File size: 6,107 Bytes
1727504
 
 
 
a3b9716
1727504
 
a3b9716
1727504
 
 
 
8baf809
1727504
8baf809
1727504
30d14c8
7c1c6ea
1727504
8baf809
30d14c8
8baf809
 
7a608af
8baf809
 
 
099a8f7
 
 
 
8baf809
30d14c8
 
 
ab58e44
30d14c8
 
 
8baf809
30d14c8
 
8baf809
 
30d14c8
8baf809
7c1c6ea
30d14c8
8baf809
 
 
30d14c8
 
7c1c6ea
30d14c8
7c1c6ea
 
 
 
 
8baf809
 
7c1c6ea
8baf809
7c1c6ea
 
 
 
 
 
 
8baf809
 
 
7c1c6ea
8baf809
 
 
 
 
 
7c1c6ea
8baf809
7c1c6ea
 
30d14c8
 
 
 
7c1c6ea
8baf809
 
7c1c6ea
 
30d14c8
8baf809
30d14c8
 
 
8baf809
1727504
 
cec153e
7c1c6ea
cec153e
1727504
7c1c6ea
 
30d14c8
1727504
8baf809
 
7c1c6ea
1727504
30d14c8
46a623c
30d14c8
46a623c
30d14c8
 
 
8baf809
46a623c
30d14c8
1727504
30d14c8
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
---
license: cc-by-4.0
tags:
  - electron-microscopy
  - 4D-STEM
  - materials-science
  - quantem
pretty_name: quantem-data
---

# quantem-data

Reference electron-microscopy datasets for browsing and learning. Open in your browser via [quantem.widget](https://github.com/bobleesj/quantem.widget) — **no quantem.live install needed**.

Two buckets:

- **`4dstem/`** — 4D-STEM acquisitions. `_npy_bin*` variants are pre-binned NumPy files for fast workshop / Colab demos; the originals are full Arina h5 bundles.
- **`haadf/`** — HAADF survey images. `_npy` variants are pre-cooked NumPy + a `meta.json` sidecar carrying sampling + optics; the originals are full Velox EMD files.

A ready-to-run notebook sits at `notebooks/show4dstem_colab.ipynb` in this repo.

## One-click workshop notebook (Google Colab)

[![Open in Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/gist/bobleesj/54864ce5b2a6f0a4fd5ae1e5d5719b45/show4dstem_colab.ipynb)

It does the full pipeline in 7 cells: install `quantem.widget` (TestPyPI rc) + `quantem` (dev fork branch), download the pre-binned NumPy bundle from this dataset, wrap it as `Dataset4dstem.from_tensor`, render with `Show4DSTEM` in your browser via WebGPU. No CUDA on Colab. No quantem.live.

[![Open in Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/gist/bobleesj/a05a90185c6cddbb331342cae6d7e9c1/berk_workshop_v1.ipynb)

**Workshop v1** — real gold 4D-STEM: browse + bright field + dark field + probe + DPC, all on the Colab T4. No `quantem.live`, no local install. The notebook lives at `notebooks/berk_workshop_v1.ipynb` in this repo and on the `berk-workshop` branch of `bobleesj/quantem`.

## Workshop quick start — Show4DSTEM (any Jupyter)

```python
!pip install -q --pre --extra-index-url https://test.pypi.org/simple/ quantem.widget huggingface_hub
!pip install -q git+https://github.com/electronmicroscopy/quantem.git@dev

import os, json, numpy as np, torch
from huggingface_hub import snapshot_download
from quantem.core.datastructures import Dataset4dstem
from quantem.widget import Show4DSTEM

folder = snapshot_download("bobleesj/quantem-data", repo_type="dataset",
                          allow_patterns=["4dstem/gold_512_npy_bin8/*"])
asset = os.path.join(folder, "4dstem", "gold_512_npy_bin8")
data = np.load(os.path.join(asset, "data.npy"))
meta = json.load(open(os.path.join(asset, "meta.json")))

dset = Dataset4dstem.from_tensor(torch.from_numpy(data),
                                 sampling=meta["sampling"], units=meta["units"])
Show4DSTEM(dset)
```

