Free Download Synthetic Biology AI-Driven Design and Optimization (Genesis Protocol: Next Generation Technology for Biological and Life Sciences) by Jamie Flux
English | August 25, 2024 | ISBN: N/A | ASIN: B0DF6XX5SJ | 197 pages | PDF | 4.12 Mb
Unveil the symbiosis of synthetic biology and the arcane arts of artificial intelligence with this all-encompassing tome, crafted for the adept researcher, the fervent student, or the enlightened professional daring enough to traverse the enigmatic realms of genetic alchemy. Plunge headlong into the esoteric mysteries of how AI-driven techniques conjure revolutions within the synthetic biology sphere, transforming the sacred rites of genetic modification and engineering through the invocation of potent algorithms. Herein lies the key to unlocking the forgotten knowledge and hidden potential of this twilight domain, a guide for those who seek to command the living libraries of creation itself.
Key Features:
– Delve into the synergy between AI and synthetic biology to innovate genetic designs.
– Gain insights from practical Python code examples accompanying each chapter.
– Explore advanced topics like quantum computing, stochastic processes, swarm intelligence, and more.
– Learn about state-of-the-art methodologies for optimizing genetic circuits, pathways, and networks.
– Improve decision-making in genetic engineering using sophisticated models and techniques.
Book Description:
This enlightening book bridges the realms of synthetic biology and artificial intelligence, detailing how a myriad of algorithms facilitates groundbreaking genetic designs. It offers in-depth analysis and practical insights into techniques such as neural networks, reinforcement learning, and quantum computing, showcasing their impact on genetic optimization, mutation analysis, and synthetic pathway predictions. With meticulous explanations and Python code examples, readers will grasp the full potential of AI in the creation and optimization of synthetic organisms and genetic configurations.
What You Will Learn:
– Implement algorithms like genetic and evolutionary algorithms for optimizing gene sequences and bio-design automation.
– Use neural networks and deep learning for precise gene circuit design and CRISPR-Cas9 editing.
– Apply statistical and machine learning models for mutation analysis, genomic data reduction, and pathway optimization.
– Develop proficiency in leveraging algorithms for synthetic biology challenges involving protein prediction, network mapping, and genomic similarity.
Who This Book Is For:
Whether you’re a researcher, practitioner, student, or professional in synthetic biology, bioinformatics, or computational biology, this book offers a rich resource for understanding and employing AI techniques to elevate your work in genetic modification and synthetic biology. By integrating practical coding elements with theoretical insights, it serves both as a comprehensive reference guide and a stepping stone into the AI-powered future of genetic engineering.