Why W2 Contract Employees Make Ideal Data Labelers

Why W2 Contract Employees Make Ideal Data Labelers

The changing circumstances of data labeling and the shift away from independent contractor labor

Generative AI data labeling started as a straightforward task, which could be easily handled by independent contractors. However, with the advancement of AI models, particularly Large Language Models (LLMs), the nature of this work has evolved significantly.

The growing complexity and sophistication of data labeling tasks have highlighted the need for a more specialized, committed workforce, and to that extent, W2 contract employees are becoming a stronger option.

The Need for Internal Training

The intricacy of modern data labeling demands extensive training to ensure the production of high-quality AI training data. W2 contract employees can receive direct, hands-on training and guidance to stay aligned with company priorities. This is a unique advantage that they have over independent contractors, who must observe regulatory prohibitions against receiving training from clients as part of appropriate worker classification.

Improved Retention Rates

As AI companies rely more on specialists with advanced skill sets and deep domain expertise, the recruitment and retention of these high-caliber professionals have become very important. These roles are demanding and often require a higher investment in talent acquisition.

In general, W2 contract employment results in better retention rates compared to independent contractors, ensuring that companies can maintain a stable and skilled workforce over time.

Better Data Privacy

W2 contract employees typically work exclusively for their employer, use company-provided equipment, operate onsite, and sign non-disclosure agreements. These are all great practices for reducing the risk of data breaches and ensuring better compliance with data security and privacy standards.

By contrast, independent contractors serve multiple clients, use their own equipment, and have more autonomy over their work environment. While this isn’t a guaranteed formula for security issues, it can result in exposure in many ways that W2 contract employment will never encounter.

Boosting Engagement and Performance Management

Employee engagement is key to productivity and accuracy in data labeling tasks. Engaged employees who receive regular feedback tend to perform better. W2 contract employees can be more closely managed and mentored, fostering an environment of continuous improvement.

The same is unfortunately not possible for independent contractors, who, as stated previously, operate independently and are subjected to regulatory prohibitions against management and training from their clients.

Managing Changing Priorities

With W2 contract employees, there is more precise control over scheduling and task management. This is particularly advantageous for data labeling tasks that require quick adjustments and priority shifts. While independent contractors set their own schedules, the ability to direct W2 employees more accurately ensures that projects remain on track and can adapt swiftly to changing requirements.

As the needs of AI data labeling continue to advance, so too does the need for highly trained, reliable, and engaged workers. W2 contract employees provide numerous advantages over independent contractors, including direct training, higher retention rates, enhanced data security, improved performance management, and superior time management. For companies aiming to produce top-tier AI training data, the shift towards W2 contract employment is not just a trend but a strategic necessity.

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