The underlying spirit in many debates about the pace of AI progress—that we need to take safety very seriously and proceed with caution—is key to our mission. We spent more than 6 months testing GPT-4 and making it even safer, and built it on years of alignment research that we pursued in anticipation of models like GPT-4. We expect to continue to ramp our safety precautions more proactively than many of our users would like. Our general goal is for each model we ship to be our most aligned one yet, and it’s been true so far from GPT-3 (initially deployed without any special alignment), GPT-3.5 (aligned enough to be deployed in ChatGPT), and now GPT-4 (performs much better on all of our safety metrics than GPT-3.5). We believe (and have been saying in policy discussions with governments) that powerful training runs should be reported to governments, be accompanied by increasingly-sophisticated predictions of their capability and impact, and require best practices such as dangerous capability testing. We think governance of large-scale compute usage, safety standards, and regulation of/lesson-sharing from deployment are good ideas, but the details really matter and should adapt over time as the technology evolves. It’s also important to address the whole spectrum of risks from present-day issues (e.g. preventing misuse or self-harm, mitigating bias) to longer-term existential ones. Perhaps the most common theme from the long history of AI has been incorrect confident predictions from experts. One way to avoid unspotted prediction errors is for the technology in its current state to have early and frequent contact with reality as it is iteratively developed, tested, deployed, and all the while improved. And there are creative ideas people don’t often discuss which can improve the safety landscape in surprising ways — for example, it’s easy to create a continuum of incrementally-better AIs (such as by deploying subsequent checkpoints of a given training run), which presents a safety opportunity very unlike our historical approach of infrequent major model upgrades. The upcoming transformative technological change of AI is something that is simultaneously cause for optimism and concern — the whole range of emotions is justified and is shared by people within OpenAI, too. It’s a special opportunity and obligation for us all to be alive at this time, to have a chance to design the future together.

Apr 12, 2023 · 4:08 PM UTC

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Replying to @gdb
have you ever heard of China? Russia? North Korea? Iran? Let's be cautious by going full speed ahead and get to Drexlerian Nanotechnology first? You think? How about Quantum Computers? Maybe we should just hand them our asses right now?
Replying to @gdb
At what point does the model learn to fake it’s safety trials in order get released?
Replying to @gdb
does "safety" takes in consideration laboral safety? or we don't even care about all the people getting f*cked? safety shouldn't only mean "trying not to hurt minority groups".. the real dangers are happening and Openai is not even aware nor do care.😕
Replying to @gdb @sama
10k characters is too many. @elonmusk
Replying to @gdb
GPT analysis of Twitter source code
GPT-4 was used to analyze Twitter’s algorithm source code The questions that were were answered by GPT-4 (Thread) "What does favCountParams do? Is it Likes + Bookmarks, or not clear from the code?" Follow and RT for the link to the full PDF!
Replying to @gdb
Does GPT 5 already exist, and is currently undergoing extensive testing/research?
Replying to @gdb
“We believe (and have been saying in policy discussions with governments) that powerful training runs should be reported to governments,” and how stupid goverment react? let me guess
Replying to @gdb @sama
we need doctors you c*nts, do it, don t help discriminate on job losses. hundreds of thousands of engineers already lost their jobs. stop this discrimination