Experiments
An 'Experiment' is the current name used in Open Chat Studio to refer to a 'chatbot'. The name may change in the future.
An Experiment links all the configuration and data for a chatbot including user sessions, data, actions etc.
Experiment Types
There are three different types of chatbots that you can build in Open Chat Studio:
- Base language model
- Assistant
- Pipeline
Base language model
This kind of bot is the most commonly used and simple to configure. It is backed the standard language model APIs such as the OpenAI chat completions API, Anthropic messages API or Google Gemini API.
Bots configured in this way have all the basic features (memory, source material etc.) and can also use some of the advanced features like Scheduling and Reminders.
Assistant
Assistant bots make use of OpenAI Assistants. The main advantage of using Assistants is that your bot gets access to the OpenAI tools:
Code Interpreter
This allows the bot to write and execute code to accomplish tasks.
For more information see the OpenAI docs.
File Search
This allows the bot to search and reference information provided in uploaded files. Unless your bot needs either of these capabilities, you should use a Base Language Model type bot.
For more information see the OpenAI docs.
Pipeline
This is a beta feature that has not yet been fully released. Pipelines allow you to create more complex bots by defining a ‘graph’ of nodes. Each message to the bot is processed by the graph to produce a final output.
This can be useful if you want to build a complex bot that performs different tasks depending on the user’s request. Generally, trying to make a single bot prompt do multiple functions doesn’t work well so it is better to create multiple prompts for each task and then combine them using a Pipeline. This is similar to the Multi-bot setup but allows more flexibility and complexity.