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Machine Learning Services

Machine Learning Services that turn your data into measurable business outcomes.

Our services cover every stage from strategy and architecture through to application development, system integration, and data engineering. Deploy ML solutions that learn, adapt, and scale across your enterprise.

Agentic AI Bot
2.1×
Average ROI within 12 months
32%
Reduction in operational costs
90 days
Avg time to first model in production
60%
Improvement in forecast accuracy
What we do?

Machine Learning Service Areas

Everything you need for ML success — consulting, development, deployment, and support.

ML Strategy & Advisory

We help businesses prepare for machine learning with strategic planning, risk management, and adoption guidance.

🔗

ML Solution Architecture

Choose the right AI models and cloud setup early to ensure long-term performance and scalability.

🏢

ML Application Development

Build real-world AI applications that solve business challenges and improve operational efficiency.

🤖

ML Integration Services

Upgrade your CRM, ERP, and business software with AI-powered intelligence while keeping your current architecture intact.

Industries

Machine Learning Built for Your Sector

Sector-specific ML solutions designed around your compliance requirements, data landscape, and operational realities.

Financial Services

Fraud detection, credit risk, AML monitoring, and customer churn with compliant, traceable AI.

  • 60% fewer false positives in fraud detection
  • 3× faster credit decisioning
  • 40% reduction in AML review effort
Healthcare

Clinical NLP, patient risk prediction, medical imaging, and hospital demand forecasting.

  • 10× faster clinical document processing
  • HIPAA-compliant ML deployments
  • 35% reduction in avoidable readmissions
Retail & E-commerce

Personalised shopping, inventory optimisation, dynamic pricing, and customer behaviour prediction.

  • 25% uplift in average order value
  • 40% reduction in inventory overstock
  • 3× faster business insights
Manufacturing

Predict equipment failures, automate quality inspections, and optimise production planning.

  • 45% reduction in unplanned downtime
  • 30% lower quality inspection costs
  • 68% improvement in demand forecast accuracy
Logistics

Optimise routes, predict shipment delays, improve warehouse planning, and detect supply chain issues.

  • 35% reduction in inventory overstock
  • 20% fuel cost saving via route optimisation
  • 2× faster exception handling
Insurance

Detect fraudulent claims, automate underwriting, and improve risk assessment with compliant AI.

  • 55% more fraud cases caught
  • 50% faster underwriting
  • 100% auditable trail for every ML-assisted decision
How we deliver

From scoping to production in 90 days

Our structured delivery model moves fast without sacrificing scalability, security, or long-term maintainability.

01

Discovery & scoping

Define use case, assess data maturity, and align on success metrics before any build begins.

02

Architecture design

ML system blueprints covering pipelines, training infra, model serving, and monitoring, ensuring scalability.

03

Build & integration

Model development, fine-tuning, and integration with your existing CRMs, ERPs, and data stack.

04

Deploy & MLOps

Production deployment with drift detection, automated retraining, and performance dashboards.

What our clients achieve

Real outcomes from live Machine Learning deployments across industries.

2.3×

Average ROI within 12 months of enterprise ML deployment

40%

Reduction in operational costs through ML-driven automation

68%

Improvement in forecast accuracy for supply chain & logistics clients

90 days

Average time from scoping to first ML model live in production
Client stories

What Our Clients Say

Outcomes from real agentic AI services and AI integration engagements.

"

Built an intelligent agent that handles our entire sales research workflow — prospecting, enrichment, CRM updates, and outreach drafting. We've automated 80% of a 4-person team's manual work.

Ankit Prasad
VP Sales Ops, FinStream
"

The data pipeline they built transformed how our learning agent accesses real-time inventory and pricing. The Kafka streaming pipeline means our agents always have current context — 40% better recommendation accuracy.

Meera Krishnan
Head of AI, RetailCo
"

They were the first team that actually understood the observability requirements — the OpenTelemetry tracing across our multi-agent system gave us visibility we didn't know was possible.

David Saunders
CTO, BuildCorp
Technology stack

Built on frameworks that power production AI

Flexible AI systems built using the technologies best suited to your operational needs.

ML Frameworks
PyTorchTensorFlow / Kerasscikit-learnXGBoostLightGBM
NLP & LLMs
Hugging Face TransformersspaCy / NLTKOpenAI APIAnthropic APILangChainLlamaIndex
Cloud & MLOps
AWS SageMakerAzure Machine LearningGoogle Vertex AIMLflowKubeflow
Data & Pipelines
Apache SparkApache KafkadbtAirflowSnowflakeBigQuery
Computer Vision
OpenCVYOLO / Detectron2ONNX RuntimeTensorRTCoreML
Experiment & Monitor
Weights & BiasesGreat ExpectationsEvidently AIDatadogGrafana
Why Us?

