NEW WEBSITE LAUNCH
Subscribe to our newsletter

Compare Models

  • Stanford University

    Alpaca

    FREE
    Stanford University released an instruction-following language model called Alpaca, which was fine-tuned from Meta’s LLaMA 7B model. The Alpaca model was trained on 52K instruction-following demonstrations generated in the style of self-instruct using text-davinci-003. Alpaca aims to help the academic community engage with the models by providing an open source model that rivals OpenAI’s GPT-3.5 (text-davinci-003) models. To this end, Alpaca has been kept small and cheap (fine-tuning Alpaca took 3 hours on 8x A100s which is less than $100 of cost) to reproduce. All training data and techniques have been released. The Alpaca license explicitly prohibits commercial use, and the model can only be used for research/personal projects, and users need to follow LLaMA’s license agreement.
  • Google

    BARD

    FREE
    Google’s Bard is now powered by PaLM 2, the new powerful LLM launched in May 2023. PaLM 2 is trained on a massive dataset of text and code. Bard can generate text, translate languages, write different kinds of creative content, and answer your questions in an informative way. Bard is programmed to use the web to find the most recent answers to questions. This means that when you ask Bard a question, it will not only use its knowledge of the world to answer your question, but it will also use the internet to find the most recent information on the topic. This allows Bard to provide you with the most accurate and up-to-date information possible (very cool).
    The exact billing structure for Bard is still under development (it is free to try at the moment) but you will likely be able to purchase tokens in bulk at a discounted price. According to Google, you may also be able to use tokens you have earned through other means, such as completing surveys or participating in beta testing programs.

  • Google

    BERT

    FREE
    BERT (Bidirectional Encoder Representations from Transformers) was introduced in 2018 by researchers at Google AI. BERT uses AI in the form of natural language processing (NLP), natural language understanding (NLU), and sentiment analysis to process every word in a search query in relation to all the other words in a sentence, giving it a robust understanding of context and semantics. This pre-training process is incredibly powerful and the learned weights can be fine-tuned with just one additional output layer to create models for a variety of NLP tasks such as question answering and sentiment analysis. You can download the smaller BERT models for FREE from the official BERT GitHub page.
  • ChatGLM

    ChatGLM-6B

    FREE
    Researchers at the Tsinghua University in China have worked on developing the ChatGLM series of models that have comparable performance to other models such as GPT-3 and BLOOM. ChatGLM-6B is an open bilingual language model (trained on Chinese and English). It is based on General Language Model (GLM) framework, with 6.2B parameters. With the quantization technique, users can deploy locally on consumer-grade graphics cards (only 6GB of GPU memory is required at the INT4 quantization level). The following models are available: ChatGLM-130B (an open source LLM), ChatGLM-100B (not open source but available through invite-only access), and ChatGLM-6 (a lightweight open source alternative). ChatGLM LLMs are available with a Apache-2.0 license that allows commercial use. We have included the link to the Hugging Face page where you can try the ChatGLM-6B Chatbot for free.
  • Deepmind

    Chinchilla AI

    OTHER

    Google’s DeepMind Chinchilla AI is still in the testing phase. Once released, Chinchilla AI will be useful for developing various artificial intelligence tools, such as chatbots, virtual assistants, and predictive models. It functions in a manner analogous to that of other large language models such as GPT-3 (175B parameters), Jurassic-1 (178B parameters), Gopher (280B parameters), and Megatron-Turing NLG (300B parameters) but because Chinchilla is smaller (70B parameters), inference and fine-tuning costs less, easing the use of these models for smaller companies or universities that may not have the budget or hardware to run larger models.

