Data annotation, or the process of adding labels to images, text, audio and other forms of sample data, is typically a key step in developing AI systems. The vast majority of systems learn to make ...
Two years ago, the entire world spent an estimated $800 million on data labeling: the painstaking process of annotating images and other information to train machine-learning and AI models. Now, the ...
Scale AI—which helps companies like ChatGPT improve the data that feeds their systems—is pictured on a laptop in New York on Aug. 16, 2023. Credit - Gabby Jones—Bloomberg/Getty Images On TikTok, ...
Ali Ansari’s decision to turn micro1’s AI recruitment assistant into a data labeling business spiked the company’s valuation ...
Different projects require different workflows. In data annotation platforms, flexible workflows help manage quality, speed, and complexity. Rigid workflows can lead to delays and errors, especially ...
16don MSN
'The era of data-labeling companies is over,' says the CEO of a $2.2 billion AI training firm
Simple annotation work is no longer enough for advanced AI, says Turing's CEO, who says models need complex, real-world data.
Hosted on MSN
Smarter AI needs smarter humans
As AI model intelligence peaks, its reliance on complex, human-curated data is only deepening. They started with microtasks such as transcribing audio files, marking tick boxes, translating language ...
Is it possible for an AI to be trained just on data generated by another AI? It might sound like a harebrained idea. But it’s one that’s been around for quite some time — and as new, real data is ...
Expertise from Forbes Councils members, operated under license. Opinions expressed are those of the author. Artificial intelligence (AI) has made significant strides in recent years, largely due to ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results