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The TechBeat: Linux Foundation Launches Agentic AI Group to Set Standards for Autonomous Systems (12/14/2025)

2025-12-14 15:10:54

How are you, hacker? 🪐Want to know what's trending right now?: The Techbeat by HackerNoon has got you covered with fresh content from our trending stories of the day! Set email preference here. ## The Architecture of Collaboration: A Practical Framework for Human-AI Interaction By @theakashjindal [ 7 Min read ] AI focus shifts from automation to augmentation ("Collaborative Intelligence"), pairing AI speed with human judgment to boost productivity. Read More.

Free .cv Domains for Everyone: A Tiny Island Nation Is Rewriting the Future of Professional Profiles

By @cv-domain [ 5 Min read ] The .cv domain is shaping a new global identity layer in the AI era, as Cape Verde and Ola.cv build an open, DNS-anchored alternative to LinkedIn. Read More.

Why More VARs and SIs Are Embedding Melissa Into Their Enterprise Solutions

By @melissaindia [ 5 Min read ] Partner with Melissa to empower VARs and SIs with accurate data, seamless integrations, and scalable verification tools for smarter, faster client solutions. Read More.

Best AI Automation Platforms for Building Smarter Workflows in 2026

By @stevebeyatte [ 7 Min read ] From no-code tools to enterprise AI systems, discover the top AI workflow automation platforms to use in 2026, and learn which solution fits your business needs Read More.

How a Data Engineer-Turned-Music-Producer Is Revolutionizing Spatial Intelligence

By @stevebeyatte [ 3 Min read ] Read the story of a Romanian engineer-musician blending creativity and ML to build human-centric AI cameras while keeping his passion for music alive. Read More.

Why DataOps Is Becoming Everyone’s Job—and How to Excel at It

By @minio [ 4 Min read ] As DataOps becomes central to modern data work, learn what defines great DataOps engineering—and why fast, high-performance object storage is essential. Read More.

Reversing Immigration With Simple Coding! No Walls, Laws, Taxes, or Conflicts!

By @chris127 [ 7 Min read ] A blockchain-based UBI pegged to water prices eliminates economic desperation driving migration. No walls, laws, or taxes! Read More.

Three Numbers. That’s All Your AI Needs to Work

By @josecrespophd [ 11 Min read ] Three overlooked eigenvalue diagnostics can predict whether your AI will succeed, fail, or silently collapse. Here’s the 1950s math the industry keeps ignoring. Read More.

Introducing the Genies Avatar SDK: Integrate High-Fidelity, Customizable Avatars into Your Game

By @genies [ 4 Min read ] Genies Avatar Framework is a flexible system for building high-quality avatars that fit naturally into any game world. Read More.

How To Power AI, Analytics, and Microservices Using the Same Data

By @confluent [ 6 Min read ] Adam Bellemare explains how data streaming unifies AI, analytics, and microservices—solving data access challenges through real-time, scalable pipelines. Read More.

How Iceberg + AIStor Power the Modern Multi-Engine Data Lakehouse

By @minio [ 11 Min read ] Learn how Apache Iceberg paired with AIStor forms a high-performance, scalable lakehouse architecture with SQL features, snapshots, & multi-engine support. Read More.

How AIStor’s Prompt API Lets Healthcare Professionals “Talk” to Their Data

By @minio [ 4 Min read ] MinIO’s Prompt API in AIStor lets healthcare teams query unstructured data with natural language, speeding research, imaging analysis, and patient care. Read More.

Meet Ignatius Sani - HackerNoon Blogging Course Facilitator

By @hackernoon-courses [ 3 Min read ] Meet Ignatius Sani - a HackerNoon Blogging Course Facilitator and hear his journey from software engineering to technical writing. Read More.

Linux Foundation Launches Agentic AI Group to Set Standards for Autonomous Systems

By @ainativedev [ 4 Min read ] OpenAI, Anthropic, Block, and other major tech players have united to launch the Agentic AI Foundation. Read More.

You’re a Business, Man: How Blogging Builds Authority, Opportunity, and Income

By @hackernoon-courses [ 3 Min read ] Learn how consistent blogging builds authority, opportunity, and income. Join the HackerNoon Blogging Fellowship to grow your skills and career. Read More.

