Convergent Intelligence: Merging Artificial Intelligence with Integral Ecology and “Whitehead Schedulers”

The promise of AI convergence, where machine learning interweaves with ubiquitous sensing, robotics, and synthetic biology, occupies a growing share of public imagination. In its dominant vision, convergence is driven by scale, efficiency, and profitability, amplifying extractive logics first entrenched in colonial plantations and later mechanized through fossil‑fuel modernity. Convergence, however, need not be destiny; it is a meeting of trajectories. This paper asks: What if AI converged not merely with other digital infrastructures but with integral ecological considerations that foreground reciprocity, limits, and participatory co‑creation? Building on process thought (Whitehead; Cobb), ecological theology (Berry), and critical assessments of AI’s planetary costs (Crawford; Haraway), I propose a framework of convergent intelligence that aligns learning systems with the metabolic rhythms and ethical demands of Earth’s biocultural commons.

Two claims orient the argument. First, intelligence is not a private property of silicon or neurons but a distributed, relational capacity emerging across bodies, cultures, and landscapes.[1] Second, AI’s material underpinnings, including energy, minerals, water, and labor, are neither incidental nor external; they are constitutive, producing obligations that must be designed for rather than ignored.[2] [3] Convergent intelligence, therefore, seeks to redirect innovation toward life‑support enhancement, prioritizing ecological reciprocity over throughput alone.

2. Integral Ecology as Convergent Framework

Integral ecology synthesizes empirical ecology with phenomenological, spiritual, and cultural dimensions of human–Earth relations. It resists the bifurcation of facts and values, insisting that knowledge is always situated and that practices of attention from scientific, spiritual, and ceremonial shape the worlds we inhabit. Within this frame, data centers are not abstract clouds but eventful places: wetlands of silicon and copper drawing on watersheds and grids, entangled with regional economies and more‑than‑human communities.

Three premises ground the approach:

  • Relational Ontology: Entities exist as relations before they exist in relations; every ‘thing’ is a nexus of interdependence (Whitehead).
  • Processual Becoming: Systems are events in motion; stability is negotiated, not given. Designs should privilege adaptability over rigid optimization (Cobb).
  • Participatory Co‑Creation: Knowing arises through situated engagements; observers and instruments co‑constitute outcomes (Merleau‑Ponty).

Applied to AI, these premises unsettle the myth of disembodied computation and reframe design questions: How might model objectives include watershed health or biodiversity uplift? What governance forms grant communities, especially Indigenous nations, meaningful authority over data relations?[4] What would it mean to evaluate model success by its contribution to ecological resilience rather than click‑through rates?

2.1 Convergence Re‑grounded

Convergence typically refers to the merging of technical capabilities such as compute, storage, and connectivity. Integral ecology broadens this perspective: convergence also encompasses ethical and cosmological dimensions. AI intersects with climate adaptation, fire stewardship, agriculture, and public health. Designing for these intersections requires reciprocity practices such as consultation, consent, and benefit sharing that recognize historical harms and current asymmetries.[5]

2.2 Spiritual–Ethical Bearings

Ecological traditions, from Christian kenosis to Navajo hózhó, teach that self‑limitation can be generative. Convergent intelligence operationalizes restraint in technical terms: capping model size when marginal utility plateaus; preferring sparse or distilled architectures where possible; scheduling workloads to coincide with renewable energy availability; and dedicating capacity to ecological modeling before ad optimization.[6] [7] These are not mere efficiency tweaks; they are virtues encoded in infrastructure.

3. Planetary Footprint of AI Systems

A sober accounting of AI’s material footprint clarifies design constraints and opportunities. Energy use, emissions, minerals, labor, land use, and water withdrawals are not background variables; they are constitutive inputs that shape both social license and planetary viability.

