Dev LLM stack, production LLM stack, example projects, & things you'll discover

This page summarizes the projects mentioned and recommended in the original post on news.ycombinator.com

InfluxDB - Power Real-Time Data Analytics at Scale
Get real-time insights from all types of time series data with InfluxDB. Ingest, query, and analyze billions of data points in real-time with unbounded cardinality.
www.influxdata.com
featured
SaaSHub - Software Alternatives and Reviews
SaaSHub helps you find the best software and product alternatives
www.saashub.com
featured
  • openai-cookbook

    Examples and guides for using the OpenAI API

  • The dev LLM stack

    - OpenAI + Pinecone + GPT-Index or Langchain

    - Perhaps also dust.tt for playing around with prompts, kinda like a more advanced gpt playground --

    The production LLM stack

    - The dev stack

    - OpenAI + Pinecone + GPT-Index or Langchain

    - arXiv for finding new research to build on

    - Prompt platforms such as Humanloop

    - ML frameworks such as PyTorch, Keras, Tensorflow

    - MLOps tools such as MLflow, Kubeflow, Metaflow, Airflow, Seldon Core, TFServing

    Example OpenAI Projects

    -

    -

    -

    -

    -

    What OpenAI/MSFT should do

    - Fund "AI white mirror" -- a tv show that has beautiful visions a future where intelligence costs ~0

    Things you'll probably discover

    - Embeddings work ok, but not great, from a user perspective. As a developer they're great to work with. As a user, the results aren't ranked quite right. Embeddings use cases will be better with GPT-4 or GPT-4.5.

    - All of the obvious gpt apps will be built. We'll get hundreds of basic gpt wrapper apps (and some of them will be big businesses!), hundreds of basic embeddings search apps. If someone can think of the idea and make it without needing specific relationships, credibility, or experience, then it'll probably exist by Summer 2023.

    - The developer energy in this space is intense. Adults are going to hackathons to build ai apps. This is awesome.

    - Devs using gpt will soon be a large enough market that startups will exist and succeed just by selling to developers that are using gpt-3 in production. We already saw it a little bit, but we'll get many more startups here.

    - How could AI not be better than me at all computer based things within 10 years?

    - AI is kinda like a kid. When they're young, they're not that smart. Then all of a sudden, they've gotten enough training data, and their brain (compute!) has grown, and they're doing useful stuff. This is related to why people will say that building models can feel frustrating because it doesn't work well for ages and then all of a sudden it works (CEO of Oasis said this, CTO of OpenAI said this, and Instagram co-founder said this).

    Would love input and feedback on this. I have similar things that I'm going to submit, covering what builders and engineers should do, what vector database to use, why no one else made ChatGPT before OpenAI, things holding ai powered apps back, and some other stuff like that. If you want a preview and are happy to give feedback, then email is in my profile.

    The dev LLM stack

    - OpenAI + Pinecone + GPT-Index or Langchain

    - Perhaps also dust.tt for playing around with prompts, kinda like a more advanced gpt playground --

    The production LLM stack

    - The dev stack

    - OpenAI + Pinecone + GPT-Index or Langchain

    - arXiv for finding new research to build on

    - Prompt platforms such as Humanloop

    - ML frameworks such as PyTorch, Keras, Tensorflow

    - MLOps tools such as MLflow, Kubeflow, Metaflow, Airflow, Seldon Core, TFServing

    Example OpenAI Projects

    -

    -

    -

    -

    -

    What OpenAI/MSFT should do

    - Fund "AI white mirror" -- a tv show that has beautiful visions a future where intelligence costs ~0

    Things you'll probably discover

    - Embeddings work ok, but not great, from a user perspective. As a developer they're great to work with. As a user, the results aren't ranked quite right. Embeddings use cases will be better with GPT-4 or GPT-4.5.

    - All of the obvious gpt apps will be built. We'll get hundreds of basic gpt wrapper apps (and some of them will be big businesses!), hundreds of basic embeddings search apps. If someone can think of the idea and make it without needing specific relationships, credibility, or experience, then it'll probably exist by Summer 2023.

    - The developer energy in this space is intense. Adults are going to hackathons to build ai apps. This is awesome.

    - Devs using gpt will soon be a large enough market that startups will exist and succeed just by selling to developers that are using gpt-3 in production. We already saw it a little bit, but we'll get many more startups here.

    - How could AI not be better than me at all computer based things within 10 years?

    - AI is kinda like a kid. When they're young, they're not that smart. Then all of a sudden, they've gotten enough training data, and their brain (compute!) has grown, and they're doing useful stuff. This is related to why people will say that building models can feel frustrating because it doesn't work well for ages and then all of a sudden it works (CEO of Oasis said this, CTO of OpenAI said this, and Instagram co-founder said this).

    Would love input and feedback on this. I have similar things that I'm going to submit, covering what builders and engineers should do, what vector database to use, why no one else made ChatGPT before OpenAI, things holding ai powered apps back, and some other stuff like that. If you want a preview and are happy to give feedback, then email is in my profile.

  • InfluxDB

    Power Real-Time Data Analytics at Scale. Get real-time insights from all types of time series data with InfluxDB. Ingest, query, and analyze billions of data points in real-time with unbounded cardinality.

    InfluxDB logo
NOTE: The number of mentions on this list indicates mentions on common posts plus user suggested alternatives. Hence, a higher number means a more popular project.

Suggest a related project

Related posts

  • Show HN: OpenAI-powered semantic search for the All-In Podcast

    2 projects | news.ycombinator.com | 30 Dec 2022
  • Show HN: Semantic Search for Any Video

    5 projects | news.ycombinator.com | 4 Jan 2023
  • Show HN: AI generated audiobooks podcast episodes using GPT-4

    1 project | news.ycombinator.com | 6 Apr 2024
  • KeepYourMouthShut – A Python program to auto-generate Podcasts

    1 project | news.ycombinator.com | 26 Mar 2024
  • Oration (iOS) Turns PDFs into Audiobooks

    2 projects | news.ycombinator.com | 11 Feb 2024