diff --git a/README.md b/README.md
index af6c831e..558a7947 100644
--- a/README.md
+++ b/README.md
@@ -1,3 +1,41 @@
+### Change log [2025-07-24 14:31:41]
+1. Item Updated: `model_server_tester` (from version: `1.1.0` to `1.1.0`)
+2. Item Updated: `aggregate` (from version: `1.3.0` to `1.3.0`)
+3. Item Updated: `translate` (from version: `0.1.0` to `0.1.0`)
+4. Item Updated: `v2_model_server` (from version: `1.2.0` to `1.2.0`)
+5. Item Updated: `gen_class_data` (from version: `1.2.0` to `1.2.0`)
+6. Item Updated: `auto_trainer` (from version: `1.7.0` to `1.7.0`)
+7. Item Updated: `silero_vad` (from version: `1.3.0` to `1.3.0`)
+8. Item Updated: `text_to_audio_generator` (from version: `1.3.0` to `1.3.0`)
+9. Item Updated: `describe` (from version: `1.3.0` to `1.3.0`)
+10. Item Updated: `transcribe` (from version: `1.1.0` to `1.1.0`)
+11. Item Updated: `pyannote_audio` (from version: `1.2.0` to `1.2.0`)
+12. Item Updated: `test_classifier` (from version: `1.1.0` to `1.1.0`)
+13. Item Updated: `feature_selection` (from version: `1.6.0` to `1.6.0`)
+14. Item Updated: `tf2_serving` (from version: `1.1.0` to `1.1.0`)
+15. Item Updated: `azureml_serving` (from version: `1.1.0` to `1.1.0`)
+16. Item Updated: `sklearn_classifier` (from version: `1.1.1` to `1.1.1`)
+17. Item Updated: `azureml_utils` (from version: `1.3.0` to `1.3.0`)
+18. Item Updated: `describe_dask` (from version: `1.1.0` to `1.1.0`)
+19. Item Updated: `mlflow_utils` (from version: `1.0.0` to `1.0.0`)
+20. Item Updated: `github_utils` (from version: `1.1.0` to `1.1.0`)
+21. Item Updated: `v2_model_tester` (from version: `1.1.0` to `1.1.0`)
+22. Item Updated: `open_archive` (from version: `1.2.0` to `1.2.0`)
+23. Item Updated: `describe_spark` (from version: `1.1.0` to `1.1.0`)
+24. Item Updated: `sklearn_classifier_dask` (from version: `1.1.1` to `1.1.1`)
+25. Item Updated: `batch_inference_v2` (from version: `2.6.0` to `2.6.0`)
+26. Item Updated: `arc_to_parquet` (from version: `1.4.1` to `1.4.1`)
+27. Item Updated: `send_email` (from version: `1.2.0` to `1.2.0`)
+28. Item Updated: `structured_data_generator` (from version: `1.5.0` to `1.5.0`)
+29. Item Updated: `question_answering` (from version: `0.4.0` to `0.4.0`)
+30. Item Updated: `hugging_face_serving` (from version: `1.1.0` to `1.1.0`)
+31. Item Updated: `noise_reduction` (from version: `1.0.0` to `1.0.0`)
+32. Item Updated: `pii_recognizer` (from version: `0.3.0` to `0.3.0`)
+33. Item Updated: `onnx_utils` (from version: `1.3.0` to `1.3.0`)
+34. Item Updated: `batch_inference` (from version: `1.7.0` to `1.7.0`)
+35. Item Updated: `load_dataset` (from version: `1.2.0` to `1.2.0`)
+36. Item Updated: `model_server` (from version: `1.1.0` to `1.1.0`)
+
### Change log [2025-06-04 14:51:06]
1. Item Updated: `v2_model_server` (from version: `1.2.0` to `1.2.0`)
2. Item Updated: `question_answering` (from version: `0.4.0` to `0.4.0`)
diff --git a/catalog.json b/catalog.json
index 32fff204..48aa6c3b 100644
--- a/catalog.json
+++ b/catalog.json
@@ -1 +1 @@
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\ No newline at end of file
diff --git a/functions/development/_static/mystnb.8ecb98da25f57f5357bf6f572d296f466b2cfe2517ffebfabe82451661e28f02.css b/functions/development/_static/mystnb.8ecb98da25f57f5357bf6f572d296f466b2cfe2517ffebfabe82451661e28f02.css
new file mode 100644
index 00000000..14edf629
--- /dev/null
+++ b/functions/development/_static/mystnb.8ecb98da25f57f5357bf6f572d296f466b2cfe2517ffebfabe82451661e28f02.css
@@ -0,0 +1,2474 @@
+/* Variables */
+:root {
+ /*
+ Following palettes are generated by using https://m2.material.io/design/color/the-color-system.html#tools-for-picking-colors
+ - neutral palette with #fcfcfc and danger palette with #ffdddd as base colors.
+ 50 means lightest, 900 means darkest; less used intermediate shades are omitted
+ but can be added when needed by accessing full palette from the above link.
