Learn about us
Individual courses and packages with special discount
Technical labor programs endorsed by the Ministry of Education
Explore high-demand technology areas
Certifications from technology leaders
Descubre nuestra trayectoria como institución de educación de alta calidad
Programas alineados a certificaciones internacionales y necesidades del mercado global
Ver Oferta Académica CompletaThe AWS Certified Machine Learning Engineer - Associate (MLA-C01) course prepares professionals to build, operationalize, deploy, and maintain scalable and secure machine learning (ML) solutions and pipelines on AWS. Under the Practical Learning Method approach, participants receive a cloud entranc…
Ecosistema de servicios de ML e IA en la nube
Arquitectura base de soluciones de ML
Uso de servicios de IA listos para usar (Amazon Rekognition, Comprehend, etc.)
Opciones de almacenamiento de datos (Amazon S3, EFS, FSx)
Ingesta de datos en streaming (Amazon Kinesis, Apache Kafka)
Formatos de datos y mecanismos de extracción
Limpieza y procesamiento de datos (AWS Glue, AWS Glue DataBrew)
Ingeniería de características con Amazon SageMaker Data Wrangler
Almacenamiento y gestión con SageMaker Feature Store
Integridad de datos y mitigación de sesgos (SageMaker Clarify)
Algoritmos integrados de Amazon SageMaker
Modelos fundacionales y plantillas (Amazon Bedrock, SageMaker JumpStart)
Evaluación de viabilidad y selección de enfoques
Entornos de entrenamiento y frameworks soportados (TensorFlow, PyTorch)
Optimización y ajuste de hiperparámetros (AMT)
Técnicas de regularización y prevención de sobreajuste
Métricas de rendimiento y depuración del modelo (SageMaker Model Debugger)
Opciones de inferencia y tipos de endpoints (Tiempo real, Serverless, Batch)
Contenedores para ML (Amazon ECR, BYOC en SageMaker)
Infraestructura como Código (AWS CloudFormation, AWS CDK) y Auto Scaling
Principios de CI/CD aplicados a Machine Learning
Orquestación de flujos de trabajo con Amazon SageMaker Pipelines
Integración de repositorios y automatización (CodePipeline, CodeBuild, EventBridge)
Monitorización de inferencia y detección de desviación o drift (SageMaker Model Monitor)
Optimización de rendimiento y costos de infraestructura (Spot Instances, Cost Explorer)
Gobernanza y seguridad (Roles IAM, políticas, aislamiento de VPC y cifrado)
The AWS Certified Machine Learning Engineer - Associate (MLA-C01) course prepares professionals to build, operationalize, deploy, and maintain scalable and secure machine learning (ML) solutions and pipelines on AWS. Under the Practical Learning Method approach, participants receive a cloud entrance pack to apply concepts in real environments through hands-on workshops and labs, learning to ingest and transform data, train and refine models, automate orchestration with CI/CD pipelines, and secure ML workflows. Upon completion, you will master key operational solutions such as model and endpoint deployment (Amazon SageMaker), deep monitoring of inference performance (SageMaker Clarify and Model Monitor), and infrastructure optimization, leaving you fully prepared to perform effectively as a Machine Learning Engineer and successfully pass the new international certification exam.
