
Services
AI & Machine Learning
AI is a tool, not a strategy. We help you determine where machine learning, automation, and large language models can solve real business problems — then build and deploy them in a way your team can sustain.
Key Takeaways
AI and machine learning help mid-market companies automate decisions, predict outcomes, and extract insights from unstructured data. We focus on practical AI applications with measurable ROI — not science experiments. Most companies see their first AI pilot deliver results within 90 days.
- Practical AI use cases prioritized by business impact and feasibility
- Predictive analytics for demand forecasting, churn, and pricing
- Natural language processing for document analysis and customer insights
- AI pilot programs designed to prove ROI before scaling
- Internal team training so AI capabilities grow with your organization
Where AI delivers real business value
AI is a tool, not a strategy. The organizations that get the most from it are the ones that start with a specific business problem — not a desire to "use AI."
The practical applications we build most often:
- ✓Predictive models that forecast demand, churn, equipment failure, or sales outcomes — giving your team time to act instead of react.
- ✓Natural language processing that extracts insights from unstructured text — contracts, support tickets, customer feedback, compliance documents.
- ✓Process automation that handles repetitive, rule-based work at scale — data entry, classification, routing, quality checks.
- ✓Anomaly detection that flags unusual patterns in operational or financial data before they become costly problems.
- ✓Recommendation systems that personalize product suggestions, content, or next-best-actions based on customer behavior.
Every engagement starts with one question: what decision or process will this improve, and how will we measure it?
AI & ML capabilities
Predictive Modeling
Forecast demand, revenue, churn, or operational outcomes using historical data. We build models that are accurate, explainable, and maintainable — not black boxes.
Natural Language Processing
Extract structured insights from unstructured text. Contract analysis, sentiment detection, document classification, and conversational AI applications.
Intelligent Automation
Automate complex, judgment-based tasks that rule-based automation can't handle. Classification, extraction, routing, and quality control at scale.
Anomaly Detection
Identify outliers in financial transactions, operational metrics, or sensor data. Catch problems early — before they compound.
Large Language Models
Custom LLM applications using GPT, Claude, Gemini, or open-source models. RAG systems, knowledge assistants, content generation, and domain-specific AI tools.
ML Operations
Production-grade model deployment, monitoring, and retraining pipelines. We build models that stay accurate over time, not just on launch day.
Our approach: assess, pilot, scale
AI projects fail most often in the gap between proof-of-concept and production. Our process is designed to close that gap:
1. Assess
We evaluate your data readiness, infrastructure, and the specific use case. Not every problem needs AI — and some organizations need to invest in data foundations before AI becomes viable. We'll tell you honestly where you stand.
2. Pilot
We build a focused proof-of-concept with clear success criteria — not a demo, but a working model trained on your data, validated against your business metrics. If it doesn't deliver measurable value, we don't scale it.
3. Scale
Models that prove their value in pilot get deployed to production with monitoring, retraining pipelines, and integration into your workflows. We build for sustainability — the model needs to work six months from now, not just at launch.
Frequently Asked Questions
How do I know if my company is ready for AI?
AI readiness comes down to three things: clean, accessible data; a clear business problem to solve; and a team that can maintain the solution. If your data is still in spreadsheets or siloed across systems, start with data engineering and strategy first. AI built on bad data produces bad results.
What's the difference between AI, ML, and LLMs?
AI is the broad category — any system that performs tasks typically requiring human intelligence. Machine learning (ML) is a subset of AI that learns patterns from data to make predictions or classifications. Large language models (LLMs) like GPT are a type of ML trained specifically on text. We use all three depending on the problem.
How long does it take to build a custom ML model?
A focused ML project — like a churn prediction or demand forecasting model — typically takes 6-10 weeks from data preparation through deployment. More complex projects involving multiple models, real-time scoring, or integration with production systems can take 3-6 months.
Will AI replace my team?
No. AI handles the repetitive, data-intensive work — pattern detection, classification, forecasting — so your team can focus on decisions and strategy. Every engagement includes training so your team understands what the models do, when to trust them, and how to maintain them.
What does a typical AI engagement cost?
Pilot projects typically run 6-10 weeks with a focused team. Larger-scale deployments with multiple models, integrations, and ongoing maintenance are structured as longer engagements. We scope based on the specific use case and data complexity.
Can you work with our existing data and infrastructure?
Yes. We build on your current stack — whether that's a cloud data warehouse, on-premise databases, or a hybrid environment. We'll assess what exists and recommend targeted improvements rather than starting from scratch.
Learn more about AI for business
How to Know If Your Organization Is Ready for AI — five signs you're ready, five signs you're not.
3 Things to Consider Before Investing in AI — practical guidance on evaluating AI investments.
AI vs. Machine Learning: What's the Difference? — clear definitions for business leaders.
See This Service in Action

Predictive Parts Recommendation for a National Appliance Retailer
How VisionWrights built a predictive model that translates customer issue descriptions into likely parts needed — improving first-time-complete repair rates.

Accelerating Property Assessments with AI-Driven Due Diligence
How VisionWrights used NLP and document automation to reduce due diligence timelines from days to hours for a real estate investment firm.

Transforming Solar Sales with AI-Driven Tools
How VisionWrights built a machine learning API that generates optimized solar panel layouts in seconds, trained on 30,000+ historical quotes.
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