Using AI in Project Management: Key Applications and Benefits
Artificial intelligence (AI) is ushering in a new era of efficiency and effectiveness in project management. Project managers whose organizations fully embrace AI are 30% more likely to deliver on time, and 23% more likely to meet or exceed ROI estimates, according to a 2023 PMI survey.
Other recent PMI research found that 82% of senior leaders believe AI will have at least some impact on how projects are run at their organization over the next five years. And yet 49% of project managers have little to no experience with or understanding of AI in the context of project management.
This gap must be closed—and soon. I recently transitioned from managing partner at a small software company to a data leadership position at a company 20 times its size. Improving project delivery and outcomes has been central to both roles—and implementing AI tools has been the primary means of achieving this in both workplaces. AI’s ability to analyze complex data sets, optimize resource allocation, predict potential risks, and automate routine tasks not only contributes to better project execution, but also enables organizations to cultivate an agile mindset that continuously adapts to the ever-changing tech landscape.
So what are the leading applications and benefits of leveraging AI in project management? How can AI augment the project manager’s toolkit? In this article I explore the influence of AI on current project management practices, looking at its key uses and implications for project delivery.
AI and Project Management: Current Applications and Benefits
AI project management tools can be applied in the following areas to achieve more successful project outcomes:
Data Analysis and Predictive Analytics
With the ability to quickly process vast amounts of data, AI empowers project managers to make evidence-based decisions with unprecedented precision. By analyzing historical project data, AI can identify patterns and predict potential project risks.
Imagine running a project that has a similar charter to another project in another country and another language. Pattern identification works despite the language barrier, which means your risk log could be augmented by the risks and mitigation strategies of a project many miles away. This in turn would lead to the reduction of costly delays and budget overruns.
Additionally, project management platforms will one day use AI to automatically generate performance metrics and predictive reports, offering project managers real-time insights into project progress that can enable them to pivot as needed. This is already happening on a small scale with platforms like Asana, Jira, and Azure—either directly or via third-party plugins.
Risk Management
AI technologies are already assisting project managers with risk management in several key ways. By analyzing network traffic patterns and recognizing anomalies that might indicate a security breach, for example, AI can help project managers identify potential cybersecurity threats. This kind of knowledge allows project managers to take proactive steps to mitigate risks, such as implementing security patches or enhanced access controls.
In software development, AI-driven code analysis tools such as Microsoft Copilot, OpenAI Codex, and Amazon CodeWhisperer can assist project managers in identifying code quality issues and potential vulnerabilities early in the development process. Early detection enables project managers to allocate resources effectively, prioritize critical issues, and reduce software defects that could lead to launch problems. It also helps developers deliver functionality more quickly, so that added time can be given to problematic features.
Tools such as Jira, among others, track velocity trends and highlight user stories that may potentially cause delays, allowing project managers to focus on remediation rather than identification—the result is more time spent working on issues and less time spent examining data.
Communication and Collaboration
One significant advancement we’ve seen is the rise of virtual assistants. They can answer common queries, schedule meetings, and provide updates, freeing project managers from administrative tasks so that they can put their energy into higher-value activities. When integrated into communication software such as Slack or Microsoft Teams, virtual assistants can ensure that essential information reaches the right people in a timely manner.
Note-taking tools such as Otter.ai and Rev Online Voice Recorder simplify the process of capturing spoken information, making it more accessible, searchable, and shareable. Project managers can now stop taking notes in real time and instead focus on discussion, guidance, and managing stakeholder expectations. Notes are available immediately after a meeting, so they can be reviewed by participants while the details are still fresh in their minds, rather than waiting until the project manager has the time to edit and share them.
Translation tools are also starting to play a pivotal role in global IT projects by breaking down language barriers. The tools automatically translate messages and documents, meaning project managers can now effortlessly coordinate with team members worldwide, leading to more effective cross-cultural collaboration and knowledge sharing among multinational teams.
Communication can be further enhanced by sentiment analysis tools, which gauge stakeholder engagement and satisfaction by analyzing communication content. Project managers can gain valuable insights and adapt communication strategies accordingly to foster stronger relationships. MonkeyLearn offers free sentiment analysis, which can be used to determine whether investment in a project-management-specific tool would be valuable.
Note taking, data analysis, language translation, and other communication tools powered by AI are helping to dissolve organizational boundaries and ensure that every project is increasingly more efficient than the last, with an outcome that’s more predictable and easier to manage.
AI in Project Management: Challenges and Potential Solutions
Despite the current optimism about—and the significant potential of—AI in project management, the technology also presents challenges that need to be overcome.
Data Availability and Quality
In order to function as it should, AI needs a large set of reliable data points on which it can be trained appropriately. Inaccurate or biased data can lead to flawed predictions, jeopardizing the quality of insights an AI tool can offer.
In a small or recently established organization, project data may be in a reasonably consistent format. But at larger companies that have undertaken thousands of projects the information will likely be fragmented, incomplete, or varied in structure and quality.
Fixing this issue takes time, effort, and investment. You’ll need to engage data engineers or analysts to ensure that the input data is correct, adheres to a minimal quality standard, and is in a format that algorithms can make sense of. Thus, I would recommend that communication or administrative tasks are a good place to start your organization’s first foray into leveraging AI. Functions requiring large, quality data sets, such as analysis or forecasting, ought to come second, once you have more experience with the technology.
Scaled Implementation
While project managers may utilize AI tools on an individual level, scaled impact is harder to achieve. It can only really be reached once processes have been trialed, documented, implemented, and widely adopted. Unfortunately, the learning curve associated with the adoption of new technologies can slow the acceptance of AI in project management. I have found holding introductory training sessions, on both an individual and group basis, to be highly effective in bringing teams up to speed.
Tool Limitations
One of the most critical limitations of AI, both generally and in project management, is its lack of judgment and intuition. Project management “power skills”—those deemed critical to success—are communication, problem-solving, collaborative leadership, and strategic thinking. While AI excels at analyzing data, it does not factor in contextual, emotional, and unforeseen circumstances—all of which are key to complex decision-making, negotiation, and stakeholder management.
The human element is vital in project execution, and it is crucial to be mindful of AI’s limitations when applying it to project management challenges. Tools should be viewed as supportive aids rather than replacing the thought and innovation that project managers exercise and which they foster among their teams.