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
Natural Language Processing
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 fundamentals of Natural Language Processing. Applies basic practices in daily work. Follows recommendations from the team and documentation. | |
| LLM Engineer | Knows NLP basics: tokenization, stemming, NER, sentiment analysis. Understands how classic NLP tasks are solved with LLM and applies basic text preprocessing techniques. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Applies modern NLP methods: word embeddings (Word2Vec, FastText), sequence models (LSTM), pre-trained transformers (BERT, RuBERT). Solves tasks: NER, topic modeling, text summarization, semantic similarity. Fine-tunes BERT for domain-specific tasks. | |
| LLM Engineer | Independently solves NLP tasks using LLM: text classification, NER, summarization, translation. Compares LLM approaches with classical methods, selects the optimal one for the task. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Designs production NLP systems with LLM integration. Develops RAG pipelines, semantic search, document understanding systems. Optimizes NLP models for production: distillation, quantization, efficient inference. Works with multilingual NLP. | |
| LLM Engineer | Designs comprehensive NLP systems based on LLM: multi-task learning, zero-shot transfer, domain adaptation. Optimizes quality through prompt engineering, fine-tuning, and ensemble approaches. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Defines NLP strategy for the data science team. Establishes reusable NLP components and shared text processing infrastructure. Coordinates the choice between custom NLP models and LLM-based approaches for different tasks. | |
| LLM Engineer | Defines NLP strategy for the LLM team. Establishes guidelines for approach selection (LLM vs classical NLP), evaluation methodology, domain adaptation strategies for various NLP tasks. |
| Rol | Obligatorio | Descripción |
|---|---|---|
| Data Scientist | Shapes NLP and LLM strategy at organizational level. Defines investments in NLP infrastructure, evaluates build vs buy for NLP solutions. Shapes scientific and technical leadership in natural language processing. | |
| LLM Engineer | Shapes enterprise NLP strategy based on LLM. Defines approaches to unified NLP platforms, multi-language support, and quality governance for NLP tasks at organizational scale. |