What 10 PB of Cold Data Really Costs in AWS, GCP, Azure vs Tape Over 20 Years

By @carlwatts [ 11 Min read ] A CFO-friendly deep dive into cloud repatriation: real math on 10 PB in AWS/GCP/Azure vs building your own tape-backed object storage tier. Read More.

I Don’t Trust AI to Write My Code—But I Let It Read Everything

By @capk [ 8 Min read ] Tools like Copilot, Cursor, and Claude already save me hours every week by reading code, exploring messy open-source projects, and filling gaps where necessary. Read More.

Obscura Brings Bulletproofs++ to the Beldex Mainnet for Sustainable Scaling

By @beldexcoin [ 3 Min read ] The obscura hardfork enabled Bulletproofs++ on the Beldex mainnet at block height 4939549. Learn what this upgrades means for you. Read More.

How to Add Real-Time Web Search to Your LLM

By @manishmshiva [ 5 Min read ] Learn how to connect Tavily Search so your AI can fetch real-time facts instead of guessing. Read More.

Stop "Shotgun Debugging": How to Use AI to Solve Bugs Like a Forensic Scientist

By @huizhudev [ 5 Min read ] Turn your LLM into a ruthlessly efficient root cause analyst that catches what you miss. Read More. 🧑‍💻 What happened in your world this week? It's been said that writing can help consolidate technical knowledge, establish credibility, and contribute to emerging community standards. Feeling stuck? We got you covered ⬇️⬇️⬇️ ANSWER THESE GREATEST INTERVIEW QUESTIONS OF ALL TIME We hope you enjoy this worth of free reading material. Feel free to forward this email to a nerdy friend who'll love you for it. See you on Planet Internet! With love, The HackerNoon Team ✌️

Open-Set Semantic Extraction: Grounded-SAM, CLIP, and DINOv2 Pipeline

2025-12-14 04:00:04

Table of Links

Abstract and 1 Introduction

  1. Related Works

    2.1. Vision-and-Language Navigation

    2.2. Semantic Scene Understanding and Instance Segmentation

    2.3. 3D Scene Reconstruction

  2. Methodology

    3.1. Data Collection

    3.2. Open-set Semantic Information from Images

    3.3. Creating the Open-set 3D Representation

    3.4. Language-Guided Navigation

  3. Experiments

    4.1. Quantitative Evaluation

    4.2. Qualitative Results

  4. Conclusion and Future Work, Disclosure statement, and References

3.2. Open-set Semantic Information from Images

\ 3.2.1. Open-set Semantic and Instance Masks Detection

\ The recently released Segment Anything model (SAM) [21] has gained significant popularity among researchers and industrial practitioners due to its cutting-edge segmentation capabilities. However, SAM tends to produce an excessive number of segmentation masks for the same object. We adopt the Grounded-SAM [32] model for our methodology to address this. This process involves generating a set of masks in three stages, as depicted in Figure 2. Initially, a set of text labels is created using the Recognizing Anything model (RAM) [33]. Subsequently, bounding boxes corresponding to these labels are created using the Grounding DINO model [25]. The image and the bounding boxes are then input into SAM to generate class-agnostic segmentation masks for the objects seen in the image. We provide a detailed explanation of this approach below, which effectively mitigates the problem of over-segmentation by incorporating semantic insights from RAM and Grounding-DINO.

\ The RAM model) [33] processes the input RGB image to produce semantic labelling of the object detected in the image. It is a robust foundational model for image tagging, showcasing remarkable zero-shot capability in accurately identifying various common categories. The output of this model associates every input image with a set of labels that describe the object categories in the image. The process begins with accessing the input image and converting it to the RGB colour space, then resized to fit the model’s input requirements, and finally transforming it into a tensor, making it compatible with the analysis by the model. Following this, the RAM model generates labels, or tags, that describe the various objects or features present within the image. A filtration process is employed to refine the generated labels, which involves the removal of unwanted classes from these labels. Specifically, irrelevant tags such as ”wall”, ”floor”, ”ceiling”, and ”office” are discarded, along with other predefined classes deemed unnecessary for the context of the study. Additionally, this stage allows for the augmentation of the label set with any required classes not initially detected by the RAM model. Finally, all pertinent information is aggregated into a structured format. Specifically, each image is catalogued within the img_dict dictionary, which records the image’s path alongside the set of generated labels, thus ensuring an accessible repository of data for subsequent analysis.

