[logseq-plugin-git:commit] 2026-01-05T16:41:14.179Z
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icon:: ✏️
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generation_time:: [[2026-01-05]] T06:00:15Z
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generation_time:: [[2026-01-05]] T16:00:15Z
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- # **TODOs and IDEAs**
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- {{query (and [[TODO]] [[KaraKeep-Highlights]] (or [[Ideas]] [[KaraKeep-Highlights]]))}}
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@@ -18,7 +18,6 @@ generation_time:: [[2026-01-05]] T06:00:15Z
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- Nello studio condotto su studenti delle scuole superiori pubblicato su CNS Spectrums, i ricercatori hanno registrato il 5,4% degli studenti nella categoria di “internet addicted”; percentuali preoccupanti sono emerse anche per altre dipendenze: il 16% degli studenti ha ottenuto per esempio punteggi talmente alti nella scala dedicata al gioco d’azzardo da essere classificato nella fascia clinica definita come “problema estremo”
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background-color:: green
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- > **Note:** #card
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- ## **Crans-Montana, la fine dell’illusione del controllo: noi genitori “geolocalizzatori” spiazzati davanti al caso e alla morte**
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source:: https://www.famigliacristiana.it/attualita/mondo/strage-crans-montana-commento-alberto-pellai-c14e8w5a
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url:: https://karakeep.diruscio.org/dashboard/preview/etrrlkwkha6j81s1nakgzqui
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@@ -26,7 +25,6 @@ generation_time:: [[2026-01-05]] T06:00:15Z
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- che quasi sempre sa accoglierti con opportunità che non coglieresti mai se rinunciassi ad andarlo a cercare, rimanendo nel territorio ultraprotetto della tua comfort zone.
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background-color:: green
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- > **Note:** Il Coraggio di vivere
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- ## **Top AI Agentic Workflow Patterns**
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source:: https://blog.bytebytego.com/p/top-ai-agentic-workflow-patterns
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url:: https://karakeep.diruscio.org/dashboard/preview/iz529wt1xybxstag5cmcrl1l
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@@ -48,7 +46,6 @@ generation_time:: [[2026-01-05]] T06:00:15Z
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- In the tool use pattern, agents are equipped with a set of capabilities they can invoke when needed. These might include web search engines for finding current information, APIs for accessing services like weather data or stock prices, code interpreters for running programs and performing calculations, database query tools for retrieving specific records, file system access for reading and writing documents, and countless other specialized functions. The critical distinction from traditional software is that the agent itself decides when and how to use these tools based on the task at hand.
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background-color:: blue
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- > **Note:** Tool use pattern
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- ## **GitHub - muratcankoylan/Agent-Skills-for-Context-Engineering: A comprehensive collection of Agent Skills for context engineering, multi-agent architectures, and production agent systems. Use when building, optimizing, or debugging agent systems that require effective context management.**
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source:: https://github.com/muratcankoylan/Agent-Skills-for-Context-Engineering
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url:: https://karakeep.diruscio.org/dashboard/preview/mujjzfwwjb2xbqiugz3i92nv
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@@ -60,7 +57,6 @@ generation_time:: [[2026-01-05]] T06:00:15Z
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- Effective context engineering means finding the smallest possible set of high-signal tokens that maximize the likelihood of desired outcomes.
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background-color:: blue
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- > **Note:** #card
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- ## **7 Tiny AI Models for Raspberry Pi - KDnuggets**
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source:: https://www.kdnuggets.com/7-tiny-ai-models-for-raspberry-pi
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url:: https://karakeep.diruscio.org/dashboard/preview/wrwx75un37buyqnusi33ygm7
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@@ -77,4 +73,4 @@ generation_time:: [[2026-01-05]] T06:00:15Z
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- > **Note:** Vision Language Models (VLMs) are powerful AI systems that merge computer vision and natural language processing, allowing them to understand, interpret, and generate content from both images/videos and text inputs, enabling tasks like describing photos (captioning), answering questions about visuals (VQA), generating images from text, and understanding complex documents. #card
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- Tiny models have reached a point where size is no longer a limitation to capability. The Qwen 3 series stands out in this list, delivering performance that rivals much larger language models and even challenges some proprietary systems. If you are building applications for a Raspberry Pi or other low-power devices, Qwen 3 is an excellent starting point and well worth integrating into your setup.
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background-color:: green
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- > **Note:** #IMPORTANT
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- > **Note:** #IMPORTANT
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