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Access All Charts and Data

Transparently sourced data in visual form, perfect for legitimizing your strategic ideas and thought leadership via internal and external presentations.

Access All Charts and Data

Transparently sourced data in visual form, perfect for legitimizing your strategic ideas and thought leadership via internal and external presentations.

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June 23, 2020

How Do Companies Worldwide View Data Diversity, Bias Reduction and Global Scale for Their AI? (% of respondents, May 2020)

Methodology

Data is from the June 2020 Appen report titled "The State of AI and Machine Learning." 374 respondents at companies worldwide were surveyed online during April-May 2020. The base included a random sample from a Research.net panel provider (n=200) and respondents recruited from Appen's prospect, customer and partner databases (n=174). The Research.net sample consisted of directors/VPs and above of product management, engineering, IT, data or data science at companies with 500+ employees. For the overall base, 30% of responses were from organizations with <1,000 employees and 70% from those with 1,000+ employees. Results have a margin of error of ~5 percentage points. Appen is a provider of data testing tools for AI applications.