Every sprint consumed by fixing parsers is a sprint spent not shipping product- brittle parsing kills velocity. This workshop is about retiring that cycle so you can move from messy, unstructured inputs to production-ready data in seconds. bem ingests and transforms any unstructured input at any volume — PDFs, emails, Excel, Word, CSV, text, JSON, images (PNG, JPEG, HEIC, HEIF, WebP), HTML, and audio (WAV, MP3, M4A) — into clean JSON instantly via API. With primitives like Transform, Join, Split, Route, and Analyze, you define the exact workflow your product needs. Built-in Evals measure + enforce accuracy automatically so quality doesn’t drop as you scale. Flow outputs straight into MotherDuck so you can go from chaos to query without manual cleanup — and your team can focus on shipping, not scraping.
talk-data.com
Topic
CSV
Comma-Separated Values (CSV)
tabular_data
text_based
human_readable
1
tagged
Activity Trend
8
peak/qtr
2020-Q1
2026-Q1
Top Events
Data Engineering Podcast
18
O'Reilly Data Science Books
17
Google Cloud Next '25
4
O'Reilly Data Engineering Books
4
Data + AI Summit 2025
1
Data Science Retreat Demo Day #42
1
Small Data SF 2025
1
Data & AI with Mukundan | Learn AI by Building
1
Databricks DATA + AI Summit 2023
1
Data Skeptic
1
dbt Coalesce 2023
1
Data Career Podcast: Helping You Land a Data Analyst Job FAST
1
Filtering by:
Small Data SF 2025
×