In today's episode (#871), I'm joined by the gifted writer, speaker and ML developer Richmond Alake, who details what NoSQL databases are and why they're ideally suited for A.I. applications.
Richmond:
Is Staff Developer Advocate for AI and Machine Learning at MongoDB, a huge publicly-listed database company with over 5000 employees and over a billion dollars in annual revenue.
With Andrew Ng, he co-developed the DeepLearning.AI course “Prompt Compression and Query Optimization” that has been undertaken by over 13,000 people since its release last year.
Has delivered his courses on Coursera, DataCamp, and O'Reilly.
Authored 200+ technical articles with over a million total views, including as a writer for NVIDIA.
Previously held roles as an ML Architect, Computer Vision Engineer and Web Developer at a range of London-based companies.
Holds a Master’s in computer vision, machine learning and robotics from The University of Surrey in the UK.
Today's episode (filmed in-person at MongoDB's London HQ!) will appeal most to hands-on practitioners like data scientists, ML engineers and software developers, but Richmond does a stellar job of introducing technical concepts so any interested listener should enjoy the episode.
In today’s episode, Richmond details:
How NoSQL databases like MongoDB differ from relational, SQL-style databases.
Why NoSQL databases like MongoDB are particularly well-suited for developing modern A.I. applications, including Agentic A.I. applications.
How Mongo incorporates a native vector database, making it particularly well-suited to RAG (retrieval-augmented generation).
Why 2025 marks the beginning of the "multi-era" that will transform how we build A.I. systems.
His powerful framework for building winning A.I. strategies in today's hyper-competitive landscape.
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