  • Anthropic

    Claude 2 – API version

    $0.03268
    Anthropic’s Claude 2 much larger context window (launching with 100k for now but will go up to 200K).
    will make it possible to feed it entire books or have it generate entire books at once.
    Claude 2 scored 76.5 percent on the multiple choice section of the Bar exam and in the 90th percentile on the reading and writing portion of the GRE. Its coding skills have improved from its predecessor scoring 71.2 percent on a Python coding test compared to Claude’s 56 percent.
    Claude 2 is also 63% cheaper on inputs and 46% cheaper on outputs than the GPT-4 8K context version (the default version of the OpenAI model).
  • OpenAI

    Claude 2 (Web Browser Version)

    FREE
    Anthropic’s Claude 2 is now available to the public if you’re in the US or UK. For the web browser version. just click “Talk to Claude,” and you’ll be prompted to provide an email address. After you confirm the address you enter, you’ll be ready to go.
    Claude 2 scored 76.5 percent on the multiple choice section of the Bar exam and in the 90th percentile on the reading and writing portion of the GRE. Its coding skills have improved from its predecessor scoring 71.2 percent on a Python coding test compared to Claude’s 56 percent. While the Google-backed Anthropic initially launched Claude in March, the chatbot was only available to businesses by request or as an app in Slack. With Claude 2, Anthropic is building upon the chatbot’s existing capabilities with a number of improvements.
  • Anthropic

    Claude Instant

    $0.00551
    Claude Instant is a faster and less expensive model than Claude-v1 that can handle casual dialog, text analysis and summarization, and document Q&A. Optimized for low latency, it handles high throughput use cases at lower costs that other Claude family of models. Anthropic is an AI startup founded by former OpenAI employees. Anthropic specializes in developing general AI systems and language models, with a company ethos of responsible AI usage.
    API access can be gained after application.

  • Anthropic

    Claude Instant v1

    $0.03268
    A powerful model, Claude-v1 can handle sophisticated dialog, creative content generation, and detailed instructions. Optimized for superior performance on tasks that require complex reasoning, Claude is Anthropic’s best-in-class offering.
    API access can be gained after application.
  • Google

    Cloud Platform

    OTHER
    Google Cloud Platform (GCP) is a cloud computing service that includes innovative AI and machine learning products, solutions, and services. Google AI Studio is a low-code development environment that makes it easy to build and deploy applications and has a variety of features, such as pre-trained models that can be used to get started quickly, a unified experience for managing the entire ML lifecycle, from data preparation to model deployment, and a variety of tools for monitoring the performance of ML models in production. Vertex AI can be used to train and deploy models, and GCP also offers a variety of data storage services, including Cloud Storage, which can be used to store large datasets.
  • Google

    code chat (codechat-bison)

    $0.002

    Based on Google’s PaLM 2 large language model, the company specifically trained Codey APIs to handle coding-related prompts, but it also trained the model to handle queries related to Google Cloud.

    The code chat API can power a chatbot that assists with code-related questions. For example, you can use it for help debugging code. The code chat API supports the code-chat-bison model.

    The Codey APIs support a wide range of programming languages, including C++, C#, Go, GoogleSQL, Java, JavaScript, Kotlin, PHP, Python, Ruby, Rust, Scala, Swift, and TypeScript. You can run with the API and in Generative AI Studio.

    Some common use cases for code chat include debugging, where it assists with issues related to code that doesn’t compile or contains a bug; documentation, where it aids in understanding unfamiliar code to ensure accurate representation; and learning, as it provides help in comprehending code that you might not be very familiar with.

    Note: We have converted characters to tokens for the prices (based on the approximation of 4 characters per 1 token).

  • Google

    code completion (code-gecko)

    $0.002

    Based on Google’s PaLM 2 large language model, the company specifically trained Codey APIs to handle coding-related prompts, but it also trained the model to handle queries related to Google Cloud. The code completion API provides code autocompletion suggestions as you write code. The API uses the context of the code you’re writing to make its suggestions.

    The code completion API supports the code-gecko model. Use the code-gecko model to help improve the speed and accuracy of writing code. The Codey APIs support a wide range of programming languages including C++, C#, Go, GoogleSQL, Java, JavaScript, Kotlin, PHP, Python, Ruby, Rust, Scala, Swift, and TypeScript. You can run with the API and in Generative AI Studio. Some common use cases for code completion include writing code faster, where the code-gecko model is employed to expedite the coding process by leveraging suggested code; and minimizing bugs in code, by utilizing code suggestions that are known to be syntactically correct to circumvent errors, thus reducing the risk of inadvertently introducing bugs that can arise during code creation.

    Note: We have converted characters to tokens for the prices (based on the approximation of 4 characters per 1 token).

1 2 3

Alpaca
This website uses cookies to improve your experience. By using this website you agree to our Privacy Policy Policy.