+ */
+ --mystnb-neutral-palette-50: #fcfcfc;
+ --mystnb-neutral-palette-100: #f7f7f7;
+ --mystnb-neutral-palette-400: #cccccc;
+ --mystnb-neutral-palette-500: #afafaf;
+ --mystnb-neutral-palette-800: #505050;
+ --mystnb-neutral-palette-900: #2d2d2d;
+
+ --mystnb-danger-palette-50: #ffdddd;
+ --mystnb-danger-palette-100: #f5acad;
+ --mystnb-danger-palette-400: #c42029;
+ --mystnb-danger-palette-500: #b40008;
+ --mystnb-danger-palette-800: #850010;
+ --mystnb-danger-palette-900: #680010;
+
+ /* MyST-NB specific variables; colors should be logically picked from palettes */
+ --mystnb-source-bg-color: var(--mystnb-neutral-palette-100);
+ --mystnb-stdout-bg-color: var(--mystnb-neutral-palette-50);
+ --mystnb-stderr-bg-color: var(--mystnb-danger-palette-50);
+ --mystnb-traceback-bg-color: var(--mystnb-neutral-palette-50);
+ --mystnb-source-border-color: var(--mystnb-neutral-palette-400);
+ --mystnb-source-margin-color: green;
+ --mystnb-stdout-border-color: var(--mystnb-neutral-palette-100);
+ --mystnb-stderr-border-color: var(--mystnb-neutral-palette-100);
+ --mystnb-traceback-border-color: var(--mystnb-danger-palette-100);
+ --mystnb-hide-prompt-opacity: 70%;
+ --mystnb-source-border-radius: .4em;
+ --mystnb-source-border-width: 1px;
+ --mystnb-scrollbar-width: 0.3rem;
+ --mystnb-scrollbar-height: 0.3rem;
+ --mystnb-scrollbar-thumb-color: var(--mystnb-neutral-palette-400);
+ --mystnb-scrollbar-thumb-hover-color: var(--mystnb-neutral-palette-500);
+ --mystnb-scrollbar-thumb-border-radius: 0.25rem;
+}
+
+/* Override colors in dark theme */
+html[data-theme="dark"] {
+ --mystnb-source-bg-color: var(--mystnb-neutral-palette-800);
+ --mystnb-stdout-bg-color: var(--mystnb-neutral-palette-900);
+ --mystnb-stderr-bg-color: var(--mystnb-danger-palette-900);
+ --mystnb-traceback-bg-color: var(--mystnb-neutral-palette-900);
+ --mystnb-source-border-color: var(--mystnb-neutral-palette-500);
+ --mystnb-stdout-border-color: var(--mystnb-neutral-palette-800);
+ --mystnb-stderr-border-color: var(--mystnb-neutral-palette-800);
+ --mystnb-traceback-border-color: var(--mystnb-danger-palette-800);
+ --mystnb-scrollbar-thumb-color: var(--mystnb-neutral-palette-500);
+ --mystnb-scrollbar-thumb-hover-color: var(--mystnb-neutral-palette-400);
+}
+
+
+/* Whole cell */
+div.container.cell {
+ padding-left: 0;
+ margin-bottom: 1em;
+}
+
+/* Removing all background formatting so we can control at the div level */
+.cell_input div.highlight,
+.cell_output pre,
+.cell_input pre,
+.cell_output .output {
+ border: none;
+ box-shadow: none;
+}
+
+.cell_output .output pre,
+.cell_input pre {
+ margin: 0px;
+}
+
+/* Input cells */
+div.cell > div.cell_input {
+ padding-left: 0em;
+ padding-right: 0em;
+ border: var(--mystnb-source-border-width) var(--mystnb-source-border-color) solid;
+ background-color: var(--mystnb-source-bg-color);
+ border-left-color: var(--mystnb-source-margin-color);
+ border-left-width: medium;
+ border-radius: var(--mystnb-source-border-radius);
+}
+
+div.cell_input>div,
+div.cell_output div.output>div.highlight {
+ margin: 0em !important;
+ border: none !important;
+}
+
+/* All cell outputs */
+.cell_output {
+ padding-left: 1em;
+ padding-right: 0em;
+ margin-top: 1em;
+}
+
+/* Text outputs from cells */
+.cell_output .output.text_plain,
+.cell_output .output.traceback,
+.cell_output .output.stream,
+.cell_output .output.stderr {
+ margin-top: 1em;
+ margin-bottom: 0em;
+ box-shadow: none;
+}
+
+.cell_output .output.text_plain:not(:has(.highlight)),
+.cell_output .output.stream:not(:has(.highlight)) {
+ /* plain (or stream of) output, not containing a pygments-highlighted block */
+ background: var(--mystnb-stdout-bg-color);
+ border: 1px solid var(--mystnb-stdout-border-color);
+}
+
+.cell_output .output.stderr {
+ background: var(--mystnb-stderr-bg-color);
+ border: 1px solid var(--mystnb-stderr-border-color);
+}
+
+.cell_output .output.traceback {
+ background: var(--mystnb-traceback-bg-color);
+ border: 1px solid var(--mystnb-traceback-border-color);
+}
+
+/* --- Collapsible cell content --- */
+
+/*
+encourage summary container to blend in with its parent.
+p.admonition-title should hold the title styles.
