Friday, 28 February 2025

iPlan refined 280225

Firstly: https://www.youtube.com/watch?v=qX8a8tR90Kg

Refined Plan Breakdown

1. Immediate Focus (Now – Next 2 Months)

Complete "Writing Efficient Code in Python" → This will improve your computational efficiency and coding best practices, which will be invaluable as you scale into data engineering and AI development.

Continue progressing through DataCamp courses (Data Science & Data Engineering) → Prioritize finishing structured tracks to solidify SQL, Python, and data pipelines.

Complementary Reading for This Phase:

Best Practices for Scientific Computing (To reinforce high-level programming habits).

Boom Bubbles and the End of Stagnation (To tie economic cycles into financial modeling).

Tesla Masterplan (For visionary tech & energy sector insights).

2. Technical Expansion (Following 2–4 Months)

C Programming Language → This will serve as an introduction to low-level programming and systems efficiency, key for deeper software and infrastructure understanding.

Computer Systems: A Programmer’s Perspective → This will strengthen your grasp of memory management, concurrency, and performance optimization, making you a better data engineer and AI practitioner.

Complementary Reading for This Phase:

Programming Massively Parallel Processors (To integrate GPU computing knowledge).

Deep Learning: Foundations and Concepts (To expand AI & ML expertise).

Active Inference by Karl Friston (To connect AI learning with decision-making).

3. Financial and Strategic Expansion (6+ Months Out)

CFA Level 1 Focus Areas:

Start with Quants, Alternatives, Derivatives, and Fixed Income (As planned, these sections directly integrate with AI-driven financial models).

Complementary Reading for This Phase:

US Economic Statecraft by Raboresearch (To grasp macroeconomic and geopolitical implications).

World Bank Country Partnership Framework for Namibia (For real-world application in economic modeling and policy impact).

4. Personal and Strategic Development (Ongoing)

Books Focused on Decision-Making & Personal Mastery:


Laws of Human Nature

Crucial Conversations

Managing Conflict Mindfully

Poor Charlie’s Almanack


Philosophy, Mindset, and Reality Shaping:


I: Reality and Subjectivity

The Bahir

Reality Transurfing


Political and Historical Insight for Strategic Thinking:


Where Others Wavered – Sam Nujoma


Key Takeaways:

Plan is well-structured across Data Science, AI, Finance, and Strategic Thinking.

Ordering tasks into phases (Immediate → Expansion → Long-Term Mastery) will optimize learning speed.

Reading list perfectly complements technical journey, reinforcing insights in economy, psychology, AI, and geopolitical finance.

By structuring learning and balancing theory with execution (projects, applications), gain both depth and adaptability.

Wednesday, 26 February 2025

Track updates 27022025

DataCamp Tracks:

Data Analyst in Python (100% complete)

Associate Data Engineer in SQL (100% complete)

Deep Learning Skill Track (100% complete)

Developing Large Language Models in Python (100% complete)

Associate Data Scientist in Python (66% complete)

Associate AI Engineer for Data Scientists (45% complete)

Associate AI Engineer for Developers (13% complete)

Data Engineer in Python (27% complete)

Professional Data Engineer in Python (25% complete)

Data Manipulation in Python (100% complete)

Importing and Cleaning Data in Python (100% complete) 

Data Analysis with Excel Power Tools (to follow)

Monday, 17 February 2025

Track updates: 17022025

DataCamp Tracks:


Data Analyst in Python (100% complete)

Associate Data Engineer in SQL (100% complete)

Deep Learning Skill Track (100% complete)

Developing Large Language Models in Python (100% complete)

Associate Data Scientist in Python (66% complete)

Associate AI Engineer for Data Scientists (44% complete)

Associate AI Engineer for Developers (13% complete)

Data Engineer in Python (27% complete)

Professional Data Engineer in Python (25% complete)

Data Manipulation in Python (75% complete)

Importing and Cleaning Data in Python (75% complete) 

Data Analysis with Excel Power Tools (to follow)

Wednesday, 29 January 2025

Track updates 30012024

DataCamp Tracks:

Data Analyst in Python (100% complete)

Associate Data Engineer in SQL (100% complete)

Deep Learning Skill Track (100% complete)

Developing Large Language Models in Python (100% complete)

Associate Data Scientist in Python (61% complete)

Associate AI Engineer for Data Scientists (43% complete)

