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delete notebook with problematic formatting

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examples/multitask_cell_classification.ipynb DELETED
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- {
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- "cells": [
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- {
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- "cell_type": "markdown",
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- "id": "4d12e619",
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- "metadata": {},
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- "source": [
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- "# Geneformer Multi-Task Cell Classifier Tutorial\n",
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- "\n",
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- "This tutorial demonstrates how to use the Geneformer Multi-Task Cell Classifier and optimizatize hyperparameter for fine-tuning"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "7ae1e435",
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- "metadata": {},
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- "source": [
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- "## 1. Installation and Imports\n",
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- "\n",
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- "First import the necessary modules."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 1,
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- "id": "8ae513f8",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "from geneformer import MTLClassifier\n"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "7f2a696f",
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- "metadata": {},
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- "source": [
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- "## 2. Set up Paths and Parameters\n",
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- "\n",
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- "Now, let's set up the necessary paths and parameters for our classifier. We'll also define our task columns, which are specific columns from our dataset that represent the classification tasks we want to train the model on."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 2,
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- "id": "b86539a2",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "# Define paths\n",
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- "pretrained_path = \"/path/to/pretrained/Geneformer/model\" \n",
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- "# input data is tokenized rank value encodings generated by Geneformer tokenizer (see tokenizing_scRNAseq_data.ipynb)\n",
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- "train_path = \"/path/to/train/data.dataset\"\n",
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- "val_path = \"/path/to/val/data.dataset\"\n",
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- "test_path = \"/path/to/test/data.dataset\"\n",
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- "results_dir = \"/path/to/results/directory\"\n",
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- "model_save_path = \"/path/to/model/save/path\"\n",
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- "tensorboard_log_dir = \"/path/to/tensorboard/log/dir\"\n",
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- "\n",
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- "# Define tasks and hyperparameters\n",
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- "# task_columns should be a list of column names from your dataset\n",
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- "# Each column represents a specific classification task (e.g. cell type, disease state)\n",
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- "task_columns = [\"cell_type\", \"disease_state\"] # Example task columns\n",
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- "\n",
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- "hyperparameters = {\n",
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- " \"learning_rate\": {\"type\": \"float\", \"low\": 1e-5, \"high\": 1e-3, \"log\": True},\n",
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- " \"warmup_ratio\": {\"type\": \"float\", \"low\": 0.005, \"high\": 0.01},\n",
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- " \"weight_decay\": {\"type\": \"float\", \"low\": 0.01, \"high\": 0.1},\n",
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- " \"dropout_rate\": {\"type\": \"float\", \"low\": 0.0, \"high\": 0.7},\n",
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- " \"lr_scheduler_type\": {\"type\": \"categorical\", \"choices\": [\"cosine\"]},\n",
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- " \"task_weights\": {\"type\": \"float\", \"low\": 0.1, \"high\": 2.0}\n",
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- "}"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "d6f6b315",
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- "metadata": {},
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- "source": [
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- "In the code above, we've defined `task_columns` as `[\"cell_type\", \"disease_state\"]`. This means our model will be trained to classify cells based on two tasks:\n",
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- "1. Identifying the cell type\n",
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- "2. Determining the disease state\n",
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- "3. Note: \"unique_cell_id\" is a required column in the dataset for logging and inference purposes\n",
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- "\n",
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- "These column names should correspond to actual columns in your dataset. Each column should contain the labels for that specific classification task.\n",
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- "\n",
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- "For example, your dataset might look something like this:\n",
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- "\n",
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- " | unique_cell_id | input_ids | ... | cell_type | disease_state |\n",
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- " |----------------|-----------|-----|-----------|---------------|\n",
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- " | cell1 | ... | ... | neuron | healthy |\n",
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- " | cell2 | ... | ... | astrocyte | diseased |\n",
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- " | ... | ... | ... | ... | ... |\n",
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- "The model will learn to predict classes within 'cell_type' and 'disease_state' "
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "60883719",
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- "metadata": {},
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- "source": [
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- "## 3. Initialize the MTLClassifier\n",
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- "\n",
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- "Now, let's create an instance of the MTLClassifier with our defined parameters and task columns."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 3,
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- "id": "26a8e9ad",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "mc = MTLClassifier(\n",
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- " task_columns=task_columns, # Our defined classification tasks\n",
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- " study_name=\"MTLClassifier_example\",\n",
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- " pretrained_path=pretrained_path,\n",
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- " train_path=train_path,\n",
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- " val_path=val_path,\n",
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- " test_path=test_path,\n",
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- " model_save_path=model_save_path,\n",
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- " results_dir=results_dir,\n",
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- " tensorboard_log_dir=tensorboard_log_dir,\n",
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- " hyperparameters=hyperparameters,\n",
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- " n_trials=15, # Number of trials for hyperparameter optimization (at least 50 suggested)\n",
