Artificial Intelligence for Academic Public Health

Artificial Intelligence (AI) is no longer a future consideration for public health;1 it is a demonstrated present reality that is already fundamentally reshaping how health data are analyzed,2 how risks are predicted,3 how resources are allocated,4 and how policy decisions are made.5 These changes are occurring at a pace that often exceeds the capacity of our established systems, policies and workforces to respond. Over the last century, public health has made profound advancements, from building sanitation systems and expanding vaccination programs to modernizing data collection.6 AI offers similar promise, but the speed of its advancement and the scale of its potential consequences to human health and human existence are unprecedented.7 AI’s dual nature creates academic pressure on two fronts.
First, AI is an educational disruptor.8 Unlike previous technologies such as calculators, search engines or online learning, AI represents a multidimensional paradigm shift in how we create and consume knowledge. It has the potential to reduce the mental demands9 of undifferentiated tasks, clearing space for domain-specific skill development. But while it performs a variety of cognitive tasks, it can erode critical thinking skills when over-relied upon.10 The public’s perception of what this means for education is still evolving. Emerging evidence suggests that parents and students are already considering AI resiliency when choosing a degree.11 How this shift, coupled with the demographic cliff, will impact schools and programs of public health application trends remains to be seen.12 Educators must respond by reexamining which learning outcomes still matter, how those outcomes can be authentically assessed and how to protect students from the potential harms that accompany the benefits of AI in the classroom.
72% of U.S. teens aged 13 to 17 have used AI companions as virtual friends, confidants, and even therapists.
Second, AI is a determinant of health. Public health as a field has long understood the concept of social determinants of health (SDoH) – that the conditions under which people live, work and learn can shape health outcomes and drive potential health inequities. The COVID pandemic brought to light the interplay between SDoH and digital technologies (e.g., Telehealth, contact tracing, data modernization, broadband access in rural areas, affordability of wearable devices and digital literacy) and exposed the gaps in an analog public health system. In response, the World Health Organization developed a global digital health strategy that articulated the concept of “digital determinants of health (DDoH).”13 However, the scope of DDoH was too narrowly focused on the health ecosystem and on closing the digital health divide, and it didn’t sufficiently anticipate the broader effects of AI.14 Now, AI is exerting direct structural pressures on SDoH, from reshaping labor markets15 and exacerbating environmental impacts16 on already-stressed communities to influencing the information people see,17 the decisions they make about their health, and even the relationships they form.18 Also of grave concern, early evidence indicates that AI systems themselves pose health threats through algorithmic failures,19 rogue AI20 and misuse by bad actors or authoritarian governments.21
While these impacts are daunting, AI offers promising benefits to public health by creating new and exciting opportunities for healthier longevity. If used responsibly, AI can strengthen disease surveillance,22 improve emergency preparedness,23 accelerate research and discovery,24 communicate more effectively,25,26 and help identify life-saving patterns through integrated clinical-, genomic- and SDoH-informed care.27 Yet even with those potentially positive applications, if AI is used without care or developed without public health expertise at the table, it risks reinforcing historical bias,28 widening existing inequities and eroding community trust.29,30 The question before our community is not whether AI will influence the field,31 but whether public health leaders will help shape the ongoing development, governance, and application of generative AI (genAI)32, agentic AI,33 and artificial general intelligence (AGI)34. The strategic recommendations presented in this framework were developed by the cross-sectoral Task Force for the Responsible and Ethical Use of Artificial Intelligence to address current challenges and position academic public health at the forefront of an AI-enabled workforce.
Developed by Google DeepMind, AlphaFold is an AI system that predicts a protein’s 3D structure, dramatically accelerating scientific research and discovery.
To the casual observer, genAI seemed to have appeared almost overnight when OpenAI released ChatGPT in November 2022. ChatGPT reached an estimated 100 million users within two months,35 making it the fastest consumer technology adoption on record. However, the foundations underlying its technology and all other modern AI were laid as early as 1943, when Warren McCulloch and Walter Pitts proposed the first artificial neuron, inspired by biological neurons.36 Then, in 1958, Frank Rosenblatt published his paper on the perceptron, a mathematical model that simulates how a single neuron processes information.37 Over the ensuing decades, multiple competing theories for creating artificial intelligence systems emerged, including “traditional” rule-based techniques found in early machine learning (ML) and natural language processing (NLP) models.
