In this interview, we catch up with Ashton, a founding engineer at Theta, to discuss the bleeding edge of Reinforcement Learning infrastructure. He breaks down In this interview, we catch up with Ashton, a founding engineer at Theta, to discuss the bleeding edge of Reinforcement Learning infrastructure. He breaks down

Meet the Writer: Ashton Chew, Founding Engineer at Theta

2025/12/15 04:25
6 min read
For feedback or concerns regarding this content, please contact us at crypto.news@mexc.com


Let’s start! Tell us a bit about yourself. For example, name, profession, and personal interests.

Hey! My name is Ashton, and I’m a founding engineer at Theta where I work on RL infra, RL, and distributed systems. I specifically focus on computer-use and tool-use. In my past, I worked at Amazon AGI and tackled inference and tool-use infrastructure. In my free time, I love graphic design, side-projects, and bouldering.

Interesting! What was your latest Hackernoon Top Story about?

My latest story, “Can Your AI Actually Use a Computer? A 2025 Map of Computer‑Use Benchmarks,” touched on one of the hottest spaces in VC right now: RL environments and evals. I gave a comprehensive overview of the most-used computer-use benchmarks, plus practical advice on how to pick benchmarks for training and testing computer-use agents.

I kept running into the same gap: there aren’t many articles that review the benchmarks themselves. And as this field grows, it’s vital that we’re actually assessing quality instead of rewarding whatever happens to game the metric. We’ve been here before. In the early days of LLMs, benchmarks were random and disparate enough that they only weakly reflected the real winner.

Benchmarks became the de facto scoreboard for “best model,” and then people realized a lot of them weren’t measuring what they claimed.

One of the most revealing early-era failures was when “reading comprehension” quietly became “pattern matching on dataset structure.” Researchers ran intentionally provocative baselines (question-only, last-sentence-only), and the results were high enough to raise an uncomfortable possibility: the benchmark didn’t consistently force models to use the full passage. In a 2018 critique, the point wasn’t that reading never matters, but that some datasets accidentally made it optional by over-rewarding shortcuts like recency and stereotyped answer priors.

\

# Supposed task: answer the question given the passage and question Passage (summary): - Sentences 1–8: John’s day at school (mostly irrelevant detail) - Sentence 9: "After school, John went to the kitchen." - Sentence 10: "He ate a slice of pizza before starting his homework." Question: "What did John eat?" Answer: "pizza"

The benchmark accidentally rewards a shortcut where the model overweights the last sentence (because the answer is often near the end) and simply extracts the direct object of the most recent action (“ate ___”), which in this case yields “pizza.”

And then comes the even more damaging baseline: remove the passage entirely and see what happens. If a question-only model is competitive, it’s a sign the dataset is leaking signal through repetition and priors rather than testing passage-grounded comprehension.

Question: "What did John eat?"

This baseline is basically a sanity check: can the model still score well by leaning on high-frequency answer templates without grounding on the passage at all? In practice it just guesses a token the dataset disproportionately rewards (“pizza,” “sandwich”), and if that works more often than it should, you’re not measuring comprehension so much as you’re measuring the dataset’s priors.

Computer-use evals have already produced an even more literal shortcut: the agent has a browser, the benchmark is public, and the evaluation turns into an open-book exam with an answer key on the final page. In the Holistic Agent Leaderboard (HAL) paper, the authors report observing agents that searched for the benchmark on HuggingFace instead of solving the task, a behavior you only catch if you inspect logs.

\

# Supposed task: complete a workflow inside the web environment Task: "Configure setting X in the app and verify it's enabled." Failure mode: 1) Open a new tab 2) Search for: "benchmark X expected enabled state" / "HAL <benchmark> setting X" 3) Find: repo / leaderboard writeup / dataset card / issue thread 4) Reproduce the expected end state (answer)

At that point, the evaluation was measuring whether it can locate the answer key.

Task: "Find the correct page and extract Y." Failure mode: - Search: "<benchmark name> Y" - Copy from a public artifact (docs, forum post, dataset card) - Paste the value into the agent output as if it came from interaction

If an agent can pull the value from a dataset card or repo and still “pass,” the success check is grading plausibility, not interaction correctness. Public tasks plus shallow verification turn web search into an exploit.

These two examples are the warning shot: if we don’t hold computer-use benchmarks to higher standards early, we’ll repeat the LLM era just with better UIs and more elaborate ways to cheat.

Do you usually write on similar topics? If not, what do you usually write about?

Yes! Working on the RL environments and RL infra around computer-use, I’m constantly surrounded by the best computer-use models and the most realistic training environments. So I wrote another article, “The Screen Is the API,” which is the case for computer-use and why it’s the future of AI models.