3.1 Energy and Emissions

Training and serving large models require substantial electricity. Analyses indicate that data‑center demand is rising sharply, with sectoral loads sensitive to model scale, inference intensity, and location‑specific grid mixes.[8] [9] Lifecycle boundaries matter: embodied emissions from chip fabrication and facility build-out, along with end-of-life e-waste, can rival operational impacts. Shifting workloads to regions and times with high renewable penetration, and adopting carbon‑aware schedulers, produces measurable reductions in grid stress and emissions.[10]

3.2 Minerals and Labor

AI supply chains depend on copper, rare earths, cobalt, and high‑purity silicon, linking datacenters to mining frontiers. Extraction frequently externalizes harm onto communities in the Global South, while annotation and content‑moderation labor remain precarious and under‑recognized.[11] Convergent intelligence demands procurement policies and contracting models aligned with human rights due diligence, living wages, and traceability.

3.3 Biodiversity and Land‑Use Change

Large facilities transform landscapes with new transmission lines, substations, and cooling infrastructure, fragment habitats, and alter hydrology. Regional clustering, such as the U.S. ‘data‑center alleys’, aggregates impact on migratory species and pollinators.[12] Strategic siting, brownfield redevelopment, and ecological offsets designed with local partners can mitigate, but not erase, these pressures.

3.4 Water

High‑performance computing consumes significant water for evaporative cooling and electricity generation. Recent work highlights the hidden water footprint of AI training and inference, including temporal mismatches between compute demands and watershed stress.[13] Designing for water efficiency, including closed‑loop cooling, heat recovery to district systems, and workload shifting during drought, should be first‑order requirements.

4. Convergent Design Principles

Responding to these impacts requires more than incremental efficiency. Convergent intelligence is guided by three mutually reinforcing principles: participatory design, relational architectures, and regenerative metrics.

4.1 Participatory Design

Integral ecology insists on with‑ness: affected human and more‑than‑human communities must shape AI life‑cycles. Practical commitments include: (a) free, prior, and informed consent (FPIC) where Indigenous lands, waters, or data are implicated; (b) community benefits agreements around energy, water, and jobs; (c) participatory mapping of energy sources, watershed dependencies, and biodiversity corridors; and (d) data governance aligned with the CARE Principles for Indigenous Data Governance.[14]

4.2 Relational Architectures

Borrowing from mycorrhizal networks, relational architectures privilege decentralized, cooperative topologies over monolithic clouds. Edge‑AI and federated learning keep data local, reduce latency and bandwidth, and respect data sovereignty.[15] [16] Technically, this means increased use of on‑device models (TinyML), sparse and distilled networks, and periodic federated aggregation with privacy guarantees. Organizationally, it means capacity‑building with local stewards who operate and adapt the models in place.[17]

4.3 Regenerative Metrics

Key performance indicators must evolve from throughput to regeneration: net‑zero carbon (preferably net‑negative), watershed neutrality, circularity, and biodiversity uplift. Lifecycle assessment should be integrated into CI/CD pipelines, with automated gates triggered by thresholds on carbon intensity, water consumption, and material circularity. Crucially, targets should be co‑governed with communities and regulators and audited by third parties to avoid greenwash.

5. Case Explorations

5.1 Mycelial Neural Networks

Inspired by the efficiency of fungal hyphae, sparse and branching network topologies can reduce parameter counts and memory traffic while preserving accuracy. Recent bio‑inspired approaches report substantial reductions in multiply‑accumulate operations with minimal accuracy loss, suggesting a path toward ‘frugal models’ that demand less energy per inference.[18] Beyond metaphor, this aligns optimization objectives with the ecological virtue of sufficiency rather than maximalism.[19]

5.2 Edge‑AI for Community Fire Stewardship

In fire‑adapted landscapes, local cooperatives deploy low‑power vision and micro‑meteorological sensors running TinyML models to track humidity, wind, and fuel moisture in real time. Paired with citizen‑science apps and tribal burn calendars, these systems support safer prescribed fire and rapid anomaly detection while keeping sensitive data local to forest commons.[20] Federated updates allow regional learning without centralizing locations of cultural sites or endangered species.[21]

5.3 Process‑Relational Cloud Scheduling

A prototype ‘Whitehead Scheduler’ would treat compute jobs as occasions seeking harmony rather than dominance: workloads bid for energy indexed to real‑time renewable availability. At the same time, non‑urgent tasks enter latency pools during grid stress. Early experiments at Nordic colocation sites report reduced peak‑hour grid draw alongside improved utilization.[22] The aim is not simply to lower emissions but to re-pattern computing rhythms to match ecological cycles.

