{"schema_version":"onlylabs.public_signal.v1","title":"NVIDIA Repo: NVIDIA/cuml-spark","description":"NVIDIA repo signal with public source context, captured evidence pages, related signals, and data-business radar classification.","url":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6","json_url":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6/signal.json","generated_at":"2026-06-11T03:13:27.80446+00:00","org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab","category_label":"Frontier lab","dossier_url":"https://onlylabs.fyi/labs/nvidia","dossier_json_url":"https://onlylabs.fyi/labs/nvidia/dossier.json"},"related_urls":{"signal":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6","signal_json":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6/signal.json","source":"https://github.com/NVIDIA/cuml-spark","lab_dossier":"https://onlylabs.fyi/labs/nvidia","lab_dossier_json":"https://onlylabs.fyi/labs/nvidia/dossier.json","analysis":"https://onlylabs.fyi/analysis/nvidia","analysis_json":"https://onlylabs.fyi/analysis/nvidia/analysis.json","analysis_evidence_json":"https://onlylabs.fyi/analysis/nvidia/evidence.json","category":"https://onlylabs.fyi/frontier","category_json":"https://onlylabs.fyi/frontier.json","category_feed":"https://onlylabs.fyi/frontier/feed.xml","category_signals_json":"https://onlylabs.fyi/signals.json","topic":null,"topic_signals_json":null,"topic_feed":null,"data_business":{"radar":"https://onlylabs.fyi/data-radar","radar_json":"https://onlylabs.fyi/data-radar.json","opportunities":"https://onlylabs.fyi/opportunities","opportunities_json":"https://onlylabs.fyi/opportunities.json","lanes":[{"key":"infrastructure","label":"Infrastructure","url":"https://onlylabs.fyi/data-radar/infrastructure","json_url":"https://onlylabs.fyi/data-radar/infrastructure/signals.json"}]}},"answer_pack":{"answer":"NVIDIA published NVIDIA/cuml-spark (Jupyter Notebook). This repository signal exposes tooling, eval, infrastructure, or model-adjacent work before it may appear in a launch post. High-signal details: repo NVIDIA/cuml-spark · language Jupyter Notebook. onlylabs links this event to 1 captured evidence page and 6 related repo signals. It also maps to Infrastructure in the data-business radar.","signal_desk":"repos","source_context":{"source_url":"https://github.com/NVIDIA/cuml-spark","source_host":"github.com","occurred_at":"2021-09-23T15:27:07+00:00","first_seen_at":"2026-06-09T07:00:17.261926+00:00","date_source":"source","context":"Jupyter Notebook"},"context_markers":[{"label":"Lab","value":"NVIDIA","source":"signal"},{"label":"Signal desk","value":"repos","source":"signal"},{"label":"Source host","value":"github.com","source":"source"},{"label":"Repository","value":"NVIDIA/cuml-spark","source":"source"},{"label":"Language","value":"Jupyter Notebook","source":"source"},{"label":"Stars","value":"90","source":"traction"},{"label":"Radar lane","value":"Infrastructure","source":"radar"},{"label":"Matched term","value":"gpu","source":"radar"},{"label":"Watch term","value":"Eval methodology","source":"evidence"},{"label":"Watch term","value":"Infrastructure","source":"evidence"}],"evidence_coverage":{"target_pages":1,"captured_pages":1,"readable_pages":1,"capture_methods":["plain"],"missing_page_urls":[],"failed_page_urls":[],"blocked_page_urls":[],"page_urls":["https://github.com/NVIDIA/cuml-spark"],"related_signals":6,"has_source_url":true,"latest_page_fetched_at":"2026-06-11T03:13:27.80446+00:00"},"data_business":{"matches":true,"lanes":[{"key":"infrastructure","label":"Infrastructure","url":"https://onlylabs.fyi/data-radar/infrastructure","json_url":"https://onlylabs.fyi/data-radar/infrastructure/signals.json"}],"matched_terms":["gpu"],"score":14,"reason":"NVIDIA has a repo signal matching infrastructure."