Corporate law boutique
- Challenge
- 200-page dataroom first-pass review took 11 hours per matter.
- Simplileap solution
- Private RAG with citation anchors and human sign-off gates.
- Outcome
- Review time 11h → 3.5h; zero unverified citations in pilot.
// Automate
Unstructured data is expensive to process manually. We build AI-powered data processing workflows that extract, classify, transform, and route data at scale, from documents, emails, images, and audio.
// Key benefits
Invoice extraction, contract analysis, form processing, and document classification using Azure Document Intelligence, AWS Textract, or GPT-4 Vision for complex layouts.
High-volume batch document processing with Celery/Kafka, or real-time stream processing with AWS Lambda triggers, matching throughput to your data volume and latency requirements.
AI extraction outputs are validated against business rules, confidence thresholds, and cross-validation checks before writing to your data store.
// Details
Document processing, data classification, and entity extraction have traditionally required human review teams. AI now handles these tasks accurately enough for automated processing, with human review reserved for low-confidence edge cases.
We build processing pipelines with appropriate AI services for each data type: Document Intelligence for structured documents, LLMs for unstructured text, computer vision for images.
// What this includes
// Deliverables
Every engagement produces clear, documented deliverables. Here is exactly what is included in our ai data processing workflows service.
// In practice
We typically anchor the first sprint on document intelligence. Unstructured data is expensive to process manually. We build AI-powered data processing workflows that extract, classify, transform, and route data at scale, from documents, emails, images, and audio. On Residency Road engagements, discovery maps dependencies and success metrics before sprint one. Every automation ships with exception queues, audit logs, and a baseline metric so ROI is measurable within 30 days.
// Stack & frameworks
// Delivery
01
Dependencies, API contracts, compliance constraints, and performance budgets documented before sprint one.
02
Two-week increments with GitHub access, demo recordings, and QA checkpoints, client visibility at every stage.
03
Automated tests on critical paths, security review, runbooks, and knowledge transfer to your team.
// Proof
Corporate law boutique
// Engagement models
| Package | Ideal for | Investment | Includes |
|---|---|---|---|
| Workflow automation | Ops teams | ₹3L – ₹10L |
|
| AI / LLM integration | Product teams | ₹4L – ₹12L |
|
| RPA implementation | Back-office | Scoped per process |
|
// Company and service positioning
Company and Service positioning is reviewed for production delivery standards by Harsha Parthasarathy (Co-Founder, Strategy & Operations 24+ years IT veteran, IBM, Global Delivery, Program Management) and Keshav Sharma (Co-Founder, Engineering and Lead Architect, Full-stack engineering, product delivery and technical standards).
CIN
AAU-8582
Startup India
Founded
November 2020
Office
Residency Rd, Bengaluru, India
// FAQ
For well-structured documents (invoices, purchase orders), modern AI extraction achieves 95–99% field-level accuracy. For unstructured or variable documents, accuracy ranges from 80–95% depending on variation. We establish accuracy baselines and monitor drift.
Yes, modern document AI models support 50+ languages. Accuracy varies by language; Latin-script languages generally perform better than non-Latin scripts.
Share your requirements with our team. We respond within one business day with a clear plan from discovery to delivery.