California FEHC Proposes Sweeping Regulations Regarding Use of Artificial Intelligence and Machine Learning in Connection With Employment Decision…
The California Fair Employment and Housing Council (FEHC) recently took a major step towards regulating the use of artificial intelligence (AI) and machine learning (ML) in connection with employment decision-making. On March 15, 2022, the FEHC published Draft Modifications to Employment Regulations Regarding Automated-Decision Systems, which specifically incorporate the use of "automated-decision systems" in existing rules regulating employment and hiring practices in California.
The draft regulations seek to make unlawful the use of automated-decision systems that "screen out or tend to screen out" applicants or employees (or classes of applicants or employees) on the basis of a protected characteristic, unless shown to be job-related and consistent with business necessity. The draft regulations also contain significant and burdensome recordkeeping requirements.
Before the proposed regulations take effect, they will be subject to a 45-day public comment period (which has not yet commenced) before FEHC can move toward a final rulemaking.
"Automated-Decision Systems" are defined broadly
The draft regulations define "Automated-Decision Systems" broadly as "[a] computational process, including one derived from machine-learning, statistics, or other data processing or artificial intelligence techniques, that screens, evaluates, categorizes, recommends, or otherwise makes a decision or facilitates human decision making that impacts employees or applicants."
The draft regulations provide the following examples of Automated-Decision Systems:
Similarly, "algorithm" is broadly defined as "[a] process or set of rules or instructions, typically used by a computer, to make a calculation, solve a problem, or render a decision."
Notably, the scope of this definition is quite broad and will likely cover certain applications or systems that may only be tangentially related to employment decisions. For example, the term "or facilitates human decision making" is ambiguous. A broad reading of that term could potentially allow for the regulation of technologies designed to aid human decision-making in small or subtle ways.
The draft regulations would make it unlawful for any covered entity to use Automated-Decision Systems that "screen out or tend to screen out" applicants or employees on the basis of a protected characteristic, unless shown to be job-related and consistent with business necessity
The draft regulations would apply to employer (and covered third-party) decision-making throughout the employment lifecycle, from pre-employment recruitment and screening, through employment decisions including pay, advancement, discipline, and separation of employment. The draft regulations would incorporate the limitations on Automated-Decision Systems to apply to characteristics already protected under California law.
The precise scope and reach of the draft regulations are ambiguous in that key definitions define Automated-Decision Systems as those systems that screen out "or tend to screen out" applicants or employees on the basis of a protected characteristic. No clear explanation of the scope of the phrase "tend to screen out" is offered in the proposed regulations, and the inherent ambiguity of the language itself presents a real risk that these regulations will extend to certain systems or processes that are not involved in screening applicants or employees on the basis of a protected characteristic.
The draft regulations apply not just to employers, but also to "employment agencies," which could include vendors that provide AI/ML technologies to employers in connection with making employment decisions
The draft regulations apply not just to employers, but also to "covered entities," which include any "employment agency, labor organization[,] or apprenticeship training program." Notably, "employment agency" is defined to include, but is not limited to, "any person that provides automated-decision-making systems or services involving the administration or use of those systems on an employer's behalf."
Therefore, any third-party vendors that develop AI/ML technologies and sell those systems to third-parties using the technology for employment decisions are potentially liable if their automated-decision system screens out or tends to screen out an applicant or employee based on a protected characteristic.
The draft regulations require significant recordkeeping
Covered entities are required to maintain certain personnel or other employment records affecting any employment benefit or any applicant or employee. Under FEHC's draft regulations, those recordkeeping requirements would increase from two to four years. And, as relevant here, those records would include "machine-learning data."
Machine-learning data includes "all data used in the process of developing and/or applying machine-learning algorithms that are used as part of an automated-decision system." That definition expressly includes datasets used to train an algorithm. It also includes data provided by individual applicants or employees. And it includes the data produced from the application of an automated-decision system operation (i.e., the output from the algorithm).
Given the nature of algorithms and machine learning, that definition of machine-learning data could require an employer or vendor to preserve data provided to an algorithm not just four years looking backward, but to preserve all data (including training datasets) ever provided to an algorithm and extending for a period of four years after that algorithm's last use.
The regulations add that any person who engages in the advertisement, sale, provision, or use of a selection tool, including but not limited to an automated-decision system to an employer or other covered entity, must maintain records of "the assessment criteria used by the automated-decision system for each such employer or covered entity to whom the automated-decision system is provided."