As computing power and data availability increased in the 1990s and 2000s, researchers began to layer multiple perceptrons together (multilayer perceptrons or MLPs), thereby creating synthetic neural networks that approximated a human brain, albeit extremely simplified. By 2012, Krizhevsky, Sutskever and Hinton demonstrated that deep MLPs could analyze and classify images with substantially lower error rates than prior methods, generating significant interest in perceptrons and synthetic neural networks and a broad investment in further AI research.
In 2017, researchers at Google introduced the transformer neural network architecture, which became the basis for the large language models (LLMs) powering current AI applications.38 Transformers implement a self-attention mechanism using coordinating MLPs, which enable the model to analyze a word and weigh its relationship to all other words in a sentence at the same time. This key innovation enabled LLMs to understand context and reason effectively to generate text, ushering in the genAI era.
Interestingly, while some recent studies argue that the brain can mimic the self-attention mechanism,39 transformers deviate from previous biology-inspired AI and may represent a new dawn of synthetic evolution.40 While biological brains are incredibly energy-efficient, performing complex reasoning using little power, transformers are massively energy-intensive and require extensive data for training.
A short two years after the public release of ChatGPT, genAI gave way to agentic AI. Agentic AI is a system that plans, calls external tools, and executes multi-step tasks with limited or no human oversight.41 By 2025, agentic AI had entered real deployments in software engineering, research workflows, consumer products and early healthcare pilots. As the scaffolding and connectors for these systems continue to proliferate, we will likely see more adoption across a wide variety of industries, including education and public health.
EXISTENTIAL THREAT OR MARKETING HYPE?
According to Anthropic’s published data,42 their latest publicly available model, Opus 4 (first released in May 2025), exhibits graduate-level performance on several academic and professional benchmarks, including the U.S. bar exam, GRE and US Medical Licensing Examination. LLM benchmarking from other players is close behind. More recently, Anthropic claimed their newest model, Mythos, is too powerful, particularly with its cyber hacking abilities, to release to the public.43 Some industry insiders, including OpenAI’s CEO, Sam Altman, claim this was a marketing ploy attempting to use fear to create even more demand, but given the explosive speed of AI development and market forces creating an “arms race” dynamic, the task force acknowledges the uncertainty inherent in such a fast-moving environment.
The task force also recognizes global market forces — Anthropic and OpenAI are not the only ones vying to be first — including fierce nation-state competitors (the US and China) seeking geopolitical, economic and military supremacy.44 While achieving AGI is the immediate, primary goal of the AI arms race, it is not the finish line.45 There’s no clear consensus on how to define AGI, let alone when it will be achieved, but the implications for humanity are vast. Even if AGI is far off, given today’s frontier LLM benchmarking, it’s difficult to deny AI’s potential, and we risk ignoring Anthropic’s warnings at our peril.46
Near-term AI risks, such as algorithmic bias, opacity, and lack of accountability, could lay the seeds for longer-term existential-scale harms47 as AI is embedded deeper into healthcare and public health. For example, Urbina and colleagues demonstrated that a commercial drug-discovery model built to identify safer therapeutics could, with a single setting change, generate roughly 40,000 candidate chemical weapons, including known nerve agents.48
Whether driven by AI’s demonstrated capabilities and performance or by marketing hype, AI adoption across industries has experienced explosive growth since the release of ChatGPT. According to the Financial Times, over half of U.S. businesses are now paying for access to frontier models.50 As of April 2026, the global AI market exceeds $300 billion and is forecast to grow to over $800 billion by 2030.
