I'm seeking an experienced AI developer / automation specialist to design and implement a significantly improved, efficient workflow using Grok (xAI's AI model) for reviewing property-related documents, with a core focus on Strata Reports (also known as Strata Inspection Reports or pre-purchase strata searches) in the Australian property market (primarily NSW, but applicable more broadly). Our current process involves manually uploading/reviewing large Strata Reports and related documents with Grok to extract insights, identify risks, and generate summaries for property buyers, investors, or strata stakeholders. We want to evolve this into a more powerful, structured, repeatable, and scalable AI-driven system. What We Do Today (Current Workflow Summary): Receive PDF documents: mainly Strata Reports (typically 100–400+ pages), plus supporting files like meeting minutes, financial statements, by-laws, insurance certificates, defect/engineer reports, sinking fund forecasts, and correspondence. Upload these to Grok for analysis. Ask Grok targeted questions to: Summarise key sections (e.g. financial health, levies outstanding/special levies, sinking/admin fund balances). Flag red flags/risks (e.g. major defects, pending litigation, underfunded repairs, by-law restrictions like no pets/short-term rentals, non-compliance with fire safety/cladding regs). Extract and interpret data (e.g. recent levy increases, insurance adequacy, planned capital works, disputes). Produce client-facing outputs: concise risk assessments, executive summaries, bullet-point highlights, or recommendations. This is done conversationally/ad-hoc per document, which works but is time-intensive and inconsistent for volume. Goal for the New Workflow: Build a more automated, intelligent, and professional-grade pipeline that: Handles batch/multiple document uploads or folder ingestion. Automatically parses/extracts structured data from PDFs (using OCR if needed for scanned docs). Applies consistent, custom analysis prompts/templates optimised for Grok. Generates standardised output reports (e.g. risk matrix, executive summary, detailed findings categorised by area: Financial, Legal/Compliance, Maintenance/Defects, By-Laws/Rules, Governance). Includes flagging of high/medium/low risks with explanations and page references. Optionally integrates basic chaining (e.g. follow-up questions based on initial findings) or exports (Markdown, PDF, CSV for key data points). Improves accuracy, speed, and consistency over manual prompting. Potentially adds user-friendly interface (web app, Streamlit, or simple script with file watcher) if feasible within budget. Key Document Focus – Strata Reports Explained: In Australia (especially NSW/QLD/VIC), Strata Reports are critical pre-purchase due-diligence documents for apartments, units, townhouses, or villas under strata title (shared ownership of common property). A typical report reviews 5+ years of Owners Corporation records and includes: Financials: admin/sinking fund balances, levy arrears, special levies, audit reports, budget forecasts. Meetings & Governance: minutes from AGMs/EGMs/committee, voting rights, committee details. Legal/Compliance: by-laws (e.g. pet bans, renovations, Airbnb), disputes/litigation, NCAT orders, compliance with fire safety, asbestos, cladding. Maintenance/Defects: building defect reports, repair history, planned works, engineer findings. Insurance: coverage details, claims history. Other: strata plan details, lot entitlements, any notices or orders. The AI needs to intelligently read these dense, variable-format documents and highlight anything that could materially affect a buyer's decision or future costs. Required Skills/Experience (what to look for in bids): Strong experience with Grok/xAI API (or similar LLMs like Claude/OpenAI if transferable). PDF parsing, text extraction (PyMuPDF, pdfplumber, LlamaParse, etc.). Prompt engineering for consistent, high-quality legal/financial document analysis. Python automation (LangChain/LlamaIndex helpful for chaining). Optional: building simple front-ends (Gradio/Streamlit) or integrations (Google Drive, email triggers). Understanding of Australian property/strata concepts is a big plus (but not mandatory if you're quick to learn from examples we'll provide).