One Team Solutions offers an intensive path into the world of Artificial Intelligence and predictive modeling. This course is built for tech-driven minds and developers who want to move beyond simple analysis to build intelligent systems that learn from data. Through deep-dive projects, you’ll master the logic of machine learning algorithms, neural networks, and automated workflows using advanced Python libraries—equipping you with the technical depth to solve "unsolvable" problems and lead in the future of AI.
Hands On Offline and Online Training available.
Duration : 7 Months
Phase 1: Python Programming
Python setup, IDEs and Jupyter Notebook
Conditional statements and loops
Data structures: List, Tuple, Dictionary, Set
List comprehensions (basic, conditional, nested)
Functions, lambda functions and modules
Functional programming: map, filter, reduce
OOP: classes, objects, constructors, inheritance, encapsulation
File handling (CSV, JSON)
Exception handling and debugging
Hands-on coding exercises and dataset handling
Phase 2: Statistics & Applied Statistics
Descriptive statistics: mean, median, mode
Variance and standard deviation
Data distributions (normal, skewness)
Correlation vs causation
Regression concepts (intuitive understanding)
Inferential statistics: population vs sample
Confidence intervals
Hypothesis testing (p-value, significance level)
A/B testing and real-world scenarios
Python implementation using scipy
Phase 3: SQL / MySQL
Relational database concepts
SQL queries: SELECT, WHERE, ORDER BY, LIMIT
Aggregation: COUNT, SUM, AVG, GROUP BY
JOINs: INNER, LEFT JOIN
Connecting MySQL with Python
Mini project: sales database analysis
Phase 4: Power BI for Business Intelligence
Power BI ecosystem, installation and interface overview
Connecting to data sources (Excel, CSV, SQL, MySQL)
Data cleaning and transformation using Power Query
Sorting, filtering and shaping data
Data modeling concepts: normalization and denormalization
Relationships, cardinality and schema design (Star schema)
DAX basics: calculated columns, measures and functions
Advanced DAX: aggregation, filters, time intelligence
Visualizations: charts, tables, KPIs, maps and dashboards
Advanced visuals: conditional formatting, hierarchies, filters
Interactive reports: drill-downs, bookmarks, buttons
Dashboard design principles and publishing to Power BI Service
Mini Project: Build and publish an interactive business dashboard
Phase 5: Data Analysis
NumPy arrays, indexing, operations
Pandas DataFrames and Series
Data loading from CSV, Excel, SQL
Data cleaning and preprocessing
Handling missing values and duplicates
Filtering, sorting, groupby, merging
Exploratory Data Analysis (EDA)
Real-world dataset analysis
Phase 6: Data Visualization
Matplotlib: line, bar, histogram
Seaborn: heatmaps, box plots
Data storytelling concepts
Mini project: visualization report
Phase 7: Machine Learning
ML workflow and concepts
Train-test split and overfitting
Linear Regression
Logistic Regression
KNN algorithm
Decision Trees and Random Forest
Support Vector Machine (SVM)
Model evaluation: accuracy, precision, recall, F1-score
K-Means clustering
Hierarchical clustering
PCA (dimensionality reduction)
Mini project: prediction model
Phase 8: AI, Deep Learning, NLP & Computer Vision
AI overview and applications
ANN: neurons, layers, backpropagation
CNN: convolution, pooling, image classification
RNN & LSTM for sequence data
Deep learning mini project
NLP: tokenization, stopwords, stemming, TF-IDF
NLP mini project: sentiment analysis
Computer Vision using OpenCV
Face detection
Face recognition systems
Object detection (YOLO overview)
Computer vision mini projects
Phase 9: Generative AI & LLM Applications
Introduction to Generative AI and real-world use cases
Large Language Models (LLMs) overview
Transformer and Attention (high-level concept)
Prompt Engineering: zero-shot, few-shot, role prompting
LLM platforms: Gemini, Hugging Face, Ollama (overview)
Using APIs for LLM applications
Embeddings and cosine similarity
RAG (Retrieval Augmented Generation) concept
Vector database basics
LangChain framework introduction
Image generation using Stable Diffusion (demo)
Introduction to Agentic AI systems
Phase 10: Capstone Project
End-to-end project development
Problem definition and data collection
SQL data extraction
Data preprocessing and EDA
Model building and evaluation
Final presentation
Data Science: The Engine of Artificial Intelligence
Data Science is the most sought-after skill in the 21st century. It powers everything from Netflix recommendations to self-driving cars. A career in Data Science allows you to solve "unsolvable" problems and drive innovation at scale.
This Data Science course covers a comprehensive curriculum including:
Chief Technology Officer
Senior Consultant - Python-Django
Assistant Manager - Python DJango
Senior Programmer - Python
Consultant - Python-Django
Consultant - Python-Django
Understanding your goals will help you choose the right programming languages and courses.
You acquire the knowledge, skills, and expertise necessary for your chosen field during this phase.
After successfully completing your course or program, we help you secure employment or a placement in your chosen field.
The Data Science industry is at the forefront of the AI revolution, with organizations worldwide investing in predictive modeling and automation. From startups to multinational corporations, every high-tech product needs scientists who can build intelligent systems. Some key career paths after completing our Data Science course include: Data Scientist – Focus on complex modeling, predictive analytics, and solving "unsolvable" business problems. Machine Learning Engineer – Design, build, and deploy production-ready AI models and algorithms. AI Specialist – Work on advanced automation, neural networks, and deep learning applications. Data Architect – Handle the end-to-end design of data frameworks and infrastructure strategy. NLP Engineer – Design user flows and interactions for voice assistants and text-processing tools. Freelance AI Consultant – Provide expert guidance to tech companies on machine learning and automation strategies. With the global demand for AI and ML professionals skyrocketing, this Data Science course equips you with the advanced technical skills needed to tap into high-paying and innovative career opportunities. Our program also ranks among the best Data Science training options for students seeking hands-on project experience.
This course is designed for:
Through this Data Science course, students gain the analytical depth and technical mastery needed to solve complex problems using data. One Team Solution’s training provides a robust foundation in statistics and coding, ensuring you possess the competitive edge required to excel in the global AI landscape.
You will gain hands-on experience in:
Yes! Placement support includes:
At One Team Solutions, we don’t guarantee placements but ensure students become highly employable professionals through our Data Science course with placement approach.
Absolutely!
Yes, through our intensive model!
No expert knowledge is required!
You will master the industry standard stack!