http://i.securitythinkingcap.com/TNrgrk
styofa doing anything

Love Begins
Jules of Nature
Game of Thrones Daily
todays bird

if i look back, i am lost

❣ Chile in a Photography ❣

tannertan36
will byers stan first human second
KIROKAZE

Origami Around
Alisa U Zemlji Chuda

JBB: An Artblog!
hello vonnie
Keni

No title available
No title available

No title available

#extradirty
Peter Solarz
seen from France

seen from Singapore
seen from Brazil
seen from United States
seen from Poland
seen from France
seen from Germany

seen from Mexico

seen from United States
seen from Malaysia
seen from United States

seen from Malaysia
seen from United Kingdom

seen from United Kingdom
seen from United States

seen from Mexico
seen from Türkiye

seen from Germany

seen from Sweden

seen from Türkiye
@investigation-in-progress
http://i.securitythinkingcap.com/TNrgrk
http://securitytc.com/TNrzYf
http://securitytc.com/TNH2Cl
Baki Hanma: Blood Arena is an incredible Punch-Out! inspired fighting game with ridiculously overproportioned fighters!
Out now on Steam and Consoles
Gameplay Video:
http://securitytc.com/TN1ycJ
Auchan Hit by Major Customer Data Leak
French retail giant Auchan revealed that hundreds of thousands of loyalty card accounts were breached, exposing personal details but not banking data.
Source: SecurityWeek | Le Monde
Read more: CyberSecBrief
Transform Your GNOME Desktop to Look Like Windows 11
Do you love the modern and sleek design of Windows 11, but prefer the performance, privacy, and flexibility of Linux with GNOME? You're not alone! If you're using GNOME and want that Windows 11 look and feel, I’ve created the ultimate guide to help you transform your Linux desktop easily and beautifully.
Whether you're a seasoned Linux user or a beginner exploring customization, this setup will give your system a polished, professional appearance with the functionality you love from GNOME.
📺 VIDEO SERIES – VISUAL WALKTHROUGH
🎬 Final Result – See the Transformation
Check out what your GNOME desktop can look like when fully customized! This short video gives you a preview of the final result — a desktop environment that closely mimics Windows 11's Fluent design, complete with centered taskbar, rounded corners, and smooth animations.
🛠️ Step-by-Step Customization Tutorial
🔗 Watch Full Tutorial In this tutorial, I show you how to do everything manually — from installing themes and icons to setting up GNOME Shell extensions and tweaking the appearance. Perfect if you enjoy learning how it all works.
⚡ One Command Auto Customization Demo
🔗 Watch Demo No time to tweak everything manually? This video demonstrates how to use a single command to apply all customization instantly using the script I’ve created. Ideal for busy users or fresh installations.
🔗 Download the Full Customization Resources Here:
This is your complete toolkit to make GNOME look and feel like Windows 11. Inside this package, you’ll find all the necessary components — including GTK themes, Shell themes, icon packs, cursor themes, and fonts — that replicate the modern aesthetic of Windows 11. Whether you're customizing manually or just browsing what's available, this resource bundle gives you everything you need to start transforming your desktop today.
👉 https://www.pling.com/p/2288299/
🧑💻 SINGLE COMMAND AUTO CUSTOMIZATION:
Short on time or just want a hassle-free setup? This script is built to automate the entire customization process for you. With just one simple command, it will:
Install all required GNOME Shell extensions
Apply Fluent-style GTK, Shell, and icon themes
Set fonts, cursors, and layout tweaks
Configure the panel, app grid, and taskbar to look like Windows 11
Ideal for fresh installs or users who want instant results without manual configuration.
Available from:
https://ko-fi.com/s/543869a1f9
https://payhip.com/b/D9Mvy
https://linuxscoop.gumroad.com/l/vrwrzb
https://www.patreon.com/linuxscoop/shop/auto-customize-your-gnome-desktop-to-11-1614115
📖 DOWNLOAD DOCUMENTATION
Prefer to customize things manually or want to understand each step in detail? This comprehensive documentation provides:
Step-by-step instructions with screenshots
Theme and icon installation guides
Extension setup and configuration
Tips for troubleshooting and optimizing your setup
Perfect for both beginners who want guidance and advanced users who prefer full control over their desktop environment.
Available from:
https://ko-fi.com/s/6f84fd8edc
https://www.patreon.com/linuxscoop/shop/documentation-customize-your-gnome-to-11-1655940
https://linuxscoop.gumroad.com/l/gnome-windows
https://payhip.com/b/YD0LC
New SSL/TLS certs to each live no longer than 47 days by 2029
Source: https://www.theregister.com/2025/04/14/ssl_tls_certificates/
Don't delete that mystery empty folder. Windows put it there as a security fix
Source: https://www.theregister.com/2025/04/14/windows_update_inetpub/
Google Cloud’s BigQuery Autonomous Data To AI Platform
