Pages

Saturday, June 22, 2024

Foundations: Data, Data, Everywhere (Google)

Colleagues, the Foundations: Data, Data, Everywhere program from Google will enable your organization  to improve its processes, identify opportunities and trends, launch new products, and make thoughtful decisions. You’ll be introduced to the world of data analytics through a hands-on curriculum developed by Google. Current Google Data Analysts will instruct and provide you with hands-on ways to accomplish common data analyst tasks using the best tools and resources. Gain an understanding of the practices and processes employed by a junior or associate data analyst in their day-to-day job. - Learn about key analytical skills (data cleaning, data analysis, data visualization) and tools (spreadsheets, SQL, R programming, Tableau) that you can add to your professional toolbox. Learn to Define and explain key concepts involved in data analytics including data, data analysis, and data ecosystems, Conduct an analytical thinking self assessment giving specific examples of the application of analytical thinking, Discuss the role of spreadsheets, query languages, and data visualization tools in data analytics and describe the role of a data analyst with specific reference to jobs. Gain high-demand and highly marketable skills including Spreadsheets, Data Analysis, SQL, Data Visualization and Data Cleansing. Training lessons address: 1) Introducing data analytics and analytical thinking - Data analytics in everyday life, Cassie: Dimensions of data analytics, What is the data ecosystem?, How data informs better decisions, Discover data skill sets, Key data analyst skills, All about thinking analytically, Explore core analytical skills, Data drives successful outcomes, Witness data magic; 2) The Wonderful World of Data - Learn about data phases and tools, Stages of the data life cycle, The phases of data analysis and this program, Molly: Example of the data analysis process, Explore data analyst tools; 3) Set Up Your Data Analytics Toolbox - The ins and outs of core data tools, Make spreadsheets your friends, SQL in action, Angie: Everyday struggles when learning new skills, Become a data viz whiz, Lilah: The power of a visualization; and 4) Become a Fair and Impactful Data Professional - The job of a data analyst, Joey: Path to becoming a data analyst, Tony: Supporting careers in data analytics, The power of data in business, Rachel: Data detectives, Understand data and fairness, Alex: Fair and ethical data decisions, Data analysts in different industries and Samah: Interview best practices.

Enroll today (teams & executives are welcome): http://imp.i384100.net/9gK75j 


Download your free Data Science  - Career Transformation Guide.


Explore our Data-Driven Organizations Audible and Kindle book series on Amazon:


1 - Data-Driven Decision-Making  (Audible) (Kindle)


2 - Implementing Data Science Methodology: From Data Wrangling to Data Viz (Audible) (Kindle)


3 - The Upskill Gambit - Discover the 5 Keys to Your Career and Income Security in the Digital Age (Audible) (Kindle


Much career success, Lawrence E. Wilson - AI Academy (share with your team)

Tuesday, June 18, 2024

Generative AI for Everyone

Colleagues, in the Generative AI for Everyone program you will learn what generative AI is and how it works, its common use cases, and what this technology can and cannot do, and How to think through the lifecycle of a generative AI project, from conception to launch, including how to build effective prompts. The potential opportunities and risks that generative AI technologies present to individuals, businesses, and society. Skills you'll gain - Generative AI Tools, Large Language Models, AI strategy, Generative AI and AI Productivity. Instructed by AI pioneer Andrew Ng, Generative AI for Everyone offers his unique perspective on empowering you and your work with generative AI. Andrew will guide you through how generative AI works and what it can (and can’t) do. You’ll get hands-on time with generative AI projects to put your knowledge into action and gain insight into its impact on both business and society. Skill-based lessons include: 1) Introduction to Generative AI - How Generative AI works, LLMs as a thought partner, AI is a general purpose technology, Writing, Reading, Chatting, What LLMs can and cannot do, Tips for prompting, Image generation, 2) Generative AI Projects - Using generative AI in software applications, Trying generative AI code yourself, Lifecycle of a generative AI project, Cost intuition, Retrieval Augmented Generation (RAG), Fine-tuning, Pre-training an LLM, Choosing a model, How LLMs follow instructions: Instruction tuning and RLHF, Tool use and agents, and 3) Generative AI in Business and Society - Day-to-day usage of web UI LLMs, Task analysis of jobs, Additional job analysis examples, New workflows and new opportunities, Teams to build generative AI software, Automation potential across sectors, Concerns about AI, Artificial General Intelligence, Responsible AI, and Building a more intelligent world.

Enroll today (teams & execs welcome): https://imp.i384100.net/9gKrZ4 


Download your free AI-ML-DL - Career Transformation Guide.