+*/
+div.cell details.hide summary {
+ border-left: unset;
+ padding: inherit;
+ margin: inherit;
+ background-color: inherit;
+}
+
+/* Neighboring input/output elements - spacing, borders */
+div.cell details.hide.above-input + details.below-input,
+div.cell div.cell_input + details.below-input
+{
+ margin-top: 0;
+}
+
+div.cell details.hide.above-input:has(+ details.below-input),
+div.cell div.cell_input:has(+ details.below-input)
+{
+ margin-bottom: 0;
+}
+
+div.cell:has(> *:nth-child(2)) div.cell_input:first-child,
+div.cell:has(> *:nth-child(2)) details:first-child
+{
+ border-bottom-left-radius: 0;
+ border-bottom-right-radius: 0;
+}
+
+div.cell:has(> *:nth-child(2)) div.cell_input:last-child,
+div.cell:has(> *:nth-child(2)) details:last-child
+{
+ border-top-left-radius: 0;
+ border-top-right-radius: 0;
+}
+
+/* intra-label styles for collapsibles */
+div.cell.container details.hide.above-input>summary,
+div.cell.container details.hide.below-input>summary,
+div.cell.container details.hide.above-output>summary
+{
+ display: block;
+ border-left: none;
+}
+
+div.cell details.hide>summary>p.admonition-title {
+ display: list-item;
+ margin-bottom: 0;
+}
+
+div.cell details.hide:not([open]) {
+ padding-bottom: 0;
+}
+
+div.cell details.hide[open]>summary>p.collapsed {
+ display: none;
+}
+
+div.cell details.hide:not([open])>summary>p.expanded {
+ display: none;
+}
+
+@keyframes collapsed-fade-in {
+ 0% {
+ opacity: 0;
+ }
+
+ 100% {
+ opacity: 1;
+ }
+}
+div.cell details.hide[open]>summary~* {
+ -moz-animation: collapsed-fade-in 0.3s ease-in-out;
+ -webkit-animation: collapsed-fade-in 0.3s ease-in-out;
+ animation: collapsed-fade-in 0.3s ease-in-out;
+}
+
+/* Clear conflicting styles for details and admonitions set by some themes */
+div.cell details.admonition summary::before {
+ content: unset;
+}
+
+/* Math align to the left */
+.cell_output .MathJax_Display {
+ text-align: left !important;
+}
+
+/* Pandas tables. Pulled from the Jupyter / nbsphinx CSS */
+div.cell_output table {
+ border: none;
+ border-collapse: collapse;
+ border-spacing: 0;
+ color: black;
+ font-size: 1em;
+ table-layout: fixed;
+}
+
+div.cell_output thead {
+ border-bottom: 1px solid black;
+ vertical-align: bottom;
+}
+
+div.cell_output tr,
+div.cell_output th,
+div.cell_output td {
+ text-align: right;
+ vertical-align: middle;
+ padding: 0.5em 0.5em;
+ line-height: normal;
+ white-space: normal;
+ max-width: none;
+ border: none;
+}
+
+div.cell_output th {
+ font-weight: bold;
+}
+
+div.cell_output tbody tr:nth-child(odd) {
+ background: #f5f5f5;
+}
+
+div.cell_output tbody tr:hover {
+ background: rgba(66, 165, 245, 0.2);
+}
+
+/** source code line numbers **/
+span.linenos {
+ opacity: 0.5;
+}
+
+/* Inline text from `paste` operation */
+
+span.pasted-text {
+ font-weight: bold;
+}
+
+span.pasted-inline img {
+ max-height: 2em;
+}
+
+tbody span.pasted-inline img {
+ max-height: none;
+}
+
+
+/* Adding scroll bars if tags: output_scroll, scroll-output, and scroll-input
+ * On screens, we want to scroll, but on print show all
+ *
+ * It was before in https://github.com/executablebooks/sphinx-book-theme/blob/eb1b6baf098b27605e8f2b7b2979b17ebf1b9540/src/sphinx_book_theme/assets/styles/extensions/_myst-nb.scss
+*/
+div.cell:is(
+ .tag_output_scroll,
+ .tag_scroll-output,
+ .config_scroll_outputs
+ )
+ div.cell_output,
+div.cell.tag_scroll-input div.cell_input {
+ max-height: 24em;
+ overflow-y: auto;
+ max-width: 100%;
+ overflow-x: auto;
+}
+
+div.cell.config_scroll_outputs div.cell_output:has(img) {
+ /* If the output cell has image(s), allow it to take 90% of viewport height
+ but still bounded between 24em and 60em */
+ max-height: clamp(24em, 90vh, 60em);
+}
+
+/* Custom scrollbars */
+div.cell:is(
+ .tag_output_scroll,
+ .tag_scroll-output,
+ .config_scroll_outputs
+ )
+ div.cell_output::-webkit-scrollbar,
+div.cell.tag_scroll-input div.cell_input::-webkit-scrollbar {
+ width: var(--mystnb-scrollbar-width);
+ height: var(--mystnb-scrollbar-height);
+}
+
+div.cell:is(
+ .tag_output_scroll,
+ .tag_scroll-output,
+ .config_scroll_outputs
+ )
+ div.cell_output::-webkit-scrollbar-thumb,
+div.cell.tag_scroll-input div.cell_input::-webkit-scrollbar-thumb {
+ background: var(--mystnb-scrollbar-thumb-color);
+ border-radius: var(--mystnb-scrollbar-thumb-border-radius);
+}
+
+div.cell:is(
+ .tag_output_scroll,
+ .tag_scroll-output,
+ .config_scroll_outputs
+ )
+ div.cell_output::-webkit-scrollbar-thumb:hover,
+div.cell.tag_scroll-input div.cell_input::-webkit-scrollbar-thumb:hover {
+ background: var(--mystnb-scrollbar-thumb-hover-color);
+}
+
+/* In print mode, unset scroll styles */
+@media print {
+ div.cell:is(
+ .tag_output_scroll,
+ .tag_scroll-output,
+ .config_scroll_outputs
+ )
+ div.cell_output,
+ div.cell.tag_scroll-input div.cell_input {
+ max-height: unset;
+ overflow-y: visible;
+ max-width: unset;
+ overflow-x: visible;
+ }
+}
+
+/* Font colors for translated ANSI escape sequences
+Color values are copied from Jupyter Notebook
+https://github.com/jupyter/notebook/blob/52581f8eda9b319eb0390ac77fe5903c38f81e3e/notebook/static/notebook/less/ansicolors.less#L14-L21
+Background colors from
+https://nbsphinx.readthedocs.io/en/latest/code-cells.html#ANSI-Colors
+*/
+div.highlight .-Color-Bold {
+ font-weight: bold;
