• Home
  • Fresh Content
  • Courses
  • Resources
  • Podcast
  • Talks
  • Publications
  • Sponsorship
  • Testimonials
  • Contact
  • Menu

Jon Krohn

  • Home
  • Fresh Content
  • Courses
  • Resources
  • Podcast
  • Talks
  • Publications
  • Sponsorship
  • Testimonials
  • Contact
Jon Krohn

NoSQL Is Ideal for AI Applications, with MongoDB’s Richmond Alake

Added on March 18, 2025 by Jon Krohn.

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.

The SuperDataScience podcast is available on all major podcasting platforms, YouTube, and at SuperDataScience.com.

In Data Science, Interview, Podcast, SuperDataScience, YouTube Tags superdatascience, nosql, mongodb, ai, llm, agenticai
← Newer: Microsoft’s “Majorana 1” Chip Brings Quantum ML Closer Older: OpenAI’s “Deep Research”: Get Days of Human Work Done in Minutes →
Back to Top