The News Event
Instawork recently unveiled Instacore, a wearable camera rig designed to turn human workers into collectors of robot training data. The device straps onto workers in physical labor environments, recording first-person movement and task execution that will be used to train robotic systems. This is not a productivity tool for the worker wearing it. It is a data extraction apparatus that converts human embodied expertise into machine-legible training signal.
The distinction matters. Instacore does not augment the worker's capability. It harvests the worker's capability on behalf of a system that will eventually compete with that worker. This is a structurally novel arrangement, and existing organizational theory does not handle it particularly well.
The Competence Extraction Problem
Most discussions of human-robot collaboration frame the relationship as cooperative: humans and machines each contribute distinct capabilities. Instacore inverts this framing. The human worker is not a collaborator in the Instacore arrangement. The worker is the training dataset. Their tacit knowledge, movement patterns, and adaptive responses to physical variation in the environment are being systematically captured and formalized.
Hatano and Inagaki (1986) drew a foundational distinction between routine and adaptive expertise. Routine expertise covers predictable, scripted task performance. Adaptive expertise covers the flexible, principled responses a skilled worker makes when conditions deviate from expectation. What makes Instacore interesting from a theoretical standpoint is precisely which kind of expertise it targets. A wearable camera capturing task execution in real warehouse and labor environments is capturing adaptive expertise, not just routine procedure. It is recording how skilled workers handle the unpredictable variations that procedural documentation has never successfully encoded.
This creates what I would call a competence extraction asymmetry. The worker contributes the most organizationally valuable form of knowledge, the kind that enables robust performance under novel conditions, and receives no structural benefit from that contribution. The extracted competence migrates upward in the value chain, away from the worker who generated it.
The ALC Framework Applied to a New Context
My dissertation research on Algorithmic Literacy Coordination focuses on how workers develop effective competencies in algorithmically-mediated environments. A central puzzle in this framework is the awareness-capability gap: workers can become aware that algorithms govern their outcomes without this awareness translating into improved performance (Kellogg, Valentine, and Christin, 2020). Knowing a system exists does not mean knowing how to navigate it effectively.
Instacore introduces a structurally parallel gap, but in the opposite direction. Here, workers have demonstrated capability, adaptive physical expertise, without having any functional awareness of how that capability will be formalized, stored, or deployed. The asymmetry is not just economic. It is epistemic. The worker cannot see what is being extracted or how the extracted data will structure the robotic system that eventually operates alongside, or instead of, them.
Rahman's (2021) concept of the invisible cage in platform labor is useful here. Rahman documents how platform architecture constrains worker behavior through opaque mechanisms that workers cannot directly observe or contest. Instacore extends this logic into the physical body. The constraint is no longer mediated through a smartphone interface or a dispatch algorithm. It is attached to the worker's torso.
Organizational Theory Has Not Caught Up
Schor et al. (2020) identified dependence and precarity as core features of platform labor, but their analysis assumed the worker was producing value through task completion. The Instacore model introduces a secondary production layer where the worker simultaneously completes tasks and produces training data. These are not the same activity, and existing labor frameworks do not account for the dual nature of the value being generated.
Sundar's (2020) work on machine agency in communication contexts suggests that as machine actors become more capable, human actors tend to over-attribute competence to the machine and under-attribute the human inputs that made that competence possible. This is not a neutral cognitive error. It has direct governance implications. When the human origin of robotic training data becomes invisible, the case for compensating or protecting the workers who generated that data becomes structurally harder to make.
What This Means Going Forward
Instacore is one product from one company, but the logic it instantiates is generalizable. Any organization deploying wearable sensing to capture worker behavior for model training is operating within this same structure. The workers generating the data and the systems benefiting from the data are separated by an organizational and legal gap that current frameworks were not designed to close.
The more immediate research question, from my perspective, is whether workers who understand the structural purpose of these devices, those who have schema-level understanding rather than just surface awareness, make meaningfully different decisions about participation. That is an empirical question, and it is one that existing algorithmic literacy research has not yet addressed in physical labor contexts.
References
Hatano, G., and Inagaki, K. (1986). Two courses of expertise. In H. Stevenson, H. Azuma, and K. Hakuta (Eds.), Child development and education in Japan (pp. 262-272). W. H. Freeman.
Kellogg, K. C., Valentine, M. A., and Christin, A. (2020). Algorithms at work: The new contested terrain of control. Academy of Management Annals, 14(1), 366-410.
Rahman, H. A. (2021). The invisible cage: Workers' reactivity to opaque algorithmic evaluations. Administrative Science Quarterly, 66(4), 945-988.
Schor, J. B., Attwood-Charles, W., Cansoy, M., Ladegaard, I., and Wengronowitz, R. (2020). Dependence and precarity in the platform economy. Theory and Society, 49(5-6), 833-861.
Sundar, S. S. (2020). Rise of machine agency: A framework for studying the psychology of human-AI interaction. Journal of Computer-Mediated Communication, 25(1), 74-88.
Roger Hunt