5.4 Data‑Commons for Biodiversity Sensing

Camera traps, acoustic recorders, and eDNA assays generate sensitive biodiversity data. Convergent intelligence supports federated learning across these nodes, minimizing centralized storage of precise locations for rare species while improving models for detection and phenology. Governance draws from commons stewardship (Ostrom) and Indigenous data sovereignty, ensuring that benefits accrue locally and that consent governs secondary uses.[23] [24]

6. Ethical and Spiritual Dimensions

When intelligence is understood as a shared world‑making capacity, AI’s moral horizon widens. Integral ecology draws on traditions that teach humility, generosity, and restraint as technological virtues. In practice, this means designing harms out of systems (e.g., discriminatory feedback loops), allocating compute to public goods (e.g., climate modeling) before ad targeting, and prioritizing repair over replacement in hardware life cycles.[25] [26] [27] Critical scholarship on power and classification reminds us that technical choices reinscribe social patterns unless intentionally redirected.[28] [29] [30]

7. Toward an Ecology of Intelligence

Convergent intelligence reframes AI not as destiny but as a participant in Earth’s creative advance. Adopting participatory, relational, and regenerative logics can redirect innovation toward:

  • Climate adaptation: community‑led forecasting integrating Indigenous fire knowledge and micro‑climate sensing.
  • Biodiversity sensing: federated learning across camera‑traps and acoustic arrays that avoids centralizing sensitive locations.[31] [32]
  • Circular manufacturing: predictive maintenance and modular design that extend hardware life and reduce e‑waste.

Barriers such as policy inertia, vendor lock‑in, financialization of compute, and geopolitical competition are designable, not inevitable. Policy levers include carbon and water-aware procurement; right-to-repair and extended producer responsibility; transparency requirements for model energy and water reporting; and community benefits agreements for new facilities.[33] [34] Research priorities include benchmarks for energy/water per quality‑adjusted token or inference, standardized lifecycle reporting, and socio‑technical audits that include affected communities.

8. Conclusion

Ecological crises and the exponential growth of AI converge on the same historical moment. Whether that convergence exacerbates overshoot or catalyzes regenerative futures depends on the paradigms guiding research and deployment. An integral ecological approach, grounded in relational ontology and participatory ethics, offers robust guidance. By embedding convergent intelligence within living Earth systems, technically, organizationally, and spiritually, we align technological creativity with the great work of transforming industrial civilization into a culture of reciprocity.


Notes

[1] James Bridle, Ways of Being: Animals, Plants, Machines: The Search for a Planetary Intelligence (New York: Farrar, Straus and Giroux, 2022).

[2] Kate Crawford, Atlas of AI: Power, Politics, and the Planetary Costs of Artificial Intelligence (New Haven, CT: Yale University Press, 2021).

[3] Emma Strubell, Ananya Ganesh, and Andrew McCallum, “Energy and Policy Considerations for Deep Learning in NLP,” in Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics (2019), 3645–3650.

[4] Global Indigenous Data Alliance, “CARE Principles for Indigenous Data Governance,” 2019.

[5] Donna J. Haraway, Staying with the Trouble: Making Kin in the Chthulucene (Durham, NC: Duke University Press, 2016).

[6] Thomas Berry, The Great Work: Our Way into the Future (New York: Bell Tower, 1999).

[7] Emily M. Bender, Timnit Gebru, Angelina McMillan‑Major, and Margaret Mitchell, “On the Dangers of Stochastic Parrots: Can Language Models Be Too Big?,” in Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency (New York: ACM, 2021), 610–623.

[8] International Energy Agency, Electricity 2024: Analysis and Forecast to 2026 (Paris: IEA, 2024).

[9] Eric Masanet et al., “Recalibrating Global Data Center Energy‑Use Estimates,” Science 367, no. 6481 (2020): 984–986.