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- " epochs=1, # Number of training epochs (1 suggested to prevent overfitting)\n",
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- " batch_size=8, # Adjust based on available GPU memory\n",
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- " seed=42\n",
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- ")"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "a818abf1",
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- "metadata": {},
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- "source": [
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- "## 4. Run Hyperparameter Optimization\n",
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- "\n",
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- "Now, let's run the Optuna study to optimize our hyperparameters for both classification tasks."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 4,
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- "id": "8d8f3f35",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "mc.run_optuna_study()"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "8b7a82bf",
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- "metadata": {},
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- "source": [
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- "## 5. Evaluate the Model on Test Data\n",
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- "\n",
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- "After optimization, we can evaluate our model on the test dataset. This will provide performance metrics for both classification tasks. CSV containing following keys will be generated in specified results directiory \"Cell ID, task(1...n) True,task(1.,.n) Pred,task(1...n) Probabilities\""
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 5,
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- "id": "0850e9f7",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "mc.load_and_evaluate_test_model()"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "35faa5a3",
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- "metadata": {},
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- "source": [
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- "## 6. (Optional) Manual Hyperparameter Tuning\n",
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- "\n",
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- "If you prefer to set hyperparameters manually, you can use the following approach:"
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 6,
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- "id": "26dd2a82",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "manual_hyperparameters = {\n",
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- " \"learning_rate\": 0.001,\n",
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- " \"warmup_ratio\": 0.01,\n",
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- " \"weight_decay\": 0.1,\n",
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- " \"dropout_rate\": 0.1,\n",
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- " \"lr_scheduler_type\": \"cosine\",\n",
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- " \"task_weights\": [1, 1], # Weights for each task (cell_type, disease_state)\n",
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- " \"max_layers_to_freeze\": 2\n",
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- "}\n",
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- "\n",
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- "mc_manual = MTLClassifier(\n",
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- " task_columns=task_columns,\n",
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- " study_name=\"mtl_manual\",\n",
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- " pretrained_path=pretrained_path,\n",
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- " train_path=train_path,\n",
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- " val_path=val_path,\n",
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- " test_path=test_path,\n",
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- " model_save_path=model_save_path,\n",
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- " results_dir=results_dir,\n",
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- " tensorboard_log_dir=tensorboard_log_dir,\n",
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- " manual_hyperparameters=manual_hyperparameters,\n",
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- " use_manual_hyperparameters=True,\n",
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- " epochs=10,\n",
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- " batch_size=32,\n",
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- " seed=42\n",
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- ")\n",
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- "\n",
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- "mc_manual.run_manual_tuning()"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "74c0a48b",
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- "metadata": {},
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- "source": [
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- "# Geneformer In Silico Perturber Tutorial (MTL Quantized)\n",
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- "This demonstrates how to use the Geneformer In Silico Perturber with a Multi-Task Learning (MTL) model in a quantized configuration to optimize runtime and memory."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 7,
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- "id": "f262d53c",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "from geneformer import InSilicoPerturber, EmbExtractor, InSilicoPerturberStats"
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 8,
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- "id": "3636f2ec",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "# Define paths\n",
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- "model_directory = \"/path/to/model/save/path\"\n",
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- "input_data_file = \"/path/to/input/data.dataset\"\n",
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- "output_directory = \"/path/to/output/directory\"\n",
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- "output_prefix = \"mtl_quantized_perturbation\"\n",
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- "\n",
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- "# Define parameters\n",
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- "perturb_type = \"delete\" # or \"overexpress\"\n",
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- "\n",
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- "# Define cell states to model\n",
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- "cell_states_to_model = {\n",
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- " \"state_key\": \"disease_state\", \n",
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- " \"start_state\": \"disease\", \n",
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- " \"goal_state\": \"control\"\n",
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- "}\n",
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- "\n",
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- "# Define filter data\n",
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- "filter_data_dict = {\n",
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- " \"cell_type\": [\"Fibroblast\"]\n",
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- "}"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "d15b7b51",
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- "metadata": {},
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- "source": [
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- "## 3. Extract State Embeddings\n",
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- "\n",
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- "Before we initialize the InSilicoPerturber, we need to extract the state embeddings using the EmbExtractor."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 9,
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- "id": "6b35bb30",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "# Initialize EmbExtractor\n",
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- "embex = EmbExtractor(\n",
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- " filter_data_dict=filter_data_dict,\n",
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- " max_ncells=1000, # Number of cells to extract embeddings for\n",
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- " emb_layer=0, # Use the second to last layer\n",
