Google Ads MCP Server vs Powabase: Features, Pricing & Which Is Better (2026)
A side-by-side comparison of Google Ads MCP Server and Powabase — features, pricing, and ideal use cases — to help you decide which AI tool fits your workflow.
Google Ads MCP Server
HireOtto
Hosted and open-source Model Context Protocol server to manage Google Ads from MCP clients (e.g., Claude) without Google Cloud or terminal setup.
Key features
- Hosted Remote MCP Server: A hosted endpoint that lets MCP clients (for example Claude Desktop) call Google Ads management tools without requiring Google Cloud setup, terminal use, or manual JSON edits.
- Self-Hosted Node.js/TypeScript Implementation: Open-source repositories provide Node.js and TypeScript servers you can run locally or in containers with simple .env-based configuration for Google Ads API credentials.
- Campaign Management Tools: Programmatic creation, retrieval, update, and budget adjustments for campaigns and ad groups, including parameters like campaign_id and budget_euros for direct modification.
- Unified MCP Tooling Endpoint: All tools are exposed via a consistent POST /api/mcp interface and support MCP streamable HTTP JSON-RPC (initialize, tools/list, tools/call) for agent interoperability.
- Analytics & Reporting: Export campaign and performance reports to CSV or JSON, request date-range filtered metrics, and retrieve conversion and cost statistics for optimization and reporting.
- Rate-Limit Handling & Retries: Built-in handling of Google Ads API rate limits with automatic retries to reduce manual error-handling and throttle issues.
- OAuth2 & Simple Configuration: Supports standard Google Ads OAuth2 credentials (client id/secret, refresh token, developer token) with inline JSON in .env for straightforward setup.
- Extensible Tools & Workflows: Modular tool implementations (accounts, campaigns, ads, keywords, conversions, performance, shopping) allowing customization and addition of new MCP tools.
- MCP-compatible toolset exposing Google Ads operations (campaigns, ad groups, ads, keywords, conversions, performance, analytics, shopping).
- POST /api/mcp endpoint with ToolResponse shape ({ok:true,data} | {ok:false,error}) and support for MCP Streamable HTTP JSON-RPC (initialize, tools/list, tools/call).
- Campaign management operations (create/update budgets, retrieve campaign stats).
- Analytics & reporting with export options to CSV or JSON (export_report with parameters: format, days).
- Autocomplete/keyword-sourcing tools (Google Autocomplete, Trends, keyword clustering in some forks).
- Configuration via .env (inline JSON or environment variables) and example .env templates included.
- OAuth2 support: instructions and scripts to obtain refresh tokens; requires Google Ads developer token, client ID/secret, refresh token, optional login-customer-id.
- Automatic handling of Google Ads API rate limits and retry logic.
- Multiple installation options: npm/pnpm (local/global), npx (no install), Docker images available on GHCR.
- Claude Desktop integration helpers and example claude_desktop_config.json for adding to MCP clients.
Best for
- Agent-driven Campaign Launches: Use an MCP-capable agent (like Claude) to create and configure Google Ads campaigns via natural-language prompts without touching Google Cloud or API JSON.
- Daily Campaign Monitoring and Alerts: Query campaign performance and get daily summaries or alerts from the MCP server for rapid status checks and anomaly detection.
- Automated Budget Optimization: Programmatically adjust daily budgets and bids across accounts using scheduled agent workflows or triggered rules exposed through MCP tools.
- Exporting Stakeholder Reports: Generate CSV or JSON exports of campaign, conversion, and cost metrics for sharing with teams or importing into BI tools.
- Keyword & Trend Research Integration: Combine Google Autocomplete, Trends, and Search Console-derived keyword data (available in some implementations) to inform campaign targeting from the same MCP endpoint.
- Local Development and Custom Extensions: Developers can run the open-source server locally, add custom tools (e.g., custom analytics or bidding strategies), and integrate with CI/CD or containerized deployments.
- Integrating Ads Management into ChatOps: Embed Google Ads operations into chat-based workflows or agent orchestrations so non-technical marketers can request changes conversationally.
- Manage Google Ads campaigns programmatically from an MCP-enabled chat assistant or desktop client (e.g., create/update campaigns, budgets).
- Run daily campaign monitoring and automated campaign optimization workflows via LLM agents.
- Export campaign reports for analysis (CSV/JSON) and feed results back into an agent for decision-making.
Powabase
Powabase
Backend-as-a-Service combining per-project Postgres, storage, auth, realtime, RAG pipeline and agent runtime for AI apps.
Key features
- Per-Project Postgres Provisioning: Automatically provisions an isolated Postgres instance (with pgvector) per project, providing persistent storage and a vector store for RAG workflows.
- Integrated BaaS Surfaces: Built-in auth (GoTrue-compatible), storage, REST (PostgREST) and realtime features that are compatible with Supabase client libraries for seamless developer experience.
- Document Extraction and Indexing Pipeline: On upload, documents are extracted, converted to embeddings and indexed for retrieval-augmented generation and fast semantic search.
- Agent Runtime and Tooling: Hosts an agent runtime that runs agents and enables them to call external tools over plain HTTP or the MCP protocol, simplifying tool integration.
- HTTP-First API Surface: Exposes agents, orchestrations, workflows, sources and knowledge bases as plain HTTP endpoints under /api/, requiring no special SDK to drive platform features.
- Orchestration and Workflows: Provides workflow and orchestration primitives to coordinate multi-agent processes, human-in-the-loop steps, and automated pipelines.
- Self-Host or Managed Deployment: Offers both self-hosting options for data control and a hosted service for quick onboarding and lower operational overhead.
- Per-project Postgres with pgvector for vector storage and full SQL access