Adoption by healthcare has outpaced the overall market, with a 2.2x adoption rate and 84% of U.S. healthcare systems reporting the use of AI in patient-facing workflows.51 Use cases span the entire healthcare ecosystem, from ambient scribes to financial forecasting. One of the more interesting use cases is inHEART’s AI-enabled digital twin of the heart, used for image-guided ablations, allowing for a better understanding of each patient’s unique anatomy before the procedure begins.52
Yet currently, the adoption of AI across academic public health institutions is characterized by fragmentation.53 Without a coordinated, values-driven strategy across institutions, the field risks creating silos of innovation that lack essential ethical guardrails and population-level perspectives. AI systems are neither neutral nor inevitable; they reflect the values, assumptions and priorities of those who design, program and govern them.
If public health hesitates, other sectors will fill the gap, potentially without the ethical and responsible frameworks, equity commitments, or population-level perspectives that define the field. This could lead to AI-driven decisions made about communities without their involvement or consent. A coordinated approach is necessary to help ensure that AI acts as a tool for individual and institutional success while maintaining the agility to respond to rapid technological convergence.
From grading pressures, peer pressures and time pressures, students are confronted with a difficult dilemma when academic integrity and acceptable use guidance are not provided.
The ASPPH has a unique responsibility to lead this integration. Academic public health plays an essential role in shaping the workforce, the evidence base and the policies that protect communities. Schools and programs of public health train professionals who work at the intersection of data, policy and systems; these graduates must be prepared to evaluate AI tools and ensure that innovation serves the public good.
Recognizing both the promise and the risk, ASPPH launched the AI for public health initiative to help the community meet this moment with intention. This initiative is built on the belief that AI should strengthen public health’s mission, not redefine it from the outside. By aligning recommendations with global standards, ASPPH aims to ensure that AI enhances fundamental ideals such as equity, transparency, and accountability. Academic public health must fully and deeply engage with AI, not just in education, but across research, practice and policy.
INTENTIONALLY DIVERSE PERSPECTIVES
The task force was composed of a multidisciplinary group of professionals across the public health spectrum, including faculty, staff and practitioners in epidemiology, health policy, data science, biostatistics, community engagement, as well as healthcare and technology industries. This diversity was critical to bridging the gap between theoretical promise and organizational reality.
This framework report uses two distinctions when describing AI’s effects on public health and education. “Has been demonstrated” is used when a specific, citable empirical finding from a peer-reviewed article supports the claim. The report prioritizes articles from academic journals that have a high impact factor. Phrasing such as “emerging literature suggests” or “early evidence indicates” are used where the supporting source is a news headline, industry report, preliminary finding or mixed.
DATA GATHERING TO ASSESS CURRENT LANDSCAPE AND WORKFORCE NEEDS
The recommendations in this report are grounded in two foundational research projects:
ITERATIVE AND TRANSPARENT SUBGROUP IDEATION
To refine the recommendations, the task force established four subgroups focused on the core pillars defined below. These groups met initially twice a month, then weekly or as needed, to identify specific needs and iterate on frameworks. This process ensured that this final report is a synthesis of agreed-upon recommendations from subject matter experts.
COMMUNITY LISTENING AND PARTNER FEEDBACK
The task force held town halls and listening sessions to gather “on-the-ground” concerns from faculty, students and other vested partners. These sessions highlighted critical issues, such as faculty workload and student pressure from the sometimes “irresistible” nature of AI in academic work. Additionally, feedback was integrated from technology vendors and public health partners to ensure practical applicability in various academic and practice environments.
The ASPPH AI task force has identified four interconnected pillars essential to institutional
readiness:

Artificial intelligence is rapidly reshaping the expectations placed on public health graduates, influencing how data are analyzed, how risks are predicted, and how decisions are made across the workforce. This focus area addresses the urgent need to modernize curricula and competency expectations to make AI literacy a foundational component of public health professionalism. The task force emphasizes that AI readiness must extend beyond technical skill development to include ethical reasoning, bias recognition, and the ability to communicate uncertainty, ensuring that future public health leaders can guide AI integration in ways that strengthen equity and community trust.