\ Following the tagging of the input image with generated labels, the workflow progresses by invoking the Grounding DINO model [25]. This model specializes in grounding textual phrases to specific regions within an image, effectively delineating target objects with bounding boxes. This process identifies and spatially localizes objects within the image, laying the groundwork for more granular analyses. After identifying and localising objects via bounding boxes, the Segment Anything Model (SAM) [21] is employed. The SAM model’s primary function is to generate segmentation masks for the objects within these bounding boxes. By doing so, SAM isolates individual objects, enabling a more detailed and object-specific analysis by effectively separating the objects from their background and each other within the image.

\ At this point, instances of objects have been identified, localized, and isolated. Each object is identified with various details, including the bounding box coordinates, a descriptive term for the object, the likelihood or confidence score of the object’s existence expressed in logits, and the segmentation mask. Furthermore, every object is associated with CLIP and DINOv2 embedding features, details of which are elaborated in the following subsection.

\ 3.2.2. The Semantic Embedding Extraction

\ To improve our comprehension of the semantic aspects of object instances that have been segmented and masked within our images, we employ two models, CLIP [9] and DINOv2 [10], to derive the feature representations from the cropped images of each object. A model trained exclusively with CLIP achieves a robust semantic understanding of images but cannot discern depth and intricate details within those images. On the other hand, DINOv2 demonstrates superior performance in depth perception and excels at identifying nuanced pixel-level relationships across images. As a self-supervised Vision Transformer, DINOv2 can extract nuanced feature details without relying on annotated data, making it particularly effective at identifying spatial relationships and hierarchies within images. For instance, while the CLIP model might struggle to differentiate between two chairs of different colours, such as red and green, DINOv2’s capabilities allow such distinctions to be made clearly. To conclude, these models capture both the semantic and visual features of the objects, which are later used for similarity comparisons in the 3D space.

\ Figure 3. Clustering in 3D of object instances using semantic and geometric features. Semantic similarity is verified using CLIP and DINOv2 embeddings. Geometric similarity is verified using 3D bounding boxes and overlap matrices.

\ A set of pre-processing steps is implemented for processing images with the DINOv2 model. These include resizing, centre cropping, converting the image to a tensor, and normalizing the cropped images delineated by the bounding boxes. The processed image is then fed into the DINOv2 model alongside labels identified by the RAM model to generate the DINOv2 embedding features. On the other hand, when dealing with the CLIP model, the pre-processing step involves transforming the cropped image into a tensor format compatible with CLIP, followed by the computation of embedding features. These embeddings are critical as they encapsulate the objects’ visual and semantic attributes, which are crucial for a comprehensive understanding of the objects in the scene. These embeddings undergo normalization based on their L2 norm, which adjusts the feature vector to a standardized unit length. This normalization step enables consistent and fair comparisons across different images.

\ In the implementation phase of this stage, we iterate over each image within our data and execute the subsequent procedures:

\ (1) The image is cropped to the region of interest using the bounding box coordinates provided by the Grounding DINO model, isolating the object for detailed analysis.

\ (2) Generate DINOv2 and CLIP embeddings for the cropped image.

\ (3) Finally, the embeddings are stored back along with the masks from the previous section.

\ With these steps completed, we now possess detailed feature representations for each object, enriching our dataset for further analysis and application.

\

:::info Authors:

(1) Laksh Nanwani, International Institute of Information Technology, Hyderabad, India; this author contributed equally to this work;

(2) Kumaraditya Gupta, International Institute of Information Technology, Hyderabad, India;

(3) Aditya Mathur, International Institute of Information Technology, Hyderabad, India; this author contributed equally to this work;

(4) Swayam Agrawal, International Institute of Information Technology, Hyderabad, India;

(5) A.H. Abdul Hafez, Hasan Kalyoncu University, Sahinbey, Gaziantep, Turkey;

(6) K. Madhava Krishna, International Institute of Information Technology, Hyderabad, India.