What sets production ML apart from a proof of concept

Four things we do differently — and why it matters once your ML systems go live.

01

Governance-First

ML systems designed with continuous monitoring, compliance, and explainability built into the foundation.

02

Integrates with Your Stack

We connect ML models to your existing ERP, CRM, data warehouse, and legacy systems. No rip-and-replace required.

03

Built to Scale

Start small and scale confidently with ML systems built for performance, flexibility, and cost efficiency from pilot to enterprise.

04

Production-First

From day one, your ML models include automated monitoring, performance baselines, and proactive issue detection.

HIRE AI DEVELOPERS

Hire senior ML engineers & data scientists

Add dedicated machine learning experts to your team quickly — without the cost and delays of full-time hiring. Matched in 48 hours.

ML Engineer

PyTorchTensorFlowMLflowDockerPython

NLP / LLM Specialist

Hugging FaceLangChainTransformersFine-tuning

MLOps Engineer

KubeflowAirflowKubernetesTerraformCI/CD

Data Scientist

scikit-learnXGBoostPythonRSQLStatistics

Computer Vision Eng.

OpenCVYOLOPyTorchONNXEdge deployment

AI Solutions Architect

AWSAzure MLGCP VertexSystem designGovernance

FAQ

How much data is needed to train a computer vision model?

The amount of data required depends on your use case, image quality, and model complexity. Most computer vision projects using pre-trained models typically require between 500 and 5,000 labelled images per category for reliable performance. More complex environments or rare defect scenarios may require additional data.

We begin every project with a data assessment to evaluate your existing datasets and identify gaps. To reduce manual labelling effort, we also use data augmentation, synthetic data generation, and active learning techniques to improve model accuracy with less data.

Can AI vision systems work with our existing cameras and infrastructure?

In many cases, yes. Most modern IP cameras and CCTV systems can be integrated into AI-powered vision solutions without replacing your existing infrastructure. We assess your cameras, network setup, and edge hardware during the discovery phase to determine compatibility and performance requirements.

Our solutions support Intel, NVIDIA, ARM-based edge devices, and standard x86 systems. If upgrades are required, we recommend the minimum hardware needed to achieve reliable real-time performance while staying within your budget.

How long does it take to deploy a production-ready vision AI system?

A focused computer vision deployment such as defect detection, safety monitoring, or theft detection for a single site  typically takes between 6 and 12 weeks from scoping to production deployment.

This usually includes data assessment, model training, testing, edge deployment, integration, and validation. Larger multi-site or multi-camera systems may take several months depending on scale and operational complexity. We provide a detailed roadmap, milestones, and deployment plan before development begins.

Will the AI model stay accurate as conditions change over time?

Yes, maintaining long-term model accuracy is a critical part of production AI deployment. Visual conditions naturally change over time due to lighting variations, new product types, seasonal differences, or operational changes.

To address this, we build automated monitoring, drift detection, and retraining workflows into every deployment. The system continuously tracks performance metrics and alerts teams when accuracy drops below defined thresholds. This ensures the model stays reliable and production-ready over time.

How do you handle privacy and security when processing video footage?

Privacy and security are built into the system architecture from the beginning. In most deployments, AI inference runs directly on local edge hardware, meaning video footage does not leave your facility or require cloud processing.

Where cloud infrastructure is needed, we implement encryption, access controls, anonymisation, and compliance-focused data handling practices. We also support GDPR, CCPA, HIPAA, and industry-specific security requirements depending on your operational environment.

Can you integrate deep learning outputs into our existing systems?

Yes. We build secure API layers that expose model outputs to your existing business systems ERP, MES, WMS, SCADA, or any system with an API or database. Real-time inference results, alerts, and confidence scores can be pushed to your dashboards, workflows, or ticketing systems without requiring any changes to your existing architecture. We handle authentication, rate limiting, and error recovery across every integration point.

How do you handle data privacy when processing video footage?

Privacy is addressed at the architecture level, not as an afterthought. For most deployments, inference runs entirely on-premise on edge hardware raw video footage never leaves your facility or reaches the cloud. Where cloud processing is required, we implement end-to-end encryption, data minimisation, and anonymisation (blurring faces and identifiable information before any data leaves the edge). We assess against GDPR, CCPA, and sector-specific regulations and provide a documented privacy impact assessment before go-live.

Related Articles

Stay informed about the latest trends, best practices, and insights in logistics and supply chain management. Our blogs cover a wide range of topics, from the impact of AI on logistics to the future of smart warehouses. Explore our blog section to access valuable information that can help you navigate the evolving landscape of logistics and supply chain management.

Ready to Build Real Business Value with Machine Learning?

Begin with a free ML strategy session where we uncover high-value use cases, assess feasibility, and outline the fastest path to production.

Book a free assessment →

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