Undergraduate Certificate in DevOps Practices for Data Science in the Cloud
-- viendo ahoraThe Undergraduate Certificate in DevOps Practices for Data Science in the Cloud is a comprehensive course designed to meet the growing industry demand for professionals with expertise in DevOps and data science. This certificate program equips learners with essential skills to excel in today's dynamic and data-driven cloud computing landscape.
4.566+
Students enrolled
GBP £ 140
GBP £ 202
Save 44% with our special offer
Acerca de este curso
HundredPercentOnline
LearnFromAnywhere
ShareableCertificate
AddToLinkedIn
TwoMonthsToComplete
AtTwoThreeHoursAWeek
StartAnytime
Sin perรญodo de espera
Detalles del Curso
โข Version Control with Git: an introduction to using Git for version control in DevOps, including basic commands, branching, and merging.
โข Cloud Fundamentals: an overview of cloud computing concepts, including Infrastructure-as-a-Service (IaaS), Platform-as-a-Service (PaaS), and Software-as-a-Service (SaaS), with a focus on public cloud providers such as Amazon Web Services (AWS), Microsoft Azure, and Google Cloud Platform (GCP).
โข DevOps Tools for Data Science: an exploration of tools commonly used in DevOps for data science, such as Docker, Kubernetes, and Jenkins, including containerization, orchestration, and continuous integration and delivery (CI/CD).
โข Infrastructure as Code (IaC): an introduction to IaC concepts and tools, such as Terraform, Ansible, and Chef, including writing and deploying code to automate infrastructure provisioning and configuration.
โข Monitoring and Logging: an overview of monitoring and logging tools and best practices, including Prometheus, Grafana, Elasticsearch, and Logstash, for tracking and analyzing system performance and errors in cloud-based data science environments.
โข Security in DevOps: an exploration of security best practices and tools for DevOps, including secrets management, vulnerability scanning, and compliance, with a focus on securing cloud-based data science workflows.
โข Data Pipelines and Workflows: an introduction to building and managing data pipelines and workflows in cloud-based DevOps environments, including orchestration tools such as Apache Airflow and AWS Step Functions.
โข Cloud-Native Machine Learning: an exploration of cloud-native machine learning frameworks and platforms, such as TensorFlow, PyTorch, and Kubeflow, including deploying and scaling machine learning models in cloud-based DevOps environments.
โข DevOps Culture and Collaboration: an overview of the cultural and collaboration aspects of DevOps, including agile methodologies, communication, and collaboration best practices, with a focus on building effective data science teams in cloud
Trayectoria Profesional
Requisitos de Entrada
- Comprensiรณn bรกsica de la materia
- Competencia en idioma inglรฉs
- Acceso a computadora e internet
- Habilidades bรกsicas de computadora
- Dedicaciรณn para completar el curso
No se requieren calificaciones formales previas. El curso estรก diseรฑado para la accesibilidad.
Estado del Curso
Este curso proporciona conocimientos y habilidades prรกcticas para el desarrollo profesional. Es:
- No acreditado por un organismo reconocido
- No regulado por una instituciรณn autorizada
- Complementario a las calificaciones formales
Recibirรกs un certificado de finalizaciรณn al completar exitosamente el curso.
Por quรฉ la gente nos elige para su carrera
Cargando reseรฑas...
Preguntas Frecuentes
Tarifa del curso
- 3-4 horas por semana
- Entrega temprana del certificado
- Inscripciรณn abierta - comienza cuando quieras
- 2-3 horas por semana
- Entrega regular del certificado
- Inscripciรณn abierta - comienza cuando quieras
- Acceso completo al curso
- Certificado digital
- Materiales del curso
Obtener informaciรณn del curso
Obtener un certificado de carrera