The task force asserts that AI literacy must become a fundamental part of public health professionalism, alongside traditional skills like epidemiology and biostatistics. While technology-focused competencies are not currently mandated by the Council on Education for Public Health (CEPH), the ASPPH task force strongly believes they are necessary for the modern workforce. ASPPH has already submitted proposed criteria revisions to the Education Advisory Committee and urged CEPH to reconsider its stance to ensure that technical literacy, data literacy, machine learning fundamentals, and digital ethics are recognized as curricular standards.
Graduates are increasingly expected to enter their first roles with a “toolbox” of techniques to solve tangible problems. This toolbox should include proficiency in surveillance methods, data provenance, and the identification of biased patterns in training data. Students who choose quantitative concentrations like biostatistics or epidemiology can often integrate AI skills with minimal additional curricular modification, but others may require foundational coursework in AI, machine learning algorithms and LLMs. We are not suggesting that public health graduates should become technologists, but rather be fluent in technology to lead and manage digital public health systems (see The “Bridge Professional”).
Data from the AI job task analysis (JTA) provides a clear evidence base for these educational needs in academic public health:
Table 1 – Software skills requirements across job categories
| Language | Frequency of Mention | Key Applications |
Python | 30% | Machine learning, predictive modeling, data science |
SQL | 21% | Database management, data retrieval |
R | 20% | Statistical analysis, bioinformatics |
SAS | 10% | Clinical research, longitudinal data analysis |
A critical bottleneck identified is faculty preparedness. Ensuring faculty can teach AI effectively is an immediate priority, as many are being asked to teach tools that did not exist during their own training. Institutions must invest in faculty upskilling through workshops on AI literacy, ethics, and applied teaching methods. Furthermore, changing federal funding landscapes may require faculty to take on new roles in developing AI-leveraged educational programs in order to compete for sustainable funding sources.
Education must extend beyond the formal graduation of current students. There is a need for consistent alumni engagement and employment tracking to help ensure that graduates remain successful in an evolving landscape. ASPPH recommends developing continuing
education offerings for practitioners to help the existing workforce keep pace with the rapid convergence of technologies.
To secure the profession’s future, academic public health must prioritize formalizing technological standards in core training. This strategy involves embedding competencies in data provenance, machine learning fundamentals and digital ethics into national accreditation frameworks to ensure a consistent baseline of literacy for all graduates. By integrating these requirements into professional certifications, such as the Certified in Public Health (CPH) exam, institutions can better guide students toward the high-demand technical skills essential for modern employment. Success in this evolution requires establishing formal pathways for practice partners to share real-world AI challenges, ensuring that educational standards remain dynamic and responsive to the practical needs of the workforce.

At the core of the task force’s recommendations is the principle that AI must augment, but never replace, human judgment, expertise, and compassion. Public health is a field defined by human-to-human relationships, and this fundamental truth must shape the classroom experience.
Faculty members bear primary responsibility for fostering an ethical environment for AI adoption, prioritizing safety, transparency, accountability, and equity across all technological applications. A critical component of this responsibility is “privacy risk transparency.” Instructors should be encouraged to remind students to exercise caution when interacting with consumer AI applications to avoid unintentionally sharing intellectual property, confidential research data, or protected personal information. Ultimately, the onus for the quality and integrity of AI-generated output rests with the individual user, but this concept that must be reinforced through institutional policy and classroom instruction.
However, exercising individual responsibility, while critical, is not sufficient to address the ethical, socioeconomic and health challenges posed by AI. Consumer-facing genAI chatbots are now associated with a demonstrated set of behavioral health risks (sometimes described as “AI-associated psychosis“) that public health curricula must engage with rather than abstract away. The American Psychological Association has issued a health advisory54 on these risks, and a systematic review of the literature has surfaced other challenges.55 Beyond the demonstrated mental health challenges, instructors must also acknowledge students’ concerns about potential job displacement, community impact and environmental harm.
Given these considerations, any classroom recommendation that students use AI must be paired with explicit instruction on these unintended harms, protective practices for personal use and the public health framing of AI as a determinant of health. Where use of AI is required to complete assignments, instructors should provide opt-out paths for students who decline based on safety, environmental or ethical grounds.