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- " emb_mode = \"cls\",\n",
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- " summary_stat=\"exact_mean\",\n",
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- " forward_batch_size=8, # Adjust based on available GPU memory\n",
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- " nproc=4\n",
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- ")\n",
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- "\n",
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- "# Extract state embeddings\n",
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- "state_embs_dict = embex.get_state_embs(\n",
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- " cell_states_to_model,\n",
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- " model_directory=model_directory,\n",
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- " input_data_file=input_data_file,\n",
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- " output_directory=output_directory,\n",
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- " output_prefix=output_prefix\n",
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- ")"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "6db01ced",
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- "metadata": {},
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- "source": [
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- "## 4. Initialize the InSilicoPerturber\n",
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- "\n",
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- "Now that we have our state embeddings, let's create an instance of the InSilicoPerturber with MTL and quantized configurations."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 10,
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- "id": "9bbecce2",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "# Initialize InSilicoPerturber\n",
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- "isp = InSilicoPerturber(\n",
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- " perturb_type=perturb_type,\n",
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- " genes_to_perturb=\"all\", # Perturb all genes\n",
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- " model_type=\"MTLCellClassifier-Quantized\", # Use quantized MTL model\n",
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- " emb_mode=\"cls\", # Use CLS token embedding\n",
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- " cell_states_to_model=cell_states_to_model,\n",
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- " state_embs_dict=state_embs_dict,\n",
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- " max_ncells=1000, # Number of cells to perturb (larger number increases power)\n",
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- " emb_layer=0, \n",
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- " forward_batch_size=8, # Adjust based on available GPU memory\n",
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- " nproc=1\n",
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- ")"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "e447f8b0",
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- "metadata": {},
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- "source": [
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- "## 5. Run In Silico Perturbation\n",
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- "\n",
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- "Run the in silico perturbation on the dataset."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 11,
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- "id": "4cc93922",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "# Run perturbation and output intermediate files\n",
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- "isp.perturb_data(\n",
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- " model_directory=model_directory,\n",
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- " input_data_file=input_data_file,\n",
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- " output_directory=output_directory,\n",
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- " output_prefix=output_prefix\n",
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- ")"
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- ]
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- },
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- {
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- "cell_type": "markdown",
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- "id": "0ec0b87e",
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- "metadata": {},
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- "source": [
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- "## 6. Process Results with InSilicoPerturberStats\n",
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- "\n",
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- "After running the perturbation, we'll use InSilicoPerturberStats to process the intermediate files and generate the final statistics."
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- ]
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- },
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- {
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- "cell_type": "code",
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- "execution_count": 12,
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- "id": "c8627d5f",
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- "metadata": {},
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- "outputs": [],
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- "source": [
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- "# Initialize InSilicoPerturberStats\n",
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- "ispstats = InSilicoPerturberStats(\n",
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- " mode=\"goal_state_shift\",\n",
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- " genes_perturbed=\"all\",\n",
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- " combos=0,\n",
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- " anchor_gene=None,\n",
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- " cell_states_to_model=cell_states_to_model\n",
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- ")\n",
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- "\n",
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- "# Process stats and output final .csv\n",
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- "ispstats.get_stats(\n",
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- " input_data_file,\n",
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- " None,\n",
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- " output_directory,\n",
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- " output_prefix\n",
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- ")"
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- ]
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- }
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- ],
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- "metadata": {
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- "kernelspec": {
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- "display_name": "Python 3 (ipykernel)",
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- "language": "python",
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- "name": "python3"
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- },
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- "language_info": {
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- "codemirror_mode": {
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- "name": "ipython",
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- "version": 3
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- },
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- "file_extension": ".py",
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- "mimetype": "text/x-python",
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- "name": "python",
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- "nbconvert_exporter": "python",
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- "pygments_lexer": "ipython3",
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- "version": "3.11.5"
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- }
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- },
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- "nbformat": 4,
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- "nbformat_minor": 5
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- }