InfoPlatform.ai logoNow training open-weight models: Qwen, Llama, Inkling & more

Fine-Tune Any Model on Your Business Data

Your data stays private. It never trains anyone else's model. Fine-tune an open-weight model on it and own the whole stack: your data, your weights, your training, your inference. Then drop it into your app with a one-line OpenAI SDK swap. No ML team required.

Your data stays private
You own data + weights
Drop-in OpenAI SDK
Model-level MCP
InfoPlatform.ai dashboard: your models, datasets, and usage at a glance

Private + Owned

Your data, weights & endpoint

1-Line Swap

Drop into the OpenAI SDK

Model-Level MCP

Connect your tools in a click

Your data. Your model. Your endpoint.

Most AI tools rent you access and keep your data. We flip it: you keep the data, own the fine-tune, and get a private endpoint your team drops into in one line.

Private & yours, end to end

Your uploads are encrypted and never train a shared model. Flip on delete-after-training and the raw files are erased the moment training finishes. Open-weight fine-tunes are yours: request an export to run anywhere. You own the data, the weights, the training, and the inference.

Drop-in for any dev team

Every model exposes an OpenAI-compatible endpoint. Point the OpenAI SDK's base_url at it. That's the whole integration. Works with LangChain, LlamaIndex, OpenCode, Cursor, or any HTTP client. New teams ship in minutes; existing teams change one line.

Model-level MCP

Give each model its own tools with MCP: a knowledge base, ticketing system, or internal API it can call while it answers. Add credentials once (encrypted), scoped to that model. No servers to run, nothing to redeploy.

The entire integration

from openai import OpenAI

client = OpenAI(
    base_url="https://app.infoplatform.ai/api/v1",
    api_key="mf_sk_…",
)
client.chat.completions.create(
    model="your-model-id",
    messages=[{"role": "user", "content": "Hi"}],
)

Built for Teams That Need AI That Actually Works

Generic AI falls short when you need domain expertise. InfoPlatform.ai fine-tunes the open-weight model of your choice, so it understands your business.

Post-Quantum Migration Copilot

The Problem

NIST/NSA deadlines are here and “harvest now, decrypt later” is active, but your cryptographic inventory is too sensitive to send to any SaaS or hosted API.

The Solution

Fine-tune an open-weight model on your own codebase to inventory cryptography (CBOM), risk-rank RSA/ECDH/ECDSA, and generate PQC migration PRs, running entirely inside your walls. You own the weights.

Real-world impact

A regional bank stood up a private migration agent in an afternoon and produced a CycloneDX CBOM across 400 repos without a single line of code leaving its network.

Customer Support AI

The Problem

Repetitive tickets drain your support team's time and morale.

The Solution

Fine-tune Qwen 3.5 or Llama 4 on your macros and past tickets. Answers like your best agent (your tone, your policies) for pennies per resolution.

Real-world impact

A SaaS company reduced first-response time from 4 hours to 30 seconds while maintaining 94% satisfaction.

Coding Agents That Know Your Repo

The Problem

Off-the-shelf agents don't know your patterns, libraries, or style.

The Solution

Fine-tune GLM 5.2 or Kimi K2.6 on your codebase, then drop it into OpenCode, Cursor, or any harness. Top-tier coding at a fifth of the cost.

Real-world impact

An engineering team of 30 saved 120 hours/month on review while improving defect detection by 60%, running a self-hosted model they own.

Legal Contract Drafting

The Problem

Associates spend hours on boilerplate that follows established patterns.

The Solution

Fine-tune an open-weight model on your clause library, with weights you own and can keep in your own environment. First drafts in your firm's style.

Real-world impact

A mid-size law firm cut contract drafting time by 70% and reduced revision cycles from 5 to 2.

One Platform, Every Model

Open-weight models are now genuinely competitive on quality. Fine-tune the best of them and own them outright, with no shared-model lock-in.

GLM 5.2

Open

Z.ai · MIT

Matches Opus 4.8 on coding at ~1/5 the cost. 1M context.

Open · you own the weights

DeepSeek V4

Open

DeepSeek · MIT

Long-context reasoning & coding specialist.

Open · you own the weights

Qwen 3.5

Open

Alibaba · Apache 2.0

Best fine-tuning ecosystem. Multilingual & agentic.

Open · you own the weights

Kimi K2.6

Open

Moonshot · Open

Elite tool use and long-horizon agent workflows.

Open · you own the weights

Llama 4 Scout

Open

Meta · Community

Reliable all-rounder with a 10M-token context.

Open · you own the weights

Inkling

Open

Thinking Machines · Apache 2.0

Open-weight 975B multimodal MoE: text, image & audio. Fine-tune via Tinker.

Open · you own the weights

Some very large models (e.g. GLM 5.2, DeepSeek V4, Kimi) train today on a mapped open base of similar strength; the wizard shows you exactly which. New open-weight releases are added within days.

