Enterprise

How data science and rocket science will get humans to Mars

Comment

Image Credits: Atomic Imagery (opens in a new window)

Kapil Kedar

Contributor

Kapil Kedar is the director of technical sales at Alpine Data.

In a recent op-ed to CNN, President Obama re-affirmed America’s commitment to sending a manned mission to Mars. Think your data science challenges are too complicated? Imagine the difficulties involved in mining data to understand the health impacts of an expedition to Mars.

What happens to astronauts’ muscle tone or lung capacities after several years in space? How much weight can they safely lose? How much CO2 should be in the crew vehicle? How many sensors are needed to calculate joint flexibility in each individual space suit?

When sending humans “where no one has gone before,” there are a multitude of variables to consider, and NASA is hard at work researching the health and safety risks of a future Mission to Mars. Understanding these risks is critical, as they impact a number of decisions that need to be made when planning the journey — spanning everything from how potential crew members are evaluated to equipment engineering, mission logistics and the determination of needed fuel loads.

The stakes are high, but NASA realized from the get-go that it needed to focus less on developing the perfect analytic model and more on building a data science process that empowers decision-makers to use analytics to answer a multitude of continually changing questions. But you don’t have to be dealing with rocket science to learn from NASA’s analytic approach. Here are several key takeaways from NASA’s project that are useful for any organization about to embark — or that’s stuck — on a big data analytics initiative.

Stop making it so complicated

Simply put, data science shouldn’t be as complicated as rocket science. (See what I did there?) Yes, analyzing big data has challenges, and yes, your approach may vary depending on what kinds of insights you hope to obtain, but there’s no need to make things more complex than the situation calls for.

All too often, organizations end up spending endless cycles attempting to move data in order to analyze it when they should instead be focusing on bringing the analytics to the data. Big data, by definition, is very tough, if not impossible, to move around. This is why distributed storage and processing frameworks like Hadoop exist — data in the cloud is far more scalable than data in a silo.

For the Mars project, there are so many levels of data to look at, ranging from health data collected from astronauts like Scott Kelly who have completed previous space missions, to non-astronaut test studies, to studies done in simulated space environments like the Human Exploration Research Analog (HERA) at Johnson Space Center in Houston.

Getting all the data in one place is the critical first step. For this reason, NASA is using the Collaborative Advanced Analytics and Data Sharing platform developed by Lockheed Martin and several analytic partners, such as Alpine Data, to analyze data at its source. Because there’s no waiting to download data into a separate analytic environment to work with it, researchers can focus their time and energy on asking questions and getting the answers that will help them plan a mission to Mars.

The launch is just the beginning

A successful rocket launch is only step one in a multi-year expedition to Mars. Based on past experiences, NASA expects to encounter and address numerous challenges along the way. The same holds true for data analytics projects. Simply deploying a model doesn’t mean the project is done. In fact, the most valuable analytics initiatives are those where models are continually refined and iterated on an ongoing basis.

Like the scientific method, getting the most out of analytics requires experimentation, testing, learning from failures and testing again. NASA wants to be able to quickly query the large volumes of data at its disposal, then funnel insights back into new models capable of building on what came before. That’s why the data science process for this initiative resembles a “pendulum,” where the forward swing focuses on rapidly driving insights out to researchers and the backward swing focuses on measuring, evaluating results, refining the model and then swinging again.

Work with the data you have, not the data you wish you had

An ability to quickly and easily refine analytic models is especially valuable when your data sets aren’t perfect. (And really, is any data set perfect?)

For NASA, the biggest data challenge is that the astronaut sample size is small — only 300 individuals have been accepted to NASA’s Astronaut Corps. Researchers have to mine the heck out of the data collected from this small sample and extrapolate.

For example, based on how a 35-year-old female with a starting weight of 120 pounds responded to a five-month trip in space, how would a 32-year-old weighing 123 respond to two years? What about a 30-year-old weighing 118? Furthermore, since an astronaut has yet to step foot on the Red Planet, there’s no data about the health impacts of actually living on Mars (Matt Damon doesn’t count).

But what can NASA learn from astronauts who have gone to the Moon, or spent a year in the International Space Station? What happens when data from test subjects living in simulated space environments is plugged into a predictive model? With analytic tools that support rapid model deployment and refinement, organizations can keep trying different ways to extract insight from the data they do have to make better predictions, even when key information is missing.

Break the metaphorical black box

With the Mars Mission, NASA is not only putting billions of invested taxpayer dollars on the line, but also the lives of its astronauts, who risk their health and safety in the name of science and exploration.

Like any consumer of analytics, NASA needs to be able to trust in the recommendations that are being generated, but this is hard to do if predictions are computed in a “black box” that only data science experts can manipulate or understand.

For a project like this, empowering analytic consumers who aren’t necessarily data science PhDs (such as the health researchers, equipment engineers and others planning the mission) to actually build and launch queries and use the data on their own is key. This requires tight collaboration between business and IT stakeholders, modeling tools that are simple to use and modify and the ability to push insights to the people who need them. This is why NASA has chosen a collaborative analytic platform that includes tools that extend outputs directly into the systems and applications that are used by the scientists and decision-makers working on the Mars Mission.

