AI & Data

Data Analysis and Machine Learning Training

This training presents a sample program that can be tailored to the group’s expectations and skill level.

Duration
6h
Who it's for

Ideal for teams that…

1 People developing toward machine learning and artificial intelligence
2 Data analysts needing tools to implement and automate their own analyses and algorithms
3 Python programmers looking to expand their competencies in data analysis and machine learning
Outcomes after the program

Hands-on AI and data analytics workshops — built around your team's real cases.

Perform data analysis and machine learning with Python libraries: Pandas, NumPy, SciPy, matplotlib, seaborn

Acquire data, perform analysis, handle missing data, and apply cleaning procedures

Use visualization techniques (matplotlib, seaborn), export results, and save visualizations

Build models in Scikit-learn: training, hyperparameter tuning, solving classification, regression, and clustering problems

Work with neural networks in TensorFlow and Keras: building, training, fine-tuning, transfer learning, and applying models for image and language processing

Learn about model productionization: theory of monitoring and daily operations with machine learning models

Program · 3 modules

What we actually do

M01
Computational and Algorithmic Tools (Pandas, NumPy, SciPy)
  • · Data acquisition
  • · Data analysis and functions
  • · Data operations – handling missing data
  • · Data cleaning procedures
M02
Visualization (matplotlib, seaborn)
  • · Data visualization and presentation methods
  • · Exporting and saving visualizations
M03
Machine Learning and Deep Learning in Python
  • · Model creation in Scikit-learn (training, hyperparameters, classification and regression problems)
  • · Model creation in Scikit-learn (regression, clustering, model comparison)
  • · Neural networks in TensorFlow and Keras (building, training, fine-tuning, transfer learning, architectures for image and language processing)
  • · Model productionization – theoretical aspects of monitoring and day-to-day ML operations
Every module is adapted to your stack and context. The above is a starting point — not a fixed agenda.
How we work

From brief to retro in 30 days.

01

Brief & diagnosis

A call with the team lead + a short survey for participants. We define goals, gap and context.

02

Program customization

We adapt modules, case studies and code examples to your stack. Approval in 5 days.

03

Workshop

Trainer-led sessions, hands-on, code review. Mentor available between sessions too.

04

Retro + report

Outcome report for the team and lead. 30 days of consulting included.

Inquiry

Send a brief. We'll reply within 1 day.

After a short brief we'll prepare a program and a quote. No obligations — it's just a starting point.

Quote within 48h of the brief
First session within 30 days
Pilot before the full decision
VAT invoice, payment in instalments possible

Ochrona antyspamowa (Cloudflare Turnstile) zostanie aktywowana po wpięciu klucza.