Additionally, the draft regulations would add causes of action for aiding and abetting when a third party provides unlawful assistance, unlawful solicitation or encouragement, or unlawful advertising when that third party advertises, sells, provides, or uses an automated-decision system that limits, screens out, or otherwise unlawfully discriminates against applicants or employees based on protected characteristics.
Conclusion
The draft rulemaking is still in a public workshop phase, after which it will be subject to a 45-day public comment period, and it may undergo changes prior to its final implementation. Although the formal comment period has not yet opened, interested parties may submit comments now if desired.
Considering what we know about the potential for unintended bias in AI/ML, employers cannot simply assume that an automated-decision system produces objective or bias-free outcomes. Therefore, California employers are advised to:
See the article here:
California FEHC Proposes Sweeping Regulations Regarding Use of Artificial Intelligence and Machine Learning in Connection With Employment Decision...
- Infleqtion Unveils Contextual Machine Learning (CML) at GTC 2025, Powering AI Breakthroughs with NVIDIA CUDA-Q and Quantum-Inspired Algorithms - Yahoo... - March 22nd, 2025 [March 22nd, 2025]
- Karlie Kloss' coding nonprofit offering free AI and machine learning workshop this weekend - KSDK.com - March 22nd, 2025 [March 22nd, 2025]
- Machine learning reveals distinct neuroanatomical signatures of cardiovascular and metabolic diseases in cognitively unimpaired individuals -... - March 22nd, 2025 [March 22nd, 2025]
- Machine learning analysis of cardiovascular risk factors and their associations with hearing loss - Nature.com - March 22nd, 2025 [March 22nd, 2025]
- Weekly Recap: Dual-Cure Inks, AI And Machine Learning Top This Weeks Stories - Ink World Magazine - March 22nd, 2025 [March 22nd, 2025]
- Network-based predictive models for artificial intelligence: an interpretable application of machine learning techniques in the assessment of... - March 22nd, 2025 [March 22nd, 2025]
- Machine learning aids in detection of 'brain tsunamis' - University of Cincinnati - March 22nd, 2025 [March 22nd, 2025]
- AI & Machine Learning in Database Management: Studying Trends and Applications with Nithin Gadicharla - Tech Times - March 22nd, 2025 [March 22nd, 2025]
- MicroRNA Biomarkers and Machine Learning for Hypertension Subtyping - Physician's Weekly - March 22nd, 2025 [March 22nd, 2025]
- Machine Learning Pioneer Ramin Hasani Joins Info-Tech's "Digital Disruption" Podcast to Explore the Future of AI and Liquid Neural Networks... - March 22nd, 2025 [March 22nd, 2025]
- Predicting HIV treatment nonadherence in adolescents with machine learning - News-Medical.Net - March 22nd, 2025 [March 22nd, 2025]
- AI And Machine Learning In Ink And Coatings Formulation - Ink World Magazine - March 22nd, 2025 [March 22nd, 2025]
- Counting whales by eavesdropping on their chatter, with help from machine learning - Mongabay.com - March 22nd, 2025 [March 22nd, 2025]
- Associate Professor - Artificial Intelligence and Machine Learning job with GALGOTIAS UNIVERSITY | 390348 - Times Higher Education - March 22nd, 2025 [March 22nd, 2025]
- Innovative Machine Learning Tool Reveals Secrets Of Marine Microbial Proteins - Evrim Aac - March 22nd, 2025 [March 22nd, 2025]
- Exploring the role of breastfeeding, antibiotics, and indoor environments in preschool children atopic dermatitis through machine learning and hygiene... - March 22nd, 2025 [March 22nd, 2025]
- Applying machine learning algorithms to explore the impact of combined noise and dust on hearing loss in occupationally exposed populations -... - March 22nd, 2025 [March 22nd, 2025]
- 'We want them to be the creators': Karlie Kloss' coding nonprofit offering free AI and machine learning workshop this weekend - KSDK.com - March 22nd, 2025 [March 22nd, 2025]
- New headset reads minds and uses AR, AI and machine learning to help people with locked-in-syndrome communicate with loved ones again - PC Gamer - March 22nd, 2025 [March 22nd, 2025]
- Enhancing cybersecurity through script development using machine and deep learning for advanced threat mitigation - Nature.com - March 11th, 2025 [March 11th, 2025]
- Machine learning-assisted wearable sensing systems for speech recognition and interaction - Nature.com - March 11th, 2025 [March 11th, 2025]
- Machine learning uncovers complexity of immunotherapy variables in bladder cancer - Hospital Healthcare - March 11th, 2025 [March 11th, 2025]