+}
+
+div.highlight .-Color[class*=-Black] {
+ color: #3E424D
+}
+
+div.highlight .-Color[class*=-Red] {
+ color: #E75C58
+}
+
+div.highlight .-Color[class*=-Green] {
+ color: #00A250
+}
+
+div.highlight .-Color[class*=-Yellow] {
+ color: #DDB62B
+}
+
+div.highlight .-Color[class*=-Blue] {
+ color: #208FFB
+}
+
+div.highlight .-Color[class*=-Magenta] {
+ color: #D160C4
+}
+
+div.highlight .-Color[class*=-Cyan] {
+ color: #60C6C8
+}
+
+div.highlight .-Color[class*=-White] {
+ color: #C5C1B4
+}
+
+div.highlight .-Color[class*=-BGBlack] {
+ background-color: #3E424D
+}
+
+div.highlight .-Color[class*=-BGRed] {
+ background-color: #E75C58
+}
+
+div.highlight .-Color[class*=-BGGreen] {
+ background-color: #00A250
+}
+
+div.highlight .-Color[class*=-BGYellow] {
+ background-color: #DDB62B
+}
+
+div.highlight .-Color[class*=-BGBlue] {
+ background-color: #208FFB
+}
+
+div.highlight .-Color[class*=-BGMagenta] {
+ background-color: #D160C4
+}
+
+div.highlight .-Color[class*=-BGCyan] {
+ background-color: #60C6C8
+}
+
+div.highlight .-Color[class*=-BGWhite] {
+ background-color: #C5C1B4
+}
+
+/* Font colors for 8-bit ANSI */
+
+div.highlight .-Color[class*=-C0] {
+ color: #000000
+}
+
+div.highlight .-Color[class*=-BGC0] {
+ background-color: #000000
+}
+
+div.highlight .-Color[class*=-C1] {
+ color: #800000
+}
+
+div.highlight .-Color[class*=-BGC1] {
+ background-color: #800000
+}
+
+div.highlight .-Color[class*=-C2] {
+ color: #008000
+}
+
+div.highlight .-Color[class*=-BGC2] {
+ background-color: #008000
+}
+
+div.highlight .-Color[class*=-C3] {
+ color: #808000
+}
+
+div.highlight .-Color[class*=-BGC3] {
+ background-color: #808000
+}
+
+div.highlight .-Color[class*=-C4] {
+ color: #000080
+}
+
+div.highlight .-Color[class*=-BGC4] {
+ background-color: #000080
+}
+
+div.highlight .-Color[class*=-C5] {
+ color: #800080
+}
+
+div.highlight .-Color[class*=-BGC5] {
+ background-color: #800080
+}
+
+div.highlight .-Color[class*=-C6] {
+ color: #008080
+}
+
+div.highlight .-Color[class*=-BGC6] {
+ background-color: #008080
+}
+
+div.highlight .-Color[class*=-C7] {
+ color: #C0C0C0
+}
+
+div.highlight .-Color[class*=-BGC7] {
+ background-color: #C0C0C0
+}
+
+div.highlight .-Color[class*=-C8] {
+ color: #808080
+}
+
+div.highlight .-Color[class*=-BGC8] {
+ background-color: #808080
+}
+
+div.highlight .-Color[class*=-C9] {
+ color: #FF0000
+}
+
+div.highlight .-Color[class*=-BGC9] {
+ background-color: #FF0000
+}
+
+div.highlight .-Color[class*=-C10] {
+ color: #00FF00
+}
+
+div.highlight .-Color[class*=-BGC10] {
+ background-color: #00FF00
+}
+
+div.highlight .-Color[class*=-C11] {
+ color: #FFFF00
+}
+
+div.highlight .-Color[class*=-BGC11] {
+ background-color: #FFFF00
+}
+
+div.highlight .-Color[class*=-C12] {
+ color: #0000FF
+}
+
+div.highlight .-Color[class*=-BGC12] {
+ background-color: #0000FF
+}
+
+div.highlight .-Color[class*=-C13] {
+ color: #FF00FF
+}
+
+div.highlight .-Color[class*=-BGC13] {
+ background-color: #FF00FF
+}
+
+div.highlight .-Color[class*=-C14] {
+ color: #00FFFF
+}
+
+div.highlight .-Color[class*=-BGC14] {
+ background-color: #00FFFF
+}
+
+div.highlight .-Color[class*=-C15] {
+ color: #FFFFFF
+}
+
+div.highlight .-Color[class*=-BGC15] {
+ background-color: #FFFFFF
+}
+
+div.highlight .-Color[class*=-C16] {
+ color: #000000
+}
+
+div.highlight .-Color[class*=-BGC16] {
+ background-color: #000000
+}
+
+div.highlight .-Color[class*=-C17] {
+ color: #00005F
+}
+
+div.highlight .-Color[class*=-BGC17] {
+ background-color: #00005F
+}
+
+div.highlight .-Color[class*=-C18] {
+ color: #000087
+}
+
+div.highlight .-Color[class*=-BGC18] {
+ background-color: #000087
+}
+
+div.highlight .-Color[class*=-C19] {
+ color: #0000AF
+}
+
+div.highlight .-Color[class*=-BGC19] {
+ background-color: #0000AF
+}
+
+div.highlight .-Color[class*=-C20] {
+ color: #0000D7
+}
+
+div.highlight .-Color[class*=-BGC20] {
+ background-color: #0000D7
+}
+
+div.highlight .-Color[class*=-C21] {
+ color: #0000FF
+}
+
+div.highlight .-Color[class*=-BGC21] {
+ background-color: #0000FF
+}
+
+div.highlight .-Color[class*=-C22] {
+ color: #005F00
+}
+
+div.highlight .-Color[class*=-BGC22] {
+ background-color: #005F00
+}
+
+div.highlight .-Color[class*=-C23] {
+ color: #005F5F
+}
+
+div.highlight .-Color[class*=-BGC23] {
+ background-color: #005F5F
+}
+
+div.highlight .-Color[class*=-C24] {
+ color: #005F87
+}
+
+div.highlight .-Color[class*=-BGC24] {
+ background-color: #005F87
+}
+
+div.highlight .-Color[class*=-C25] {
+ color: #005FAF
+}
+
+div.highlight .-Color[class*=-BGC25] {
+ background-color: #005FAF
+}
+
+div.highlight .-Color[class*=-C26] {
+ color: #005FD7
+}
+
+div.highlight .-Color[class*=-BGC26] {
+ background-color: #005FD7
+}
+
+div.highlight .-Color[class*=-C27] {
+ color: #005FFF
+}
+
+div.highlight .-Color[class*=-BGC27] {
+ background-color: #005FFF
+}
+
+div.highlight .-Color[class*=-C28] {
+ color: #008700
+}
+
+div.highlight .-Color[class*=-BGC28] {
+ background-color: #008700
+}
+
+div.highlight .-Color[class*=-C29] {
+ color: #00875F
+}
+
+div.highlight .-Color[class*=-BGC29] {
+ background-color: #00875F
+}
+
+div.highlight .-Color[class*=-C30] {
+ color: #008787
+}
+
+div.highlight .-Color[class*=-BGC30] {
+ background-color: #008787
+}
+
+div.highlight .-Color[class*=-C31] {
+ color: #0087AF