Associate AI Engineer for Developers (13% complete)

Data Engineer in Python (22% complete)

Professional Data Engineer in Python (3% complete)

Data Manipulation in Python (75% complete)

Importing and Cleaning Data in Python (69% complete) 

Data Analysis with Excel Power Tools (to follow)


Tuesday, 21 January 2025

Data Camp Track Updates 210125

 To whom it might concern latest track progress

DataCamp Tracks:

Data Analyst in Python (100% complete)

Associate Data Engineer in SQL (100% complete)

Deep Learning Skill Track (100% complete)

Developing Large Language Models in Python (100% complete)

Associate Data Scientist in Python (59% complete)

Associate AI Engineer for Data Scientists (43% complete)

Associate AI Engineer for Developers (13% complete)

Data Engineer in Python (18% complete)

Professional Data Engineer in Python (3% complete)

Data Manipulation in Python (75% complete)

Data Analysis with Excel Power Tools (to follow)

Oh and...

BUY $TETSUO

BUY $TSOTCHKE 

Saturday, 18 January 2025

iPlan Update again

All previous directives except for Data Engineering are suspended...

iPlan Update

Updated Plan Overview

DataCamp Tracks:

  • Data Analyst in Python (100% complete)

  • Associate Data Engineer in SQL (100% complete)

  • Associate Data Scientist in Python (56% complete)

  • Deep Learning Skill Track (100% complete)

  • Developing Large Language Models in Python (100% complete)

  • Associate AI Engineer for Data Scientists (43% complete)

  • Associate AI Engineer for Developers (13% complete)

  • Data Engineer in Python (8% complete)

  • Professional Data Engineer in Python (1% complete)

  • Data Analysis with Excel Power Tools (to follow)

Complementary Studies:

  • Computer Systems: A Programmer's Perspective

  • The C Programming Language

  • Structure and Interpretation of Computer Programs

  • Designing Data-Intensive Applications

  • Computer Architecture: A Quantitative Approach

  • Programming Massively Parallel Processors

  • Active Inference by Karl Friston

  • Structuring the Information Commons Open Standards and Cognitive Security EDITED BY Scott David, R. J. Cordes, and Daniel A. Friedman

  • NVIDIA Deep Learning Course (to complement the DataCamp Deep Learning track)

  • Poor Charlie's Almanack. The Essential Wit and Wisdom. of Charles T. Munger.

  • CFA Charter after completing the above


Updated Suggestions and Adjustments:

1. Prioritize Advanced AI and Deep Learning for Future Opportunities

  • Why: AI and deep learning are cornerstones of innovation in industries like finance, oil, and sustainability. Advanced proficiency will align with Namibia’s emerging sectors and global AI trends.

  • Adjustment: Complete the Associate AI Engineer tracks and the NVIDIA Deep Learning Course before tackling advanced programming and architecture studies.


2. Focus on Real-World Applications with Capstone Projects

  • Why: Practical experience showcases your ability to apply technical skills effectively and helps solidify your knowledge.

  • Adjustment: Develop projects like:

    • A data pipeline to analyze Namibia’s trade or debt levels using Python and SQL.

    • A deep learning application for forecasting energy consumption.

    • A government debt performance visualization using Seaborn to analyze trends and provide insights.


3. Incorporate Financial Modeling Tools

  • Why: Preparing for the CFA and exploring quantitative finance will broaden your career options.

  • Adjustment: Add Python libraries like Pandas, NumPy, and QuantLib to your toolset. Start building projects focused on portfolio management, risk analysis, and financial forecasting.


4. Postpone Systems Programming Until Core Data Goals Are Met

  • Why: While understanding systems and architecture is valuable, the immediate focus on data science and AI will yield faster career opportunities.

  • Adjustment: Shift "Computer Systems: A Programmer’s Perspective" and "The C Programming Language" studies to after completing AI and Data Engineering tracks.


5. Set Realistic Milestones and Maintain Balance

  • Why: Avoid burnout by setting achievable goals and allocating time effectively.

  • Adjustment: Use monthly goals to track progress:

    • Finish the Associate AI Engineer tracks and Data Engineer in Python within the next 2 months.

    • Allocate weekends for hands-on projects.

    • Dedicate 1-2 hours daily for reading complementary materials.


Immediate Action Plan:

  • Finish Associate Data Scientist in Python (by [specific deadline]).

