We provide Artificial Intelligence R&D as a Service
Through Deep AI Lab, we fully support our Client’s AI R&D process with an “R&D as a Service” model (RDaaS), layering up our AI expertise to the Client’s existing, industry-specific know-how, offering a predictable delivery timeline for Proof of Concepts and AI Solution developments.
Data Science
Exploratory Data Analysis and insights
Data cleaning and feature engineering
A/B testing
Machine Learning
PyTorch
Lightning
Custom developed models
Performance test and synthetic data
Coding
API development
Microservices
Prototyping
CODING SERVICES
We value a transparent approach to consultancy engagements.
We strive to develop code according to the highest quality standards for software (PEP8), with a fully documented Python source. For most projects, we deliver a git-versioned, object-oriented library of documented modules to facilitate handover to other developers or machine learning engineers for further deployments on production or integrations.
On the same principle, we choose well-known, production-ready, open-source Python frameworks for data wrangling, data cleaning, feature engineering, visualization and Machine Learning development to avoid you get locked into any proprietary vendor:
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- PyTorch: for fast, flexible experimentation and efficient Deep Learning development
- PyTorch-Lightning: to further speed up research and development
- TensorFlow: developed by Google, it is a well-known library for distributed numerical computation and very large-scale applications
- Keras: high-level Deep Learning API for neural networks
- Scikit-Learn: when Deep Learning is not the best fit, we use the well-tested, robust framework for classical Machine Learning
- SpaCy – Industrial-strength Natural Language Processing framework.