pypmml VS hands-on-train-and-deploy-ml

Compare pypmml vs hands-on-train-and-deploy-ml and see what are their differences.

hands-on-train-and-deploy-ml

Train and Deploy an ML REST API to predict crypto prices, in 10 steps (by Paulescu)
InfluxDB - Power Real-Time Data Analytics at Scale
Get real-time insights from all types of time series data with InfluxDB. Ingest, query, and analyze billions of data points in real-time with unbounded cardinality.
www.influxdata.com
featured
SaaSHub - Software Alternatives and Reviews
SaaSHub helps you find the best software and product alternatives
www.saashub.com
featured
pypmml hands-on-train-and-deploy-ml
1 6
72 658
- -
0.0 7.0
over 1 year ago about 2 months ago
Python Python
Apache License 2.0 MIT License
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.

pypmml

Posts with mentions or reviews of pypmml. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2022-08-10.

hands-on-train-and-deploy-ml

Posts with mentions or reviews of hands-on-train-and-deploy-ml. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-09-13.
  • Where to start
    3 projects | /r/mlops | 13 Sep 2023
    There are 3 courses that I usually recommend to folks looking to get into MLE/MLOps that already have a technical background. The first is a higher-level look at the MLOps processes, common challenges and solutions, and other important project considerations. It's one of Andrew Ng's courses from Deep Learning AI but you can audit it for free if you don't need the certificate: - Machine Learning in Production For a more hands-on, in-depth tutorial, I'd recommend this course from NYU (free on GitHub), including slides, scripts, full-code homework: - Machine Learning Systems And the title basically says it all, but this is also a really good one: - Hands-on Train and Deploy ML Pau Labarta, who made that last course, actually has a series of good (free) hands-on courses on GitHub. If you're interested in getting started with LLMs (since every company in the world seems to be clamoring for them right now), this course just came out from Pau and Paul Iusztin: - Hands-on LLMs For LLMs I also like this DLAI course (that includes Prompt Engineering too): - Generative AI with LLMs It can also be helpful to start learning how to use MLOps tools and platforms. I'll suggest Comet because I work there and am most familiar with it (and also because it's a great tool). Cloud and DevOps skills are also helpful. Make sure you're comfortable with git. Make sure you're learning how to actually deploy your projects. Good luck! :)
  • FLaNK Stack Weekly 5 September 2023
    19 projects | dev.to | 5 Sep 2023
  • YouTube channel on AI, ML, NLP and Computer Vision
    2 projects | /r/developersIndia | 9 Jul 2023
    And a new (but very promising-looking), free GitHub course from Pau Labarta: - Hands-on Train and Deploy ML
  • Help regarding DS career choices
    2 projects | /r/datascience | 26 Jun 2023
    For a higher-level, more conceptual overview, Andrew Ng always has great courses on DeepLearning.ai (and they're free to audit if you don't officially need the certificate): - Machine Learning for Production For a more hands-on, in-depth tutorial, I'd recommend this course from NYU (free on GitHub), including slides, scripts, full-code homework: - Machine Learning Systems And a new (but very promising-looking), free GitHub course from Pau Labarta (looks like he's still filming some of the lecture videos, but the rest of the course is all there): - Hands-on Train and Deploy ML
  • Recommendation for MLOps resources
    3 projects | /r/OMSCS | 25 Jun 2023
    - Hands-on Train and Deploy ML
  • How to get into MLOps?
    1 project | /r/developersIndia | 24 Jun 2023
    This is also a pretty promising-looking new course that focuses on deployment and automation. It looks like some of the video lectures are still under construction (like I said it's super new), but the code and notebooks are all there.

What are some alternatives?

When comparing pypmml and hands-on-train-and-deploy-ml you can also consider the following projects:

MLflow - Open source platform for the machine learning lifecycle

paxml - Pax is a Jax-based machine learning framework for training large scale models. Pax allows for advanced and fully configurable experimentation and parallelization, and has demonstrated industry leading model flop utilization rates.

flexdashboard - Easy interactive dashboards for R

MLSys-NYU-2022 - Slides, scripts and materials for the Machine Learning in Finance Course at NYU Tandon, 2022

blindbox - BlindBox is a tool to isolate and deploy applications inside Trusted Execution Environments for privacy-by-design apps

Youtube2Webpage - I learn much better from text than from videos

openaidemo - Demo of how access the OpenAI API using Java 17

concrete-ml - Concrete ML: Privacy Preserving ML framework built on top of Concrete, with bindings to traditional ML frameworks.

puck - The visual editor for React

yolov7-object-tracking - YOLOv7 Object Tracking Using PyTorch, OpenCV and Sort Tracking

co-tracker - CoTracker is a model for tracking any point (pixel) on a video.

osintgpt - An open-source intelligence (OSINT) analysis tool leveraging GPT-powered embeddings and vector search engines for efficient data processing