
Build an end-to-end full-stack SaaS LLM chatbot and web app in production, using VLM and LLM like LLAMA for text and image reasoning, and deploy with Docker and Railway.
Explore visual language models and whisper speech models, including CLIP and LALMAR 3.2 Vision, and learn how image-text encoders enable zero-shot predictions and speech-to-text transcription.
Compare vision language models such as llama, Tripartite vision, SmallVLM, and Microsoft PHY on OCR Benchmark to trade off size and latency, prototyping a cpu-friendly multimodal chatbot via Together API.
Explore practical speech-to-text with whisper, including transcription, translation, and a Gradio demo, then compare Faster Whisper performance and word error rate on sample datasets.
Design a Flask-based app with blueprints and templates, use PostgreSQL, and deploy with Docker Compose, while leveraging Celery and Redis for async tasks and ML API for models.
Explore a v1 flask web app with blueprints, templates, and a landing page built in app.py. Learn how docker compose spins up Postgres, sign-up, login, and a basic user model.
Explore improved Flask web app logic with new email and dashboard blueprints, Redis-backed task handling, and SMTP email verification flow, including user registration, login, and dashboard data.
Run the Flask app locally with Docker Compose, sign up and verify email, log in to the dashboard, and inspect the database with pgadmin4, viewing users and api calls.
Explore building fast, production-ready model APIs with FastAPI and HuggingFace, creating endpoints for generate tags, generate image, and transcribe audio, with tests and auto-generated docs for Telegram bot integration.
Launch a fastapi ml api server by configuring a model service, caching models with a huggingface token, and exposing health and endpoints such as generate image and transcribe audio.
Set up and run the v2 ml api on a fastapi server, configure with a HarkinFace token, and test the generate endpoint on localhost:8000; work covers models and unit tests.
Test the ML API and auto-docs by spinning up the model service with docker-compose-up-build-model, validating health, generating image, and transcribing audio via FastAPI docs.
Build a Telegram bot linked to your web app with user verification against a Postgres database, and integrate ML services for text, image, audio, and documents via REG and together.ai.
Integrate our ml api with the Telegram bot by adding llama models, dunk.go search, and gpu processing for text, image, audio, and documents, with async calls and robust handling.
Explore Railway, a deployment platform that lets you easily deploy machine learning and full-stack apps with one-click setup, docker-based services, and built-in metrics and logging.
Build a Full-Stack SaaS GenAI ChatBot + WebApp In Production
Are 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 Testing
System design that allows your app to scale up to thousands of users without breaking
Utilize cutting-edge models from traditional ML to state-of-the-art Transformers and LLMs
Deliver 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 Wong
Here's what you'll learn by taking my course:
Full-Stack Development: Create both the front end and backend with Flask, Docker, Celery & Redis
ML System Design: How to design an AI web app + chatbot that can scale effectively
Large Language Models (LLM): Use various Hugging Face LLMs to handle text, audio, image, documents
Production-Grade APIs: Turn an AI model into high performance APIs with FastAPI
Database Integration: Connect your app with production databases with PostgreSQL
Deployment Mastery: Take your application live using Railway
The 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 engineering
Data scientists who want to level up by learning deployment and production skills
CS students or mid career switchers who want to build up their portfolio
Freelance 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." - Jamus Tsai
Course Structure
Each chapter follows a hands-on approach:
Learn: Clear slides introducing new concepts and technologies
Watch: Video walkthroughs of actual code implementation
Build: Hands-on coding to construct your application
Visualize: See your results in action
Challenge: Chapter exercises to cement your understanding
Invest 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-world requirements. 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 GenAI Webapp + Chatbot today!