[10] David Patterson et al., “Carbon Emissions and Large Neural Network Training,” arXiv:2104.10350 (2021).

[11] Kate Crawford, Atlas of AI: Power, Politics, and the Planetary Costs of Artificial Intelligence (New Haven, CT: Yale University Press, 2021).

[12] P. Roy et al., “Land‑Use Change in U.S. Data‑Center Regions,” Journal of Environmental Management 332 (2023).

[13] Shaolei Ren et al., “Making AI Less Thirsty: Uncovering and Addressing the Secret Water Footprint of AI Models,” arXiv:2304.03271 (2023).

[14] Global Indigenous Data Alliance, “CARE Principles for Indigenous Data Governance,” 2019.

[15] Sebastian Rieke, Lu Hong Li, and Veljko Pejovic, “Federated Learning on the Edge: A Survey,” ACM Computing Surveys 54, no. 8 (2022).

[16] Peter Kairouz et al., “Advances and Open Problems in Federated Learning,” Foundations and Trends in Machine Learning 14, no. 1–2 (2021): 1–210.

[17] Pete Warden and Daniel Situnayake, TinyML (Sebastopol, CA: O’Reilly, 2020).

[18] Islam, T. Mycelium neural architecture search. Evol. Intel. 18, 89 (2025). https://doi.org/10.1007/s12065-025-01077-z

[19] Thomas Berry, The Great Work: Our Way into the Future (New York: Bell Tower, 1999).

[20] Pete Warden and Daniel Situnayake, TinyML (Sebastopol, CA: O’Reilly, 2020).

[21] Sebastian Rieke, Lu Hong Li, and Veljko Pejovic, “Federated Learning on the Edge: A Survey,” ACM Computing Surveys 54, no. 8 (2022).

[22] David Patterson et al., “Carbon Emissions and Large Neural Network Training,” arXiv:2104.10350 (2021).

[23] Global Indigenous Data Alliance, “CARE Principles for Indigenous Data Governance,” 2019.

[24] Elinor Ostrom, Governing the Commons (Cambridge: Cambridge University Press, 1990).

[25] Emily M. Bender, Timnit Gebru, Angelina McMillan‑Major, and Margaret Mitchell, “On the Dangers of Stochastic Parrots: Can Language Models Be Too Big?,” in Proceedings of the 2021 ACM Conference on Fairness, Accountability, and Transparency (New York: ACM, 2021), 610–623.

[26] Ruha Benjamin, Race After Technology (Cambridge: Polity, 2019).

[27] Safiya Umoja Noble, Algorithms of Oppression (New York: NYU Press, 2018).

[28] Ruha Benjamin, Race After Technology (Cambridge: Polity, 2019).

[29] Safiya Umoja Noble, Algorithms of Oppression (New York: NYU Press, 2018).

[30] Shoshana Zuboff, The Age of Surveillance Capitalism (New York: PublicAffairs, 2019).

[31] Sebastian Rieke, Lu Hong Li, and Veljko Pejovic, “Federated Learning on the Edge: A Survey,” ACM Computing Surveys 54, no. 8 (2022).

[32] Elinor Ostrom, Governing the Commons (Cambridge: Cambridge University Press, 1990).

[33] International Energy Agency, Electricity 2024: Analysis and Forecast to 2026 (Paris: IEA, 2024).

[34] Shaolei Ren et al., “Making AI Less Thirsty: Uncovering and Addressing the Secret Water Footprint of AI Models,” arXiv:2304.03271 (2023).


Bibliography

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Benjamin, Ruha. Race After Technology: Abolitionist Tools for the New Jim Code. Cambridge: Polity, 2019.

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Bridle, James. Ways of Being: Animals, Plants, Machines: The Search for a Planetary Intelligence. New York: Farrar, Straus and Giroux, 2022.

Cobb Jr., John B. “Process Theology and Ecological Ethics.” Ecotheology 10 (2005): 7–21.

