Dominio
Machine Learning & AI
Perfil de habilidad
Esta habilidad define expectativas en roles y niveles.
Roles
2
donde aparece esta habilidad
Niveles
5
ruta de crecimiento estructurada
Requisitos obligatorios
0
los otros 10 opcionales
Machine Learning & AI
Deep Learning
22/2/2026
Selecciona tu nivel actual y compara las expectativas.
La tabla muestra cómo crece la profundidad desde Junior hasta Principal.
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Understands the concept of transfer learning: pre-trained models, feature extraction, fine-tuning. Applies transfer learning via Hugging Face and torchvision for image and text tasks. Knows when transfer learning is more effective than training from scratch. | |
| LLM Engineer | Knows transfer learning basics: pre-training, fine-tuning, feature extraction. Understands how pre-trained LLMs are used for downstream tasks and applies basic transfer learning approach. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Applies transfer learning with pre-trained models (ResNet, BERT) for domain-specific tasks. Fine-tunes models on custom datasets with appropriate learning rate scheduling. Evaluates trade-offs between full fine-tuning and feature extraction. | |
| LLM Engineer | Applies transfer learning techniques for LLM adaptation: LoRA, QLoRA, and prompt tuning. Fine-tunes foundation models on domain-specific corpora. Evaluates catastrophic forgetting and optimizes training efficiency. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Designs transfer learning pipelines for scalable fine-tuning. Applies multi-task transfer learning, domain adaptation, few-shot learning. Creates domain-specific pre-trained models for the organization. Optimizes compute cost of transfer learning. | |
| LLM Engineer | Designs advanced transfer learning strategies: continual pre-training, multi-task transfer, cross-lingual transfer. Optimizes the trade-off between forgetting and adaptation for domain-specific models. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Defines transfer learning strategy for the data science team. Establishes internal model hub with pre-validated pre-trained models. Coordinates shared pre-training efforts and knowledge transfer across projects. | |
| LLM Engineer | Defines transfer learning standards for the LLM team. Establishes guidelines for base model selection, transfer strategy, evaluation. Coordinates transfer learning experiments and model selection. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Shapes pre-trained models and transfer learning strategy at organizational level. Defines investments in pre-training infrastructure. Evaluates foundation models and their applicability for organizational tasks. | |
| LLM Engineer | Shapes enterprise transfer learning strategy. Defines approaches to foundation model selection, org-wide transfer practices, and knowledge sharing between teams and products. |