BigQuery automates data analysis, transformation, and insight generation using AI. AI and natural language interaction simplify difficult operations.
The fast-paced world needs data access and a real-time data activation flywheel. Artificial intelligence that integrates directly into the data environment and works with intelligent agents is emerging. These catalysts open doors and enable self-directed, rapid action, which is vital for success. This flywheel uses Google's Data & AI Cloud to activate data in real time. BigQuery has five times more organisations than the two leading cloud providers that just offer data science and data warehousing solutions due to this emphasis.
Examples of top companies:
With BigQuery, Radisson Hotel Group enhanced campaign productivity by 50% and revenue by over 20% by fine-tuning the Gemini model.
By connecting over 170 data sources with BigQuery, Gordon Food Service established a scalable, modern, AI-ready data architecture. This improved real-time response to critical business demands, enabled complete analytics, boosted client usage of their ordering systems, and offered staff rapid insights while cutting costs and boosting market share.
J.B. Hunt is revolutionising logistics for shippers and carriers by integrating Databricks into BigQuery.
General Mills saves over $100 million using BigQuery and Vertex AI to give workers secure access to LLMs for structured and unstructured data searches.
Google Cloud is unveiling many new features with its autonomous data to AI platform powered by BigQuery and Looker, a unified, trustworthy, and conversational BI platform:
New assistive and agentic experiences based on your trusted data and available through BigQuery and Looker will make data scientists, data engineers, analysts, and business users' jobs simpler and faster.
Advanced analytics and data science acceleration: Along with seamless integration with real-time and open-source technologies, BigQuery AI-assisted notebooks improve data science workflows and BigQuery AI Query Engine provides fresh insights.
Autonomous data foundation: BigQuery can collect, manage, and orchestrate any data with its new autonomous features, which include native support for unstructured data processing and open data formats like Iceberg.
Look at each change in detail.
User-specific agents
It believes everyone should have AI. BigQuery and Looker made AI-powered helpful experiences generally available, but Google Cloud now offers specialised agents for all data chores, such as:
Data engineering agents integrated with BigQuery pipelines help create data pipelines, convert and enhance data, discover anomalies, and automate metadata development. These agents provide trustworthy data and replace time-consuming and repetitive tasks, enhancing data team productivity. Data engineers traditionally spend hours cleaning, processing, and confirming data.
The data science agent in Google's Colab notebook enables model development at every step. Scalable training, intelligent model selection, automated feature engineering, and faster iteration are possible. This agent lets data science teams focus on complex methods rather than data and infrastructure.
Looker conversational analytics lets everyone utilise natural language with data. Expanded capabilities provided with DeepMind let all users understand the agent's actions and easily resolve misconceptions by undertaking advanced analysis and explaining its logic. Looker's semantic layer boosts accuracy by two-thirds. The agent understands business language like “revenue” and “segments” and can compute metrics in real time, ensuring trustworthy, accurate, and relevant results. An API for conversational analytics is also being introduced to help developers integrate it into processes and apps.
In the BigQuery autonomous data to AI platform, Google Cloud introduced the BigQuery knowledge engine to power assistive and agentic experiences. It models data associations, suggests business vocabulary words, and creates metadata instantaneously using Gemini's table descriptions, query histories, and schema connections. This knowledge engine grounds AI and agents in business context, enabling semantic search across BigQuery and AI-powered data insights.
All customers may access Gemini-powered agentic and assistive experiences in BigQuery and Looker without add-ons in the existing price model tiers!
Accelerating data science and advanced analytics
BigQuery autonomous data to AI platform is revolutionising data science and analytics by enabling new AI-driven data science experiences and engines to manage complex data and provide real-time analytics.
First, AI improves BigQuery notebooks. It adds intelligent SQL cells to your notebook that can merge data sources, comprehend data context, and make code-writing suggestions. It also uses native exploratory analysis and visualisation capabilities for data exploration and peer collaboration. Data scientists can also schedule analyses and update insights. Google Cloud also lets you construct laptop-driven, dynamic, user-friendly, interactive data apps to share insights across the organisation.