The rapid evolution of AI has created a significant “bottleneck” in institutional capacity: faculty preparedness. Many educators find themselves teaching students to use tools that are changing faster than traditional professional development cycles can keep pace. To bridge this gap, the task force recommends that ASPPH and its member institutions invest heavily in faculty resources and training.
Instructional support should move beyond basic tool awareness to help faculty conceptualize AI’s potential for having a supporting role in the teaching process. For example, AI-driven feedback assistants can help faculty provide rubric-aligned, constructive feedback to students more efficiently, allowing them to focus on deeper mentorship and complex problem-solving. This “partnered” approach to instruction allows faculty to focus on high-level critical thinking, an area where human judgment remains of outsized importance.
For students, exposure to AI tool use in a higher-education setting must be paired with critical reflection and the development of a robust “technical literacy.” This expands beyond simply familiarity with using a chatbot; it requires gaining basic understanding of AI frameworks such as retrieval-augmented generation (RAG), understanding frontier model performance on relevant public health benchmarks, developing effective “prompt engineering” techniques and developing the ability to formulate questions that elicit high-quality, relevant results from AI systems. Students must also be well-versed in human-in-the-loop (HITL) principles, operational models and HITL limitations56 to ensure substantive oversight and accountability of automated public health workflows.
AI literacy training should be intentionally integrated into existing public health curricula. This training must include:
The Framing the Future: Transformative Approaches to Teaching and Learning Report provides a roadmap for instructional innovation and applied learning, and institutions should continue efforts to implement the aspirational recommendations and ask the reflective questions outlined in the report. Building off of this previous work, the task force has identified several “promising practices” that use AI to transform the learning experience from a one-size-fits-all model into a custom, adaptive environment.
— Joshi et al., Investigating the Use of Generative AI Policies Among ASPPH Member Schools and Programs of Public Health (2026)
The Investigating the Use of Generative AI Policies among ASPPH Member Schools and Programs of Public Health project revealed that 83.3% of current member institution policies focus on pedagogical guidance and classroom use. However, because the promise of using AI to complete coursework is often “irresistible,” institutions must fundamentally rethink their deliverables.57,58
Tiered Usage Policies: The Task Force recommends that institutions provide clear “strata” of AI use for instructors to adopt in their syllabi. These typically include:
Non-Outsourceable Assessments: To protect academic integrity, educators should prioritize evaluation methods that cannot be easily outsourced to AI, focusing on embodied, relational and place-based practice. These include:
To ensure the long-term success of AI integration in teaching and learning, the Task Force proposes several strategic directions:

The gap between the theoretical promise of artificial intelligence and its practical adoption remains a primary challenge for the public health sector. While 84% of healthcare organizations are already actively using AI and machine learning technologies, public health organizations lag significantly behind. This disconnect stems not from a lack of potential, but from fundamental tensions between technical capabilities and organizational realities, between data outputs and community trust, and between established algorithms and the “missing voices” often absent from the data.
Artificial intelligence also has broader implications for the social determinants of health. While AI offers new tools to identify risk patterns and allocate resources more effectively, it may also introduce unintended consequences, including environmental costs associated with computing infrastructure, shifts in labor markets, unequal access to technological resources, and the risk of misuse by malicious actors or poorly designed systems. ASPPH recognizes that these dynamics require ongoing evaluation to ensure that AI adoption supports, rather than undermines, health equity and community well-being.
Public health is fundamentally built on human-to-human relationships, and that is a reality that AI cannot replace. The Task Force advocates for a “human-centered” approach in which AI is viewed as a supportive tool for decision-makers rather than a replacement for human judgment. This perspective is essential because AI will never build community relationships; instead, it must enhance professionals’ ability to navigate complex human systems where trust and community voices matter more than sheer algorithmic accuracy.
AI technology is beginning to streamline several key public health functions, shifting from traditional data analysis toward more interactive inquiry and exploration:
There is a profound “lack of knowledge” within public health agencies regarding current AI capabilities. Preparation for an AI-enabled workforce requires moving beyond technical implementation toward developing a critical mindset that sees AI as a tool for exploration rather than an ultimate solution.
