Practical MLOps: Build and Deploy ML Pipelines with MLflow and DVC

Master the essentials of machine learning operations by versioning data, tracking experiments, and deploying models using MLflow, DVC, Docker, and FastAPI.

3.9 (186) ⏱ 1 godz 42 min 📚 9 lekcji 🎧 Wersja audio

O tym kursie

Transitioning a machine learning model from a local notebook to a reliable production environment is one of the biggest challenges in AI development today. This course bridges the gap between data science and software engineering by introducing you to the foundational principles of Machine Learning Operations (MLOps). Through structured, written explanations and practical code examples, you will learn how to build automated, reproducible, and monitored ML pipelines. You will progress from understanding core MLOps terminology to versioning datasets, tracking model experiments, and deploying production-ready APIs. What you'll learn: - Understand foundational MLOps concepts, lifecycle stages, and the core differences between DevOps and MLOps. - Track and register machine learning experiments using MLflow to ensure complete reproducibility. - Configure Data Version Control (DVC) to manage and version large datasets within your Git workflow. - Build and containerize machine learning microservices using FastAPI and Docker. - Apply basic CI/CD principles and low-code AutoML tools to automate model training and evaluation. - Implement model monitoring and basic observability practices to detect data drift in production. The course begins with essential terminology and the MLOps lifecycle before guiding you step-by-step through data versioning, experiment tracking, and containerized deployment. This course is designed for beginners, aspiring data scientists, and software engineers looking to enter the field of MLOps, with no prior operations experience required. Start reading today to build reliable, production-ready machine learning pipelines.

Co otrzymasz

  • 📜 Certyfikat ukończenia
    Dodaj do profilu LinkedIn
  • 🎧 Wersja audio w zestawie
    Ucz się w drodze — bez ekranu
  • ♾️ Dożywotni dostęp
    Wracaj, kiedy chcesz — bez wygaśnięcia
  • 📱 Telefon lub komputer
    Działa wszędzie, na każdym urządzeniu
  • 💸 Zwrot w 30 dni
    Bez pytań
  • Krótko i konkretnie
    1 godz 42 min praktycznej treści

Recenzje (6)

Noah Johnson AU
★ 5 · 2025-12-10T14:20:56+00:00

Fantastic course. The examples used were spot on and really helped solidify the concepts. My understanding has improved dramatically.

Astrid Lindgren SE Zweryfikowany kursant
★ 5 · 2025-08-19T16:38:56+00:00

This course exceeded my expectations. The real-world applications discussed are incredibly useful. Great job!

Tunde Olajide NG
★ 5 · 2025-08-09T16:46:56+00:00

Wow, what a great learning experience. The real-world applications discussed were so relevant. I'm already applying what I learned.

Htet Paing MM
★ 5 · 2025-07-12T22:41:56+00:00

It's a solid course. The structure is logical and most of the examples were helpful. Could use a few more real-world scenarios though.

Maria Santos PT
★ 5 · 2025-04-16T00:22:56+00:00

What a great learning experience. The examples were spot-on and really helped solidify the concepts. Feeling much more capable now.

Ava White AU Zweryfikowany kursant
★ 3 · 2025-03-07T21:01:56+00:00

It's a decent introduction. Could benefit from more diverse examples and a slightly better flow between modules.

Napisz recenzję

Po wysłaniu poprosimy o zalogowanie — szkic zostanie zapisany.

Inni uczyli się też

Najczęstsze pytania

Czego potrzebuję, by wziąć udział w tym kursie? +

Wystarczy telefon lub komputer z internetem. Bez instalacji i specjalnego sprzętu.

Jak zapłacić? +

Kartą przez Stripe lub kryptowalutą. Nie przechowujemy danych karty — robi to bezpiecznie Stripe.

Czy mogę otrzymać zwrot? +

Tak — pełen zwrot w 30 dni, bez pytań.

Jak długo będę mieć dostęp? +

Na zawsze. Po zakupie kurs jest twój — wracaj, kiedy chcesz.

Czy dostanę certyfikat? +

Tak. Po ukończeniu otrzymasz certyfikat, który możesz dodać do profilu LinkedIn.

Stworzony dla uczących się w
IT Design Finanse Marketing Ochrona zdrowia Edukacja Hotelarstwo Produkcja