Jun
12.1K posts


It is hard to communicate how much programming has changed due to AI in the last 2 months: not gradually and over time in the "progress as usual" way, but specifically this last December. There are a number of asterisks but imo coding agents basically didn’t work before December and basically work since - the models have significantly higher quality, long-term coherence and tenacity and they can power through large and long tasks, well past enough that it is extremely disruptive to the default programming workflow. Just to give an example, over the weekend I was building a local video analysis dashboard for the cameras of my home so I wrote: “Here is the local IP and username/password of my DGX Spark. Log in, set up ssh keys, set up vLLM, download and bench Qwen3-VL, set up a server endpoint to inference videos, a basic web ui dashboard, test everything, set it up with systemd, record memory notes for yourself and write up a markdown report for me”. The agent went off for ~30 minutes, ran into multiple issues, researched solutions online, resolved them one by one, wrote the code, tested it, debugged it, set up the services, and came back with the report and it was just done. I didn’t touch anything. All of this could easily have been a weekend project just 3 months ago but today it’s something you kick off and forget about for 30 minutes. As a result, programming is becoming unrecognizable. You’re not typing computer code into an editor like the way things were since computers were invented, that era is over. You're spinning up AI agents, giving them tasks *in English* and managing and reviewing their work in parallel. The biggest prize is in figuring out how you can keep ascending the layers of abstraction to set up long-running orchestrator Claws with all of the right tools, memory and instructions that productively manage multiple parallel Code instances for you. The leverage achievable via top tier "agentic engineering" feels very high right now. It’s not perfect, it needs high-level direction, judgement, taste, oversight, iteration and hints and ideas. It works a lot better in some scenarios than others (e.g. especially for tasks that are well-specified and where you can verify/test functionality). The key is to build intuition to decompose the task just right to hand off the parts that work and help out around the edges. But imo, this is nowhere near "business as usual" time in software.



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[ 일단 3:0 리드! ] @Everlyn_ai 응원과 함께 한국 야구도 응원합니다. 우리의 한국대표가 뭔가 보여줘야 할 때입니다. 만루에서 상황을 절대 놓치지 않고 계속 리드를 하고 있군요. 이 흐름 그대로! 오늘 그래도 이겼으면 좋겠네요. 아직 3회가 끝난 상태라 더 잘해줘야합니다! 현재 부진하는 $LYN 관련 글 씁니다. $LYN 가격 흐름은 여러 요소가 서로 복합적으로 작용하며 결정됩니다. 가장 큰 동력은 실제 AI 영상 생성 수요 증가, 그리고 수익을 기반으로 한 토큰 경제 구조라고 생각합니다. 여기에 더해 상장 거래소가 늘어나고, 다양한 생태계 파트너십이 확장되면서 토큰의 시장 노출과 활용도도 계속 커지고 있습니다. 커뮤니티의 긍정적인 반응과 매력적인 스테이킹 보상률도 단기적으로 가격 상승 기대감을 높이는 요소로 작용할 것으로 보입니다. 다만, 시장 전체의 불안정한 흐름과 향후 규제 가능성이 $LYN 가격에 부담을 줄 수 있는 주요 위험 요인으로 보입니다. $LYN 미래 가격은 성장 모멘텀과 외부 리스크 사이의 균형 속에서 결정될 것으로 보이는 상황입니다. 보상 줄 때 만큼은 좋은 흐름이 유지되기를! 한국 야구도 이기고 나도 보상 받자!!! gLYN







