In June, CDH Faculty Director Meredith Martin gave the keynote address at the DARIAH-EU Annual Event in Lisbon, Portugal. The topic of the conference was Workflows: Digital Methods for Reproducible Research Practices in the Arts and Humanities. In her talk, “Worked Up About Data,” Martin looks at the history of humanists’ use of data in their scholarship, and how its complexity has—and continues to—impact the development of methodologies and workflows for data work in the humanities fields.
In the piece below, Martin elaborates on aspects of her talk, connecting some of her key ideas to her forthcoming book projects, Poetry’s Data: Digital Humanities and the History of Prosody (2025) and Data Work (with Zoe LeBlanc, 2026).
Download the presentation: Worked Up About Data, DARIAH ’24 Keynote, Meredith Martin (PDF, 37.3 MB)
In your talk, you discussed how humanists’ engagement with data continues to sometimes be uncomfortable or even controversial. Why do you think that is still the case today?
In general, humanists who aren’t already working in DH are averse to the concept of “data.” Miriam Posner has shown that most humanities researchers refer to their sources or evidence as “research materials” whereas in other fields, a variety of research materials are classified as data. We humanists are most comfortable with the broadest possible definition of data—a way to find our books in a library system. We are only slightly less comfortable with arguments like Laura McGrath’s, Mark McGurl’s, or Melanie Walsh’s, that use book data—sales—to think about how books make cultural meaning. At the same time, fields that I might classify as “pre-computational” rely heavily on this kind of “sociological” book data. In fact, William St Clair’s The Reading Nation in the Romantic Period (2004) changed the way that scholars of the nineteenth century made claims about the “influence” of particular books. In many ways this was a blow to some of the looser claims of New Historicism. St Clair used book data, but he didn’t call it data even though he quantified it: the “information” of book prices, print runs, intellectual property law, and readership information came from “publishing and printing archives.” No real uproar there from literary scholars—in fact the book has been incredibly influential in the field. But book data from last year? How could that possibly qualify as literary history or literary analysis?
Part of the resistance is that the word “data” itself is something we know to be evil—it’s stolen from us, we are datafied, there are data breaches, we don’t have data privacy, our data is “harvested” and sold without our knowledge, etc., etc. Datafication has had and continues to have terrible consequences for U.S. citizens, particularly when that data is about race or class or age or gender. Critical data studies shines a light on these issues—thinking carefully about how we are tracked and monetized and at what cost. And our archives—our literary archives that we may have digitized and put online or that Google may have digitized and put online—are also datafied and harvested and then sold back to us in the form of chatbots many don’t want or need.
But those of us who work in computational and data-driven humanities see our understanding of our own materials as data as part of a crucial way that the humanities can alter the direction of data science. Our expertise in choosing how to navigate our archives—with all of that necessary metadata that guides us via catalogs or archival descriptions—can and should extend to noticing why and how our information infrastructure guides what we know and how we know it.
Some of the best literary and historical research draws on the insights of critical archival studies, a field that warns us that we must bring our understanding of archival incompleteness and historical bias to our source materials before we make claims. Now that seems a long way from data, and the relationship between archive and data is particularly tricky in the history of information science, but some of the best work in historical data, like Jessica Marie Johnson’s and Ian Milligan’s, shows how the datafication of both people and of archives shapes how we know what we know. That’s a tricky thing to admit, because it shows that as scholars we are already trapped in a system of knowledge production and dissemination that is not so different from that more monetized version of datafication where we accept cookies without thinking and then shrug as the shoes we looked at once follow us around on every browser window. What if we thought about literary or historical knowledge production in the same way? It would mean acknowledging that information retrieval systems and our modern research libraries’ ability to subscribe to large-scale databases where many of our materials have now been digitized are part of this ickier, datafied landscape, and that we aren’t escaping to some pure non-monetized realm when we conduct our research. I think acknowledging that discomfort, that we’ve accepted the cookies and that the acceptance is incompatible with some dreamed-of feeling of autonomy as scholars, is the underbelly of the resistance to the “data.” Of course this is just one reason! Zoe [LeBlanc] and I explore several angles as to why “data work” is undervalued and even scoffed at in the humanities in our new book.
Do you think the rise of generative AI is changing humanists’ relationship to data work?
I do. I think that because people are interacting with a human-like chat agent, it is somehow allowing them the freedom to think about how the chatbot works and be curious about combinations of tokens in ways that they may never have been creative about, say, search optimization algorithms or how and why JSTOR works the way it does. My hope is that we take the opportunity to introduce data literacy broadly at the same time as we push for AI literacy – AI is data + machine learning, and the former is just as important as the latter.
We can do a lot of work empowering humanists to understand how much they have to offer by way of expertise if we demystify the choices we make when we make humanities materials into machine-readable form. By foregrounding the interpretive decisions behind how we choose to classify our data and by educating humanists about the kinds of data standards that already exist and have been used for interoperability by information scientists for some time, we can show humanities scholars that they are already capable data workers.
