Difference between revisions of "Timeline of large language models"
From Timelines
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| 2021 || May || || Google anounces chatbot LaMDA, but doesn't release it publicly. | | 2021 || May || || Google anounces chatbot LaMDA, but doesn't release it publicly. | ||
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+ | | 2022 || April || || OpenAI reveals DALL-E 2. | ||
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| 2023 || March 1 || Study || A paper introduces a method to train language models like ChatGPT to understand concepts precisely using succinct representations based on category theory. The representations provide concept-wise invariance properties and a new learning algorithm that can accurately learn complex concepts or fix misconceptions. The approach also allows for the generation of a hierarchical decomposition of the representations, which can be manually verified by examining each part individually.<ref>{{cite journal |last1=Yuan |first1=Yang |title=Succinct Representations for Concepts |date=2023 |doi=10.48550/arXiv.2303.00446}}</ref> | | 2023 || March 1 || Study || A paper introduces a method to train language models like ChatGPT to understand concepts precisely using succinct representations based on category theory. The representations provide concept-wise invariance properties and a new learning algorithm that can accurately learn complex concepts or fix misconceptions. The approach also allows for the generation of a hierarchical decomposition of the representations, which can be manually verified by examining each part individually.<ref>{{cite journal |last1=Yuan |first1=Yang |title=Succinct Representations for Concepts |date=2023 |doi=10.48550/arXiv.2303.00446}}</ref> |
Revision as of 21:00, 6 March 2023
This is a timeline of FIXME.
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Sample questions
The following are some interesting questions that can be answered by reading this timeline:
Big picture
Time period | Development summary | More details |
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Full timeline
Year | Month and date | Event type | Details |
---|---|---|---|
2021 | May | Google anounces chatbot LaMDA, but doesn't release it publicly. | |
2022 | April | OpenAI reveals DALL-E 2. | |
2023 | March 1 | Study | A paper introduces a method to train language models like ChatGPT to understand concepts precisely using succinct representations based on category theory. The representations provide concept-wise invariance properties and a new learning algorithm that can accurately learn complex concepts or fix misconceptions. The approach also allows for the generation of a hierarchical decomposition of the representations, which can be manually verified by examining each part individually.[1] |
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What the timeline is still missing
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See also
External links
References
- ↑ Yuan, Yang (2023). "Succinct Representations for Concepts". doi:10.48550/arXiv.2303.00446.