},"agent_handoff":{"signal_json":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6/signal.json","dossier_json":"https://onlylabs.fyi/labs/nvidia/dossier.json","analysis_json":"https://onlylabs.fyi/analysis/nvidia/analysis.json","analysis_evidence_json":"https://onlylabs.fyi/analysis/nvidia/evidence.json","topic_signals_json":null,"topic_feed":null,"category_signals_json":"https://onlylabs.fyi/signals.json","data_radar_json":"https://onlylabs.fyi/data-radar.json","opportunities_json":"https://onlylabs.fyi/opportunities.json"},"analysis_playbook":{"objective":"Turn new repository signals into early evidence of tooling, eval, infrastructure, model-adjacent, or product work before it appears in polished launch channels.","evidence_focus":["repo name","owner","description","language","stars","source URL","first seen time","data, eval, infra, safety, and product terms"],"extraction_questions":["What technical area does this repository expose?","Does the repo imply eval, data, infrastructure, agent, or deployment work?","Is the repo new evidence for a lab direction that is not yet in writing or releases?","Which related signals should an analyst inspect next?"],"signal_questions":["What does this new repository reveal before a formal announcement exists?","What technical area does this repository expose?","Does the repo imply eval, data, infrastructure, agent, or deployment work?","Which data-business lane explains this signal: Infrastructure?","Do the 6 related repo signals show a repeated pattern?"],"output_fields":["org","repo","technical_theme","data_business_lane","evidence_url"],"data_business_relevance":"New repositories can expose organization build priorities early, especially around internal tooling, eval infrastructure, data systems, deployment, and agent workflows.","required_sources":[{"label":"signal_json","url":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6/signal.json","required":true},{"label":"source","url":"https://github.com/NVIDIA/cuml-spark","required":true},{"label":"dossier_json","url":"https://onlylabs.fyi/labs/nvidia/dossier.json","required":true},{"label":"analysis_evidence_json","url":"https://onlylabs.fyi/analysis/nvidia/evidence.json","required":true},{"label":"topic_signals_json","url":null,"required":false},{"label":"data_radar_json","url":"https://onlylabs.fyi/data-radar.json","required":true}],"expected_output":["one-paragraph source-grounded interpretation","data-business implication","confidence and missing evidence","recommended next source to inspect"],"prompt_seed":"Using only the linked onlylabs JSON, captured source context, and cited evidence, analyze NVIDIA's repo signal \"NVIDIA/cuml-spark\" for frontier lab strategy and data-business implications."},"semantic_triples":[{"subject":"NVIDIA","predicate":"published repo","object":"NVIDIA/cuml-spark","text":"NVIDIA published repo NVIDIA/cuml-spark."},{"subject":"NVIDIA/cuml-spark","predicate":"is classified as","object":"repo signal","text":"NVIDIA/cuml-spark is classified as repo signal."},{"subject":"NVIDIA/cuml-spark","predicate":"belongs to","object":"repos desk","text":"NVIDIA/cuml-spark belongs to repos desk."},{"subject":"NVIDIA/cuml-spark","predicate":"has context","object":"Jupyter Notebook","text":"NVIDIA/cuml-spark has context Jupyter Notebook."