The “flood prediction case” from University City serves as a pivotal cautionary tale for the field. In this project, an AI model was developed with a high likelihood of predicting future flood events in areas of University City, a suburb of Missouri, which have never been flooded in the past. However, the technical success meant little because the community had concerns, including identifying some parts of the community as flood-prone, which could plummet property values, lead insurance companies to decline coverage, and possibly create community stigma.
This case demonstrates that technical accuracy is insufficient without community buy-in. Trust building requires early and continuous engagement, transparency about technological limitations, and addressing potential unintended consequences upfront.
AI “doesn’t know what it doesn’t know”. Because AI systems pull from existing data, they often reflect and perpetuate the structural inequities and biases of the world in which that data was collected.
Public health must lead in defining “what good looks like” for AI-driven research. Encouraging open, reproducible science is essential to foster trust among the research community and the public.
One of the Task Force’s most critical recommendations is the creation of a new role: the “bridge professional”. This individual is a strategic thinker who possesses sufficient technical understanding without necessarily being a programmer and who excels at communicating across technical, C-suite, and community domains. They serve as the essential translator, navigating strategic considerations and regulatory compliance while understanding how the technology works on the “backend”.
Several significant barriers prevent public health from reaching its AI potential:
To overcome these barriers, the task force proposes several immediate strategic directions:

As AI becomes more deeply embedded in the operations of higher education, research, and public health practice, the establishment of robust governance structures is no longer optional. Effective policy provides the foundation for trust and accountability, ensuring that innovation does not come at the expense of equity or privacy. This focus area examines the critical need for a unified approach to AI governance across ASPPH member institutions.
Public health academia provides a unique and essential arena for developing ethical AI governance. Because the field is fundamentally committed to health equity and community-based participatory research, its approach to AI must enhance, rather than compromise, the ideals of transparency and trust. Institutions have a public accountability to ensure that the algorithms they deploy or teach are explainable by design – not black boxes – and are deliberately aligned with our mission to protect population well-being. Leadership in this space requires more than just technical rules; it necessitates a values-driven framework where human-centered ethics remain at the forefront.
As detailed in the Investigating the Use of Generative AI Policies among ASPPH Member Schools and Programs of Public Health project, a comprehensive audit of 155 ASPPH member schools and programs conducted in late 2025 revealed a significant deficit in formal institutional guidance. At the time of the review, only 18 member institutions (approximately 11.6%) had established formal, publicly available AI policies.
Table 2 – Content Analysis
| Area of Focus | Prevalence in Existing Policies | Key Focus |
| Usage Policy / Pedagogical Guidance | 83.3% | Defining tiers of AI use in the classroom, such as complete prohibition, restricted use, or unrestricted use. |
| Academic Integrity / Misconduct | 77.8% | Defining AI misuse as a form of plagiarism and instructing students to seek prior permission from faculty. |
| Data Privacy / Security Guidelines | 50.0% | Governing what information can be entered into tools to prevent the exposure of sensitive or student-identifiable data. |
| Software Access Guidance | 38.9% | Outlining processes for acquiring and approving new AI tools for faculty, staff, and students. |
| Ethical Considerations | 27.8% | Citing risks such as algorithmic bias, inaccuracies in output, and potential infringement of intellectual property rights. |
| Legal Policy Compliance | 22.2% | Aligning with federal and state laws, including HIPAA, FERPA, and federal funding agency rules (e.g., NIH). |
| AI Detection / Disciplinary Action | 22.2% | Mandating the use of detection software and establishing centralized academic misconduct procedures. |
The current landscape of AI integration in public health academia is characterized by fragmentation. Most existing guidance is focused narrowly on the classroom, specifically on preventing plagiarism and managing academic integrity. Significant gaps remain in addressing broader institutional risks:
Institutions are navigating a complex and shifting regulatory environment that often lacks federal clarity. This uncertainty creates a “privacy paradox” in which organizations want the benefits of AI but fear the legal and political repercussions of data breaches.
