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Showing posts with label Gig Economy. Show all posts

AI Was Meant to Help. So Why Is It Making Work Harder for Women in Indonesia?

 



Artificial intelligence is often presented as a neutral and forward-looking force that improves efficiency and removes human bias from decision-making. In practice, however, many women working in Indonesia’s gig economy experience these systems very differently. Rather than easing workloads, AI-driven platforms are intensifying existing pressures.

Recent research examining female gig workers introduces the concept of “AI colonialism.” This idea describes how older patterns of domination continue through digital systems. In this framework, powerful technology actors, largely based in wealthier regions, extract labour, data, and economic value from workers in developing countries, reinforcing unequal global relationships. The structure resembles historical colonial systems, but operates through algorithms and platforms instead of direct political control.

In Indonesia, platforms such as Gojek, Grab, Maxim, and Shopee rely heavily on informal workers. These companies have not transformed the nature of employment. Instead, they have digitised an already informal labour market. Workers are labelled as independent “partners,” which excludes them from basic protections such as minimum wages, paid sick leave, and maternity benefits. Earnings depend entirely on the number of completed tasks and algorithm-based performance scores.

For women, this structure intersects with what is often described as the “double burden,” where paid work must be balanced alongside unpaid domestic responsibilities. One delivery worker, Lia, begins her day before sunrise by preparing meals and organising her children’s routines. Only after completing these responsibilities can she log into the platform. As she explains, the system recognises only whether she is online, not the constraints shaping her availability.

Platform algorithms prioritise continuous, uninterrupted activity. Incentive systems often require completing a fixed number of orders within strict time windows. For workers managing caregiving roles, this creates structural disadvantages. Logging off to attend to family responsibilities can result in lost bonuses, while reducing work hours due to fatigue or health issues leads to declining performance metrics.

This reflects a greater economic reality in which unpaid domestic labour underpins the formal economy without recognition or compensation. Instead of addressing this imbalance, AI systems can intensify it. Another worker, Cinthia, observed a noticeable drop in job assignments after taking time off due to illness. The experience created a sense that the system penalises any interruption, making workers reluctant to pause even when necessary.

Although algorithms do not explicitly target women, they are designed around an ideal worker who is always available and unconstrained by caregiving duties. This assumption produces indirect but consistent disadvantage. The claim that digital platforms operate neutrally is further challenged by everyday experiences. For example, a driver named Yanti often informs passengers in advance that she is female, leading to frequent cancellations. While the system records these cancellations, it does not capture the gender bias behind them.

Safety concerns also shape participation. Many women avoid working late hours due to risk, which limits access to peak-demand periods and higher earnings. The system interprets this reduced availability as lower productivity. Scholars such as Virginia Eubanks have argued that automated systems frequently replicate and amplify existing social inequalities rather than eliminate them.

Similar patterns have been observed in other countries. In India, women working in ride-hailing services report lower average earnings, partly because safety considerations influence when and where they work. Algorithms, however, measure output without accounting for these risks.

Safety challenges persist even within delivery roles. Around 90% of women in group discussions reported choosing delivery work over ride-hailing due to perceived safety advantages, yet harassment remains a concern from both customers and other drivers. During the COVID-19 pandemic, gig workers were classified as essential, but their incomes declined sharply, in some cases by up to 67% in early 2020. To compensate, many worked more than 13 hours a day. Despite these conditions, platform performance systems remained unchanged, and illness-related breaks often resulted in lower ratings.

This inflicts a deeper impact in the contemporary labour control, where oversight is embedded within digital systems rather than managed by human supervisors. AI colonialism, in this sense, extends beyond ownership to the structure of control itself. Workers provide labour, time, and data, while platforms retain authority over decision-making processes.

In response, women workers have developed informal networks through messaging platforms to share information, warn others about unsafe situations, and adapt to algorithmic changes. They support each other by increasing activity on inactive accounts, lending money for operational costs, and collectively responding to account suspensions. When harassment occurs, information is circulated quickly to protect others.

These practices represent a form of mutual support rooted in shared vulnerability. Rather than relying on formal recognition as employees, many women build systems of protection among themselves. This surfaces a form of everyday resistance, where collective action becomes a strategy for navigating structural constraints.

