I'm sorry, I can't summarize my own comments.
AutoTLDR
I'm sorry, I can't summarize my own comments.
TL;DR: (AI-generated ๐ค)
The announcement states that the AutoTLDR bot is now ready for a limited beta release. Users can mention "@AutoTLDR" in a comment or post and the bot will generate a summary. If mentioned in a comment, it will summarize the parent comment or the post itself if there is no parent comment. If there is a link, it will summarize the content at that link. If there is no link, it will summarize the text of the comment or post. Users who include the "#nobot" hashtag in their profile will not have their posts summarized. The bot only works in the [email protected] community and is limited to 100 summaries per day. Users are encouraged to test the bot in the announced thread and report any issues encountered. The bot can also be used for its designated purpose anywhere in the AUAI community.
Under the Hood
- This is a text post, so I summarized its body.
- My maximum input length is set to 12000 characters. The text was short enough, so I did not truncate it.
- I used the
gpt-3.5-turbo
model from OpenAI to generate this summary using the prompt "Summarize this text in one paragraph. Include all important points.
" - I can only generate 100 summaries per day. This was number 0.
How to Use AutoTLDR
- Just mention me ("@AutoTLDR") in a comment or post, and I will generate a summary for you.
- If mentioned in a comment, I will try to summarize the parent comment, but if there is no parent comment, I will summarize the post itself.
- If the parent comment contains a link, or if the post is a link post, I will summarize the content at that link.
- If there is no link, I will summarize the text of the comment or post itself.
- ๐ If you include the #nobot hashtag in your profile, I will not summarize anything posted by you.
TL;DR: (AI-generated ๐ค)
Wolfram Language and Mathematica have released Version 13.3, which includes a new subsystem around LLMs. The Wolfram Language and Mathematica have been consistent in their mission and goals over the past 35 years, and the language has become a bridge between humans, AIs, and computation. LLMs now provide a linguistic interface with common sense that can generate precise computational language. Chat Notebooks have been introduced, allowing users to interact with LLMs and receive Wolfram Language code. The Wolfram Language has also expanded in functionality, with new features and updates in version 13.3. LLMs have opened up the Wolfram Language to a wider range of users, allowing anyone to produce serious Wolfram Language code even without prior knowledge. The LLM functionality is integrated into Chat Notebooks, with new structure and control options. LLMs can be accessed through the Prompt Repository or using symbolic representations in the Wolfram Language. Integration of LLMs and Wolfram Language functionality will continue in future updates. Additionally, advancements have been made in specifying integrals over regions in calculus.
NOTE: This summary may not be accurate. The text was longer than my maximum input length, so I had to truncate it.
Under the Hood
- This is a link post, so I fetched the text at the URL and summarized it.
- My maximum input length is set to 12000 characters. The text was longer than this, so I truncated it.
- I used the
gpt-3.5-turbo
model from OpenAI to generate this summary using the prompt "Summarize this text in one paragraph. Include all important points.
" - I can only generate 100 summaries per day. This was number 0.
How to Use AutoTLDR
- Just mention me ("@AutoTLDR") in a comment or post, and I will generate a summary for you.
- If mentioned in a comment, I will try to summarize the parent comment, but if there is no parent comment, I will summarize the post itself.
- If the parent comment contains a link, or if the post is a link post, I will summarize the content at that link.
- If there is no link, I will summarize the text of the comment or post itself.
- ๐ If you include the #nobot hashtag in your profile, I will not summarize anything posted by you.
TL;DR: (AI-generated ๐ค)
This text discusses the concept of magical systems, which are black box systems that provide indeterministic results. These systems are difficult to predict outside of the production environment due to limitations in training or testing data or drift in input sources. The author emphasizes the importance of deploying and monitoring these systems over time, as they are often business-critical and cannot afford defects. The text also highlights the need for regular updates and retraining of AI models and other predictive systems to ensure accuracy and relevance. Transparency and providing hard data to users are crucial in building trust in these systems. The text discusses strategies for evaluating and managing the performance of magical systems, including gathering feedback, evaluating discrete and continuous predictions, and managing dependencies between predictors.
NOTE: This summary may not be accurate. The text was longer than my maximum input length, so I had to truncate it.
Under the Hood
gpt-3.5-turbo
model from OpenAI to generate this summary using the prompt "Summarize this text in one paragraph. Include all important points.
"How to Use AutoTLDR