This enhanced notebook experience is complemented by the BigQuery AI query engine for AI-driven analytics. This engine lets data scientists easily manage organised and unstructured data and add real-world context—not simply retrieve it. BigQuery AI co-processes SQL and Gemini, adding runtime verbal comprehension, reasoning skills, and real-world knowledge. Their new engine processes unstructured photographs and matches them to your product catalogue. This engine supports several use cases, including model enhancement, sophisticated segmentation, and new insights.
Additionally, it provides users with the most cloud-optimized open-source environment. Google Cloud for Apache Kafka enables real-time data pipelines for event sourcing, model scoring, communications, and analytics in BigQuery for serverless Apache Spark execution. Customers have almost doubled their serverless Spark use in the last year, and Google Cloud has upgraded this engine to handle data 2.7 times faster.
BigQuery lets data scientists utilise SQL, Spark, or foundation models on Google's serverless and scalable architecture to innovate faster without the challenges of traditional infrastructure.
An independent data foundation throughout data lifetime
An independent data foundation created for modern data complexity supports its advanced analytics engines and specialised agents. BigQuery is transforming the environment by making unstructured data first-class citizens. New platform features, such as orchestration for a variety of data workloads, autonomous and invisible governance, and open formats for flexibility, ensure that your data is always ready for data science or artificial intelligence issues. It does this while giving the best cost and decreasing operational overhead.
For many companies, unstructured data is their biggest untapped potential. Even while structured data provides analytical avenues, unique ideas in text, audio, video, and photographs are often underutilised and discovered in siloed systems. BigQuery instantly tackles this issue by making unstructured data a first-class citizen using multimodal tables (preview), which integrate structured data with rich, complex data types for unified querying and storage.
Google Cloud's expanded BigQuery governance enables data stewards and professionals a single perspective to manage discovery, classification, curation, quality, usage, and sharing, including automatic cataloguing and metadata production, to efficiently manage this large data estate. BigQuery continuous queries use SQL to analyse and act on streaming data regardless of format, ensuring timely insights from all your data streams.
Customers utilise Google's AI models in BigQuery for multimodal analysis 16 times more than last year, driven by advanced support for structured and unstructured multimodal data. BigQuery with Vertex AI are 8–16 times cheaper than independent data warehouse and AI solutions.
Google Cloud maintains open ecology. BigQuery tables for Apache Iceberg combine BigQuery's performance and integrated capabilities with the flexibility of an open data lakehouse to link Iceberg data to SQL, Spark, AI, and third-party engines in an open and interoperable fashion. This service provides adaptive and autonomous table management, high-performance streaming, auto-AI-generated insights, practically infinite serverless scalability, and improved governance. Cloud storage enables fail-safe features and centralised fine-grained access control management in their managed solution.
Finaly, AI platform autonomous data optimises. Scaling resources, managing workloads, and ensuring cost-effectiveness are its competencies. The new BigQuery spend commit unifies spending throughout BigQuery platform and allows flexibility in shifting spend across streaming, governance, data processing engines, and more, making purchase easier.
Start your data and AI adventure with BigQuery data migration. Google Cloud wants to know how you innovate with data.
Pegasus 1.2: High-Performance Video Language Model
Pegasus 1.2 revolutionises long-form video AI with high accuracy and low latency. Scalable video querying is supported by this commercial tool.
TwelveLabs and Amazon Web Services (AWS) announced that Amazon Bedrock will soon provide Marengo and Pegasus, TwelveLabs' cutting-edge multimodal foundation models. Amazon Bedrock, a managed service, lets developers access top AI models from leading organisations via a single API. With seamless access to TwelveLabs' comprehensive video comprehension capabilities, developers and companies can revolutionise how they search for, assess, and derive insights from video content using AWS's security, privacy, and performance. TwelveLabs models were initially offered by AWS.
Introducing Pegasus 1.2
Unlike many academic contexts, real-world video applications face two challenges:
