Data & AI

Software and DevOps

Machine Learning

Dark Wolf possesses deep expertise in AI and Machine Learning, specializing in computer vision, natural language processing, and machine learning operations (MLOps). We leverage computer vision models and 3D production expertise for digital analysis, 3D reconstruction, and multimedia content generation. Our natural language processing (NLP) capabilities, including large language models (LLMs) and Bidirectional Encoder Representations from Transforms (BERT), enable us to develop intelligent data understanding solutions. Furthermore, our MLOps expertise allows us to operationalize ML, modernize code, and integrate ML development within a modern DevOps software development lifecycle, ensuring rapid and efficient delivery of ML analytics to production.

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Data Engineering

Data is a strategic asset that enables organizations to derive insights, increase efficiencies, and maintain advantage over competitors and adversaries. Dark Wolf has in-depth experience implementing performant and secure modern data platform solutions for the enterprise that provide product teams with self-service data tools and services to ingest, transform, store, and query data at scale. Our reference design data mesh platform integrates industry leading modular open architecture solutions, offering highly configurable data pipelines, data catalog, and data warehouse services that provide fine-grained access control, ensure high visibility, and rapidly scale to support massive volumes of data.

Data Analysis and Visualization ​

Dark Wolf has a broad and diverse range of data analysis and visualization expertise across a variety of customers and domains. We possess deep expertise with multimedia file formats and specifications, including metadata extraction and device and software provenance. We develop custom software using Python scientific libraries such as pandas, numpy, matplotlib, and juypter notebooks. We use Elastic, Grafana, Looker, and other visualization platforms to develop and configure data visualization dashboards to effectively communicate data relationships and patterns visually using charts, graphs, and tables.

 
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