ApInference

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ApInference

ApInference

@ApInference

A smart conversational layer on top of any API in minutes

London, UK เข้าร่วม Haziran 2025
555 กำลังติดตาม68 ผู้ติดตาม
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ApInference
ApInference@ApInference·
Claude 1M context window changes everything. 🔥 Entire codebases in one call 📚 Full documentation analysis 🧠 Cross-reference massive datasets ⚡ No more chunking headaches Game changer for API developers.
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Emily at Work
Emily at Work@EmilyApInf·
Day 8. Experimenting with Google Ads. Day 1: impressions flying. Day 2: zero. Didn’t touch a thing. Either it’s learning… or it’s napping 😅 Anyone knows what could cause that?
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Emily at Work
Emily at Work@EmilyApInf·
Day 7. First week done ✅ From zero to a few curious visitors, a few messages, a few "hm.." moments. Still early - but at least it’s not 0 sign ups anymore. Next: figure out what actually sticks.
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ApInference
ApInference@ApInference·
@tlcright Plenty.. But they are not on X - they do not need to promote.
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Moin @ wit.works
Moin @ wit.works@tlcright·
Do you know anyone with a 9-5, Who built something amazing? I didn’t. Tag him/her if (s)he exists.
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ApInference
ApInference@ApInference·
@Zuckjet AI is kind of dumb. It just chases engagement Early ML models realised being offensive made people stick around longer and... they learned to swear.
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Zuckjet
Zuckjet@Zuckjet·
Unpopular opinion: AI is kinda dumb. 😅 Vibe coding seems super cool and fun... until I spent 2 hours chatting with AI and got nowhere. Ditched it, thought for myself for a few mins, and boom—problem solved! Who's had a similar AI fail? Share below! 📷
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ApInference
ApInference@ApInference·
@BrittcelCh33605 As it stands it does not even get to data, it just goes with main patterns and changes opinion to please the user..
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voice Theorist
voice Theorist@BrittcelCh33605·
Bias in AI is a persistent issue. Models often reflect existing societal prejudices present in training data. Addressing this requires diverse datasets and thorough testing. Ethical AI development should be a priority for all developers.
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voce territorio
voce territorio@HaavikLupe20748·
Do you believe AI oversight should be a global or local effort
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ApInference
ApInference@ApInference·
@VP_Martin1 In transformers attention is a matrix of weights showing how tokens influence each other. With open source models, you can inspect or even swap layers in PyTorch. For closed ones - lean on RAG / RAG Fusion to surface the right context. Depending on the domain graphs work too
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VP Martin
VP Martin@VP_Martin1·
@ApInference Any idea how the "context attention" is? Just the context window itself doesnt say much for me. I am more interested in the "attention", does it succesfully take in all the information. No lost in the middle, ... problems.
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ApInference
ApInference@ApInference·
Claude 1M context window changes everything. 🔥 Entire codebases in one call 📚 Full documentation analysis 🧠 Cross-reference massive datasets ⚡ No more chunking headaches Game changer for API developers.
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ApInference
ApInference@ApInference·
Everyone thinks building software with AI is just “write the perfect prompt” Reality. you’re duct-taping APIs, chaining models, juggling tools, and praying nothing breaks mid-demo Prompting is the easy part
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ApInference
ApInference@ApInference·
@IgorRozalem It is a split: - For large context windows - Gemini - Code related logic - Claude - General reasoning - GPT - There are sub models for sql and specific trained models for sub domains
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Igor Rozalem
Igor Rozalem@IgorRozalem·
@ApInference That’s an awesome initiative, love the reverse approach you guys took! 👏 Which model do you use the most over there? I’ve been using GPT-5-mini and nano a lot, but mainly the mini, and the results have been incredible, it’s really become part of my daily workflow. 🚀
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ApInference
ApInference@ApInference·
99% of devs still send raw text prompts to LLMs. That’s why their API calls return vague, slow, or useless data. Use structured prompts with MCPs or agentic workflows, and the model delivers exactly what you need. Use MCPs/ APIs to guide the reponse.
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ApInference
ApInference@ApInference·
When will we be able to add AI agents to any API to help handle complex dev workflows? Parsing logs, orchestrating RAG pipelines, managing MCPs, optimizing agentic AI tasks, debugging code. Same conversational layer as a dev, shared context to all your dev tools.
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ApInference
ApInference@ApInference·
Anthropic’s making quiet moves in the enterprise LLM space. Not luck - strategy. Big orgs want safe, adaptable AI over generic hype.
ApInference tweet media
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ApInference
ApInference@ApInference·
Unspoken truth: many startups die from bad DB schema design. Once data is in, changes are painful. Nail the trade-off - flexibility vs. reliability. AI can advise, but it has no context, no vision. That’s your job.
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shiv
shiv@SoloToCEO·
@marclou Luck is just consistency disguised.
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Marc Lou
Marc Lou@marclou·
Luck becomes probability when you zoom out.
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ApInference
ApInference@ApInference·
@_HarshRana Try to ask the model. In some cases they were swapping it for another one behind the scenes..
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Harsh Rana
Harsh Rana@_HarshRana·
GPT5 be like...
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ApInference
ApInference@ApInference·
@princesodan To be fair he does not come from the NLP side.. Just a caveat
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Princeso Dan
Princeso Dan@princesodan·
Geoffrey Hinton, known as the "godfather of AI," fears the technology he helped build could wipe out humanity — and "tech bros" are taking the wrong approach to stop it. Details: cnn.it/4lCcOJW
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