Real-world videos might be seconds or hours lengthy.
Proper temporal understanding is needed.
TwelveLabs is announcing Pegasus 1.2, a substantial industry-grade video language model upgrade, to meet commercial demands. Pegasus 1.2 interprets long films at cutting-edge levels. With low latency, low cost, and best-in-class accuracy, model can handle hour-long videos. Their embedded storage ingeniously caches movies, making it faster and cheaper to query the same film repeatedly.
Pegasus 1.2 is a cutting-edge technology that delivers corporate value through its intelligent, focused system architecture and excels in production-grade video processing pipelines.
Superior video language model for extended videos
Business requires handling long films, yet processing time and time-to-value are important concerns. As input films increase longer, a standard video processing/inference system cannot handle orders of magnitude more frames, making it unsuitable for general adoption and commercial use. A commercial system must also answer input prompts and enquiries accurately across larger time periods.
Latency
To evaluate Pegasus 1.2's speed, it compares time-to-first-token (TTFT) for 3–60-minute videos utilising frontier model APIs GPT-4o and Gemini 1.5 Pro. Pegasus 1.2 consistently displays time-to-first-token latency for films up to 15 minutes and responds faster to lengthier material because to its video-focused model design and optimised inference engine.
Performance
Pegasus 1.2 is compared to frontier model APIs using VideoMME-Long, a subset of Video-MME that contains films longer than 30 minutes. Pegasus 1.2 excels above all flagship APIs, displaying cutting-edge performance.
Pricing
Cost Pegasus 1.2 provides best-in-class commercial video processing at low cost. TwelveLabs focusses on long videos and accurate temporal information rather than everything. Its highly optimised system performs well at a competitive price with a focused approach.
Better still, system can generate many video-to-text without costing much. Pegasus 1.2 produces rich video embeddings from indexed movies and saves them in the database for future API queries, allowing clients to build continually at little cost. Google Gemini 1.5 Pro's cache cost is $4.5 per hour of storage, or 1 million tokens, which is around the token count for an hour of video. However, integrated storage costs $0.09 per video hour per month, x36,000 less. Concept benefits customers with large video archives that need to understand everything cheaply.
Model Overview & Limitations
Architecture
Pegasus 1.2's encoder-decoder architecture for video understanding includes a video encoder, tokeniser, and big language model. Though efficient, its design allows for full textual and visual data analysis.
These pieces provide a cohesive system that can understand long-term contextual information and fine-grained specifics. It architecture illustrates that tiny models may interpret video by making careful design decisions and solving fundamental multimodal processing difficulties creatively.
Restrictions
Safety and bias
Pegasus 1.2 contains safety protections, but like any AI model, it might produce objectionable or hazardous material without enough oversight and control. Video foundation model safety and ethics are being studied. It will provide a complete assessment and ethics report after more testing and input.
Hallucinations
Occasionally, Pegasus 1.2 may produce incorrect findings. Despite advances since Pegasus 1.1 to reduce hallucinations, users should be aware of this constraint, especially for precise and factual tasks.
Public DNS servers are freely accessible resolvers that offer DNS services with varying levels of security, including features like content filtering, DNS-over-TLS, and DNS-over-HTTPS
Here is a quick comparison of public DNS servers 😎👆
Find high-res pdf books with all my cybersecurity infographics at https://study-notes.org
EA Releases Source Code For Old Command and Conquer Games
http://i.securitythinkingcap.com/TJDgQk
The GitVenom campaign: cryptocurrency theft using GitHub
Source: https://securelist.com/gitvenom-campaign/115694/
Google Cloud introduces quantum-safe digital signatures in KMS
Source: https://www.bleepingcomputer.com/news/security/google-cloud-introduces-quantum-safe-digital-signatures-in-kms/
More info: https://cloud.google.com/blog/products/identity-security/announcing-quantum-safe-digital-signatures-in-cloud-kms
Cybercriminals Use Eclipse Jarsigner to Deploy XLoader Malware via ZIP Archives
Source: https://thehackernews.com/2025/02/cybercriminals-use-eclipse-jarsigner-to.html
More info: https://asec.ahnlab.com/en/84574/
North Korean Hackers Target Freelance Developers in Job Scam to Deploy Malware
Source: https://thehackernews.com/2025/02/north-korean-hackers-target-freelance.html
More info: https://www.welivesecurity.com/en/eset-research/deceptivedevelopment-targets-freelance-developers/