Conquer the AWS MLS-C01 Exam: Machine Learning Practice Test
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Conquer the AWS MLS-C01 Exam: Machine Learning Practice Test
$44.99 Original price was: $44.99.$14.00Current price is: $14.00.
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Conquer the AWS MLS-C01 Exam: Machine Learning Practice Test
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Udemy.com
as of December 19, 2024 3:25 am
Achieve AWS Certified Machine Learning Specialty success with realistic practice and expert explanations | CertShield-24
Created by:
Priya Dw | CertifyQuick - CertShield
Hi, I am solopreneur, Helping Professionals Achieve Success
Hi, I am solopreneur, Helping Professionals Achieve Success
Rating:5 (4reviews)
81students enrolled
What Will I Learn?
- AWS ML Ecosystem: Knowing the breadth of AWS ML services (SageMaker, Rekognition, Comprehend, etc.) and when to choose each.
- Data Preparation (SageMaker): Cleaning, transforming, and engineering features for ML workloads on AWS.
- Model Development (SageMaker): Building, training, and tuning ML models within the SageMaker environment, along with algorithm selection.
- Deployment and Scaling: Operationalizing models as endpoints, batch predictions, and optimizing for performance within AWS infrastructure.
- Monitoring and Retraining: Tracking model performance in production and implementing strategies for updating models over time.
- Security and Compliance: Ensuring data privacy, model security, and applying best practices relevant to regulated industries.
- Exploratory Data Analysis (EDA): Analyzing datasets to uncover patterns, biases, and relationships to inform modeling decisions.
- Hyperparameter Tuning: Optimizing ML model performance by finding the best hyperparameter configurations.
- MLOps: Building CI/CD pipelines for machine learning, automating model development, deployment, and retraining processes.
- Cost Optimization: Understanding cost drivers of different AWS ML services and strategies to optimize for cost-efficient solutions.
- Problem Framing: Translating business problems into solvable ML tasks.
- Evaluation Metrics: Choosing appropriate metrics to assess model performance based on the specific use case.
- AWS Service Selection: Making informed decisions on when to use pre-built services (like Comprehend) vs. developing custom models in SageMaker.
Requirements
- AWS strongly recommends: Hands-on AWS Experience: At least one or two years of building, architecting, and running ML workloads on AWS. Machine Learning Proficiency: In-depth understanding of ML concepts, algorithms, frameworks (e.g., TensorFlow, PyTorch, scikit-learn). Python Fluency: Python is the primary language for working with AWS ML services.
Target audience
- Experienced ML Practitioners:
- - Data Scientists: Professionals who already design, build, and train ML models and want to showcase their ability to leverage AWS services for efficient and scalable ML solutions.
- - ML Engineers: Those focused on operationalizing ML models, building automated pipelines, and handling the deployment of ML solutions on AWS.
- Developers Expanding into ML:
- - Software Developers: Developers experienced with AWS who want to broaden their skillset by incorporating ML capabilities into their applications. Having a grasp of ML fundamentals and some Python knowledge is helpful.
- Solutions Architects (With ML Focus):
- - Architects designing ML-powered systems: The certification helps architects make informed choices about AWS ML tools and integration strategies for the solutions they design.
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