machine learning infrastructure
Senior Software Engineer, Machine Learning Infrastructure at Clarifai Inc. - Remote (Argentina)
Clarifai is a leading, full-lifecycle deep learning AI platform for computer vision, natural language processing, and audio recognition. We help organizations transform unstructured images, video, text, and audio data into structured data at a significantly faster and more accurate rate than humans would be able to do on their own. Founded in 2013 by Matt Zeiler, Ph.D. Clarifai has been a market leader in AI since winning the top five places in image classification at the 2013 ImageNet Challenge. Clarifai continues to grow with employees remotely based throughout the United States, Estonia, Argentina and India. We have raised $100M in funding to date, with $60M coming from our most recent Series C, and are backed by industry leaders like Menlo Ventures, Union Square Ventures, Lux Capital, New Enterprise Associates, LDV Capital, Corazon Capital, Google Ventures, NVIDIA, Qualcomm and Osage.
- South America > Argentina (0.65)
- North America > United States (0.29)
- Europe > Estonia (0.29)
- Asia > India (0.29)
Tech Lead, Machine Learning Infrastructure
Nuro exists to better everyday life through robotics. We have an elite team of entrepreneurs, engineers, designers, and scientists. We believe AI and robotics are at the cusp of transforming daily life and we are dedicated to building meaningful products with this technology. Join us and play a critical role in our mission. Our team is growing and we are looking for talented engineers to join us.
- Health & Medicine > Therapeutic Area > Immunology (0.51)
- Health & Medicine > Pharmaceuticals & Biotechnology (0.46)
Senior Software Engineer, Machine Learning Infrastructure
A home is the biggest investment most people make, and yet, it doesn't come with a manual. That's why we're building the only app homeowners need to effortlessly manage their homes -- knowing what to do, when to do it, and who to hire. With Thumbtack, millions of people care for what matters most, and pros earn billions of dollars through our platform. And as one of the fastest-growing companies in a $500B industry -- we must be doing something right. We are driven by a common goal and the deep satisfaction that comes from knowing our work supports local economies, helps small businesses grow, and brings homeowners peace of mind.
- North America > United States > Utah > Salt Lake County > Salt Lake City (0.06)
- North America > United States > California > San Francisco County > San Francisco (0.06)
- North America > Canada > Ontario > Toronto (0.06)
- Asia > Philippines > Luzon > National Capital Region > City of Manila (0.06)
Staff Software Engineer, Machine Learning Infrastructure
We're Cruise, a self-driving service designed for the cities we love. We're building the world's most advanced, self-driving vehicles to safely connect people to the places, things, and experiences they care about. We believe self-driving vehicles will help save lives, reshape cities, give back time in transit, and restore freedom of movement for many. Cruisers have the opportunity to grow and develop while learning from leaders at the forefront of their fields. With a culture of internal mobility, there's an opportunity to thrive in a variety of disciplines.
Software Engineer, Machine Learning Infrastructure
Stripe is a financial infrastructure platform for businesses. Millions of companies--from the world's largest enterprises to the most ambitious startups--use Stripe to accept payments, grow their revenue, and accelerate new business opportunities. Our mission is to increase the GDP o the internet, and we have a staggering amount of work ahead. That means you have an unprecedented opportunity to put the global economy within everyone's reach while doing the most important work of your career. The Machine Learning Infrastructure organization provides infrastructure and support to run machine learning workflows and ship to production, tooling and operational capacity to accelerate the use of these workflows, and opinionated technical guidance to guide our users onto successful paths.