This space is extremely underreported due to two reasons:

  1. Models aren’t as capable in computer-use as they are in other tasks (coding, math, etc.).
  2. Computer-use is fast-moving and extremely new.

I want to change that.

Great! What is your usual writing routine like (if you have one)

I usually read a bunch of research papers and speak to my peers in the industry about their thoughts on a topic. Other than that, I spend a lot of time reading articles by great bloggers like PG. So I usually take a lot of inspiration from other people in my writing.

Being a writer in tech can be a challenge. It’s not often our main role, but an addition to another one. What is the biggest challenge you have when it comes to writing?

Finding the time to sit down and put my lived experience into words.

What is the next thing you hope to achieve in your career?

To tackle harder problems with great people, to learn from those people, and share my experiences.

Wow, that’s admirable. Now, something more casual: What is your guilty pleasure of choice?

Watching movies! My favorite movie right now is Catch Me If You Can (2002).

Do you have a non-tech-related hobby? If yes, what is it?

I love bouldering because it makes me feel like I’m a human computer-use agent interacting with the climbing wall. I’m kidding. I think bouldering is a lot of fun because it allows me to take my mind off of work and consolidate my thinking.

What can the Hacker Noon community expect to read from you next?

I’m currently writing another piece on RL environment infrastructure!

What’s your opinion on HackerNoon as a platform for writers?

I think the review structure is awesome, and it was a great place for me to put my thoughts in front of technical readers.

Thanks for taking the time to join our “Meet the writer” series. It was a pleasure. Do you have any closing words?

I love writing. Thank you, HackerNoon!

Market Opportunity
Edge Logo
Edge Price(EDGE)
$0,15044
$0,15044$0,15044
+0,17%
USD
Edge (EDGE) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact crypto.news@mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

BlackRock boosts AI and US equity exposure in $185 billion models

BlackRock boosts AI and US equity exposure in $185 billion models

The post BlackRock boosts AI and US equity exposure in $185 billion models appeared on BitcoinEthereumNews.com. BlackRock is steering $185 billion worth of model portfolios deeper into US stocks and artificial intelligence. The decision came this week as the asset manager adjusted its entire model suite, increasing its equity allocation and dumping exposure to international developed markets. The firm now sits 2% overweight on stocks, after money moved between several of its biggest exchange-traded funds. This wasn’t a slow shuffle. Billions flowed across multiple ETFs on Tuesday as BlackRock executed the realignment. The iShares S&P 100 ETF (OEF) alone brought in $3.4 billion, the largest single-day haul in its history. The iShares Core S&P 500 ETF (IVV) collected $2.3 billion, while the iShares US Equity Factor Rotation Active ETF (DYNF) added nearly $2 billion. The rebalancing triggered swift inflows and outflows that realigned investor exposure on the back of performance data and macroeconomic outlooks. BlackRock raises equities on strong US earnings The model updates come as BlackRock backs the rally in American stocks, fueled by strong earnings and optimism around rate cuts. In an investment letter obtained by Bloomberg, the firm said US companies have delivered 11% earnings growth since the third quarter of 2024. Meanwhile, earnings across other developed markets barely touched 2%. That gap helped push the decision to drop international holdings in favor of American ones. Michael Gates, lead portfolio manager for BlackRock’s Target Allocation ETF model portfolio suite, said the US market is the only one showing consistency in sales growth, profit delivery, and revisions in analyst forecasts. “The US equity market continues to stand alone in terms of earnings delivery, sales growth and sustainable trends in analyst estimates and revisions,” Michael wrote. He added that non-US developed markets lagged far behind, especially when it came to sales. This week’s changes reflect that position. The move was made ahead of the Federal…
Share
BitcoinEthereumNews2025/09/18 01:44
Dogecoin Price Could See A Major Spike To $10 If This Trend Repeats

Dogecoin Price Could See A Major Spike To $10 If This Trend Repeats

The Dogecoin price may be on the verge of its most historic rally yet, as a crypto market analyst has boldly forecasted an explosive rally to $10. Pointing to historical
Share
Bitcoinist2026/03/07 05:30
‘Obscene’: Grammarly’s New AI Tool Offers Writing Feedback From Dead Scholars

‘Obscene’: Grammarly’s New AI Tool Offers Writing Feedback From Dead Scholars

The post ‘Obscene’: Grammarly’s New AI Tool Offers Writing Feedback From Dead Scholars appeared on BitcoinEthereumNews.com. In brief Grammarly’s “Expert Review”
Share
BitcoinEthereumNews2026/03/07 05:31