Animesh Kumar

722 posts

Animesh Kumar banner
Animesh Kumar

Animesh Kumar

@_anitweets

Helping organizations adopt data products. CTO & Co-founder | DataOS: https://t.co/H5jdGWnvRp

Indore, India Katılım Temmuz 2023
62 Takip Edilen142 Takipçiler
Animesh Kumar retweetledi
Samuel Wong
Samuel Wong@samuel_wong_·
The Data Product Testing Strategy: Handbook Goals & Components of the Data Product Testing Strategy, Testing Integration in the Data Product Lifecycle, Testing Facilitation Strategies & Technologies, and more! moderndata101.substack.com/p/the-data-pro…
English
0
4
8
1.8K
Animesh Kumar
Animesh Kumar@_anitweets·
Heading to CDOIQ? Here's the agenda: cdoiq2024.org/agenda/ Catch my session on Model-First Data Products at 4:45 PM EDT on July 17th! We'll be diving deep into some cool stuff. Who else is attending? Let's connect! I'm looking forward to meeting you all! #DataProducts #CDOIQ
Animesh Kumar tweet media
English
0
0
4
70
Animesh Kumar
Animesh Kumar@_anitweets·
Our focus on data product adoption has been about making the process smoother and less overwhelming. We've created user journeys, backward business-value journeys, and adoption playbooks – all designed with the data user in mind.
GIF
English
1
0
5
76
Animesh Kumar
Animesh Kumar@_anitweets·
Cracking the Data Product Code at #CDOIQ 2024 Excited to be back at @CDOIQ_Program next week! For years, we've been building a solution to bring a product mindset to data. Now, with the data community embracing "#DataProducts", our efforts are resonating! Sneak peek... (Thread)
English
1
4
6
214
Animesh Kumar retweetledi
Modern Data 101
Modern Data 101@ModernData101·
🌟 Data Expert of the week: @LedouxCharlotte! 🌟 Meet Charlotte Ledoux — The Data and AI Governance expert with over 15 years of hands-on experience, shaping the journey of large enterprises. Checkout her profile: moderndata101.com/network/charlo…
English
1
5
7
86
Animesh Kumar
Animesh Kumar@_anitweets·
Key questions to consider: 1) How does governance fit into & enable a decentralized stack? 2) Does it resemble a product approach? If so, how? 3) How can a product approach benefit existing governance goals? This article hits all the right angles: moderndata101.substack.com/p/how-to-creat…
Animesh Kumar tweet media
English
0
0
4
37
Animesh Kumar
Animesh Kumar@_anitweets·
Charlotte's approach to governance is built for decentralization. It is a game-changer, reflecting game theory's concept that it outperforms centralization in competitive environments. This is especially true in data ecosystems where domains compete for resources & value.
Animesh Kumar tweet media
English
1
0
3
55
Animesh Kumar
Animesh Kumar@_anitweets·
Strong data products rely on strong Data Governance! It's no surprise that many Data Product features (DAUNTIVS) align with data governance principles. Huge thanks to Modern Data 101 for sharing this fantastic resource by Charlotte Ledoux! Here's a quick glance... (Thread)
Animesh Kumar tweet media
English
1
3
5
115
Animesh Kumar
Animesh Kumar@_anitweets·
These paved the way for BI tools we know today. The semantic layer now, in essence, acts as a central translator, simplifying data access for various tools & users in a reusable & adaptable manner. Find the works here: moderndata101.substack.com/p/the-semantic… Got questions? Let's chat!
Animesh Kumar tweet media
English
0
1
4
36
Animesh Kumar
Animesh Kumar@_anitweets·
Early data efforts used "semantic approaches" – essentially ways to make data meaningful. We've come a long way, but the core concept remains! Back then data cubes & marts emerged as workarounds, offering a more organized way to access information.
English
1
0
4
32
Animesh Kumar
Animesh Kumar@_anitweets·
Ever wonder how we got to the semantic layer? In today's data world, it's crucial, but did you know it's actually an evolution of a foundation we've always had? Find all about it here: moderndata101.substack.com/p/the-semantic… Here's a short summary... (Thread)
Animesh Kumar tweet media
English
2
2
5
62
Animesh Kumar
Animesh Kumar@_anitweets·
@ankrgyl Build trust. It frees up the leader to inspire and guide.
English
0
0
0
18
Ankur Goyal
Ankur Goyal@ankrgyl·
I meet a lot of detail-obsessed leaders who run out of energy motivating their teams to care as much as they do. You've gotta find people who care as much, or ideally more, than you do about the details in their domain.
English
5
2
60
12.2K
Animesh Kumar
Animesh Kumar@_anitweets·
Classic sunk cost fallacy! Data analysts feel it too. The solution: Automated data validation & early exploratory analysis This allows analysts to identify potential issues early (like digging in the wrong place) and course-correct before significant time is wasted.
Robert Yi 🐳@imrobertyi

Re: sunk cost fallacy: First order effect: I dug a hole in the wrong place, but I don't want to start over. Second order effect: Here's why we actually dug it in the right place. think.ryi.me/p/the-sunk-cos…

English
1
0
3
73
john kutay
john kutay@JohnKutay·
It’s crucial for data engineers to understand memory management of a relational database management system. Databases are heavily optimized to retrieve frequently queried objects. When analytics teams add change tracking, things like “outbox pattern” , run queries directly on the database for integration and validation purposes, you ARE slowing down the core database application’s performance.
English
2
0
10
1.4K
Animesh Kumar
Animesh Kumar@_anitweets·
@Ubunta Think of data developers as the rockstars of the data world. They craft amazing insights, but data wrangling slows them down. Enters the Data Developer Platform: it's their backstage crew, automating tedious tasks & freeing them to focus on data alchemy. datadeveloperplatform.org
Animesh Kumar tweet media
English
0
0
0
24
ABC
ABC@Ubunta·
GenAI can enhance a Data Product suite by providing support in tasks such as extracting insights, generating plots, identifying cohorts etc. However, it seems impractical and costly to replace an entire Data Product with a LLM at this stage. Furthermore, developing GenAI products with the assumption of accessing an enterprise's complete data set is unrealistic. Even internal teams within enterprises often face challenges in gaining access to all data.
English
1
0
3
518
Animesh Kumar
Animesh Kumar@_anitweets·
This aligns with the concept of "feature engineering" We're not always creating entirely new data points, the magic lies in how you curate, analyze, and tell the story within the data. It's all about creating that "aha!" moment and that's a skill worth its weight in terabytes.
Jason Cohen@asmartbear

The greatest teachers inspire us for the rest of our lives. Did they invent the ideas they taught us? Typically, not even a little bit. So 𝘩𝘰𝘸 you tell the story is more important than inventing something wholly original. (I’m not the first to make this observation.)

English
0
0
3
75
Animesh Kumar
Animesh Kumar@_anitweets·
Here's a quick summary: 1. Building block infrastructure is key to scalability. 2. Composable resources allow for diverse solutions. 3. Simple foundations lead to robust systems.
English
0
0
2
24
Animesh Kumar
Animesh Kumar@_anitweets·
Struggling with a complex data approach? Go back to basics! Validate if your solution has a fundamental scaffold built on simple principles. If not, it's time to rethink.
English
1
0
2
27
Animesh Kumar
Animesh Kumar@_anitweets·
Big Problems, Simple Solutions? The bigger the problem, ironically simpler the approach to the solution should be. Think about it: data systems are simpler than ever, and even ancient philosophy tackled huge questions. The key to BIG data problems lies in fundamentals. (Thread)
Animesh Kumar tweet media
English
1
0
3
208