+}
+
+div.highlight .-Color[class*=-BGC31] {
+ background-color: #0087AF
+}
+
+div.highlight .-Color[class*=-C32] {
+ color: #0087D7
+}
+
+div.highlight .-Color[class*=-BGC32] {
+ background-color: #0087D7
+}
+
+div.highlight .-Color[class*=-C33] {
+ color: #0087FF
+}
+
+div.highlight .-Color[class*=-BGC33] {
+ background-color: #0087FF
+}
+
+div.highlight .-Color[class*=-C34] {
+ color: #00AF00
+}
+
+div.highlight .-Color[class*=-BGC34] {
+ background-color: #00AF00
+}
+
+div.highlight .-Color[class*=-C35] {
+ color: #00AF5F
+}
+
+div.highlight .-Color[class*=-BGC35] {
+ background-color: #00AF5F
+}
+
+div.highlight .-Color[class*=-C36] {
+ color: #00AF87
+}
+
+div.highlight .-Color[class*=-BGC36] {
+ background-color: #00AF87
+}
+
+div.highlight .-Color[class*=-C37] {
+ color: #00AFAF
+}
+
+div.highlight .-Color[class*=-BGC37] {
+ background-color: #00AFAF
+}
+
+div.highlight .-Color[class*=-C38] {
+ color: #00AFD7
+}
+
+div.highlight .-Color[class*=-BGC38] {
+ background-color: #00AFD7
+}
+
+div.highlight .-Color[class*=-C39] {
+ color: #00AFFF
+}
+
+div.highlight .-Color[class*=-BGC39] {
+ background-color: #00AFFF
+}
+
+div.highlight .-Color[class*=-C40] {
+ color: #00D700
+}
+
+div.highlight .-Color[class*=-BGC40] {
+ background-color: #00D700
+}
+
+div.highlight .-Color[class*=-C41] {
+ color: #00D75F
+}
+
+div.highlight .-Color[class*=-BGC41] {
+ background-color: #00D75F
+}
+
+div.highlight .-Color[class*=-C42] {
+ color: #00D787
+}
+
+div.highlight .-Color[class*=-BGC42] {
+ background-color: #00D787
+}
+
+div.highlight .-Color[class*=-C43] {
+ color: #00D7AF
+}
+
+div.highlight .-Color[class*=-BGC43] {
+ background-color: #00D7AF
+}
+
+div.highlight .-Color[class*=-C44] {
+ color: #00D7D7
+}
+
+div.highlight .-Color[class*=-BGC44] {
+ background-color: #00D7D7
+}
+
+div.highlight .-Color[class*=-C45] {
+ color: #00D7FF
+}
+
+div.highlight .-Color[class*=-BGC45] {
+ background-color: #00D7FF
+}
+
+div.highlight .-Color[class*=-C46] {
+ color: #00FF00
+}
+
+div.highlight .-Color[class*=-BGC46] {
+ background-color: #00FF00
+}
+
+div.highlight .-Color[class*=-C47] {
+ color: #00FF5F
+}
+
+div.highlight .-Color[class*=-BGC47] {
+ background-color: #00FF5F
+}
+
+div.highlight .-Color[class*=-C48] {
+ color: #00FF87
+}
+
+div.highlight .-Color[class*=-BGC48] {
+ background-color: #00FF87
+}
+
+div.highlight .-Color[class*=-C49] {
+ color: #00FFAF
+}
+
+div.highlight .-Color[class*=-BGC49] {
+ background-color: #00FFAF
+}
+
+div.highlight .-Color[class*=-C50] {
+ color: #00FFD7
+}
+
+div.highlight .-Color[class*=-BGC50] {
+ background-color: #00FFD7
+}
+
+div.highlight .-Color[class*=-C51] {
+ color: #00FFFF
+}
+
+div.highlight .-Color[class*=-BGC51] {
+ background-color: #00FFFF
+}
+
+div.highlight .-Color[class*=-C52] {
+ color: #5F0000
+}
+
+div.highlight .-Color[class*=-BGC52] {
+ background-color: #5F0000
+}
+
+div.highlight .-Color[class*=-C53] {
+ color: #5F005F
+}
+
+div.highlight .-Color[class*=-BGC53] {
+ background-color: #5F005F
+}
+
+div.highlight .-Color[class*=-C54] {
+ color: #5F0087
+}
+
+div.highlight .-Color[class*=-BGC54] {
+ background-color: #5F0087
+}
+
+div.highlight .-Color[class*=-C55] {
+ color: #5F00AF
+}
+
+div.highlight .-Color[class*=-BGC55] {
+ background-color: #5F00AF
+}
+
+div.highlight .-Color[class*=-C56] {
+ color: #5F00D7
+}
+
+div.highlight .-Color[class*=-BGC56] {
+ background-color: #5F00D7
+}
+
+div.highlight .-Color[class*=-C57] {
+ color: #5F00FF
+}
+
+div.highlight .-Color[class*=-BGC57] {
+ background-color: #5F00FF
+}
+
+div.highlight .-Color[class*=-C58] {
+ color: #5F5F00
+}
+
+div.highlight .-Color[class*=-BGC58] {
+ background-color: #5F5F00
+}
+
+div.highlight .-Color[class*=-C59] {
+ color: #5F5F5F
+}
+
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+}
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+}
+
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+}
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+}
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+}
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+}
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+}
+
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+}
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+}
+
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+}
+
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+}
+
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+}
+
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+}
+
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+ color: #5F8787
+}
+
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+}
+
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+ color: #5F87AF
+}
+
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+}
+
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+ color: #5F87D7
+}
+
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+}
+
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+ color: #5F87FF
+}
+
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+}
+
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+}
+
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+}
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+}
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+}
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+ color: #5FAF87
