AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and decision-making.
🖥📚 ML (Machine Learning) is a subset of AI, focused on algorithms that allow machines to learn from data and improve over time without being explicitly programmed.
AI thinks, ML learns. Simple as that!
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Unlock the essentials of Artificial Intelligence (AI) with this free IBM course. Explore applications and key concepts like machine learning, deep learning, and neural networks.
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📖 We translate any PDF documents in one click
🛠 PDFMathTranslate is a free AI-powered tool for full-text translation of PDF documents.
🔹 Works very quickly - even a 200-page article can be translated in a minute
🔹 Completely preserves the text layout and does not make phrases clumsy
🔹 Knows 10 languages
🔗 Links: https://github.com/Byaidu/PDFMathTranslate
🛠 PDFMathTranslate is a free AI-powered tool for full-text translation of PDF documents.
🔰 Neural networks will translate books, articles, diagrams and graphs, preserving their presentable appearance
🔹 Works very quickly - even a 200-page article can be translated in a minute
🔹 Completely preserves the text layout and does not make phrases clumsy
🔹 Knows 10 languages
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🔅 LLM Foundations: Building Effective Applications for Enterprises
🌐 Author: Kumaran Ponnambalam
🔰 Level: Advanced
⏰ Duration: 1h 43m
📗 Topics: Large Language Models, Artificial Intelligence, Enterprise Software
📤 Join Artificial intelligence for more courses
🌀 Explore design considerations and best practices for building generative AI-powered applications at enterprise scale.
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As generative AI models have become increasingly popular, enterprises have started to build end-to-end applications to integrate their existing workflows with generative AI. In this course, instructor Kumaran Ponnambalam shows you how to get up and running with integration, performance management, trust, and monitoring to deliver effective and trustworthy generative AI applications at scale.Explore some of the unique characteristics and use cases for generative AI-powered applications in an enterprise setting, including available options, selection criteria, and key deployment considerations for generative AI models. Kumaran covers the basics of evaluating and fine-tuning models as well as patterns and best practices for core application design. By the end of this course, youll also be equipped with new skills to manage application performance, maintain safety and trust, and navigate some of the most important ethical and legal challenges of AI.
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With the rise of large language models (LLMs), fine-tuning for specific tasks has become more important than ever. But how can we do it efficiently without compromising performance? 🤔 Here are 5 advanced techniques that can help:
1. LoRA (Low-Rank Adaptation)
- LoRA reduces the number of trainable parameters by adding low-rank adaptation matrices, making fine-tuning faster and more memory-efficient.
2. LoRA-FA (LoRA with Feature Augmentation)
- This method combines LoRA with external feature augmentation, injecting task-specific features to further boost performance with minimal overhead.
3. Vera (Virtual Embedding Regularization Adaptation)
- Vera helps regularize model embeddings during fine-tuning, preventing overfitting and improving generalization across different domains.
4. Delta LoRA
- An extension of LoRA, this approach focuses on updating only the most significant layers, reducing computational costs while retaining fine-tuning effectiveness.
5. Prefix Tuning
- Instead of modifying model weights, this technique learns task-specific prefix tokens that steer the model’s output, enabling efficient adaptation to new tasks.
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- list: keep your Twitter feeds
- stack: support undo/redo of the word editor
- queue: keep printer jobs, or send user actions in-game
- hash table: cashing systems
- Array: math operations
- heap: task scheduling
- tree: keep the HTML document, or for AI decision
- suffix tree: for searching string in a document
- graph: for tracking friendship, or path finding
- r-tree: for finding the nearest neighbor
- vertex buffer: for sending data to GPU for rendering
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This visual guide clearly illustrates the different layers and concepts within Artificial Intelligence, Machine Learning, Deep Learning, and Generative AI.
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It’s the infrastructure behind how smart businesses run today.
The gap between users and experts is closing fast.
But the gap between curiosity and capability is getting wider.
The difference comes down to skill, not just tools.
These are the nine that matter most in 2026.
Each one compounds the rest and turns AI from novelty into leverage.
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