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https://github.com/SikongJueluo/Mini-Nav.git
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- Evaluate multiple datasets in a single run (CIFAR10 + CIFAR100) - Report Recall@K for a list of K values from one underlying search - Save results to disk: summary.md, metrics.csv, per-dataset predictions.csv, confusion_matrix.csv - Richer evaluation output: query_labels, topk_ids, topk_labels for downstream analysis - Add --dataset and --top-k CLI overrides for benchmark command - Update config schema: dataset→datasets, top_k→top_k_list
431 lines
14 KiB
Python
431 lines
14 KiB
Python
"""Retrieval task for benchmark evaluation (Recall@K)."""
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from typing import TYPE_CHECKING, Any, cast
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import lancedb
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import numpy as np
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import pyarrow as pa
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import torch
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import torch.nn.functional as F
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from benchmarks.base import BaseBenchmarkTask
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from benchmarks.tasks.registry import RegisterTask
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from compressors.model_loader import get_dino_dim, load_dino_model, load_hash_compressor
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from configs import cfg_manager
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from rich.progress import track
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from torch import nn
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from torch.utils.data import DataLoader
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from transformers import BitImageProcessor
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from utils.feature_extractor import extract_batch_features, infer_vector_dim
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if TYPE_CHECKING:
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from compressors.hash_compressor import HashCompressor
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class RetrievalEncoder(nn.Module):
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"""Benchmark encoder for DINO and optional hash compression."""
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def __init__(
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self,
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dino: nn.Module,
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compressor: "HashCompressor | None" = None,
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) -> None:
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"""Initialize retrieval encoder.
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Args:
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dino: DINO backbone used for feature extraction.
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compressor: Optional hash compressor for recall evaluation.
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"""
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super().__init__()
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self.dino: nn.Module = dino
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self.compressor: HashCompressor | None = compressor
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def forward(self, inputs: Any) -> torch.Tensor:
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"""Encode processor inputs into benchmark vectors.
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Args:
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inputs: Batched processor outputs.
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Returns:
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Float tensor used for LanceDB insertion and retrieval.
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"""
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outputs = self.dino(**inputs)
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tokens = outputs.last_hidden_state
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if self.compressor is None:
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features = tokens.mean(dim=1)
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return F.normalize(features, dim=-1)
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bits = self.compressor.encode(tokens)
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return bits.to(dtype=torch.float32)
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def _build_eval_schema(vector_dim: int) -> pa.Schema:
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"""Build PyArrow schema for evaluation database table.
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Args:
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vector_dim: Feature vector dimension.
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Returns:
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PyArrow schema with id, label, and vector fields.
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"""
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return pa.schema(
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[
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pa.field("id", pa.int32()),
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pa.field("label", pa.int32()),
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pa.field("vector", pa.list_(pa.float32(), vector_dim)),
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]
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)
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def _establish_eval_database(
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processor: BitImageProcessor,
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model: nn.Module,
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table: lancedb.table.Table,
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dataloader: DataLoader[Any],
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label_column: str = "label",
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) -> None:
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"""Extract features from training images and store them in a database table.
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Args:
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processor: Image preprocessor.
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model: Feature extraction model.
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table: LanceDB table to store features.
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dataloader: DataLoader for the training dataset.
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label_column: Column name for labels in the batch dict.
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"""
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# Extract all features using the utility function
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all_features = extract_batch_features(processor, model, dataloader)
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config = cfg_manager.get()
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# Store features to database
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global_idx = 0
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for batch in track(dataloader, description="Storing eval database"):
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labels = batch[label_column]
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labels_list = labels.tolist()
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batch_size = len(labels_list)
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table.add(
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[
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{
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"id": global_idx + j,
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"label": labels_list[j],
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"vector": all_features[global_idx + j].detach().cpu().numpy(),
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}
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for j in range(batch_size)
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]
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)
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global_idx += batch_size
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def _evaluate_recall(
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processor: BitImageProcessor,
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model: nn.Module,
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table: lancedb.table.Table,
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dataloader: DataLoader[Any],
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top_k: int,
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label_column: str = "label",
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) -> dict[str, Any]:
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"""Evaluate Recall@K by searching the database for each test image.
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Args:
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processor: Image preprocessor.
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model: Feature extraction model.
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table: LanceDB table to search against.
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dataloader: DataLoader for the test dataset.
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top_k: Number of top results to retrieve.
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label_column: Column name for labels in the batch dict.
