A hands‑on Machine Learning subject for analysts and consultants who already know the basics of Python. Nine courses and projects covering regression, decision trees, k‑means clustering, feature engineering, advanced regression, classification and clustering, with two workplace projects on car pricing and loan default risk.
Python is the language of modern machine learning, and finance and consulting teams are increasingly expected to work with the models, not just the outputs. This subject takes analysts who already know the basics of Python from regression through to advanced classification and clustering, with two workplace projects to lock the skill in.
See the learning outcomes →Build a first ML algorithm in week one. By the end, deploy advanced classification with Naïve Bayes and Support Vector Machines, plus advanced clustering for fraud detection and customer segmentation.
A pricing strategy project for a Japanese carmaker re‑entering the US market, and a credit‑risk project for a bank identifying likely loan defaulters. Skills practised on real business decisions.
A dedicated course on the work that makes models actually useful. Feature scaling, feature selection and dimensionality reduction, taught with applied datasets.
Every milestone is independently accredited by CPD, CPE and NASBA, so what learners earn here counts towards continuing professional development.
Every outcome is mapped to a specific lesson and assessed through scenario‑based exercises. Learners walk away with practical ML skills they can apply on the next forecasting, segmentation or risk modelling task.
Linear regression to predict numeric values, then advanced techniques (decision tree, KNN, support vector and logistic regression) for the cases linear can't handle.
RegressionDecision trees as the easy‑to‑visualise starting point, then advanced classification with Naïve Bayes and Support Vector Machines for fraud detection and credit risk.
ClassificationK‑means clustering to start, then advanced clustering (single linkage and soft clustering) for fraud detection and segmenting customers in messy real datasets.
ClusteringFeature scaling for uniform inputs, feature selection for predictive power, dimensionality reduction for trimming noise. The work that turns a fragile model into a useful one.
Feature EngineeringA workplace project for a Japanese carmaker re‑entering the US market. Use ML to identify which factors should drive pricing so the team avoids the previous over‑pricing miss.
Workplace ProjectA workplace project for a bank. Use several classification algorithms to separate likely defaulters from customers who'll continue paying back their loans, with the explanation a credit committee actually needs.
Workplace ProjectMachine Learning in Python is a single applied track. Nine items running from regression through advanced classification and clustering, with two workplace projects on car pricing and loan default risk. Roughly 19 hours end to end.
Build a first machine learning algorithm in Python. Use linear regression to predict future numeric values from existing data, applied to a real business scenario.
Classification algorithms predict outcomes with a few possible variations. Decision Trees are easy to understand and to visualise, the natural starting point for classification.
Deploy the k‑means clustering algorithm. Segment customers into separate groups so the business can tailor responses to each one.
The work that makes models actually useful. Feature scaling for uniform inputs, feature selection for the most predictive power, and dimensionality reduction for trimming noise.
Beyond linear. Nonparametric methods including decision tree regression, k‑nearest neighbours regression, and support vector regression, finishing with logistic regression.
A workplace project. Help a Japanese carmaker re‑enter the US market. Their previous attempt failed on price, and ML can identify which factors should drive the new strategy.
Detect transaction anomalies and assess loan default risk. Two new algorithms (Naïve Bayes and Support Vector Machines) extend the classification toolkit beyond decision trees.
Single Linkage Clustering and Soft Clustering go beyond k‑means. Identify fraud, segment customers more precisely, and handle the messy real datasets simple methods can't.
A workplace project. Help a bank separate likely loan defaulters from customers who'll keep paying. Use several classification algorithms and arrive at a model the credit committee can defend.
Machine Learning in Python builds directly on Python Fundamentals. Both sit inside Kubicle's wider library, alongside subjects on AI Fundamentals, Excel, Power BI, SQL, Alteryx and financial modelling.
