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Quantum Machine Learning in Practice: A hands-on guide for ML Engineers Exploring Hybrid Quantum-Classical Models

Quantum Machine Learning in Practice: A hands-on guide for ML Engineers Exploring Hybrid Quantum-Classical Models in Ottawa, ON

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Current price: $40.99
Original price: $50.99
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Quantum Machine Learning in Practice: A hands-on guide for ML Engineers Exploring Hybrid Quantum-Classical Models

By None

Quantum Machine Learning in Practice: A hands-on guide for ML Engineers Exploring Hybrid Quantum-Classical Models in Ottawa, ON

Current price: $40.99
Original price: $50.99
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Size: Kobo eBook

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Build and evaluate real quantum machine learning models using Python frameworks, hybrid workflows, and disciplined benchmarking to separate practical insight from hypeKey Features Design hybrid quantum–classical ML models using Python frameworks Benchmark QML against classical baselines with rigorous evaluation Build an end-to-end simulator-based quantum ML workflow Book DescriptionQuantum computing is advancing rapidly, yet practical guidance for machine learning engineers remains limited. Most resources emphasize physics or theory, leaving practitioners unsure how quantum methods fit into real-world ML workflows. 'Quantum Machine Learning in Practice' addresses this gap with a hands-on, Python-first approach built for data scientists and ML engineers. Rather than presenting quantum models as replacements for classical ML, this book focuses on disciplined experimentation, hybrid architectures, and rigorous benchmarking. You will learn how classical data is encoded into quantum circuits, how variational models serve as classifiers and regressors, and how to evaluate quantum kernels and generative models responsibly. Concepts are grounded in simulator-based experiments using PennyLane, Qiskit, TensorFlow Quantum, and Cirq. Classical baselines are treated as first-class citizens throughout. You will design fair comparisons, analyze computational tradeoffs, and identify when classical ML remains superior. A complete end-to-end mini project reinforces transferable workflow skills, from problem framing through evaluation and interpretation. By the end, you will be able to design, implement, and critically assess hybrid quantum-classical machine learning systems with clarity and confidence. What you will learn Understand core quantum computing concepts for ML Encode classical data into quantum circuits Build variational quantum classifiers and regressors Implement QML workflows in PennyLane and Qiskit Integrate quantum layers in deep learning models Design fair benchmarks against classical ML Develop end-to-end hybrid quantum ML projects Who this book is forThis book is for data scientists, machine learning engineers, and technically advanced AI practitioners who want to explore quantum approaches without requiring a physics background. Readers should be comfortable with Python and modern ML libraries such as NumPy, scikit-learn, TensorFlow, or PyTorch. The book equips professionals to evaluate, prototype, and responsibly discuss hybrid quantum–classical workflows within research, enterprise innovation, or advanced academic settings.
Build and evaluate real quantum machine learning models using Python frameworks, hybrid workflows, and disciplined benchmarking to separate practical insight from hypeKey Features Design hybrid quantum–classical ML models using Python frameworks Benchmark QML against classical baselines with rigorous evaluation Build an end-to-end simulator-based quantum ML workflow Book DescriptionQuantum computing is advancing rapidly, yet practical guidance for machine learning engineers remains limited. Most resources emphasize physics or theory, leaving practitioners unsure how quantum methods fit into real-world ML workflows. 'Quantum Machine Learning in Practice' addresses this gap with a hands-on, Python-first approach built for data scientists and ML engineers. Rather than presenting quantum models as replacements for classical ML, this book focuses on disciplined experimentation, hybrid architectures, and rigorous benchmarking. You will learn how classical data is encoded into quantum circuits, how variational models serve as classifiers and regressors, and how to evaluate quantum kernels and generative models responsibly. Concepts are grounded in simulator-based experiments using PennyLane, Qiskit, TensorFlow Quantum, and Cirq. Classical baselines are treated as first-class citizens throughout. You will design fair comparisons, analyze computational tradeoffs, and identify when classical ML remains superior. A complete end-to-end mini project reinforces transferable workflow skills, from problem framing through evaluation and interpretation. By the end, you will be able to design, implement, and critically assess hybrid quantum-classical machine learning systems with clarity and confidence. What you will learn Understand core quantum computing concepts for ML Encode classical data into quantum circuits Build variational quantum classifiers and regressors Implement QML workflows in PennyLane and Qiskit Integrate quantum layers in deep learning models Design fair benchmarks against classical ML Develop end-to-end hybrid quantum ML projects Who this book is forThis book is for data scientists, machine learning engineers, and technically advanced AI practitioners who want to explore quantum approaches without requiring a physics background. Readers should be comfortable with Python and modern ML libraries such as NumPy, scikit-learn, TensorFlow, or PyTorch. The book equips professionals to evaluate, prototype, and responsibly discuss hybrid quantum–classical workflows within research, enterprise innovation, or advanced academic settings.

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