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Zdenek Kasner edited this page Nov 2, 2024
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See the following wiki pages that that will guide you through various use-cases of factgenie:
Topic | Description |
---|---|
π§ Setup | How to install factgenie. |
ποΈ Data Management | How to manage datasets and model outputs. |
π€ LLM Annotations | How to annotate outputs using LLMs. |
π₯ Crowdsourcing Annotations | How to annotate outputs using human crowdworkers. |
βοΈ Generating Outputs | How to generate outputs using LLMs. |
π Analyzing Annotations | How to obtain statistics on collected annotations. |
π» Command Line Interface | How to use factgenie command line interface. |
π± Contributing | How to contribute to factgenie. |
We also provide step-by-step walkthroughs showing how to employ factgenie on the the dataset from the Shared Task in Evaluating Semantic Accuracy:
Tutorial | Description |
---|---|
π #1: Importing a custom dataset | Loading the basketball statistics and model-generated basketball reports into the web interface. |
π¬ #2: Generating outputs | Using Llama 3.1 with Ollama for generating basketball reports. |
π #3: Customizing data visualization | Manually creating a custom dataset class for better data visualization. |
π€ #4: Annotating outputs with an LLM | Using GPT-4o for annotating errors in the basketball reports. |
π¨βπΌ #5: Annotating outputs with human annotators | Using human annotators for annotating errors in the basketball reports. |
- π§ Setup
- ποΈ Data Management
- π€ LLM Annotations
- π₯ Crowdsourcing Annotations
- βοΈ Generating Outputs
- π Analyzing Annotations
- π» Command Line Interface
- π± Contributing
- π Importing a custom dataset
- π¬ Generating outputs
- π Customizing data visualization
- π€ Annotating outputs with an LLM
- π¨βπΌ Annotating outputs with human annotators