Laborategiak hainbat hardware eta software ditu, AI algoritmoak produktu eta prozesuetan txertatzeko helburu nagusiarekin, garapen-prozesuko fase ezberdinetan lantzen delarik: 1) Datuen kalitatearen harrapaketa eta analisia 2) Datu sintetikoen etiketatzea eta sorkuntza 3) Arkitektura, algoritmoak, hiperparametroak eta ereduaren entrenamenduaren hautaketa 4) Hedapena
Data
Deployment and Application
Developments
Infrastructure and Computing
Computer vision: 2D, 3D, hyperspectral. Various approaches: Classification, localization, detection, segmentation, pose detection.
Computer vision covers the analysis of images in 2D, 3D, and hyperspectral spectra, enabling the interpretation of scenes with different levels of detail. Various techniques such as classification, localization, detection, segmentation, and pose detection are used to extract useful information in industrial, medical, and scientific applications.
Data synthesis: Hybrid models, GANs.
Artificial generation of data that mimics the characteristics of real data. It is used in various applications, such as training artificial intelligence models when real data is scarce or sensitive.
Hybrid Models: They combine statistical, physical, or machine learning approaches to generate synthetic data with greater realism and coherence with the original data.
GANs (Generative Adversarial Networks): These are neural networks that pit a generator against a discriminator in a competitive learning process to produce synthetic data indistinguishable from real data, used in images, audio, and other domains.
Data-driven modeling: Forecasting, Diagnosis, Prognosis, Anomaly detection, Quantum Machine Learning, Deep Learning (MLP, RNN, CNN, Transformers, LLMs, Multimodal). Algorithm explainability (XAI): LIME, SHAP, GRAD-CAM, DeepLift.
Different data models for various problems. Forecasting, Diagnosis, Prognosis, Anomaly detection, Quantum Machine Learning, Deep Learning (MLP, RNN, CNN, Transformers, LLMs, Multimodal). Algorithm explainability (XAI): LIME, SHAP, GRAD-CAM, DeepLift.
Deployment: MLOps
Deployment of AI algorithms following MLOps best practices.
Diverse data sources and data quality: Signal, Text, GIS, Image...
Processing of data from various data sources with appropriate feature extraction for each type of data source. Different domains such as Signal, Text, GIS, and Image.
Demonstration, approach, technical feasibility analysis, proof of concept, and training.
Demonstration, approach, technical feasibility analysis, proof of concept, and training.
Demonstration, approach, technical feasibility analysis, proof of concept, and training.
Demonstration, approach, technical feasibility analysis, proof of concept, and training.