:::


:::info This paper is available on arxiv under CC by-SA 4.0 Deed (Attribution-Sharealike 4.0 International) license.

:::

\

Warp Scraps Tiered Plans as AI Coding Tools Face Pricing Reckoning

2025-12-14 02:59:59

Warp is changing how it charges users, making it the latest in a string of coding-tool companies to revise their pricing models.

Virtual Reality: A Bold New Era for Workforce Learning

2025-12-14 01:00:04

\ Every generation thinks it has reinvented learning. Slides replaced chalkboards. E learning replaced slides. Then came microlearning, gamification, bite-sized content, and apps that flood employees with “nudges.”

\ Yet, ask any HR team a simple question.

\ Are employees actually learning faster today?

\ The honest answer is usually no.

\ Workforces are drowning in content but starved for environments that actually change how people think, feel, and act. The problem is not a lack of information. It is a lack of immersion, a lack of presence, and a lack of emotional engagement. Human beings do not learn through text alone. They learn through states of attention. They learn through experience.

\ This is where virtual reality quietly steps onto the stage. Not as entertainment, not as a toy, and not as a gimmick. As a fundamentally different way to create learning states that the brain treats as real.

\ VR is not the next version of e learning.

\ VR is the first medium that lets us engineer experiences, not just deliver content.

The Limits of Legacy Learning

Let us start by being blunt. Most workforce learning is built around the limitations of 20th-century classrooms. Linear, verbal, abstract, and detached from emotional consequence.

\ You can recognize the symptoms:

  • People click through modules while checking email \n \n
  • The brain treats the content as background noise \n \n
  • Retention drops within days \n \n
  • Real behavior at work barely changes \n \n

This is not a failure of motivation. It is a failure of design. The human nervous system simply does not treat passive content as signals worth updating. The amygdala, which filters for relevance and threat, sees no stakes. The hippocampus, which encodes memory, sees no novelty. The prefrontal cortex, which manages attention, is already tired from a full day of task switching.

\ Legacy learning is cognitively expensive and emotionally flat. Which means the brain invests little in it.

\ Workers are not disengaged from learning because they are lazy.

\ They are disengaged because their biology is boring.

VR Bypasses the Bottlenecks

Virtual reality breaks this pattern because it communicates with the brain on its own terms.

\ VR does three things that traditional learning cannot.

1. It captures full attention by design

In VR, you cannot multitask. The browser tabs vanish. Slack notifications vanish. Visual and auditory channels are controlled, which means attention is controlled. The brain cannot treat the environment as background. It becomes the foreground.

\ For HR and L and D teams, attention is the rarest currency. VR gives you the ability to buy it.

2. It creates emotional learning, not informational learning

People remember experiences, not lectures.

\ Fear, challenge, mastery, and empathy leave deep traces in memory.

\ VR can simulate:

  • A difficult conversation with a distressed patient \n \n
  • A high-pressure negotiation \n \n
  • A safety hazard unfolding in real time \n \n
  • A moment of leadership under conflict \n \n
  • A situation where emotional regulation determines the outcome \n \n

These are “hot cognition” experiences. They activate the emotional circuitry that makes memory sticky and behavior change possible.

\ Traditional learning asks the brain to imagine.

\ VR lets the brain experience.

3. It compresses time

A well-designed VR module accomplishes in ten minutes what a classroom session takes an hour to convey. Why? Because immersion removes the need for long explanations. The environment teaches.

\ People do not decode instructions.

\ They feel the consequences of their decisions.

\ The nervous system updates faster because it is operating inside a simulated feedback loop, not a hypothetical one.

The workplace version of a flight simulator.

Aviation figured this out long ago. No one teaches pilots by giving them a PDF and a quiz. They put them in simulators where mistakes do not kill anyone, but the brain treats them as real events.

\ Work has reached the same level of complexity.

\ Modern employees navigate:

  • AI-powered systems \n \n
  • Emotional labor \n \n
  • High-consequence decisions \n \n
  • Customer interactions with reputational risk \n \n
  • Safety protocols that cannot fail \n \n
  • Volatile team dynamics \n \n
  • Constant adaptation \n \n

Yet, we train them with slideshows.

