All Pricing and FAQ Sections

Simple, Transparent Pricing

Choose the perfect plan for your needs

Project-based
Embedded Collaboration

Basic

Perfect for Small Projects and Individuals

  • Website Development +$3000
  • Hosting and Maintenance
  • Custom Domain
  • Support
  • Basic Analytics
  • Website Changes Included
Get Started
Most Popular

Professional

Ideal for Startups and Small Businesses

  • Website Design and Development
  • Unlimited Changes
  • One Request at a Time
  • Hosting and Maintenance Included
  • Support, Analytics, and Updates
  • Custom Domain
Get Started

Pricing Plans

Choose the perfect plan for your needs

Project-based
Embedded Collaboration

Basic

Perfect for Small Projects and Individuals

  • Website Development +$3000
  • Hosting and Maintenance
  • Custom Domain
  • Support
  • Basic Analytics
  • Website Changes Included
Get Started
Most Popular

Pro

Ideal for Startups and Small Businesses

  • Website Design and Development
  • Unlimited Changes
  • One Request at a Time
  • Costing and Maintenance Included
  • Support, Analytics, and Updates
  • Custom Domain
Get Started

Enterprise

For Growing Businesses

  • Everything in Pro plus...
  • Manage up to 5 Projects
  • Three Requests at a Time
  • Hosting and Maintenance Included
  • Advanced Analytics
  • Priority Support
Get Started

Our Services

Let's tailor a data science partnership to fit your goals

Project-Based Consulting

Best for tackling specific ML or optimization challenges with clear deliverables.

  • Problem Framing & Scoping
  • Mathematical Optimization Modeling (MILP, LP, Non-linear)
  • ML Models for Forecasting & Decision Support
  • Integrated Decision Systems (APIs, dashboards, notebooks)
  • Strategic Scenario Simulation & Trade-off Analysis
  • Proof-of-Concept Delivery for Feasibility Validation
  • Model Validation, Stress Testing & Documentation
Discuss Your Project

Embedded Collaboration

Best for long-term engagement on complex, evolving decision systems.

  • Long-Horizon Optimization Strategy & Design
  • ML/Optimization System Architecture & Ownership
  • Iterative Modeling with Real-Time Business Alignment
  • Exploratory Trade-Off Modeling & What-If Scenarios
  • Tactical & Strategic Planning Support
  • Ongoing Refinement of ML and Optimization Models
  • Model Governance & Explainability
Book a Free Strategy Call

Frequently Asked Questions

Find answers to common questions about our services and process

At OptiML, I help organizations make smarter decisions by combining advanced analytics, machine learning, and optimization. I design and implement models that don't just analyze data — they recommend the best actions based on your goals, trade-offs, and constraints. My work sits at the intersection of data science, ML, business strategy, and mathematical decision-making.
Traditional data science often focuses on describing or predicting outcomes — what happened or what might happen next. My focus is on deciding what to do. That means building integrated ML and optimization models that simulate scenarios, evaluate options, and surface the most effective path forward, even in complex or constrained environments.
I help companies tackle high-stakes, multi-variable decisions where predictive insights and optimization must work hand-in-hand. Typical challenges include:

• Budget allocation and campaign planning using ML-driven forecasts
• Pricing and promotion optimization with demand prediction
• Inventory and supply planning under uncertain demand
• Workforce and territory design informed by predictive models
• Portfolio or resource trade-off modeling combining ML and optimization

These problems require balancing rules, goals, and uncertainty to reach the best actionable outcomes.
I work with decision-makers at:

• Retailers & e-commerce platforms leveraging customer and sales ML models
• Consumer brands (CPG) applying predictive analytics for demand and marketing
• Marketing & media agencies combining ML insights with budget optimization
• Logistics and supply chain operators integrating forecasting and routing
• SaaS & tech companies using ML-powered decision workflows

If you're making complex, data-driven decisions at scale, I can help you structure and solve them.
Both. I run end-to-end projects solo or integrate with existing data and ML teams to bring deep expertise in optimization and decision modeling. Whether you need a short-term specialist or a long-term collaborator, I adapt to your setup and complement your ML initiatives.
I'm pragmatic and flexible — my go-to tools include:

