Wir verwenden Cookies und Analyse-Tools, um die Nutzerfreundlichkeit der Internet-Seite zu verbessern und für Marketingzwecke. Wenn Sie fortfahren, diese Seite zu verwenden, nehmen wir an, dass Sie damit einverstanden sind. Zur Datenschutzerklärung.
Productionizing AI
Details
This book is a guide to productionizing AI solutions using best-of-breed cloud services with workarounds to lower costs. Supplemented with step-by-step instructions covering data import through wrangling to partitioning and modeling through to inference and deployment, and augmented with plenty of Python code samples, the book has been written to accelerate the process of moving from script or notebook to app.
From an initial look at the context and ecosystem of AI solutions today, the book drills down from high-level business needs into best practices, working with stakeholders, and agile team collaboration. From there you'll explore data pipeline orchestration, machine and deep learning, including working with and finding shortcuts using artificial neural networks such as AutoML and AutoAI. You'll also learn about the increasing use of NoLo UIs through AI application development, industry case studies, and finally a practical guide to deploying containerized AI solutions.
The book is intended for those whose role demands overcoming budgetary barriers or constraints in accessing cloud credits to undertake the often difficult process of developing and deploying an AI solution.
What You Will Learn
- Develop and deliver production-grade AI in one month
- Deploy AI solutions at a low cost
- Work around Big Tech dominance and develop MVPs on the cheap
Create demo-ready solutions without overly complex python scripts/notebooks Who this book is for: Data scientists and AI consultants with programming skills in Python and driven to succeed in AI.
Use cloud resources to gain practical experience setting up automated, affordable data pipelines for AI projects Deliver MVPs and Enterprise AI with Big Data automation and a Cloud-agnostic, cloud-native DataOps approach Build full-stack AI with back-ends built with Python, TensorFlow, Keras and PyTorch
Autorentext
Barry Walsh is a software-delivery consultant and AI trainer at Pairview with a background in exploiting complex business data to optimize and de-risk energy assets at ABB/Ventyx, Infosys, E.ON, Centrica, and his own start-up ce.tech. He has a proven track record of providing consultancy services in Data Science, BI, and Business Analysis to businesses in Energy, IT, FinTech, Telco, Retail, and Healthcare, Barry has been at the apex of analytics and AI solutions delivery for 20 years. Besides being passionate about Enterprise AI, Barry spends his spare time with his wife and 8-year-old son, playing the piano, riding long bike rides (and a marathon on a broken toe this year), eating out whenever possible or getting his daily coffee fix.
Inhalt
Chapter 1: Introduction to AI & the AI Ecosystem.- Chapter 2: AI Best Practise & DataOps.- Chapter 3: Data Ingestion for AI.- Chapter 4: Machine Learning on Cloud.- Chapter 5: Neural Networks and Deep Learning.- Chapter 6: The Employer's Dream: AutoML, AutoAI and the rise of NoLo UIs.- Chapter 7: AI Full Stack: Application Development.- Chapter 8: AI Case Studies.- Chapter 9: Deploying an AI Solution (Productionizing & Containerization).- Chapter 10: Natural Language Processing.- Postscript.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09781484288160
- Genre Information Technology
- Auflage 1st edition
- Lesemotiv Verstehen
- Anzahl Seiten 400
- Größe H254mm x B178mm x T22mm
- Jahr 2022
- EAN 9781484288160
- Format Kartonierter Einband
- ISBN 1484288165
- Veröffentlichung 25.12.2022
- Titel Productionizing AI
- Autor Barry Walsh
- Untertitel How to Deliver AI B2B Solutions with Cloud and Python
- Gewicht 750g
- Herausgeber Apress
- Sprache Englisch