Machine Learning · Deep Learning · Computer Vision
We build, deploy, and maintain machine learning systems — from demand forecasting to computer vision pipelines. Every model ships with monitoring, retraining logic, and a clear business metric it’s accountable to.
Hourly or project-based · No minimum commitment · Scale up or down as needed
Three service tiers
What We Build
Every model we build is tied to a business outcome you can measure. If you can’t put a dollar value on the problem, we’ll help you find one that qualifies — or tell you ML isn’t the right tool.
Predict inventory needs, staffing requirements, and revenue trajectories with time series models trained on your historical data. Reduce overstock, prevent stockouts, and plan with confidence.
Quality inspection, document processing, object detection, and OCR pipelines. From manufacturing defect detection to automated document extraction at scale.
Product, content, and next-best-action recommendations built on collaborative filtering and deep learning. Increase basket size, engagement, and conversion rates.
Identify at-risk accounts weeks before cancellation using usage patterns, support interactions, and billing signals. Intervene early with targeted retention.
Transaction anomaly scoring and real-time flagging using ensemble models. Catch fraudulent activity before it clears while minimising false positives.
Price optimisation based on demand curves, competitive positioning, and elasticity models. Maximise revenue per transaction without eroding customer trust.
Text classification, entity extraction, and summarisation at scale. Process contracts, support tickets, reviews, and internal documents automatically.
Equipment failure prediction from sensor and telemetry data. Reduce unplanned downtime and shift from reactive repairs to scheduled interventions.
Behavioural clustering for marketing, product, and pricing decisions. Move beyond demographics to segments that reflect how customers actually behave.
Voice bots, IVR automation, and speech-to-text pipelines. Handle inbound calls, route conversations, and extract structured data from voice interactions.
Retrieval-augmented generation over your internal documentation. Ask questions in natural language and get accurate answers grounded in your own data.
Sentiment analysis, review mining, and social listening at scale. Understand what customers are saying across channels without reading every comment manually.
Solutions by Industry
Different industries generate different data and face different prediction challenges. Pick yours to see the ML applications that deliver measurable ROI.
SaaS companies generate dense behavioural data — login frequency, feature adoption curves, support ticket patterns, billing events. The ML opportunity is turning that signal into automated predictions: which accounts will churn, which leads will convert, and which onboarding paths produce the highest LTV.
Your product data predicts revenue outcomes before they show up in a dashboard
SaaS businesses sit on more predictive signal per customer than any other model. The gap is turning that signal into decisions that happen automatically.
Healthcare generates massive volumes of unstructured data — clinical notes, imaging, lab results, patient communications. ML applications in healthcare focus on pattern recognition at scale: diagnostic support, patient risk stratification, document processing, and resource allocation optimisation.
Clinical decisions supported by pattern recognition at a scale humans cannot match
ML in healthcare works when it augments clinical judgment with data-driven risk signals — not when it tries to replace the clinician.
Fintech operates at transaction velocities where manual review is impossible. ML models in this space handle fraud detection, credit risk scoring, transaction monitoring, and regulatory compliance — all in real time, with audit trails that satisfy regulators.
Risk decisions made in milliseconds with full auditability
Financial ML models need to be fast, explainable, and auditable. We build with those constraints from day one — not as an afterthought.
E-commerce businesses generate rich behavioural data at every touchpoint — browse patterns, cart behaviour, purchase history, return rates, search queries. ML turns that data into personalised experiences, demand-aware inventory decisions, and pricing strategies that adapt in real time.
Every customer interaction gets smarter without adding headcount
The data already exists in your platform. We build the models that connect it to the decision points — product pages, pricing, email sequences, inventory orders.
Professional services firms — agencies, consultancies, legal, accounting — operate on expertise and client relationships. ML applications here focus on knowledge management, resource optimisation, and automating the document-heavy workflows that eat billable hours.
Institutional knowledge becomes queryable and reusable
The biggest asset in professional services is accumulated expertise. ML makes it searchable, reusable, and available to every team member.
Logistics operations deal with high-dimensional optimisation problems — routing, scheduling, inventory positioning, demand planning. ML models handle the combinatorial complexity that humans and spreadsheets cannot, while adapting to real-time disruptions.
Operational decisions optimised at a speed and scale that manual planning cannot achieve
Logistics is fundamentally an optimisation problem. ML handles the variables, constraints, and real-time adjustments that static planning breaks on.
Our Stack
We pick the right tool for the problem, not the trendiest framework. Every technology below has been used in production systems we have built and maintained.
Prophet · ARIMA · LSTM
Forecasting demand, revenue, and operational load from historical patterns
PyTorch · OpenCV · YOLO
Object detection, quality inspection, OCR, and image classification
Transformers · spaCy · NLTK
Text classification, entity extraction, sentiment, and summarisation
GPT-4 · Claude · Llama
Fine-tuning, prompt engineering, and production deployment
Pinecone · Weaviate · pgvector
Vector DBs, embedding pipelines, and retrieval-augmented generation
Stable Diffusion · DALL-E · Codex
Image generation, code generation, and content synthesis
MLflow · W&B · Sagemaker
Model versioning, experiment tracking, and production monitoring
AutoGluon · H2O · Optuna
Automated feature engineering, model selection, and hyperparameter tuning
PySyft · Flower · TFF
Privacy-preserving ML across distributed data without centralising it
CTGAN · Gretel · SDV
Training data generation, augmentation, and privacy-safe dataset creation
PyTorch · TensorFlow · JAX
Neural architecture design, training, and optimisation at scale
Spark · Airflow · dbt
Data pipelines, ETL, and warehouse architecture for ML workloads
Hire AI Specialists
Hourly or project-based. No minimum commitment. Scale up or down as the work requires.
| Role | Junior | Mid | Senior | Lead |
|---|---|---|---|---|
| ML / Data Science Engineer | $35/hr | $55/hr | $85/hr | $110/hr |
| AI/ML Architect | — | — | $110/hr | $130/hr |
| ML Project Manager | — | $55/hr | $70/hr | $85/hr |
| Business Analyst (AI) | — | $45/hr | $65/hr | — |
| Backend Python Engineer | $30/hr | $45/hr | $55/hr | $75/hr |
| Computer Vision Engineer | — | $60/hr | $90/hr | $115/hr |
Looking for process automation, workflow optimisation, and AI agents instead?
See our Automation & Process Intelligence services →How an Engagement Runs
We identify the business problem, validate whether ML is the right approach, define the target metric, and map the data you have versus the data you need. You leave the scoping call knowing exactly what we’d build, what data is required, and what the realistic accuracy and timeline look like.
We build a working prototype on a subset of your data. This validates the approach before committing to a full production build. You see real predictions on real data — not a demo on a public dataset. If the prototype doesn’t hit the target metric, we stop and reassess before spending more.
The validated model gets production infrastructure: API endpoints, data pipelines, error handling, logging, and integration with your existing systems. This is the difference between a notebook that runs on a laptop and a system your business depends on.
Every production model ships with monitoring for data drift, prediction quality, and business metric tracking. Retraining triggers are defined upfront. You know when the model needs attention — not when someone notices the predictions stopped making sense three months ago.
Who You’re Working With
No account managers, no junior handoffs. Jake runs every engagement directly — from the first scoping call through to production handover.
Common Questions
Tell us the business problem. We’ll assess whether ML can solve it, what data you need, and what realistic accuracy and timeline look like — before you commit to anything.
No pitch. No questionnaire. A technical assessment of your ML opportunity.