- Machine-learning algorithm analyzes gravitational waves from merging neutron stars in the blink of an eye - The University of Rhode Island - March 11th, 2025 [March 11th, 2025]
- Precision soil sampling strategy for the delineation of management zones in olive cultivation using unsupervised machine learning methods - Nature.com - March 11th, 2025 [March 11th, 2025]
- AI in Esports: How Machine Learning is Transforming Anti-Cheat Systems in Esports - Jumpstart Media - March 11th, 2025 [March 11th, 2025]
- Whats that microplastic? Advances in machine learning are making identifying plastics in the environment more reliable - The Conversation Indonesia - March 11th, 2025 [March 11th, 2025]
- Application of machine learning techniques in GlaucomAI system for glaucoma diagnosis and collaborative research support - Nature.com - March 11th, 2025 [March 11th, 2025]
- Elucidating the role of KCTD10 in coronary atherosclerosis: Harnessing bioinformatics and machine learning to advance understanding - Nature.com - March 11th, 2025 [March 11th, 2025]
- Hugging Face Tutorial: Unleashing the Power of AI and Machine Learning - - March 11th, 2025 [March 11th, 2025]
- Utilizing Machine Learning to Predict Host Stars and the Key Elemental Abundances of Small Planets - Astrobiology News - March 11th, 2025 [March 11th, 2025]
- AI to the rescue: Study shows machine learning predicts long term recovery for anxiety with 72% accuracy - Hindustan Times - March 11th, 2025 [March 11th, 2025]
- New in 2025.3: Reducing false positives with Machine Learning - Emsisoft - March 5th, 2025 [March 5th, 2025]
- Abnormal FX Returns And Liquidity-Based Machine Learning Approaches - Seeking Alpha - March 5th, 2025 [March 5th, 2025]
- Sentiment analysis of emoji fused reviews using machine learning and Bert - Nature.com - March 5th, 2025 [March 5th, 2025]
- Detection of obstetric anal sphincter injuries using machine learning-assisted impedance spectroscopy: a prospective, comparative, multicentre... - March 5th, 2025 [March 5th, 2025]
- JFrog and Hugging Face team to improve machine learning security and transparency for developers - SDxCentral - March 5th, 2025 [March 5th, 2025]
- Opportunistic access control scheme for enhancing IoT-enabled healthcare security using blockchain and machine learning - Nature.com - March 5th, 2025 [March 5th, 2025]
- AI and Machine Learning Operationalization Software Market Hits New High | Major Giants Google, IBM, Microsoft - openPR - March 5th, 2025 [March 5th, 2025]
- FICO secures new patents in AI and machine learning technologies - Investing.com - March 5th, 2025 [March 5th, 2025]
- Study on landslide hazard risk in Wenzhou based on slope units and machine learning approaches - Nature.com - March 5th, 2025 [March 5th, 2025]
- NVIDIA Is Finding Great Success With Vulkan Machine Learning - Competitive With CUDA - Phoronix - March 3rd, 2025 [March 3rd, 2025]
- MRI radiomics based on machine learning in high-grade gliomas as a promising tool for prediction of CD44 expression and overall survival - Nature.com - March 3rd, 2025 [March 3rd, 2025]
- AI and Machine Learning - Identifying meaningful use cases to fulfil the promise of AI in cities - SmartCitiesWorld - March 3rd, 2025 [March 3rd, 2025]
- Prediction of contrast-associated acute kidney injury with machine-learning in patients undergoing contrast-enhanced computed tomography in emergency... - March 3rd, 2025 [March 3rd, 2025]
- Predicting Ag Harvest using ArcGIS and Machine Learning - Esri - March 1st, 2025 [March 1st, 2025]
- Seeing Through The Hype: The Difference Between AI And Machine Learning In Marketing - AdExchanger - March 1st, 2025 [March 1st, 2025]
- Machine Learning Meets War Termination: Using AI to Explore Peace Scenarios in Ukraine - Center for Strategic & International Studies - March 1st, 2025 [March 1st, 2025]
- Statistical and machine learning analysis of diesel engines fueled with Moringa oleifera biodiesel doped with 1-hexanol and Zr2O3 nanoparticles |... - March 1st, 2025 [March 1st, 2025]
- Spatial analysis of air pollutant exposure and its association with metabolic diseases using machine learning - BMC Public Health - March 1st, 2025 [March 1st, 2025]
- The Evolution of AI in Software Testing: From Machine Learning to Agentic AI - CSRwire.com - March 1st, 2025 [March 1st, 2025]
- Wonder Dynamics Helps Boxel Studio Embrace Machine Learning and AI - Animation World Network - March 1st, 2025 [March 1st, 2025]
- Predicting responsiveness to fixed-dose methylene blue in adult patients with septic shock using interpretable machine learning: a retrospective study... - March 1st, 2025 [March 1st, 2025]