\ VR offers the workplace equivalent of a flight simulator.

\ It lets organizations stress test skills without real-world cost.

\ Imagine if:

  • A new nurse could practice delivering bad news in a safe environment \n \n
  • A manager could rehearse conflict resolution before touching a real conflict \n \n
  • A field technician could make mistakes in a zero-risk simulation \n \n
  • A customer support employee could train for peak surge scenarios \n \n
  • A cybersecurity analyst could practice responding to a live attack simulation \n \n

This is training with stakes, and stakes are what make the brain care.

The Missing Link: Emotional and Cognitive Recovery

Most companies adopt VR for safety or technical skills.

\ The next frontier is emotional and cognitive performance.

\ In fast-changing environments, people do not fail because they lack knowledge. They fail because the nervous system becomes overwhelmed.

\ VR allows something unusual.

\ It can downregulate the nervous system in minutes.

\ Short reset environments calm the threat response, slow breathing, re-anchor attention, and restore cognitive capacity. This is not entertainment. It is the emotional version of clearing RAM so performance can continue.

\ Employees under pressure do not need more content.

\ They need the ability to reboot their internal operating system.

\ VR makes this possible at scale, inside the workday.

Why VR has finally crossed the threshold.

For years, VR was a promise waiting for hardware to catch up. Now, the pieces are aligned.

  • Lightweight headsets are affordable \n \n
  • Graphics are smooth enough for immersion \n \n
  • Organizations already invest in digital learning ecosystems \n \n
  • Hybrid and distributed work made experiential training necessary \n \n
  • AI can generate dynamic scenarios based on user behavior \n \n

The question is no longer “Will VR enter the workforce?” but “How fast will it become standard?”

\ If PowerPoint was the language of 2000, and e learning was the language of 2010, VR will be the language of 2030.

\ Because it is the only medium that mimics the features humans learn from best.

\ Experience.

A bold new era is starting.

The shift to VR is not a technological trend. It is a philosophical correction.

\ We are finally building learning systems that respect the realities of human biology and cognition. Systems where people do not passively consume content but live through simulations that matter.

\ In the next decade, workforce learning will not be judged by how much content you produce.

\ It will be judged by how effectively you engineer states of attention, emotion, and presence.

\ Those who adopt VR early will gain a workforce that learns faster, adapts faster, and recovers faster.

\ The organizations that cling to old formats will still be asking why their people “don’t retain anything.”

\ Because the truth is simple.

\ The human brain evolved for immersive experience.

\ VR is the first technology that finally gives it one.

The HackerNoon Newsletter: Flight Recorder: A New Go Execution Tracer (12/13/2025)

2025-12-14 00:02:05

How are you, hacker?


🪐 What’s happening in tech today, December 13, 2025?


The HackerNoon Newsletter brings the HackerNoon homepage straight to your inbox. On this day, Sir Francis Drake Sets Sail on Circumnavigation Voyage in 1577, Saddam Hussein is Captured in 2003, Nanking is Raised and Destroyed in 1937, and we present you with these top quality stories. From 10 Proven Ways to Reduce Misalignment Between Stakeholders in Product Teams to Flight Recorder: A New Go Execution Tracer, let’s dive right in.

Flight Recorder: A New Go Execution Tracer


By @Go [ 11 Min read ] Flight recording is now available in Go 1.25, and it’s a powerful new tool in the Go diagnostics toolbox. Read More.

10 Proven Ways to Reduce Misalignment Between Stakeholders in Product Teams


By @suhasanpm [ 3 Min read ] Learn 10 proven strategies product managers use to reduce stakeholder misalignment and ship faster with clarity, metrics, and trust. Read More.


🧑‍💻 What happened in your world this week?

It's been said that writing can help consolidate technical knowledge, establish credibility, and contribute to emerging community standards. Feeling stuck? We got you covered ⬇️⬇️⬇️


ANSWER THESE GREATEST INTERVIEW QUESTIONS OF ALL TIME


We hope you enjoy this worth of free reading material. Feel free to forward this email to a nerdy friend who'll love you for it.See you on Planet Internet! With love, The HackerNoon Team ✌️