Latest Tutorials

Learn about the latest technologies from fellow newline community members!

  • React
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  • React
  • Angular
  • Vue
  • Svelte
  • NextJS
  • Redux
  • Apollo
  • Storybook
  • D3
  • Testing Library
  • JavaScript
  • TypeScript
  • Node.js
  • Deno
  • Rust
  • Python
  • GraphQL
    NEW

    Top 10 Real‑World Applications of Reinforcement Learning

    Watch: Industrial Applications of Reinforcement Learning • Phil Winder • GOTO 2020 by GOTO Conferences Reinforcement learning (RL) powers dynamic decision-making across industries by enabling systems to learn optimal actions through trial and error. Below is a structured overview of its top applications, followed by key insights to guide implementation.. For structured learning, platforms like Newline’s AI Bootcamp provide hands-on projects and source code to master RL implementation..
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      AI for Decision Making vs Human Judgment: Which Wins?

      Watch: Humans vs. AI: Who should make the decision? by IBM Technology When deciding between AI-driven decisions and human judgment, the choice depends on workload patterns, cost structures, and integration complexity. Below is a structured comparison to highlight trade-offs and practical considerations. AI Decision-Making excels in repetitive, data-heavy tasks like fraud detection or inventory management. For example, AI can flag 98% of fraudulent transactions in real time, reducing manual review by 70%. However, it struggles with nuanced scenarios, such as ethical dilemmas in healthcare triage. As mentioned in the Why AI for Decision Making Matters section, AI’s ability to process vast data volumes makes it indispensable for scalability.
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        NEW

        Pattern Recognition and AI Techniques

        Pattern recognition is a cornerstone of AI, enabling systems to identify meaningful structures in data and make predictions. As mentioned in the Introduction to Pattern Recognition section, this process forms the foundation for many AI applications. This section breaks down key techniques, their implementation challenges, and how structured learning can accelerate mastery. AI leverages diverse methods to detect patterns, each with distinct applications and complexities. Building on concepts from the AI Techniques for Pattern Recognition section, a structured comparison helps clarify their strengths and trade-offs: AI transforms pattern recognition by automating tasks that traditionally required manual analysis. For example, deep learning models can detect cancerous cells in medical images with 95%+ accuracy, surpassing human radiologists in some cases. See the AI Inferences and Pattern Recognition section for more details on how these models achieve such high precision. Reinforcement learning , used in self-driving cars, continuously adapts to road patterns in real-time. However, these systems demand large datasets and significant computational resources, with training costs for models like GPT-4 reaching $100,000+ per iteration.
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          Everyone's Talking About Clawdbot. Here's What You're Missing.

          Watch: Clawdbot Changes Everything by Samuel Gregory Everyone’s buzzing about Clawdbot, but the real value lies in its practical, self-hosted capabilities. This AI-powered personal assistant automates tasks like email sorting, calendar management, and even flight check-ins via WhatsApp or Telegram. Unlike consumer tools like Siri or Google Assistant, Clawdbot offers persistent memory , shell command access, and integration with local systems—making it ideal for power users. Below is a structured breakdown of its key features, setup demands, and how it stacks up against alternatives. Clawdbot stands out with its ability to automate repetitive tasks while maintaining access to a user’s local environment. For example, it can run shell commands , browse the web, and manage files—ideal for developers or sysadmins. A notable use case includes AJ Stuyvenberg’s experience where Clawdbot purchased a car after linking it to relevant accounts. Its persistent memory ensures it learns user preferences over time, unlike tools like Alexa or Siri, which reset context after interactions.
          Thumbnail Image of Tutorial Everyone's Talking About Clawdbot. Here's What You're Missing.
            NEW

            AI Predictive Maintenance with Prefix-Tuning+

            Implementing AI predictive maintenance with Prefix-Tuning+ offers a parameter-efficient approach to optimizing equipment reliability and reducing downtime. Below is a structured breakdown of key insights, comparisons, and implementation considerations. Prefix-Tuning+ stands out for its ability to fine-tune pre-trained models using task-specific prefixes, reducing computational costs by up to 70% compared to full retraining. For foundational details on how this technique works, see the section. As mentioned in the section, API integration tools like FastAPI play a critical role in real-time deployment. For example, GE Vernova uses digital twins for gas turbine monitoring, but Prefix-Tuning+ could further cut maintenance costs by adapting models to new equipment without retraining the entire architecture . Difficulty ratings (1–10 scale) :
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