For your listening-reading pleasure:


1 - “AI Software Engineer: ChatGPT, Bard & Beyond” (Audible) or (Kindle)  


2 - “ChatGPT - The Era of Generative Conversational AI Has Begun” (Audible) or (Kindle


3 - “ChatGPT, Gemini and Llama - The Journey from AI to AGI, ASI and Singularity” (Audible) or (Kindle


Much career success, Lawrence E. Wilson - AI Academy (share with your team)


Linear Algebra for Machine Learning and Data Science (training)

Colleagues, in the Linear Algebra for Machine Learning and Data Science you will learn to represent data as vectors and matrices and identify their properties using concepts of singularity, rank, and linear independence, how to apply common vector and matrix algebra operations like dot product, inverse, and determinants, and how ro express certain types of matrix operations as linear transformation, and apply concepts of eigenvalues and eigenvectors to machine learning problems Skills you'll gain include Eigenvalues And Eigenvectors, Linear Equation, Determinants, Machine Learning and Linear Algebra. We also recommend a basic familiarity with Python (loops, functions, if/else statements, lists/dictionaries, importing libraries), as labs use Python and Jupyter Notebooks to demonstrate learning objectives in the environment where they’re most applicable to machine learning and data science. If you are already familiar with the concepts of linear algebra, Course 1 will provide a good review, or you can choose to take Course 2: Calculus for Machine Learning and Data Science and Course 3: Probability and Statistics for Machine Learning and Data Science, of this specialization. A basic familiarity with Python (loops, functions, if/else statements, lists/dictionaries, importing libraries), as labs use Python and Jupyter Notebooks to demonstrate learning objectives in the environment where they’re most applicable to machine learning and data science is recommended. Week 1: Systems of linear equations - Linear Algebra Applied, System of sentences, System of equations, System of equations as lines and planes,, A geometric notion of singularity, Singular vs nonsingular matrices, Linear dependence and independence, The determinant, Week 2: Solving systems of linear equations, Solving non-singular system of linear equations, Solving singular system of linear equations, Solving system of equations with more variables, Matrix row-reduction, Row operations that preserve singularity, The rank of a matrix,, The rank of a matrix in general, Row echelon form, Row echelon form in general, Reduced row echelon form,, The Gaussian Elimination Algorithm, Week 3: Vectors and Linear Transformations - Machine Learning Motivation, Vectors and their properties, Vector operations, The dot product, Geometric Dot Product, Multiplying a matrix by a vector, Matrices as linear transformations, Linear transformations as matrices, Matrix multiplication, The identity matrix, Matrix inverse, Which matrices have an inverse?, Neural networks and matrices, and Week 4: Determinants and c - Singularity and rank of linear transformations, Determinant as an area, Determinant of a product and inverses, Bases in Linear Algebra, Span in Linear Algebra, Eigenbases, Eigenvalues and Eigenvectors, Calculating Eigenvalues and Eigenvectors, On the Number of Eigenvectors, Dimensionality Reduction and Projection, Motivating PCA, Variance and Covariance, Covariance Matrix, PCA - Overview, PCA - Why It Works, PCA - Mathematical Formulation and Discrete Dynamical Systems. 

Enroll today (teams & execs welcome): https://imp.i384100.net/eKmbx6 


Download your free AI-ML-DL - Career Transformation Guide.


For your listening-reading pleasure:


1 - “AI Software Engineer: ChatGPT, Bard & Beyond” (Audible) or (Kindle)  


2 - “ChatGPT - The Era of Generative Conversational AI Has Begun” (Audible) or (Kindle


3 - “ChatGPT, Gemini and Llama - The Journey from AI to AGI, ASI and Singularity” (Audible) or (Kindle


Much career success, Lawrence E. Wilson - AI Academy (share with your team)