Large and complex data sets pose challenges for any organization about to embark on an analytics deployment. But NASA’s example of harnessing data to plan the most complicated of journeys — an expedition to Mars — proves that the challenges are not insurmountable. With the right tools and, most importantly, a consistent and well-planned approach, data science doesn’t have to be as daunting as rocket science.

Note: Lockheed Martin Information Systems & Global Solutions is now a part of Leidos Holdings, Inc.

More TechCrunch

Ilya Sutskever, OpenAI’s longtime chief scientist and one of its co-founders, has left the company. OpenAI CEO Sam Altman announced the news in a post on X Tuesday evening. “This…

Ilya Sutskever, OpenAI co-founder and longtime chief scientist, departs

Intuitive Machines made history when it became the first private company to land a spacecraft on the moon, so it makes sense to adapt that tech for Mars.

Intuitive Machines wants to help NASA return samples from Mars

As Google revamps itself for the AI era, offering AI overviews within its search results, the company is introducing a new way to filter for just text-based links. With the…

Google adds ‘Web’ search filter for showing old-school text links as AI rolls out

Blue Origin’s New Shepard rocket will take a crew to suborbital space for the first time in nearly two years later this month, the company announced on Tuesday.  The NS-25…

Blue Origin to resume crewed New Shepard launches on May 19

This will enable developers to use the on-device model to power their own AI features.

Google is building its Gemini Nano AI model into Chrome on the desktop

It ran 110 minutes, but Google managed to reference AI a whopping 121 times during Google I/O 2024 (by its own count). CEO Sundar Pichai referenced the figure to wrap…

Google mentioned ‘AI’ 120+ times during its I/O keynote

Firebase Genkit is an open source framework that enables developers to quickly build AI into new and existing applications.

Google launches Firebase Genkit, a new open source framework for building AI-powered apps

In the coming months, Google says it will open up the Gemini Nano model to more developers.

Patreon and Grammarly are already experimenting with Gemini Nano, says Google

As part of the update, Reddit also launched a dedicated AMA tab within the web post composer.

Reddit introduces new tools for ‘Ask Me Anything,’ its Q&A feature

Here are quick hits of the biggest news from the keynote as they are announced.

Google I/O 2024: Here’s everything Google just announced

LearnLM is already powering features across Google products, including in YouTube, Google’s Gemini apps, Google Search and Google Classroom.

LearnLM is Google’s new family of AI models for education

The official launch comes almost a year after YouTube began experimenting with AI-generated quizzes on its mobile app. 

Google is bringing AI-generated quizzes to academic videos on YouTube

Around 550 employees across autonomous vehicle company Motional have been laid off, according to information taken from WARN notice filings and sources at the company.  Earlier this week, TechCrunch reported…

Motional cut about 550 employees, around 40%, in recent restructuring, sources say

The keynote kicks off at 10 a.m. PT on Tuesday and will offer glimpses into the latest versions of Android, Wear OS and Android TV.

Google I/O 2024: Watch all of the AI, Android reveals

Google Play has a new discovery feature for apps, new ways to acquire users, updates to Play Points, and other enhancements to developer-facing tools.

Google Play preps a new full-screen app discovery feature and adds more developer tools

Soon, Android users will be able to drag and drop AI-generated images directly into their Gmail, Google Messages and other apps.

Gemini on Android becomes more capable and works with Gmail, Messages, YouTube and more

Veo can capture different visual and cinematic styles, including shots of landscapes and timelapses, and make edits and adjustments to already-generated footage.

Google Veo, a serious swing at AI-generated video, debuts at Google I/O 2024

In addition to the body of the emails themselves, the feature will also be able to analyze attachments, like PDFs.

Gemini comes to Gmail to summarize, draft emails, and more

The summaries are created based on Gemini’s analysis of insights from Google Maps’ community of more than 300 million contributors.

Google is bringing Gemini capabilities to Google Maps Platform

Google says that over 100,000 developers already tried the service.

Project IDX, Google’s next-gen IDE, is now in open beta

The system effectively listens for “conversation patterns commonly associated with scams” in-real time. 

Google will use Gemini to detect scams during calls

The standard Gemma models were only available in 2 billion and 7 billion parameter versions, making this quite a step up.

Google announces Gemma 2, a 27B-parameter version of its open model, launching in June

This is a great example of a company using generative AI to open its software to more users.

Google TalkBack will use Gemini to describe images for blind people

Google’s Circle to Search feature will now be able to solve more complex problems across psychics and math word problems. 

Circle to Search is now a better homework helper

People can now search using a video they upload combined with a text query to get an AI overview of the answers they need.

Google experiments with using video to search, thanks to Gemini AI

A search results page based on generative AI as its ranking mechanism will have wide-reaching consequences for online publishers.

Google will soon start using GenAI to organize some search results pages

Google has built a custom Gemini model for search to combine real-time information, Google’s ranking, long context and multimodal features.

Google is adding more AI to its search results

At its Google I/O developer conference, Google on Tuesday announced the next generation of its Tensor Processing Units (TPU) AI chips.

Google’s next-gen TPUs promise a 4.7x performance boost

Google is upgrading Gemini, its AI-powered chatbot, with features aimed at making the experience more ambient and contextually useful.

Google’s Gemini updates: How Project Astra is powering some of I/O’s big reveals

Veo can generate few-seconds-long 1080p video clips given a text prompt.

Google’s image-generating AI gets an upgrade