From Data to Deployed in 6 Simple Steps

No ML expertise required. Our guided workflow handles the complexity so you can focus on results.

1

Upload Data

Spreadsheets, docs, or code

2

Pick a Model

Open-weight, yours to keep

3

Describe Goal

Tell us what you need

4

Viability Check

We check if it'll work

5

Train & Test

Chat, rate, get better

6

Go Live

OpenCode, Cursor, your app

Before You Train

AI-Powered Feasibility Analysis

Before spending a dollar on GPU time, our feasibility engine analyzes your data quality, task complexity, and expected model performance with a visual radar chart and cost estimation.

  • Radar chart scoring across 6 dimensions
  • Accurate cost and time estimates before training
  • Actionable recommendations to improve data quality
  • Go / No-go recommendation with confidence score
Viability assessment: data volume, data quality, goal clarity, and domain match scored before training
Integrate tab: point the OpenAI SDK at your private endpoint with a one-line base_url swap

Fully Automated

Event-Driven Training Pipeline

When you hit "Train," we spin up a GPU instance, fine-tune your model, encrypt and store the weights, then spin down the infrastructure. Zero idle compute costs.

  • Spin up on demand, no standing infrastructure
  • Pay per training run, not per hour
  • Optionally delete your uploaded data the moment training finishes

Ship & Improve

Test, Deploy, and Improve

When your model is ready to serve, you get a private, OpenAI-compatible endpoint. Test it in the built-in chat, hand your team a one-line base_url swap, connect its tools via MCP, and improve it with your feedback.

  • One-line base_url swap into the OpenAI SDK, LangChain, OpenCode, or Cursor
  • Give the model your tools with model-level MCP
  • Built-in feedback + one-click retrain that learns from your corrections
Test chat: a fine-tuned model answering in the business's own voice

Everything You Need to Train Custom AI

A complete platform from data ingestion to production inference.

Best-in-Class Open Models

Fine-tune GLM 5.2, DeepSeek V4, Qwen 3.5, Kimi, Llama 4, or Inkling. Pick the best open-weight model per project.

You Own the Weights

Open-weight fine-tunes are yours. Request an export of your adapter to run in your own cloud, or let us serve them. No shared-model lock-in.

Train Where You Choose

Run training on our fast serverless GPUs, on dedicated GPUs in our own cloud (no third-party training service touches your data), or on Tinker by Thinking Machines Lab. Same data, your call.

Trained for the Price of Dinner

Open-weight LoRA fine-tunes start around $8. On-demand GPUs spin up and down, so you never pay for idle compute.

One-Line OpenAI SDK Swap

Every model ships an OpenAI-compatible endpoint. Change base_url in the OpenAI SDK. That's it. Works with LangChain, LlamaIndex, OpenCode, Cursor, or any HTTP client.

Just Upload Your Data

Drag-and-drop spreadsheets, documents, code, or exports. We clean, dedupe, and prepare it automatically.

Viability Check First

We analyze your data quality and task complexity before you pay, so you know it'll work.

Learns From Your Corrections

Rate answers and fix the wrong ones. Your corrections become training data, so a one-click retrain makes the model better exactly where it missed.

Model-Level MCP

Connect each model to your tools with MCP: knowledge bases, ticketing, or internal APIs it can call while it answers. Credentials encrypted, scoped per model, no infra to run.

Transparent Costs

Clear dashboards for training runs, token usage, and inference volume. No per-GPU-hour surprises.

Delete Your Data After Training

Turn on automatic deletion and your uploaded files are permanently erased from our servers the moment training finishes. Your model keeps working; the training data doesn't stick around.

Simple, Transparent Pricing

Start free. Upgrade when you see results. Training included in every paid plan. Cancel anytime.

Free Trial

$0 for 14 days

No credit card required

  • Full Growth-plan limits for 14 days
  • 5 custom models
  • Real training on your data
  • 40M output tokens included
  • No credit card to start

Starter

$99/month

Training included

  • 1 custom model
  • 10M output tokens/mo, unlimited requests
  • 3 training runs per month
  • Full training on your data
  • Email support
Most Popular

Growth

$299/month

Training included

  • 5 custom models
  • 40M output tokens/mo, unlimited requests
  • 12 training runs per month
  • Priority support
  • Usage dashboards
  • Retrain from your feedback

Pro

$999/month

Training included

  • 20 custom models
  • 100M output tokens/mo, unlimited requests
  • 30 training runs per month
  • The largest models (100B–1T) unlocked
  • Dedicated support
  • Fastest processing

Calculate Your ROI

See how much time and money your team could save with a custom AI model.

Estimated monthly savings

$1,400

Based on 70% automation of the selected task

Frequently Asked Questions

Ready to Forge Your Custom AI?

Pick an open-weight model, fine-tune it on your data, and own the result. Join teams building AI that truly understands their business, without the closed-model price tag.