+}
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+}
+
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+}
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+}
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+}
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+}
+
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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+}
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diff --git a/functions/development/sklearn_classifier/1.1.1/static/example.html b/functions/development/sklearn_classifier/1.1.1/static/example.html
index 9c4249a6..05d293d8 100644
--- a/functions/development/sklearn_classifier/1.1.1/static/example.html
+++ b/functions/development/sklearn_classifier/1.1.1/static/example.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html b/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html
index db33df83..e229f241 100644
--- a/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html
+++ b/functions/development/sklearn_classifier/1.1.1/static/sklearn_classifier.html
@@ -20,7 +20,7 @@
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+
diff --git a/functions/development/sklearn_classifier/latest/static/documentation.html b/functions/development/sklearn_classifier/latest/static/documentation.html
index 48056cda..1f3427a2 100644
--- a/functions/development/sklearn_classifier/latest/static/documentation.html
+++ b/functions/development/sklearn_classifier/latest/static/documentation.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier/latest/static/example.html b/functions/development/sklearn_classifier/latest/static/example.html
index 9c4249a6..05d293d8 100644
--- a/functions/development/sklearn_classifier/latest/static/example.html
+++ b/functions/development/sklearn_classifier/latest/static/example.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier/latest/static/sklearn_classifier.html b/functions/development/sklearn_classifier/latest/static/sklearn_classifier.html
index db33df83..e229f241 100644
--- a/functions/development/sklearn_classifier/latest/static/sklearn_classifier.html
+++ b/functions/development/sklearn_classifier/latest/static/sklearn_classifier.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier_dask/1.1.1/static/documentation.html b/functions/development/sklearn_classifier_dask/1.1.1/static/documentation.html
index d467f89f..38aa65c5 100644
--- a/functions/development/sklearn_classifier_dask/1.1.1/static/documentation.html
+++ b/functions/development/sklearn_classifier_dask/1.1.1/static/documentation.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier_dask/1.1.1/static/example.html b/functions/development/sklearn_classifier_dask/1.1.1/static/example.html
index 5fcdfa90..c37419fa 100644
--- a/functions/development/sklearn_classifier_dask/1.1.1/static/example.html
+++ b/functions/development/sklearn_classifier_dask/1.1.1/static/example.html
@@ -20,7 +20,7 @@
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+
diff --git a/functions/development/sklearn_classifier_dask/1.1.1/static/sklearn_classifier_dask.html b/functions/development/sklearn_classifier_dask/1.1.1/static/sklearn_classifier_dask.html
index 4a133c6c..9d03ccb2 100644
--- a/functions/development/sklearn_classifier_dask/1.1.1/static/sklearn_classifier_dask.html
+++ b/functions/development/sklearn_classifier_dask/1.1.1/static/sklearn_classifier_dask.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier_dask/latest/static/documentation.html b/functions/development/sklearn_classifier_dask/latest/static/documentation.html
index d467f89f..38aa65c5 100644
--- a/functions/development/sklearn_classifier_dask/latest/static/documentation.html
+++ b/functions/development/sklearn_classifier_dask/latest/static/documentation.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/sklearn_classifier_dask/latest/static/example.html b/functions/development/sklearn_classifier_dask/latest/static/example.html
index 5fcdfa90..c37419fa 100644
--- a/functions/development/sklearn_classifier_dask/latest/static/example.html
+++ b/functions/development/sklearn_classifier_dask/latest/static/example.html
@@ -20,7 +20,7 @@
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+
diff --git a/functions/development/sklearn_classifier_dask/latest/static/sklearn_classifier_dask.html b/functions/development/sklearn_classifier_dask/latest/static/sklearn_classifier_dask.html
index 4a133c6c..9d03ccb2 100644
--- a/functions/development/sklearn_classifier_dask/latest/static/sklearn_classifier_dask.html
+++ b/functions/development/sklearn_classifier_dask/latest/static/sklearn_classifier_dask.html
@@ -20,7 +20,7 @@
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+
diff --git a/functions/development/structured_data_generator/1.5.0/static/documentation.html b/functions/development/structured_data_generator/1.5.0/static/documentation.html
index 67e6b6d6..060d59d9 100644
--- a/functions/development/structured_data_generator/1.5.0/static/documentation.html
+++ b/functions/development/structured_data_generator/1.5.0/static/documentation.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/structured_data_generator/1.5.0/static/example.html b/functions/development/structured_data_generator/1.5.0/static/example.html
index 589080f3..1573d754 100644