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Returns:
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A dict with keys:
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- correct: Number of correct predictions
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- total: Total number of test samples
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- query_labels: True labels for each query (length N)
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- topk_ids: IDs of top-K retrieved items (N x K)
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- topk_labels: Labels of top-K retrieved items (N x K)
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"""
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# Extract all features using the utility function
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all_features = extract_batch_features(processor, model, dataloader)
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config = cfg_manager.get()
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correct = 0
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total = 0
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feature_idx = 0
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query_labels: list[int] = []
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topk_ids: list[list[int]] = []
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topk_labels: list[list[int]] = []
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for batch in track(dataloader, description=f"Evaluating Recall@{top_k}"):
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labels = batch[label_column]
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labels_list = labels.tolist()
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for j in range(len(labels_list)):
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feature = all_features[feature_idx + j].tolist()
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true_label = labels_list[j]
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results = (
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table.search(feature)
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.select(["id", "label", "_distance"])
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.limit(top_k)
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.to_polars()
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)
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retrieved_ids = results["id"].to_list()
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retrieved_labels = results["label"].to_list()
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if true_label in retrieved_labels:
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correct += 1
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total += 1
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query_labels.append(true_label)
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topk_ids.append(retrieved_ids)
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topk_labels.append(retrieved_labels)
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feature_idx += len(labels_list)
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return {
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"correct": correct,
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"total": total,
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"query_labels": query_labels,
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"topk_ids": topk_ids,
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"topk_labels": topk_labels,
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}
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def _build_confusion_matrix(
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query_labels: list[int],
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topk_labels: list[list[int]],
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num_classes: int,
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) -> np.ndarray:
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"""Build row-normalized confusion matrix from Top-1 predictions.
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For each query, the true label is compared against the first
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retrieved label (Top-1). The resulting matrix is row-normalized
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so that each row sums to 1.0, representing "given true class X,
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what fraction of queries were predicted as each class Y".
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Args:
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query_labels: True labels for each query (length N).
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topk_labels: Top-K retrieved labels for each query (N x K).
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num_classes: Total number of label classes.
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Returns:
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Row-normalized confusion matrix as (num_classes, num_classes)
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float64 array. Rows with zero queries remain all-zero.
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"""
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cm = np.zeros((num_classes, num_classes), dtype=np.int64)
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for y_true, top_labels in zip(query_labels, topk_labels):
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y_pred = top_labels[0] # Top-1
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cm[int(y_true), int(y_pred)] += 1
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# Row normalize: each row sums to 1.0
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row_sums = cm.sum(axis=1, keepdims=True)
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cm_norm = np.divide(
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cm.astype(np.float64),
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row_sums,
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out=np.zeros_like(cm, dtype=np.float64),
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where=row_sums > 0,
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)
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return cm_norm
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@RegisterTask("retrieval")
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class RetrievalTask(BaseBenchmarkTask):
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"""Retrieval evaluation task (Recall@K)."""
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def __init__(
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self,
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top_k: int = 10,
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top_k_list: list[int] | None = None,
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dino_model: str = "facebook/dinov2-large",
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compression_dim: int = 512,
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compressor_path: str | None = None,
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):
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"""Initialize retrieval task.
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Args:
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top_k: Maximum K for retrieval search.
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Deprecated — prefer ``top_k_list``.
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top_k_list: List of K values to evaluate (all derived from
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a single max-K search). When not provided, ``[top_k]``
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is used as fallback.
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dino_model: DINO model name used for feature extraction.
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compression_dim: Output dimension of the hash compressor.
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compressor_path: Optional path to trained hash compressor weights.
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"""
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if top_k_list is not None:
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top_k_list = sorted(set(top_k_list))
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else:
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top_k_list = [top_k]
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super().__init__(top_k_list=top_k_list)
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self.top_k_list: list[int] = top_k_list
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self.max_k: int = max(self.top_k_list)
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self.dino_model = dino_model
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self.compression_dim = compression_dim
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self.compressor_path = compressor_path
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self._processor: BitImageProcessor | None = None
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self._model: nn.Module | None = None
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self._model_name = "hash_compressor" if compressor_path else "dinov2"
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def prepare_benchmark(
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self,
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model: Any,
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processor: Any,
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model_name: str = "model",
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) -> tuple[nn.Module, BitImageProcessor, str]:
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"""Resolve benchmark resources for this task.
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Args:
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model: Optional pre-built model from the caller.
