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116 lines
3.1 KiB
Markdown
116 lines
3.1 KiB
Markdown
# Tutorial: Run BatDetect2 on a folder of audio files
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This tutorial walks through a first end-to-end inference run with the CLI.
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It is the default starting point for new users.
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Use it when you want to run an existing model on a folder of recordings and quickly check what BatDetect2 found.
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## Before you start
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- BatDetect2 installed in your environment.
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- A folder containing `.wav` files.
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- A model checkpoint path.
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A checkpoint is the saved model file that BatDetect2 uses to make predictions.
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If you are working from this repository checkout, you can use:
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```text
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src/batdetect2/models/checkpoints/Net2DFast_UK_same.pth.tar
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```
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## Outcome
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By the end of this tutorial you will have:
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- run `batdetect2 predict directory`,
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- saved predictions to disk,
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- checked that BatDetect2 wrote output files,
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- identified the next pages to use for tuning or customization.
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## 1. Choose your input and output paths
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Pick three paths:
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- the checkpoint to use,
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- the directory containing your audio files,
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- an output directory where BatDetect2 will save its results.
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Example layout:
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```text
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project/
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model.pth.tar
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audio/
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file_001.wav
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file_002.wav
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outputs/
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```
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## 2. Run prediction on the directory
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Use this command when you want BatDetect2 to scan a folder of recordings automatically.
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```bash
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batdetect2 predict directory \
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path/to/model.pth.tar \
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path/to/audio_dir \
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path/to/outputs
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```
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What this does:
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- loads the checkpoint,
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- finds audio files in `audio_dir`,
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- splits recordings into smaller pieces internally when needed,
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- saves result files to `outputs`.
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## 3. Verify that outputs were written
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After the command completes, inspect the output directory.
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For a first run,
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the important check is simple:
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- did BatDetect2 create result files,
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- are they in the output directory you expected,
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- did it process the recordings you meant to analyze.
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Different workflows can save results in different file formats.
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You do not need to learn those details for the first run.
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If you later need to choose a specific output format,
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go to {doc}`../how_to/save-predictions-in-different-output-formats`.
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## 4. Inspect predictions
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Start with a small subset of representative files.
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Check:
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- whether detections were written for the expected recordings,
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- whether output counts are plausible,
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- whether the model is obviously too sensitive or too conservative,
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- whether the predicted classes look broadly reasonable for your data.
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Do not treat the first run as validated ecological output.
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The first run is a workflow check.
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Validation comes next.
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## 5. Tune only after you have a baseline
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If the first run is too noisy or misses obvious calls, tune thresholds on a reviewed subset rather than changing settings blindly across the full dataset.
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Use {doc}`../how_to/tune-detection-threshold` for that process.
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## What to do next
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- If you need a different input mode, use {doc}`../how_to/choose-an-inference-input-mode`.
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- If you want to tune sensitivity, use {doc}`../how_to/tune-detection-threshold`.
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- If you already write code and want more control from Python, use {doc}`integrate-with-a-python-pipeline`.
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- If you need full command details, use {doc}`../reference/cli/predict`.
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