May 13, 2024, 6:38 p.m. | Olatunji Ayodele Abidemi

DEV Community dev.to


  1. Define the AI copilot's functionality: Determine the specific features and capabilities of the AI copilot, such as text completion, code suggestions, or data analysis.


  2. Choose an integration method: Decide whether to integrate the AI copilot through Microsoft's APIs (e.g., Microsoft Graph), SDKs (e.g., Microsoft Cognitive Services), or by building a custom plugin.


  3. Develop the AI copilot: Create the AI copilot using a suitable framework (e.g., TensorFlow, PyTorch) and programming language (e.g., Python, C#). Ensure compatibility with Microsoft's ecosystem.


  4. Implement API …

ai ai copilot analysis apis azure building capabilities code code suggestions cognitive copilot data data analysis datascience features graph integration machinelearning microsoft plugin services suggestions text through

Senior Machine Learning Engineer

@ GPTZero | Toronto, Canada

ML/AI Engineer / NLP Expert - Custom LLM Development (x/f/m)

@ HelloBetter | Remote

Data Scientist - Time Series Analysis

@ Qualco | Athens, Attica, Greece

Senior Data Scientist, Growth Analytics

@ Moloco | Singapore

Director, Data Science

@ DoubleVerify | Tel Aviv, Israel

Senior Data Scientist

@ Adyen | Chicago