Estimate construction costs from text with Telegram, OpenAI and DDC CWICR

A Telegram bot that converts natural-language work descriptions into detailed cost estimates using AI parsing, vector search, and the open-source DDC CWICR database with 55,000+ construction work items.

Who's it for

Contractors & Estimators** who need quick ballpark figures from verbal/text descriptions Construction managers** doing feasibility checks on-site via mobile BIM/CAD professionals** integrating text-based estimation into workflows Developers** building construction cost APIs or chatbots

What it does

Receives text messages in Telegram (work lists, specifications, notes) Parses input with AI (OpenAI/Claude/Gemini) into structured work items Searches DDC CWICR vector database via Qdrant for matching rates Calculates costs with full breakdown (labor, materials, machines) Exports results as HTML report, Excel, or PDF

Supports 9 languages: 🇩🇪 DE · 🇬🇧 EN · 🇷🇺 RU · 🇪🇸 ES · 🇫🇷 FR · 🇧🇷 PT · 🇨🇳 ZH · 🇦🇪 AR · 🇮🇳 HI

How it works

┌─────────────┐ ┌──────────────┐ ┌─────────────┐ ┌──────────────┐ │ Telegram │ → │ AI Parse │ → │ Embeddings │ → │ Qdrant │ │ Text Input │ │ (GPT/Claude)│ │ (OpenAI) │ │ Search │ └─────────────┘ └──────────────┘ └─────────────┘ └──────────────┘ ↓ ┌─────────────┐ ┌──────────────┐ ┌─────────────┐ ┌──────────────┐ │ Export │ ← │ Aggregate │ ← │ Calculate │ ← │ AI Rerank │ │ HTML/XLS/PDF│ │ Results │ │ Costs │ │ Results │ └─────────────┘ └──────────────┘ └─────────────┘ └──────────────┘

Step-by-step: User sends /start → selects language → enters work description AI Parse extracts work items: name, quantity, unit, room Query Transform optimizes search terms for construction domain Embeddings API converts query to vector (OpenAI text-embedding-3-small) Qdrant Search finds top-10 matching rates from DDC CWICR AI Rerank selects best match considering context and units Calculate applies quantities, sums labor/materials/machines Report sends Telegram message + optional Excel/PDF export

Prerequisites

| Component | Requirement | |-----------|-------------| | n8n | v1.30+ (AI nodes support) | | Telegram Bot | Token from @BotFather | | OpenAI API | For embeddings + LLM parsing | | Qdrant | Vector DB with DDC CWICR collections loaded | | DDC CWICR Data | github.com/datadrivenconstruction/DDC-CWICR |

Setup

  1. Credentials (n8n Settings → Credentials) OpenAI API** — required for embeddings and text parsing Anthropic API** — optional, for Claude models Google Gemini API** — optional, for Gemini models

  2. Configuration (🔑 TOKEN node) bot_token = YOUR_TELEGRAM_BOT_TOKEN QDRANT_URL = http://localhost:6333 QDRANT_API_KEY = (if using Qdrant Cloud)

  3. Qdrant Setup Load DDC CWICR collections for your target languages: DE_construction_rates — German (STLB-Bau based) EN_construction_rates — English RU_construction_rates — Russian (GESN/FER based) ... (see DDC CWICR docs for all 9 languages)

  4. Link AI Model Nodes Open OpenAI Model nodes Select your OpenAI credential (Optional) Enable Claude/Gemini nodes for alternative models

  5. Telegram Webhook Activate workflow Telegram Trigger auto-registers webhook Test with /start in your bot

Features

| Feature | Description | |---------|-------------| | 🤖 Multi-LLM | Swap between OpenAI, Claude, Gemini | | 🌍 9 Languages | Full UI + database localization | | 📝 Smart Parsing | Handles lists, tables, free-form text | | 🔍 Semantic Search | Vector similarity + AI reranking | | 📊 Cost Breakdown | Labor, materials, machines, hours | | ✏️ Inline Edit | Modify quantities, delete items | | 📤 Export | HTML report, Excel, PDF | | 💾 Session State | Multi-turn conversation support |

Example Input/Output

Input (Telegram message): Living room renovation: Laminate flooring 25 m² Wall painting 60 m² Ceiling plasterboard 25 m² 3 electrical outlets

Output: ✅ Estimate Ready — 4 items found

Laminate flooring ✓ 25 m² × €18.50 = €462.50 └ Labor: €125 · Materials: €337.50

Wall painting ✓ 60 m² × €8.20 = €492.00 └ Labor: €312 · Materials: €180

Ceiling plasterboard ✓ 25 m² × €32.00 = €800.00 └ Labor: €425 · Materials: €375

Electrical outlets ✓ 3 pcs × €45.00 = €135.00 └ Labor: €95 · Materials: €40

───────────────────── Total: €1,889.50

[↓ Excel] [↓ PDF] [↻ Restart]

Notes & Tips

First run:** Ensure Qdrant has DDC CWICR data loaded before testing Rate accuracy:** Results depend on query quality; AI reranking improves matching Large lists:** Bot handles 50+ items; progress shown per-item Customization:** Edit Config node for UI text, currencies, database mapping Extend:** Chain with your CRM, project management, or reporting tools

Categories

AI · Data Extraction · Communication · Files & Storage

Tags

telegram-bot, construction, cost-estimation, qdrant, vector-search, openai, multilingual, bim, cad

Author

DataDrivenConstruction.io
https://DataDrivenConstruction.io
info@datadrivenconstruction.io

Consulting & Training

We help construction, engineering, and technology firms implement: Open data principles for construction CAD/BIM processing automation AI-powered estimation pipelines ETL workflows for construction databases

Contact us to test with your data or adapt to your project requirements.

Resources

DDC CWICR Database:** GitHub Qdrant Setup Guide:** qdrant.tech/documentation n8n AI Nodes:** docs.n8n.io/integrations/builtin/cluster-nodes/root-nodes/n8n-nodes-langchain

⭐ Star us on GitHub! github.com/datadrivenconstruction/DDC-CWICR

0
Downloads
5
Views
8.51
Quality Score
intermediate
Complexity
Author:Artem Boiko(View Original →)
Created:2/13/2026
Updated:3/11/2026

🔒 Please log in to import templates to n8n and favorite templates

Workflow Visualization

Loading...

Preparing workflow renderer

Comments (0)

Login to post comments