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llms 12

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.

RegexMy

general

AI regex generator and tester

Free 38 · 63,447 votes

Picture To Text Converter

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Extract text from images, PDFs, and handwritten notes

Free 38 · 59,502 votes

Omnipilot

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Automate workflows across macOS apps

Free 38 · 56,412 votes

Xpeacho

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Convert text to human-sounding voiceovers for videos

Free 37 · 43,934 votes

Txt Muse

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Writing tools for brainstorming, drafting, and copy refinement

Free 37 · 37,149 votes

Lunchbreak AI

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Humanize AI text to pass detection

Free 36 · 19,458 votes

Story Diffusion Gen

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Generate consistent images and videos from text

Free 32 · 54,795 votes

CAMBIADOR DE PALABRAS

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Rewrite text in Spanish and remove plagiarism

Free 31 · 47,828 votes

Solace

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Document summarization and Q&A

Free 31 · 42,017 votes

Data Science in Libraries

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Data science programs in libraries

Free 30 · 20,241 votes

Soundify

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Generate sound effects for videos and memes with AI

Free 30 · 17,525 votes

Picture Translate

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Free online tool that translates text from images to English or other languages

Free 29 · 11,172 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.