To ensure accountability and sustainability, ASPPH recommends adopting structured AI management systems (AIMS). A leading framework is the ISO/IEC 42001, which provides a comprehensive approach to managing AI within an organization.
Key architectural strategies include:
Public health institutions should not reinvent the wheel but should ground their policies in proven, effective global frameworks:
Addressing the opportunities and risks associated with AI requires collaboration that extends beyond the academic public health community. Partnerships with technology organizations, government agencies, public health practice institutions, and nonprofit coalitions can help ensure that AI tools are developed and applied in ways that align with public health values. These collaborations provide opportunities to share technical expertise, develop practical use cases, and strengthen workforce readiness while maintaining transparency and ethical oversight. ASPPH encourages cross-sector partnerships that advance responsible innovation while safeguarding community trust and public accountability.
The task force proposes that ASPPH serve as a central coordinator for institutional policy development. Strategic directions include:
The following strategic recommendations are the culmination of the Task Force’s work, providing a tiered roadmap for the Association of Schools and Programs of Public Health (ASPPH), its member institutions, and the broader public health community. These recommendations are designed to move the field from the current state of fragmented AI adoption to a future characterized by coordinated, ethical, and evidence-based leadership.
Goal: Align public health competencies and curriculum with the evolving demands of the AI-enabled workforce.
Owner: ASPPH Education and Accreditation Advisory Committees, in dialogue with CEPH
Owner: ASPPH in dialogue with NBPHE
Owner: ASPPH student pathways with member institutions
Resources: NHIT/ASPPH AI Academy
Owner: ASPPH workforce center with member institutions
Owner: Member institutions with support from ASPPH student pathways
Goal: Advance training opportunities that promote student engagement while maintaining academic integrity and the human-centered nature of public health education.
Owner: Member institutions, with ASPPH guidance
Owner: Member institutions, with ASPPH curating a list of tools used by members
Owner: ASPPH IDEA Institute, member institution faculty development offices
Owner: Member institution curriculum committees
Owner: Member institution faculty, supported by ASPPH guidance and programs
Goal: Foster a new class of public health professionals and a research environment characterized by transparency and community trust.
Owner: Member institutions, ASPPH coordinating
Owner: Researchers and practice partners
Owner: Researchers, journals, IRBs
Owner: Researchers and PIs
Owner: Member institutions and frontline practice partners
Goal: Establish a scalable, resilient, and ethical governance framework for AI adoption across the ASPPH network.
Owner: ASPPH AI Task Force
Owner: Member institutions and community-engaged research offices
Owner: ASPPH-wide policy guidance, with institutional ITS and research compliance offices
Owner: Institutional research integrity offices and information technology services (ITS) leadership, with ASPPH coordinating shared incident-reporting language and communication tool kit
Owner: Provost / member institutions and ITS, with faculty governance
Artificial Intelligence (AI) is not a passing trend or a temporary technological fad; it represents a fundamental, long-term shift in the infrastructure of global public health. The integration of AI into our systems, from predictive modeling to community health engagement, is as significant as the development of modern sanitation or the expansion of vaccinations in the previous century. We must view AI as a systems change that requires a holistic approach, moving beyond simple tool adoption to cultivating a workforce and a policy environment that can navigate the rapid convergence of technology and human health. Public health professionals must remain at the center of these systems, ensuring that technology augments rather than replaces human expertise, compassion, and accountability.
The cost of inaction—or worse, action that lacks ethical and population-level perspectives—is extraordinarily high. If the public health community hesitates to lead in this space, others may fill the void, potentially those who do not share our foundational commitments to equity, transparency, and service. Poorly governed AI has the potential to reinforce existing biases, widen health disparities, and make high-stakes decisions about communities without their involvement or consent. Without deliberate design and governance, we risk eroding the very trust that is essential for effective public health interventions.