},{"subject":"NVIDIA/cuml-spark","predicate":"has evidence coverage","object":"1 captured evidence page","text":"NVIDIA/cuml-spark has evidence coverage 1 captured evidence page."},{"subject":"NVIDIA/cuml-spark","predicate":"matches data-business lanes","object":"Infrastructure","text":"NVIDIA/cuml-spark matches data-business lanes Infrastructure."},{"subject":"NVIDIA/cuml-spark","predicate":"has captured page count","object":"1","text":"NVIDIA/cuml-spark has captured page count 1."},{"subject":"NVIDIA/cuml-spark","predicate":"has readable page count","object":"1","text":"NVIDIA/cuml-spark has readable page count 1."},{"subject":"NVIDIA/cuml-spark","predicate":"has related signal count","object":"6","text":"NVIDIA/cuml-spark has related signal count 6."},{"subject":"NVIDIA/cuml-spark","predicate":"has analysis playbook objective","object":"Turn new repository signals into early evidence of tooling, eval, infrastructure, model-adjacent, or product work before it appears in polished launch channels.","text":"NVIDIA/cuml-spark has analysis playbook objective Turn new repository signals into early evidence of tooling, eval, infrastructure, model-adjacent, or product work before it appears in polished launch channels.."},{"subject":"NVIDIA/cuml-spark","predicate":"has source host","object":"github.com","text":"NVIDIA/cuml-spark has source host github.com."},{"subject":"NVIDIA/cuml-spark","predicate":"has lab","object":"NVIDIA","text":"NVIDIA/cuml-spark has lab NVIDIA."},{"subject":"NVIDIA/cuml-spark","predicate":"has signal desk","object":"repos","text":"NVIDIA/cuml-spark has signal desk repos."},{"subject":"NVIDIA/cuml-spark","predicate":"has source host","object":"github.com","text":"NVIDIA/cuml-spark has source host github.com."},{"subject":"NVIDIA/cuml-spark","predicate":"has repository","object":"NVIDIA/cuml-spark","text":"NVIDIA/cuml-spark has repository NVIDIA/cuml-spark."},{"subject":"NVIDIA/cuml-spark","predicate":"has language","object":"Jupyter Notebook","text":"NVIDIA/cuml-spark has language Jupyter Notebook."},{"subject":"NVIDIA/cuml-spark","predicate":"has stars","object":"90","text":"NVIDIA/cuml-spark has stars 90."},{"subject":"NVIDIA/cuml-spark","predicate":"has radar lane","object":"Infrastructure","text":"NVIDIA/cuml-spark has radar lane Infrastructure."},{"subject":"NVIDIA/cuml-spark","predicate":"has matched term","object":"gpu","text":"NVIDIA/cuml-spark has matched term gpu."}]},"intelligence":{"signal_desk":"repos","answer":"NVIDIA published NVIDIA/cuml-spark (Jupyter Notebook). This repository signal exposes tooling, eval, infrastructure, or model-adjacent work before it may appear in a launch post. High-signal details: repo NVIDIA/cuml-spark · language Jupyter Notebook. onlylabs links this event to 1 captured evidence page and 6 related repo signals. It also maps to Infrastructure in the data-business radar.","semantic_triples":[{"subject":"NVIDIA","predicate":"published repo","object":"NVIDIA/cuml-spark","text":"NVIDIA published repo NVIDIA/cuml-spark."},{"subject":"NVIDIA/cuml-spark","predicate":"is classified as","object":"repo signal","text":"NVIDIA/cuml-spark is classified as repo signal."},{"subject":"NVIDIA/cuml-spark","predicate":"belongs to","object":"repos desk","text":"NVIDIA/cuml-spark belongs to repos desk."},{"subject":"NVIDIA/cuml-spark","predicate":"has context","object":"Jupyter Notebook","text":"NVIDIA/cuml-spark has context Jupyter Notebook."},{"subject":"NVIDIA/cuml-spark","predicate":"has evidence coverage","object":"1 captured evidence page","text":"NVIDIA/cuml-spark has evidence coverage 1 captured evidence page."