Monday, June 17, 2024

AI for Everyone

Colleagues, the AI for Everyone course is not only for engineers. If you want your organization to become better at using AI, this is the course to tell everyone--especially your non-technical colleagues--to take. Learn the meaning behind common AI terminology, including neural networks, machine learning, deep learning, and data science, What AI realistically can--and cannot--do, How to spot opportunities to apply AI to problems in your own organization, What it feels like to build machine learning and data science projects, How to work with an AI team and build an AI strategy in your company and How to navigate ethical and societal discussions surrounding AI. Though this course is largely non-technical, engineers can also take this course to learn the business aspects of AI. Skill-based lessons include: 1) What is AI? - Machine Learning, What is data?, The terminology of AI, What makes an AI company?, What machine learning can and cannot dos, More examples of what machine learning can and cannot dos, Non-technical explanation of deep learning, 2) Building AI Projects - Workflow of a machine learning project, Workflow of a data science project, Every job function needs to learn how to use data, How to choose an AI project, How to choose an AI project, Working with an AI team, Technical tools for AI teams, 3) Building AI In Your Company - Case study: Smart speaker, Case study: Self-driving car, Example roles of an AI team, AI Transformation Playbook, AI Transformation Playbook, AI pitfalls to avoid, Taking your first step in AI, Survey of major AI application areas, Survey of major AI techniques, and 4) AI and Society - A realistic view of AI, Discrimination/Bias, Adversarial attacks on AI, Adverse uses of AI, AI and developing economies, and AI and jobs.  

Enroll today (teams & execs welcome): https://imp.i384100.net/4P4qr9 


Download your free AI-ML-DL - Career Transformation Guide.


For your listening-reading pleasure:


1 - “AI Software Engineer: ChatGPT, Bard & Beyond” (Audible) or (Kindle)  


2 - “ChatGPT - The Era of Generative Conversational AI Has Begun” (Audible) or (Kindle


3 - “ChatGPT, Gemini and Llama - The Journey from AI to AGI, ASI and Singularity” (Audible) or (Kindle


Much career success, Lawrence E. Wilson - AI Academy (share with your team)


#coursera #AndrewNg #deeplearning #machinelearning #ai #artificialintelligence #Applications #Usecases #ai #artificialintelligence #machinelearning #PromptEngineering #ChatGPTPlayGround #DataPrivacy #datamasking #dataleakage #aiacademy #career #chatgpt #llama #gemini #AGI #ASI #singularity #aiacademy


Sunday, June 16, 2024

Gen AI for Data Privacy & Protection (training)

Colleagues, in the Gen AI for Data Privacy & Protection program you will grasp the significance of data privacy, navigate AI ethics, and safeguard data with the help of Generative AI. Gain high-demand and highly marketable skills in Security Awareness, Information Technology Security Fundamentals and Generative AI. This course offers an exploration into using Generative AI for Data Privacy & Protection, designed for learners keen on advancing their expertise in this critical area. Through a curriculum that blends theoretical foundations with practical applications, participants delve into the core aspects of Generative AI for safeguarding data, and the essential considerations of ethics and compliance. The short course aims to equip learners with the skills to adeptly navigate the complexities of data protection, ensuring ethical integrity and regulatory adherence, thus helping them to understand the challenges of implementing cutting-edge data privacy solutions in a rapidly evolving technological landscape. Training videos address: 1) Overview of Data Privacy, 2) Understand the Role of Gen AI in Data Privacy, 3) Privacy Challenges with Generative AI, 4) Diving Deep into Privacy Compliance Laws, 5) Tips to Safeguard your Organization, 6) Importance of Ethical and Legal Considerations, 7) AI Specific Laws and Governing Bodies, and 8) Gen AI Responsibility for Protecting Data. Reading materials include: 1) Empowering Data Privacy: How Generative AI Enhances Security and Confidentiality, 2) How to Use Discussion Forums, 3) In-Depth Analysis of Global Privacy Compliance Regulations, 4) Mastering the Complexities of GDPR and CCPA, 5) Addressing Privacy Concerns in Generative AI Applications, 6) Role of Gen AI in Ensuring Data Privacy: Safeguarding Your Information, 7) Navigating the CPRA and the EU Artificial Intelligence Act, and 8) Understanding AI-Specific Legislation and Regulatory Frameworks. Knowledge Checks cover Getting Started with Generative AI, Generative AI's Privacy Challenges and Regulations, and Ethical and Legal Consideration. 

Enroll today (teams & execs welcome): https://imp.i384100.net/JzDRKR 

Download your free AI-ML-DL - Career Transformation Guide.

