content, cite or acknowledge it appropriately
  • Recognize limitations. Understand what Gen AI can and cannot do. Avoid delegating critical decisions solely to the tool
  • Seek feedback. Share your Gen AI-generated work with peers or supervisors before taking action based on it
  1. Data Management. Gen AI results are based on the quality of data it can access.  Datasets may be incomplete, inaccurate, or biased. Access may be given to confidential information or contain personal data without informed consent. Data ownership may be unclear, and sharing it could violate ethics policies.  

Data Imperatives:

  • Consistently evaluate data for credibility and completeness
  • Differentiate between access to internal data and external data, identifying risk for each
  • Determine access restrictions for privacy, security, and the potential for misuse

The consequences of ethical violations when using Gen AI can be significant (Hagerty & Rubinov, 2019). Poor decisions and breaches of ethical policy can not only have serious repercussions but may go unnoticed for some time. Accountability is necessary from all parts of the organization involved. Employees must acknowledge their use of Gen AI and understand the associated level of risk. Ethical lapses in the use of Gen AI can also have cascading effects, from poor project outcomes to reputational damage. Accountability must be built into every layer: policy, practice, and personnel. Organizations should not only empower employees to utilize Gen AI but also equip them to be stewards of its ethical application.

The technology offers incredible opportunities for organizational efficiency, which must be balanced by defining and implementing a framework that upholds ethical standards.

Is your organization ready to integrate Gen AI responsibly?

 

Some references to check:

Dignum, V. (2019). Responsible artificial intelligence: How to develop and use AI in a responsible way. Springer. 

Hagerty, A., & Rubinov, I. (2019). Global AI ethics: A review of the social impacts and ethical implications of artificial intelligence. AI & Society, 36(1), 55–66

Posted on: July 21, 2025 05:22 PM | Permalink | Comments (2)

Building Machine Learning Models for Project Management

Categories: AI

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In today’s fast-paced, data-rich environments, project management is no longer just about tracking milestones or balancing scope, time, and budget. It’s about predicting outcomes, preventing failure, and optimizing performance. Machine learning (ML) is an opportunity to gain a competitive edge in project delivery. A machine learning model is developed by learning patterns from information and is used to make predictions or support decisions.

Building and using machine learning models in project management is a strategic opportunity that empowers teams to shift from reactive problem-solving to proactive decision-making. Models are reusable assets that grow more valuable over time as more data is added. Once integrated into project processes, models can be used to deliver fast, objective insights that help project teams and executives make better decisions with less cognitive bias.

Machine learning models can support project management in several ways:

  1. Predictive Forecasting: ML models can estimate the likelihood of cost or schedule overruns, identify which projects are at risk, and flag potential bottlenecks before they occur.
  2. Resource Optimization: By learning from previous projects, models can predict where resources are likely to be overcommitted or underused.
  3. Risk Identification: By utilizing project characteristics and environmental factors, models can analyze risk, providing early detection and mitigation plans.
  4. Decision Support: Instead of relying on biased intuition, project managers can receive insights based on data to justify contingency plans or identify decisions that require escalation.

There are three options for organizations that want to build project models. The first is internal-only models, which utilize project history, KPIs, and internal metrics. This approach is ideal for highly customized or confidential projects. The second is a hybrid model, combining internal data with publicly available datasets or third-party repositories to increase model generalizability and robustness. The final type involves using external models that are created and made available outside the organization, but with sufficient applicability. These can be useful for small organizations that rarely undertake projects or for any organization that lacks sufficient internal project data.

Machine learning is a powerful technology that elevates project management from hindsight to foresight. Organizations that invest in building or adopting ML models gain an advantage in delivering projects more accurately, efficiently, and confidently.

Posted on: July 09, 2025 07:48 AM | Permalink | Comments (0)
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