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“Big data” and the “internet of things” (IoT) are fundamentally transforming how resources businesses conduct their operations, and helping companies significantly improve productivity and safety. This article will briefly address the potential employment-related legal ramifications facing resources companies who use big data and the IoT.
This is a summary of a paper, presented by Kirsty Faichen, at the 2017 Annual AMPLA Conference in Melbourne on 18 October 2017. For a copy of the full paper please contact Kirsty Faichen or Adam Ray.
‘Big data’ is data that has high volume, high velocity and high variety.1 That is: a large amount of data (high volume), many different types of data (variety) and a high speed of data processing (high velocity). In the employment context (and elsewhere), data can be digitally ‘born’ (e.g. data generated by performance on psychometric tests or from sensors attached to machinery) or analog ‘born’ (e.g. video footage captured by workplace surveillance cameras).2 The primary importance of big data lies in its capacity to be analysed. Operators in the resources industry – and businesses in virtually any industry – may analyse large amounts of data by applying algorithms to find correlations, identify trends and make predictions.
Whilst there is no generally accepted definition of the IoT, it broadly refers to the connection of everyday objects to the internet. Connected objects exchange, aggregate and process information on their physical environment to provide value added services to end-users, from individuals to companies to society as a whole.3 Importantly, the IoT enables operators in the resources sector to obtain real-time data from devices connected to or monitoring machinery, vehicles and employees.
As commentators have observed, when big data is combined with ‘traditional’ employment data like performance reviews, attendance, absenteeism, and remuneration, employers are able to identify patterns which can be used to predict outcomes for job candidates and employees with similar profiles. Those predictions can guide decision making in nearly all aspects of the human resources life cycle, including recruitment, hiring, promotion, compensation and incentives.4
The primary drivers for the increased use of big data and the IoT include:
Whilst there are obvious benefits to the integration of big data and IoT services into the businesses of operators in the resource industry, there are also a number of associated risks that need to be managed.
Big data ‘people analytics’ can make recruitment processes more efficient and allow resources and other businesses to ultimately hire and retain better candidates. However, there is a risk of inadvertent discrimination that must be managed. As some commentators have observed, data is often not neutral, and algorithms can discriminate.9
Although the use of big data in recruitment could expose resource businesses to discrimination claims, the risk of a successful claim may be low. Individuals would usually find it difficult to prove why they were not selected for an interview or offered a job. Even if they could establish that, the individual must also prove that the algorithms the business used had an disproportionate effect on them, and this was unreasonable.10 However, given the likelihood of greater regulation of big data11 and public criticism, it would not be wise for employers to be complacent about these risks.
By incorporating data and the IoT into decision-making processes, employers can improve accuracy and objectivity in assessing employees’ performance, validating decisions about disciplinary action. Outside of mining, companies like Uber, Deliveroo and Freelancer.com use, among other technologies, algorithmic rating systems to control and discipline their workers.12 Collecting and having access to more data regarding employee performance may, however, bring a greater responsibility upon employers to consider and act on it. In the writers’ view, the input and responsibility of human managers and supervisors will continue to be vital. Employees and unions are unlikely to respond favourably to an employer that justifies disciplinary action solely on the basis of automated data analysis. It will continue to be important for employers to honestly and empathetically communicate and explain to employees decisions that affect them, and to take responsibility for the decision-making that underpins the algorithms in automated technology.
Businesses are using big data in innovative ways to improve the health and safety of workers. By ensuring machines are working at optimum capacity while identifying and preventing potential incidents which may stop work,13 businesses can achieve the complementary goals of increased productivity and improved safety. An example particular to the mining and resources industry is the introduction of SmartCaps. These wearable devices, which resemble baseball caps, contain sensors that measure brainwaves to monitor fatigue and send alerts when drivers are on the brink of microsleep.14 When trialled at Hunter Valley Operations in Australia on 83 trucks, SmartCaps almost completely eliminated fatigue-related incidents.15 Employees are, however, naturally apprehensive about devices monitoring their health and movements, and are particularly concerned about the risk of the information being used against them in disciplinary decisions or otherwise used to discriminate.16
Many jurisdictions around the world have information privacy regimes regulating the collection, use and disclosure of personal information. In Australia, for example, large business and government organisations are required to abide by ‘Privacy Principles’ which regulate, among other things, how personal information is collected (including giving notice about collection), used, stored and disclosed , (including overseas disclosures), as well as the security of personal information. Employers in jurisdictions with privacy regimes should consider how their use of big data and the IoT may affect their ability to comply with their obligations, and also whether policies need to be revised or employees otherwise need to be put on notice regarding surveillance or monitoring activities.
The resources sector is embracing and often leading the development and adoption of technology and innovation that improves safety, productivity and the ways in which employees are enabled to work. However, data collection is not new and has throughout modern history been used as an employee performance measure or decision making tool. Indeed, the ‘general strike’ in Australia in 1917, which involved around 100,000 workers in NSW and Victoria, was triggered by the introduction by the NSW Department of Railways of a new card system which recorded the tasks each worker was assigned and the time it took them to complete those tasks. However, resources businesses have traditionally not been custodians of large quantities of personal information. Employers should be mindful not to stifle worker innovation and creativity through an environment of over-surveillance and a disciplinary culture. Resources companies should recognise that big data and the IoT help people make better decisions. Ultimately, whilst the volume of data has increased, and the sophistication of the way in which the data can be obtained and analysed has developed, the human, empathetic, decision-making part of business hasn’t yet been made redundant.
The contents of this publication are for reference purposes only and may not be current as at the date of accessing this publication. They do not constitute legal advice and should not be relied upon as such. Specific legal advice about your specific circumstances should always be sought separately before taking any action based on this publication.
© Herbert Smith Freehills 2025
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