Latest Tutorials

Learn about the latest technologies from fellow newline community members!

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

AI Everywhere, Human Remains Central

Watch: Could AI End Humanity in Five Years? Ronny Chieng Investigates | The Daily Show by The Daily Show Human centrality remains the cornerstone of AI-driven business success, ensuring ethical, effective, and sustainable outcomes. While AI systems excel at processing data and automating tasks, human judgment, creativity, and ethical oversight are irreplaceable. This balance is critical for maintaining trust, aligning technology with real-world needs, and addressing complex challenges that algorithms alone cannot solve. Below, we unpack the evidence, examples, and implications of this human-first approach. Human-centric AI isn’t just a proven strategy for solving critical business challenges. For example, central banks have adopted AI copilots (like chatbots and data analysis tools) to enhance productivity while maintaining human expertise for governance and ethical decisions. According to a 2024 survey of 52 central banks, 83% reported increased complexity in workforce planning due to AI adoption. This highlights the need for retraining and upskilling, as 90% of banks now find recruitment more challenging. By prioritizing human adaptability over automation, organizations can manage these shifts without losing institutional knowledge or ethical accountability.
Thumbnail Image of Tutorial AI Everywhere, Human Remains Central
NEW

PostgreSQL Surpasses OpenAI in AI Development

Watch: OpenAI Runs On Postgres! by Mehul Mohan PostgreSQL plays a critical role in AI development by combining scalability, flexibility, and cost-effectiveness for managing large-scale, high-performance workloads. Its ability to handle read-heavy AI applications, integrate vector search capabilities, and use managed cloud services makes it a foundational tool for companies like OpenAI. Below, we break down its importance through real-world examples, technical advantages, and comparisons with alternatives.. PostgreSQL’s architecture supports read-heavy AI applications with read replicas and optimized query tuning. OpenAI, for instance, runs 1 million queries per second (QPS) using 40 read replicas on Azure’s managed PostgreSQL service, demonstrating its capacity to handle planetary-scale workloads. This setup avoids sharding-a complex and maintenance-heavy strategy-by prioritizing read scalability, which aligns with many AI pipelines that emphasize data retrieval over frequent writes.
Thumbnail Image of Tutorial PostgreSQL Surpasses OpenAI in AI Development

I got a job offer, thanks in a big part to your teaching. They sent a test as part of the interview process, and this was a huge help to implement my own Node server.

This has been a really good investment!

Advance your career with newline Pro.

Only $40 per month for unlimited access to over 60+ books, guides and courses!

Learn More
NEW

Multi Agent Deep RL with LoRA and QLoRA

Watch: LoRA & QLoRA Fine-tuning Explained In-Depth by Mark Hennings The demand for MARL has surged as industries seek solutions for dynamic, multi-participant environments. In robotics, agents coordinate tasks like warehouse logistics, where autonomous robots must manage shared spaces and avoid collisions. Game playing, such as in StarCraft II, relies on MARL to simulate strategic interactions between teams. Autonomous vehicles use MARL to manage traffic flow and emergency response scenarios. According to the YC-Bench job posting, the field is evolving toward long-horizon planning, where agents must execute multi-step strategies-like managing a simulated startup’s resources-over extended periods. ToolBrain , as detailed in the Implementing Multi Agent Deep RL with LoRA and QLoRA section, demonstrates how MARL frameworks can train agents to use tools effectively, bridging the gap between research and real-world deployment. MARL excels in scenarios requiring coordination and communication among agents. For example, the ToolBrain framework employs a Coach-Athlete paradigm to orchestrate agents in complex workflows, such as answering email queries through sequential search and synthesis. This mirrors real-world applications like emergency response systems, where multiple drones or robots must share data in real time. Another case study involves the MAPLE dataset , where LoRA -tuned models automate label placement on maps by reasoning over cartographic guidelines. These examples highlight MARL’s ability to handle tasks that demand both individual decision-making and collective problem-solving, as explained in the How Do LoRA and QLoRA Work section.
Thumbnail Image of Tutorial Multi Agent Deep RL with LoRA and QLoRA
NEW

Newline Guide to Multi Agent Deep Reinforcement Learning

Multi Agent Deep Reinforcement Learning (MADRL) has emerged as a transformative force across industries, addressing complex problems involving multiple interacting agents. Its significance lies in its ability to model real-world scenarios where cooperation, competition, and communication among agents drive outcomes. Below, we break down why MADRL matters, supported by industry insights, technical advancements, and real-world applications.. MADRL extends traditional single-agent reinforcement learning (RL) to environments where multiple agents interact, learn, and adapt simultaneously. This is critical in settings like autonomous vehicles, robotics, and gaming, where agents must coordinate or compete. For example, in StarCraft II , MADRL algorithms like QMIX and MADDPG enable teams of units to execute strategies by balancing cooperative and adversarial interactions. According to a 2022 Springer Nature survey, the field has seen exponential growth, with over 400 research papers addressing challenges like non-stationarity (where the environment shifts as agents learn) and partial observability (agents lacking full environmental visibility). As mentioned in the Key Concepts in Multi Agent Deep Reinforcement Learning section, these challenges are formally modeled through concepts like Markov games, which underpin MADRL’s theoretical foundations.. MADRL tackles problems that single-agent systems cannot, such as coordination and emergent communication . In robotics, MADRL enables swarms of drones to perform synchronized tasks, like search-and-rescue operations, by learning shared strategies. A 2020 arXiv study demonstrated that MD-MADDPG , a memory-driven communication protocol, improved coordination in tasks like cooperative navigation by 20% compared to baseline methods. Similarly, in autonomous driving , MADRL helps vehicles anticipate each other’s actions to avoid collisions, a feat achieved by centralized critic networks that stabilize training despite dynamic, non-stationary environments. Building on concepts from the Algorithms and Techniques for Multi Agent Deep Reinforcement Learning section, these architectures address core scalability issues in multi-agent systems..
Thumbnail Image of Tutorial Newline Guide to Multi Agent Deep Reinforcement Learning
NEW

Multi Agent vs Single Agent Deep Reinforcement Learning

Watch: Introduction to Multi-Agent Reinforcement Learning by MATLAB Deep Reinforcement Learning (DRL) has transform AI by enabling systems to learn complex decision-making processes through trial and error. However, the distinction between single-agent and multi-agent frameworks determines how these systems tackle challenges ranging from robotics to autonomous vehicles. Understanding their unique strengths and applications is critical for industries using AI to solve real-world problems.. Single-agent DRL focuses on optimizing the decisions of one autonomous entity. This approach excels in scenarios where a single system must manage a dynamic environment with predefined goals, such as game-playing AI (e.g., AlphaGo) or robotic arm control. As mentioned in the Introduction to Single Agent Deep Reinforcement Learning section, these systems operate in environments where inter-agent interaction is minimal or unnecessary. For example, a study on robotic shaft-hole assembly demonstrated that single-agent DDPG (Deep Deterministic Policy Gradient) struggles to converge in tasks requiring precise orientation control. However, it remains a strong baseline for problems where coordination between agents isn’t necessary.
Thumbnail Image of Tutorial Multi Agent vs Single Agent Deep Reinforcement Learning