- Workplace Predictions: AI, Machine Learning To Transform Operations In 2025 - Facility Executive Magazine - March 1st, 2025 [March 1st, 2025]
- Development and validation of a machine learning approach for screening new leprosy cases based on the leprosy suspicion questionnaire - Nature.com - March 1st, 2025 [March 1st, 2025]
- Machine learning analysis of gene expression profiles of pyroptosis-related differentially expressed genes in ischemic stroke revealed potential... - March 1st, 2025 [March 1st, 2025]
- Utilization of tree-based machine learning models for predicting low birth weight cases - BMC Pregnancy and Childbirth - March 1st, 2025 [March 1st, 2025]
- Machine learning-based pattern recognition of Bender element signals for predicting sand particle-size - Nature.com - March 1st, 2025 [March 1st, 2025]
- Wearable Tech Uses Machine Learning to Predict Mood Swings - IoT World Today - March 1st, 2025 [March 1st, 2025]
- Machine learning can prevent thermal runaway in EV batteries - Automotive World - March 1st, 2025 [March 1st, 2025]
- Integration of multiple machine learning approaches develops a gene mutation-based classifier for accurate immunotherapy outcomes - Nature.com - March 1st, 2025 [March 1st, 2025]
- Data Analytics Market Size to Surpass USD 483.41 Billion by 2032 Owing to Rising Adoption of AI & Machine Learning Technologies - Yahoo Finance - March 1st, 2025 [March 1st, 2025]
- Predictive AI Only Works If Stakeholders Tune This Dial - The Machine Learning Times - March 1st, 2025 [March 1st, 2025]
- Relationship between atherogenic index of plasma and length of stay in critically ill patients with atherosclerotic cardiovascular disease: a... - March 1st, 2025 [March 1st, 2025]
- A global survey from SAS shows that artificial intelligence and machine learning are producing major benefits in combating money laundering and other... - March 1st, 2025 [March 1st, 2025]
- Putting the AI in air cargo: How machine learning is reshaping demand forecasting - Air Cargo Week - March 1st, 2025 [March 1st, 2025]
- Meta speeds up its hiring process for machine-learning engineers as it cuts thousands of 'low performers' - Business Insider - February 11th, 2025 [February 11th, 2025]
- AI vs. Machine Learning: The Key Differences and Why They Matter - Lifewire - February 11th, 2025 [February 11th, 2025]
- Unravelling single-cell DNA replication timing dynamics using machine learning reveals heterogeneity in cancer progression - Nature.com - February 11th, 2025 [February 11th, 2025]
- Climate change and machine learning the good, bad, and unknown - MIT Sloan News - February 11th, 2025 [February 11th, 2025]
- Theory, Analysis, and Best Practices for Sigmoid Self-Attention - Apple Machine Learning Research - February 11th, 2025 [February 11th, 2025]
- Yielding insights: Machine learning driven imputations to fill in agricultural data gaps in surveys - World Bank - February 11th, 2025 [February 11th, 2025]
- SKUtrak Promote tool taps machine learning powered analysis to shake up way brands run promotions - Retail Technology Innovation Hub - February 11th, 2025 [February 11th, 2025]
- Machine learning approaches for resilient modulus modeling of cement-stabilized magnetite and hematite iron ore tailings - Nature.com - February 11th, 2025 [February 11th, 2025]
- The Alignment Problem: Machine Learning and Human Values - Harvard Gazette - February 11th, 2025 [February 11th, 2025]
- Narrowing the gap between machine learning scoring functions and free energy perturbation using augmented data - Nature.com - February 11th, 2025 [February 11th, 2025]
- Analyzing the influence of manufactured sand and fly ash on concrete strength through experimental and machine learning methods - Nature.com - February 11th, 2025 [February 11th, 2025]
- Machine learning prediction of glaucoma by heavy metal exposure: results from the National Health and Nutrition Examination Survey 2005 to 2008 -... - February 11th, 2025 [February 11th, 2025]
- Correlation of rivaroxaban solubility in mixed solvents for optimization of solubility using machine learning analysis and validation - Nature.com - February 11th, 2025 [February 11th, 2025]
- Characterisation of cardiovascular disease (CVD) incidence and machine learning risk prediction in middle-aged and elderly populations: data from the... - February 11th, 2025 [February 11th, 2025]
- Unlock the Secrets of AI: How Mohit Pandey Makes Machine Learning Fun! - Mi Valle - February 11th, 2025 [February 11th, 2025]