  • Complete Associate AI Engineer tracks (within 2-3 months).

  • Begin hands-on projects related to Namibia’s sectors (e.g., trade, energy, or financial markets).

  • Continue advancing through complementary readings alongside certifications.


Outcomes to Expect:

By following this plan, you will:

  1. Achieve proficiency in AI, data science, and engineering

  2. Build a portfolio that demonstrates expertise in solving real-world problems.

  3. Align your technical growth with Namibia’s economic opportunities and global trends.

Monday, 6 January 2025

2024 iPlan

 Current Plan Overview

  1. DataCamp Tracks:
    • Data Analyst in Python (100% complete)
    • Associate Data Engineer in SQL (65% complete)
    • Associate Data Scientist in Python (54% complete)
    • Deep Learning Skill Track (100% complete)
    • Developing Large Language Models in Python (100% Complete)
    • Associate AI Engineer for Data Scientists (43 % Complete)
    • Associate AI Engineer for Developers (13% Complete)
    • Data Engineer in Python (to follow)
    • Professional Data Engineer in Python (to follow)
    • Machine Learning Scientist (to follow*)

  2. Complementary Studies:
    • Computer Systems: A Programmer's Perspective
    • The C Programming Language
    • Structure and Interpretation of Computer Programs
    • Designing Data-Intensive Applications
    • Computer Architecture: A Quantitative Approach
    • Programming Massively Parallel Processors
    • Active Inference by Karl Friston
  3. NVIDIA Deep Learning Course (to complement the DataCamp Deep Learning track)
  4. Cisco Skills for All Courses 
  5. CFA Charter after completing the above


Suggested Improvements

1. Prioritise Deep Learning and Data Science for AI-Driven Growth:

  • Why: AI and deep learning are rapidly transforming industries, and given Namibia’s emerging sectors, investing time in deep learning and AI will be critical. The skills learned will tie directly into your long-term goals in data science, tech, and finance.
  • Adjustment: Move the Deep Learning Skill Track and NVIDIA Deep Learning Course higher on the list and focus on them after finishing your DataCamp certifications.

2. Integrate Real-World Data Projects:

  • Why: Given the theoretical nature of your current studies, hands-on experience will help you solidify the skills and stand out in competitive job markets. You can do this by applying what you learn in real-world contexts (e.g., Namibia’s oil sector or sustainability efforts).
  • Adjustment: Start working on a capstone project that applies the skills you're developing in Python, SQL, and AI to a specific industry problem in Namibia (e.g., data analysis of consumer behavior, energy usage forecasting, or green energy projects).

3. Leverage New Tools for Financial Modeling:

  • Why: Given your plans to eventually pursue the CFA, you should start integrating financial modeling tools now. Python libraries like Pandas, NumPy, and QuantLib will be invaluable.
  • Adjustment: Add a Financial Modeling in Python track or project alongside your existing technical studies. This could include building basic portfolio models, performing risk analysis, or working on derivatives modeling with Python.

4. Focus on Systems Programming and Computer Architecture After Core Data Skills:

  • Why: While systems programming and architecture are valuable, they are secondary to the data science and AI focus in the current global landscape. After you’ve built a strong foundation in data skills and deep learning, you can then dive into more niche areas like systems architecture.
  • Adjustment: Shift Computer Systems: A Programmer’s Perspective and The C Programming Language to after the completion of your core Data Science and AI work. These should come into play when you're more focused on specialized technical roles.

5. Set Milestones and Time Allocation:

  • Why: A clear breakdown of what to focus on when will ensure you don't get overwhelmed. It’s critical to maintain balance, especially when studying multiple fields like data engineering, AI, and finance.
  • Adjustment: Break the plan down into monthly goals to keep your momentum going. Focus on completing certifications and working on hands-on projects before moving on to additional readings and CFA prep.

6. Apply Cisco Skills for All to Enhance Your Network Security Knowledge:

  • Why: As part of working in AI, data science, or finance, understanding cybersecurity and network architecture is valuable, especially if you’re interested in building secure, scalable systems.
  • Adjustment: Incorporate relevant Cisco Skills for All courses into your studies, perhaps focusing on network architecture or security, depending on your interest in protecting data systems or handling infrastructure projects.

Hello 2025

 Nothing Substantive to share, Deep Learning is cool, I love you if you're reading this! Take a deep breath and smile. :)