This is a moment that demands leadership, not hesitation. ASPPH is committed to serving as a central catalyst for this transformation, ensuring that academic public health remains at the table to shape how AI is developed, governed, and applied. Our leadership role involves setting clear standards, asking the “hard questions” about data provenance and accountability, and fostering a coordinated approach that prevents fragmented adoption across the network.
The success of this strategic framework depends on a collective commitment from faculty, students, practitioners, and policymakers. By leading with its core values of service, integrity, and evidence, ASPPH will work toward ensuring that AI becomes a powerful collaborator in the pursuit of a healthier and more equitable future for everyone, everywhere.
Artificial Intelligence (AI): An umbrella term used in this report for the broader concept of computer systems that perform tasks—pattern recognition, prediction, language generation, decision support—that historically required human intelligence. A specific subfield (machine learning, generative AI, agentic AI, AGI, NLP) is named only when the distinction materially affects the context.
Digital Determinants of Health (DDoH): Refers to the digital environment (e.g., broadband access, digital literacy and system design) that directly or indirectly impacts an individual’s ability to access equitable healthcare and the extent to which digital health systems (e.g., telehealth, diagnostics, wearables) improve health outcomes.
Machine Learning (ML): Statistical methods that learn patterns from data rather than following hand-coded rules. Includes supervised, unsupervised and reinforcement learning. Long-established and well-validated for many public health surveillance tasks.
Natural Language Processing (NLP): The subfield of AI concerned with computer processing of human language. Modern NLP relies heavily on neural networks; large language models (LLMs) are an outgrowth of NLP.
Multi-Layer Perceptrons (MLPs): A foundational artificial neural network comprised of multiple layers of human neuron-like perceptrons. MLPs for the bases of deep learning and broad application in AI.
Transformers: A revolutionary deep learning neural network architecture comprised of MLPs that uses self-attention to process data simultaneously while understanding context and relationships. Transformers are the backbone of modern AI.
Large Language Model (LLM): A neural-network model trained on very large text corpora to predict and generate language. Capable of fluent text generation but prone to factual errors (“hallucinations”). Examples include GPT, Claude and Gemini.
Generative AI (GenAI): AI systems that produce novel outputs — text, images, audio, code — from a prompt. The most consequential form of generative AI for public health today is the LLM.
Agentic AI: AI systems that take multi-step actions in the world (booking, browsing, messaging, executing code) to achieve a goal, typically built on top of LLMs. Distinct from a chat assistant in that it acts, not just answers.
Artificial General Intelligence (AGI): A theoretical AI system with broad, human-level cognitive capability across domains. AGI is not a current technology and has no agreed-upon technical definition; this report does not assume AGI is imminent.
AI Literacy: In this report: the ability to recognize what an AI system is and is not, evaluate its outputs critically, identify likely failure modes (bias, hallucination, environmental cost), and exercise human judgment about whether and how to use it. Not equivalent to fluency with any particular tool or a deep technical understanding.
Hallucination: Confident output by a generative model that is not grounded in fact—e.g., fabricated citations, invented statistics, false attributions. A property of the underlying technology, not a fixable bug.
AI-Associated Psychosis: An informal, non-clinical term to describe a parasocial dependency on chatbots, escalation of distorted thinking in vulnerable users and harms to minors from exposure to sycophantic or manipulative AI companions.
Sycophantic: AI models’ tendency to agree with, flatter or validate user beliefs, even when those beliefs are incorrect or irrational, rather than providing objective, fact-based information.
Retrieval-Augmented Generation (RAG): An AI framework that improves LLM accuracy and reduces hallucinations by retrieving data from a vetted domain-specific knowledge library before generating a response.
Human-in-the-Loop (HITL): A design pattern in which a qualified human reviews, corrects or approves AI output before it is acted upon, especially in consequential decisions.
Trustworthiness: The property of an AI system that justifies trust, distinct from trust itself. The relevant operational risk in many settings is over-trust (automation bias), not under-trust.
Vested Partners: Used in this report in place of “stakeholders” to acknowledge sensitivity to Indigenous and tribal partners. Includes faculty, students, staff, community partners, practice institutions, employers and policymakers.