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
LLMs are transformative but unpredictable. We build production-grade LLM integrations with structured outputs, RAG pipelines, fallback handling, and cost management, so AI delivers value reliably, not just impressively in demos.
// Key benefits
LLMs have variable latency, occasional failures, and schema drift. We build integrations with retry logic, output validation, structured JSON extraction, and fallback strategies.
Retrieval-Augmented Generation grounds LLM responses in your specific documents and data, dramatically improving accuracy and reducing hallucination for knowledge-base applications.
LLM API costs scale with token usage. We optimise prompts, implement caching, route to appropriate model tiers, and monitor cost per operation.
// Details
Most LLM integrations work in demos and fail in production. The difference is in engineering: structured output parsing, retry handling, prompt version management, output evaluation, and cost monitoring.
We use LangChain or LlamaIndex for complex LLM orchestration, direct API integration for simpler use cases, and Instructor or Pydantic for structured output extraction.
// What this includes
// Deliverables
Every engagement produces clear, documented deliverables. Here is exactly what is included in our llm & gpt integrations service.
Production patterns and experience depth: Python expertise ›
// In practice
LLM features ship with JSON schema outputs, token budgets per user tier, and fallback copy when the model times out or returns invalid JSON. RAG chunks are versioned; embedding model changes trigger re-index jobs with progress metrics. Cost per successful task and hallucination rate on golden Q&A sets are tracked in Langfuse or Helicone before GA.
// 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
DIPP83124
Founded
November 2020
Office
Residency Rd, Bengaluru, India
// FAQ
GPT-4o is the most capable for general tasks with the best ecosystem. Claude excels at long context and nuanced instructions. Open-source (Llama, Mistral) is cost-effective for high-volume, privacy-sensitive, or fine-tuning use cases. We recommend based on your specific requirements.
Retrieval-Augmented Generation retrieves relevant documents from your knowledge base and includes them in the LLM context, allowing the model to answer questions about your specific data without fine-tuning. Use it when you need the LLM to know about your products, policies, or documents.
Share your requirements with our team. We respond within one business day with a clear plan from discovery to delivery.