## Workshop quick start — Show2D for HAADF

```python
import os, json, numpy as np, torch
from huggingface_hub import snapshot_download
from quantem.widget import Show2D

folder = snapshot_download("bobleesj/quantem-data", repo_type="dataset",
                          allow_patterns=["haadf/gold_haadf_npy/*"])
asset = os.path.join(folder, "haadf", "gold_haadf_npy")
img  = np.load(os.path.join(asset, "data.npy"))
meta = json.load(open(os.path.join(asset, "meta.json")))

Show2D(torch.from_numpy(img), sampling=meta["sampling"], units=meta["units"])
```

## Acquisition parameters

The 20260423 drift session's optics are **confirmed via the session's own HAADF EMD** (`AccelerationVoltage`, `BeamConvergence`, `CameraLength`). 4D-STEM `scan_sampling` is an **operator pattern from a sibling SSB session** — the drift acquisition itself was never per-file calibrated.

| dataset | voltage | probe | CL | scan | scan sampling | det pitch | mag |
|---|---|---|---|---|---|---|---|
| `haadf/gold_haadf_npy` | 300 kV ✓ | 30 mrad ✓ | 91 mm ✓ | 4096² image | 0.0186 nm/px | n/a | FOV 76.2 nm |
| `4dstem/gold_512_npy_bin8` | 300 kV ✓ | 30 mrad ✓ | 91 mm ✓ | 512² | 0.5 Å (op) | 3.68 mrad/px | unknown |
| `4dstem/gold_512_npy_bin4` | 300 kV ✓ | 30 mrad ✓ | 91 mm ✓ | 512² | 0.5 Å (op) | 1.84 mrad/px | unknown |
| `4dstem/gold_512` | 300 kV ✓ | 30 mrad ✓ | 91 mm ✓ | 512² | 0.5 Å (op) | 0.46 mrad/px | unknown |
| `4dstem/gold_30mrad1.3mx04``09` | 300 kV | 30 mrad | 91 mm | smaller | (session yaml) | 0.46 mrad/px | 1.3 Mx |
| `haadf/gold_haadf.emd` | 300 kV ✓ | 30 mrad ✓ | 91 mm ✓ | 4096² image | 0.0186 nm/px | n/a | FOV 76.2 nm |

✓ = confirmed via EMD/yaml. `(op)` = operator pattern, not file-certified.

## Datasets at a glance

| name | kind | shape | dtype | size | use |
|---|---|---|---|---|---|
| `4dstem/gold_512_npy_bin8/` | NumPy bundle | (512, 512, 24, 24) | uint16 | ~302 MB | workshop / Colab demo |
| `4dstem/gold_512_npy_bin4/` | NumPy bundle | (512, 512, 48, 48) | uint16 | ~1.2 GB | sharper workshop version |
| `4dstem/gold_512/` | Arina h5 | (512, 512, 192, 192) | uint16 | ~5 GB | power user |
| `4dstem/gold_30mrad1.3mx04``09` | Arina h5 | varies | uint16 | ~5 GB each | series demo |
| `haadf/gold_haadf_npy/` | NumPy bundle | (4096, 4096) | uint16 | ~34 MB | workshop / Colab Show2D |
| `haadf/gold_haadf.emd` | Velox EMD | (4096, 4096) | uint16 | a few MB | full optics carrier |

Each `_npy*` bundle ships a `meta.json` next to `data.npy`: shape, dtype, sampling, units, voltage / probe / CL (with provenance flags) when known.

## Power-user path (full data, GPU decompression)

Got an NVIDIA GPU and want the full Arina h5 / Velox EMD path? Install [`quantem.live`](https://github.com/bobleesj/quantem.live):

```python
from quantem.live import io
from quantem.widget import Show4DSTEM, Show2D
import torch

folder = io.download("gold_512")
result = io.load(io.discover_masters(folder)[0], det_bin=2)
Show4DSTEM(torch.from_dlpack(result.data))

ds = io.read_image(io.download("gold_haadf"))
Show2D(ds)
```

## Memory (VRAM) for the full h5

| `det_bin` | detector | loaded | peak VRAM | fits 16 GB? |
|---|---|---|---|---|
| 1 | 192×192 | 18 GB | ~25 GB | no |
| **2** | 96×96 | 4.5 GB | **~6.9 GB** | **yes** |
| 4 | 48×48 | 1.1 GB | ~2.2 GB | yes |
| 8 | 24×24 | 0.3 GB | ~0.5 GB | yes |

## Licence

CC-BY-4.0. Cite quantem.live / quantem.widget if you use these in a publication.