},{"subject":"NVIDIA/cuml-spark","predicate":"matches data-business lanes","object":"Infrastructure","text":"NVIDIA/cuml-spark matches data-business lanes Infrastructure."}]},"signal":{"id":"d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6","url":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6","json_url":"https://onlylabs.fyi/signals/d7fe8c3c-bdd0-4878-aec9-e7c2f1662eb6/signal.json","source_url":"https://github.com/NVIDIA/cuml-spark","title":"NVIDIA/cuml-spark","summary":"NVIDIA published a new repository. onlylabs watches repos for tooling, eval, infra, and model-adjacent work.","context":"Jupyter Notebook","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2021-09-23T15:27:07+00:00","first_seen_at":"2026-06-09T07:00:17.261926+00:00","date_source":"source","evidence_coverage":{"target_pages":1,"captured_pages":1,"readable_pages":1,"capture_methods":["plain"],"missing_page_urls":[],"failed_page_urls":[],"blocked_page_urls":[],"page_urls":["https://github.com/NVIDIA/cuml-spark"]},"facets":{"repo":"NVIDIA/cuml-spark","language":"Jupyter Notebook"},"traction":{"github_stars":90,"hn_points":null,"hn_comments":null,"hn_story_id":null,"hf_downloads":null,"hf_likes":null},"data_radar":{"lanes":[{"key":"infrastructure","label":"Infrastructure","url":"https://onlylabs.fyi/data-radar/infrastructure"}],"score":14,"matched_terms":["gpu"],"reason":"NVIDIA has a repo signal matching infrastructure."}},"primary_evidence_page":{"url":"https://github.com/NVIDIA/cuml-spark","final_url":"https://github.com/NVIDIA/cuml-spark","title":"NVIDIA/cuml-spark repository metadata","http_status":200,"content_type":"application/json","capture_method":"plain","fetched_at":"2026-06-11T03:13:27.80446+00:00","bytes":10274,"raw_path":"135ae9e1b124a1372b9b48778c1ac2a1b27bc5be051e1032bebbe7a93b58f9ba.json","content_hash":"b084ea29686bd057aef266bd98bb9a388685029846a1477cd392b959c8b12482","excerpt_chars":1200,"truncated":true,"excerpt":"NVIDIA/cuml-spark Description: Spark RAPIDS MLlib – accelerate Apache Spark MLlib with GPUs Language: Jupyter Notebook License: Apache-2.0 Stars: 90 Forks: 33 Open issues: 35 Created: 2021-09-23T15:27:07Z Pushed: 2026-06-10T04:07:46Z Default branch: main Fork: no Archived: no README: Spark Rapids ML Spark Rapids ML enables GPU accelerated distributed machine learning on [Apache Spark](https://spark.apache.org/). It provides several PySpark ML compatible algorithms powered by the [RAPIDS cuML](https://docs.rapids.ai/api/cuml/stable/) library. These APIs seek to minimize any code changes to end user Spark code. After your environment is configured to support GPUs (with drivers, CUDA toolkit, and RAPIDS dependencies), you should be able to just change an import statement or class name to take advantage of GPU acceleration. See [here](./python/README.md#clis-enabling-no-package-import-change) for experimental CLIs that enable GPU acceleration without the need for changing the `pyspark.ml` package names in an existing pyspark ml application. [![Ask DeepWiki](https://deepwiki.com/badge.svg)](https://deepwiki.com/NVIDIA/spark-rapids-ml) **Python** ```python from pyspark.ml.feature import..."