Couldry, R., and U. Ali. “Data Colonialism.” Television & New Media 22, no. 4 (2021): 469–482.

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Kairouz, Peter, et al. “Advances and Open Problems in Federated Learning.” Foundations and Trends in Machine Learning 14, no. 1–2 (2021): 1–210.

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Merleau-Ponty, Maurice. Phenomenology of Perception. London: Routledge, 2012.

Noble, Safiya Umoja. Algorithms of Oppression: How Search Engines Reinforce Racism. New York: NYU Press, 2018.

Ostrom, Elinor. Governing the Commons: The Evolution of Institutions for Collective Action. Cambridge: Cambridge University Press, 1990.

Patterson, David, et al. “Carbon Emissions and Large Neural Network Training.” arXiv:2104.10350 (2021).

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Full PDF here:

Launching Carolina Ecology

I’m excited to launch Carolina Ecology this week. This is a project I’ve been working on in my head for a while, and I’m excited to see it come to fruition. 

The idea is to provide a place to bridge the worlds that make up our region’s ecologies: to draw on spiritual traditions, ecological science, and grassroots activism so that each informs and deepens the other. There will be regular essays (already a couple there written by me) as well as a weekly podcast that will hopefully include voices from around North and South Carolina exploring these ideas, possibilities, thoughts, or events.

From the about page:

What You’ll Find Here

Essays & Reflections: Essays highlighting the vastness of ecologies in the Carolinas as well as explorations of theological frameworks and their relevance to Carolina landscapes, from the Coastal Plain’s salt marshes to the Piedmont’s waterways (from myself and others).

Local Conservation News: Updates on land-preservation efforts, watershed restoration projects, and progress (or setbacks) in state and municipal environmental policy.

Indigenous Perspectives: Profiles of initiatives, interviews with tribal leaders, and deep dives into traditional ecological knowledge, especially fire and water stewardship practices in our region.

Faith & Ecology Resources: Sermons, liturgy ideas, and study guides for congregations seeking to integrate environmental ethics into worship, outreach, and education.

Events & Calls to Action: Listings of Carolina-centered conferences, citizen science opportunities (like stream monitoring or butterfly counts), and gatherings where activists, faith communities, and scientists come together.

Here’s the essay I just published there regarding World Oceans Day and Pentecost as well…

Sustaining What Sustains Us – by Sam Harrelson:

It’s World Oceans Day across our planet today. There won’t be many sermons about that here in the Carolinas, I fear. However, I am hopeful that a young person somewhere in our two states will be inspired today to think about our oceans from its amazing creatures to the quizzical nature of the ever present tidal cycles to the circulation that helps regulate our climate despite our worst intentions at control or extraction (whether with intent or not). Folly Beach is hosting a gathering if you’re in the Charleston area or the Lowcountry of SC.

I hope you’ll subscribe if you’re interested in such topics and tell a friend or two!

Center for Process Studies Presentation June 2025

I’m excited to present a paper this weekend at the Center for Process Studies’ conference (Pomona College, CA), “Is It Too Late?: Toward an Ecological Civilization.”

My paper is titled Relational Roots and Ecological Futures: Bridging Whitehead, Cobb, and Gullah Wisdom Toward a Decolonized Ecological Civilization and I’ll be posting that up after the conference this weekend!

“Not a forest, but a museum.”

You may want to sit down to read this… 

‘Half the tree of life’: ecologists’ horror as nature reserves are emptied of insects | Insects | The Guardian:

Today, as well as being an ecologist Wagner feels he has taken on a second role – as an elegist for disappearing forms of life.

“I’m an optimist, in the sense that I think we will build a sustainable future,” Wagner says. “But it’s going to take 30 or 40 years, and by then, it’s going to be too late for a lot of the creatures that I love. I want to do what I can with my last decade to chronicle the last days for many of these creatures.”

Emerald Ash Borer and Spartanburg (and Us)

Lately, I’ve been thinking about the remaining ash trees here in Spartanburg. These quiet giants are now gravely threatened by the emerald ash borer, a small, invasive beetle that’s making its way across our county.

