# README — Loading `things_eeg_2` from `nonarjb/alignvis` This repo hosts WebDataset shard sets under `things_eeg_2/`: * `things_eeg_2-images-*.tar` — images * `things_eeg_2-image_embeddings-*.tar` — vector embeddings (`.npy/.npz`) * `things_eeg_2-preprocessed_eeg-*.tar` — EEG arrays (`.npy/.npz`) Inside each shard, the WebDataset `__key__` is the file’s **relative path under the top folder (without extension)**. To reconstruct the original relative path, use: ``` rel_path = "/" + __key__ + "." + ``` (e.g., `images/training_images/01133_raincoat/raincoat_01s.jpg`) > To use the **other dataset** (`things_meg`), just replace `dataset_dir="things_eeg_2"` with `dataset_dir="things_meg"` in the examples below. --- ## Install ```bash pip install webdataset huggingface_hub pillow torch tqdm # Optional: faster transfers for big files pip install -U hf_transfer && export HF_HUB_ENABLE_HF_TRANSFER=1 ``` --- ## Helper: list shard URLs from the Hub Create `utils_hf_wds.py`: ```python # utils_hf_wds.py from huggingface_hub import HfFileSystem, hf_hub_url def hf_tar_urls(repo_id: str, dataset_dir: str, top: str, revision: str = "main"): """ Return sorted 'resolve/' URLs for shards matching: /--*.tar Example: things_eeg_2/things_eeg_2-images-000000.tar """ fs = HfFileSystem() pattern = f"datasets/{repo_id}/{dataset_dir}/{dataset_dir}-{top}-*.tar" hf_paths = sorted(fs.glob(pattern)) # hf://datasets//... rel_paths = [p.split(f"datasets/{repo_id}/", 1)[1] for p in hf_paths] return [ hf_hub_url(repo_id, filename=p, repo_type="dataset", revision=revision) for p in rel_paths ] ``` --- ## A) Images (PIL) with original relative paths ```python import io from PIL import Image import torch, webdataset as wds from utils_hf_wds import hf_tar_urls REPO = "nonarjb/alignvis" def make_images_loader(dataset_dir="things_eeg_2", batch_size=16, num_workers=4): urls = hf_tar_urls(REPO, dataset_dir, top="images") if not urls: raise RuntimeError("No image shards found") def pick_image(s): for ext in ("jpg","jpeg","png"): if ext in s: s["img_bytes"] = s[ext] s["rel_path"] = f"images/{s['__key__']}.{ext}" return s return None ds = (wds.WebDataset(urls, shardshuffle=False, handler=wds.handlers.warn_and_continue) .map(pick_image).select(lambda s: s is not None) .map(lambda s: (s["rel_path"], Image.open(io.BytesIO(s["img_bytes"])).convert("RGB")))) return torch.utils.data.DataLoader( ds, batch_size=batch_size, num_workers=num_workers, collate_fn=lambda b: b ) loader = make_images_loader() rel_path, pil_img = next(iter(loader))[0] print(rel_path, pil_img.size) # e.g. images/training_images/.../raincoat_01s.jpg (W, H) ``` --- ## B) Image embeddings (`.npy/.npz`) → `torch.Tensor` ```python import io, numpy as np import torch, webdataset as wds from utils_hf_wds import hf_tar_urls REPO = "nonarjb/alignvis" # Heuristics for dict-like payloads CANDIDATE_KEYS = ("embedding", "emb", "vector", "feat", "features", "clip", "image", "text") def _first_numeric_from_npz(npz, prefer_key=None): if prefer_key and prefer_key in npz: return np.asarray(npz[prefer_key]) # try direct numeric arrays for k in npz.files: a = npz[k] if isinstance(a, np.ndarray) and np.issubdtype(a.dtype, np.number): return a # try dict-like entries with known keys for k in npz.files: a = npz[k] if isinstance(a, dict): for ck in CANDIDATE_KEYS: if ck in a: return np.asarray(a[ck]) return None def _load_numeric_vector(payload: bytes, ext: str, prefer_key: str | None = None): """Return 1D float32 vector or None if not numeric.""" bio = io.BytesIO(payload) try: arr = np.load(bio, allow_pickle=False) except ValueError as e: if "Object arrays" in str(e): bio.seek(0) obj = np.load(bio, allow_pickle=True) if isinstance(obj, dict): for ck in CANDIDATE_KEYS: if ck in obj: arr = obj[ck]; break else: return None elif isinstance(obj, (list, tuple)): arr = np.asarray(obj) else: return None else: raise arr = np.asarray(arr) if not np.issubdtype(arr.dtype, np.number): try: arr = arr.astype(np.float32) except Exception: return None return arr.reshape(-1).astype(np.float32) def make_embeddings_loader( dataset_dir="things_eeg_2", batch_size=64, num_workers=4, prefer_key: str | None = None, # e.g., "embedding" if you know the field name ): urls = hf_tar_urls(REPO, dataset_dir, top="image_embeddings") if not urls: raise RuntimeError("No embedding shards found") def pick_payload(s): for ext in ("npy", "npz"): if ext in s: s["__ext__"] = ext s["payload"] = s[ext] s["rel_path"] = f"image_embeddings/{s['__key__']}.