--- a/functions/development/structured_data_generator/1.5.0/static/example.html
+++ b/functions/development/structured_data_generator/1.5.0/static/example.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html b/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html
index 51e05a22..b665f268 100644
--- a/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html
+++ b/functions/development/structured_data_generator/1.5.0/static/structured_data_generator.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/structured_data_generator/latest/static/documentation.html b/functions/development/structured_data_generator/latest/static/documentation.html
index 67e6b6d6..060d59d9 100644
--- a/functions/development/structured_data_generator/latest/static/documentation.html
+++ b/functions/development/structured_data_generator/latest/static/documentation.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/structured_data_generator/latest/static/example.html b/functions/development/structured_data_generator/latest/static/example.html
index 589080f3..1573d754 100644
--- a/functions/development/structured_data_generator/latest/static/example.html
+++ b/functions/development/structured_data_generator/latest/static/example.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/structured_data_generator/latest/static/structured_data_generator.html b/functions/development/structured_data_generator/latest/static/structured_data_generator.html
index 51e05a22..b665f268 100644
--- a/functions/development/structured_data_generator/latest/static/structured_data_generator.html
+++ b/functions/development/structured_data_generator/latest/static/structured_data_generator.html
@@ -20,7 +20,7 @@
-
+
diff --git a/functions/development/tags.json b/functions/development/tags.json
index 320172b3..287a3a4a 100644
--- a/functions/development/tags.json
+++ b/functions/development/tags.json
@@ -1 +1 @@
-{"categories": ["model-testing", "etl", "audio", "pytorch", "data-preparation", "genai", "model-serving", "deep-learning", "data-generation", "model-training", "data-analysis", "machine-learning", "utils", "huggingface", "monitoring", "NLP"], "kind": ["serving", "job", "nuclio:serving"]}
\ No newline at end of file
+{"categories": ["data-preparation", "data-analysis", "utils", "audio", "deep-learning", "data-generation", "NLP", "machine-learning", "pytorch", "monitoring", "huggingface", "model-testing", "model-serving", "etl", "model-training", "genai"], "kind": ["job", "serving", "nuclio:serving"]}
\ No newline at end of file
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index e36e9403..ecb59d84 100644
--- a/functions/development/test_classifier/1.1.0/static/documentation.html
+++ b/functions/development/test_classifier/1.1.0/static/documentation.html
@@ -20,7 +20,7 @@
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+
diff --git a/functions/development/test_classifier/1.1.0/static/example.html b/functions/development/test_classifier/1.1.0/static/example.html
index 2d5bc2f0..7317badc 100644
--- a/functions/development/test_classifier/1.1.0/static/example.html
+++ b/functions/development/test_classifier/1.1.0/static/example.html
@@ -20,7 +20,7 @@
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index 68421377..0ee946fa 100644
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index e36e9403..ecb59d84 100644
--- a/functions/development/test_classifier/latest/static/documentation.html
+++ b/functions/development/test_classifier/latest/static/documentation.html
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index 2d5bc2f0..7317badc 100644
--- a/functions/development/test_classifier/latest/static/example.html
+++ b/functions/development/test_classifier/latest/static/example.html
@@ -20,7 +20,7 @@
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index 68421377..0ee946fa 100644
--- a/functions/development/test_classifier/latest/static/test_classifier.html
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index e4ad7a88..b4660ebf 100644
--- a/functions/development/text_to_audio_generator/1.3.0/static/documentation.html
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@@ -20,7 +20,7 @@
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diff --git a/functions/development/text_to_audio_generator/1.3.0/static/example.html b/functions/development/text_to_audio_generator/1.3.0/static/example.html
index 0b9f820f..096f4a9c 100644
--- a/functions/development/text_to_audio_generator/1.3.0/static/example.html
+++ b/functions/development/text_to_audio_generator/1.3.0/static/example.html
@@ -20,7 +20,7 @@
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+
diff --git a/functions/development/text_to_audio_generator/1.3.0/static/text_to_audio_generator.html b/functions/development/text_to_audio_generator/1.3.0/static/text_to_audio_generator.html
index c9c93a42..f807a73b 100644
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+++ b/functions/development/text_to_audio_generator/1.3.0/static/text_to_audio_generator.html
@@ -20,7 +20,7 @@
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index e4ad7a88..b4660ebf 100644
--- a/functions/development/text_to_audio_generator/latest/static/documentation.html
+++ b/functions/development/text_to_audio_generator/latest/static/documentation.html
@@ -20,7 +20,7 @@