This beetle (first discovered in the US in Detroit in the early ’00s) burrows beneath the bark of ash trees, cutting off their lifelines. It’s a slow-motion crisis, one that’s easy to miss until a favorite tree starts to show signs of stress, such as leaves thinning, bark splitting, a hush settling over a place that once felt vibrant.

But this isn’t just about trees. In my work and study, I keep coming back to the idea that we’re all entangled here… people, trees, insects, the soil under our feet. What happens to the ash tree happens to the creatures and people who live around it. Our ecosystems aren’t just backgrounds; they’re communities, and we’re an integral part of them, just as they are an integral part of us.

So what do we do? For me, the first step is to pay attention. Notice what’s changing in your yard, your local park, or the street where you walk your dog. Talk with your neighbors about what you’re seeing. And when you can, support local efforts to monitor and care for our ecosystems.

Maybe most importantly, let this be a moment for spiritual reflection and a reminder that our call to care for the earth isn’t just about preservation, but about love and connection. The fate of the ash tree is tied up with our own, whether we notice it or not.

Let’s notice. And let’s act with intention (not sure releasing non-native wasps is the way to go, either)…

Invasive Emerald Ash Borer attacks South Carolina ash trees:

“I would argue that the Emerald Ash Borer is the most invasive forest pest of this generation,” Clemson University forestry professor David Coyle said. “It’s on the level of Chestnut blight.”…

“We can expect Ash to be very rare in South Carolina, as it’s becoming a very rare tree in most of the U.S.,” Jenkins said.

Here, they often follow the rivers, which is where most Ash trees are found. That includes Lawson’s Fork Creek, which flows right through the Edwin M. Griffin Nature Preserve…

“That tree’s doomed; there’s no coming back for it,” said Sam Parrott, executive director of SPACE. “I think most of our mature Ash trees are toast, unfortunately.”

Conservation as Communion

Here’s a paper I’ve written on the concept of re-thinking conservation attempts in modern societies based on technocratic and market-based ideas. Conservation and human action (and inaction) is a fascinating area to ponder. As part of my wider work on The Ecology of the Cross, this is a paper that explores some of the roots of our Western concepts of “conservation” and a possible middle way in these uncertain times using fire as a case study 🔥🌲.

Here’s the abstract:

“This paper proposes a paradigm shift in conservation, moving from technocratic and colonial frameworks toward an ethic of interspecies communion. Drawing on Juno Salazar Parreñas’ critique of biopolitical care, Mara Goldman’s analysis of Maasai narrative epistemologies, Barrett et al.’s model of intuitive interspecies communication, and philosophical reflections from Edgar Morin, William Desmond, and the emerging field of Ecocene fire practices, the paper articulates a vision of both conservation and understandings and uses of fire rooted in reciprocity, complexity, and ontological humility. It argues that communion, not control, must ground conservation in the age of ecological disruption.”

From Communion to Kenosis: Toward an Integral Ecology of the Cross

This paper develops the framework of an integral ecology of the cross by weaving together principles from integral ecology, Christian theology, and phenomenology. Building upon the five principles outlined in The Variety of Integral Ecologies (particularly communion, subjectivity, and agency), I argue that the theological concept of kenosis (self-emptying) and the practice of ecological intentionality offer essential deepening for ecological ethics and spiritual engagement. Drawing from thinkers such as Thomas Berry, Leonardo Boff, Catherine Keller, Maurice Merleau-Ponty, and Edith Stein, the paper proposes a vision of ecological participation grounded in humility, interdependence, and sacramental presence. A case study of fire, examined through Indigenous stewardship practices and Christian sacramental symbolism, serves as a focal point for integrating liturgical, ecological, and metaphysical dimensions. Reimagining the cross not as a symbol of abstract salvation but as a paradigm of relational descent, the paper invites faith communities and scholars alike to consider new modes of ecological formation rooted in attention, vulnerability, and shared becoming. In an age of planetary crisis, an integral ecology of the cross offers a constructive theological and ethical response: one that honors suffering, performs peace beyond the human, and nurtures communion in the face of collapse.