Optimization: Gurobi, Pyomo, OR-Tools, PuLP
Machine Learning & Data: Python (scikit-learn, TensorFlow, pandas, NumPy), SQL
Deployment: Jupyter, Streamlit, FastAPI
Cloud & Infra: Docker, AWS, Azure

I build solutions that fit your tech stack and can seamlessly integrate ML models with optimization workflows.
Absolutely. I complement internal analytics, ML, or engineering teams by bringing specialized decision modeling and optimization skills — especially useful for strategic planning, trade-off modeling, and integrating ML predictions into prescriptive systems.
Optimization is my core strength, but I also bring experience in:

• Machine learning model development and integration
• Decision architecture & scenario modeling
• Data pipeline design for end-to-end ML and optimization workflows
• Model explainability and stakeholder alignment
• Integrating AI with rule-based decision frameworks

I work at the intersection of ML, operations research, and business logic to drive actionable insights.
Most projects start with incomplete, messy, or imperfect data. I help evaluate what's usable, build model-ready datasets, and develop robust ML and optimization solutions that evolve with your data maturity and quality.

Frequently Asked Questions

Find answers to common questions about our services and process

What does a Principal Data Scientist do?

At OptiML, I help organizations make smarter decisions by combining advanced analytics, machine learning, and optimization. I design and implement models that don't just analyze data — they recommend the best actions based on your goals, trade-offs, and constraints. My work sits at the intersection of data science, ML, business strategy, and mathematical decision-making.

How is this different from traditional data science?

Traditional data science often focuses on describing or predicting outcomes — what happened or what might happen next. My focus is on deciding what to do. That means building integrated ML and optimization models that simulate scenarios, evaluate options, and surface the most effective path forward, even in complex or constrained environments.

What kinds of problems do you solve?

I help companies tackle high-stakes, multi-variable decisions where predictive insights and optimization must work hand-in-hand. Typical challenges include:

• Budget allocation and campaign planning using ML-driven forecasts
• Pricing and promotion optimization with demand prediction
• Inventory and supply planning under uncertain demand
• Workforce and territory design informed by predictive models
• Portfolio or resource trade-off modeling combining ML and optimization

These problems require balancing rules, goals, and uncertainty to reach the best actionable outcomes.

What kinds of clients do you work with?

I work with decision-makers at:

• Retailers & e-commerce platforms leveraging customer and sales ML models
• Consumer brands (CPG) applying predictive analytics for demand and marketing
• Marketing & media agencies combining ML insights with budget optimization
• Logistics and supply chain operators integrating forecasting and routing
• SaaS & tech companies using ML-powered decision workflows

If you're making complex, data-driven decisions at scale, I can help you structure and solve them.

Do you work alone or with client teams?

Both. I run end-to-end projects solo or integrate with existing data and ML teams to bring deep expertise in optimization and decision modeling. Whether you need a short-term specialist or a long-term collaborator, I adapt to your setup and complement your ML initiatives.

What tools and technologies do you use?

I'm pragmatic and flexible — my go-to tools include:

Optimization: Gurobi, Pyomo, OR-Tools, PuLP
Machine Learning & Data: Python (scikit-learn, TensorFlow, pandas, NumPy), SQL
Deployment: Jupyter, Streamlit, FastAPI
Cloud & Infra: Docker, AWS, Azure

I build solutions that fit your tech stack and can seamlessly integrate ML models with optimization workflows.

Can you collaborate with in-house teams?

Absolutely. I complement internal analytics, ML, or engineering teams by bringing specialized decision modeling and optimization skills — especially useful for strategic planning, trade-off modeling, and integrating ML predictions into prescriptive systems.

Do you only focus on optimization?

Optimization is my core strength, but I also bring experience in:

• Machine learning model development and integration
• Decision architecture & scenario modeling
• Data pipeline design for end-to-end ML and optimization workflows
• Model explainability and stakeholder alignment
• Integrating AI with rule-based decision frameworks

I work at the intersection of ML, operations research, and business logic to drive actionable insights.

What if our data isn't perfect?

Most projects start with incomplete, messy, or imperfect data. I help evaluate what's usable, build model-ready datasets, and develop robust ML and optimization solutions that evolve with your data maturity and quality.