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diff --git a/functions/development/text_to_audio_generator/latest/static/example.html b/functions/development/text_to_audio_generator/latest/static/example.html
index 0b9f820f..096f4a9c 100644
--- a/functions/development/text_to_audio_generator/latest/static/example.html
+++ b/functions/development/text_to_audio_generator/latest/static/example.html
@@ -20,7 +20,7 @@
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index c9c93a42..f807a73b 100644
--- a/functions/development/text_to_audio_generator/latest/static/text_to_audio_generator.html
+++ b/functions/development/text_to_audio_generator/latest/static/text_to_audio_generator.html
@@ -20,7 +20,7 @@
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index 7124689a..b92a2870 100644
--- a/functions/development/tf2_serving/1.1.0/static/documentation.html
+++ b/functions/development/tf2_serving/1.1.0/static/documentation.html
@@ -20,7 +20,7 @@
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index bded5cf6..a27ca4ac 100644
--- a/functions/development/tf2_serving/1.1.0/static/example.html
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index 9e33ec1e..de5fa741 100644
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index 7124689a..b92a2870 100644
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index bded5cf6..a27ca4ac 100644
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index 9e33ec1e..de5fa741 100644
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index 80bf639b..d92df103 100644
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index f25f86a8..261d8df0 100644
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index 215235bd..7f277c56 100644
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diff --git a/functions/development/transcribe/latest/static/documentation.html b/functions/development/transcribe/latest/static/documentation.html
index 80bf639b..d92df103 100644
--- a/functions/development/transcribe/latest/static/documentation.html
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index f25f86a8..261d8df0 100644
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index 215235bd..7f277c56 100644
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index 237b2231..9e4fdd01 100644
--- a/functions/development/translate/0.1.0/static/documentation.html
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index e763bd83..6b086df4 100644
--- a/functions/development/translate/0.1.0/static/example.html
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index 1dc8ac2a..153b48a4 100644
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diff --git a/functions/development/translate/latest/static/documentation.html b/functions/development/translate/latest/static/documentation.html
index 237b2231..9e4fdd01 100644
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diff --git a/functions/development/translate/latest/static/example.html b/functions/development/translate/latest/static/example.html
index e763bd83..6b086df4 100644
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+++ b/functions/development/translate/latest/static/example.html
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index 1dc8ac2a..153b48a4 100644
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diff --git a/functions/development/v2_model_server/1.2.0/static/documentation.html b/functions/development/v2_model_server/1.2.0/static/documentation.html
index fc69d875..8c6b6a58 100644
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+++ b/functions/development/v2_model_server/1.2.0/static/documentation.html
@@ -20,7 +20,7 @@
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diff --git a/functions/development/v2_model_server/1.2.0/static/example.html b/functions/development/v2_model_server/1.2.0/static/example.html
index 6cc76013..c2a447d9 100644
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+++ b/functions/development/v2_model_server/1.2.0/static/example.html
@@ -20,7 +20,7 @@
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index 9c6a96d5..2245fc64 100644
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index fc69d875..8c6b6a58 100644
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index 6cc76013..c2a447d9 100644
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+++ b/functions/development/v2_model_server/latest/static/example.html
@@ -20,7 +20,7 @@
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index 9c6a96d5..2245fc64 100644
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index 1252dca9..b7cbc37b 100644
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index f5d574bb..74c41d12 100644
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index 2eb9604e..996c4470 100644
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index 1252dca9..b7cbc37b 100644
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index f5d574bb..74c41d12 100644
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diff --git a/functions/development/v2_model_tester/latest/static/v2_model_tester.html b/functions/development/v2_model_tester/latest/static/v2_model_tester.html
index 2eb9604e..996c4470 100644
--- a/functions/development/v2_model_tester/latest/static/v2_model_tester.html
+++ b/functions/development/v2_model_tester/latest/static/v2_model_tester.html
@@ -20,7 +20,7 @@
-
+