z_fi
z_fi t1_jb7ihpk wrote
Reply to [D] I’m a Machine Learning Engineer for FAANG companies. What are some places looking for freelance / contract work for ML? by doctorjuice
I’m on a career break, but I was as of December running the AI division of a consulting company.
I will say that finding part time or short term work is very hard. Longer term contract work is relatively easy.
most companies are struggling with the basics - data engineering, data analytics… maybe data science, but with data science you have to be able to talk to the c-suite well and without an mba the lingo is a little hard.
Machine learning projects often require a lot more time to deliver (beyond a proof of concept, and pocs don’t make money) and generally a team rather than an individual, and wayy more stakeholder support than you can muster
Usually ML projects require a lot of data which often puts you into a larger sized business which makes it very difficult to navigate as a freelancer…. You probably need to be in their system when it comes to invoicing and such and so you need to have your ducks in a row where most freelancers don’t. Freelancers, in general, succeed with smaller businesses.
Ignore anyone suggesting upwork.
One avenue I’d recommend is having an honest conversation with consulting company recruiters about what you’re looking for. Stay 1099 or do corp 2 corp. they’ll want you to come on as w2 but be a firm no. Generally these recruiters are looking for easy money and so are you. It’s definitely possible to make a meaningful business relationships here though at your level of seniority you might now know how to play the game at first
z_fi t1_j7q0h1g wrote
Reply to [D] What do you think about this 16 week curriculum for existing software engineers who want to pursue AI and ML? by Imaginary-General687
A typical machine learning curriculum should cover the following topics:
Introduction to machine learning
Linear Regression
Logistic Regression
Decision Trees and Random Forests
Naive Bayes
k-Nearest Neighbors (k-NN)
Support Vector Machines (SVMs)
Neural Networks
Convolutional Neural Networks (CNNs)
Recurrent Neural Networks (RNNs)
Generative Adversarial Networks (GANs)
Clustering (K-means, Hierarchical)
Dimensionality Reduction (PCA, t-SNE)
Ensemble Methods
Model evaluation and selection
Hyperparameter tuning
Regularization
Bias-Variance Trade-off
Overfitting and Underfitting
Model interpretability and explainability
z_fi t1_j4zy4dq wrote
Reply to [D] ML Researchers/Engineers in Industry: Why don't companies use open source models more often? by tennismlandguitar
Restrictive licensing and limited usefulness to industry problems.
z_fi t1_j4mh2w0 wrote
Reply to comment by farox in [D] I’m a Machine Learning Engineer for FAANG companies. What are some places I can get started doing freelance work for ML? by doctorjuice
I’m a consultant, and most recently was running the AI wing of a publicly traded consulting company as a full time employee , and OPs feedback is entirely correct.
I’m currently on a career break and returning as an independent consultant
z_fi t1_is0sobt wrote
Reply to comment by likeamanyfacedgod in [D] Career advice: Can one make a career in building machine learning models and then selling the IP for them? by likeamanyfacedgod
Yes, and this is why business and sales people make a ton of money.
A great technology isn’t valuable unless you know how to monetize it
z_fi t1_jc06htn wrote
Reply to comment by Psychological-Ear896 in [D] I’m a Machine Learning Engineer for FAANG companies. What are some places looking for freelance / contract work for ML? by doctorjuice
The key difference is a non compete or other clause that prevents you from working multiple contracts.
with a 1099 you are independent