For your listening-reading pleasure:

1 - “AI Software Engineer: ChatGPT, Bard & Beyond” (Audible) or (Kindle)  


2 - “ChatGPT - The Era of Generative Conversational AI Has Begun” (Audible) or (Kindle

3 - “ChatGPT, Gemini and Llama - The Journey from AI to AGI, ASI and Singularity” (Audible) or (Kindle

Much career success, Lawrence E. Wilson - AI Academy (share with your team)

Saturday, June 15, 2024

Implementing Data Science Methodology - From Data Wrangling to Data Viz and Everything in Between (Audible & Kindle Book)

Colleagues, the new ebook entitled “Implementing Data Science Methodology … From Data Wrangling to Data Viz and Everything in Between” will enable you to lead data science initiatives within your organization. They allow organizations to make informed decisions based on data, which can lead to better results and increased competitiveness. Data-driven methodologies also help organizations to identify areas for improvement and to make more accurate predictions about future outcomes and improve the accuracy of decision-making. By analyzing large amounts of data, organizations can identify patterns and trends that would not be apparent otherwise. This allows them to make more informed decisions, reducing the risk of making decisions based on inaccurate or incomplete information. The implementation of data-driven methodologies is critical for organizations looking to remain competitive in today’s data-driven world. By leveraging data to make informed decisions, organizations can improve their performance, reduce risks, and provide better experiences for their customers. It is important for organizations to invest in the resources and processes needed to implement these methodologies effectively, and to stay up-to-date with the latest trends and technologies in data science. Key topics addressed include: 1) Data-Driven Methodologies, 2) The Role of the Data Scientist, 3) Stakeholders and Buy-in, 4) Key Concepts of Data-Driven Methodology, 5) Data-Driven Lifecycle, 6) Data-driven Roadmapping, 6) Planning and Implementing a Data-Driven Strategy, 7) Data-Driven Predictive Modeling, 8) Business Transformation, and 9) Examples of Data-Driven Organizations.

Access on Amazon today!  


(Audible) Listen


(Kindle) Read


And download your free Data Science - Career Transformation Guide.


Regards, Genesys Digital (Amazon Author Page) https://tinyurl.com/hh7bf4m9 


Tuesday, June 11, 2024

Data Structures and Algorithms (training)

Colleagues, the Data Structures and Algorithms (training) provides you with hands-on practice with over 100 data structures and algorithm exercises and guidance from a dedicated mentor to help prepare you for interviews and on-the-job scenarios. Gain skills including Basic Algorithms - Python data structures • Basic algorithms • Python arrays • Python lists • Python trees • Breadth-first search • Tree search • Recursive algorithms • Hash maps • Call stacks • Sorting algorithms • Hashing • Depth-first search • Divide and conquer algorithms • Tree algorithms, and Advanced Algorithms - A search algorithm • Graph algorithms • Greedy algorithms • Dynamic programming • Graph data structure. Lessons cover: 1) Introduction - refreshing your Python skills and learning about problem solving and efficiency, 2) Get Help with Your Account, 3) Getting Help, 3) Data Structures and Algorithms, Python Refresher - A quick refresh on Python basics, How to Solve Problems, A systematic way of approaching and breaking down problems, 4) Understanding the importance of efficiency when working with data structures and algorithms, 5) Unscramble Computer Science Problems, Deconstruct a series of open-ended problems into smaller components (e.g, inputs, outputs, series of functions), 6) Data Structures - core data structures used in programming - Introduction to Data Structures, Arrays and Linked Lists, Stacks and Queues, Apply Recursion to Problems, Trees - basic tree's, tree traversal and binary search trees, 7) Maps and Hashing, 8) Show Me the Data Structures - solve a open-ended practice problems. Hone your skills to identify and implement appropriate data structures and corresponding methods that meet given constraints, 8) Basic Algorithms - learn about the basic algorithms used in programming, Sorting - Faster Divide & Conquer Algorithms, 9) Problems vs. Algorithms - apply real-world open ended problems which train you to implement suitable data structures and algorithms under different context, Advanced Algorithms - learn the basic algorithms used in programming, Greedy Algorithms - Get familiar with and practice greedy algorithms, Graph Algorithms, 10) Dynamic Programming - apply your learnings to challenging exercises, 11) Route Planner - build a route-planning algorithm like the one used in Google Maps to calculate the shortest path between two points on a map.

Enroll today (teams & executives are welcome): https://tinyurl.com/35rrzjj9  


Download your free Data Science  - Career Transformation Guide.


Explore our Data-Driven Organizations Audible and Kindle book series on Amazon:


1 - Data-Driven Decision-Making  (Audible) (Kindle)


2 - Implementing Data Science Methodology: From Data Wrangling to Data Viz (Audible) (Kindle)


Much career success, Lawrence E. Wilson - AI Academy (share with your team) https://tinyurl.com/hh7bf4m9 


Christmas Bonanza - Audible & Kindle Book Series (Amazon)

“Transformative Innovation” Audio and eBook series make a wonderful Christmas gift! Transformative Innovation series:   1 - ChatGPT, Gemini...