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Distyl

Distyl
Workflow automation
Data Analytics
Business Intelligence
Data Visualization
Cloud Computing
募集中のポジション
0件のポジション
現在募集中のポジションはありません
製品・サービス
DI
Distyl NeuralDB
Database Technology
DO
Document Intelligence Platform
Document Processing
DA
Data Integration APIs
API Services
EN
Enterprise Analytics Suite
Analytics
CL
Cloud Data Warehouse
Cloud Storage
AI
AI Consulting Services
Professional Services
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Frontend Product Engineer, AI Applications - Distyl AI | San Francisco or New York (hybrid) | $150K‑$250K salary
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3週間前
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Fine-tuning gets dismissed too quickly for structured output tasks in LLM applications
The default advice in most LLM communities is RAG first, fine-tuning only if RAG isn't working. I think that framing causes people to underuse fine-tuning for a specific category of problem where it clearly wins. Structured output tasks are one of them. If your application generates SQL, produces clinical documentation in a specific format, or requires consistent adherence to complex output schemas, fine-tuning embeds those constraints directly into model behavior. RAG can retrieve the right co
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もっと見る (残り15件)
総閲覧数
0
応募クリック数
0
模擬応募者数
0
スクラップ
0
レビュー
2.3
1件のレビュー
ワークライフバランス
3.0
報酬
3.0
企業文化
2.5
キャリア
3.0
経営陣
2.5
25%
友人に勧める
良い点
AI personalization capabilities
Recommendation technology
Ad targeting features
改善点
No opt-out option for data collection
Invasive data practices
Poor customer support response
給与レンジ
1件のデータ
Senior/L5
Senior/L5
1件のレポート
$182,500
年収総額
基本給
$170,000
ストック
-
$144,500
$195,000
面接体験
3件の面接
難易度
3.0
/ 5
面接プロセス
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Research Presentation
5
Panel Interview
6
Offer