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processor: Optional pre-built processor from the caller.
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model_name: Fallback table model name.
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Returns:
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Tuple of benchmark model, processor, and resolved model name.
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"""
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if model is not None and processor is not None:
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return (
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cast(nn.Module, model),
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cast(BitImageProcessor, processor),
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model_name,
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)
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self._ensure_resources_loaded()
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return (
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cast(nn.Module, self._model),
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cast(BitImageProcessor, self._processor),
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self._model_name,
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)
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def _ensure_resources_loaded(self) -> None:
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"""Lazy-load retrieval benchmark resources."""
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if self._processor is not None and self._model is not None:
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return
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processor, dino = load_dino_model(self.dino_model)
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compressor = None
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if self.compressor_path is not None:
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compressor = load_hash_compressor(
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input_dim=get_dino_dim(self.dino_model),
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hash_bits=self.compression_dim,
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compressor_path=self.compressor_path,
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)
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compressor.eval()
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self._processor = processor
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self._model = RetrievalEncoder(dino=dino, compressor=compressor)
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self._model.eval()
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def build_database(
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self,
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model: Any,
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processor: Any,
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train_dataset: Any,
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table: lancedb.table.Table,
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batch_size: int,
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label_column: str = "label",
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) -> None:
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"""Build the evaluation database from training data.
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Args:
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model: Feature extraction model.
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processor: Image preprocessor.
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train_dataset: Training dataset.
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table: LanceDB table to store features.
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batch_size: Batch size for DataLoader.
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label_column: Column name for labels in the batch dict.
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"""
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# Get a sample image to infer vector dimension
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sample = train_dataset[0]
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sample_image = sample["img"]
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vector_dim = infer_vector_dim(processor, model, sample_image)
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expected_schema = _build_eval_schema(vector_dim)
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# Check schema compatibility
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if table.schema != expected_schema:
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raise ValueError(
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f"Table schema mismatch. Expected: {expected_schema}, "
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f"Got: {table.schema}"
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)
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# Build database
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train_loader = DataLoader(
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train_dataset.with_format("torch"),
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batch_size=batch_size,
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shuffle=False,
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num_workers=4,
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)
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_establish_eval_database(processor, model, table, train_loader, label_column)
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def evaluate(
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self,
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model: Any,
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processor: Any,
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test_dataset: Any,
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table: lancedb.table.Table,
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batch_size: int,
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label_column: str = "label",
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) -> dict[str, Any]:
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"""Evaluate the model on the test dataset.
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Args:
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model: Feature extraction model.
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processor: Image preprocessor.
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test_dataset: Test dataset.
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table: LanceDB table to search against.
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batch_size: Batch size for DataLoader.
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label_column: Column name for labels in the batch dict.
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Returns:
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Dictionary containing evaluation results with keys:
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- recalls: Dict of ``{"recall@K": value}`` for each K
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- total: Total number of test samples
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- top_k_list: List of K values evaluated
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- num_classes: Number of label classes
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- confusion_matrix: Row-normalized confusion matrix (Top-1)
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- query_labels: True labels for each query sample
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- topk_labels: Top-K retrieved labels per query sample
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"""
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test_loader = DataLoader(
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test_dataset.with_format("torch"),
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batch_size=batch_size,
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shuffle=False,
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num_workers=4,
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)
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eval_data = _evaluate_recall(
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processor, model, table, test_loader, self.max_k, label_column
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)
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total = eval_data["total"]
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query_labels = eval_data["query_labels"]
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topk_labels = eval_data["topk_labels"]
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# Compute Recall@k for each k in top_k_list
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recalls: dict[str, float] = {}
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for k in self.top_k_list:
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hits = sum(
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1
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for true, preds in zip(query_labels, topk_labels)
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if true in preds[:k]
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)
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recalls[f"recall@{k}"] = hits / total if total > 0 else 0.0
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# Infer number of classes from the data
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all_labels = query_labels + [
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label for labels in topk_labels for label in labels
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]
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num_classes = max(all_labels) + 1 if all_labels else 1
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# Confusion matrix from Top-1 only
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cm = _build_confusion_matrix(query_labels, topk_labels, num_classes)
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return {
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"recalls": recalls,
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"total": total,
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"top_k_list": self.top_k_list,
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"num_classes": num_classes,
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"confusion_matrix": cm.tolist(),
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"query_labels": query_labels,
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"topk_labels": topk_labels,
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}
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