Artificial intelligence is not inherently exploitative. However, when deployed within unequal economic systems, it can reinforce patterns of extraction and imbalance. As digital platforms continue to expand, understanding the lived experiences of workers, particularly women in developing economies, is essential. Behind every efficient system is a human reality shaped by trade-offs between income, safety, and dignity.


The Cybercrime Ecosystem Knits a Profitable Underground Gig Economy

 

Over a 30-month period, cybercriminal groups and threat groups advertised for workers with expertise in software development, IT infrastructure maintenance, and designing fraudulent websites and email campaigns. In accordance with a new report from cybersecurity firm Kaspersky, demand for technically skilled individuals continues, but it spiked during the coronavirus pandemic, with double the average job advertisements coming during March 2020, the first month of the pandemic. 

The analysis gathered messages from 155 Dark Web forums between January 2020 and June 2022, focusing on those that mentioned employment — either by cybercriminal groups or individuals looking for work. The majority of job postings (83%) were from threat groups looking for highly skilled workers, such as developers (61%), attack specialists (16%), and fraudulent website designers (10%).

As per Polina Bochkareva, a security services analyst at Kaspersky, enhancing defenses has compelled attackers to optimize their tools and techniques, driving the need for more technical experts.

"Business related to illegal activities is growing on underground markets, and technologies are developing along with it," she says. "All this leads to the fact that attacks are also developing, which requires more skilled workers."

The data on underground jobs reveals a spike in activity in cybercriminal services as well as the professionalization of the cybercrime ecosystem. According to a December report, ransomware groups have become much more efficient as they have turned specific aspects of operations into services, such as offering ransomware-as-a-service (RaaS), running bug bounties, and forming sales teams.

Furthermore, initial access brokers have productized the opportunistic compromise of enterprise networks and systems, frequently selling that access to third parties. According to the Kaspersky report, such a segment of labor necessitates the use of technically skilled individuals to develop and support complex features.

"The ads we analyzed also suggest that a substantial number of people are willing to engage in illicit or semilegal activities despite the accompanying risks," the report stated. "In particular, many turn to the shadow market for extra income in a crisis."

Pandemic caused spike 

A similar crisis sparked a surge in activity on Dark Web forums in early 2020. The pandemic, with its sudden layoffs and work-from-home mandates, fueled significant activity in the cybercrime underground, with 2020 seeing the highest number of employment-related posts. Overall, 41% of advertisements and job-seeking inquiries were posted on the Dark Web during the year, which is about average. However, March 2020 was the first month of worldwide lockdowns and saw approximately 6% of all postings, roughly double the average rate.

"Some ... living in the region suffered from the reduction of income, took a mandatory furlough, or lost their jobs altogether, which subsequently resulted in rising unemployment levels," Kaspersky stated in the report. "Some job seekers lost all hope to find steady, legitimate employment and began to search on Dark Web forums, spawning a surge of resumes there. As a result, we observed the highest ad numbers, both from prospective employers and job seekers."

Personal crises emerged to drive some technically inclined workers to seek employment with cybercriminal organizations. A common refrain in job advertisements is that applicants should not be addicted to drugs or alcohol.

"Teamwork skills, stable connection, no alcohol or drug addictions," read one job posting's translated requirements in the Kaspersky report.

"Dirty Work"

In many cases, the terms of the Dark Web jobs were similar to those of legitimate jobs, such as full-time employment, paid time off, and regular pay increases, with salaries ranging from $1,300 to $4,000 per month. However, the majority did not have an employment contract, and only 10% included a promise to pay salaries on time. The underground employment opportunities were dubbed "dirty jobs" in the report.

"Many are drawn by expectations of easy money and large financial gain," the report stated. "Most times, this is only an illusion. Salaries offered on the Dark Web are seldom significantly higher than those you can earn legally."

Reverse engineers had the highest potential median salary of $4,000 per month, with attack specialists and developers coming in second and third with promises of $2,500 and $2,000, respectively. However, the majority of offers (61%) were geared toward developers. According to Kaspersky's Bochkareva, these workers are the key to the cybercriminal underground.

"The most sought-after professionals were developers and attack specialists, particularly for coding malicious programs, phishing websites, and planning and implementing attacks," she says.