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llms 11

This category covers tools built around large language models: infrastructure for deploying, fine-tuning, evaluating, and monitoring LLMs in production. With 369 tools listed, it is one of the more technical categories on the site, aimed primarily at developers and ML engineers rather than end users.

Dream Page

general

Build a blog or website in minutes

Paid 38 · 57,496 votes

Audionotes

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Voice and audio to structured notes

Paid 38 · 56,461 votes

Cliptics

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Free AI image and audio tools without signup

Paid 37 · 41,650 votes

Context Clue

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Organize and search technical documentation across teams

Paid 37 · 36,108 votes

Humanize.im:Humanize AI Text Free Online

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Make AI-generated text read naturally

Paid 36 · 25,450 votes

Undetectable AI

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Text humanization for AI-generated content

Paid 36 · 30,396 votes

Rizzle

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Turn articles into professionally edited video

Paid 36 · 28,780 votes

CopyOwl.ai

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Write research papers and essays with citations

Paid 32 · 55,722 votes

Stable Video Diffusion Online

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Converts still images into short videos

Paid 32 · 54,989 votes

transcribe4u

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Fast audio and video transcription to text

Paid 31 · 33,069 votes

aisummary

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Summarize web links into bullets and key quotes

Paid 31 · 29,247 votes

LLM tooling has exploded alongside the models themselves, and the category now spans several distinct problem areas. Deployment and serving tools like PeriFlow and Dstack help teams run models efficiently at scale. Evaluation and observability tools like UpTrain and AIWatch track model quality, drift, and cost over time. Memory and retrieval tools like Cognee add persistent context or RAG capabilities to LLM applications. When choosing, the key questions are infrastructure fit (cloud, on-prem, or hybrid), model compatibility (OpenAI-only vs. open-weight models), and whether the tool addresses your actual bottleneck, whether that is latency, cost, accuracy, or developer velocity. Pricing structures vary: some tools charge per token processed, others per seat or per API call. Open-source options exist across most sub-categories, which is worth considering for teams with engineering capacity to self-host.