Talk With Zulqai

I’m always excited to connect with others who are passionate about AI, machine learning, or anything tech-related. Whether you have questions, ideas, collaboration proposals, or just want to share feedback, I’d love to hear from you!

Address

Multan, Punjab
Pakistan

Call With Zulqai

+92 (340)-6290-415

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  • Linkedin @zulqai
  • X @zul ai

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frequently asked questions

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learn with zulqai.com Machine learning & AI Engineer

I’m currently focused on building my foundational skills in machine learning, specifically in areas like supervised learning (classification and regression), unsupervised learning (clustering), and neural networks. My go-to programming language is Python, and I’m working with popular libraries like scikit-learn, TensorFlow, and PyTorch. While I’m still growing my expertise, I’ve been working on personal projects that apply these skills to solve real-world problems.

While I’m still learning, I’d love to collaborate or explore your project ideas. I can provide feedback, brainstorm solutions, or help with research and basic model implementation. However, I’m not yet at the level to build complex systems or offer advanced solutions. We could learn together and figure out solutions as a team!

Some of the resources that have been invaluable to me are:

Tools: I recommend starting with Google Colab (for free GPU/TPU support) and Jupyter Notebooks for hands-on experimentation.

Books: “Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow” by Aurélien Géron is a great practical guide for beginners.

Online Courses: I’ve been learning from Coursera’s Machine Learning course by Andrew Ng and DeepLearning.AI’s TensorFlow Developer Professional Certificate.

Though I’m still learning, the key to applying machine learning in business is identifying areas where data-driven decisions can improve efficiency. For instance, businesses often use machine learning for customer behavior prediction, sales forecasting, or recommendation systems. Understanding the business context and problem is crucial, and then the machine learning model can be designed to automate, predict, or optimize specific outcomes.

I’m currently focusing on practice and projects to improve my skills. My advice would be to:

  • Work on small personal projects that interest you, even if they seem simple. Applying what you learn is key.
  • Participate in Kaggle competitions—great for real-world datasets and challenging scenarios.
  • Learn the math behind machine learning (e.g., linear algebra, calculus) to strengthen your understanding.

That’s the approach I’m taking to gradually improve!

Here’s how I understand it:

Deep Learning (DL): A subset of machine learning that uses neural networks to process large datasets, particularly useful for tasks like image recognition and natural language processing (NLP).

Artificial Intelligence (AI): A broad field focused on creating systems that mimic human intelligence. Machine learning and deep learning are subfields of AI.

Machine Learning (ML): A subset of AI that focuses on training models to learn from data and improve over time without being explicitly programmed.

As someone who is still learning, I’ve found that the key steps to breaking into the field include:

Participating in online communities like Kaggle to gain hands-on experience.

Building a strong foundation in programming (Python is widely used).

Learning the basics of data manipulation and machine learning algorithms.

Working on projects and building a portfolio to demonstrate your skills.