Log in

goodpods headphones icon

To access all our features

Open the Goodpods app
Close icon
headphones
Constructed Futures

Constructed Futures

Hugh Seaton

A weekly conversation about the future of our built environment, featuring outside experts and seasoned leaders in construction, architecture and more.
Share icon

All episodes

Best episodes

Top 10 Constructed Futures Episodes

Goodpods has curated a list of the 10 best Constructed Futures episodes, ranked by the number of listens and likes each episode have garnered from our listeners. If you are listening to Constructed Futures for the first time, there's no better place to start than with one of these standout episodes. If you are a fan of the show, vote for your favorite Constructed Futures episode by adding your comments to the episode page.

Constructed Futures - Daniel Hewson: Construction Data & AI at Elecosoft
play

11/12/24 • 30 min

Check out Elecosoft here: https://elecosoft.com/us/

Follow Daniel here

bookmark
plus icon
share episode

Check out SmartBuild here: https://smrtbld.com/

Check out SMRT-E here: https://smrte.ai

bookmark
plus icon
share episode

Follow Sarah here

Check out Fifth Wall here: https://fifthwall.com/

bookmark
plus icon
share episode
Constructed Futures - Eshan Jayamanne: AI Supply Chain Management at Krane
play

01/23/25 • 24 min

Check out Krane here: https://krane.tech/

Follow Eshan here

bookmark
plus icon
share episode

Follow Tanner here

Check out Built here: https://getbuilt.com/

bookmark
plus icon
share episode

Check out The Link.AI Consulting at https://agentic.construction

Connect with Hugh on Linkedin

Here's a shorter briefing based on the same information

Executive Summary:

Anthropic's Model Context Protocol (MCP), announced in late November 2024, is an open protocol designed to standardize how AI systems interact with external data sources and tools. It aims to overcome the current fragmented landscape of AI integration, where bespoke solutions are often required for each new connection. MCP establishes a universal framework for communication, simplifying development, enhancing AI agent effectiveness through improved context and tool access, and fostering a vibrant ecosystem of AI capabilities. By utilizing a client-server architecture and defining key primitives for data and action exchange, MCP offers a more dynamic and context-aware approach compared to traditional REST APIs. The emergence of MCP registries and marketplaces like smithery.ai further signifies its potential to transform the future of AI by enabling more interconnected, adaptable, and powerful AI systems.

Key Themes and Important Ideas/Facts:

1. Addressing the Challenges of AI Integration:

  • The current method of integrating AI models with external resources is often complex and requires custom solutions for each connection. "When building AI applications today, each project frequently requires unique, bespoke solutions for how AI processes are constructed and how they connect with necessary data resources." (Introduction)
  • This leads to significant development and maintenance burdens.
  • MCP aims to solve this by providing a universal, open standard for connecting AI systems with data sources and tools. "MCP offers a unified solution to this problem by providing a universal, open standard for connecting AI systems with data sources, effectively replacing these fragmented integrations with a single, consistent protocol." (Introduction)
  • The motivation is to overcome the limitations of isolated AI models "trapped behind information silos and legacy systems." (Introduction, citing source 2)
  • MCP addresses the "MxN problem" by transforming it into an "N plus M setup," where each model and tool only needs to conform to the standard once. "Without a standardized protocol, this results in a complex web of M multiplied by N individual integrations... MCP's approach transforms this into a much simpler N plus M setup, where each tool and each model only needs to conform to the MCP standard once..." (Introduction, citing source 3)
  • By open-sourcing MCP, Anthropic intends to foster collaboration and a shared ecosystem.

2. Core Concepts of MCP:

  • Client-Server Architecture: MCP is built on this established pattern. "At its core, the Model Context Protocol (MCP) is built upon a client-server architecture, a well-established design pattern in computing, to facilitate the connection between AI models and external resources." (Core Concepts)
  • Host: The AI-powered application or agent environment the user interacts with (e.g., Claude desktop app, IDE plugin). "The Host is the AI-powered application or agent environment that the end-user directly interacts with." (Core Concepts) It can connect to multiple MCP servers and manages client permissions.
  • Client: An intermediary within the Host that manages the connection to a single MCP server, maintaining a one-to-one link. "The Client acts as an intermediary within the Host, responsible for managing the connection to a single MCP server." (Core Concepts) It handles communication lifecycle and maintains stateful sessions.
  • Server: An external program that implements MCP and provides capabilities (tools, data, prompts) for a specific domain (e.g., databases, cloud services). "The Server is a program, typically external to the AI model itself, that implements the MCP standard and provides a specific set of capabilities." (Core Concepts) Anthropic and the community have released servers for Google Drive, Slack, GitHub, Postgres, SQLite, and web browsing.
  • This architecture is likened to a "USB port" for AI. "This client-server architecture, often likened to a 'USB port' for AI applications, provides a standardized way for AI assistants to 'plug into' any data source or service without requiring custom code for each connection." (Core Concepts, citing source 3)

3. MCP vs. REST APIs for AI Agents:

  • Limitations of REST APIs: Require significant manual effort, lack standardized context management, often stateless, static API definitions. "Integrating AI a...
bookmark
plus icon
share episode

Follow Burcin here

Check out the Oracle Innovation Lab here: https://www.oracle.com/industries/innovation-lab/

bookmark
plus icon
share episode

Follow Lyron here: https://www.linkedin.com/in/lyronbentovim/

Check out the Glimpse Group here: https://www.theglimpsegroup.com/

bookmark
plus icon
share episode
Constructed Futures - AI Briefing Series:  Prompting New AI Models
play

04/21/25 • 11 min

Want to get more out of AI? Check out The Link.AI Consulting

bookmark
plus icon
share episode

Show more best episodes

Toggle view more icon

FAQ

How many episodes does Constructed Futures have?

Constructed Futures currently has 244 episodes available.

What topics does Constructed Futures cover?

The podcast is about Management, Architecture, Construction, Design, Data, Podcasts, Technology, Business, Artificial Intelligence and Innovation.

What is the most popular episode on Constructed Futures?

The episode title 'Jeffrey Rissman: The Road to a Zero-Carbon Industrial Nation' is the most popular.

What is the average episode length on Constructed Futures?

The average episode length on Constructed Futures is 28 minutes.

How often are episodes of Constructed Futures released?

Episodes of Constructed Futures are typically released every 4 days, 10 hours.

When was the first episode of Constructed Futures?

The first episode of Constructed Futures was released on Nov 1, 2020.

Show more FAQ

Toggle view more icon

Comments