MLOps Roadmap 2024 | MLOps Roadmap for Beginners
Summary
TLDRIn this video, Analytics Vidya presents a comprehensive 9-month roadmap for aspiring MLOps professionals, guiding viewers from beginner to advanced skills. The roadmap is divided into three quarters, focusing first on offline model training and deployment with tools like Flask, then advancing to cloud deployment using platforms like AWS, Azure, and Docker. The final quarter emphasizes specialized applications in NLP and computer vision, including model training, deployment, and evaluation techniques. Throughout the journey, viewers are encouraged to build a solid portfolio through practical projects, equipping them for success in the evolving field of MLOps.
Takeaways
- 🚀 MLOps is crucial as the demand for professionals who bridge model development and deployment is rapidly increasing.
- 🗺️ The roadmap for 2024 is structured into three quarters, each focusing on different aspects of MLOps skills and tools.
- 💻 Quarter 1 emphasizes offline model training and deployment using Python, Flask, and essential machine learning concepts.
- 📊 Key skills in Quarter 1 include understanding basic machine learning algorithms, evaluation metrics, and version control with Git.
- 📦 Model packaging and serialization are essential for easy deployment; tools like Pickle and Joblib are recommended.
- ☁️ In Quarter 2, the focus shifts to deploying models in the cloud, utilizing platforms like AWS, GCP, or Azure.
- 🐳 Docker and containerization are vital for packaging machine learning models and ensuring compatibility across environments.
- 🔍 Continuous Integration and Continuous Deployment (CI/CD) automate code changes and deployments, enhancing efficiency.
- 📈 Quarter 3 covers advanced topics like implementing MLOps for Natural Language Processing (NLP) and Computer Vision.
- 🤖 Real-time sentiment analysis and medical image anomaly detection are suggested projects for hands-on experience in the final quarter.
Q & A
What is the primary focus of the MLOps roadmap for 2024 presented in the video?
-The primary focus is to guide individuals from beginners to proficient MLOps professionals over a nine-month period, covering essential skills for training, deploying, and managing machine learning models.
How is the nine-month learning journey structured?
-The roadmap is divided into three quarters, each lasting three months, focusing on different aspects of MLOps: offline model training and deployment, cloud deployment, and MLOps for NLP and computer vision.
What key skills should one develop in Quarter 1?
-In Quarter 1, key skills include understanding machine learning algorithms, model evaluation metrics, version control with Git, model packaging, and serving models using web applications like Flask.
What project is suggested for completion in Quarter 1?
-The suggested project is an Air Quality Index prediction model, which should be built and deployed as a Flask API or a Streamlit app.
What are the main goals for Quarter 2 of the roadmap?
-Quarter 2 aims to deploy machine learning models in a cloud environment, learn about containerization with Docker, and implement CI/CD practices for automated deployment.
Which cloud platforms are recommended for learning in Quarter 2?
-The recommended cloud platforms include AWS, GCP, Azure, and Heroku, all of which typically offer free credits for new users to get started.
What monitoring and logging tools are suggested for model deployment?
-Suggested tools for monitoring and logging include AWS CloudWatch, Azure Monitor, Google Stackdriver, and open-source tools like Prometheus.
What topics are covered in Quarter 3 regarding NLP?
-In Quarter 3, key topics for NLP include data management and pre-processing, model training with NLP-specific frameworks, and evaluation metrics like BLEU and F1 scores.
What project examples are given for Quarter 3 in NLP and computer vision?
-For NLP, a project on real-time sentiment analysis for social media posts is suggested, while for computer vision, a project on medical image anomaly detection is recommended.
How does the video suggest leveraging community resources for learning?
-The video encourages joining the Analytics Vidya community platform for peer learning, participating in webinars, and accessing resources tailored to data science and MLOps interests.
Outlines
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