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School of AI

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4 contributions to School of AI
Quantum Computing × AI: The Next Intelligence Leap
Artificial Intelligence has transformed how we predict, generate, and optimize. But as models grow larger and problems grow more complex, classical computing is beginning to show its limits. This is where quantum computing meets AI—not as a replacement, but as a powerful accelerator for the next generation of intelligent systems. Quantum computing is fundamentally different from classical computing. Instead of bits that are either 0 or 1, quantum systems use qubits that can exist in multiple states simultaneously. This allows quantum machines to explore vast solution spaces in parallel, making them uniquely suited for problems that are combinatorial, probabilistic, and computationally expensive—exactly the kinds of problems modern AI struggles with. When combined with AI, quantum computing opens new possibilities. Optimization tasks such as feature selection, hyperparameter tuning, and supply-chain planning can be reframed as quantum optimization problems. Quantum-enhanced machine learning algorithms can potentially train faster, explore richer representations, and escape local minima that trap classical models. In areas like drug discovery, materials science, and climate modeling, this synergy could dramatically reduce years of experimentation into hours of computation. At the same time, AI plays a crucial role in making quantum computing usable. Machine learning models are already being used to correct quantum noise, optimize quantum circuits, and control fragile quantum hardware. In this sense, AI is not just a beneficiary of quantum computing—it is an enabler of the quantum era itself. However, the reality today is hybrid. We are not waiting for large-scale, fault-tolerant quantum computers to start building value. Instead, organizations are experimenting with quantum-inspired algorithms, hybrid classical-quantum workflows, and simulation-driven research. This mirrors the early days of deep learning, when GPUs quietly reshaped what was possible long before AI became mainstream.
Question of the Day: January 8th 2026
What’s one phrase you say to AI way too often? for me its "Are you sure Dude?"
Question of the Day: January 8th 2026
2 likes • Jan 8
That and also “this doesn’t make sense”
Question of the Day - January 7th 2026
What’s the laziest thing you’ve ever used AI for (no judgment 😄)?
Question of the Day - January 7th 2026
1 like • Jan 7
Turn off the lights
The Agentic AI Engineer Roadmap for 2026
An Agentic AI Engineer does more than fine-tune models or wire up a basic RAG pipeline. They design systems that perceive, plan, act, use tools, recover from errors, and operate autonomously in complex environments. In 2026, this role sits at the intersection of software engineering, AI systems design, and human problem-solving. This roadmap lays out a clear, step-by-step path you can follow to become an Agentic AI Engineer—focusing not just on tools, but on how to think like an engineer of intelligent systems. ---------------------------------------------------------------- Step 1: Mastering the Fundamentals Before touching large language models, you need a solid foundation in logic, language, and systems thinking. Start with Python, still the backbone of AI development. But for agentic systems, basic scripts are not enough: - Learn asynchronous programming (asyncio), since agents often wait on tools, APIs, or human feedback. - Understand API development, because agents interact with external systems—not just users. Math matters too—but in a practical way: - Linear Algebra: Embeddings and vector similarity power memory systems and retrieval. - Graph Theory: Agents don’t think linearly. They loop, branch, and revisit decisions. Graphs help model these behaviors. - Probability: Helps you reason about uncertainty, hallucinations, and error mitigation. Finally, get comfortable with real-world APIs. An agent that can’t act is just a chatbot. Learn to integrate services like payments, messaging, and productivity tools—and handle failures, retries, and rate limits gracefully. ---------------------------------------------------------------- Step 2: Controlling the Raw Intelligence Modern models like GPT-class systems or Claude-level models are incredibly powerful—but raw intelligence without control is dangerous or useless. Your job is to guide that intelligence. Start by understanding LLM fundamentals: - How tokens work - Context window limitations - Training vs inference - Cost and latency tradeoffs
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School of AI

Active 12d ago
Joined Jan 1, 2026
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