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Waymo is another large player in the autonomous vehicle industry who made headlines last year with their own self-driving car. Technically under Google’s parent company, Alphabet, Waymo sent an email to their ride-hailing app users. This email informed customers that their next Waymo trip might be completely autonomous, without a human driver behind the wheel.
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One of the biggest impacts in the world of (NLP) was the release of GPT2 1.5B in November of 2019. A text-generating neural network from Open AI, GPT2 made headlines around the world due to its amazing ability to generate natural-sounding text. Some writers have even been able to , garnering the attention of numerous machine learning influencers and well-known scientists. Open AI had released previous versions of the neural network in the past, but GPT2 1.5B is the strongest iteration yet. In this article Open AI explains their 5 major findings:4.
Deepfakes were one of the biggest machine learning topics of 2019. The unprecedented advancements in deepfakes has led to and public fear of the technology. Furthermore, to understand and prepare for all the threats posed by the technology, the US Intelligence Committee held an open hearing on deepfakes and AI in June of 2019.
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Synthetic voices and audio are emerging industries that made leaps and bounds last year. Replica Studios is a synthetic voice company that generated a buzz in 2019, attracting the attention of data scientists, celebrities, and game development studios interested in using their software. Part of this virality was due to an impressive proof-of-concept video showcasing the synthetic voices of Sundar Pichai (Google CEO), Jeff Bezos (Amazon CEO), Arnold Schwarzenegger, Kevin Hart, Morgan Freeman, David Attenborough, Snoop Dogg, Ellen Degeneres, and even Geralt of Rivia (The Witcher).Impressively, Replica Studios is able to make a synthetic copy of any voice using just a few minutes of speech recordings. In , Replica CEO Shreyas Nivas said the technology was at a point where “Synthetic voices are indistinguishable from real voices and can rival human performances.”6.
Access to training data is one of the blockers slowing the pace of AI progress today. With deep learning especially, many models require not thousands, but millions of data instances for training. As a result, many data scientists and students turn to dataset aggregators like Kaggle and rely on open data provided by the community. To help improve access to open data, Google released a search engine solely for publishing and downloading datasets.