{ext}" return s return None def decode_vec(s): vec = _load_numeric_vector(s["payload"], s["__ext__"], prefer_key=prefer_key) if vec is None: # skip non-numeric payloads return None return (s["rel_path"], torch.from_numpy(vec)) ds = ( wds.WebDataset(urls, shardshuffle=False, handler=wds.handlers.warn_and_continue) .map(pick_payload).select(lambda s: s is not None) .map(decode_vec).select(lambda x: x is not None) ) # Collate into a batch tensor; all vectors must have same dim def collate(batch): paths, vecs = zip(*batch) D = vecs[0].numel() vecs = [v.view(-1) for v in vecs if v.numel() == D] paths = [p for (p, v) in batch if v.numel() == D] return list(paths), torch.stack(vecs, dim=0) return torch.utils.data.DataLoader(ds, batch_size=batch_size, num_workers=num_workers, collate_fn=collate) # ---- try it (set num_workers=0 first if you want easier debugging) ---- if __name__ == "__main__": paths, X = next(iter(make_embeddings_loader(num_workers=0, prefer_key=None))) print(len(paths), X.shape) ``` --- ## C) EEG (`.npy/.npz`) — ragged-friendly (returns list of arrays) ```python import io, re import webdataset as wds from huggingface_hub import HfFileSystem, hf_hub_url import numpy as np REPO_ID = "nonarjb/alignvis" # your dataset repo on HF REVISION = "main" DATASET_DIR = "things_eeg_2" # the folder inside the repo def _hf_eeg_urls(repo_id=REPO_ID, dataset_dir=DATASET_DIR, revision=REVISION): """Collect EEG shard URLs for both possible top folders.""" fs = HfFileSystem() urls = [] for top in ("Preprocessed_data_250Hz", "preprocessed_eeg"): pattern = f"datasets/{repo_id}/{dataset_dir}/{dataset_dir}-{top}-*.tar" hf_paths = sorted(fs.glob(pattern)) rel = [p.split(f"datasets/{repo_id}/", 1)[1] for p in hf_paths] urls += [hf_hub_url(repo_id, filename=p, repo_type="dataset", revision=revision) for p in rel] return urls def _load_subject_eeg_from_hf(subject_id: int, split: str): """ Returns (subject_eeg_data, ch_names) for a given subject+split by streaming the per-subject .npy/.npz from HF shards. """ urls = _hf_eeg_urls() if not urls: raise RuntimeError("No EEG shards found in HF repo") filebase = "preprocessed_eeg_training" if split == "train" else "preprocessed_eeg_test" key_prefix = f"sub-{subject_id:02d}/" ds = wds.WebDataset(urls, shardshuffle=False) for s in ds: # find the per-subject file if ("npy" in s or "npz" in s) and s["__key__"].startswith(key_prefix) and s["__key__"].endswith(filebase): ext = "npz" if "npz" in s else "npy" payload = s[ext] bio = io.BytesIO(payload) # load with safe first, fallback to pickle (original code used allow_pickle=True) if ext == "npz": try: z = np.load(bio, allow_pickle=False) except Exception: bio.seek(0); z = np.load(bio, allow_pickle=True) # prefer exact fields as in your original code eeg_data = z["preprocessed_eeg_data"] ch_names = z["ch_names"] if "ch_names" in z else None else: # npy try: obj = np.load(bio, allow_pickle=False) except ValueError: bio.seek(0); obj = np.load(bio, allow_pickle=True) # obj could be dict-like or 0-d object holding a dict if isinstance(obj, dict): eeg_data = obj["preprocessed_eeg_data"] ch_names = obj.get("ch_names") elif isinstance(obj, np.ndarray) and obj.dtype == object and obj.shape == (): d = obj.item() eeg_data = d["preprocessed_eeg_data"] ch_names = d.get("ch_names") else: # if it’s already a numeric array (unlikely for your case) eeg_data = obj ch_names = None return np.asarray(eeg_data), ch_names raise FileNotFoundError(f"Subject file not found in HF shards: {key_prefix}{filebase}.(npy|npz)") subject_eeg_data, ch_names = _load_subject_eeg_from_hf(subject_id=1, split="train") print(subject_eeg_data.shape) print(ch_names) ``` > If some `.npy` were saved as **object-dtype**, resave as numeric arrays; otherwise you must load with `allow_pickle=True` (only if you trust the data). --- ## D) Download, **untar**, and use locally (byte-identical files) ```python # 1) Download the dataset subtree from huggingface_hub import snapshot_download local_root = snapshot_download( "nonarjb/alignvis", repo_type="dataset", allow_patterns=["things_eeg_2/**"] ) # 2) Untar to a restore directory (keys preserved under each top folder) import tarfile, glob, pathlib restore_root = pathlib.Path("./restore/things_eeg_2") for top in ("images", "image_embeddings", "preprocessed_eeg"): (restore_root / top).mkdir(parents=True, exist_ok=True) for t in glob.glob(f"{local_root}/things_eeg_2/things_eeg_2-{top}-*.tar"): with tarfile.open(t) as tf: tf.extractall(restore_root / top) print("Restored under:", restore_root) ``` Now the folder tree mirrors the original: ```python # Example local usage from PIL import Image import numpy as np img = Image.open("./restore/things_eeg_2/images/training_images/01133_raincoat/raincoat_01s.jpg") vec = np.load("./restore/things_eeg_2/image_embeddings/some/file.npy") eeg = np.load("./restore/things_eeg_2/preprocessed_eeg/s01/run3/segment_0001.npy", allow_pickle=False) ``` --- ### Notes * WebDataset can also read **local** shards by passing `file://` URLs instead of `https://`. * If your shards are named differently, tweak `hf_tar_urls(..., top="...")` and the `rel_path` prefixes (`images/`, `image_embeddings/`, `preprocessed_eeg/`). * To batch EEG tensors, implement padding in the `collate` function.