Making Agile work for data science

Making Agile work for data science

Data scientists and engineers don’t always play well together. Data scientists will plan out a solution, carefully build models, test them in notebooks, then throw that solution over the wall to engineering. Implementing that solution can take months.

Historically, the data science team has been purely science-driven. Work on methodologies, prove out something that they wanted to achieve, and then hand it over to the engineering organization. That could take many months.

Over the past three to five years, they’ve been moving their engineering and data science operations onto the cloud as part of an overall Agile transformation and a move from being sales-led to being product-led. With most of their solutions migrated over, they decided that along with modernizing their infrastructure, they wanted to modernize their legacy systems, add new functions and scientific techniques, and take advantage of new technologies to scale and meet the demand coming their way.

While all of the rituals and the rigor of Agile didn't always facilitate the more open-ended nature of the data science work at 84.51°, having both data science and engineering operating in a similar tech stack has been a breath of fresh air. Working cross-functionally has shortened the implementation delay. At the same time, being closer to the engineering side of the house has given the data science team a better sense of how to fit their work into the pipeline.

Getting everyone on the same tech stack had a side effect. Between the increasing complexity of the projects, geographic diversity of the folks on these projects, a rise in remote work, and continued growth, locating experts became harder. But with everyone working in the same tech, more people could answer questions and become SMEs.

Of course, we’d be remiss if we didn’t tell you that 84.51° was asking and answering questions on Stack Overflow for Teams. It was helpful when Chris and Michael no longer had to call on the SMEs they knew by name but could suddenly draw more experts out of the woodwork by asking a question. Check out this episode for insights on data science, agile, and building a great knowledge base for a large, increasingly distributed engineering org.

See Privacy Policy at https://art19.com/privacy and California Privacy Notice at https://art19.com/privacy#do-not-sell-my-info.

Det här avsnittet är hämtat från ett öppet RSS-flöde och publiceras inte av Podme. Det kan innehålla reklam.

Avsnitt(949)

Making the OWASP top ten in the vibe code era

Making the OWASP top ten in the vibe code era

Ryan welcomes back Tanya Janca, now part of the OWASP Top 10 team, to discuss what changed in the latest OWASP Top 10 release, how the list shifted from “outdated components” to a broader software sup...

5 Juni 34min

What it takes to be a player in the international AI game

What it takes to be a player in the international AI game

From the floor of HumanX, Ryan welcomes Songyee Yoon, managing partner at Principal Venture Partners (PVP), to chat about AI development outside the US, from the need to adapt models to local language...

2 Juni 26min

The find out stage of AI is just supply chain and password protection

The find out stage of AI is just supply chain and password protection

In this two-for-one special recorded at HumanX, Ryan is joined by Dataiku’s Florian Douetteau to chat about the governance, orchestration, and data requirements for serious agentic systems and 1Passwo...

29 Maj 30min

Do you have what it takes to run AI in production?

Do you have what it takes to run AI in production?

From the floor of HumanX, Ryan Donovan is joined by Peter Salanki, CTO and co-founder of CoreWeave, to chat about what it really takes to run AI in production; the growing importance of observability,...

26 Maj 27min

Breaking your AI storage bottlenecks

Breaking your AI storage bottlenecks

Recorded at HumanX, Ryan sits down with Garima Kapoor and Anand Babu Periasamy, co-founders and co-CEOs of MinIO, to chat about eliminating the storage bottlenecks that leave GPUs underutilized, their...

22 Maj 29min

Pack your agentic stack in Slack

Pack your agentic stack in Slack

SPONSORED BY SLACK BY SALESFORCERyan welcomes Jaime DeLanghe, chief product officer at Slack, to chat about how they’re preparing to integrate everybody’s agents in their chat application. They chat a...

20 Maj 29min

Your fridge could be a threat to national security

Your fridge could be a threat to national security

On the floor of HumanX, Ryan is joined by Adam Meyers,  Senior VP of Counter Adversary Operations at Crowdstrike, for a deep dive on their latest Global Threat Report that tracks over 281 adversaries ...

19 Maj 29min

Observability and human intuition in an AI world

Observability and human intuition in an AI world

In this two for one episode recorded at HumanX, Ryan is first joined by Christine Yen, CEO of Honeycomb, to discuss how AI compresses the software development lifecycle, making observability about cap...

15 Maj 29min

Populärt inom Business & ekonomi

framgangspodden
varvet
badfluence
rss-borsens-finest
uppgang-och-fall
avanzapodden
rss-dagen-med-di
lastbilspodden
fill-or-kill
rss-inga-dumma-fragor-om-pengar
bathina-en-podcast
borsmorgon
24fragor
rss-kort-lang-analyspodden-fran-di
tabberaset
kapitalet-en-podd-om-ekonomi
market-makers
rss-den-nya-ekonomin
bilar-med-sladd
svd-tech-brief