Tweet ghim
Ritesh Roushan
7.4K posts

Ritesh Roushan
@devXritesh
Building prod-grade backend systems at scale 🇮🇳 • System Design • Microservices • AI Infra • Real prod lessons | Founder: The 1% Engineers
172.16.0.1 Tham gia Şubat 2018
749 Đang theo dõi1.2K Người theo dõi

@LuckyGoldx They have used Trie data structures and edge caching to serve this massive results.
English

..autocomplete looks up your keystrokes in a massive prefix tree stored in memory across data centers. edge servers cache the hottest prefixes, rank them by popularity/context, and return top results in milliseconds, no full web search needed. with 8.5 billion daily queries, they pre-compute and shard the index for speed.
English

@shub0414 It's trie DS and edge cache is real game in this massive result.
English

@devXritesh I assumed it was tries as well, the comments confirmed that:)
English

@0xlelouch_ Throughput is limited by partition parallelism.
Adding consumers beyond partition count doesn’t help.
Also check processing latency per message could be the real bottleneck.
English

@SumitM_X I’d rebase.
Keeps history clean and avoids a messy merge commit.
But only if the branch isn’t shared otherwise, merge to avoid rewriting history.
English

@thekevinqi DS using trie + edge cache for faster lookups and result serving
English

@Itstheanurag Totally agree!
Diversifying from field experts > one creator grind. Unemployed dev wisdom hits different .
English

See i believe if you want to learn something learn from the experts in that field.
Learning about databases from ezsnippet would be stupid if Hussain nasser and arpit bhayani exist.
Learning DSA from code with Harry would be stupid if kunal's videos exists.
Learning rust from technical thapa would be stupid if let's get rusty exists.
The point is stop working one guy, everyone on YouTube has something they are best known for.
By not following them all you are hindering your progress. You are learning things from the top layer only but never from the core of it.
Thanks for this matter, an unemployed dev and not the president of United States.
English

30 tech companies with massive workforce + strong engineer pay..
- Amazon — 1,576,000 employees — SWE avg pay: ~$190k–$230k .
- IBM — ~270,000 employees — SWE avg pay: ~$150k–$190k.
- Microsoft — 228,000 employees — SWE avg pay: ~$220k–$250k .
- Accenture — ~210,000 tech total company is far bigger — SWE avg pay: ~$120k–$170k.
- Alphabet (Google) — 190,820 employees — SWE avg pay: ~$250k–$340k .
- Apple — 166,000 employees — SWE avg pay: ~$230k–$280k.
- Oracle — 162,000 employees — SWE avg pay: ~$180k–$230k.
- Cisco — ~90,000 employees — SWE avg pay: ~$190k–$230k.
- Salesforce — 76,453 employees — SWE avg pay: ~$210k–$260k .
- Lenovo — 72,000 employees — SWE avg pay: ~$120k–$170k .
- HP — 55,000 employees — SWE avg pay: ~$140k–$180k.
- Intel — ~124,800 employees — SWE avg pay: ~$180k–$230k.
- Dell — ~97,000 employees — SWE avg pay: ~$140k–$180k .
- SAP — 109,973 employees — SWE avg pay: ~$160k–$210k .
- Meta — ~74,000 employees — SWE avg pay: ~$280k–$380k .
- Adobe — 31,360 employees — SWE avg pay: ~$210k–$260k .
- NVIDIA — ~36,000 employees — SWE avg pay: ~$240k–$320k.
-Uber — ~31,000 employees — SWE avg pay: ~$220k–$300k.
LinkedIn — ~18,000 employees — SWE avg pay: ~$316k.
- Intuit — 18,200 employees — SWE avg pay: ~$210k–$260k .
- Airbnb — ~7,300 employees — SWE avg pay: ~$250k–$330k.
- Atlassian — ~14,400 after recent layoffs — SWE avg pay: ~$180k–$240k .
- ServiceNow — ~26,000 employees — SWE avg pay: ~$210k–$270k.
- Workday — ~20,400 employees — SWE avg pay: ~$190k–$240k.
- PayPal — ~27,000 employees — SWE avg pay: ~$170k–$220k.
- Shopify — ~8,100 employees — SWE avg pay: ~$170k–$230k .
- Expedia — 16,000 employees — SWE avg pay: ~$160k–$210k .
- Block — ~12,000 employees —
SWE avg pay: ~$200k–$270k.
- Pinterest — ~4,200 employees — SWE avg pay: ~$220k–$300k.
- Dropbox — ~2,300 employees — SWE avg pay: ~$210k–$280k.
English

@Inosukeei_coder In searching Trie ruling, I have also used in my work.
English

@0xPrajwal_ I have prepared yesterday and yeah it's coincidence 😅
English

@DINESHVERM578 Glad you liked buddy, more such stuff coming soon
English

@0xPrajwal_ Using DS and caching to serve data faster. Trie + Edge Cache.
English

Claude after realizing OpenClaw has been dominating
Thariq@trq212
We just released Claude Code channels, which allows you to control your Claude Code session through select MCPs, starting with Telegram and Discord. Use this to message Claude Code directly from your phone.
English

@nia_thinks Vibe coding changes game, just need faster development and deployment.
English











