Unofficial Tests: Databricks Machine Learning Professional.
IT & Software100% OFF

Unofficial Tests: Databricks Machine Learning Professional.

Udemy Instructor
0(77 students)
Self-paced
All Levels

About this course

This course is an independent exam preparation guide and is not affiliated with, endorsed by, or sponsored by the owners of this Certification Programs. The certification names are trademarks of their respective owners.What will students learn in your course?Master the key advanced concepts tested in the Databricks ML Professional certification exam blueprint.Implement and manage the entire MLOps lifecycle using advanced features of MLflow Tracking and Registry.Design and execute scalable feature engineering pipelines leveraging Apache Spark and Delta Lake optimizations.Configure and troubleshoot distributed machine learning training workflows using frameworks like Horovod and Petastorm.Optimize complex models efficiently using Hyperopt for sophisticated, distributed hyperparameter tuning.Understand and utilize advanced Databricks AutoML capabilities for rapid prototyping and baseline model generation.Differentiate between various MLflow model deployment patterns, including batch scoring and real-time serving endpoints.Securely manage credentials, secrets, and access control for ML artifacts and pipelines within Databricks.Analyze and interpret complex scenario-based questions covering model governance and reproducibility strategies.Design robust, scalable machine learning solutions following the best practices of the Databricks Lakehouse Platform.Evaluate data drift and model degradation strategies, implementing monitoring solutions within the Databricks ecosystem.What are the requirements or prerequisites?Basic understanding of Python programming and common ML libraries (Scikit-learn, Pandas).Familiarity with the core concepts of Apache Spark, including DataFrames and basic transformations.Working experience navigating the Databricks environment (Notebooks, Clusters, Repos).A foundational understanding of Delta Lake features and ACID properties is highly recommended.Prior exposure to MLflow Tracking, basic logging, and experiment management is beneficial.Experience with fundamental machine learning workflows, model training, and evaluation metrics.A commitment to dedicating time for intensive practice, review, and self-assessment.Comfortable reading and interpreting technical documentation related to distributed computing.Basic knowledge of cloud storage concepts (AWS S3, Azure Blob Storage, or GCP Storage).It is strongly recommended, though not required, to have passed the Databricks ML Associate exam.Who is this course for?Data Scientists aiming to pass the challenging Databricks Certified Machine Learning Professional exam.ML Engineers responsible for building, deploying, and managing production ML pipelines on Databricks.Professionals seeking to validate their advanced expertise in Databricks MLOps and distributed ML.Senior Data Analysts transitioning into specialized Machine Learning or MLOps engineering roles.Technical consultants needing verifiable credentials for implementing advanced Databricks Lakehouse solutions.Individuals who have completed the Databricks ML Associate certification and seek the next level.Anyone looking to deepen their knowledge of distributed training frameworks like Horovod and Petastorm.Developers focused on mastering MLflow for comprehensive model governance and experiment tracking.Teams adopting the Databricks Lakehouse architecture for their critical, large-scale ML workloads.Technical leaders evaluating the MLOps capabilities and scalability of the Databricks platform.Students focused on advanced topics in scalable machine learning and distributed computing environments.

Skills you'll gain

IT CertificationsEnglish

Available Coupons

Course Information

Level: All Levels

Suitable for learners at this level

Duration: Self-paced

Total course content

Instructor: Udemy Instructor

Expert course creator

This course includes:

  • 📹Video lectures
  • đź“„Downloadable resources
  • 📱Mobile & desktop access
  • 🎓Certificate of completion
  • ♾️Lifetime access
$0$96.99

Save $96.99 today!

Enroll Now - Free

Redirects to Udemy • Limited free enrollments

You May Also Like

Explore more courses similar to this one

ChatGPT Masterclass: The Guide to AI & Prompt Engineering
IT & Software
1.0K left

ChatGPT Masterclass: The Guide to AI & Prompt Engineering

Udemy Instructor

Welcome to the ChatGPT Masterclass: The Guide to AI & Prompt Engineering — your all-in-one resource to unlock the full potential of AI in business, content, productivity, and creativity. Whether you're a beginner or someone looking to stay ahead in the AI revolution, this course will equip you with practical skills that are in high demand today. Course Objective:The main objective of this course is to empower learners with the knowledge and tools to effectively use ChatGPT and AI tools for personal, academic, and professional growth. From basic understanding to advanced prompt engineering, this course offers a hands-on learning experience that prepares you for the future of work. What You Will Learn:Understand how ChatGPT and large language models workMaster the fundamentals of prompt engineering using real-world examplesCreate AI-generated content for blogs, social media, email marketing, and moreAutomate business tasks, generate leads, and enhance productivityBuild custom GPTs and explore tools like DALL·E, Whisper, and AI video generatorsUse ChatGPT to code, research, plan, write, brainstorm, and solve problemsApply AI ethically, creatively, and strategically in various industries Course Benefits:Learn to think like an AI pro without needing to codeGain access to prompt libraries, templates, and practical projectsBoost your career, freelancing, or entrepreneurship with AI-powered workflowsSave time and money by automating repetitive and creative tasksStay competitive in a fast-changing digital world driven by AI Why This Course is Relevant Today:AI is not the future — it’s the present, transforming how we work, learn, and create. In 2025, professionals across every industry are using ChatGPT to draft proposals, write content, build strategies, manage data, and even develop software. This course prepares you to not just use AI tools, but to lead the change with smart, responsible, and effective AI usage.Whether you're a student, entrepreneur, freelancer, marketer, or corporate professional — this course gives you a future-ready skillset that helps you grow faster, work smarter, and create more.

0.0•8.3K•Self-paced
FREE$88.99
Enroll
Introduction to Docker : Containerization & Microservices
IT & Software
1.0K left

Introduction to Docker : Containerization & Microservices

Udemy Instructor

Docker in 2024: The Backbone of Modern Application DeploymentAs we navigate through 2024, Docker remains a pivotal technology in the realm of application deployment and development. Originally introduced in 2013, Docker has evolved significantly, but its core value proposition—simplifying and standardizing application deployment—has remained consistent.Docker's containerization technology offers a unified solution for packaging applications and their dependencies into isolated units called containers. These containers are lightweight, portable, and consistent, allowing applications to run seamlessly across various environments, from a developer’s local machine to production servers in the cloud. In 2024, this feature is more critical than ever as businesses increasingly operate in hybrid and multi-cloud environments. Docker's ability to ensure that applications behave the same way regardless of where they are deployed reduces the common headaches associated with environment inconsistencies.Another key trend in 2024 is the continued rise of microservices architecture. Docker excels in this area by enabling the development and deployment of microservices in separate containers. This modular approach allows teams to build, update, and scale individual components of an application independently, leading to more agile development cycles and easier maintenance.Docker’s ecosystem has also expanded, with advanced orchestration tools like Kubernetes becoming more integrated into container workflows. Kubernetes, often used alongside Docker, provides powerful features for managing containerized applications at scale, making it easier to deploy, monitor, and scale applications dynamically.Security remains a top priority, and Docker's containerization provides an additional layer of isolation that helps mitigate security risks. By encapsulating applications and their dependencies, Docker reduces the potential attack surface and enhances overall system security.In summary, Docker's relevance in 2024 is undeniable. Its ability to simplify application deployment, support microservices, and integrate with modern orchestration tools makes it an essential technology for developers and organizations striving for efficiency and consistency in their software delivery processes.

0.0•662•Self-paced
FREE$88.99
Enroll