Try for Free →Kubicle is engineered around a single goal: practical skills that get used. Every design choice, from lesson length to assessment style, is made to keep finance and consulting professionals engaged and to translate watch time into measurable outcomes at their desk.
Most lessons run 5–10 minutes. Designed to fit between meetings, not block out a Tuesday afternoon. The result: 80% completion vs. a 7% industry benchmark.
Learners build a portfolio of project work, not a list of completion certificates. Skills practised on the kind of business decisions ML actually shows up to inform.
CPD, CPE and NASBA accreditation means credits count toward continuing professional development. Certificates are shareable on LinkedIn the moment they're earned.
Every course slots into a wider learning path. Pair Machine Learning in Python with AI Fundamentals, Python Fundamentals or Data Literacy as the team's needs grow.
Engagement and skill‑gain dashboards from day one. Leaders see exactly where capability is building and where it isn't, by team and by role.
Modules are refreshed continuously to reflect new tools, regulation and the rise of generative AI. You never pay for material that's gone stale.
The numbers, the accreditations and the customer outcomes are all on the table, so L&D, Early Careers and Practice Leads can build the business case fast.
Every course awards CPE / CPD credits via NASBA‑recognised accreditation, so time spent here counts on a CV and on the team's compliance log.
These aren't aspirational numbers. They are the measured outcomes Kubicle clients report after a typical rollout, with manager‑level dashboards from day one so practice and L&D leaders can see exactly where capability is building.
More than 60% of Kubicle learners report saving between 30 minutes and 2 hours every week thanks to sharper data and ML skills. Time redirected to higher-value work, and a measurable productivity dividend at the team level.
45% of Kubicle learners apply newly‑acquired skills daily, the difference between training that's watched and training that's worked.
75%+ of learners report measurable gains in both data analysis and the communication skills needed to make insights land with stakeholders.
Kubicle was easy to set up and our learners were quickly engaged. It's effectively closed our skill gap, especially in tools like Excel and data processing, and the real-time progress tracking and certifications are why we'll keep using it.
Validated Reviewer
TotalEnergies
Still have a question? Send an enquiry and one of our learning advisors will walk you through it within a business day.
Try for Free →Finance and consulting analysts and associates who already have a working knowledge of Python and want to extend into machine learning. Roles include risk, FP&A, deals analytics, advisory and corporate finance teams that touch forecasting, segmentation or credit modelling.
Roughly 19 hours of content across 9 courses and projects, worth 16.0 CPE/CPD credits. Most learners complete the full subject in four to six weeks of casual study.
Yes. This subject assumes a working knowledge of Python (variables, types, functions, loops, plus Pandas and NumPy). Learners new to Python should start with the Python Fundamentals subject before this one.
Yes, all three. Regression includes linear, decision tree, k‑nearest neighbours, support vector and logistic regression. Classification includes decision trees, Naïve Bayes and Support Vector Machines. Clustering covers k‑means, single linkage and soft clustering. Plus a dedicated course on feature engineering.
Yes. Kubicle credentials are independently accredited by CPD, CPE and NASBA. Every course and project awards CPE/CPD credits that learners can apply toward continuing professional development. Certificates are shareable on LinkedIn the moment they're issued.
Yes. Kubicle offers off‑the‑shelf integrations with leading LMS providers and the engineering team will build a custom integration for any other system you run. SSO is supported across the board, and a Reporting API exposes engagement and completion data to your dashboards.
Kubicle is ISO 27001 certified, GDPR‑compliant, and undergoes regular third‑party penetration testing. Granular roles, SSO and audit logging are built in.
Of course. Send an enquiry and a learning advisor will scope the rollout, recommend the right starting point for your team, and put together a pilot proposal with a tailored quote.
Send a short enquiry and a learning advisor will come back within one business day with a tailored recommendation: a curriculum mapped to your team's roles, a sample pathway through Machine Learning in Python (and any related subjects), and a quote you can take to budget. Built for teams of 5 to 100, deployable in days.