ML Model FastTrack
Build Custom AI Models That Create Competitive Advantage
Our ML Model FastTrack provides a de-risked, accelerated path to building and deploying custom machine learning solutions that solve your most complex business challenges.
When Off-the-Shelf Models Aren't Enough
Your most critical business challenges—forecasting demand, predicting churn, or building recommendation systems—can't be solved with generic tools. Relying on the wrong model, or no model at all, leads to inaccurate predictions, leaves the value of your proprietary data untapped, and risks costly missteps.
Our ML Model Builder FastTrack provides a structured path to a custom machine learning solution that gives you a true competitive edge.
Custom Intelligence for a Competitive Edge
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Solve Your Most Complex Business Challenges
Build custom models to tackle your most unique problems, from advanced fraud detection to dynamic customer churn prediction.
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Gain a Competitive Advantage with Custom AI
Fine-tune models on your proprietary data to create a unique and defensible AI capability that your competitors cannot replicate.
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A De-Risked Path to Custom Machine Learning
Our proven process, starting with a focused Proof-of-Concept, de-risks development and ensures a successful outcome with a clear ROI.

Our Approach: Expertise That Prevents Missteps
Data science is a complex field. Our greatest accelerator is our deep expertise. Our team of AWS-certified experts quickly determines the right approach for your use case, de-risking the entire process and proving feasibility before scaling to a full production system.
Our Proven Process:
PHASE 1: PROOF OF CONCEPT
- Environment Setup: Our team will set up SageMaker Studio in your AWS account where we will conduct model development work
- Discovery & Requirements: Our data scientists work with your team to understand goals for model outcomes and do a detailed walk through of your data
- Dataset Preparation: We perform data cleaning, transformation, and feature engineering to create an initial training dataset
- Model Development & Iteration: We build, train, and evaluate multiple models to find the best-performing approach
- POC Results Checkpoint: Our team presents results and findings from the POC
- Solution Architecture Workshop: We collaboratively make a plan for next steps for the model
ASSESSMENT WORKSHOPS
If the POC met expectactions:
- Goal for the Workshop: How do we get this model into production?
- Discuss any further model improvements that need to be made
- Plan for how model will be consumed and how model will be deployed
- Learn about MLOps and create a customized MLOps strategy for your organization
- Discuss how to approach ground truth and monitoring – how will we know if the model is working?
If the POC uncovers opportunities for improvement:
- Goal for the Workshop: To analyze key learnings from the POC and build a strategic plan for moving forward.
- Leverage POC insights to identify the key factors for building a more successful model.
- Review data quality for opportunities that could improve results: Is there additional key data to incorporate?
- How can data quality be enhanced?
- Determine the optimal path forward: Should we proceed with an enhanced second phase of development, or strategically redirect our efforts to achieve the best results?
- Model Iteration and Final Training: If required, our data scientists will conduct further model iteration and run finalized model training
- Inference Packaging: Our data scientists author cusom inference code, package dependencies, and register initial model version with required artifacts
- Model Testing and Benchmarking: Conduct finalized model testing with holdout dataset and additional recent production datasets to verify model results; conduct benchmarking to collect stats on model performance, and select inference instance type
- IAC Template buildout, CICD integration/buildout: Create IAC templates and CICD pipelines for inference infrastructure and code assets
- Configure Data Capture: (Optional) configure endpoint data capture for model monitoring workflows
- Final Deployment & Integration Support: We carry out production model deployment, and help your team integrate what we built with your existing application
- Configure Cloudwatch Logging & Monitoring, and Data Drift & Model Monitoring: We set up monitoring to ensure system health, prepare for ongoing support and establish a process for retraining the model.
Tangible Business Outcomes
The ML Model FastTrack provides a clear verdict on your model's viability and a foundational proof-of-concept, delivering detailed performance results and an actionable roadmap to production complete with a customized MLOps strategy.
Success Story
To power a new product line, JibJab needed to automate the process of cropping faces from user photos. Our custom ML solution prepares images in an average of five seconds with 90% accuracy, replacing a manual process and significantly improving the customer experience.
"Mission was our clear preference. They understood our problem, and portrayed very clearly how they could use existing and cutting edge technology to solve it.”
- Matt Cielecki, VP of Engineering at JibJab
