7 AI Portfolio Initiatives to Increase the Resume

7 AI Portfolio Initiatives to Increase the Resume
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I actually imagine that to get employed within the subject of synthetic intelligence, that you must have a powerful portfolio. This implies that you must present the recruiters that you could construct AI fashions and purposes that resolve real-world issues.

On this weblog, we’ll evaluate 7 AI portfolio tasks that may enhance your resume. These tasks include tutorials, supply code, and different supportive supplies that will help you construct correct AI purposes.

 

1. Construct and Deploy your Machine Studying Software in 5 Minutes

 

Mission hyperlink: Construct AI Chatbot in 5 Minutes with Hugging Face and Gradio

 

7 AI Portfolio Projects to Boost the Resume
Screenshot from the undertaking

 

On this undertaking, you’ll be constructing a chatbot utility and deploying it on Hugging Face areas. It’s a beginner-friendly AI undertaking that requires minimal information of language fashions and Python. First, you’ll study varied elements of the Gradio Python library to construct a chatbot utility, after which you’ll use the Hugging Face ecosystem to load the mannequin and deploy it. 

It’s that straightforward.

 

2. Construct AI Initiatives utilizing DuckDB: SQL Question Engine

 

Mission hyperlink: DuckDB Tutorial: Constructing AI Initiatives

 

7 AI Portfolio Projects to Boost the Resume
Screenshot from the undertaking

 

On this undertaking, you’ll study to make use of DuckDB as a vector database for an RAG utility and in addition as an SQL question engine utilizing the LlamaIndex framework. The question will take pure language enter, convert it into SQL, and show the lead to pure language. It’s a easy and simple undertaking for inexperienced persons, however earlier than you dive into constructing the AI utility, that you must study just a few fundamentals of the DuckDB Python API and the LlamaIndex framework.

 

3. Constructing A number of-step AI Agent utilizing the LangChain and Cohere API

 

Mission hyperlink: Cohere Command R+: A Full Step-by-Step Tutorial

 

7 AI Portfolio Projects to Boost the Resume7 AI Portfolio Projects to Boost the Resume
Screenshot from the undertaking

 

Cohere API is best than OpenAI API  when it comes to performance for growing AI purposes. On this undertaking, we’ll discover the assorted options of Cohere API and study to create a multi-step AI agent utilizing the LangChain ecosystem and the Command R+ mannequin. This AI utility will take the consumer’s question, search the net utilizing the Tavily API, generate Python code, execute the code utilizing Python REPL, after which return the visualization requested by the consumer. That is an intermediate-level undertaking for people with primary information and desirous about constructing superior AI purposes utilizing the LangChain framework.

 

4. Wonderful-Tuning Llama 3 and Utilizing It Regionally

 

Mission hyperlink: Wonderful-Tuning Llama 3 and Utilizing It Regionally: A Step-by-Step Information | DataCamp

 

7 AI Portfolio Projects to Boost the Resume7 AI Portfolio Projects to Boost the Resume
Picture from the undertaking

 

A preferred undertaking on DataCamp that may show you how to fine-tune any mannequin utilizing free assets and convert the mannequin to Llama.cpp format in order that it may be used regionally in your laptop computer with out the web. You’ll first study to fine-tune the Llama-3 mannequin on a medical dataset, then merge the adapter with the bottom mannequin and push the total mannequin to the Hugging Face Hub. After that, convert the mannequin information into the Llama.cpp GGUF format, quantize the GGUF mannequin and push the file to Hugging Face Hub. Lastly, use the fine-tuned mannequin regionally with the Jan utility.

 

5. Multilingual Computerized Speech Recognition

 

Mannequin Repository: kingabzpro/wav2vec2-large-xls-r-300m-Urdu

Code Repository: kingabzpro/Urdu-ASR-SOTA

Tutorial Hyperlink: Wonderful-Tune XLSR-Wav2Vec2 for low-resource ASR with 🤗 Transformers

 

7 AI Portfolio Projects to Boost the Resume
Screenshot from kingabzpro/wav2vec2-large-xls-r-300m-Urdu

 

My hottest undertaking ever! It will get nearly half 1,000,000 downloads each month. I fine-tuned the Wave2Vec2 Massive mannequin on an Urdu dataset utilizing the Transformer library. After that, I improved the outcomes of the generated output by integrating the language mannequin.

 

7 AI Portfolio Projects to Boost the Resume7 AI Portfolio Projects to Boost the Resume
Screenshot from Urdu ASR SOTA – a Hugging Face House by kingabzpro

 

On this undertaking, you’ll fine-tune a speech recognition mannequin in your most well-liked language and combine it with a language mannequin to enhance its efficiency. After that, you’ll use Gradio to construct an AI utility and deploy it to the Hugging Face server. Wonderful-tuning is a difficult job that requires studying the fundamentals, cleansing the audio and textual content dataset, and optimizing the mannequin coaching.

 

6. Constructing CI/CD Workflows for Machine Studying Operations

 

Mission hyperlink: A Newbie’s Information to CI/CD for Machine Studying | DataCamp

 

7 AI Portfolio Projects to Boost the Resume7 AI Portfolio Projects to Boost the Resume
Picture from the undertaking

 

One other well-liked undertaking on GitHub. It entails constructing a CI/CD pipeline or machine studying operations. On this undertaking, you’ll study machine studying undertaking templates and the right way to automate the processes of mannequin coaching, analysis, and deployment. You’ll study MakeFile, GitHub Actions, Gradio, Hugging Face, GitHub secrets and techniques, CML actions, and varied Git operations. 

In the end, you’ll construct end-to-end machine studying pipelines that may run when new knowledge is pushed or code is up to date. It can use new knowledge to retrain the mannequin, generate mannequin evaluations, pull the skilled mannequin, and deploy it on the server. It’s a absolutely automated system that generates logs at each step.

 

7. Wonderful-tuning Steady Diffusion XL with DreamBooth and LoRA

 

Mission hyperlink: Wonderful-tuning Steady Diffusion XL with DreamBooth and LoRA | DataCamp

 

7 AI Portfolio Projects to Boost the Resume7 AI Portfolio Projects to Boost the Resume
Picture from the undertaking 

 

We’ve got discovered about fine-tuning giant language fashions, however now we’ll fine-tune a Generative AI mannequin utilizing private photographs. Wonderful-tuning Steady Diffusion XL requires just a few photographs and, in consequence, you may get optimum outcomes, as proven above.

On this undertaking, you’ll first study Steady Diffusion XL after which fine-tune it on a brand new dataset utilizing Hugging Face AutoTrain Advance, DreamBooth, and LoRA. You’ll be able to both use Kaggle without spending a dime GPUs or Google Colab. It comes with a information that will help you each step of the way in which.

 

Conclusion

 

The entire tasks talked about on this weblog had been constructed by me. I made positive to incorporate a information, supply code, and different supporting supplies. 

Engaged on these tasks will provide you with worthwhile expertise and show you how to construct a powerful portfolio, which might improve your possibilities of securing your dream job. I extremely advocate everybody to doc their tasks on GitHub and Medium, after which share them on social media to draw extra consideration. Maintain working and maintain constructing; these experiences may also be added to your resume as an actual expertise.
 
 

Abid Ali Awan (@1abidaliawan) is a licensed knowledge scientist skilled who loves constructing machine studying fashions. Presently, he’s specializing in content material creation and writing technical blogs on machine studying and knowledge science applied sciences. Abid holds a Grasp’s diploma in expertise administration and a bachelor’s diploma in telecommunication engineering. His imaginative and prescient is to construct an AI product utilizing a graph neural community for college students combating psychological sickness.