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TCG AI Tax Genie features

 TCG AI Tax Genie- feature list

Here are all the core features, categorized 


1. The Intelligence Hub (Research & Awareness)

  • Real-time Regulatory Scanning: 24/7 monitoring of global, federal, and local tax code changes (including 2026 mandates like Pillar Two).

  • Automated Case Law Summarization: High-speed analysis of complex tax tribunal rulings into 1-page actionable insights.

  • Contextual Impact Alerts: Personalized notifications that explain exactly how a new law affects your specific business profile or industry.

  • Multi-Jurisdictional Nexus Tracking: Continuous monitoring of sales thresholds across 10,000+ jurisdictions to alert you of new filing obligations.

2. Autonomous Compliance (The "Tasker" Agents)

  • End-to-End GST/VAT Orchestration: Autonomous reconciliation of thousands of purchase and sales invoices in minutes.

  • Intelligent Data Auto-Population: Pre-filling returns by extracting data from Form 16, TDS certificates, and bank statements.

  • HSN/SAC Classification Engine: AI-driven tagging of goods and services to ensure correct tax rate application.

  • Bulk Invoice Processing: High-speed OCR (Optical Character Recognition) for messy PDFs, photos, and handwritten receipts.

3. Strategic Advisory (Forecasting & Planning)

  • "What-If" Scenario Modeling: Simulating the tax impact of business expansions, M&As, or new product launches.

  • Predictive Cash Flow Analysis: Forecasting future tax liabilities based on real-time business momentum.

  • ITC (Input Tax Credit) Optimization: Identifying missed credit opportunities and flagging ineligible claims to prevent penalties.

  • Narrative Report Generation: Converting dry financial data into stakeholder-ready narratives for board meetings or audits.

4. Risk & Governance (Audit-Ready Protection)

  • Pre-Filing Anomaly Detection: An "Internal Auditor" agent that flags red flags (e.g., unusual depreciation) before submission.

  • Immutable Audit Trails: A tamper-proof log of every decision and data source used by the AI for total transparency.

  • Vendor Compliance Monitoring: Automatically tracking vendor filing status to protect your Input Tax Credit.

  • Litigation Support: Auto-organizing case files and drafting initial responses to tax notices.

5. Security & Privacy (The Vault)

  • Zero-Trust Agent Access: Granular, "just-in-time" permissions for AI agents—no broad administrative access.

  • GDPR 2.0 / DPDPA Compliance: Automated data minimization, PII masking, and "Right-to-Erasure" protocols.

  • Regional Data Residency: Ensuring sensitive financial data stays within specific geographic borders (e.g., EU data in EU vaults).

  • Post-Quantum Encryption: Future-proof data protection for all transmissions and storage.

6. Human-AI Collaboration (The Workflow)

  • Human-in-the-Loop (HITL) Sign-off: A non-negotiable gateway where a human expert (CA/CPA) reviews and approves final filings.

  • Multi-Persona Interaction: The ability to "chat" with specialized agents (e.g., a "Transfer Pricing Specialist" vs. an "Indirect Tax Agent").

  • Integration Ecosystem: Seamless "plug-and-play" connectors for SAP, Oracle, Tally, and Microsoft Dynamics.


Infographic Quick-Stats (The "Bottom Line")

  • 40% faster lead-to-filing time.

  • 99.9% accuracy in automated data extraction.

  • Zero manual entry for 80% of standard transactions.

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