Olena Linnyk

AI for decision-making in Tech Recruiting

Amazon's recruiting AI was biased against women. Learn how to build systems that measure and correct for bias automatically.

AI for decision-making in Tech Recruiting
#1about 3 minutes

How AI learns language through statistical patterns

AI learns language by analyzing sequential and correlational patterns in vast amounts of text, using mechanisms like attention to understand context.

#2about 1 minute

Understanding the pros and cons of statistical AI learning

While AI can achieve superhuman performance by processing huge datasets, its effectiveness depends entirely on having large volumes of high-quality, unbiased training data.

#3about 4 minutes

How humans learn through idealization and generalization

Unlike AI, humans learn by creating idealized mental models from very few examples, which enables rapid generalization but also introduces cognitive biases.

#4about 2 minutes

Architectural differences between AI and human brains

The contrast in learning styles stems from different architectures, with AI using feedforward networks while human brains feature interconnected closed loops that enable memory and ideas.

#5about 3 minutes

Measuring and correcting gender bias in job advertisements

AI tools can analyze job descriptions for gender-coded language and help rewrite them to be more neutral or even counter-biased, increasing applicant diversity.

#6about 3 minutes

Ensuring transparency and fairness in AI recruiting systems

Using technologies like Retrieval-Augmented Generation (RAG) constrains AI to transparent, approved data sources, ensuring recommendations are explainable and based on skills, not demographics.

#7about 1 minute

Combining human and AI strengths for better decisions

Optimal decision-making involves using AI for large-scale data processing while relying on human judgment for situations with scarce data or transformative industry changes.

#8about 4 minutes

Q&A on AI recruiting practices and legal challenges

The discussion covers practical questions on anonymizing CVs for fairness, the legal complexities of ranking candidates, and the impact of applicants using AI to write their own CVs.

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