“好差”工作的形成:算法管理如何通过持续且受限的选择制造同意

The Making of the “Good Bad” Job: How Algorithmic Management Manufactures Consent Through Constant and Confined Choices

ADMINISTRATIVE SCIENCE QUARTERLY · 2024
被引 103 · 同刊同年前 2%
人大 A+FT50UTD24ABS 4*

中文导读

基于对网约车行业的七年质性研究,发现算法管理通过细分工作流程、提供频繁但狭窄的选择,使工人通过参与或偏离策略主动配合,从而制造出他们喜欢的“好差”工作,但掩盖了结构性问题。

Abstract

This research explores how a new relation of production—the shift from human managers to algorithmic managers on digital platforms—manufactures workplace consent. While most research has argued that the task standardization and surveillance that accompany algorithmic management will give rise to the quintessential “bad job” (Kalleberg, Reskin, and Hudson, 2000; Kalleberg, 2011), I find that, surprisingly, many workers report liking and finding choice while working under algorithmic management. Drawing on a seven-year qualitative study of the largest sector in the gig economy, the ride-hailing industry, I describe how workers navigate being managed by an algorithm. I begin by showing how algorithms segment the work at multiple sites of human–algorithm interactions and how this configuration of the work process allows for more-frequent and narrow choice. I find that workers use two sets of tactics. In engagement tactics, individuals generally follow the algorithmic nudges and do not try to get around the system; in deviance tactics, individuals manipulate their input into the algorithmic management system. While the behaviors associated with these tactics are practical opposites, they both elicit consent, or active, enthusiastic participation by workers to align their efforts with managerial interests, and both contribute to workers seeing themselves as skillful agents. However, this choice-based consent can mask the more-structurally problematic elements of the work, contributing to the growing popularity of what I call the “good bad” job.

零工经济算法管理工作设计组织行为劳动社会学