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Could Big Data Lead to Employment Discrimination?
Could Big Data Lead to Employment Discrimination?

September 30, 2022

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Today, big data is important because businesses and institutions produce a lot of information and data. Using big data during the recruitment process, you can predict your employment needs. As a result, it saves time, improves the caliber of your hiring, and raises employee engagement and retention. It also boosts the effectiveness and success of employee training.

Despite its many advantages, big data faces difficulties regarding job discrimination. Continue reading to learn more about big data, the risks it poses for job discrimination, and how to mitigate those risks.

What is Big Data?

Big data is a term used to describe vast quantities of information or data that are challenging to process using conventional techniques. It applies to structured and unstructured data from different sources and forms, including emails, images, audio files, spreadsheets, and databases. Big data may be processed, managed, and manipulated using the correct technologies to find patterns and correlations and gain insightful knowledge. Big data analytics may help businesses make better decisions, work more efficiently, and stay one step ahead of the competition.

 

The following are some ways in which employers can use big data in the workplace.

 

  1.  Acquisition of New Employees

Big data analytics are used by businesses to speed up the hiring process. By sorting through a lot of applicants and choosing the best ones, machine learning aids in the hiring process. Talent analytics helps to streamline the screening process by finding individuals with relevant attributes early on. Using the data they receive from their prospects, businesses can also leverage big data to diversify their workforce.

 

  1. Employee Engagement

Employers can use big data to determine how to raise worker performance. Employers can accomplish this by utilizing important measures that offer information on their staff members' motivation, interests, and performance barriers. Using big data, you may recognise employees who perform well and determine why they perform poorly. By revealing the reasons why employees leave a company, the surveys can also aid in increasing employee retention. You can improve and keep top talent by using the information.

 

  1. Enhance Employee Training

Training and personal growth are required for employees to operate more efficiently. Employers can use big data analytics to customize training programmes based on the learning styles of their workforce. This makes staff training more affordable and can be easily incorporated into workers' daily routines. It also aids in determining the efficacy of training prior to its delivery. Last but not least, performance reviews are another way for companies to gauge the success of their talent development initiatives.

Employers may use big data analytics to improve the hiring process at every level, from finding talent to promoting employees.

How Big Data Leads to Employment Discrimination

Employees are protected against discrimination by the Equal Employment Opportunity Commission (EEOC) on the basis of gender, race, age, handicap, religion, national origin, colour, and genetic information. Big data increases the chance of an employer being held accountable for employment discrimination. The discrimination derives from the fact that employers find it challenging to comprehend how algorithms, machine learning, and data mining produce the outcomes.

 

Data Science and big data can help remove human bias but also result in job discrimination because an algorithm is only as good as the data it is given to work with. As a result, using big data in conjunction with bias and prejudice can provide discriminating results.

 

Since big data algorithms use internal and external data trails, discrimination may occur when details related to a specific desired feature are used against a candidate in the hiring process. For instance, if data mining gathers information about an applicant's medical history and algorithms link illness to decreased production, it may result in discrimination lawsuits.

Additionally, discrimination may occur when an employee's inability to use a certain technology prevents them from receiving an accurate evaluation. This is because some employee groups may not have the same access to a particular technology as their peers. Employers may discriminate against some populations, such as older professionals, by using customized job advertisements on social media. By doing this, they are denied the chance to apply for the job, which results in discrimination.

Reducing The Possibility Of Big Data Causing Employment Discrimination

Every employer must ensure fairness in the workplace. Here are some recommendations for reducing employment prejudice caused by big data.

 

  • Always be on the lookout for data that leaves out or omits information about particular populations because this leaves the possibility for prejudice.
  • Learn about big data analytics and identify the unique issues or inquiries you must resolve for more precise outcomes.
  • Before choosing, perform your research on the big data analytics methods and providers.
  • Evaluate big data technologies regularly to look for discriminatory potential
  • Before implementing big data in the workplace, consult a labor law expert for legal counsel.

 

Last Words! 

Although big data has many advantages for organisations, employers should use it with caution to avoid employment discrimination. Don't be afraid to seek assistance from a labour specialist if you believe you are a victim of job discrimination due to the improper use of big data and associated technologies. If you’re a data science aspirant wanting to learn more about big data tools.

 


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