},"evidence_pages":[{"url":"https://github.com/NVIDIA/cuml-spark","final_url":"https://github.com/NVIDIA/cuml-spark","title":"NVIDIA/cuml-spark repository metadata","http_status":200,"content_type":"application/json","capture_method":"plain","fetched_at":"2026-06-11T03:13:27.80446+00:00","bytes":10274,"raw_path":"135ae9e1b124a1372b9b48778c1ac2a1b27bc5be051e1032bebbe7a93b58f9ba.json","content_hash":"b084ea29686bd057aef266bd98bb9a388685029846a1477cd392b959c8b12482","excerpt_chars":1200,"truncated":true,"excerpt":"NVIDIA/cuml-spark Description: Spark RAPIDS MLlib – accelerate Apache Spark MLlib with GPUs Language: Jupyter Notebook License: Apache-2.0 Stars: 90 Forks: 33 Open issues: 35 Created: 2021-09-23T15:27:07Z Pushed: 2026-06-10T04:07:46Z Default branch: main Fork: no Archived: no README: Spark Rapids ML Spark Rapids ML enables GPU accelerated distributed machine learning on [Apache Spark](https://spark.apache.org/). It provides several PySpark ML compatible algorithms powered by the [RAPIDS cuML](https://docs.rapids.ai/api/cuml/stable/) library. These APIs seek to minimize any code changes to end user Spark code. After your environment is configured to support GPUs (with drivers, CUDA toolkit, and RAPIDS dependencies), you should be able to just change an import statement or class name to take advantage of GPU acceleration. See [here](./python/README.md#clis-enabling-no-package-import-change) for experimental CLIs that enable GPU acceleration without the need for changing the `pyspark.ml` package names in an existing pyspark ml application. [![Ask DeepWiki](https://deepwiki.com/badge.svg)](https://deepwiki.com/NVIDIA/spark-rapids-ml) **Python** ```python from pyspark.ml.feature import..."}],"related_signals":[{"id":"9c2bf9a4-d1d1-40d5-82e6-f8f753666e51","url":"https://onlylabs.fyi/signals/9c2bf9a4-d1d1-40d5-82e6-f8f753666e51","source_url":"https://github.com/NVIDIA/srt-slurm-recipes","title":"NVIDIA/srt-slurm-recipes","context":"Python","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2026-06-06T16:27:18+00:00","first_seen_at":"2026-06-09T07:00:17.261926+00:00","date_source":"source"},{"id":"69994713-c7b8-497a-9632-f22a985e3ab2","url":"https://onlylabs.fyi/signals/69994713-c7b8-497a-9632-f22a985e3ab2","source_url":"https://github.com/NVIDIA/instant-nurec","title":"NVIDIA/instant-nurec","context":"Python","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2026-05-22T18:08:59+00:00","first_seen_at":"2026-06-05T20:58:43.255815+00:00","date_source":"source"},{"id":"8e495175-9ea0-4970-8f0c-bce8e6eeddbb","url":"https://onlylabs.fyi/signals/8e495175-9ea0-4970-8f0c-bce8e6eeddbb","source_url":"https://github.com/NVIDIA/nv-config-manager","title":"NVIDIA/nv-config-manager","context":"Python","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2026-05-21T20:26:37+00:00","first_seen_at":"2026-06-05T20:58:43.255815+00:00","date_source":"source"},{"id":"20d352e8-82e7-477b-8bdf-923812420180","url":"https://onlylabs.fyi/signals/20d352e8-82e7-477b-8bdf-923812420180","source_url":"https://github.com/NVIDIA/nurec-skills","title":"NVIDIA/nurec-skills","context":"Python","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2026-05-20T18:40:04+00:00","first_seen_at":"2026-06-05T20:58:43.255815+00:00","date_source":"source"},{"id":"9ea31493-953e-4b1e-bdf1-e116d282f650","url":"https://onlylabs.fyi/signals/9ea31493-953e-4b1e-bdf1-e116d282f650","source_url":"https://github.com/NVIDIA/cosmos-framework","title":"NVIDIA/cosmos-framework","context":"Python","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2026-05-19T16:27:26+00:00","first_seen_at":"2026-06-05T20:58:43.255815+00:00","date_source":"source"},{"id":"6d0e432a-4b75-4cda-880e-54189f717d5b","url":"https://onlylabs.fyi/signals/6d0e432a-4b75-4cda-880e-54189f717d5b","source_url":"https://github.com/NVIDIA/harmonizer","title":"NVIDIA/harmonizer","context":"Python","kind":{"key":"repo_new","label":"Repo"},"org":{"slug":"nvidia","name":"NVIDIA","category":"frontier-lab"},"occurred_at":"2026-05-19T15:39:32+00:00","first_seen_at":"2026-06-05T20:58:43.255815+00:00","date_source":"source"}]}