Build a Full–Stack Machine Learning Web App In Production

Free Download Build a Full–Stack Machine Learning Web App In Production
Published: 3/2025
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Language: English | Duration: 3h 4m | Size: 2.35 GB
Build an AI document search web app with Flask and deploy it to production
What you'll learn
Become a Full-Stack AI/ML Engineer
Build complex Flask web applications and websites
Train BERT-like Deep Learning Models and deploy as an API
Design distributed computing workloads with Celery and Redis
Gain proficiency with Databases using PostgreSQL and SQLAlchemy
Deploy websites to production with Railway
Enhance your job portfolio, freelance work or even start your own SaaS
Requirements
A computer running Windows, OSX or Linux with at least 8GB of RAM
Basic understanding of HTML, CSS and jаvascript
Basic understanding of computer science and AI
Description
Build a Full-Stack ML Web App: From Model to ProductionAre you ready to become a highly-paid Machine Learning Engineer in today's AI revolution?Hi, I'm Dylan P., and as a Lead Machine Learning Engineer with over 5 years of experience at major tech companies, I've watched ML Engineering become the hottest job in tech. Why? Because companies desperately need professionals who can both build AI models AND deploy them to production.But here's the problem: Most courses either teach you theoretical ML modeling without real-world application, or web development without any ML integration. Neither prepares you for what companies actually need.That's why I've created this comprehensive course that bridges the gap and teaches you to build production-ready ML applications from start to finish.What makes this course different?Unlike tutorials that show you toy examples with disclaimers like "you wouldn't do this in production..." I'll show you the REAL way professionals build and deploy ML systems. The techniques in this course are battle-tested from my years building production ML systems:Use industry best practices and tools like Docker, Databases, Caching, Distributed Computing, Unit / Integration TestingSystem design that allows your app to scale up to thousands of users without breakingUtilize cutting-edge models from traditional ML to state-of-the-art Transformers and LLMsDeliver measurable business impact while optimizing cost and performance"This course provides exactly what I needed - not just theory, but practical implementation that translates directly to my work projects." - James WongHere's
What you'll learn
by taking my course:Full-Stack Development: Create both the front end and backend with Flask, Docker, and RedisML System Design: How to design an AI web app that can scale effectively Natural Language Processing: Train a BERT language model from scratch using PyTorch, Hugging Face, WandbProduction-Grade APIs: Turn an AI model into high performance APIs with FastAPIDatabase Integration: Connect your app with production databases with PostgreSQLDeployment Mastery: Take your application live using RailwayThe best part? By the end of this course, you'll have a complete, impressive project for your portfolio that demonstrates exactly the skills employers are desperately seeking.Who is this course for?Software engineers looking to transition into the lucrative field of ML engineeringData scientists who want to level up by learning deployment and production skillsCS students or mid career switchers who want to build up their portfolioFreelance Consultants/Entrepreneurs keen in creating their own ML-powered applications or SaaS products"I was stuck in data science theory for years. After this course, I finally know how to build end-to-end ML systems that actually solve real problems." - Emery LinCourse StructureEach chapter follows a hands-on approach:Learn: Clear slides introducing new concepts and technologiesWatch: Video walkthroughs of actual code implementationBuild: Hands-on coding to construct your applicationVisualize: See your results in actionChallenge: Chapter exercises to cement your understandingInvest in Your Future The skills taught in this course regularly command $120,000-$180,000+ salaries in the industry. As AI continues transforming every sector, these skills will only become more valuable.Don't waste months piecing together fragmented tutorials or building projects that don't reflect real-worldRequirements
. Join me, and in just a few weeks, you'll have mastered the complete skillset needed to thrive as a modern ML Engineer.Ready to become the ML Engineer companies are looking to hire? Enroll now and start building your first production-ready ML web application today!Who this course is for
Software Engineers looking to learn how to build production-ready apps with AI
Aspiring SaaS Founders who want to build AI-powered web applications
Freelancers learning to expand their skillset with AI web development
Tech industry professionals or mid-career switchers looking to upskill themselves
Homepage:
https://www.udemy.com/course/build-a-full-stack-machine-learning-web-app-in-production/
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