Pinaki Laskar on LinkedIn: #DataScientists #MachineLearning #DataScience
AI Researcher, Cognitive Technologist Inventor - AI Thinking, Think Chain Innovator - AIOT, XAI, Autonomous Cars, IIOT Founder Fisheyebox Spatial Computing Savant, Transformative Leader, Industry X.0 Practitioner When you need #DataScientists and ML Engineers? Although they certainly work together amicably and enjoy some overlap concerning expertise and experience, the two roles serve quite different purposes. Data Scientists follow the #DataScience Process, Stage 1: Understanding the Business Problem Stage 2: Data Collection Stage 3: Data Cleaning & Exploration Stage 4: Model Building Stage 5: Communicate and Visualize Insights The majority of the work performed by Data Scientists is in the research environment. In this environment, Data Scientists perform tasks to better understand the data so they can build models that will best capture the data's inherent patterns. Once they've built a model, the next step is to evaluate whether it meets the project's desired outcome.
- Information Technology > Artificial Intelligence > Machine Learning (0.95)
- Information Technology > Communications > Social Media (0.85)
- Information Technology > Data Science > Data Quality (0.57)
The Difference Between Data Scientists and ML Engineers - KDnuggets
Although they certainly work together amicably and enjoy some overlap concerning expertise and experience, the two roles serve quite different purposes. Essentially, we are differentiating between Scientists who seek to understand the science behind their work, and Engineers who seek to build something that can be accessed by others. Both roles are extremely important, and at some companies, are interchangeable -- for example, Data Scientists at certain organizations may carry out the work of a Machine Learning engineer and vice versa. To make the distinction clear, I'll split the differences into 3 categories; 1) Responsibilities 2) Expertise 3) Salary Expectations. Data Scientists follow the Data Science Process, which may also be referred to as Blitzstein & Pfister workflow.
The Difference Between Data Scientists and ML Engineers - ALT 4
Although they certainly work together amicably and enjoy some overlap concerning expertise and experience, the two roles serve quite different purposes. Essentially, we are differentiating between Scientists who seek to understand the science behind their work, and Engineers who seek to build something that can be accessed by others. Both roles are extremely important, and at some companies, are interchangeable -- for example, Data Scientists at certain organizations may carry out the work of a Machine Learning engineer and vice versa. To make the distinction clear, I'll split the differences into 3 categories; 1) Responsibilities 2) Expertise 3) Salary Expectations. Data Scientists follow the Data Science Process, which may also be referred to as Blitzstein & Pfister workflow.
The Difference Between Data Scientists and ML Engineers
Although they certainly work together amicably and enjoy some overlap concerning expertise and experience, the two roles serve quite different purposes. Essentially, we are differentiating between Scientists who seek to understand the science behind their work, and Engineers who seek to build something that can be accessed by others. Both roles are extremely important, and at some companies, are interchangeable -- for example, Data Scientists at certain organizations may carry out the work of a Machine Learning engineer and vice versa. To make the distinction clear, I'll split the differences into 3 categories; 1) Responsibilities 2) Expertise 3) Salary Expectations. Data Scientists follow the Data Science Process, which may also be referred to as Blitzstein & Pfister workflow.
Global Machine Learning Infrastructure as a Service Market Top Manufacturers Analysis by 2026: Amazon Web Services (AWS), Google, Valohai, Microsoft, VMware etc. – The Market Eagle
Predicting Growth Scope: Global Machine Learning Infrastructure as a Service Market The Global Machine Learning Infrastructure as a Service Market research report is comprised of the thorough study of all the market associated dynamics. The research report is a complete guide to study all the dynamics related to global Machine Learning Infrastructure as a Service market. The comprehensive analysis of potential customer base, market values and future scope is included in the global Machine Learning Infrastructure as a Service market report. Along with that the research report on the global market holds all the vital information regarding the latest technologies and trends being adopted or followed by the vendors across the globe.The research report provides an in-depth examination of all the market risks and opportunities. The analysis covered in the report helps manufacturers in the industry in eliminating the risks offered by the global market.
- South America > Brazil (0.05)
- North America > United States > Texas > Dallas County > Dallas (0.05)
- North America > Mexico (0.05)
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- Banking & Finance > Trading (0.76)
- Information Technology > Services (0.51)