How did your talk touch upon the topic of workflows, which was the theme of the DARIAH Annual Event?
I wanted to spend a bit more time with workflows than I did, but in essence I wanted to make a case that we can acknowledge that this work is hard and emotional work. There is emotion in the kinds of interpretive choices we make when we are working in the archives of vulnerable populations or the archives of slavery, for example, where building emotional reckoning and careful consideration is part of the process— becomes part of the workflow. There, paying attention to where there is an eddy or a stopper—a tangle that you can’t quickly agree on or move past—those are the places in humanities data work that are the most productive, that all the scholars we interviewed for our book noticed as the places where we learn the most about the world.
I also wanted to think more about the understanding of iterations and revision in workflows as something akin to writing or drafting. Sometimes data work means that you have to go back and start over and redo thousands and thousands of cells on a spreadsheet because your question has become more nuanced or your understanding of the material has changed. These are humanistic processes, but they can also teach any scholar who works with data to slow down. Humanists are comfortable with slow and excruciating workflows, nuance, tangles, complications.
We can also benefit greatly from higher-level project management and dividing our work into smaller chunks with more achievable goals, but there’s a tension between one kind of workflow with data (say where you just “get” or “make” a dataset without being responsible or putting it into context) and what Zoe and I think about as fundamentally humanities data work, and we think that all data driven work would benefit from the more responsible, contextual, and even collaborative way that we propose. Or, to put it another way, yes, you can agree on an entity that is good enough in order to start analyzing your data, but as humanists we need to write about that wavering, that interpretive decision, to make clear that our choices in how we constructed our dataset are just as crucial as our analysis.
And that is hard work that can be really tiring and time consuming, but I wanted to draw attention to that and honor it, especially for my DARIAH community that spends so much time helping people through the process. It’s okay to be frustrated and to start over. We don’t have to pretend that workflows protect us from emotion—if anything, I think that they should normalize it.
In your presentation, you drew connections between the work of Victorian prosodists and those of data-driven humanists today. How has your work as a scholar of English prosody shaped your scholarship in digital humanities?
Okay, for that answer I think you need to just read Poetry’s Data: Digital Humanities and the History of Prosody, which will be published in May 2025! But briefly—it’s related to the answer above. We are making choices about what we look at. Gerard Manley Hopkins, a Victorian poet, wrote in his journal in the early 1870s: “what you look hard at seems to look hard at you.” He’s trying to describe what he sees as the binding energy (what he calls “instress”) between our attention and between patterns in nature (or man-made patterns) that can remind us of our connection to the divine (what he calls “inscape”). We live in an era completely guided by pattern-making mechanisms and machines. I’m not arguing for the aesthetic value of a spreadsheet over that of a sonnet (though I put the two in parallel in my fall course), but I am interested how Hopkins and other writers who wanted to measure both poetry and language find themselves at the same intersection as data-driven humanists: a choice between understanding meaning as existing in the pattern itself, versus understanding meaning as residing in the relationship between the pattern and the person looking at it. How, and why, do we decide to interpret a pattern one way versus another way? These stakes, for me, are a way to get at the tension between the disciplines of literary studies and data science, which, when I look at it this way, doesn’t feel like much of a tension at all.
Your slides integrate color and art in a provocative and striking way. Can you tell us more about the artist, and why you chose these images to accompany your talk?
María Medem is everywhere, and once you know what her illustrations look like you’ll start seeing them all the time! She’s an artist from Seville I’ve followed for some time. I might have come across her work first in the New York Times or Wired? But she tends to illustrate articles about our relationships with technology and with nature. I find her colors make me slow down and dwell, which was the feeling I was trying to get across in my talk.
Where did you see connections or resonance between your talk and the other presentations at the DARIAH Annual event? What were some of your takeaways from the conference?
I felt very at home at the conference and admired all the papers I heard and all the posters I saw. To go back to the topic of emotion, one thing in my title and in the tenor of my talk that maybe resonated with folks was the issue of how to value data work—which, just to clarify—requires agreed upon workflows. Some papers presented workflows and their challenges, others talked more about data work and interpretive labor, but some of the best conversations showed how people were worked up that this interpretive knowledge was not something that was being seen, valued, credited, recognized, or counted for promotion in either academic, library, or Research Software Engineering communities.
How has being a DARIAH cooperating partner influenced your research or the work of the CDH?
We admire DARIAH’s commitment to advancing knowledge across boundaries—linguistic, cultural, national, and disciplinary. I think being in their orbit has helped us be strategic about our research areas and their potential impact. From New Languages for NLP to Humanities for AI (which includes our African Languages Technologies project) to our Humanities RSE program, we understand that our work, when we do it right, will have lasting impact globally. Though we don’t have the European umbrella funding or research organizations to generate cross-institutional collaborations, we bring that ethos of collaboration to everything we do.
Listen back to the keynote speech my Meredith Martin on DARIAH’s Youtube channel.
This post is republished from here.