Neszed-Mobile-header-logo
Thursday, August 21, 2025
Newszed-Header-Logo
HomeAIGoogle AI Released 5 New AI Agents/Platforms for Developers

Google AI Released 5 New AI Agents/Platforms for Developers

Google Cloud recently unveiled five specialized AI agents designed to streamline developer workflows—reducing manual effort, accelerating analysis, and lowering the barrier to advanced data and code automation. Each agent addresses a distinct developer challenge, from data pipeline orchestration to enterprise-grade GitHub management. Here’s a detailed look at what these agents do, their technical underpinnings, and how they fit into modern cloud-native and DevOps ecosystems.

1. BigQuery Data Agent

The BigQuery Data Agent brings natural-language automation to data pipeline creation and management within Google’s BigQuery platform. This agent is targeted at data engineers and analysts who want to focus on insights rather than boilerplate data plumbing.

Key Capabilities:

  • Automated Data Ingestion: Builds and manages data pipelines from sources like Google Cloud Storage with simple prompts, reducing the need for custom ETL scripts.
  • Zero-Code Data Quality: Maintains data quality and consistency through AI-driven checks and transformations—no hand-coding required.
  • AI-Assisted Data Preparation: Automates data cleansing, metadata generation, and schema evolution, supporting both structured and unstructured data.
  • Conversational Interface: Developers can describe pipeline logic in natural language, and the agent generates and optimizes the necessary SQL or DataFrames.

Technical Foundation:

Built on Gemini, the agent leverages LLM-driven intent recognition and code generation, with tight integration into BigQuery’s Knowledge Engine for metadata-aware data discovery and lineage.

2. Notebook Agent (NotebookLM for Enterprise)

The Notebook Agent, available as NotebookLM for Enterprise, supercharges BigQuery Notebooks with end-to-end AI-powered analytics and model building.

Key Capabilities:

  • EDA & Feature Engineering: Runs exploratory data analysis (EDA) and feature engineering via conversational prompts, automating tedious data science workflows.
  • SeaMLess ML Predictions: Generates predictions and models directly within notebooks, minimizing boilerplate code and manual tuning.
  • Curated Knowledge Bases: Organizes and synthesizes research, documentation, and datasets into reusable, interactive notebooks for teams.
  • Content Synthesis: Summarizes findings, generates FAQs, and can even produce audio summaries for asynchronous consumption.

Technical Foundation:

NotebookLM Enterprise is distinct from the general NotebookLM product—it integrates into BigQuery Notebooks, uses prompt-based control, and is tightly governed for enterprise security and collaboration.

3. Looker Code Assistant

Looker Code Assistant embeds generative AI directly into Looker’s data exploration and BI platform, making analytics accessible to non-technical users without sacrificing power.

Key Capabilities:

  • Natural Language Queries: Users ask questions in plain English and receive visualizations, Python code, or interactive charts as output.
  • Custom Visualization & LookML: Generates LookML and JSON formatting options from prompts, speeding up dashboard development.
  • Proactive Insights: Explains analysis methodology and suggests follow-up questions, enhancing trust and accessibility.
  • Data Context Awareness: Uses Looker’s semantic layer to ensure queries are accurate and relevant to business definitions.

Technical Foundation:

Powered by Gemini and Looker’s Explore API, the assistant translates natural language into optimized Looker queries, SQL, and visual code, bridging the gap between business users and analytics teams.

4. Database Migration Agent

The Database Migration Agent (DMS with Gemini Assist) simplifies and accelerates the transition from legacy databases (e.g., MySQL, Oracle, SQL Server) to modern, scalable Google Cloud databases like Spanner, Cloud SQL, and AlloyDB.

Key Capabilities:

  • AI-Powered Schema & Code Conversion: Reviews and converts stored procedures, functions, and schemas to cloud-native formats, reducing manual effort and migration risk.
  • Minimal Downtime: Leverages continuous replication for near-zero downtime during migration.
  • Explainable Migrations: Provides side-by-side comparisons of legacy and target code, with detailed explanations for developers.
  • Serverless Operation: Entirely managed by Google Cloud, with no infrastructure provisioning required.

Technical Foundation:

The agent uses Gemini to understand and translate database logic, validates migration outcomes, and guides users through each step of the process.

5. GitHub Agent (Gemini CLI GitHub Actions)

Gemini CLI GitHub Actions is an open-source, autonomous AI agent that supercharges GitHub workflows by automating routine repository management tasks.

Key Capabilities:

  • Issue Triage: Automatically labels, prioritizes, and routes GitHub issues based on content and project context.
  • Pull Request Review: Reviews code changes, suggests improvements, and provides instant feedback, reducing manual code review burdens.
  • On-Demand Collaboration: Developers can delegate tasks by tagging the agent in issues or PRs (e.g., “write tests for this bug”).
  • Customizable Workflows: Ships with default workflows but is fully open-source and extensible for team-specific needs.

Technical Foundation:

Built on Gemini CLI, the agent runs asynchronously in response to GitHub events, uses project context for accurate actions, and integrates directly into GitHub Actions pipelines.

Summary Table: Google’s New AI Agents for Developers

Agent Name Core Function Key Features Target Users Technical Foundation
BigQuery Data Agent Data pipeline automation Ingestion, quality, metadata, NL interface Data engineers, analysts Gemini, BigQuery Engine
Notebook Agent End-to-end notebook analytics EDA, feature engineering, ML, knowledge synthesis Data scientists, engineers NotebookLM, BigQuery
Looker Code Assistant Conversational analytics & BI NL queries, visualization, code generation, Explainable AI Analysts, business users Gemini, Looker API
Database Migration Agent Legacy DB → Cloud migration Schema/code conversion, validation, minimal downtime DB admins, DevOps Gemini, DMS
GitHub Agent (Gemini CLI) GitHub repo automation Issue triage, PR review, task delegation, open-source workflows Developers, DevOps Gemini CLI, GitHub

Summary

These agents represent a significant leap toward autonomous developer tooling—where repetitive, error-prone tasks are handled by AI, freeing developers to focus on innovation and business logic. They lower the technical floor for analytics, migration, and collaboration, while maintaining (or even raising) the ceiling for what’s possible with cloud-scale data and code.


This article is inspired from this LinkedIn post. Feel free to check out our GitHub Page for Tutorials, Codes and Notebooks. Also, feel free to follow us on Twitter and don’t forget to join our 100k+ ML SubReddit and Subscribe to our Newsletter.


Screen Shot 2021 09 14 at 9.02.24 AM

Asif Razzaq is the CEO of Marktechpost Media Inc.. As a visionary entrepreneur and engineer, Asif is committed to harnessing the potential of Artificial Intelligence for social good. His most recent endeavor is the launch of an Artificial Intelligence Media Platform, Marktechpost, which stands out for its in-depth coverage of machine learning and deep learning news that is both technically sound and easily understandable by a wide audience. The platform boasts of over 2 million monthly views, illustrating its popularity among audiences.

Source link

RELATED ARTICLES

LEAVE A REPLY

Please enter your comment!
Please enter your name here

Most Popular

Recent Comments