Data Science

From Data to Differentiation

In a fast-paced market, raw data alone isn’t sufficient. You need intelligent, scalable insights that transform complexity into clarity and actionable strategies.

Levi9’s Data Science services empower you to harness predictive capabilities, personalize experiences, and automate smart decision-making. Whether it’s enhancing customer satisfaction or streamlining operations, we convert advanced analytics into tangible business value.

Data science drives competitive advantage.

Top-performing organizations are 3x more likely to use AI and machine learning in decision-making McKinsey.

Hyper-personalization increases customer retention

Businesses that leverage predictive analytics see up to 20% improvement in customer engagement Deloitte .

Automation saves time and money.

AI-powered processes reduce manual effort, improve accuracy, and boost productivity, without scaling costs.

Our approach:

01

Defining the Problem:

Understanding the business challenge or scientific question and formulating it in a data-driven way.

02

Data Collection:

Gathering raw data from various sources, such as databases, sensors, social media, or web scraping. This data can be structured (organized in tables) or unstructured (like text, images, or videos).

03

Data Cleaning and Preparation:

Real-world data is often messy and incomplete. We clean, transform, and organize the data to ensure it’s usable for analysis. This step involves handling missing data, removing duplicates, and standardizing formats.

04

Data Analysis and Exploration:

Statistical methods and data visualization tools are used to explore the data, identify patterns, and understand relationships within the data. This exploratory data analysis (EDA) helps form hypotheses and guides further investigation.

05

Modeling:

The core of data science involves building predictive or descriptive models using techniques from machine learning, statistics, or artificial intelligence. These models can be used to forecast future outcomes, identify trends, or classify data.

06

Interpretation and Communication:

Once insights are extracted, we communicate the findings clearly. This often involves visualizing data using graphs and dashboards and translating complex technical results into actionable insights for decision-makers.

07

Deployment and Monitoring:

Often, the models created by data scientists are implemented into business operations, such as recommendation engines, fraud detection systems, or predictive maintenance tools. These models need continuous monitoring and updating as new data becomes available.

WHAT YOU GAIN: KEY OUTCOMES & DELIVERABLES 

Enabling data-driven decision-making
Automating complex tasks to free up resources and time
Gaining valuable insights into market trends and customer behavior
Personalizing products and interactions to enhance customer satisfaction

June 26th

The Cost of Choice

Most companies spend up to 40% to much on cloud, are you? Cut spend, not options. Smart standardizations win.

Cloud cost overruns and growing technical debt rarely stem from tooling alone—they are symptoms of architectural and operational choices. This session looks at how senior technical leaders can regain control by connecting cloud spend directly to business value. We’ll explore unit‑economics thinking, ownership models, and lifecycle management practices that reduce waste while preserving delivery speed. You’ll learn how to combine FinOps principles with technical‑debt controls to create a cloud environment that is financially sustainable and technically healthy.

May 28th

AI AGENTS DESERVE AI PLATFORM

Portable patterns for Azure, AWS and GCP that survive the next upgrade

AI agents are moving rapidly from experimentation into real production use cases, but architectures vary widely across cloud platforms. In this webinar, we compare practical patterns for building and running AI agents on Azure, AWS, and Google Cloud Platform. We’ll focus on what to standardize, where to embrace cloud‑native capabilities, and how to design for security, observability, and future change. The goal is not to pick a winner, but to help leaders understand how to scale agent‑based solutions without locking themselves into fragile designs.

April 23rd

Winning on Repeat: Product Engineering in the Age of AI

Cadence, quality and outcomes over output

Delivering a successful solution once is no longer enough. In the age of AI, organizations need product engineering models that enable them to win consistently across teams, releases, and markets. This session explores how leading organizations evolve from project‑centric delivery to product‑centric execution, supported by AI‑augmented engineering practices. We’ll look at cadence, quality, and accountability, and how leadership decisions shape sustainable delivery performance over time.

April 2nd

GOVERNING AI IN PRODUCTION

Designing cloud and data platforms that survive real-world pressure

Many organizations succeed in building AI proofs of concept, far fewer succeed in scaling them safely into production. This webinar focuses on what it takes to move from experimentation to reliable, governed AI platforms. We’ll discuss platform architecture choices, model governance, security, and policy patterns that enable teams to deploy AI at scale without slowing down delivery. Designed for senior technical leaders, this session provides practical guidance on turning AI initiatives into durable capabilities that deliver value beyond the first demo

March 5th

Navigating Digital Sovereignty and Strategic Cloud Choices

How Organizations Can Balance Innovation, Compliance, and Control in a Multi-Cloud World

In today’s rapidly evolving digital landscape, organisations face increasing pressure to ensure business continuity, maintain public trust, and comply with complex regulations like NIS2, DORA, and GDPR. This webinar explores the critical concepts of digital and operational sovereignty, the strategic importance of hybrid and sovereign cloud models, and the risks of vendor lock-in.