At the end of the course, participants will be able to:
To participate in this training, attendees must meet the following requirements:
| Our Value Proposition | Benefit for Participant or Company |
|---|---|
| AWS Certified Machine Learning Engineer – Associate (MLA‑C01) International Certification | 40 hours |
| • E-learning reinforcement topics and exclusive materials and simulators | • Complementary platform with digital resources, study guides, support recordings and exam simulators. |
| • Flexible educational model (in-person or live remote) | • Possibility to choose modality without losing human interaction and teaching support. |
| • Focus on employability and professional performance and exam preparation. | • Preparation oriented to certification, job performance and professional scaling based on practice, enhanced with AI support. |
| • Integration of Artificial Intelligence in learning | • Students use AI tools to reinforce understanding, practice exams and enhance their productivity. |
| • International Certification included | • Official endorsement with global recognition. Includes certification exams and access to the partner platform. |
| • Laboratories in real learning environments. | • Unlimited practical experience with real lab accounts and access to professional cloud infrastructure. |
| • Live classes with certified expert instructors. | • Guided and personalized training with direct real-time support, not offline. Recorded classes only for review. |
| • Personalized attention, small groups. | • Individual tracking, progress evaluations and technical support during training. AI-proctored performance examiner. |
| • Post-certification support and extended access to resources | • Post-assistance, access to materials for and continuous updates. |
| • Practical methodology and real and/or simulated projects. | • Applied learning from day one: simulations, business cases, projects and real cloud environments. |
| • Certificates of Approval and/or participation. | • International Certification by AWS ACADEMY MEMBER INSTITUTION
• Infinity Training Institute USA: International Certification Diploma in English • Aula Matriz IETDH Colombia - Certificate of participation |
At Infinity Training Institute, we apply a comprehensive, ever-evolving methodology centered on practical learning, powered by Artificial Intelligence, enabling personalized instruction, performance assessment, and optimized preparation for international certifications with certified instructors, real labs, simulators, and e-learning platforms. Participants learn by doing, developing technical and professional skills in small groups, with personalized follow-up and pre and post-certification support. Infinity Training Institute: Learn. Apply. Get Certified. Transcend.
The AWS Certified Machine Learning Engineer - Associate (MLA-C01) course prepares professionals to build, operationalize, deploy, and maintain scalable and secure machine learning (ML) solutions and pipelines on AWS. Under the Practical Learning Method approach, participants receive a cloud entrance pack to apply concepts in real environments through hands-on workshops and labs, learning to ingest and transform data, train and refine models, automate orchestration with CI/CD pipelines, and secure ML workflows. Upon completion, you will master key operational solutions such as model and endpoint deployment (Amazon SageMaker), deep monitoring of inference performance (SageMaker Clarify and Model Monitor), and infrastructure optimization, leaving you fully prepared to perform effectively as a Machine Learning Engineer and successfully pass the new international certification exam.
At the end of the course, participants will be able to:
To participate in this training, attendees must meet the following requirements:
| Our Value Proposition | Benefit for Participant or Company |
|---|---|
| AWS Certified Machine Learning Engineer – Associate (MLA‑C01) International Certification | 40 hours |
| • E-learning reinforcement topics and exclusive materials and simulators | • Complementary platform with digital resources, study guides, support recordings and exam simulators. |
| • Flexible educational model (in-person or live remote) | • Possibility to choose modality without losing human interaction and teaching support. |
| • Focus on employability and professional performance and exam preparation. | • Preparation oriented to certification, job performance and professional scaling based on practice, enhanced with AI support. |
| • Integration of Artificial Intelligence in learning | • Students use AI tools to reinforce understanding, practice exams and enhance their productivity. |
| • International Certification included | • Official endorsement with global recognition. Includes certification exams and access to the partner platform. |
| • Laboratories in real learning environments. | • Unlimited practical experience with real lab accounts and access to professional cloud infrastructure. |
| • Live classes with certified expert instructors. | • Guided and personalized training with direct real-time support, not offline. Recorded classes only for review. |
| • Personalized attention, small groups. | • Individual tracking, progress evaluations and technical support during training. AI-proctored performance examiner. |
| • Post-certification support and extended access to resources | • Post-assistance, access to materials for and continuous updates. |
| • Practical methodology and real and/or simulated projects. | • Applied learning from day one: simulations, business cases, projects and real cloud environments. |
| • Certificates of Approval and/or participation. | • International Certification by AWS ACADEMY MEMBER INSTITUTION
• Infinity Training Institute USA: International Certification Diploma in English • Aula Matriz IETDH Colombia - Certificate of participation |
At Infinity Training Institute, we apply a comprehensive, ever-evolving methodology centered on practical learning, powered by Artificial Intelligence, enabling personalized instruction, performance assessment, and optimized preparation for international certifications with certified instructors, real labs, simulators, and e-learning platforms. Participants learn by doing, developing technical and professional skills in small groups, with personalized follow-up and pre and post-certification support. Infinity Training Institute: Learn. Apply. Get Certified. Transcend.
Solo te pedimos tu número para explicarte nuestra metodología y brindarte una atención personalizada.