Deep Learning Step By Step Guide For Students Entrepreneurs Business Leaders & The... - Farid - 05-07-2025
English | April 23, 2024 | ASIN: B0D2KL8732 | 182 pages | PDF | 2.01 Mb
Quote:๐ Demystifying Deep Learning: Your Step-by-Step Guide to AI's Most Powerful Technology!
Unlock the potential of deep learning and join the AI revolution with this comprehensive and accessible guide, perfect for students and beginners, entrepreneurs, business leaders, and curious minds alike.
"๐ Deep Learning Step by Step" takes you on a journey from the mechanics, foundation, and concepts of neural networks to cutting-edge applications transforming industries like healthcare, finance, and manufacturing.
๐ Here's what you'll discover:
โThe Core Concepts: Understand the mechanics, foundations, and concepts behind deep learning, from neurons and activation functions to various network architectures like CNNs and RNNs.
โData as the Foundation: Learn how to collect, prepare, and augment data to fuel your deep learning models for optimal performance.
โTraining Secrets Revealed: Explore optimization algorithms, regularization techniques, and best practices for training models.
โReal-World Applications: Image recognition, natural language processing (NLP), speech recognition & more.
โBusiness Applications: Enhance customer experience & optimize operations.
โEthical Considerations: Data privacy, algorithmic bias, and the societal impact of AI.
โBuilding a Career in AI: Explore emerging roles in deep learning and acquire essential skills (e.g., Python, PyTorch).
โFrontiers of Deep Learning: Trends like self-supervised learning, agentic models, and quantum computing.
๐ Concepts & Topics Covered
1. Deep Learning Fundamentals:
โNeural networks
โNeurons, weights and biases
โActivation functions (Sigmoid, Tanh, ReLU)
โNetwork architectures (CNNs, RNNs, LSTMs)
โLearning processes (gradient descent, backpropagation)
โDepth and complexity
โOverfitting and underfitting
โRegularization techniques
โCross-validation
โOptimization algorithms (SGD, Adam, RMSprop)
โFrameworks (e.g., Python, PyTorch, TensorFlow)
2. Data for Deep Learning:
โData quality
โData collection strategies
โDatasets (MNIST, CIFAR, ImageNet)
โData augmentation
โLarge-scale data management
3. Deep Learning Applications:
โImage recognition and classification
โObject detection
โNatural Language Processing (NLP)
โSentiment analysis
โMachine translation
โSpeech recognition
โMusic generation
โTime series forecasting
โGenerative Adversarial Networks (GANs)
โReinforcement Learning (RL)
4. Deep Learning in Industries:
โHealthcare (diagnostics, personalized medicine)
โFinance (algorithmic trading, asset management)
โRetail and E-commerce (recommendation systems, personalization)
โManufacturing and Supply Chain
โInternet of Things (IoT) (smart devices, energy management, security)
5. Deep Learning Ethics & Society:
โData privacy and security
โBias and fairness
โMisinformation and deepfakes
โSurveillance and privacy concerns
โSocial implications of AI
โAI governance and regulation
โExplainable AI (XAI)
โDeep learning for social good
6. Career & Business Aspects:
โEmerging roles in deep learning
โSkills for deep learning careers
โDeep learning impact on jobs
โMonetizing deep learning (licensing, AIaaS)
โFunding deep learning startups
โDeep learning and corporate strategy
โMarketing deep learning innovations
7. Future of Deep Learning:
โTrends & emerging technologies
โQuantum computing and AI
โNext-generation AI models and agentic deep learning
โSub-fields beyond deep learning
๐ Contents of Download:
๐ B0D2KL8732.pdf (Marcus Vinicius Pinto) (2024) (2.01 MB)
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โญ๏ธ Deep Learning Step By Step Guide For Students Entrepreneurs Business Leaders & The Curious โ
(2.01 MB)
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